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Best Big Data Processing And Distribution Systems

Matthew Miller
MM
Researched and written by Matthew Miller

Big data processing and distribution systems offer a way to collect, distribute, store, and manage massive, unstructured data sets in real time. These solutions provide a simple way to process and distribute data amongst parallel computing clusters in an organized fashion. Built for scale, these products are created to run on hundreds or thousands of machines simultaneously, each providing local computation and storage capabilities. Big data processing and distribution systems provide a level of simplicity to the common business problem of data collection at a massive scale and are most often used by companies that need to organize an exorbitant amount of data. Many of these products offer a distribution that runs on top of the open-source big data clustering tool Hadoop.

Companies commonly have a dedicated administrator for managing big data clusters. The role requires in-depth knowledge of database administration, data extraction, and writing host system scripting languages. Administrator responsibilities often include implementation of data storage, performance upkeep, maintenance, security, and pulling the data sets. Businesses often use big data analytics tools to then prepare, manipulate, and model the data collected by these systems.

To qualify for inclusion in the Big Data Processing And Distribution Systems category, a product must:

Collect and process big data sets in real-time
Distribute data across parallel computing clusters
Organize the data in such a manner that it can be managed by system administrators and pulled for analysis
Allow businesses to scale machines to the number necessary to store its data

Best Big Data Processing And Distribution Systems At A Glance

G2 takes pride in showing unbiased reviews on user satisfaction in our ratings and reports. We do not allow paid placements in any of our ratings, rankings, or reports. Learn about our scoring methodologies.

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127 Listings in Big Data Processing and Distribution Available
(1,146)4.5 out of 5
3rd Easiest To Use in Big Data Processing and Distribution software
View top Consulting Services for Google Cloud BigQuery
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Entry Level Price:Free
  • Overview
    Expand/Collapse Overview
  • Product Description
    How are these determined?Information
    This description is provided by the seller.

    BigQuery is a fully managed, AI-ready data analytics platform that helps you maximize value from your data and is designed to be multi-engine, multi-format, and multi-cloud. Store 10 GiB of data and

    Users
    • Data Engineer
    • Data Analyst
    Industries
    • Information Technology and Services
    • Computer Software
    Market Segment
    • 37% Enterprise
    • 32% Mid-Market
  • Pros and Cons
    Expand/Collapse Pros and Cons
  • Google Cloud BigQuery Pros and Cons
    How are these determined?Information
    Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
    Pros
    Ease of Use
    282
    Speed
    160
    Fast Querying
    156
    Querying
    146
    Scalability
    137
    Cons
    Expensive
    137
    Query Issues
    122
    Learning Curve
    83
    Cost Management
    76
    Cost Issues
    72
  • User Satisfaction
    Expand/Collapse User Satisfaction
  • Google Cloud BigQuery features and usability ratings that predict user satisfaction
    8.7
    Has the product been a good partner in doing business?
    Average: 8.7
    8.6
    Real-Time Data Collection
    Average: 8.7
    8.6
    Machine Scaling
    Average: 8.7
    8.6
    Data Preparation
    Average: 8.6
  • Seller Details
    Expand/Collapse Seller Details
  • Seller Details
    Seller
    Google
    Company Website
    Year Founded
    1998
    HQ Location
    Mountain View, CA
    Twitter
    @google
    32,750,646 Twitter followers
    LinkedIn® Page
    www.linkedin.com
    310,061 employees on LinkedIn®
Product Description
How are these determined?Information
This description is provided by the seller.

BigQuery is a fully managed, AI-ready data analytics platform that helps you maximize value from your data and is designed to be multi-engine, multi-format, and multi-cloud. Store 10 GiB of data and

Users
  • Data Engineer
  • Data Analyst
Industries
  • Information Technology and Services
  • Computer Software
Market Segment
  • 37% Enterprise
  • 32% Mid-Market
Google Cloud BigQuery Pros and Cons
How are these determined?Information
Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
Pros
Ease of Use
282
Speed
160
Fast Querying
156
Querying
146
Scalability
137
Cons
Expensive
137
Query Issues
122
Learning Curve
83
Cost Management
76
Cost Issues
72
Google Cloud BigQuery features and usability ratings that predict user satisfaction
8.7
Has the product been a good partner in doing business?
Average: 8.7
8.6
Real-Time Data Collection
Average: 8.7
8.6
Machine Scaling
Average: 8.7
8.6
Data Preparation
Average: 8.6
Seller Details
Seller
Google
Company Website
Year Founded
1998
HQ Location
Mountain View, CA
Twitter
@google
32,750,646 Twitter followers
LinkedIn® Page
www.linkedin.com
310,061 employees on LinkedIn®
(608)4.6 out of 5
Optimized for quick response
1st Easiest To Use in Big Data Processing and Distribution software
View top Consulting Services for Databricks Data Intelligence Platform
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  • Overview
    Expand/Collapse Overview
  • Product Description
    How are these determined?Information
    This description is provided by the seller.

    Databricks is the Data and AI company. More than 10,000 organizations worldwide — including Block, Comcast, Conde Nast, Rivian, and Shell, and over 60% of the Fortune 500 — rely on the Databricks Data

    Users
    • Data Engineer
    • Data Scientist
    Industries
    • Information Technology and Services
    • Financial Services
    Market Segment
    • 47% Enterprise
    • 37% Mid-Market
  • Pros and Cons
    Expand/Collapse Pros and Cons
  • Databricks Data Intelligence Platform Pros and Cons
    How are these determined?Information
    Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
    Pros
    Ease of Use
    205
    Features
    203
    Integrations
    138
    Easy Integrations
    116
    Data Management
    114
    Cons
    Learning Curve
    68
    Steep Learning Curve
    66
    Expensive
    59
    Missing Features
    54
    UX Improvement
    45
  • User Satisfaction
    Expand/Collapse User Satisfaction
  • Databricks Data Intelligence Platform features and usability ratings that predict user satisfaction
    8.8
    Has the product been a good partner in doing business?
    Average: 8.7
    8.7
    Real-Time Data Collection
    Average: 8.7
    9.0
    Machine Scaling
    Average: 8.7
    8.8
    Data Preparation
    Average: 8.6
  • Seller Details
    Expand/Collapse Seller Details
  • Seller Details
    Company Website
    Year Founded
    1999
    HQ Location
    San Francisco, CA
    Twitter
    @databricks
    79,305 Twitter followers
    LinkedIn® Page
    www.linkedin.com
    10,647 employees on LinkedIn®
Product Description
How are these determined?Information
This description is provided by the seller.

Databricks is the Data and AI company. More than 10,000 organizations worldwide — including Block, Comcast, Conde Nast, Rivian, and Shell, and over 60% of the Fortune 500 — rely on the Databricks Data

Users
  • Data Engineer
  • Data Scientist
Industries
  • Information Technology and Services
  • Financial Services
Market Segment
  • 47% Enterprise
  • 37% Mid-Market
Databricks Data Intelligence Platform Pros and Cons
How are these determined?Information
Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
Pros
Ease of Use
205
Features
203
Integrations
138
Easy Integrations
116
Data Management
114
Cons
Learning Curve
68
Steep Learning Curve
66
Expensive
59
Missing Features
54
UX Improvement
45
Databricks Data Intelligence Platform features and usability ratings that predict user satisfaction
8.8
Has the product been a good partner in doing business?
Average: 8.7
8.7
Real-Time Data Collection
Average: 8.7
9.0
Machine Scaling
Average: 8.7
8.8
Data Preparation
Average: 8.6
Seller Details
Company Website
Year Founded
1999
HQ Location
San Francisco, CA
Twitter
@databricks
79,305 Twitter followers
LinkedIn® Page
www.linkedin.com
10,647 employees on LinkedIn®

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(624)4.6 out of 5
Optimized for quick response
2nd Easiest To Use in Big Data Processing and Distribution software
View top Consulting Services for Snowflake
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Entry Level Price:$2 Compute/Hour
  • Overview
    Expand/Collapse Overview
  • Product Description
    How are these determined?Information
    This description is provided by the seller.

    Snowflake makes enterprise AI easy, efficient and trusted. Thousands of companies around the globe, including hundreds of the world’s largest, use Snowflake’s AI Data Cloud to share data, build applic

    Users
    • Data Engineer
    • Data Analyst
    Industries
    • Information Technology and Services
    • Computer Software
    Market Segment
    • 46% Enterprise
    • 42% Mid-Market
  • Pros and Cons
    Expand/Collapse Pros and Cons
  • Snowflake Pros and Cons
    How are these determined?Information
    Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
    Pros
    Ease of Use
    85
    Features
    53
    Scalability
    46
    Data Management
    42
    Integrations
    41
    Cons
    Expensive
    42
    Feature Limitations
    21
    Cost Management
    20
    Cost
    19
    Poor UI Design
    18
  • User Satisfaction
    Expand/Collapse User Satisfaction
  • Snowflake features and usability ratings that predict user satisfaction
    9.0
    Has the product been a good partner in doing business?
    Average: 8.7
    8.9
    Real-Time Data Collection
    Average: 8.7
    9.2
    Machine Scaling
    Average: 8.7
    9.1
    Data Preparation
    Average: 8.6
  • Seller Details
    Expand/Collapse Seller Details
  • Seller Details
    Company Website
    Year Founded
    2012
    HQ Location
    San Mateo, CA
    Twitter
    @SnowflakeDB
    65 Twitter followers
    LinkedIn® Page
    www.linkedin.com
    9,352 employees on LinkedIn®
Product Description
How are these determined?Information
This description is provided by the seller.

Snowflake makes enterprise AI easy, efficient and trusted. Thousands of companies around the globe, including hundreds of the world’s largest, use Snowflake’s AI Data Cloud to share data, build applic

Users
  • Data Engineer
  • Data Analyst
Industries
  • Information Technology and Services
  • Computer Software
Market Segment
  • 46% Enterprise
  • 42% Mid-Market
Snowflake Pros and Cons
How are these determined?Information
Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
Pros
Ease of Use
85
Features
53
Scalability
46
Data Management
42
Integrations
41
Cons
Expensive
42
Feature Limitations
21
Cost Management
20
Cost
19
Poor UI Design
18
Snowflake features and usability ratings that predict user satisfaction
9.0
Has the product been a good partner in doing business?
Average: 8.7
8.9
Real-Time Data Collection
Average: 8.7
9.2
Machine Scaling
Average: 8.7
9.1
Data Preparation
Average: 8.6
Seller Details
Company Website
Year Founded
2012
HQ Location
San Mateo, CA
Twitter
@SnowflakeDB
65 Twitter followers
LinkedIn® Page
www.linkedin.com
9,352 employees on LinkedIn®
(2,217)4.4 out of 5
5th Easiest To Use in Big Data Processing and Distribution software
View top Consulting Services for Microsoft SQL Server
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  • Overview
    Expand/Collapse Overview
  • Product Description
    How are these determined?Information
    This description is provided by the seller.

    SQL Server 2017 brings the power of SQL Server to Windows, Linux and Docker containers for the first time ever, enabling developers to build intelligent applications using their preferred language and

    Users
    • Software Engineer
    • Software Developer
    Industries
    • Information Technology and Services
    • Computer Software
    Market Segment
    • 46% Enterprise
    • 37% Mid-Market
  • Pros and Cons
    Expand/Collapse Pros and Cons
  • Microsoft SQL Server Pros and Cons
    How are these determined?Information
    Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
    Pros
    Database Management
    25
    Ease of Use
    22
    Integrations
    16
    Features
    15
    Performance
    15
    Cons
    Performance Issues
    9
    Expensive
    7
    Limitations
    6
    Slow Performance
    6
    Compatibility Issues
    5
  • User Satisfaction
    Expand/Collapse User Satisfaction
  • Microsoft SQL Server features and usability ratings that predict user satisfaction
    8.4
    Has the product been a good partner in doing business?
    Average: 8.7
    8.7
    Real-Time Data Collection
    Average: 8.7
    8.3
    Machine Scaling
    Average: 8.7
    8.6
    Data Preparation
    Average: 8.6
  • Seller Details
    Expand/Collapse Seller Details
  • Seller Details
    Seller
    Microsoft
    Year Founded
    1975
    HQ Location
    Redmond, Washington
    Twitter
    @microsoft
    14,002,464 Twitter followers
    LinkedIn® Page
    www.linkedin.com
    237,523 employees on LinkedIn®
    Ownership
    MSFT
Product Description
How are these determined?Information
This description is provided by the seller.

SQL Server 2017 brings the power of SQL Server to Windows, Linux and Docker containers for the first time ever, enabling developers to build intelligent applications using their preferred language and

Users
  • Software Engineer
  • Software Developer
Industries
  • Information Technology and Services
  • Computer Software
Market Segment
  • 46% Enterprise
  • 37% Mid-Market
Microsoft SQL Server Pros and Cons
How are these determined?Information
Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
Pros
Database Management
25
Ease of Use
22
Integrations
16
Features
15
Performance
15
Cons
Performance Issues
9
Expensive
7
Limitations
6
Slow Performance
6
Compatibility Issues
5
Microsoft SQL Server features and usability ratings that predict user satisfaction
8.4
Has the product been a good partner in doing business?
Average: 8.7
8.7
Real-Time Data Collection
Average: 8.7
8.3
Machine Scaling
Average: 8.7
8.6
Data Preparation
Average: 8.6
Seller Details
Seller
Microsoft
Year Founded
1975
HQ Location
Redmond, Washington
Twitter
@microsoft
14,002,464 Twitter followers
LinkedIn® Page
www.linkedin.com
237,523 employees on LinkedIn®
Ownership
MSFT
(51)4.5 out of 5
Optimized for quick response
6th Easiest To Use in Big Data Processing and Distribution software
Save to My Lists
  • Overview
    Expand/Collapse Overview
  • Product Description
    How are these determined?Information
    This description is provided by the seller.

    Manage the entire data for AI lifecycle through a single user experience to power the next generation of Gen-AI applications. IBM watsonx.data empowers organizations to simplify and scale unstructure

    Users
    No information available
    Industries
    • Information Technology and Services
    • Computer Software
    Market Segment
    • 41% Enterprise
    • 33% Small-Business
  • Pros and Cons
    Expand/Collapse Pros and Cons
  • IBM watsonx.data Pros and Cons
    How are these determined?Information
    Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
    Pros
    Analytics
    17
    Ease of Use
    16
    Features
    12
    Data Management
    11
    Flexibility
    11
    Cons
    Learning Curve
    13
    Expensive
    12
    Cost Management
    6
    Increased Costs
    6
    Complexity
    5
  • User Satisfaction
    Expand/Collapse User Satisfaction
  • IBM watsonx.data features and usability ratings that predict user satisfaction
    8.2
    Has the product been a good partner in doing business?
    Average: 8.7
    8.6
    Real-Time Data Collection
    Average: 8.7
    8.3
    Machine Scaling
    Average: 8.7
    8.5
    Data Preparation
    Average: 8.6
  • Seller Details
    Expand/Collapse Seller Details
  • Seller Details
    Seller
    IBM
    Company Website
    Year Founded
    1911
    HQ Location
    Armonk, NY
    Twitter
    @IBM
    709,764 Twitter followers
    LinkedIn® Page
    www.linkedin.com
    331,391 employees on LinkedIn®
Product Description
How are these determined?Information
This description is provided by the seller.

Manage the entire data for AI lifecycle through a single user experience to power the next generation of Gen-AI applications. IBM watsonx.data empowers organizations to simplify and scale unstructure

Users
No information available
Industries
  • Information Technology and Services
  • Computer Software
Market Segment
  • 41% Enterprise
  • 33% Small-Business
IBM watsonx.data Pros and Cons
How are these determined?Information
Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
Pros
Analytics
17
Ease of Use
16
Features
12
Data Management
11
Flexibility
11
Cons
Learning Curve
13
Expensive
12
Cost Management
6
Increased Costs
6
Complexity
5
IBM watsonx.data features and usability ratings that predict user satisfaction
8.2
Has the product been a good partner in doing business?
Average: 8.7
8.6
Real-Time Data Collection
Average: 8.7
8.3
Machine Scaling
Average: 8.7
8.5
Data Preparation
Average: 8.6
Seller Details
Seller
IBM
Company Website
Year Founded
1911
HQ Location
Armonk, NY
Twitter
@IBM
709,764 Twitter followers
LinkedIn® Page
www.linkedin.com
331,391 employees on LinkedIn®
(350)4.3 out of 5
7th Easiest To Use in Big Data Processing and Distribution software
Save to My Lists
  • Overview
    Expand/Collapse Overview
  • Product Description
    How are these determined?Information
    This description is provided by the seller.

    At Teradata, we believe that people thrive when empowered with better information. That’s why we built the most complete cloud analytics and data platform for AI. By delivering harmonized data, trust

    Users
    • Data Engineer
    • Software Engineer
    Industries
    • Information Technology and Services
    • Financial Services
    Market Segment
    • 70% Enterprise
    • 21% Mid-Market
    User Sentiment
    How are these determined?Information
    These insights, currently in beta, are compiled from user reviews and grouped to display a high-level overview of the software.
    • Teradata Vantage is a platform that supports complex data workloads at scale, allowing for large-scale data analysis from different sources and the development of business models.
    • Reviewers appreciate its ability to handle large volumes of data quickly, its stability for reliable and continuous operations, and its integration capabilities with multiple sources for comprehensive analysis.
    • Reviewers noted that some advanced features can be unintuitive and require a steep learning curve, the user interface feels outdated, and initial configuration or integration with cloud services can be complex.
  • Pros and Cons
    Expand/Collapse Pros and Cons
  • Teradata Vantage Pros and Cons
    How are these determined?Information
    Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
    Pros
    Ease of Use
    33
    Performance
    28
    Analytics
    26
    Scalability
    24
    Data Analytics
    22
    Cons
    Learning Curve
    16
    Expensive
    15
    Complexity
    12
    Not User-Friendly
    10
    Poor UI Design
    10
  • User Satisfaction
    Expand/Collapse User Satisfaction
  • Teradata Vantage features and usability ratings that predict user satisfaction
    8.2
    Has the product been a good partner in doing business?
    Average: 8.7
    8.1
    Real-Time Data Collection
    Average: 8.7
    8.6
    Machine Scaling
    Average: 8.7
    8.9
    Data Preparation
    Average: 8.6
  • Seller Details
    Expand/Collapse Seller Details
  • Seller Details
    Seller
    Teradata
    Company Website
    Year Founded
    1979
    HQ Location
    San Diego, CA
    Twitter
    @Teradata
    93,089 Twitter followers
    LinkedIn® Page
    www.linkedin.com
    10,256 employees on LinkedIn®
Product Description
How are these determined?Information
This description is provided by the seller.

At Teradata, we believe that people thrive when empowered with better information. That’s why we built the most complete cloud analytics and data platform for AI. By delivering harmonized data, trust

Users
  • Data Engineer
  • Software Engineer
Industries
  • Information Technology and Services
  • Financial Services
Market Segment
  • 70% Enterprise
  • 21% Mid-Market
User Sentiment
How are these determined?Information
These insights, currently in beta, are compiled from user reviews and grouped to display a high-level overview of the software.
  • Teradata Vantage is a platform that supports complex data workloads at scale, allowing for large-scale data analysis from different sources and the development of business models.
  • Reviewers appreciate its ability to handle large volumes of data quickly, its stability for reliable and continuous operations, and its integration capabilities with multiple sources for comprehensive analysis.
  • Reviewers noted that some advanced features can be unintuitive and require a steep learning curve, the user interface feels outdated, and initial configuration or integration with cloud services can be complex.
Teradata Vantage Pros and Cons
How are these determined?Information
Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
Pros
Ease of Use
33
Performance
28
Analytics
26
Scalability
24
Data Analytics
22
Cons
Learning Curve
16
Expensive
15
Complexity
12
Not User-Friendly
10
Poor UI Design
10
Teradata Vantage features and usability ratings that predict user satisfaction
8.2
Has the product been a good partner in doing business?
Average: 8.7
8.1
Real-Time Data Collection
Average: 8.7
8.6
Machine Scaling
Average: 8.7
8.9
Data Preparation
Average: 8.6
Seller Details
Seller
Teradata
Company Website
Year Founded
1979
HQ Location
San Diego, CA
Twitter
@Teradata
93,089 Twitter followers
LinkedIn® Page
www.linkedin.com
10,256 employees on LinkedIn®
(45)4.5 out of 5
14th Easiest To Use in Big Data Processing and Distribution software
View top Consulting Services for Azure Data Lake Store
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  • Overview
    Expand/Collapse Overview
  • Product Description
    How are these determined?Information
    This description is provided by the seller.

    Azure Data Lake Store is secured, massively scalable, and built to the open HDFS standard, allowing you to run massively-parallel analytics.

    Users
    • Senior Data Engineer
    Industries
    • Information Technology and Services
    Market Segment
    • 40% Enterprise
    • 27% Mid-Market
  • Pros and Cons
    Expand/Collapse Pros and Cons
  • Azure Data Lake Store Pros and Cons
    How are these determined?Information
    Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
    Pros
    Easy Integrations
    2
    Fast Processing
    2
    Data Integration
    1
    Data Management
    1
    Ease of Use
    1
    Cons
    Difficulty
    1
    Limited Features
    1
    Poor Documentation
    1
  • User Satisfaction
    Expand/Collapse User Satisfaction
  • Azure Data Lake Store features and usability ratings that predict user satisfaction
    8.6
    Has the product been a good partner in doing business?
    Average: 8.7
    9.1
    Real-Time Data Collection
    Average: 8.7
    8.9
    Machine Scaling
    Average: 8.7
    9.1
    Data Preparation
    Average: 8.6
  • Seller Details
    Expand/Collapse Seller Details
  • Seller Details
    Seller
    Microsoft
    Year Founded
    1975
    HQ Location
    Redmond, Washington
    Twitter
    @microsoft
    14,002,464 Twitter followers
    LinkedIn® Page
    www.linkedin.com
    237,523 employees on LinkedIn®
    Ownership
    MSFT
Product Description
How are these determined?Information
This description is provided by the seller.

Azure Data Lake Store is secured, massively scalable, and built to the open HDFS standard, allowing you to run massively-parallel analytics.

Users
  • Senior Data Engineer
Industries
  • Information Technology and Services
Market Segment
  • 40% Enterprise
  • 27% Mid-Market
Azure Data Lake Store Pros and Cons
How are these determined?Information
Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
Pros
Easy Integrations
2
Fast Processing
2
Data Integration
1
Data Management
1
Ease of Use
1
Cons
Difficulty
1
Limited Features
1
Poor Documentation
1
Azure Data Lake Store features and usability ratings that predict user satisfaction
8.6
Has the product been a good partner in doing business?
Average: 8.7
9.1
Real-Time Data Collection
Average: 8.7
8.9
Machine Scaling
Average: 8.7
9.1
Data Preparation
Average: 8.6
Seller Details
Seller
Microsoft
Year Founded
1975
HQ Location
Redmond, Washington
Twitter
@microsoft
14,002,464 Twitter followers
LinkedIn® Page
www.linkedin.com
237,523 employees on LinkedIn®
Ownership
MSFT
(88)4.3 out of 5
Optimized for quick response
4th Easiest To Use in Big Data Processing and Distribution software
View top Consulting Services for Starburst
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  • Overview
    Expand/Collapse Overview
  • Product Description
    How are these determined?Information
    This description is provided by the seller.

    Starburst is the data platform for analytics, applications, and AI, unifying data across clouds and on-premises to accelerate AI innovation. Organizations—from startups to Fortune 500 enterprises in 6

    Users
    No information available
    Industries
    • Information Technology and Services
    • Financial Services
    Market Segment
    • 44% Enterprise
    • 32% Small-Business
  • Pros and Cons
    Expand/Collapse Pros and Cons
  • Starburst Pros and Cons
    How are these determined?Information
    Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
    Pros
    Fast Querying
    25
    Integrations
    22
    Ease of Use
    21
    Large Datasets
    20
    Query Efficiency
    20
    Cons
    Learning Curve
    16
    Slow Performance
    16
    Difficult Setup
    14
    Query Issues
    14
    Complexity
    12
  • User Satisfaction
    Expand/Collapse User Satisfaction
  • Starburst features and usability ratings that predict user satisfaction
    9.0
    Has the product been a good partner in doing business?
    Average: 8.7
    8.1
    Real-Time Data Collection
    Average: 8.7
    8.3
    Machine Scaling
    Average: 8.7
    8.3
    Data Preparation
    Average: 8.6
  • Seller Details
    Expand/Collapse Seller Details
  • Seller Details
    Seller
    Starburst
    Company Website
    Year Founded
    2017
    HQ Location
    Boston, MA
    Twitter
    @starburstdata
    3,445 Twitter followers
    LinkedIn® Page
    www.linkedin.com
    498 employees on LinkedIn®
Product Description
How are these determined?Information
This description is provided by the seller.

Starburst is the data platform for analytics, applications, and AI, unifying data across clouds and on-premises to accelerate AI innovation. Organizations—from startups to Fortune 500 enterprises in 6

Users
No information available
Industries
  • Information Technology and Services
  • Financial Services
Market Segment
  • 44% Enterprise
  • 32% Small-Business
Starburst Pros and Cons
How are these determined?Information
Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
Pros
Fast Querying
25
Integrations
22
Ease of Use
21
Large Datasets
20
Query Efficiency
20
Cons
Learning Curve
16
Slow Performance
16
Difficult Setup
14
Query Issues
14
Complexity
12
Starburst features and usability ratings that predict user satisfaction
9.0
Has the product been a good partner in doing business?
Average: 8.7
8.1
Real-Time Data Collection
Average: 8.7
8.3
Machine Scaling
Average: 8.7
8.3
Data Preparation
Average: 8.6
Seller Details
Seller
Starburst
Company Website
Year Founded
2017
HQ Location
Boston, MA
Twitter
@starburstdata
3,445 Twitter followers
LinkedIn® Page
www.linkedin.com
498 employees on LinkedIn®
  • Overview
    Expand/Collapse Overview
  • Product Description
    How are these determined?Information
    This description is provided by the seller.

    AWS Lake Formation is a fully managed service to build, manage, secure, and share data in data lakes in days. You can centralize security and governance, and enable data sharing across the organizatio

    Users
    No information available
    Industries
    • Information Technology and Services
    Market Segment
    • 49% Small-Business
    • 32% Enterprise
  • Pros and Cons
    Expand/Collapse Pros and Cons
  • AWS Lake Formation Pros and Cons
    How are these determined?Information
    Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
    Pros
    Automation
    1
    Cloud Integration
    1
    Ease of Use
    1
    Easy Integrations
    1
    Setup Ease
    1
    Cons
    Compatibility Issues
    1
    Complexity
    1
    Cost Management
    1
    Difficult Setup
    1
    Expensive
    1
  • User Satisfaction
    Expand/Collapse User Satisfaction
  • AWS Lake Formation features and usability ratings that predict user satisfaction
    9.0
    Has the product been a good partner in doing business?
    Average: 8.7
    8.0
    Real-Time Data Collection
    Average: 8.7
    8.3
    Machine Scaling
    Average: 8.7
    7.6
    Data Preparation
    Average: 8.6
  • Seller Details
    Expand/Collapse Seller Details
  • Seller Details
    Year Founded
    2006
    HQ Location
    Seattle, WA
    Twitter
    @awscloud
    2,229,471 Twitter followers
    LinkedIn® Page
    www.linkedin.com
    143,150 employees on LinkedIn®
    Ownership
    NASDAQ: AMZN
Product Description
How are these determined?Information
This description is provided by the seller.

AWS Lake Formation is a fully managed service to build, manage, secure, and share data in data lakes in days. You can centralize security and governance, and enable data sharing across the organizatio

Users
No information available
Industries
  • Information Technology and Services
Market Segment
  • 49% Small-Business
  • 32% Enterprise
AWS Lake Formation Pros and Cons
How are these determined?Information
Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
Pros
Automation
1
Cloud Integration
1
Ease of Use
1
Easy Integrations
1
Setup Ease
1
Cons
Compatibility Issues
1
Complexity
1
Cost Management
1
Difficult Setup
1
Expensive
1
AWS Lake Formation features and usability ratings that predict user satisfaction
9.0
Has the product been a good partner in doing business?
Average: 8.7
8.0
Real-Time Data Collection
Average: 8.7
8.3
Machine Scaling
Average: 8.7
7.6
Data Preparation
Average: 8.6
Seller Details
Year Founded
2006
HQ Location
Seattle, WA
Twitter
@awscloud
2,229,471 Twitter followers
LinkedIn® Page
www.linkedin.com
143,150 employees on LinkedIn®
Ownership
NASDAQ: AMZN
(64)4.1 out of 5
10th Easiest To Use in Big Data Processing and Distribution software
View top Consulting Services for Amazon EMR
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  • Overview
    Expand/Collapse Overview
  • Product Description
    How are these determined?Information
    This description is provided by the seller.

    Amazon EMR is a web-based service that simplifies big data processing, providing a managed Hadoop framework that makes it easy, fast, and cost-effective to distribute and process vast amounts of data

    Users
    No information available
    Industries
    • Financial Services
    • Computer Software
    Market Segment
    • 59% Enterprise
    • 22% Small-Business
  • Pros and Cons
    Expand/Collapse Pros and Cons
  • Amazon EMR Pros and Cons
    How are these determined?Information
    Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
    Pros
    Data Integration
    1
    Ease of Use
    1
    Features
    1
    Large Datasets
    1
    Scalability
    1
    Cons
    Complexity
    1
    Limited Features
    1
    Poor Performance
    1
    Slow Performance
    1
  • User Satisfaction
    Expand/Collapse User Satisfaction
  • Amazon EMR features and usability ratings that predict user satisfaction
    8.9
    Has the product been a good partner in doing business?
    Average: 8.7
    8.1
    Real-Time Data Collection
    Average: 8.7
    8.7
    Machine Scaling
    Average: 8.7
    8.7
    Data Preparation
    Average: 8.6
  • Seller Details
    Expand/Collapse Seller Details
  • Seller Details
    Year Founded
    2006
    HQ Location
    Seattle, WA
    Twitter
    @awscloud
    2,229,471 Twitter followers
    LinkedIn® Page
    www.linkedin.com
    143,150 employees on LinkedIn®
    Ownership
    NASDAQ: AMZN
Product Description
How are these determined?Information
This description is provided by the seller.

Amazon EMR is a web-based service that simplifies big data processing, providing a managed Hadoop framework that makes it easy, fast, and cost-effective to distribute and process vast amounts of data

Users
No information available
Industries
  • Financial Services
  • Computer Software
Market Segment
  • 59% Enterprise
  • 22% Small-Business
Amazon EMR Pros and Cons
How are these determined?Information
Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
Pros
Data Integration
1
Ease of Use
1
Features
1
Large Datasets
1
Scalability
1
Cons
Complexity
1
Limited Features
1
Poor Performance
1
Slow Performance
1
Amazon EMR features and usability ratings that predict user satisfaction
8.9
Has the product been a good partner in doing business?
Average: 8.7
8.1
Real-Time Data Collection
Average: 8.7
8.7
Machine Scaling
Average: 8.7
8.7
Data Preparation
Average: 8.6
Seller Details
Year Founded
2006
HQ Location
Seattle, WA
Twitter
@awscloud
2,229,471 Twitter followers
LinkedIn® Page
www.linkedin.com
143,150 employees on LinkedIn®
Ownership
NASDAQ: AMZN
  • Overview
    Expand/Collapse Overview
  • Product Description
    How are these determined?Information
    This description is provided by the seller.

    Azure Synapse Analytics is a cloud-based Enterprise Data Warehouse (EDW) that leverages Massively Parallel Processing (MPP) to quickly run complex queries across petabytes of data.

    Users
    No information available
    Industries
    • Information Technology and Services
    Market Segment
    • 34% Mid-Market
    • 29% Enterprise
  • Pros and Cons
    Expand/Collapse Pros and Cons
  • Azure Synapse Analytics Pros and Cons
    How are these determined?Information
    Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
    Pros
    Analytics
    2
    Data Security
    2
    Performance
    2
    Scalability
    2
    Security
    2
    Cons
    Data Management
    1
    Feature Limitations
    1
    Importing Issues
    1
    Integration Issues
    1
  • User Satisfaction
    Expand/Collapse User Satisfaction
  • Azure Synapse Analytics features and usability ratings that predict user satisfaction
    8.8
    Has the product been a good partner in doing business?
    Average: 8.7
    7.8
    Real-Time Data Collection
    Average: 8.7
    8.1
    Machine Scaling
    Average: 8.7
    8.3
    Data Preparation
    Average: 8.6
  • Seller Details
    Expand/Collapse Seller Details
  • Seller Details
    Seller
    Microsoft
    Year Founded
    1975
    HQ Location
    Redmond, Washington
    Twitter
    @microsoft
    14,002,464 Twitter followers
    LinkedIn® Page
    www.linkedin.com
    237,523 employees on LinkedIn®
    Ownership
    MSFT
Product Description
How are these determined?Information
This description is provided by the seller.

Azure Synapse Analytics is a cloud-based Enterprise Data Warehouse (EDW) that leverages Massively Parallel Processing (MPP) to quickly run complex queries across petabytes of data.

Users
No information available
Industries
  • Information Technology and Services
Market Segment
  • 34% Mid-Market
  • 29% Enterprise
Azure Synapse Analytics Pros and Cons
How are these determined?Information
Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
Pros
Analytics
2
Data Security
2
Performance
2
Scalability
2
Security
2
Cons
Data Management
1
Feature Limitations
1
Importing Issues
1
Integration Issues
1
Azure Synapse Analytics features and usability ratings that predict user satisfaction
8.8
Has the product been a good partner in doing business?
Average: 8.7
7.8
Real-Time Data Collection
Average: 8.7
8.1
Machine Scaling
Average: 8.7
8.3
Data Preparation
Average: 8.6
Seller Details
Seller
Microsoft
Year Founded
1975
HQ Location
Redmond, Washington
Twitter
@microsoft
14,002,464 Twitter followers
LinkedIn® Page
www.linkedin.com
237,523 employees on LinkedIn®
Ownership
MSFT
(66)4.6 out of 5
Optimized for quick response
9th Easiest To Use in Big Data Processing and Distribution software
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  • Overview
    Expand/Collapse Overview
  • Product Description
    How are these determined?Information
    This description is provided by the seller.

    Dremio is the intelligent lakehouse platform trusted by thousands of global enterprises like Amazon, Unilever, Shell, and S&P Global. Dremio amplifies AI and analytics initiatives by eliminating t

    Users
    No information available
    Industries
    • Financial Services
    • Information Technology and Services
    Market Segment
    • 50% Enterprise
    • 42% Mid-Market
  • Pros and Cons
    Expand/Collapse Pros and Cons
  • Dremio Pros and Cons
    How are these determined?Information
    Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
    Pros
    Ease of Use
    13
    Integrations
    10
    Performance
    7
    Large Datasets
    6
    SQL Support
    6
    Cons
    Difficulty
    5
    Poor Customer Support
    5
    Learning Curve
    4
    Limited Features
    3
    Technical Difficulties
    3
  • User Satisfaction
    Expand/Collapse User Satisfaction
  • Dremio features and usability ratings that predict user satisfaction
    9.2
    Has the product been a good partner in doing business?
    Average: 8.7
    0.0
    No information available
    9.3
    Machine Scaling
    Average: 8.7
    8.9
    Data Preparation
    Average: 8.6
  • Seller Details
    Expand/Collapse Seller Details
  • Seller Details
    Seller
    Dremio
    Company Website
    Year Founded
    2015
    HQ Location
    Santa Clara, California
    Twitter
    @dremio
    5,065 Twitter followers
    LinkedIn® Page
    www.linkedin.com
    369 employees on LinkedIn®
Product Description
How are these determined?Information
This description is provided by the seller.

Dremio is the intelligent lakehouse platform trusted by thousands of global enterprises like Amazon, Unilever, Shell, and S&P Global. Dremio amplifies AI and analytics initiatives by eliminating t

Users
No information available
Industries
  • Financial Services
  • Information Technology and Services
Market Segment
  • 50% Enterprise
  • 42% Mid-Market
Dremio Pros and Cons
How are these determined?Information
Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
Pros
Ease of Use
13
Integrations
10
Performance
7
Large Datasets
6
SQL Support
6
Cons
Difficulty
5
Poor Customer Support
5
Learning Curve
4
Limited Features
3
Technical Difficulties
3
Dremio features and usability ratings that predict user satisfaction
9.2
Has the product been a good partner in doing business?
Average: 8.7
0.0
No information available
9.3
Machine Scaling
Average: 8.7
8.9
Data Preparation
Average: 8.6
Seller Details
Seller
Dremio
Company Website
Year Founded
2015
HQ Location
Santa Clara, California
Twitter
@dremio
5,065 Twitter followers
LinkedIn® Page
www.linkedin.com
369 employees on LinkedIn®
(59)4.3 out of 5
View top Consulting Services for Google Cloud Dataflow
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  • Overview
    Expand/Collapse Overview
  • Product Description
    How are these determined?Information
    This description is provided by the seller.

    Cloud Dataflow is a fully-managed service for transforming and enriching data in stream (real time) and batch (historical) modes with equal reliability and expressiveness -- no more complex workaround

    Users
    No information available
    Industries
    • Computer Software
    Market Segment
    • 29% Small-Business
    • 24% Mid-Market
  • Pros and Cons
    Expand/Collapse Pros and Cons
  • Google Cloud Dataflow Pros and Cons
    How are these determined?Information
    Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
    Pros
    Analytics
    1
    Ease of Use
    1
    Easy Management
    1
    Features
    1
    Insights
    1
    Cons
    Cost Management
    1
    Expensive
    1
    Installation Difficulty
    1
    Learning Difficulty
    1
  • User Satisfaction
    Expand/Collapse User Satisfaction
  • Google Cloud Dataflow features and usability ratings that predict user satisfaction
    9.1
    Has the product been a good partner in doing business?
    Average: 8.7
    8.3
    Real-Time Data Collection
    Average: 8.7
    8.8
    Machine Scaling
    Average: 8.7
    8.6
    Data Preparation
    Average: 8.6
  • Seller Details
    Expand/Collapse Seller Details
  • Seller Details
    Seller
    Google
    Year Founded
    1998
    HQ Location
    Mountain View, CA
    Twitter
    @google
    32,750,646 Twitter followers
    LinkedIn® Page
    www.linkedin.com
    310,061 employees on LinkedIn®
    Ownership
    NASDAQ:GOOG
Product Description
How are these determined?Information
This description is provided by the seller.

Cloud Dataflow is a fully-managed service for transforming and enriching data in stream (real time) and batch (historical) modes with equal reliability and expressiveness -- no more complex workaround

Users
No information available
Industries
  • Computer Software
Market Segment
  • 29% Small-Business
  • 24% Mid-Market
Google Cloud Dataflow Pros and Cons
How are these determined?Information
Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
Pros
Analytics
1
Ease of Use
1
Easy Management
1
Features
1
Insights
1
Cons
Cost Management
1
Expensive
1
Installation Difficulty
1
Learning Difficulty
1
Google Cloud Dataflow features and usability ratings that predict user satisfaction
9.1
Has the product been a good partner in doing business?
Average: 8.7
8.3
Real-Time Data Collection
Average: 8.7
8.8
Machine Scaling
Average: 8.7
8.6
Data Preparation
Average: 8.6
Seller Details
Seller
Google
Year Founded
1998
HQ Location
Mountain View, CA
Twitter
@google
32,750,646 Twitter followers
LinkedIn® Page
www.linkedin.com
310,061 employees on LinkedIn®
Ownership
NASDAQ:GOOG
(216)4.3 out of 5
11th Easiest To Use in Big Data Processing and Distribution software
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Entry Level Price:Free
  • Overview
    Expand/Collapse Overview
  • Product Description
    How are these determined?Information
    This description is provided by the seller.

    Vertica is the unified analytics platform, based on a massively scalable architecture with a broad set of analytical functions spanning event and time series, pattern matching, geospatial, and built-i

    Users
    • Senior Software Engineer
    • Data Engineer
    Industries
    • Computer Software
    • Information Technology and Services
    Market Segment
    • 44% Enterprise
    • 39% Mid-Market
  • Pros and Cons
    Expand/Collapse Pros and Cons
  • OpenText Vertica Pros and Cons
    How are these determined?Information
    Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
    Pros
    Analytics
    12
    Fast Processing
    12
    Ease of Use
    11
    Performance
    11
    Large Datasets
    10
    Cons
    Expensive
    10
    Learning Curve
    6
    Difficulty
    5
    Complexity
    4
    High Complexity
    4
  • User Satisfaction
    Expand/Collapse User Satisfaction
  • OpenText Vertica features and usability ratings that predict user satisfaction
    8.3
    Has the product been a good partner in doing business?
    Average: 8.7
    8.6
    Real-Time Data Collection
    Average: 8.7
    8.3
    Machine Scaling
    Average: 8.7
    8.4
    Data Preparation
    Average: 8.6
  • Seller Details
    Expand/Collapse Seller Details
  • Seller Details
    Seller
    OpenText
    Year Founded
    1991
    HQ Location
    Waterloo, ON
    Twitter
    @OpenText
    21,716 Twitter followers
    LinkedIn® Page
    www.linkedin.com
    22,403 employees on LinkedIn®
    Ownership
    NASDAQ:OTEX
Product Description
How are these determined?Information
This description is provided by the seller.

Vertica is the unified analytics platform, based on a massively scalable architecture with a broad set of analytical functions spanning event and time series, pattern matching, geospatial, and built-i

Users
  • Senior Software Engineer
  • Data Engineer
Industries
  • Computer Software
  • Information Technology and Services
Market Segment
  • 44% Enterprise
  • 39% Mid-Market
OpenText Vertica Pros and Cons
How are these determined?Information
Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
Pros
Analytics
12
Fast Processing
12
Ease of Use
11
Performance
11
Large Datasets
10
Cons
Expensive
10
Learning Curve
6
Difficulty
5
Complexity
4
High Complexity
4
OpenText Vertica features and usability ratings that predict user satisfaction
8.3
Has the product been a good partner in doing business?
Average: 8.7
8.6
Real-Time Data Collection
Average: 8.7
8.3
Machine Scaling
Average: 8.7
8.4
Data Preparation
Average: 8.6
Seller Details
Seller
OpenText
Year Founded
1991
HQ Location
Waterloo, ON
Twitter
@OpenText
21,716 Twitter followers
LinkedIn® Page
www.linkedin.com
22,403 employees on LinkedIn®
Ownership
NASDAQ:OTEX
(111)4.4 out of 5
8th Easiest To Use in Big Data Processing and Distribution software
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  • Overview
    Expand/Collapse Overview
  • Product Description
    How are these determined?Information
    This description is provided by the seller.

    Cloud-native service for data in motion built by the original creators of Apache Kafka® Today’s consumers have the world at their fingertips and hold an unforgiving expectation for end-to-end real-ti

    Users
    • Software Engineer
    • Senior Software Engineer
    Industries
    • Computer Software
    • Information Technology and Services
    Market Segment
    • 36% Enterprise
    • 34% Small-Business
  • Pros and Cons
    Expand/Collapse Pros and Cons
  • Confluent Pros and Cons
    How are these determined?Information
    Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
    Pros
    Performance
    2
    Deployment Ease
    1
    Documentation
    1
    Ease of Use
    1
    Easy Learning
    1
    Cons
    Cost
    1
    Expensive
    1
  • User Satisfaction
    Expand/Collapse User Satisfaction
  • Confluent features and usability ratings that predict user satisfaction
    8.5
    Has the product been a good partner in doing business?
    Average: 8.7
    9.0
    Real-Time Data Collection
    Average: 8.7
    8.2
    Machine Scaling
    Average: 8.7
    7.8
    Data Preparation
    Average: 8.6
  • Seller Details
    Expand/Collapse Seller Details
  • Seller Details
    Seller
    Confluent
    Year Founded
    2014
    HQ Location
    Mountain View, California
    Twitter
    @ConfluentInc
    43,213 Twitter followers
    LinkedIn® Page
    www.linkedin.com
    3,482 employees on LinkedIn®
    Ownership
    NASDAQ: CFLT
Product Description
How are these determined?Information
This description is provided by the seller.

Cloud-native service for data in motion built by the original creators of Apache Kafka® Today’s consumers have the world at their fingertips and hold an unforgiving expectation for end-to-end real-ti

Users
  • Software Engineer
  • Senior Software Engineer
Industries
  • Computer Software
  • Information Technology and Services
Market Segment
  • 36% Enterprise
  • 34% Small-Business
Confluent Pros and Cons
How are these determined?Information
Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
Pros
Performance
2
Deployment Ease
1
Documentation
1
Ease of Use
1
Easy Learning
1
Cons
Cost
1
Expensive
1
Confluent features and usability ratings that predict user satisfaction
8.5
Has the product been a good partner in doing business?
Average: 8.7
9.0
Real-Time Data Collection
Average: 8.7
8.2
Machine Scaling
Average: 8.7
7.8
Data Preparation
Average: 8.6
Seller Details
Seller
Confluent
Year Founded
2014
HQ Location
Mountain View, California
Twitter
@ConfluentInc
43,213 Twitter followers
LinkedIn® Page
www.linkedin.com
3,482 employees on LinkedIn®
Ownership
NASDAQ: CFLT
(22)4.4 out of 5
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  • Overview
    Expand/Collapse Overview
  • Product Description
    How are these determined?Information
    This description is provided by the seller.

    Cloud Dataproc is a fast, easy-to-use, fully-managed cloud service for running Apache Spark and Apache Hadoop clusters in a simpler, more cost-efficient way. Operations that used to take hours or days

    Users
    No information available
    Industries
    • Information Technology and Services
    Market Segment
    • 36% Mid-Market
    • 27% Enterprise
  • User Satisfaction
    Expand/Collapse User Satisfaction
  • Google Cloud Dataproc features and usability ratings that predict user satisfaction
    7.5
    Has the product been a good partner in doing business?
    Average: 8.7
    8.1
    Real-Time Data Collection
    Average: 8.7
    9.2
    Machine Scaling
    Average: 8.7
    7.9
    Data Preparation
    Average: 8.6
  • Seller Details
    Expand/Collapse Seller Details
  • Seller Details
    Seller
    Google
    Year Founded
    1998
    HQ Location
    Mountain View, CA
    Twitter
    @google
    32,750,646 Twitter followers
    LinkedIn® Page
    www.linkedin.com
    310,061 employees on LinkedIn®
    Ownership
    NASDAQ:GOOG
Product Description
How are these determined?Information
This description is provided by the seller.

Cloud Dataproc is a fast, easy-to-use, fully-managed cloud service for running Apache Spark and Apache Hadoop clusters in a simpler, more cost-efficient way. Operations that used to take hours or days

Users
No information available
Industries
  • Information Technology and Services
Market Segment
  • 36% Mid-Market
  • 27% Enterprise
Google Cloud Dataproc features and usability ratings that predict user satisfaction
7.5
Has the product been a good partner in doing business?
Average: 8.7
8.1
Real-Time Data Collection
Average: 8.7
9.2
Machine Scaling
Average: 8.7
7.9
Data Preparation
Average: 8.6
Seller Details
Seller
Google
Year Founded
1998
HQ Location
Mountain View, CA
Twitter
@google
32,750,646 Twitter followers
LinkedIn® Page
www.linkedin.com
310,061 employees on LinkedIn®
Ownership
NASDAQ:GOOG
  • Overview
    Expand/Collapse Overview
  • Product Description
    How are these determined?Information
    This description is provided by the seller.

    HDInsight is a fully-managed cloud Hadoop offering that provides optimized open source analytic clusters for Spark, Hive, MapReduce, HBase, Storm, Kafka, and R Server backed by a 99.9% SLA.

    Users
    No information available
    Industries
    No information available
    Market Segment
    • 53% Enterprise
    • 47% Mid-Market
  • User Satisfaction
    Expand/Collapse User Satisfaction
  • Azure HDInsight features and usability ratings that predict user satisfaction
    8.8
    Has the product been a good partner in doing business?
    Average: 8.7
    8.9
    Real-Time Data Collection
    Average: 8.7
    9.0
    Machine Scaling
    Average: 8.7
    9.3
    Data Preparation
    Average: 8.6
  • Seller Details
    Expand/Collapse Seller Details
  • Seller Details
    Seller
    Microsoft
    Year Founded
    1975
    HQ Location
    Redmond, Washington
    Twitter
    @microsoft
    14,002,464 Twitter followers
    LinkedIn® Page
    www.linkedin.com
    237,523 employees on LinkedIn®
    Ownership
    MSFT
Product Description
How are these determined?Information
This description is provided by the seller.

HDInsight is a fully-managed cloud Hadoop offering that provides optimized open source analytic clusters for Spark, Hive, MapReduce, HBase, Storm, Kafka, and R Server backed by a 99.9% SLA.

Users
No information available
Industries
No information available
Market Segment
  • 53% Enterprise
  • 47% Mid-Market
Azure HDInsight features and usability ratings that predict user satisfaction
8.8
Has the product been a good partner in doing business?
Average: 8.7
8.9
Real-Time Data Collection
Average: 8.7
9.0
Machine Scaling
Average: 8.7
9.3
Data Preparation
Average: 8.6
Seller Details
Seller
Microsoft
Year Founded
1975
HQ Location
Redmond, Washington
Twitter
@microsoft
14,002,464 Twitter followers
LinkedIn® Page
www.linkedin.com
237,523 employees on LinkedIn®
Ownership
MSFT
  • Overview
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  • Product Description
    How are these determined?Information
    This description is provided by the seller.

    Control-M from BMC is a platform for integrating, automating, and orchestrating application and data workflows in production across complex hybrid technology ecosystems. It provides deep operational c

    Users
    No information available
    Industries
    • Information Technology and Services
    • Insurance
    Market Segment
    • 61% Enterprise
    • 19% Mid-Market
  • Pros and Cons
    Expand/Collapse Pros and Cons
  • Control-M Pros and Cons
    How are these determined?Information
    Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
    Pros
    Ease of Use
    2
    User Interface
    2
    Automation
    1
    Centralized Management
    1
    Collaboration
    1
    Cons
    Slow Performance
    3
    Complexity
    2
    Automation Limitations
    1
    Complex Navigation
    1
    Complex Pricing
    1
  • User Satisfaction
    Expand/Collapse User Satisfaction
  • Control-M features and usability ratings that predict user satisfaction
    9.1
    Has the product been a good partner in doing business?
    Average: 8.7
    9.7
    Real-Time Data Collection
    Average: 8.7
    8.8
    Machine Scaling
    Average: 8.7
    8.3
    Data Preparation
    Average: 8.6
  • Seller Details
    Expand/Collapse Seller Details
  • Seller Details
    Year Founded
    1980
    HQ Location
    Houston, TX
    Twitter
    @BMCSoftware
    49,477 Twitter followers
    LinkedIn® Page
    www.linkedin.com
    9,760 employees on LinkedIn®
    Phone
    713 918 8800
Product Description
How are these determined?Information
This description is provided by the seller.

Control-M from BMC is a platform for integrating, automating, and orchestrating application and data workflows in production across complex hybrid technology ecosystems. It provides deep operational c

Users
No information available
Industries
  • Information Technology and Services
  • Insurance
Market Segment
  • 61% Enterprise
  • 19% Mid-Market
Control-M Pros and Cons
How are these determined?Information
Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
Pros
Ease of Use
2
User Interface
2
Automation
1
Centralized Management
1
Collaboration
1
Cons
Slow Performance
3
Complexity
2
Automation Limitations
1
Complex Navigation
1
Complex Pricing
1
Control-M features and usability ratings that predict user satisfaction
9.1
Has the product been a good partner in doing business?
Average: 8.7
9.7
Real-Time Data Collection
Average: 8.7
8.8
Machine Scaling
Average: 8.7
8.3
Data Preparation
Average: 8.6
Seller Details
Year Founded
1980
HQ Location
Houston, TX
Twitter
@BMCSoftware
49,477 Twitter followers
LinkedIn® Page
www.linkedin.com
9,760 employees on LinkedIn®
Phone
713 918 8800
(23)4.5 out of 5
View top Consulting Services for Google Cloud Dataprep
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  • Overview
    Expand/Collapse Overview
  • Product Description
    How are these determined?Information
    This description is provided by the seller.

    Google Cloud Dataprep is an intelligent data service for visually exploring, cleaning, and preparing structured and unstructured data for analysis. Cloud Dataprep is serverless and works at any scale.

    Users
    No information available
    Industries
    No information available
    Market Segment
    • 43% Small-Business
    • 13% Enterprise
  • User Satisfaction
    Expand/Collapse User Satisfaction
  • Google Cloud Dataprep features and usability ratings that predict user satisfaction
    9.2
    Has the product been a good partner in doing business?
    Average: 8.7
    8.7
    Real-Time Data Collection
    Average: 8.7
    8.3
    Machine Scaling
    Average: 8.7
    9.2
    Data Preparation
    Average: 8.6
  • Seller Details
    Expand/Collapse Seller Details
  • Seller Details
    Seller
    Google
    Year Founded
    1998
    HQ Location
    Mountain View, CA
    Twitter
    @google
    32,750,646 Twitter followers
    LinkedIn® Page
    www.linkedin.com
    310,061 employees on LinkedIn®
    Ownership
    NASDAQ:GOOG
Product Description
How are these determined?Information
This description is provided by the seller.

Google Cloud Dataprep is an intelligent data service for visually exploring, cleaning, and preparing structured and unstructured data for analysis. Cloud Dataprep is serverless and works at any scale.

Users
No information available
Industries
No information available
Market Segment
  • 43% Small-Business
  • 13% Enterprise
Google Cloud Dataprep features and usability ratings that predict user satisfaction
9.2
Has the product been a good partner in doing business?
Average: 8.7
8.7
Real-Time Data Collection
Average: 8.7
8.3
Machine Scaling
Average: 8.7
9.2
Data Preparation
Average: 8.6
Seller Details
Seller
Google
Year Founded
1998
HQ Location
Mountain View, CA
Twitter
@google
32,750,646 Twitter followers
LinkedIn® Page
www.linkedin.com
310,061 employees on LinkedIn®
Ownership
NASDAQ:GOOG
Entry Level Price:Free
  • Overview
    Expand/Collapse Overview
  • Product Description
    How are these determined?Information
    This description is provided by the seller.

    TIMi is the most efficient Data Science and Data Processing Platform. Since 2007, we have been creating and improving the most powerful framework to push the barriers of analytics, predictive analyt

    Users
    No information available
    Industries
    • Information Technology and Services
    • Banking
    Market Segment
    • 39% Small-Business
    • 33% Enterprise
  • Pros and Cons
    Expand/Collapse Pros and Cons
  • TIMi Pros and Cons
    How are these determined?Information
    Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
    Pros
    Customer Support
    3
    Ease of Use
    3
    Features
    3
    Community Support
    2
    Efficiency
    2
    Cons
    This product has not yet received any negative sentiments.
  • User Satisfaction
    Expand/Collapse User Satisfaction
  • TIMi features and usability ratings that predict user satisfaction
    9.4
    Has the product been a good partner in doing business?
    Average: 8.7
    9.3
    Real-Time Data Collection
    Average: 8.7
    8.8
    Machine Scaling
    Average: 8.7
    9.5
    Data Preparation
    Average: 8.6
  • Seller Details
    Expand/Collapse Seller Details
  • Seller Details
    Seller
    TIMi SPRL
    Company Website
    Year Founded
    2007
    HQ Location
    Brussels
    Twitter
    @TIMiSuite
    3,652 Twitter followers
    LinkedIn® Page
    www.linkedin.com
    75 employees on LinkedIn®
Product Description
How are these determined?Information
This description is provided by the seller.

TIMi is the most efficient Data Science and Data Processing Platform. Since 2007, we have been creating and improving the most powerful framework to push the barriers of analytics, predictive analyt

Users
No information available
Industries
  • Information Technology and Services
  • Banking
Market Segment
  • 39% Small-Business
  • 33% Enterprise
TIMi Pros and Cons
How are these determined?Information
Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
Pros
Customer Support
3
Ease of Use
3
Features
3
Community Support
2
Efficiency
2
Cons
This product has not yet received any negative sentiments.
TIMi features and usability ratings that predict user satisfaction
9.4
Has the product been a good partner in doing business?
Average: 8.7
9.3
Real-Time Data Collection
Average: 8.7
8.8
Machine Scaling
Average: 8.7
9.5
Data Preparation
Average: 8.6
Seller Details
Seller
TIMi SPRL
Company Website
Year Founded
2007
HQ Location
Brussels
Twitter
@TIMiSuite
3,652 Twitter followers
LinkedIn® Page
www.linkedin.com
75 employees on LinkedIn®
(140)4.4 out of 5
16th Easiest To Use in Big Data Processing and Distribution software
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  • Overview
    Expand/Collapse Overview
  • Product Description
    How are these determined?Information
    This description is provided by the seller.

    Hadoop HDFS is a distributed, scalable, and portable filesystem written in Java.

    Users
    • Software Engineer
    • Data Engineer
    Industries
    • Computer Software
    • Information Technology and Services
    Market Segment
    • 55% Enterprise
    • 23% Mid-Market
  • Pros and Cons
    Expand/Collapse Pros and Cons
  • Hadoop HDFS Pros and Cons
    How are these determined?Information
    Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
    Pros
    Ease of Use
    2
    Large Datasets
    2
    Data Storage
    1
    Efficiency
    1
    Fast Processing
    1
    Cons
    Difficulty
    1
    Real-Time Analysis
    1
  • User Satisfaction
    Expand/Collapse User Satisfaction
  • Hadoop HDFS features and usability ratings that predict user satisfaction
    7.7
    Has the product been a good partner in doing business?
    Average: 8.7
    8.5
    Real-Time Data Collection
    Average: 8.7
    8.4
    Machine Scaling
    Average: 8.7
    8.6
    Data Preparation
    Average: 8.6
  • Seller Details
    Expand/Collapse Seller Details
  • Seller Details
    Year Founded
    1999
    HQ Location
    Wakefield, MA
    Twitter
    @TheASF
    65,927 Twitter followers
    LinkedIn® Page
    www.linkedin.com
    2,298 employees on LinkedIn®
Product Description
How are these determined?Information
This description is provided by the seller.

Hadoop HDFS is a distributed, scalable, and portable filesystem written in Java.

Users
  • Software Engineer
  • Data Engineer
Industries
  • Computer Software
  • Information Technology and Services
Market Segment
  • 55% Enterprise
  • 23% Mid-Market
Hadoop HDFS Pros and Cons
How are these determined?Information
Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
Pros
Ease of Use
2
Large Datasets
2
Data Storage
1
Efficiency
1
Fast Processing
1
Cons
Difficulty
1
Real-Time Analysis
1
Hadoop HDFS features and usability ratings that predict user satisfaction
7.7
Has the product been a good partner in doing business?
Average: 8.7
8.5
Real-Time Data Collection
Average: 8.7
8.4
Machine Scaling
Average: 8.7
8.6
Data Preparation
Average: 8.6
Seller Details
Year Founded
1999
HQ Location
Wakefield, MA
Twitter
@TheASF
65,927 Twitter followers
LinkedIn® Page
www.linkedin.com
2,298 employees on LinkedIn®
  • Overview
    Expand/Collapse Overview
  • Product Description
    How are these determined?Information
    This description is provided by the seller.

    Apache Spark for Azure HDInsight is an open source processing framework that runs large-scale data analytics applications.

    Users
    No information available
    Industries
    No information available
    Market Segment
    • 67% Mid-Market
    • 17% Enterprise
  • User Satisfaction
    Expand/Collapse User Satisfaction
  • Apache Spark for Azure HDInsight features and usability ratings that predict user satisfaction
    7.5
    Has the product been a good partner in doing business?
    Average: 8.7
    8.9
    Real-Time Data Collection
    Average: 8.7
    8.7
    Machine Scaling
    Average: 8.7
    8.3
    Data Preparation
    Average: 8.6
  • Seller Details
    Expand/Collapse Seller Details
  • Seller Details
    Seller
    Microsoft
    Year Founded
    1975
    HQ Location
    Redmond, Washington
    Twitter
    @microsoft
    14,002,464 Twitter followers
    LinkedIn® Page
    www.linkedin.com
    237,523 employees on LinkedIn®
    Ownership
    MSFT
Product Description
How are these determined?Information
This description is provided by the seller.

Apache Spark for Azure HDInsight is an open source processing framework that runs large-scale data analytics applications.

Users
No information available
Industries
No information available
Market Segment
  • 67% Mid-Market
  • 17% Enterprise
Apache Spark for Azure HDInsight features and usability ratings that predict user satisfaction
7.5
Has the product been a good partner in doing business?
Average: 8.7
8.9
Real-Time Data Collection
Average: 8.7
8.7
Machine Scaling
Average: 8.7
8.3
Data Preparation
Average: 8.6
Seller Details
Seller
Microsoft
Year Founded
1975
HQ Location
Redmond, Washington
Twitter
@microsoft
14,002,464 Twitter followers
LinkedIn® Page
www.linkedin.com
237,523 employees on LinkedIn®
Ownership
MSFT
(38)4.0 out of 5
18th Easiest To Use in Big Data Processing and Distribution software
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  • Overview
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  • Product Description
    How are these determined?Information
    This description is provided by the seller.

    At Cloudera, we believe data can make what is impossible today, possible tomorrow. We deliver an enterprise data cloud for any data, anywhere, from the Edge to AI. We enable people to transform vast a

    Users
    No information available
    Industries
    • Information Technology and Services
    • Computer Software
    Market Segment
    • 50% Enterprise
    • 24% Mid-Market
  • User Satisfaction
    Expand/Collapse User Satisfaction
  • Cloudera features and usability ratings that predict user satisfaction
    7.8
    Has the product been a good partner in doing business?
    Average: 8.7
    7.8
    Real-Time Data Collection
    Average: 8.7
    9.2
    Machine Scaling
    Average: 8.7
    7.5
    Data Preparation
    Average: 8.6
  • Seller Details
    Expand/Collapse Seller Details
  • Seller Details
    Seller
    Cloudera
    Year Founded
    2008
    HQ Location
    Palo Alto, CA
    Twitter
    @cloudera
    107,764 Twitter followers
    LinkedIn® Page
    www.linkedin.com
    3,262 employees on LinkedIn®
    Phone
    888-789-1488
Product Description
How are these determined?Information
This description is provided by the seller.

At Cloudera, we believe data can make what is impossible today, possible tomorrow. We deliver an enterprise data cloud for any data, anywhere, from the Edge to AI. We enable people to transform vast a

Users
No information available
Industries
  • Information Technology and Services
  • Computer Software
Market Segment
  • 50% Enterprise
  • 24% Mid-Market
Cloudera features and usability ratings that predict user satisfaction
7.8
Has the product been a good partner in doing business?
Average: 8.7
7.8
Real-Time Data Collection
Average: 8.7
9.2
Machine Scaling
Average: 8.7
7.5
Data Preparation
Average: 8.6
Seller Details
Seller
Cloudera
Year Founded
2008
HQ Location
Palo Alto, CA
Twitter
@cloudera
107,764 Twitter followers
LinkedIn® Page
www.linkedin.com
3,262 employees on LinkedIn®
Phone
888-789-1488
  • Overview
    Expand/Collapse Overview
  • Product Description
    How are these determined?Information
    This description is provided by the seller.

    Posit was founded with the mission to create open-source software for data science, scientific research, and technical communication. We don’t just say this: it’s fundamentally baked into our corporat

    Users
    • Research Assistant
    • Graduate Research Assistant
    Industries
    • Higher Education
    • Information Technology and Services
    Market Segment
    • 49% Enterprise
    • 27% Mid-Market
  • Pros and Cons
    Expand/Collapse Pros and Cons
  • Posit Pros and Cons
    How are these determined?Information
    Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
    Pros
    Ease of Use
    4
    Open Source
    3
    Cloud Computing
    2
    Cloud Integration
    2
    Easy Integrations
    2
    Cons
    Slow Performance
    3
    Poor UI Design
    2
    UX Improvement
    2
    Error Clarity
    1
    Learning Curve
    1
  • User Satisfaction
    Expand/Collapse User Satisfaction
  • Posit features and usability ratings that predict user satisfaction
    8.5
    Has the product been a good partner in doing business?
    Average: 8.7
    8.9
    Real-Time Data Collection
    Average: 8.7
    7.5
    Machine Scaling
    Average: 8.7
    8.5
    Data Preparation
    Average: 8.6
  • Seller Details
    Expand/Collapse Seller Details
  • Seller Details
    Seller
    Posit
    Year Founded
    2009
    HQ Location
    Boston, MA
    Twitter
    @posit_pbc
    123,669 Twitter followers
    LinkedIn® Page
    www.linkedin.com
    431 employees on LinkedIn®
Product Description
How are these determined?Information
This description is provided by the seller.

Posit was founded with the mission to create open-source software for data science, scientific research, and technical communication. We don’t just say this: it’s fundamentally baked into our corporat

Users
  • Research Assistant
  • Graduate Research Assistant
Industries
  • Higher Education
  • Information Technology and Services
Market Segment
  • 49% Enterprise
  • 27% Mid-Market
Posit Pros and Cons
How are these determined?Information
Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
Pros
Ease of Use
4
Open Source
3
Cloud Computing
2
Cloud Integration
2
Easy Integrations
2
Cons
Slow Performance
3
Poor UI Design
2
UX Improvement
2
Error Clarity
1
Learning Curve
1
Posit features and usability ratings that predict user satisfaction
8.5
Has the product been a good partner in doing business?
Average: 8.7
8.9
Real-Time Data Collection
Average: 8.7
7.5
Machine Scaling
Average: 8.7
8.5
Data Preparation
Average: 8.6
Seller Details
Seller
Posit
Year Founded
2009
HQ Location
Boston, MA
Twitter
@posit_pbc
123,669 Twitter followers
LinkedIn® Page
www.linkedin.com
431 employees on LinkedIn®
  • Overview
    Expand/Collapse Overview
  • Product Description
    How are these determined?Information
    This description is provided by the seller.

    Hadoop Distribution

    Users
    No information available
    Industries
    • Internet
    Market Segment
    • 67% Enterprise
    • 25% Mid-Market
  • User Satisfaction
    Expand/Collapse User Satisfaction
  • Hortonworks Data Platform features and usability ratings that predict user satisfaction
    9.0
    Has the product been a good partner in doing business?
    Average: 8.7
    8.3
    Real-Time Data Collection
    Average: 8.7
    9.2
    Machine Scaling
    Average: 8.7
    8.3
    Data Preparation
    Average: 8.6
  • Seller Details
    Expand/Collapse Seller Details
  • Seller Details
    Seller
    Cloudera
    Year Founded
    2008
    HQ Location
    Palo Alto, CA
    Twitter
    @cloudera
    107,764 Twitter followers
    LinkedIn® Page
    www.linkedin.com
    3,262 employees on LinkedIn®
    Phone
    888-789-1488
Product Description
How are these determined?Information
This description is provided by the seller.

Hadoop Distribution

Users
No information available
Industries
  • Internet
Market Segment
  • 67% Enterprise
  • 25% Mid-Market
Hortonworks Data Platform features and usability ratings that predict user satisfaction
9.0
Has the product been a good partner in doing business?
Average: 8.7
8.3
Real-Time Data Collection
Average: 8.7
9.2
Machine Scaling
Average: 8.7
8.3
Data Preparation
Average: 8.6
Seller Details
Seller
Cloudera
Year Founded
2008
HQ Location
Palo Alto, CA
Twitter
@cloudera
107,764 Twitter followers
LinkedIn® Page
www.linkedin.com
3,262 employees on LinkedIn®
Phone
888-789-1488
  • Overview
    Expand/Collapse Overview
  • Product Description
    How are these determined?Information
    This description is provided by the seller.

    Apache Apex is an enterprise grade native YARN big data-in-motion platform designed to unify stream processing as well as batch processing.

    Users
    No information available
    Industries
    • Information Technology and Services
    Market Segment
    • 33% Enterprise
    • 33% Mid-Market
  • Pros and Cons
    Expand/Collapse Pros and Cons
  • Apache Apex Pros and Cons
    How are these determined?Information
    Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
    Pros
    Ease of Use
    3
    Fast Processing
    3
    Large Datasets
    3
    Scalability
    3
    Customer Support
    1
    Cons
    Complexity
    1
    Difficulty
    1
    Increased Costs
    1
    Learning Curve
    1
    Limited Features
    1
  • User Satisfaction
    Expand/Collapse User Satisfaction
  • Apache Apex features and usability ratings that predict user satisfaction
    8.8
    Has the product been a good partner in doing business?
    Average: 8.7
    9.3
    Real-Time Data Collection
    Average: 8.7
    8.8
    Machine Scaling
    Average: 8.7
    8.7
    Data Preparation
    Average: 8.6
  • Seller Details
    Expand/Collapse Seller Details
  • Seller Details
    Year Founded
    1999
    HQ Location
    Wakefield, MA
    Twitter
    @TheASF
    65,927 Twitter followers
    LinkedIn® Page
    www.linkedin.com
    2,298 employees on LinkedIn®
Product Description
How are these determined?Information
This description is provided by the seller.

Apache Apex is an enterprise grade native YARN big data-in-motion platform designed to unify stream processing as well as batch processing.

Users
No information available
Industries
  • Information Technology and Services
Market Segment
  • 33% Enterprise
  • 33% Mid-Market
Apache Apex Pros and Cons
How are these determined?Information
Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
Pros
Ease of Use
3
Fast Processing
3
Large Datasets
3
Scalability
3
Customer Support
1
Cons
Complexity
1
Difficulty
1
Increased Costs
1
Learning Curve
1
Limited Features
1
Apache Apex features and usability ratings that predict user satisfaction
8.8
Has the product been a good partner in doing business?
Average: 8.7
9.3
Real-Time Data Collection
Average: 8.7
8.8
Machine Scaling
Average: 8.7
8.7
Data Preparation
Average: 8.6
Seller Details
Year Founded
1999
HQ Location
Wakefield, MA
Twitter
@TheASF
65,927 Twitter followers
LinkedIn® Page
www.linkedin.com
2,298 employees on LinkedIn®
(14)4.0 out of 5
View top Consulting Services for Oracle Big Data Cloud Service
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  • Overview
    Expand/Collapse Overview
  • Product Description
    How are these determined?Information
    This description is provided by the seller.

    Oracle Big Data Cloud Service offers an integrated portfolio of products to help organize and analyze diverse data sources alongside existing data.

    Users
    No information available
    Industries
    No information available
    Market Segment
    • 64% Enterprise
    • 21% Small-Business
  • User Satisfaction
    Expand/Collapse User Satisfaction
  • Oracle Big Data Cloud Service features and usability ratings that predict user satisfaction
    6.7
    Has the product been a good partner in doing business?
    Average: 8.7
    8.7
    Real-Time Data Collection
    Average: 8.7
    8.7
    Machine Scaling
    Average: 8.7
    8.1
    Data Preparation
    Average: 8.6
  • Seller Details
    Expand/Collapse Seller Details
  • Seller Details
    Seller
    Oracle
    Year Founded
    1977
    HQ Location
    Austin, TX
    Twitter
    @Oracle
    822,135 Twitter followers
    LinkedIn® Page
    www.linkedin.com
    204,855 employees on LinkedIn®
    Ownership
    NYSE:ORCL
Product Description
How are these determined?Information
This description is provided by the seller.

Oracle Big Data Cloud Service offers an integrated portfolio of products to help organize and analyze diverse data sources alongside existing data.

Users
No information available
Industries
No information available
Market Segment
  • 64% Enterprise
  • 21% Small-Business
Oracle Big Data Cloud Service features and usability ratings that predict user satisfaction
6.7
Has the product been a good partner in doing business?
Average: 8.7
8.7
Real-Time Data Collection
Average: 8.7
8.7
Machine Scaling
Average: 8.7
8.1
Data Preparation
Average: 8.6
Seller Details
Seller
Oracle
Year Founded
1977
HQ Location
Austin, TX
Twitter
@Oracle
822,135 Twitter followers
LinkedIn® Page
www.linkedin.com
204,855 employees on LinkedIn®
Ownership
NYSE:ORCL
(259)4.0 out of 5
17th Easiest To Use in Big Data Processing and Distribution software
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Entry Level Price:30 day free trial
  • Overview
    Expand/Collapse Overview
  • Product Description
    How are these determined?Information
    This description is provided by the seller.

    Qubole is the open data lake company that provides a simple and secure data lake platform for machine learning, streaming, and ad-hoc analytics. No other platform provides the openness and data worklo

    Users
    • Software Engineer
    • Data Scientist
    Industries
    • Computer Software
    • Information Technology and Services
    Market Segment
    • 51% Enterprise
    • 44% Mid-Market
  • User Satisfaction
    Expand/Collapse User Satisfaction
  • Qubole features and usability ratings that predict user satisfaction
    8.1
    Has the product been a good partner in doing business?
    Average: 8.7
    8.0
    Real-Time Data Collection
    Average: 8.7
    8.3
    Machine Scaling
    Average: 8.7
    8.3
    Data Preparation
    Average: 8.6
  • Seller Details
    Expand/Collapse Seller Details
  • Seller Details
    Seller
    Qubole
    Year Founded
    2011
    HQ Location
    Santa Clara, CA
    Twitter
    @qubole
    9,595 Twitter followers
    LinkedIn® Page
    www.linkedin.com
    30 employees on LinkedIn®
Product Description
How are these determined?Information
This description is provided by the seller.

Qubole is the open data lake company that provides a simple and secure data lake platform for machine learning, streaming, and ad-hoc analytics. No other platform provides the openness and data worklo

Users
  • Software Engineer
  • Data Scientist
Industries
  • Computer Software
  • Information Technology and Services
Market Segment
  • 51% Enterprise
  • 44% Mid-Market
Qubole features and usability ratings that predict user satisfaction
8.1
Has the product been a good partner in doing business?
Average: 8.7
8.0
Real-Time Data Collection
Average: 8.7
8.3
Machine Scaling
Average: 8.7
8.3
Data Preparation
Average: 8.6
Seller Details
Seller
Qubole
Year Founded
2011
HQ Location
Santa Clara, CA
Twitter
@qubole
9,595 Twitter followers
LinkedIn® Page
www.linkedin.com
30 employees on LinkedIn®
(31)4.6 out of 5
12th Easiest To Use in Big Data Processing and Distribution software
Save to My Lists
Entry Level Price:Contact Us
  • Overview
    Expand/Collapse Overview
  • Product Description
    How are these determined?Information
    This description is provided by the seller.

    Snowplow is the leader in next-generation customer data infrastructure (CDI), enabling every data-driven organization to own and unlock the true value of its customer behavioral data to fuel AI, advan

    Users
    No information available
    Industries
    • Computer Software
    Market Segment
    • 52% Mid-Market
    • 35% Small-Business
  • Pros and Cons
    Expand/Collapse Pros and Cons
  • Snowplow Pros and Cons
    How are these determined?Information
    Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
    Pros
    Ease of Use
    1
    Intuitive Use
    1
    User Experience
    1
    User Interface
    1
    Cons
    Limited Access
    1
    Limited Accessibility
    1
    Search Difficulty
    1
    Usability Issues
    1
  • User Satisfaction
    Expand/Collapse User Satisfaction
  • Snowplow features and usability ratings that predict user satisfaction
    9.0
    Has the product been a good partner in doing business?
    Average: 8.7
    9.0
    Real-Time Data Collection
    Average: 8.7
    9.0
    Machine Scaling
    Average: 8.7
    8.9
    Data Preparation
    Average: 8.6
  • Seller Details
    Expand/Collapse Seller Details
  • Seller Details
    Seller
    Snowplow
    Year Founded
    2012
    HQ Location
    London, United Kingdom
    LinkedIn® Page
    www.linkedin.com
    162 employees on LinkedIn®
Product Description
How are these determined?Information
This description is provided by the seller.

Snowplow is the leader in next-generation customer data infrastructure (CDI), enabling every data-driven organization to own and unlock the true value of its customer behavioral data to fuel AI, advan

Users
No information available
Industries
  • Computer Software
Market Segment
  • 52% Mid-Market
  • 35% Small-Business
Snowplow Pros and Cons
How are these determined?Information
Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
Pros
Ease of Use
1
Intuitive Use
1
User Experience
1
User Interface
1
Cons
Limited Access
1
Limited Accessibility
1
Search Difficulty
1
Usability Issues
1
Snowplow features and usability ratings that predict user satisfaction
9.0
Has the product been a good partner in doing business?
Average: 8.7
9.0
Real-Time Data Collection
Average: 8.7
9.0
Machine Scaling
Average: 8.7
8.9
Data Preparation
Average: 8.6
Seller Details
Seller
Snowplow
Year Founded
2012
HQ Location
London, United Kingdom
LinkedIn® Page
www.linkedin.com
162 employees on LinkedIn®
  • Overview
    Expand/Collapse Overview
  • Product Description
    How are these determined?Information
    This description is provided by the seller.

    Upsolver lets you build at-scale data pipelines in days rather than months. You can ingest complex and streaming data via built-in connectors, define transformations using SQL commands, and output tab

    Users
    No information available
    Industries
    No information available
    Market Segment
    • 46% Mid-Market
    • 38% Small-Business
  • User Satisfaction
    Expand/Collapse User Satisfaction
  • Upsolver features and usability ratings that predict user satisfaction
    9.8
    Has the product been a good partner in doing business?
    Average: 8.7
    10.0
    Real-Time Data Collection
    Average: 8.7
    10.0
    Machine Scaling
    Average: 8.7
    10.0
    Data Preparation
    Average: 8.6
  • Seller Details
    Expand/Collapse Seller Details
  • Seller Details
    Seller
    Upsolver
    Year Founded
    2014
    HQ Location
    Sunnyvale, California
    Twitter
    @upsolver
    554 Twitter followers
    LinkedIn® Page
    www.linkedin.com
    31 employees on LinkedIn®
Product Description
How are these determined?Information
This description is provided by the seller.

Upsolver lets you build at-scale data pipelines in days rather than months. You can ingest complex and streaming data via built-in connectors, define transformations using SQL commands, and output tab

Users
No information available
Industries
No information available
Market Segment
  • 46% Mid-Market
  • 38% Small-Business
Upsolver features and usability ratings that predict user satisfaction
9.8
Has the product been a good partner in doing business?
Average: 8.7
10.0
Real-Time Data Collection
Average: 8.7
10.0
Machine Scaling
Average: 8.7
10.0
Data Preparation
Average: 8.6
Seller Details
Seller
Upsolver
Year Founded
2014
HQ Location
Sunnyvale, California
Twitter
@upsolver
554 Twitter followers
LinkedIn® Page
www.linkedin.com
31 employees on LinkedIn®
  • Overview
    Expand/Collapse Overview
  • Product Description
    How are these determined?Information
    This description is provided by the seller.

    Apache Chukwa is an open source data collection system for monitoring large distributed systems.

    Users
    No information available
    Industries
    No information available
    Market Segment
    • 70% Mid-Market
    • 30% Small-Business
  • User Satisfaction
    Expand/Collapse User Satisfaction
  • Apache Chukwa features and usability ratings that predict user satisfaction
    6.7
    Has the product been a good partner in doing business?
    Average: 8.7
    7.6
    Real-Time Data Collection
    Average: 8.7
    7.4
    Machine Scaling
    Average: 8.7
    8.3
    Data Preparation
    Average: 8.6
  • Seller Details
    Expand/Collapse Seller Details
  • Seller Details
    Year Founded
    1999
    HQ Location
    Wakefield, MA
    Twitter
    @TheASF
    65,927 Twitter followers
    LinkedIn® Page
    www.linkedin.com
    2,298 employees on LinkedIn®
Product Description
How are these determined?Information
This description is provided by the seller.

Apache Chukwa is an open source data collection system for monitoring large distributed systems.

Users
No information available
Industries
No information available
Market Segment
  • 70% Mid-Market
  • 30% Small-Business
Apache Chukwa features and usability ratings that predict user satisfaction
6.7
Has the product been a good partner in doing business?
Average: 8.7
7.6
Real-Time Data Collection
Average: 8.7
7.4
Machine Scaling
Average: 8.7
8.3
Data Preparation
Average: 8.6
Seller Details
Year Founded
1999
HQ Location
Wakefield, MA
Twitter
@TheASF
65,927 Twitter followers
LinkedIn® Page
www.linkedin.com
2,298 employees on LinkedIn®
(23)4.1 out of 5
15th Easiest To Use in Big Data Processing and Distribution software
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  • Overview
    Expand/Collapse Overview
  • Product Description
    How are these determined?Information
    This description is provided by the seller.

    Apache Ambari is a software project designed to enable system administrators to provision, manage and monitor a Hadoop cluster, and also to integrate Hadoop with the existing enterprise infrastructure

    Users
    No information available
    Industries
    No information available
    Market Segment
    • 65% Enterprise
    • 17% Small-Business
  • User Satisfaction
    Expand/Collapse User Satisfaction
  • Apache Ambari features and usability ratings that predict user satisfaction
    8.7
    Has the product been a good partner in doing business?
    Average: 8.7
    7.6
    Real-Time Data Collection
    Average: 8.7
    8.3
    Machine Scaling
    Average: 8.7
    8.6
    Data Preparation
    Average: 8.6
  • Seller Details
    Expand/Collapse Seller Details
  • Seller Details
    Year Founded
    1999
    HQ Location
    Wakefield, MA
    Twitter
    @TheASF
    65,927 Twitter followers
    LinkedIn® Page
    www.linkedin.com
    2,298 employees on LinkedIn®
Product Description
How are these determined?Information
This description is provided by the seller.

Apache Ambari is a software project designed to enable system administrators to provision, manage and monitor a Hadoop cluster, and also to integrate Hadoop with the existing enterprise infrastructure

Users
No information available
Industries
No information available
Market Segment
  • 65% Enterprise
  • 17% Small-Business
Apache Ambari features and usability ratings that predict user satisfaction
8.7
Has the product been a good partner in doing business?
Average: 8.7
7.6
Real-Time Data Collection
Average: 8.7
8.3
Machine Scaling
Average: 8.7
8.6
Data Preparation
Average: 8.6
Seller Details
Year Founded
1999
HQ Location
Wakefield, MA
Twitter
@TheASF
65,927 Twitter followers
LinkedIn® Page
www.linkedin.com
2,298 employees on LinkedIn®
(83)4.4 out of 5
13th Easiest To Use in Big Data Processing and Distribution software
Save to My Lists
  • Overview
    Expand/Collapse Overview
  • Product Description
    How are these determined?Information
    This description is provided by the seller.

    The Aerospike Real-time Data Platform enables organizations to act instantly across billions of transactions while reducing server footprint by up to 80 percent. The Aerospike multi-cloud platform pow

    Users
    • Software Engineer
    Industries
    • Marketing and Advertising
    • Information Technology and Services
    Market Segment
    • 45% Mid-Market
    • 34% Enterprise
  • User Satisfaction
    Expand/Collapse User Satisfaction
  • Aerospike features and usability ratings that predict user satisfaction
    9.2
    Has the product been a good partner in doing business?
    Average: 8.7
    0.0
    No information available
    0.0
    No information available
    0.0
    No information available
  • Seller Details
    Expand/Collapse Seller Details
  • Seller Details
    Seller
    Aerospike
    Year Founded
    2009
    HQ Location
    Mountain View, CA
    Twitter
    @aerospikedb
    7,908 Twitter followers
    LinkedIn® Page
    www.linkedin.com
    284 employees on LinkedIn®
Product Description
How are these determined?Information
This description is provided by the seller.

The Aerospike Real-time Data Platform enables organizations to act instantly across billions of transactions while reducing server footprint by up to 80 percent. The Aerospike multi-cloud platform pow

Users
  • Software Engineer
Industries
  • Marketing and Advertising
  • Information Technology and Services
Market Segment
  • 45% Mid-Market
  • 34% Enterprise
Aerospike features and usability ratings that predict user satisfaction
9.2
Has the product been a good partner in doing business?
Average: 8.7
0.0
No information available
0.0
No information available
0.0
No information available
Seller Details
Seller
Aerospike
Year Founded
2009
HQ Location
Mountain View, CA
Twitter
@aerospikedb
7,908 Twitter followers
LinkedIn® Page
www.linkedin.com
284 employees on LinkedIn®
  • Overview
    Expand/Collapse Overview
  • Product Description
    How are these determined?Information
    This description is provided by the seller.

    Prophecy is on a mission to make it simpler and faster to leverage the promise of data. Through our low-code data platform, data teams of all skill-levels can visually build transformation pipelines a

    Users
    • Senior Data Engineer
    Industries
    • Financial Services
    • Insurance
    Market Segment
    • 70% Enterprise
    • 17% Mid-Market
  • Pros and Cons
    Expand/Collapse Pros and Cons
  • Prophecy Pros and Cons
    How are these determined?Information
    Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
    Pros
    Ease of Use
    5
    Integration
    3
    Code Generation
    2
    Automation
    1
    Automation Focus
    1
    Cons
    Learning Curve
    4
    Difficulty
    3
    Feature Limitations
    2
    Not User-Friendly
    2
    Query Issues
    2
  • User Satisfaction
    Expand/Collapse User Satisfaction
  • Prophecy features and usability ratings that predict user satisfaction
    9.3
    Has the product been a good partner in doing business?
    Average: 8.7
    10.0
    Real-Time Data Collection
    Average: 8.7
    9.5
    Machine Scaling
    Average: 8.7
    9.8
    Data Preparation
    Average: 8.6
  • Seller Details
    Expand/Collapse Seller Details
  • Seller Details
    Seller
    Prophecy
    Year Founded
    2017
    HQ Location
    San Diego, US
    Twitter
    @Prophecy_io
    292 Twitter followers
    LinkedIn® Page
    www.linkedin.com
    168 employees on LinkedIn®
Product Description
How are these determined?Information
This description is provided by the seller.

Prophecy is on a mission to make it simpler and faster to leverage the promise of data. Through our low-code data platform, data teams of all skill-levels can visually build transformation pipelines a

Users
  • Senior Data Engineer
Industries
  • Financial Services
  • Insurance
Market Segment
  • 70% Enterprise
  • 17% Mid-Market
Prophecy Pros and Cons
How are these determined?Information
Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
Pros
Ease of Use
5
Integration
3
Code Generation
2
Automation
1
Automation Focus
1
Cons
Learning Curve
4
Difficulty
3
Feature Limitations
2
Not User-Friendly
2
Query Issues
2
Prophecy features and usability ratings that predict user satisfaction
9.3
Has the product been a good partner in doing business?
Average: 8.7
10.0
Real-Time Data Collection
Average: 8.7
9.5
Machine Scaling
Average: 8.7
9.8
Data Preparation
Average: 8.6
Seller Details
Seller
Prophecy
Year Founded
2017
HQ Location
San Diego, US
Twitter
@Prophecy_io
292 Twitter followers
LinkedIn® Page
www.linkedin.com
168 employees on LinkedIn®
  • Overview
    Expand/Collapse Overview
  • Product Description
    How are these determined?Information
    This description is provided by the seller.

    Apache Beam is an open source unified programming model designed to define and execute data processing pipelines, including ETL, batch and stream processing.

    Users
    No information available
    Industries
    No information available
    Market Segment
    • 44% Mid-Market
    • 38% Small-Business
  • User Satisfaction
    Expand/Collapse User Satisfaction
  • Apache Beam features and usability ratings that predict user satisfaction
    7.1
    Has the product been a good partner in doing business?
    Average: 8.7
    7.7
    Real-Time Data Collection
    Average: 8.7
    8.3
    Machine Scaling
    Average: 8.7
    8.1
    Data Preparation
    Average: 8.6
  • Seller Details
    Expand/Collapse Seller Details
  • Seller Details
    Year Founded
    1999
    HQ Location
    Wakefield, MA
    Twitter
    @TheASF
    65,927 Twitter followers
    LinkedIn® Page
    www.linkedin.com
    2,298 employees on LinkedIn®
Product Description
How are these determined?Information
This description is provided by the seller.

Apache Beam is an open source unified programming model designed to define and execute data processing pipelines, including ETL, batch and stream processing.

Users
No information available
Industries
No information available
Market Segment
  • 44% Mid-Market
  • 38% Small-Business
Apache Beam features and usability ratings that predict user satisfaction
7.1
Has the product been a good partner in doing business?
Average: 8.7
7.7
Real-Time Data Collection
Average: 8.7
8.3
Machine Scaling
Average: 8.7
8.1
Data Preparation
Average: 8.6
Seller Details
Year Founded
1999
HQ Location
Wakefield, MA
Twitter
@TheASF
65,927 Twitter followers
LinkedIn® Page
www.linkedin.com
2,298 employees on LinkedIn®
  • Overview
    Expand/Collapse Overview
  • Product Description
    How are these determined?Information
    This description is provided by the seller.

    Web based mysql client

    Users
    No information available
    Industries
    No information available
    Market Segment
    • 55% Small-Business
    • 36% Enterprise
  • User Satisfaction
    Expand/Collapse User Satisfaction
  • SQL Buddy features and usability ratings that predict user satisfaction
    9.4
    Has the product been a good partner in doing business?
    Average: 8.7
    0.0
    No information available
    0.0
    No information available
    0.0
    No information available
  • Seller Details
    Expand/Collapse Seller Details
  • Seller Details
    Seller
    WinSCP
    Year Founded
    2000
    HQ Location
    Praha, CZ
    Twitter
    @winscpnet
    1,800 Twitter followers
    LinkedIn® Page
    www.linkedin.com
    3 employees on LinkedIn®
Product Description
How are these determined?Information
This description is provided by the seller.

Web based mysql client

Users
No information available
Industries
No information available
Market Segment
  • 55% Small-Business
  • 36% Enterprise
SQL Buddy features and usability ratings that predict user satisfaction
9.4
Has the product been a good partner in doing business?
Average: 8.7
0.0
No information available
0.0
No information available
0.0
No information available
Seller Details
Seller
WinSCP
Year Founded
2000
HQ Location
Praha, CZ
Twitter
@winscpnet
1,800 Twitter followers
LinkedIn® Page
www.linkedin.com
3 employees on LinkedIn®
  • Overview
    Expand/Collapse Overview
  • Product Description
    How are these determined?Information
    This description is provided by the seller.

    Apache Druid is an open source real-time analytics database. Druid combines ideas from OLAP/analytic databases, timeseries databases, and search systems to create a complete real-time analytics soluti

    Users
    No information available
    Industries
    • Computer Software
    Market Segment
    • 52% Enterprise
    • 29% Mid-Market
  • User Satisfaction
    Expand/Collapse User Satisfaction
  • Druid features and usability ratings that predict user satisfaction
    7.7
    Has the product been a good partner in doing business?
    Average: 8.7
    8.5
    Real-Time Data Collection
    Average: 8.7
    8.5
    Machine Scaling
    Average: 8.7
    8.7
    Data Preparation
    Average: 8.6
  • Seller Details
    Expand/Collapse Seller Details
  • Seller Details
    Seller
    Druid
    Year Founded
    1998
    HQ Location
    Rio de Janeiro, Rio de Janeiro
    Twitter
    @druid
    4 Twitter followers
    LinkedIn® Page
    www.linkedin.com
    79 employees on LinkedIn®
Product Description
How are these determined?Information
This description is provided by the seller.

Apache Druid is an open source real-time analytics database. Druid combines ideas from OLAP/analytic databases, timeseries databases, and search systems to create a complete real-time analytics soluti

Users
No information available
Industries
  • Computer Software
Market Segment
  • 52% Enterprise
  • 29% Mid-Market
Druid features and usability ratings that predict user satisfaction
7.7
Has the product been a good partner in doing business?
Average: 8.7
8.5
Real-Time Data Collection
Average: 8.7
8.5
Machine Scaling
Average: 8.7
8.7
Data Preparation
Average: 8.6
Seller Details
Seller
Druid
Year Founded
1998
HQ Location
Rio de Janeiro, Rio de Janeiro
Twitter
@druid
4 Twitter followers
LinkedIn® Page
www.linkedin.com
79 employees on LinkedIn®
(31)4.3 out of 5
View top Consulting Services for Oracle Enterprise Management
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  • Overview
    Expand/Collapse Overview
  • Product Description
    How are these determined?Information
    This description is provided by the seller.

    Oracle Big Data Cloud at Customer delivers the complete value of Oracle Big Data Cloud Service to customers who require their Big Data platform to be located on-premises.

    Users
    No information available
    Industries
    No information available
    Market Segment
    • 29% Enterprise
    • 19% Mid-Market
  • Pros and Cons
    Expand/Collapse Pros and Cons
  • Oracle Enterprise Management Pros and Cons
    How are these determined?Information
    Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
    Pros
    Ease of Use
    2
    Features
    2
    Setup Ease
    1
    Cons
    This product has not yet received any negative sentiments.
  • User Satisfaction
    Expand/Collapse User Satisfaction
  • Oracle Enterprise Management features and usability ratings that predict user satisfaction
    8.5
    Has the product been a good partner in doing business?
    Average: 8.7
    8.3
    Real-Time Data Collection
    Average: 8.7
    7.2
    Machine Scaling
    Average: 8.7
    7.2
    Data Preparation
    Average: 8.6
  • Seller Details
    Expand/Collapse Seller Details
  • Seller Details
    Seller
    Oracle
    Year Founded
    1977
    HQ Location
    Austin, TX
    Twitter
    @Oracle
    822,135 Twitter followers
    LinkedIn® Page
    www.linkedin.com
    204,855 employees on LinkedIn®
    Ownership
    NYSE:ORCL
Product Description
How are these determined?Information
This description is provided by the seller.

Oracle Big Data Cloud at Customer delivers the complete value of Oracle Big Data Cloud Service to customers who require their Big Data platform to be located on-premises.

Users
No information available
Industries
No information available
Market Segment
  • 29% Enterprise
  • 19% Mid-Market
Oracle Enterprise Management Pros and Cons
How are these determined?Information
Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
Pros
Ease of Use
2
Features
2
Setup Ease
1
Cons
This product has not yet received any negative sentiments.
Oracle Enterprise Management features and usability ratings that predict user satisfaction
8.5
Has the product been a good partner in doing business?
Average: 8.7
8.3
Real-Time Data Collection
Average: 8.7
7.2
Machine Scaling
Average: 8.7
7.2
Data Preparation
Average: 8.6
Seller Details
Seller
Oracle
Year Founded
1977
HQ Location
Austin, TX
Twitter
@Oracle
822,135 Twitter followers
LinkedIn® Page
www.linkedin.com
204,855 employees on LinkedIn®
Ownership
NYSE:ORCL
(12)3.7 out of 5
19th Easiest To Use in Big Data Processing and Distribution software
Save to My Lists
  • Overview
    Expand/Collapse Overview
  • Product Description
    How are these determined?Information
    This description is provided by the seller.

    Apache Storm is a free and open source distributed realtime computation system. Storm makes it easy to reliably process unbounded streams of data, doing for realtime processing what Hadoop did for bat

    Users
    No information available
    Industries
    No information available
    Market Segment
    • 58% Small-Business
    • 33% Enterprise
  • User Satisfaction
    Expand/Collapse User Satisfaction
  • Apache Storm features and usability ratings that predict user satisfaction
    8.0
    Has the product been a good partner in doing business?
    Average: 8.7
    6.7
    Real-Time Data Collection
    Average: 8.7
    8.3
    Machine Scaling
    Average: 8.7
    8.3
    Data Preparation
    Average: 8.6
  • Seller Details
    Expand/Collapse Seller Details
  • Seller Details
    Year Founded
    1999
    HQ Location
    Wakefield, MA
    Twitter
    @TheASF
    65,927 Twitter followers
    LinkedIn® Page
    www.linkedin.com
    2,298 employees on LinkedIn®
Product Description
How are these determined?Information
This description is provided by the seller.

Apache Storm is a free and open source distributed realtime computation system. Storm makes it easy to reliably process unbounded streams of data, doing for realtime processing what Hadoop did for bat

Users
No information available
Industries
No information available
Market Segment
  • 58% Small-Business
  • 33% Enterprise
Apache Storm features and usability ratings that predict user satisfaction
8.0
Has the product been a good partner in doing business?
Average: 8.7
6.7
Real-Time Data Collection
Average: 8.7
8.3
Machine Scaling
Average: 8.7
8.3
Data Preparation
Average: 8.6
Seller Details
Year Founded
1999
HQ Location
Wakefield, MA
Twitter
@TheASF
65,927 Twitter followers
LinkedIn® Page
www.linkedin.com
2,298 employees on LinkedIn®
  • Overview
    Expand/Collapse Overview
  • Product Description
    How are these determined?Information
    This description is provided by the seller.

    HVR is a real-time data replication solution designed to move large volumes of data FAST and efficiently in hybrid environments for real-time analytics. With HVR, discover the benefits of using log-b

    Users
    No information available
    Industries
    No information available
    Market Segment
    • 77% Enterprise
    • 15% Mid-Market
  • User Satisfaction
    Expand/Collapse User Satisfaction
  • HVR features and usability ratings that predict user satisfaction
    9.8
    Has the product been a good partner in doing business?
    Average: 8.7
    9.3
    Real-Time Data Collection
    Average: 8.7
    8.3
    Machine Scaling
    Average: 8.7
    7.8
    Data Preparation
    Average: 8.6
  • Seller Details
    Expand/Collapse Seller Details
  • Seller Details
    Seller
    Fivetran
    Year Founded
    2012
    HQ Location
    Oakland, CA
    Twitter
    @fivetran
    5,550 Twitter followers
    LinkedIn® Page
    www.linkedin.com
    1,391 employees on LinkedIn®
Product Description
How are these determined?Information
This description is provided by the seller.

HVR is a real-time data replication solution designed to move large volumes of data FAST and efficiently in hybrid environments for real-time analytics. With HVR, discover the benefits of using log-b

Users
No information available
Industries
No information available
Market Segment
  • 77% Enterprise
  • 15% Mid-Market
HVR features and usability ratings that predict user satisfaction
9.8
Has the product been a good partner in doing business?
Average: 8.7
9.3
Real-Time Data Collection
Average: 8.7
8.3
Machine Scaling
Average: 8.7
7.8
Data Preparation
Average: 8.6
Seller Details
Seller
Fivetran
Year Founded
2012
HQ Location
Oakland, CA
Twitter
@fivetran
5,550 Twitter followers
LinkedIn® Page
www.linkedin.com
1,391 employees on LinkedIn®
  • Overview
    Expand/Collapse Overview
  • Product Description
    How are these determined?Information
    This description is provided by the seller.

    Hazelcast Platform is a unified real-time data platform that enables companies to act instantly on data in motion. It combines high-performance stream processing capabilities with a built-in fast data

    Users
    No information available
    Industries
    No information available
    Market Segment
    • 54% Small-Business
    • 23% Enterprise
  • User Satisfaction
    Expand/Collapse User Satisfaction
  • Hazelcast Platform features and usability ratings that predict user satisfaction
    8.3
    Has the product been a good partner in doing business?
    Average: 8.7
    8.3
    Real-Time Data Collection
    Average: 8.7
    10.0
    Machine Scaling
    Average: 8.7
    10.0
    Data Preparation
    Average: 8.6
  • Seller Details
    Expand/Collapse Seller Details
  • Seller Details
    Seller
    Hazelcast
    Year Founded
    2010
    HQ Location
    Palo Alto, US
    Twitter
    @hazelcast
    9,580 Twitter followers
    LinkedIn® Page
    www.linkedin.com
    161 employees on LinkedIn®
Product Description
How are these determined?Information
This description is provided by the seller.

Hazelcast Platform is a unified real-time data platform that enables companies to act instantly on data in motion. It combines high-performance stream processing capabilities with a built-in fast data

Users
No information available
Industries
No information available
Market Segment
  • 54% Small-Business
  • 23% Enterprise
Hazelcast Platform features and usability ratings that predict user satisfaction
8.3
Has the product been a good partner in doing business?
Average: 8.7
8.3
Real-Time Data Collection
Average: 8.7
10.0
Machine Scaling
Average: 8.7
10.0
Data Preparation
Average: 8.6
Seller Details
Seller
Hazelcast
Year Founded
2010
HQ Location
Palo Alto, US
Twitter
@hazelcast
9,580 Twitter followers
LinkedIn® Page
www.linkedin.com
161 employees on LinkedIn®
  • Overview
    Expand/Collapse Overview
  • Product Description
    How are these determined?Information
    This description is provided by the seller.

    Tinybird is the real-time data platform. At Tinybird, we enable developers and data teams to harness the power of real-time data and quickly build data pipelines and data products. With Tinybird, you

    Users
    No information available
    Industries
    • Computer Software
    Market Segment
    • 50% Mid-Market
    • 36% Small-Business
  • Pros and Cons
    Expand/Collapse Pros and Cons
  • Tinybird Pros and Cons
    How are these determined?Information
    Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
    Pros
    Analytics
    3
    Ease of Use
    3
    API Management
    2
    API Testing
    2
    Automation
    2
    Cons
    Poor Customer Support
    3
    Lack of Features
    2
    Learning Curve
    2
    Learning Difficulty
    2
    Limited Customization
    2
  • User Satisfaction
    Expand/Collapse User Satisfaction
  • Tinybird features and usability ratings that predict user satisfaction
    10.0
    Has the product been a good partner in doing business?
    Average: 8.7
    10.0
    Real-Time Data Collection
    Average: 8.7
    9.4
    Machine Scaling
    Average: 8.7
    9.4
    Data Preparation
    Average: 8.6
  • Seller Details
    Expand/Collapse Seller Details
  • Seller Details
    Seller
    Tinybird
    Year Founded
    2019
    HQ Location
    New York, US
    Twitter
    @tinybirdco
    6,688 Twitter followers
    LinkedIn® Page
    www.linkedin.com
    78 employees on LinkedIn®
Product Description
How are these determined?Information
This description is provided by the seller.

Tinybird is the real-time data platform. At Tinybird, we enable developers and data teams to harness the power of real-time data and quickly build data pipelines and data products. With Tinybird, you

Users
No information available
Industries
  • Computer Software
Market Segment
  • 50% Mid-Market
  • 36% Small-Business
Tinybird Pros and Cons
How are these determined?Information
Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
Pros
Analytics
3
Ease of Use
3
API Management
2
API Testing
2
Automation
2
Cons
Poor Customer Support
3
Lack of Features
2
Learning Curve
2
Learning Difficulty
2
Limited Customization
2
Tinybird features and usability ratings that predict user satisfaction
10.0
Has the product been a good partner in doing business?
Average: 8.7
10.0
Real-Time Data Collection
Average: 8.7
9.4
Machine Scaling
Average: 8.7
9.4
Data Preparation
Average: 8.6
Seller Details
Seller
Tinybird
Year Founded
2019
HQ Location
New York, US
Twitter
@tinybirdco
6,688 Twitter followers
LinkedIn® Page
www.linkedin.com
78 employees on LinkedIn®
  • Overview
    Expand/Collapse Overview
  • Product Description
    How are these determined?Information
    This description is provided by the seller.

    GigaSpaces is redefining in-memory technology to drive enterprise digital transformation with unparalleled speed, performance and scale. The GigaSpaces Portfolio delivers the fastest, scalable and eas

    Users
    No information available
    Industries
    No information available
    Market Segment
    • 53% Enterprise
    • 33% Mid-Market
  • User Satisfaction
    Expand/Collapse User Satisfaction
  • GigaSpaces features and usability ratings that predict user satisfaction
    8.3
    Has the product been a good partner in doing business?
    Average: 8.7
    7.5
    Real-Time Data Collection
    Average: 8.7
    8.3
    Machine Scaling
    Average: 8.7
    8.3
    Data Preparation
    Average: 8.6
  • Seller Details
    Expand/Collapse Seller Details
  • Seller Details
    Year Founded
    2000
    HQ Location
    Herziliyah, Central
    Twitter
    @GigaSpaces
    2,839 Twitter followers
    LinkedIn® Page
    www.linkedin.com
    112 employees on LinkedIn®
Product Description
How are these determined?Information
This description is provided by the seller.

GigaSpaces is redefining in-memory technology to drive enterprise digital transformation with unparalleled speed, performance and scale. The GigaSpaces Portfolio delivers the fastest, scalable and eas

Users
No information available
Industries
No information available
Market Segment
  • 53% Enterprise
  • 33% Mid-Market
GigaSpaces features and usability ratings that predict user satisfaction
8.3
Has the product been a good partner in doing business?
Average: 8.7
7.5
Real-Time Data Collection
Average: 8.7
8.3
Machine Scaling
Average: 8.7
8.3
Data Preparation
Average: 8.6
Seller Details
Year Founded
2000
HQ Location
Herziliyah, Central
Twitter
@GigaSpaces
2,839 Twitter followers
LinkedIn® Page
www.linkedin.com
112 employees on LinkedIn®
  • Overview
    Expand/Collapse Overview
  • Product Description
    How are these determined?Information
    This description is provided by the seller.

    Decodable radically simplifies real-time ETL with a powerful, easy-to-use real-time ETL platform. By removing the challenges of building and maintaining infrastructure and pipelines, Decodable enables

    Users
    No information available
    Industries
    No information available
    Market Segment
    • 44% Small-Business
    • 38% Mid-Market
  • Pros and Cons
    Expand/Collapse Pros and Cons
  • Decodable Pros and Cons
    How are these determined?Information
    Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
    Pros
    Ease of Use
    5
    Implementation Ease
    5
    Simple
    5
    Features
    4
    User Interface
    4
    Cons
    Complex Setup
    2
    Feature Limitations
    2
    Limitations
    2
    Limited Features
    2
    Performance Issues
    2
  • User Satisfaction
    Expand/Collapse User Satisfaction
  • Decodable features and usability ratings that predict user satisfaction
    10.0
    Has the product been a good partner in doing business?
    Average: 8.7
    8.3
    Real-Time Data Collection
    Average: 8.7
    8.9
    Machine Scaling
    Average: 8.7
    6.7
    Data Preparation
    Average: 8.6
  • Seller Details
    Expand/Collapse Seller Details
  • Seller Details
    Seller
    Decodable
    Year Founded
    2021
    HQ Location
    San Francisco, US
    Twitter
    @Decodableco
    2,727 Twitter followers
    LinkedIn® Page
    www.linkedin.com
    30 employees on LinkedIn®
Product Description
How are these determined?Information
This description is provided by the seller.

Decodable radically simplifies real-time ETL with a powerful, easy-to-use real-time ETL platform. By removing the challenges of building and maintaining infrastructure and pipelines, Decodable enables

Users
No information available
Industries
No information available
Market Segment
  • 44% Small-Business
  • 38% Mid-Market
Decodable Pros and Cons
How are these determined?Information
Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
Pros
Ease of Use
5
Implementation Ease
5
Simple
5
Features
4
User Interface
4
Cons
Complex Setup
2
Feature Limitations
2
Limitations
2
Limited Features
2
Performance Issues
2
Decodable features and usability ratings that predict user satisfaction
10.0
Has the product been a good partner in doing business?
Average: 8.7
8.3
Real-Time Data Collection
Average: 8.7
8.9
Machine Scaling
Average: 8.7
6.7
Data Preparation
Average: 8.6
Seller Details
Seller
Decodable
Year Founded
2021
HQ Location
San Francisco, US
Twitter
@Decodableco
2,727 Twitter followers
LinkedIn® Page
www.linkedin.com
30 employees on LinkedIn®
  • Overview
    Expand/Collapse Overview
  • Product Description
    How are these determined?Information
    This description is provided by the seller.

    GeoSpock enables data fusion for the connected world with GeoSpock DB – the space-time analytics database. GeoSpock DB is a unique, cloud-native database optimised for querying for real-world use case

    Users
    No information available
    Industries
    No information available
    Market Segment
    • 70% Enterprise
    • 20% Small-Business
  • User Satisfaction
    Expand/Collapse User Satisfaction
  • GeoSpock DB features and usability ratings that predict user satisfaction
    0.0
    No information available
    7.5
    Real-Time Data Collection
    Average: 8.7
    8.3
    Machine Scaling
    Average: 8.7
    8.3
    Data Preparation
    Average: 8.6
  • Seller Details
    Expand/Collapse Seller Details
  • Seller Details
    Seller
    GeoSpock
    Year Founded
    2013
    HQ Location
    Cambridge, GB
    Twitter
    @GeoSpock
    977 Twitter followers
    LinkedIn® Page
    www.linkedin.com
    2 employees on LinkedIn®
Product Description
How are these determined?Information
This description is provided by the seller.

GeoSpock enables data fusion for the connected world with GeoSpock DB – the space-time analytics database. GeoSpock DB is a unique, cloud-native database optimised for querying for real-world use case

Users
No information available
Industries
No information available
Market Segment
  • 70% Enterprise
  • 20% Small-Business
GeoSpock DB features and usability ratings that predict user satisfaction
0.0
No information available
7.5
Real-Time Data Collection
Average: 8.7
8.3
Machine Scaling
Average: 8.7
8.3
Data Preparation
Average: 8.6
Seller Details
Seller
GeoSpock
Year Founded
2013
HQ Location
Cambridge, GB
Twitter
@GeoSpock
977 Twitter followers
LinkedIn® Page
www.linkedin.com
2 employees on LinkedIn®
  • Overview
    Expand/Collapse Overview
  • Product Description
    How are these determined?Information
    This description is provided by the seller.

    GI Big Data Analytics is a complete Big Data platform for companies that want to really benefit from the best technologies on the market as well as the consulting & services in one package. GI Bi

    Users
    No information available
    Industries
    No information available
    Market Segment
    • 80% Small-Business
    • 20% Mid-Market
  • Pros and Cons
    Expand/Collapse Pros and Cons
  • GI Big Data Pros and Cons
    How are these determined?Information
    Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
    Pros
    Customer Support
    1
    Ease of Access
    1
    Ease of Implementation
    1
    Features
    1
    Integrations
    1
    Cons
    Data Storage Issues
    1
    Poor UI Design
    1
  • User Satisfaction
    Expand/Collapse User Satisfaction
  • GI Big Data features and usability ratings that predict user satisfaction
    9.4
    Has the product been a good partner in doing business?
    Average: 8.7
    8.9
    Real-Time Data Collection
    Average: 8.7
    9.2
    Machine Scaling
    Average: 8.7
    8.3
    Data Preparation
    Average: 8.6
  • Seller Details
    Expand/Collapse Seller Details
  • Seller Details
    Year Founded
    2007
    HQ Location
    N/A
    LinkedIn® Page
    www.linkedin.com
    6,657 employees on LinkedIn®
    Ownership
    NYSE: ZEN
Product Description
How are these determined?Information
This description is provided by the seller.

GI Big Data Analytics is a complete Big Data platform for companies that want to really benefit from the best technologies on the market as well as the consulting & services in one package. GI Bi

Users
No information available
Industries
No information available
Market Segment
  • 80% Small-Business
  • 20% Mid-Market
GI Big Data Pros and Cons
How are these determined?Information
Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
Pros
Customer Support
1
Ease of Access
1
Ease of Implementation
1
Features
1
Integrations
1
Cons
Data Storage Issues
1
Poor UI Design
1
GI Big Data features and usability ratings that predict user satisfaction
9.4
Has the product been a good partner in doing business?
Average: 8.7
8.9
Real-Time Data Collection
Average: 8.7
9.2
Machine Scaling
Average: 8.7
8.3
Data Preparation
Average: 8.6
Seller Details
Year Founded
2007
HQ Location
N/A
LinkedIn® Page
www.linkedin.com
6,657 employees on LinkedIn®
Ownership
NYSE: ZEN
  • Overview
    Expand/Collapse Overview
  • Product Description
    How are these determined?Information
    This description is provided by the seller.

    GridGain® is an in-memory computing platform solution designed to help organizations manage and process large volumes of data in real-time. Built on the robust Apache® Ignite™ framework, GridGain enab

    Users
    No information available
    Industries
    No information available
    Market Segment
    • 70% Small-Business
    • 20% Enterprise
  • Pros and Cons
    Expand/Collapse Pros and Cons
  • GridGain Pros and Cons
    How are these determined?Information
    Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
    Pros
    Performance
    4
    Speed
    4
    Analytics
    3
    Data Management
    3
    Data Processing
    3
    Cons
    Complex Setup
    3
    Complexity
    2
    Data Management Issues
    2
    Difficult Setup
    2
    Expensive
    2
  • User Satisfaction
    Expand/Collapse User Satisfaction
  • GridGain features and usability ratings that predict user satisfaction
    10.0
    Has the product been a good partner in doing business?
    Average: 8.7
    10.0
    Real-Time Data Collection
    Average: 8.7
    10.0
    Machine Scaling
    Average: 8.7
    8.9
    Data Preparation
    Average: 8.6
  • Seller Details
    Expand/Collapse Seller Details
  • Seller Details
    Company Website
    Year Founded
    2007
    HQ Location
    Foster City, California
    Twitter
    @gridgain
    5,565 Twitter followers
    LinkedIn® Page
    www.linkedin.com
    131 employees on LinkedIn®
Product Description
How are these determined?Information
This description is provided by the seller.

GridGain® is an in-memory computing platform solution designed to help organizations manage and process large volumes of data in real-time. Built on the robust Apache® Ignite™ framework, GridGain enab

Users
No information available
Industries
No information available
Market Segment
  • 70% Small-Business
  • 20% Enterprise
GridGain Pros and Cons
How are these determined?Information
Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
Pros
Performance
4
Speed
4
Analytics
3
Data Management
3
Data Processing
3
Cons
Complex Setup
3
Complexity
2
Data Management Issues
2
Difficult Setup
2
Expensive
2
GridGain features and usability ratings that predict user satisfaction
10.0
Has the product been a good partner in doing business?
Average: 8.7
10.0
Real-Time Data Collection
Average: 8.7
10.0
Machine Scaling
Average: 8.7
8.9
Data Preparation
Average: 8.6
Seller Details
Company Website
Year Founded
2007
HQ Location
Foster City, California
Twitter
@gridgain
5,565 Twitter followers
LinkedIn® Page
www.linkedin.com
131 employees on LinkedIn®
  • Overview
    Expand/Collapse Overview
  • Product Description
    How are these determined?Information
    This description is provided by the seller.

    Qlik Data Catalyst accelerates the transition towards modern data management by providing essential capabilities in four areas.

    Users
    No information available
    Industries
    No information available
    Market Segment
    • 36% Enterprise
    • 36% Mid-Market
  • User Satisfaction
    Expand/Collapse User Satisfaction
  • Qlik Catalog features and usability ratings that predict user satisfaction
    10.0
    Has the product been a good partner in doing business?
    Average: 8.7
    9.2
    Real-Time Data Collection
    Average: 8.7
    9.2
    Machine Scaling
    Average: 8.7
    9.2
    Data Preparation
    Average: 8.6
  • Seller Details
    Expand/Collapse Seller Details
  • Seller Details
    Seller
    Qlik
    Year Founded
    1993
    HQ Location
    Radnor, PA
    Twitter
    @qlik
    65,014 Twitter followers
    LinkedIn® Page
    www.linkedin.com
    4,091 employees on LinkedIn®
    Phone
    1 (888) 994-9854
Product Description
How are these determined?Information
This description is provided by the seller.

Qlik Data Catalyst accelerates the transition towards modern data management by providing essential capabilities in four areas.

Users
No information available
Industries
No information available
Market Segment
  • 36% Enterprise
  • 36% Mid-Market
Qlik Catalog features and usability ratings that predict user satisfaction
10.0
Has the product been a good partner in doing business?
Average: 8.7
9.2
Real-Time Data Collection
Average: 8.7
9.2
Machine Scaling
Average: 8.7
9.2
Data Preparation
Average: 8.6
Seller Details
Seller
Qlik
Year Founded
1993
HQ Location
Radnor, PA
Twitter
@qlik
65,014 Twitter followers
LinkedIn® Page
www.linkedin.com
4,091 employees on LinkedIn®
Phone
1 (888) 994-9854
  • Overview
    Expand/Collapse Overview
  • Product Description
    How are these determined?Information
    This description is provided by the seller.

    Canner Enterprise Cloud is a comprehensive cloud-based data access platform that provides secure, efficient, and intelligent access to data. Our cloud-based solution includes Data Virtualization, whic

    Users
    No information available
    Industries
    No information available
    Market Segment
    • 60% Mid-Market
    • 20% Enterprise
  • User Satisfaction
    Expand/Collapse User Satisfaction
  • Canner Enterprise Cloud features and usability ratings that predict user satisfaction
    10.0
    Has the product been a good partner in doing business?
    Average: 8.7
    8.8
    Real-Time Data Collection
    Average: 8.7
    7.9
    Machine Scaling
    Average: 8.7
    9.2
    Data Preparation
    Average: 8.6
  • Seller Details
    Expand/Collapse Seller Details
  • Seller Details
    Year Founded
    2024
    HQ Location
    New York City, US
    Twitter
    @cannerdata
    18 Twitter followers
    LinkedIn® Page
    www.linkedin.com
    3 employees on LinkedIn®
Product Description
How are these determined?Information
This description is provided by the seller.

Canner Enterprise Cloud is a comprehensive cloud-based data access platform that provides secure, efficient, and intelligent access to data. Our cloud-based solution includes Data Virtualization, whic

Users
No information available
Industries
No information available
Market Segment
  • 60% Mid-Market
  • 20% Enterprise
Canner Enterprise Cloud features and usability ratings that predict user satisfaction
10.0
Has the product been a good partner in doing business?
Average: 8.7
8.8
Real-Time Data Collection
Average: 8.7
7.9
Machine Scaling
Average: 8.7
9.2
Data Preparation
Average: 8.6
Seller Details
Year Founded
2024
HQ Location
New York City, US
Twitter
@cannerdata
18 Twitter followers
LinkedIn® Page
www.linkedin.com
3 employees on LinkedIn®
  • Overview
    Expand/Collapse Overview
  • Product Description
    How are these determined?Information
    This description is provided by the seller.

    Rockset is the search and analytics database built for the cloud. With real-time indexing and full-featured SQL on JSON, time series, geospatial and vector data, Rockset is the cloud-native alternati

    Users
    No information available
    Industries
    • Information Technology and Services
    Market Segment
    • 43% Small-Business
    • 40% Mid-Market
  • Pros and Cons
    Expand/Collapse Pros and Cons
  • Rockset Pros and Cons
    How are these determined?Information
    Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
    Pros
    Ease of Use
    17
    Customer Support
    13
    Querying
    12
    Speed
    11
    Analytics
    9
    Cons
    Limited Features
    7
    Query Issues
    5
    Limited SQL
    4
    Poor Usability
    4
    Expensive
    3
  • User Satisfaction
    Expand/Collapse User Satisfaction
  • Rockset features and usability ratings that predict user satisfaction
    8.3
    Has the product been a good partner in doing business?
    Average: 8.7
    7.8
    Real-Time Data Collection
    Average: 8.7
    8.3
    Machine Scaling
    Average: 8.7
    8.3
    Data Preparation
    Average: 8.6
  • Seller Details
    Expand/Collapse Seller Details
  • Seller Details
    Seller
    OpenAI
    Year Founded
    2015
    HQ Location
    San Francisco, CA
    Twitter
    @OpenAI
    4,200,524 Twitter followers
    LinkedIn® Page
    www.linkedin.com
    1,933 employees on LinkedIn®
Product Description
How are these determined?Information
This description is provided by the seller.

Rockset is the search and analytics database built for the cloud. With real-time indexing and full-featured SQL on JSON, time series, geospatial and vector data, Rockset is the cloud-native alternati

Users
No information available
Industries
  • Information Technology and Services
Market Segment
  • 43% Small-Business
  • 40% Mid-Market
Rockset Pros and Cons
How are these determined?Information
Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
Pros
Ease of Use
17
Customer Support
13
Querying
12
Speed
11
Analytics
9
Cons
Limited Features
7
Query Issues
5
Limited SQL
4
Poor Usability
4
Expensive
3
Rockset features and usability ratings that predict user satisfaction
8.3
Has the product been a good partner in doing business?
Average: 8.7
7.8
Real-Time Data Collection
Average: 8.7
8.3
Machine Scaling
Average: 8.7
8.3
Data Preparation
Average: 8.6
Seller Details
Seller
OpenAI
Year Founded
2015
HQ Location
San Francisco, CA
Twitter
@OpenAI
4,200,524 Twitter followers
LinkedIn® Page
www.linkedin.com
1,933 employees on LinkedIn®
  • Overview
    Expand/Collapse Overview
  • Product Description
    How are these determined?Information
    This description is provided by the seller.

    Alibaba MaxCompute (previously known as ODPS) is a general purpose, fully managed, multi-tenancy data processing platform for large-scale data warehousing. MaxCompute supports various data importing s

    Users
    No information available
    Industries
    No information available
    Market Segment
    • 33% Enterprise
    • 33% Mid-Market
  • Pros and Cons
    Expand/Collapse Pros and Cons
  • Alibaba MaxCompute Pros and Cons
    How are these determined?Information
    Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
    Pros
    Data Security
    1
    Data Storage
    1
    Large Datasets
    1
    Performance
    1
    Scalability
    1
    Cons
    Debugging Issues
    1
    Learning Curve
    1
    Limited Access
    1
    Poor Customer Support
    1
    Real-Time Analysis
    1
  • User Satisfaction
    Expand/Collapse User Satisfaction
  • Alibaba MaxCompute features and usability ratings that predict user satisfaction
    3.3
    Has the product been a good partner in doing business?
    Average: 8.7
    6.7
    Real-Time Data Collection
    Average: 8.7
    7.5
    Machine Scaling
    Average: 8.7
    9.2
    Data Preparation
    Average: 8.6
  • Seller Details
    Expand/Collapse Seller Details
  • Seller Details
    Seller
    Alibaba
    HQ Location
    Hangzhou
    Twitter
    @alibaba_cloud
    1,059,398 Twitter followers
    LinkedIn® Page
    www.linkedin.com
    4,580 employees on LinkedIn®
    Ownership
    BABA
    Total Revenue (USD mm)
    $509,711
Product Description
How are these determined?Information
This description is provided by the seller.

Alibaba MaxCompute (previously known as ODPS) is a general purpose, fully managed, multi-tenancy data processing platform for large-scale data warehousing. MaxCompute supports various data importing s

Users
No information available
Industries
No information available
Market Segment
  • 33% Enterprise
  • 33% Mid-Market
Alibaba MaxCompute Pros and Cons
How are these determined?Information
Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
Pros
Data Security
1
Data Storage
1
Large Datasets
1
Performance
1
Scalability
1
Cons
Debugging Issues
1
Learning Curve
1
Limited Access
1
Poor Customer Support
1
Real-Time Analysis
1
Alibaba MaxCompute features and usability ratings that predict user satisfaction
3.3
Has the product been a good partner in doing business?
Average: 8.7
6.7
Real-Time Data Collection
Average: 8.7
7.5
Machine Scaling
Average: 8.7
9.2
Data Preparation
Average: 8.6
Seller Details
Seller
Alibaba
HQ Location
Hangzhou
Twitter
@alibaba_cloud
1,059,398 Twitter followers
LinkedIn® Page
www.linkedin.com
4,580 employees on LinkedIn®
Ownership
BABA
Total Revenue (USD mm)
$509,711
  • Overview
    Expand/Collapse Overview
  • Product Description
    How are these determined?Information
    This description is provided by the seller.

    Apache Bahir provides extensions to multiple distributed analytic platforms, extending their reach with a diversity of streaming connectors and SQL data sources.

    Users
    No information available
    Industries
    No information available
    Market Segment
    • 67% Mid-Market
    • 33% Enterprise
  • Pros and Cons
    Expand/Collapse Pros and Cons
  • Apache Bahir Pros and Cons
    How are these determined?Information
    Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
    Pros
    Data Handling
    1
    Data Integration
    1
    Data Processing
    1
    Easy Integrations
    1
    Innovation
    1
    Cons
    Outdated Interface
    1
    Poor Documentation
    1
  • User Satisfaction
    Expand/Collapse User Satisfaction
  • Apache Bahir features and usability ratings that predict user satisfaction
    10.0
    Has the product been a good partner in doing business?
    Average: 8.7
    9.2
    Real-Time Data Collection
    Average: 8.7
    9.2
    Machine Scaling
    Average: 8.7
    9.2
    Data Preparation
    Average: 8.6
  • Seller Details
    Expand/Collapse Seller Details
  • Seller Details
    Year Founded
    1999
    HQ Location
    Wakefield, MA
    Twitter
    @TheASF
    65,927 Twitter followers
    LinkedIn® Page
    www.linkedin.com
    2,298 employees on LinkedIn®
Product Description
How are these determined?Information
This description is provided by the seller.

Apache Bahir provides extensions to multiple distributed analytic platforms, extending their reach with a diversity of streaming connectors and SQL data sources.

Users
No information available
Industries
No information available
Market Segment
  • 67% Mid-Market
  • 33% Enterprise
Apache Bahir Pros and Cons
How are these determined?Information
Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
Pros
Data Handling
1
Data Integration
1
Data Processing
1
Easy Integrations
1
Innovation
1
Cons
Outdated Interface
1
Poor Documentation
1
Apache Bahir features and usability ratings that predict user satisfaction
10.0
Has the product been a good partner in doing business?
Average: 8.7
9.2
Real-Time Data Collection
Average: 8.7
9.2
Machine Scaling
Average: 8.7
9.2
Data Preparation
Average: 8.6
Seller Details
Year Founded
1999
HQ Location
Wakefield, MA
Twitter
@TheASF
65,927 Twitter followers
LinkedIn® Page
www.linkedin.com
2,298 employees on LinkedIn®
  • Overview
    Expand/Collapse Overview
  • Product Description
    How are these determined?Information
    This description is provided by the seller.

    Deep.BI measures content consumption metrics and provides user engagement scoring to power publisher's content delivery, marketing tools and paywalls to grow, engage and retain audiences. Deep.BI coll

    Users
    No information available
    Industries
    No information available
    Market Segment
    • 50% Small-Business
    • 40% Mid-Market
  • Pros and Cons
    Expand/Collapse Pros and Cons
  • Deep.BI Pros and Cons
    How are these determined?Information
    Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
    Pros
    Analytics
    5
    Insights
    5
    Insights Generation
    5
    Ease of Use
    4
    Data Analysis
    3
    Cons
    Coding Difficulty
    2
    Not Intuitive
    2
    Complex Automation
    1
    Complexity
    1
    Confusing Interface
    1
  • User Satisfaction
    Expand/Collapse User Satisfaction
  • Deep.BI features and usability ratings that predict user satisfaction
    10.0
    Has the product been a good partner in doing business?
    Average: 8.7
    9.2
    Real-Time Data Collection
    Average: 8.7
    6.7
    Machine Scaling
    Average: 8.7
    8.3
    Data Preparation
    Average: 8.6
  • Seller Details
    Expand/Collapse Seller Details
  • Seller Details
    Seller
    Deep.BI
    Year Founded
    2016
    HQ Location
    San Francisco, California
    Twitter
    @_DeepBI
    963 Twitter followers
    LinkedIn® Page
    www.linkedin.com
    18 employees on LinkedIn®
Product Description
How are these determined?Information
This description is provided by the seller.

Deep.BI measures content consumption metrics and provides user engagement scoring to power publisher's content delivery, marketing tools and paywalls to grow, engage and retain audiences. Deep.BI coll

Users
No information available
Industries
No information available
Market Segment
  • 50% Small-Business
  • 40% Mid-Market
Deep.BI Pros and Cons
How are these determined?Information
Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
Pros
Analytics
5
Insights
5
Insights Generation
5
Ease of Use
4
Data Analysis
3
Cons
Coding Difficulty
2
Not Intuitive
2
Complex Automation
1
Complexity
1
Confusing Interface
1
Deep.BI features and usability ratings that predict user satisfaction
10.0
Has the product been a good partner in doing business?
Average: 8.7
9.2
Real-Time Data Collection
Average: 8.7
6.7
Machine Scaling
Average: 8.7
8.3
Data Preparation
Average: 8.6
Seller Details
Seller
Deep.BI
Year Founded
2016
HQ Location
San Francisco, California
Twitter
@_DeepBI
963 Twitter followers
LinkedIn® Page
www.linkedin.com
18 employees on LinkedIn®
  • Overview
    Expand/Collapse Overview
  • Product Description
    How are these determined?Information
    This description is provided by the seller.

    Build and deploy clusters within minutes with simplified user experience, scalability, and reliability. Custom configure the environment. Administer through multiple interfaces. Scale on demand.

    Users
    No information available
    Industries
    No information available
    Market Segment
    • 60% Mid-Market
    • 40% Small-Business
  • User Satisfaction
    Expand/Collapse User Satisfaction
  • IBM Analytics Engine features and usability ratings that predict user satisfaction
    0.0
    No information available
    0.0
    No information available
    0.0
    No information available
    0.0
    No information available
  • Seller Details
    Expand/Collapse Seller Details
  • Seller Details
    Seller
    IBM
    Year Founded
    1911
    HQ Location
    Armonk, NY
    Twitter
    @IBM
    709,764 Twitter followers
    LinkedIn® Page
    www.linkedin.com
    331,391 employees on LinkedIn®
    Ownership
    SWX:IBM
Product Description
How are these determined?Information
This description is provided by the seller.

Build and deploy clusters within minutes with simplified user experience, scalability, and reliability. Custom configure the environment. Administer through multiple interfaces. Scale on demand.

Users
No information available
Industries
No information available
Market Segment
  • 60% Mid-Market
  • 40% Small-Business
IBM Analytics Engine features and usability ratings that predict user satisfaction
0.0
No information available
0.0
No information available
0.0
No information available
0.0
No information available
Seller Details
Seller
IBM
Year Founded
1911
HQ Location
Armonk, NY
Twitter
@IBM
709,764 Twitter followers
LinkedIn® Page
www.linkedin.com
331,391 employees on LinkedIn®
Ownership
SWX:IBM
  • Overview
    Expand/Collapse Overview
  • Users
    No information available
    Industries
    No information available
    Market Segment
    • 50% Enterprise
    • 25% Small-Business
  • User Satisfaction
    Expand/Collapse User Satisfaction
  • Kafka and Zookeeper Clusters on Windows Powered by GlobalSolutions features and usability ratings that predict user satisfaction
    8.3
    Has the product been a good partner in doing business?
    Average: 8.7
    10.0
    Real-Time Data Collection
    Average: 8.7
    9.2
    Machine Scaling
    Average: 8.7
    8.3
    Data Preparation
    Average: 8.6
  • Seller Details
    Expand/Collapse Seller Details
  • Seller Details
    HQ Location
    N/A
    Twitter
    @the_Gsolutions
    4 Twitter followers
    LinkedIn® Page
    www.linkedin.com
    1 employees on LinkedIn®
Users
No information available
Industries
No information available
Market Segment
  • 50% Enterprise
  • 25% Small-Business
Kafka and Zookeeper Clusters on Windows Powered by GlobalSolutions features and usability ratings that predict user satisfaction
8.3
Has the product been a good partner in doing business?
Average: 8.7
10.0
Real-Time Data Collection
Average: 8.7
9.2
Machine Scaling
Average: 8.7
8.3
Data Preparation
Average: 8.6
Seller Details
HQ Location
N/A
Twitter
@the_Gsolutions
4 Twitter followers
LinkedIn® Page
www.linkedin.com
1 employees on LinkedIn®
  • Overview
    Expand/Collapse Overview
  • Product Description
    How are these determined?Information
    This description is provided by the seller.

    More than just ETL (Extract, Transform, Load), Pentaho Data Integration is a codeless data orchestration tool that blends diverse data sets into a single source of truth as a basis for analysis and re

    Users
    No information available
    Industries
    • Information Technology and Services
    Market Segment
    • 44% Mid-Market
    • 38% Enterprise
  • Pros and Cons
    Expand/Collapse Pros and Cons
  • Pentaho Data Integration Pros and Cons
    How are these determined?Information
    Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
    Pros
    API Integration
    1
    Cloud Integration
    1
    Communication
    1
    Connectivity
    1
    Connectors Quantity
    1
    Cons
    Learning Curve
    1
    Performance Issues
    1
    Slow Data Loading
    1
    Slow Performance
    1
    Slow Processing
    1
  • User Satisfaction
    Expand/Collapse User Satisfaction
  • Pentaho Data Integration features and usability ratings that predict user satisfaction
    8.6
    Has the product been a good partner in doing business?
    Average: 8.7
    0.0
    No information available
    0.0
    No information available
    0.0
    No information available
  • Seller Details
    Expand/Collapse Seller Details
  • Seller Details
    Seller
    Pentaho
    Year Founded
    2004
    HQ Location
    Santa Clara, CA
    LinkedIn® Page
    www.linkedin.com
    155 employees on LinkedIn®
Product Description
How are these determined?Information
This description is provided by the seller.

More than just ETL (Extract, Transform, Load), Pentaho Data Integration is a codeless data orchestration tool that blends diverse data sets into a single source of truth as a basis for analysis and re

Users
No information available
Industries
  • Information Technology and Services
Market Segment
  • 44% Mid-Market
  • 38% Enterprise
Pentaho Data Integration Pros and Cons
How are these determined?Information
Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
Pros
API Integration
1
Cloud Integration
1
Communication
1
Connectivity
1
Connectors Quantity
1
Cons
Learning Curve
1
Performance Issues
1
Slow Data Loading
1
Slow Performance
1
Slow Processing
1
Pentaho Data Integration features and usability ratings that predict user satisfaction
8.6
Has the product been a good partner in doing business?
Average: 8.7
0.0
No information available
0.0
No information available
0.0
No information available
Seller Details
Seller
Pentaho
Year Founded
2004
HQ Location
Santa Clara, CA
LinkedIn® Page
www.linkedin.com
155 employees on LinkedIn®
  • Overview
    Expand/Collapse Overview
  • Product Description
    How are these determined?Information
    This description is provided by the seller.

    The PHEMI Trustworthy Health DataLab is a unique, cloud-based, integrated big data management system that allows healthcare organizations to enhance innovation and generate value from healthcare data

    Users
    No information available
    Industries
    No information available
    Market Segment
    • 67% Small-Business
    • 33% Enterprise
  • Pros and Cons
    Expand/Collapse Pros and Cons
  • PHEMI Health DataLab Pros and Cons
    How are these determined?Information
    Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
    Pros
    Access Control
    1
    Data Privacy
    1
    Data Security
    1
    Deployment Flexibility
    1
    Ease of Management
    1
    Cons
    Connector Issues
    1
    Data Management Issues
    1
    Data Privacy
    1
    Data Security
    1
    Dependency Issues
    1
  • User Satisfaction
    Expand/Collapse User Satisfaction
  • PHEMI Health DataLab features and usability ratings that predict user satisfaction
    6.7
    Has the product been a good partner in doing business?
    Average: 8.7
    10.0
    Real-Time Data Collection
    Average: 8.7
    8.3
    Machine Scaling
    Average: 8.7
    9.2
    Data Preparation
    Average: 8.6
  • Seller Details
    Expand/Collapse Seller Details
  • Seller Details
    Year Founded
    2013
    HQ Location
    Vancouver, British Columbia
    Twitter
    @PHEMIsystems
    759 Twitter followers
    LinkedIn® Page
    www.linkedin.com
    8 employees on LinkedIn®
Product Description
How are these determined?Information
This description is provided by the seller.

The PHEMI Trustworthy Health DataLab is a unique, cloud-based, integrated big data management system that allows healthcare organizations to enhance innovation and generate value from healthcare data

Users
No information available
Industries
No information available
Market Segment
  • 67% Small-Business
  • 33% Enterprise
PHEMI Health DataLab Pros and Cons
How are these determined?Information
Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
Pros
Access Control
1
Data Privacy
1
Data Security
1
Deployment Flexibility
1
Ease of Management
1
Cons
Connector Issues
1
Data Management Issues
1
Data Privacy
1
Data Security
1
Dependency Issues
1
PHEMI Health DataLab features and usability ratings that predict user satisfaction
6.7
Has the product been a good partner in doing business?
Average: 8.7
10.0
Real-Time Data Collection
Average: 8.7
8.3
Machine Scaling
Average: 8.7
9.2
Data Preparation
Average: 8.6
Seller Details
Year Founded
2013
HQ Location
Vancouver, British Columbia
Twitter
@PHEMIsystems
759 Twitter followers
LinkedIn® Page
www.linkedin.com
8 employees on LinkedIn®
Entry Level Price:Free
  • Overview
    Expand/Collapse Overview
  • Product Description
    How are these determined?Information
    This description is provided by the seller.

    Prefect is modern workflow orchestration. Build, observe, and react to your data pipelines with a purely Python experience.

    Users
    No information available
    Industries
    • Information Technology and Services
    • Computer Software
    Market Segment
    • 42% Small-Business
    • 41% Mid-Market
  • Pros and Cons
    Expand/Collapse Pros and Cons
  • Prefect Pros and Cons
    How are these determined?Information
    Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
    Pros
    User Interface
    24
    Orchestration
    22
    Python Integration
    22
    Ease of Use
    20
    Deployment Ease
    19
    Cons
    Poor Documentation
    22
    Difficult Learning
    13
    Limited Features
    12
    Cloud Limitations
    8
    Integration Issues
    8
  • User Satisfaction
    Expand/Collapse User Satisfaction
  • Prefect features and usability ratings that predict user satisfaction
    8.9
    Has the product been a good partner in doing business?
    Average: 8.7
    9.2
    Real-Time Data Collection
    Average: 8.7
    10.0
    Machine Scaling
    Average: 8.7
    10.0
    Data Preparation
    Average: 8.6
  • Seller Details
    Expand/Collapse Seller Details
  • Seller Details
    Seller
    Prefect
    HQ Location
    Washington, US
    Twitter
    @PrefectIO
    6,250 Twitter followers
    LinkedIn® Page
    www.linkedin.com
    134 employees on LinkedIn®
Product Description
How are these determined?Information
This description is provided by the seller.

Prefect is modern workflow orchestration. Build, observe, and react to your data pipelines with a purely Python experience.

Users
No information available
Industries
  • Information Technology and Services
  • Computer Software
Market Segment
  • 42% Small-Business
  • 41% Mid-Market
Prefect Pros and Cons
How are these determined?Information
Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
Pros
User Interface
24
Orchestration
22
Python Integration
22
Ease of Use
20
Deployment Ease
19
Cons
Poor Documentation
22
Difficult Learning
13
Limited Features
12
Cloud Limitations
8
Integration Issues
8
Prefect features and usability ratings that predict user satisfaction
8.9
Has the product been a good partner in doing business?
Average: 8.7
9.2
Real-Time Data Collection
Average: 8.7
10.0
Machine Scaling
Average: 8.7
10.0
Data Preparation
Average: 8.6
Seller Details
Seller
Prefect
HQ Location
Washington, US
Twitter
@PrefectIO
6,250 Twitter followers
LinkedIn® Page
www.linkedin.com
134 employees on LinkedIn®
  • Overview
    Expand/Collapse Overview
  • Product Description
    How are these determined?Information
    This description is provided by the seller.

    Apache AsterixDB is a scalable, open source Big Data Management System (BDMS).

    Users
    No information available
    Industries
    No information available
    Market Segment
    • 50% Mid-Market
    • 50% Small-Business
  • User Satisfaction
    Expand/Collapse User Satisfaction
  • Apache AsterixDB features and usability ratings that predict user satisfaction
    0.0
    No information available
    8.3
    Real-Time Data Collection
    Average: 8.7
    9.2
    Machine Scaling
    Average: 8.7
    8.3
    Data Preparation
    Average: 8.6
  • Seller Details
    Expand/Collapse Seller Details
  • Seller Details
    Year Founded
    1999
    HQ Location
    Wakefield, MA
    Twitter
    @TheASF
    65,927 Twitter followers
    LinkedIn® Page
    www.linkedin.com
    2,298 employees on LinkedIn®
Product Description
How are these determined?Information
This description is provided by the seller.

Apache AsterixDB is a scalable, open source Big Data Management System (BDMS).

Users
No information available
Industries
No information available
Market Segment
  • 50% Mid-Market
  • 50% Small-Business
Apache AsterixDB features and usability ratings that predict user satisfaction
0.0
No information available
8.3
Real-Time Data Collection
Average: 8.7
9.2
Machine Scaling
Average: 8.7
8.3
Data Preparation
Average: 8.6
Seller Details
Year Founded
1999
HQ Location
Wakefield, MA
Twitter
@TheASF
65,927 Twitter followers
LinkedIn® Page
www.linkedin.com
2,298 employees on LinkedIn®
  • Overview
    Expand/Collapse Overview
  • Product Description
    How are these determined?Information
    This description is provided by the seller.

    Apache Fluo is an open source implementation of Percolator (which populates Google's search index) for Apache Accumulo.

    Users
    No information available
    Industries
    No information available
    Market Segment
    • 100% Mid-Market
  • Pros and Cons
    Expand/Collapse Pros and Cons
  • Apache Fluo Pros and Cons
    How are these determined?Information
    Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
    Pros
    Data Processing
    1
    Fast Processing
    1
    Performance
    1
    Scalability
    1
    Scaling
    1
    Cons
    Cloud Dependency
    1
    Complexity
    1
  • User Satisfaction
    Expand/Collapse User Satisfaction
  • Apache Fluo features and usability ratings that predict user satisfaction
    8.3
    Has the product been a good partner in doing business?
    Average: 8.7
    7.5
    Real-Time Data Collection
    Average: 8.7
    6.7
    Machine Scaling
    Average: 8.7
    7.5
    Data Preparation
    Average: 8.6
  • Seller Details
    Expand/Collapse Seller Details
  • Seller Details
    Year Founded
    1999
    HQ Location
    Wakefield, MA
    Twitter
    @TheASF
    65,927 Twitter followers
    LinkedIn® Page
    www.linkedin.com
    2,298 employees on LinkedIn®
Product Description
How are these determined?Information
This description is provided by the seller.

Apache Fluo is an open source implementation of Percolator (which populates Google's search index) for Apache Accumulo.

Users
No information available
Industries
No information available
Market Segment
  • 100% Mid-Market
Apache Fluo Pros and Cons
How are these determined?Information
Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
Pros
Data Processing
1
Fast Processing
1
Performance
1
Scalability
1
Scaling
1
Cons
Cloud Dependency
1
Complexity
1
Apache Fluo features and usability ratings that predict user satisfaction
8.3
Has the product been a good partner in doing business?
Average: 8.7
7.5
Real-Time Data Collection
Average: 8.7
6.7
Machine Scaling
Average: 8.7
7.5
Data Preparation
Average: 8.6
Seller Details
Year Founded
1999
HQ Location
Wakefield, MA
Twitter
@TheASF
65,927 Twitter followers
LinkedIn® Page
www.linkedin.com
2,298 employees on LinkedIn®
  • Overview
    Expand/Collapse Overview
  • Product Description
    How are these determined?Information
    This description is provided by the seller.

    DoubleCloud is winding down operations. The company ceased creating new accounts on October 1, 2024, and will completely close on March 1, 2025. DoubleCloud specialized in data analytics infrastru

    Users
    No information available
    Industries
    No information available
    Market Segment
    • 75% Small-Business
    • 25% Mid-Market
  • Pros and Cons
    Expand/Collapse Pros and Cons
  • DoubleCloud Pros and Cons
    How are these determined?Information
    Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
    Pros
    Customer Support
    4
    Ease of Use
    3
    Setup Ease
    3
    Cost-Effective
    2
    Pricing
    2
    Cons
    Lack of Database Support
    1
    Limited Database Support
    1
    Missing Features
    1
    UI Design Issues
    1
  • User Satisfaction
    Expand/Collapse User Satisfaction
  • DoubleCloud features and usability ratings that predict user satisfaction
    10.0
    Has the product been a good partner in doing business?
    Average: 8.7
    10.0
    Real-Time Data Collection
    Average: 8.7
    10.0
    Machine Scaling
    Average: 8.7
    0.0
    No information available
  • Seller Details
    Expand/Collapse Seller Details
  • Seller Details
    Year Founded
    2022
    HQ Location
    Dubai, AE
    LinkedIn® Page
    www.linkedin.com
    57 employees on LinkedIn®
Product Description
How are these determined?Information
This description is provided by the seller.

DoubleCloud is winding down operations. The company ceased creating new accounts on October 1, 2024, and will completely close on March 1, 2025. DoubleCloud specialized in data analytics infrastru

Users
No information available
Industries
No information available
Market Segment
  • 75% Small-Business
  • 25% Mid-Market
DoubleCloud Pros and Cons
How are these determined?Information
Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
Pros
Customer Support
4
Ease of Use
3
Setup Ease
3
Cost-Effective
2
Pricing
2
Cons
Lack of Database Support
1
Limited Database Support
1
Missing Features
1
UI Design Issues
1
DoubleCloud features and usability ratings that predict user satisfaction
10.0
Has the product been a good partner in doing business?
Average: 8.7
10.0
Real-Time Data Collection
Average: 8.7
10.0
Machine Scaling
Average: 8.7
0.0
No information available
Seller Details
Year Founded
2022
HQ Location
Dubai, AE
LinkedIn® Page
www.linkedin.com
57 employees on LinkedIn®
  • Overview
    Expand/Collapse Overview
  • Product Description
    How are these determined?Information
    This description is provided by the seller.

    Gathr.ai powers AI with complete data context for higher quality intelligence. With day-zero, high-fidelity data discourse, users can get data-backed answers to the ‘why’, ‘what-if’, and ‘how do I’ qu

    Users
    • Associate Software Engineer
    Industries
    • Information Technology and Services
    Market Segment
    • 92% Mid-Market
    • 8% Enterprise
  • Pros and Cons
    Expand/Collapse Pros and Cons
  • Gathr.ai Pros and Cons
    How are these determined?Information
    Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
    Pros
    Integrations
    5
    Automation
    3
    Data Integration
    3
    Drag
    3
    Flexibility
    3
    Cons
    Connection Issues
    1
    Difficult Setup
    1
    Steep Learning Curve
    1
    Sync Issues
    1
  • User Satisfaction
    Expand/Collapse User Satisfaction
  • Gathr.ai features and usability ratings that predict user satisfaction
    10.0
    Has the product been a good partner in doing business?
    Average: 8.7
    0.0
    No information available
    0.0
    No information available
    0.0
    No information available
  • Seller Details
    Expand/Collapse Seller Details
  • Seller Details
    Seller
    Gathr.ai
    Year Founded
    2022
    HQ Location
    Los Gatos, CA, US
    LinkedIn® Page
    www.linkedin.com
    132 employees on LinkedIn®
Product Description
How are these determined?Information
This description is provided by the seller.

Gathr.ai powers AI with complete data context for higher quality intelligence. With day-zero, high-fidelity data discourse, users can get data-backed answers to the ‘why’, ‘what-if’, and ‘how do I’ qu

Users
  • Associate Software Engineer
Industries
  • Information Technology and Services
Market Segment
  • 92% Mid-Market
  • 8% Enterprise
Gathr.ai Pros and Cons
How are these determined?Information
Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
Pros
Integrations
5
Automation
3
Data Integration
3
Drag
3
Flexibility
3
Cons
Connection Issues
1
Difficult Setup
1
Steep Learning Curve
1
Sync Issues
1
Gathr.ai features and usability ratings that predict user satisfaction
10.0
Has the product been a good partner in doing business?
Average: 8.7
0.0
No information available
0.0
No information available
0.0
No information available
Seller Details
Seller
Gathr.ai
Year Founded
2022
HQ Location
Los Gatos, CA, US
LinkedIn® Page
www.linkedin.com
132 employees on LinkedIn®
  • Overview
    Expand/Collapse Overview
  • Product Description
    How are these determined?Information
    This description is provided by the seller.

    InforData Lake tools deliver schema-on-read intelligence along with a fast, flexible data consumption framework to enable new ways of making key decisions. With leveraged access to your entire Infor e

    Users
    No information available
    Industries
    No information available
    Market Segment
    • 100% Mid-Market
  • User Satisfaction
    Expand/Collapse User Satisfaction
  • Infor Data Lake features and usability ratings that predict user satisfaction
    8.3
    Has the product been a good partner in doing business?
    Average: 8.7
    8.3
    Real-Time Data Collection
    Average: 8.7
    7.5
    Machine Scaling
    Average: 8.7
    8.3
    Data Preparation
    Average: 8.6
  • Seller Details
    Expand/Collapse Seller Details
  • Seller Details
    Seller
    Infor
    Year Founded
    2002
    HQ Location
    New York
    Twitter
    @Infor
    18,761 Twitter followers
    LinkedIn® Page
    www.linkedin.com
    21,588 employees on LinkedIn®
    Phone
    800-260-2640
Product Description
How are these determined?Information
This description is provided by the seller.

InforData Lake tools deliver schema-on-read intelligence along with a fast, flexible data consumption framework to enable new ways of making key decisions. With leveraged access to your entire Infor e

Users
No information available
Industries
No information available
Market Segment
  • 100% Mid-Market
Infor Data Lake features and usability ratings that predict user satisfaction
8.3
Has the product been a good partner in doing business?
Average: 8.7
8.3
Real-Time Data Collection
Average: 8.7
7.5
Machine Scaling
Average: 8.7
8.3
Data Preparation
Average: 8.6
Seller Details
Seller
Infor
Year Founded
2002
HQ Location
New York
Twitter
@Infor
18,761 Twitter followers
LinkedIn® Page
www.linkedin.com
21,588 employees on LinkedIn®
Phone
800-260-2640
  • Overview
    Expand/Collapse Overview
  • Product Description
    How are these determined?Information
    This description is provided by the seller.

    ITONICS provides the #1 Innovation Operating System (OS) for organizations seeking to operationalize innovation and drive growth systematically. Unlike traditional innovation management software, the

    Users
    No information available
    Industries
    No information available
    Market Segment
    • 67% Enterprise
    • 17% Mid-Market
  • Pros and Cons
    Expand/Collapse Pros and Cons
  • ITONICS Innovation OS Pros and Cons
    How are these determined?Information
    Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
    Pros
    Data Visualization
    4
    Customer Support
    3
    Ease of Use
    3
    Analytics
    2
    Automation
    2
    Cons
    Complexity
    2
    Difficult Setup
    2
    Difficulty
    2
    High Complexity
    2
    Learning Curve
    2
  • User Satisfaction
    Expand/Collapse User Satisfaction
  • ITONICS Innovation OS features and usability ratings that predict user satisfaction
    9.6
    Has the product been a good partner in doing business?
    Average: 8.7
    9.2
    Real-Time Data Collection
    Average: 8.7
    0.0
    No information available
    0.0
    No information available
  • Seller Details
    Expand/Collapse Seller Details
  • Seller Details
    Seller
    ITONICS
    HQ Location
    Nuremberg, DE
    Twitter
    @ITONICS
    590 Twitter followers
    LinkedIn® Page
    www.linkedin.com
    150 employees on LinkedIn®
Product Description
How are these determined?Information
This description is provided by the seller.

ITONICS provides the #1 Innovation Operating System (OS) for organizations seeking to operationalize innovation and drive growth systematically. Unlike traditional innovation management software, the

Users
No information available
Industries
No information available
Market Segment
  • 67% Enterprise
  • 17% Mid-Market
ITONICS Innovation OS Pros and Cons
How are these determined?Information
Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
Pros
Data Visualization
4
Customer Support
3
Ease of Use
3
Analytics
2
Automation
2
Cons
Complexity
2
Difficult Setup
2
Difficulty
2
High Complexity
2
Learning Curve
2
ITONICS Innovation OS features and usability ratings that predict user satisfaction
9.6
Has the product been a good partner in doing business?
Average: 8.7
9.2
Real-Time Data Collection
Average: 8.7
0.0
No information available
0.0
No information available
Seller Details
Seller
ITONICS
HQ Location
Nuremberg, DE
Twitter
@ITONICS
590 Twitter followers
LinkedIn® Page
www.linkedin.com
150 employees on LinkedIn®
  • Overview
    Expand/Collapse Overview
  • Product Description
    How are these determined?Information
    This description is provided by the seller.

    Kpow is a sophisticated enterprise Kafka management tool designed to enhance the experience of engineering teams by providing a comprehensive solution for managing, monitoring, exploring, and securing

    Users
    No information available
    Industries
    No information available
    Market Segment
    • 50% Mid-Market
    • 25% Enterprise
  • Pros and Cons
    Expand/Collapse Pros and Cons
  • Kpow for Apache Kafka® Pros and Cons
    How are these determined?Information
    Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
    Pros
    Affordability
    1
    Setup Ease
    1
    User Interface
    1
    Cons
    Data Management Issues
    1
  • User Satisfaction
    Expand/Collapse User Satisfaction
  • Kpow for Apache Kafka® features and usability ratings that predict user satisfaction
    8.3
    Has the product been a good partner in doing business?
    Average: 8.7
    0.0
    No information available
    0.0
    No information available
    0.0
    No information available
  • Seller Details
    Expand/Collapse Seller Details
  • Seller Details
    Company Website
    Year Founded
    2019
    HQ Location
    Melbourne, Victoria
    Twitter
    @factorhousehq
    128 Twitter followers
    LinkedIn® Page
    www.linkedin.com
    2 employees on LinkedIn®
Product Description
How are these determined?Information
This description is provided by the seller.

Kpow is a sophisticated enterprise Kafka management tool designed to enhance the experience of engineering teams by providing a comprehensive solution for managing, monitoring, exploring, and securing

Users
No information available
Industries
No information available
Market Segment
  • 50% Mid-Market
  • 25% Enterprise
Kpow for Apache Kafka® Pros and Cons
How are these determined?Information
Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
Pros
Affordability
1
Setup Ease
1
User Interface
1
Cons
Data Management Issues
1
Kpow for Apache Kafka® features and usability ratings that predict user satisfaction
8.3
Has the product been a good partner in doing business?
Average: 8.7
0.0
No information available
0.0
No information available
0.0
No information available
Seller Details
Company Website
Year Founded
2019
HQ Location
Melbourne, Victoria
Twitter
@factorhousehq
128 Twitter followers
LinkedIn® Page
www.linkedin.com
2 employees on LinkedIn®
  • Overview
    Expand/Collapse Overview
  • Product Description
    How are these determined?Information
    This description is provided by the seller.

    TileDB is foundational software designed by scientists for scientific discovery. TileDB structures all data types, including data that does not fit into relational databases built for structured tabul

    Users
    No information available
    Industries
    No information available
    Market Segment
    • 100% Enterprise
  • Pros and Cons
    Expand/Collapse Pros and Cons
  • TileDB Pros and Cons
    How are these determined?Information
    Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
    Pros
    Database Management
    2
    Data Handling
    2
    Data Management
    2
    Data Storage
    2
    Ease of Use
    2
    Cons
    Learning Curve
    2
    Poor Documentation
    2
    UX Improvement
    2
    Difficult Learning
    1
    Installation Difficulty
    1
  • User Satisfaction
    Expand/Collapse User Satisfaction
  • TileDB features and usability ratings that predict user satisfaction
    0.0
    No information available
    7.5
    Real-Time Data Collection
    Average: 8.7
    8.3
    Machine Scaling
    Average: 8.7
    7.5
    Data Preparation
    Average: 8.6
  • Seller Details
    Expand/Collapse Seller Details
  • Seller Details
    Seller
    TileDB
    Year Founded
    2017
    HQ Location
    Cambridge, Massachusetts, United States
    LinkedIn® Page
    www.linkedin.com
    89 employees on LinkedIn®
Product Description
How are these determined?Information
This description is provided by the seller.

TileDB is foundational software designed by scientists for scientific discovery. TileDB structures all data types, including data that does not fit into relational databases built for structured tabul

Users
No information available
Industries
No information available
Market Segment
  • 100% Enterprise
TileDB Pros and Cons
How are these determined?Information
Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
Pros
Database Management
2
Data Handling
2
Data Management
2
Data Storage
2
Ease of Use
2
Cons
Learning Curve
2
Poor Documentation
2
UX Improvement
2
Difficult Learning
1
Installation Difficulty
1
TileDB features and usability ratings that predict user satisfaction
0.0
No information available
7.5
Real-Time Data Collection
Average: 8.7
8.3
Machine Scaling
Average: 8.7
7.5
Data Preparation
Average: 8.6
Seller Details
Seller
TileDB
Year Founded
2017
HQ Location
Cambridge, Massachusetts, United States
LinkedIn® Page
www.linkedin.com
89 employees on LinkedIn®
  • Overview
    Expand/Collapse Overview
  • Product Description
    How are these determined?Information
    This description is provided by the seller.

    Alibaba Cloud Elastic MapReduce (E-MapReduce) is a big data processing solution to quickly process huge amounts of data. Based on open source Apache Hadoop and Apache Spark, E-MapReduce flexibly manag

    Users
    No information available
    Industries
    No information available
    Market Segment
    • 100% Mid-Market
  • User Satisfaction
    Expand/Collapse User Satisfaction
  • Alibaba E-MapReduce features and usability ratings that predict user satisfaction
    10.0
    Has the product been a good partner in doing business?
    Average: 8.7
    10.0
    Real-Time Data Collection
    Average: 8.7
    10.0
    Machine Scaling
    Average: 8.7
    10.0
    Data Preparation
    Average: 8.6
  • Seller Details
    Expand/Collapse Seller Details
  • Seller Details
    Seller
    Alibaba
    HQ Location
    Hangzhou
    Twitter
    @alibaba_cloud
    1,059,398 Twitter followers
    LinkedIn® Page
    www.linkedin.com
    4,580 employees on LinkedIn®
    Ownership
    BABA
    Total Revenue (USD mm)
    $509,711
Product Description
How are these determined?Information
This description is provided by the seller.

Alibaba Cloud Elastic MapReduce (E-MapReduce) is a big data processing solution to quickly process huge amounts of data. Based on open source Apache Hadoop and Apache Spark, E-MapReduce flexibly manag

Users
No information available
Industries
No information available
Market Segment
  • 100% Mid-Market
Alibaba E-MapReduce features and usability ratings that predict user satisfaction
10.0
Has the product been a good partner in doing business?
Average: 8.7
10.0
Real-Time Data Collection
Average: 8.7
10.0
Machine Scaling
Average: 8.7
10.0
Data Preparation
Average: 8.6
Seller Details
Seller
Alibaba
HQ Location
Hangzhou
Twitter
@alibaba_cloud
1,059,398 Twitter followers
LinkedIn® Page
www.linkedin.com
4,580 employees on LinkedIn®
Ownership
BABA
Total Revenue (USD mm)
$509,711
  • Overview
    Expand/Collapse Overview
  • Product Description
    How are these determined?Information
    This description is provided by the seller.

    Apache Falcon is a feed processing and feed management system designed to make it easier for end consumers to onboard their feed processing and feed management on hadoop clusters.

    Users
    No information available
    Industries
    No information available
    Market Segment
    • 100% Mid-Market
  • User Satisfaction
    Expand/Collapse User Satisfaction
  • Apache Falcon features and usability ratings that predict user satisfaction
    0.0
    No information available
    0.0
    No information available
    0.0
    No information available
    0.0
    No information available
  • Seller Details
    Expand/Collapse Seller Details
  • Seller Details
    Year Founded
    1999
    HQ Location
    Wakefield, MA
    Twitter
    @TheASF
    65,927 Twitter followers
    LinkedIn® Page
    www.linkedin.com
    2,298 employees on LinkedIn®
Product Description
How are these determined?Information
This description is provided by the seller.

Apache Falcon is a feed processing and feed management system designed to make it easier for end consumers to onboard their feed processing and feed management on hadoop clusters.

Users
No information available
Industries
No information available
Market Segment
  • 100% Mid-Market
Apache Falcon features and usability ratings that predict user satisfaction
0.0
No information available
0.0
No information available
0.0
No information available
0.0
No information available
Seller Details
Year Founded
1999
HQ Location
Wakefield, MA
Twitter
@TheASF
65,927 Twitter followers
LinkedIn® Page
www.linkedin.com
2,298 employees on LinkedIn®
  • Overview
    Expand/Collapse Overview
  • Product Description
    How are these determined?Information
    This description is provided by the seller.

    Apache Storm is a distributed, fault-tolerant, open-source, real-time event processing solution for large, fast streams of data.

    Users
    No information available
    Industries
    No information available
    Market Segment
    • 50% Small-Business
    • 25% Mid-Market
  • User Satisfaction
    Expand/Collapse User Satisfaction
  • Apache Storm for HDInsight features and usability ratings that predict user satisfaction
    0.0
    No information available
    10.0
    Real-Time Data Collection
    Average: 8.7
    0.0
    No information available
    0.0
    No information available
  • Seller Details
    Expand/Collapse Seller Details
  • Seller Details
    Seller
    Microsoft
    Year Founded
    1975
    HQ Location
    Redmond, Washington
    Twitter
    @microsoft
    14,002,464 Twitter followers
    LinkedIn® Page
    www.linkedin.com
    237,523 employees on LinkedIn®
    Ownership
    MSFT
Product Description
How are these determined?Information
This description is provided by the seller.

Apache Storm is a distributed, fault-tolerant, open-source, real-time event processing solution for large, fast streams of data.

Users
No information available
Industries
No information available
Market Segment
  • 50% Small-Business
  • 25% Mid-Market
Apache Storm for HDInsight features and usability ratings that predict user satisfaction
0.0
No information available
10.0
Real-Time Data Collection
Average: 8.7
0.0
No information available
0.0
No information available
Seller Details
Seller
Microsoft
Year Founded
1975
HQ Location
Redmond, Washington
Twitter
@microsoft
14,002,464 Twitter followers
LinkedIn® Page
www.linkedin.com
237,523 employees on LinkedIn®
Ownership
MSFT
  • Overview
    Expand/Collapse Overview
  • Product Description
    How are these determined?Information
    This description is provided by the seller.

    Aparavi is THE Data Intelligence and Automation Platform. We help organizations find and unlock the value of data no matter where it lives to mitigate risk, reduce costs and exploit new value from th

    Users
    No information available
    Industries
    No information available
    Market Segment
    • 50% Enterprise
    • 50% Mid-Market
  • Pros and Cons
    Expand/Collapse Pros and Cons
  • APARAVI, Data Intelligence & Automation Platform Pros and Cons
    How are these determined?Information
    Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
    Pros
    Ease of Use
    1
    Easy Navigation
    1
    Intuitive
    1
    Unified Platform
    1
    Cons
    This product has not yet received any negative sentiments.
  • User Satisfaction
    Expand/Collapse User Satisfaction
  • APARAVI, Data Intelligence & Automation Platform features and usability ratings that predict user satisfaction
    10.0
    Has the product been a good partner in doing business?
    Average: 8.7
    10.0
    Real-Time Data Collection
    Average: 8.7
    8.3
    Machine Scaling
    Average: 8.7
    8.3
    Data Preparation
    Average: 8.6
  • Seller Details
    Expand/Collapse Seller Details
  • Seller Details
    Seller
    APARAVI
    Year Founded
    2018
    HQ Location
    Zug, CH
    LinkedIn® Page
    www.linkedin.com
    68 employees on LinkedIn®
Product Description
How are these determined?Information
This description is provided by the seller.

Aparavi is THE Data Intelligence and Automation Platform. We help organizations find and unlock the value of data no matter where it lives to mitigate risk, reduce costs and exploit new value from th

Users
No information available
Industries
No information available
Market Segment
  • 50% Enterprise
  • 50% Mid-Market
APARAVI, Data Intelligence & Automation Platform Pros and Cons
How are these determined?Information
Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
Pros
Ease of Use
1
Easy Navigation
1
Intuitive
1
Unified Platform
1
Cons
This product has not yet received any negative sentiments.
APARAVI, Data Intelligence & Automation Platform features and usability ratings that predict user satisfaction
10.0
Has the product been a good partner in doing business?
Average: 8.7
10.0
Real-Time Data Collection
Average: 8.7
8.3
Machine Scaling
Average: 8.7
8.3
Data Preparation
Average: 8.6
Seller Details
Seller
APARAVI
Year Founded
2018
HQ Location
Zug, CH
LinkedIn® Page
www.linkedin.com
68 employees on LinkedIn®
  • Overview
    Expand/Collapse Overview
  • Product Description
    How are these determined?Information
    This description is provided by the seller.

    Bluemetrix's flagship management application, BDM Control, is a suite of data and governance control capabilities, which integrate with your data and governance processes to create a single view of yo

    Users
    No information available
    Industries
    No information available
    Market Segment
    • 100% Mid-Market
  • Pros and Cons
    Expand/Collapse Pros and Cons
  • Bluemetrix Data Manager Pros and Cons
    How are these determined?Information
    Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
    Pros
    Automation
    1
    Customer Support
    1
    Data Handling
    1
    Documentation
    1
    Ease of Implementation
    1
    Cons
    Data Storage Issues
    1
  • User Satisfaction
    Expand/Collapse User Satisfaction
  • Bluemetrix Data Manager features and usability ratings that predict user satisfaction
    0.0
    No information available
    8.3
    Real-Time Data Collection
    Average: 8.7
    10.0
    Machine Scaling
    Average: 8.7
    10.0
    Data Preparation
    Average: 8.6
  • Seller Details
    Expand/Collapse Seller Details
  • Seller Details
    Year Founded
    2001
    HQ Location
    Cork, IE
    Twitter
    @blue_metrix
    476 Twitter followers
    LinkedIn® Page
    www.linkedin.com
    16 employees on LinkedIn®
Product Description
How are these determined?Information
This description is provided by the seller.

Bluemetrix's flagship management application, BDM Control, is a suite of data and governance control capabilities, which integrate with your data and governance processes to create a single view of yo

Users
No information available
Industries
No information available
Market Segment
  • 100% Mid-Market
Bluemetrix Data Manager Pros and Cons
How are these determined?Information
Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
Pros
Automation
1
Customer Support
1
Data Handling
1
Documentation
1
Ease of Implementation
1
Cons
Data Storage Issues
1
Bluemetrix Data Manager features and usability ratings that predict user satisfaction
0.0
No information available
8.3
Real-Time Data Collection
Average: 8.7
10.0
Machine Scaling
Average: 8.7
10.0
Data Preparation
Average: 8.6
Seller Details
Year Founded
2001
HQ Location
Cork, IE
Twitter
@blue_metrix
476 Twitter followers
LinkedIn® Page
www.linkedin.com
16 employees on LinkedIn®
  • Overview
    Expand/Collapse Overview
  • Product Description
    How are these determined?Information
    This description is provided by the seller.

    Bright Computing provides comprehensive software solutions for provisioning and managing HPC clusters, Hadoop clusters, and OpenStack private clouds in your data center or in the cloud.

    Users
    No information available
    Industries
    No information available
    Market Segment
    • 100% Enterprise
  • User Satisfaction
    Expand/Collapse User Satisfaction
  • Bright Cluster Manager features and usability ratings that predict user satisfaction
    10.0
    Has the product been a good partner in doing business?
    Average: 8.7
    10.0
    Real-Time Data Collection
    Average: 8.7
    8.3
    Machine Scaling
    Average: 8.7
    8.3
    Data Preparation
    Average: 8.6
  • Seller Details
    Expand/Collapse Seller Details
  • Seller Details
    Seller
    NVIDIA
    Year Founded
    1993
    HQ Location
    Santa Clara, CA
    Twitter
    @nvidia
    2,363,899 Twitter followers
    LinkedIn® Page
    www.linkedin.com
    39,703 employees on LinkedIn®
    Ownership
    NVDA
Product Description
How are these determined?Information
This description is provided by the seller.

Bright Computing provides comprehensive software solutions for provisioning and managing HPC clusters, Hadoop clusters, and OpenStack private clouds in your data center or in the cloud.

Users
No information available
Industries
No information available
Market Segment
  • 100% Enterprise
Bright Cluster Manager features and usability ratings that predict user satisfaction
10.0
Has the product been a good partner in doing business?
Average: 8.7
10.0
Real-Time Data Collection
Average: 8.7
8.3
Machine Scaling
Average: 8.7
8.3
Data Preparation
Average: 8.6
Seller Details
Seller
NVIDIA
Year Founded
1993
HQ Location
Santa Clara, CA
Twitter
@nvidia
2,363,899 Twitter followers
LinkedIn® Page
www.linkedin.com
39,703 employees on LinkedIn®
Ownership
NVDA
  • Overview
    Expand/Collapse Overview
  • Product Description
    How are these determined?Information
    This description is provided by the seller.

    Denodo is a leader in data management. The award-winning Denodo Platform is the leading logical data management platform for transforming data to trustworthy insights and outcomes for all data-related

    Users
    No information available
    Industries
    • Insurance
    • Banking
    Market Segment
    • 56% Enterprise
    • 26% Mid-Market
  • Pros and Cons
    Expand/Collapse Pros and Cons
  • Denodo Pros and Cons
    How are these determined?Information
    Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
    Pros
    Data Integration
    2
    Integrations
    2
    API Integration
    1
    API Management
    1
    API Support
    1
    Cons
    Complexity
    1
    Difficult Learning
    1
    Integration Issues
    1
    Learning Curve
    1
    Product Immaturity
    1
  • User Satisfaction
    Expand/Collapse User Satisfaction
  • Denodo features and usability ratings that predict user satisfaction
    9.0
    Has the product been a good partner in doing business?
    Average: 8.7
    10.0
    Real-Time Data Collection
    Average: 8.7
    8.3
    Machine Scaling
    Average: 8.7
    8.3
    Data Preparation
    Average: 8.6
  • Seller Details
    Expand/Collapse Seller Details
  • Seller Details
    Seller
    Denodo
    Company Website
    Year Founded
    1999
    HQ Location
    Palo Alto, CA
    Twitter
    @denodo
    5,553 Twitter followers
    LinkedIn® Page
    www.linkedin.com
    756 employees on LinkedIn®
Product Description
How are these determined?Information
This description is provided by the seller.

Denodo is a leader in data management. The award-winning Denodo Platform is the leading logical data management platform for transforming data to trustworthy insights and outcomes for all data-related

Users
No information available
Industries
  • Insurance
  • Banking
Market Segment
  • 56% Enterprise
  • 26% Mid-Market
Denodo Pros and Cons
How are these determined?Information
Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
Pros
Data Integration
2
Integrations
2
API Integration
1
API Management
1
API Support
1
Cons
Complexity
1
Difficult Learning
1
Integration Issues
1
Learning Curve
1
Product Immaturity
1
Denodo features and usability ratings that predict user satisfaction
9.0
Has the product been a good partner in doing business?
Average: 8.7
10.0
Real-Time Data Collection
Average: 8.7
8.3
Machine Scaling
Average: 8.7
8.3
Data Preparation
Average: 8.6
Seller Details
Seller
Denodo
Company Website
Year Founded
1999
HQ Location
Palo Alto, CA
Twitter
@denodo
5,553 Twitter followers
LinkedIn® Page
www.linkedin.com
756 employees on LinkedIn®
  • Overview
    Expand/Collapse Overview
  • Users
    No information available
    Industries
    No information available
    Market Segment
    • 50% Mid-Market
    • 50% Small-Business
  • Pros and Cons
    Expand/Collapse Pros and Cons
  • Equinix Data Hub Pros and Cons
    How are these determined?Information
    Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
    Pros
    Analytics
    1
    Cost-Effective
    1
    Data Security
    1
    Features
    1
    Pricing
    1
    Cons
    This product has not yet received any negative sentiments.
  • User Satisfaction
    Expand/Collapse User Satisfaction
  • Equinix Data Hub features and usability ratings that predict user satisfaction
    9.2
    Has the product been a good partner in doing business?
    Average: 8.7
    8.3
    Real-Time Data Collection
    Average: 8.7
    10.0
    Machine Scaling
    Average: 8.7
    10.0
    Data Preparation
    Average: 8.6
  • Seller Details
    Expand/Collapse Seller Details
  • Seller Details
    Seller
    Equinix
    Year Founded
    1998
    HQ Location
    Redwood City, California
    Twitter
    @Equinix
    27,370 Twitter followers
    LinkedIn® Page
    www.linkedin.com
    13,944 employees on LinkedIn®
    Ownership
    NASDAQ: EQIX
Users
No information available
Industries
No information available
Market Segment
  • 50% Mid-Market
  • 50% Small-Business
Equinix Data Hub Pros and Cons
How are these determined?Information
Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
Pros
Analytics
1
Cost-Effective
1
Data Security
1
Features
1
Pricing
1
Cons
This product has not yet received any negative sentiments.
Equinix Data Hub features and usability ratings that predict user satisfaction
9.2
Has the product been a good partner in doing business?
Average: 8.7
8.3
Real-Time Data Collection
Average: 8.7
10.0
Machine Scaling
Average: 8.7
10.0
Data Preparation
Average: 8.6
Seller Details
Seller
Equinix
Year Founded
1998
HQ Location
Redwood City, California
Twitter
@Equinix
27,370 Twitter followers
LinkedIn® Page
www.linkedin.com
13,944 employees on LinkedIn®
Ownership
NASDAQ: EQIX
  • Overview
    Expand/Collapse Overview
  • Product Description
    How are these determined?Information
    This description is provided by the seller.

    FlinkML is the Machine Learning (ML) library for Flink it has a growing list of algorithms and contributors that aim to provide scalable ML algorithms, an intuitive API, and tools that help minimize g

    Users
    No information available
    Industries
    No information available
    Market Segment
    • 100% Enterprise
  • User Satisfaction
    Expand/Collapse User Satisfaction
  • FlinkML features and usability ratings that predict user satisfaction
    0.0
    No information available
    0.0
    No information available
    0.0
    No information available
    0.0
    No information available
  • Seller Details
    Expand/Collapse Seller Details
  • Seller Details
    Seller
    Flink
    HQ Location
    Wakefield, MA
    Twitter
    @ApacheFlink
    18,752 Twitter followers
    LinkedIn® Page
    www.linkedin.com
    1 employees on LinkedIn®
Product Description
How are these determined?Information
This description is provided by the seller.

FlinkML is the Machine Learning (ML) library for Flink it has a growing list of algorithms and contributors that aim to provide scalable ML algorithms, an intuitive API, and tools that help minimize g

Users
No information available
Industries
No information available
Market Segment
  • 100% Enterprise
FlinkML features and usability ratings that predict user satisfaction
0.0
No information available
0.0
No information available
0.0
No information available
0.0
No information available
Seller Details
Seller
Flink
HQ Location
Wakefield, MA
Twitter
@ApacheFlink
18,752 Twitter followers
LinkedIn® Page
www.linkedin.com
1 employees on LinkedIn®
  • Overview
    Expand/Collapse Overview
  • Product Description
    How are these determined?Information
    This description is provided by the seller.

    Kinetica is the database for time & space. Kinetica makes it easy and fast to: - ingest massive amounts of IoT data and other contextual data sets - fuse data sets using spatial and temporal joi

    Users
    No information available
    Industries
    No information available
    Market Segment
    • 100% Mid-Market
  • Pros and Cons
    Expand/Collapse Pros and Cons
  • Kinetica Pros and Cons
    How are these determined?Information
    Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
    Pros
    Analytics Power
    2
    Data Analysis
    2
    Efficiency
    2
    Insights
    2
    Real-Time Data
    2
    Cons
    Expensive
    2
    Pricing Issues
    2
    Complexity
    1
    Complex Usage
    1
    Cost
    1
  • User Satisfaction
    Expand/Collapse User Satisfaction
  • Kinetica features and usability ratings that predict user satisfaction
    8.3
    Has the product been a good partner in doing business?
    Average: 8.7
    8.3
    Real-Time Data Collection
    Average: 8.7
    10.0
    Machine Scaling
    Average: 8.7
    10.0
    Data Preparation
    Average: 8.6
  • Seller Details
    Expand/Collapse Seller Details
  • Seller Details
    Seller
    Kinetica
    Year Founded
    2009
    HQ Location
    San Francisco, CA
    Twitter
    @KineticaHQ
    3,533 Twitter followers
    LinkedIn® Page
    www.linkedin.com
    59 employees on LinkedIn®
Product Description
How are these determined?Information
This description is provided by the seller.

Kinetica is the database for time & space. Kinetica makes it easy and fast to: - ingest massive amounts of IoT data and other contextual data sets - fuse data sets using spatial and temporal joi

Users
No information available
Industries
No information available
Market Segment
  • 100% Mid-Market
Kinetica Pros and Cons
How are these determined?Information
Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
Pros
Analytics Power
2
Data Analysis
2
Efficiency
2
Insights
2
Real-Time Data
2
Cons
Expensive
2
Pricing Issues
2
Complexity
1
Complex Usage
1
Cost
1
Kinetica features and usability ratings that predict user satisfaction
8.3
Has the product been a good partner in doing business?
Average: 8.7
8.3
Real-Time Data Collection
Average: 8.7
10.0
Machine Scaling
Average: 8.7
10.0
Data Preparation
Average: 8.6
Seller Details
Seller
Kinetica
Year Founded
2009
HQ Location
San Francisco, CA
Twitter
@KineticaHQ
3,533 Twitter followers
LinkedIn® Page
www.linkedin.com
59 employees on LinkedIn®
  • Overview
    Expand/Collapse Overview
  • Users
    No information available
    Industries
    No information available
    Market Segment
    • 100% Small-Business
  • Pros and Cons
    Expand/Collapse Pros and Cons
  • MyDataHub Pros and Cons
    How are these determined?Information
    Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
    Pros
    Ease of Access
    1
    Ease of Use
    1
    Cons
    This product has not yet received any negative sentiments.
  • User Satisfaction
    Expand/Collapse User Satisfaction
  • MyDataHub features and usability ratings that predict user satisfaction
    0.0
    No information available
    6.7
    Real-Time Data Collection
    Average: 8.7
    6.7
    Machine Scaling
    Average: 8.7
    6.7
    Data Preparation
    Average: 8.6
  • Seller Details
    Expand/Collapse Seller Details
  • Seller Details
    Seller
    MyDataHub
    Year Founded
    2022
    HQ Location
    Fethiye, TR
    LinkedIn® Page
    www.linkedin.com
    1 employees on LinkedIn®
Users
No information available
Industries
No information available
Market Segment
  • 100% Small-Business
MyDataHub Pros and Cons
How are these determined?Information
Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
Pros
Ease of Access
1
Ease of Use
1
Cons
This product has not yet received any negative sentiments.
MyDataHub features and usability ratings that predict user satisfaction
0.0
No information available
6.7
Real-Time Data Collection
Average: 8.7
6.7
Machine Scaling
Average: 8.7
6.7
Data Preparation
Average: 8.6
Seller Details
Seller
MyDataHub
Year Founded
2022
HQ Location
Fethiye, TR
LinkedIn® Page
www.linkedin.com
1 employees on LinkedIn®
  • Overview
    Expand/Collapse Overview
  • Product Description
    How are these determined?Information
    This description is provided by the seller.

    The RAPIDS suite of open source software libraries and APIs gives you the ability to execute end-to-end data science and analytics pipelines entirely on GPUs. Licensed under Apache 2.0, RAPIDS is incu

    Users
    No information available
    Industries
    No information available
    Market Segment
    • 100% Small-Business
  • User Satisfaction
    Expand/Collapse User Satisfaction
  • RAPIDS features and usability ratings that predict user satisfaction
    0.0
    No information available
    10.0
    Real-Time Data Collection
    Average: 8.7
    10.0
    Machine Scaling
    Average: 8.7
    8.3
    Data Preparation
    Average: 8.6
  • Seller Details
    Expand/Collapse Seller Details
  • Seller Details
    Seller
    NVIDIA
    Year Founded
    1993
    HQ Location
    Santa Clara, CA
    Twitter
    @nvidia
    2,363,899 Twitter followers
    LinkedIn® Page
    www.linkedin.com
    39,703 employees on LinkedIn®
    Ownership
    NVDA
Product Description
How are these determined?Information
This description is provided by the seller.

The RAPIDS suite of open source software libraries and APIs gives you the ability to execute end-to-end data science and analytics pipelines entirely on GPUs. Licensed under Apache 2.0, RAPIDS is incu

Users
No information available
Industries
No information available
Market Segment
  • 100% Small-Business
RAPIDS features and usability ratings that predict user satisfaction
0.0
No information available
10.0
Real-Time Data Collection
Average: 8.7
10.0
Machine Scaling
Average: 8.7
8.3
Data Preparation
Average: 8.6
Seller Details
Seller
NVIDIA
Year Founded
1993
HQ Location
Santa Clara, CA
Twitter
@nvidia
2,363,899 Twitter followers
LinkedIn® Page
www.linkedin.com
39,703 employees on LinkedIn®
Ownership
NVDA
  • Overview
    Expand/Collapse Overview
  • Product Description
    How are these determined?Information
    This description is provided by the seller.

    Teraki data processing software provides customer’s algorithms to work with more accurate and higher frequency data streams. This means that Teraki is able to get more relevant information from the ca

    Users
    No information available
    Industries
    No information available
    Market Segment
    • 100% Small-Business
  • Pros and Cons
    Expand/Collapse Pros and Cons
  • Teraki Pros and Cons
    How are these determined?Information
    Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
    Pros
    Data Processing
    1
    Fast Processing
    1
    Cons
    Large Datasets
    1
  • User Satisfaction
    Expand/Collapse User Satisfaction
  • Teraki features and usability ratings that predict user satisfaction
    0.0
    No information available
    10.0
    Real-Time Data Collection
    Average: 8.7
    6.7
    Machine Scaling
    Average: 8.7
    6.7
    Data Preparation
    Average: 8.6
  • Seller Details
    Expand/Collapse Seller Details
  • Seller Details
    Seller
    Teraki
    Year Founded
    2015
    HQ Location
    Berlin, DE
    LinkedIn® Page
    linkedin.com
    25 employees on LinkedIn®
Product Description
How are these determined?Information
This description is provided by the seller.

Teraki data processing software provides customer’s algorithms to work with more accurate and higher frequency data streams. This means that Teraki is able to get more relevant information from the ca

Users
No information available
Industries
No information available
Market Segment
  • 100% Small-Business
Teraki Pros and Cons
How are these determined?Information
Pros and Cons are compiled from review feedback and grouped into themes to provide an easy-to-understand summary of user reviews.
Pros
Data Processing
1
Fast Processing
1
Cons
Large Datasets
1
Teraki features and usability ratings that predict user satisfaction
0.0
No information available
10.0
Real-Time Data Collection
Average: 8.7
6.7
Machine Scaling
Average: 8.7
6.7
Data Preparation
Average: 8.6
Seller Details
Seller
Teraki
Year Founded
2015
HQ Location
Berlin, DE
LinkedIn® Page
linkedin.com
25 employees on LinkedIn®
  • Overview
    Expand/Collapse Overview
  • Product Description
    How are these determined?Information
    This description is provided by the seller.

    Ahana Cloud for Presto is a fully integrated, cloud-native managed service built for AWS and the easiest way to get up and running with Presto. The managed service includes the Ahana SaaS Console whic

    We don't have enough data from reviews to share who uses this product. Write a review to contribute, or learn more about review generation.
    Industries
    No information available
    Market Segment
    No information available
  • User Satisfaction
    Expand/Collapse User Satisfaction
  • Ahana Cloud for Presto features and usability ratings that predict user satisfaction
    0.0
    No information available
    0.0
    No information available
    0.0
    No information available
    0.0
    No information available
  • Seller Details
    Expand/Collapse Seller Details
  • Seller Details
    Seller
    Ahana
    Year Founded
    2020
    HQ Location
    Remote First, US
    Twitter
    @ahana
    272 Twitter followers
    LinkedIn® Page
    www.linkedin.com
    31 employees on LinkedIn®
Product Description
How are these determined?Information
This description is provided by the seller.

Ahana Cloud for Presto is a fully integrated, cloud-native managed service built for AWS and the easiest way to get up and running with Presto. The managed service includes the Ahana SaaS Console whic

We don't have enough data from reviews to share who uses this product. Write a review to contribute, or learn more about review generation.
Industries
No information available
Market Segment
No information available
Ahana Cloud for Presto features and usability ratings that predict user satisfaction
0.0
No information available
0.0
No information available
0.0
No information available
0.0
No information available
Seller Details
Seller
Ahana
Year Founded
2020
HQ Location
Remote First, US
Twitter
@ahana
272 Twitter followers
LinkedIn® Page
www.linkedin.com
31 employees on LinkedIn®
  • Overview
    Expand/Collapse Overview
  • Product Description
    How are these determined?Information
    This description is provided by the seller.

    No code ModelOps for the fastest advanced analytics possible. In today's world, everyone is data-driven. From marketing to finance to engineering, data is the new currency of business. Unfortunately,

    We don't have enough data from reviews to share who uses this product. Write a review to contribute, or learn more about review generation.
    Industries
    No information available
    Market Segment
    No information available
  • User Satisfaction
    Expand/Collapse User Satisfaction
  • AI-Surge Cloud features and usability ratings that predict user satisfaction
    0.0
    No information available
    0.0
    No information available
    0.0
    No information available
    0.0
    No information available
  • Seller Details
    Expand/Collapse Seller Details
  • Seller Details
    LinkedIn® Page
    www.linkedin.com
    1 employees on LinkedIn®
Product Description
How are these determined?Information
This description is provided by the seller.

No code ModelOps for the fastest advanced analytics possible. In today's world, everyone is data-driven. From marketing to finance to engineering, data is the new currency of business. Unfortunately,

We don't have enough data from reviews to share who uses this product. Write a review to contribute, or learn more about review generation.
Industries
No information available
Market Segment
No information available
AI-Surge Cloud features and usability ratings that predict user satisfaction
0.0
No information available
0.0
No information available
0.0
No information available
0.0
No information available
Seller Details
LinkedIn® Page
www.linkedin.com
1 employees on LinkedIn®
  • Overview
    Expand/Collapse Overview
  • Product Description
    How are these determined?Information
    This description is provided by the seller.

    Open source data orchestration for analytics and machine learning in any cloud

    We don't have enough data from reviews to share who uses this product. Write a review to contribute, or learn more about review generation.
    Industries
    No information available
    Market Segment
    No information available
  • User Satisfaction
    Expand/Collapse User Satisfaction
  • Alluxio features and usability ratings that predict user satisfaction
    0.0
    No information available
    0.0
    No information available
    0.0
    No information available
    0.0
    No information available
  • Seller Details
    Expand/Collapse Seller Details
  • Seller Details
    Seller
    Alluxio
    Year Founded
    2015
    HQ Location
    San Mateo, US
    Twitter
    @Alluxio
    1,269 Twitter followers
    LinkedIn® Page
    www.linkedin.com
    95 employees on LinkedIn®
Product Description
How are these determined?Information
This description is provided by the seller.

Open source data orchestration for analytics and machine learning in any cloud

We don't have enough data from reviews to share who uses this product. Write a review to contribute, or learn more about review generation.
Industries
No information available
Market Segment
No information available
Alluxio features and usability ratings that predict user satisfaction
0.0
No information available
0.0
No information available
0.0
No information available
0.0
No information available
Seller Details
Seller
Alluxio
Year Founded
2015
HQ Location
San Mateo, US
Twitter
@Alluxio
1,269 Twitter followers
LinkedIn® Page
www.linkedin.com
95 employees on LinkedIn®
  • Overview
    Expand/Collapse Overview
  • Product Description
    How are these determined?Information
    This description is provided by the seller.

    Altiscale Data Cloud is a fully managed Big Data platform, delivering instant access to production-ready Hadoop and Spark.

    We don't have enough data from reviews to share who uses this product. Write a review to contribute, or learn more about review generation.
    Industries
    No information available
    Market Segment
    No information available
  • User Satisfaction
    Expand/Collapse User Satisfaction
  • Altiscale Data Cloud features and usability ratings that predict user satisfaction
    0.0
    No information available
    0.0
    No information available
    0.0
    No information available
    0.0
    No information available
  • Seller Details
    Expand/Collapse Seller Details
  • Seller Details
    Seller
    Altiscale
    Year Founded
    2012
    HQ Location
    Palo Alto, US
    Twitter
    @Altiscale
    174 Twitter followers
    LinkedIn® Page
    www.linkedin.com
    4 employees on LinkedIn®
Product Description
How are these determined?Information
This description is provided by the seller.

Altiscale Data Cloud is a fully managed Big Data platform, delivering instant access to production-ready Hadoop and Spark.

We don't have enough data from reviews to share who uses this product. Write a review to contribute, or learn more about review generation.
Industries
No information available
Market Segment
No information available
Altiscale Data Cloud features and usability ratings that predict user satisfaction
0.0
No information available
0.0
No information available
0.0
No information available
0.0
No information available
Seller Details
Seller
Altiscale
Year Founded
2012
HQ Location
Palo Alto, US
Twitter
@Altiscale
174 Twitter followers
LinkedIn® Page
www.linkedin.com
4 employees on LinkedIn®
  • Overview
    Expand/Collapse Overview
  • Product Description
    How are these determined?Information
    This description is provided by the seller.

    AMETRAS Automatic Documents Processing can help you collect relevant information from your documents in order to process, provide and distribute them.

    We don't have enough data from reviews to share who uses this product. Write a review to contribute, or learn more about review generation.
    Industries
    No information available
    Market Segment
    No information available
  • User Satisfaction
    Expand/Collapse User Satisfaction
  • AMETRAS Automatic Documents Processing features and usability ratings that predict user satisfaction
    0.0
    No information available
    0.0
    No information available
    0.0
    No information available
    0.0
    No information available
  • Seller Details
    Expand/Collapse Seller Details
  • Seller Details
    HQ Location
    Eberhardzell, DE
    Twitter
    @DimiAmetras
    LinkedIn® Page
    www.linkedin.com
    36 employees on LinkedIn®
Product Description
How are these determined?Information
This description is provided by the seller.

AMETRAS Automatic Documents Processing can help you collect relevant information from your documents in order to process, provide and distribute them.

We don't have enough data from reviews to share who uses this product. Write a review to contribute, or learn more about review generation.
Industries
No information available
Market Segment
No information available
AMETRAS Automatic Documents Processing features and usability ratings that predict user satisfaction
0.0
No information available
0.0
No information available
0.0
No information available
0.0
No information available
Seller Details
HQ Location
Eberhardzell, DE
Twitter
@DimiAmetras
LinkedIn® Page
www.linkedin.com
36 employees on LinkedIn®
  • Overview
    Expand/Collapse Overview
  • Product Description
    How are these determined?Information
    This description is provided by the seller.

    With BMC’s LOBMaster for Db2 you can manage and validate unstructured data automatically to ensure the stored data is intact.

    We don't have enough data from reviews to share who uses this product. Write a review to contribute, or learn more about review generation.
    Industries
    No information available
    Market Segment
    No information available
  • User Satisfaction
    Expand/Collapse User Satisfaction
  • AMI LOBMaster for Db2 features and usability ratings that predict user satisfaction
    0.0
    No information available
    0.0
    No information available
    0.0
    No information available
    0.0
    No information available
  • Seller Details
    Expand/Collapse Seller Details
  • Seller Details
    Year Founded
    1980
    HQ Location
    Houston, TX
    Twitter
    @BMCSoftware
    49,477 Twitter followers
    LinkedIn® Page
    www.linkedin.com
    9,760 employees on LinkedIn®
    Phone
    713 918 8800
Product Description
How are these determined?Information
This description is provided by the seller.

With BMC’s LOBMaster for Db2 you can manage and validate unstructured data automatically to ensure the stored data is intact.

We don't have enough data from reviews to share who uses this product. Write a review to contribute, or learn more about review generation.
Industries
No information available
Market Segment
No information available
AMI LOBMaster for Db2 features and usability ratings that predict user satisfaction
0.0
No information available
0.0
No information available
0.0
No information available
0.0
No information available
Seller Details
Year Founded
1980
HQ Location
Houston, TX
Twitter
@BMCSoftware
49,477 Twitter followers
LinkedIn® Page
www.linkedin.com
9,760 employees on LinkedIn®
Phone
713 918 8800
  • Overview
    Expand/Collapse Overview
  • Product Description
    How are these determined?Information
    This description is provided by the seller.

    AMR Win Control offers software for data acquisition and measured data processing.

    We don't have enough data from reviews to share who uses this product. Write a review to contribute, or learn more about review generation.
    Industries
    No information available
    Market Segment
    No information available
  • User Satisfaction
    Expand/Collapse User Satisfaction
  • AMR Win Control Software features and usability ratings that predict user satisfaction
    0.0
    No information available
    0.0
    No information available
    0.0
    No information available
    0.0
    No information available
  • Seller Details
    Expand/Collapse Seller Details
  • Seller Details
    Seller
    Ahlborn
    LinkedIn® Page
    www.linkedin.com
    1 employees on LinkedIn®
Product Description
How are these determined?Information
This description is provided by the seller.

AMR Win Control offers software for data acquisition and measured data processing.

We don't have enough data from reviews to share who uses this product. Write a review to contribute, or learn more about review generation.
Industries
No information available
Market Segment
No information available
AMR Win Control Software features and usability ratings that predict user satisfaction
0.0
No information available
0.0
No information available
0.0
No information available
0.0
No information available
Seller Details
Seller
Ahlborn
LinkedIn® Page
www.linkedin.com
1 employees on LinkedIn®
  • Overview
    Expand/Collapse Overview
  • Product Description
    How are these determined?Information
    This description is provided by the seller.

    Apache Hudi is an open-source data lake platform that brings database-like capabilities to data lakes, enabling ACID transactions, record-level updates and deletes, and efficient data ingestion. Devel

    We don't have enough data from reviews to share who uses this product. Write a review to contribute, or learn more about review generation.
    Industries
    No information available
    Market Segment
    No information available
  • User Satisfaction
    Expand/Collapse User Satisfaction
  • Apache Hudi features and usability ratings that predict user satisfaction
    0.0
    No information available
    0.0
    No information available
    0.0
    No information available
    0.0
    No information available
  • Seller Details
    Expand/Collapse Seller Details
  • Seller Details
    Seller
    Onehouse
    Year Founded
    2021
    HQ Location
    Menlo Park, US
    LinkedIn® Page
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Apache Hudi is an open-source data lake platform that brings database-like capabilities to data lakes, enabling ACID transactions, record-level updates and deletes, and efficient data ingestion. Devel

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Onehouse
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    AxonIQ Console Insight and management for Axon Framework and Axon Server AxonIQ Console is designed to get the most out of your Axon Framework application and Axon Server environment, no matter where

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AxonIQ Console Insight and management for Axon Framework and Axon Server AxonIQ Console is designed to get the most out of your Axon Framework application and Axon Server environment, no matter where

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    BasePair is a SaaS platform for genomic data analysis and visualization that can be used for multitude of application areas across epigenetics, genomics, transcriptomics and others. Bioinformaticians

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    Basepair
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BasePair is a SaaS platform for genomic data analysis and visualization that can be used for multitude of application areas across epigenetics, genomics, transcriptomics and others. Bioinformaticians

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Basepair
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    Bare Metal Cloud Infrastructure as a Service (IaaS) offering single tenant, on-demand environments built for high traffic websites, micro-services architectures, IoT & mobile backends, big data an

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    Bigstep
    Year Founded
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Bare Metal Cloud Infrastructure as a Service (IaaS) offering single tenant, on-demand environments built for high traffic websites, micro-services architectures, IoT & mobile backends, big data an

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Bigstep
Year Founded
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HQ Location
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LinkedIn® Page
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    BlueData is a Big Data infrastructure software that reduce the complexity, cost, and time to deploy Hadoop and Spark and enable Big-Data-as-a-Service (BDaaS)

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BlueData is a Big Data infrastructure software that reduce the complexity, cost, and time to deploy Hadoop and Spark and enable Big-Data-as-a-Service (BDaaS)

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    A comprehensive development and operating environment for rapid data integration, preparation, governance, and exploration of large volumes of heterogeneous data.

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    C3.ai
    Year Founded
    2009
    HQ Location
    Redwood City, CA
    Twitter
    @C3IoT
    78 Twitter followers
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    1,423 employees on LinkedIn®
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A comprehensive development and operating environment for rapid data integration, preparation, governance, and exploration of large volumes of heterogeneous data.

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C3.ai
Year Founded
2009
HQ Location
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Twitter
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    Cask is an open source software company bringing virtualization to Hadoop data and apps.

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    Cask
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Cask is an open source software company bringing virtualization to Hadoop data and apps.

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Cask
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    The industry’s most powerful real-time analytics platform. Delivering performance three times greater than the next leading solution, CelerData Enterprise lets you provide blazing-fast real-time insig

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The industry’s most powerful real-time analytics platform. Delivering performance three times greater than the next leading solution, CelerData Enterprise lets you provide blazing-fast real-time insig

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    Datacoral offers a secure, fully-managed, serverless, ELT-based data infrastructure platform that runs in your AWS VPC and includes enterprise DataOps features like Amazon Redshift management, pipelin

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Datacoral offers a secure, fully-managed, serverless, ELT-based data infrastructure platform that runs in your AWS VPC and includes enterprise DataOps features like Amazon Redshift management, pipelin

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    Tervela Data Fabric is a lightening-fast, fault-tolerant platform that allows you to capture, share, and distribute data from hundreds of enterprise and cloud data sources down to a diverse set of dow

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Tervela Data Fabric is a lightening-fast, fault-tolerant platform that allows you to capture, share, and distribute data from hundreds of enterprise and cloud data sources down to a diverse set of dow

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    “Creating machine learning models that learn across all of our customers without aggregating any data. Now that’s a killer app.” - Lead Data Scientist at a Fortune 500 Company Introducing DataFleets.

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    2018
    HQ Location
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    Twitter
    @DataFleets
    305 Twitter followers
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    Datumize is revolutionizing the way companies understand their customer demand, their customer behavior or their day to day operations by acquiring and managing dark data that provides powerful and co

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    XenonStack is a software company that specializes in product development and providing DevOps, big data integration, real time analytics and data science solutions.

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XenonStack is a software company that specializes in product development and providing DevOps, big data integration, real time analytics and data science solutions.

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HQ Location
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Twitter
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963 Twitter followers
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79 employees on LinkedIn®

Learn More About Big Data Processing And Distribution Systems

What is Big Data Processing and Distribution Software?

Companies are seeking to extract more value from their data but they struggle to capture, store, and analyze all the data generated. With various types of business data being produced at a rapid rate, it is important for companies to have the proper tools in place for processing and distributing this data. These tools are critical for the management, storage, and distribution of this data, utilizing the latest technology such as parallel computing clusters. Unlike older tools which are unable to handle big data, this software is purpose built for large scale deployments and helps companies organize vast amounts of data.

The amount of data businesses produce is too much for a single database to handle. As a result, tools are invented to chop up computations into smaller chunks, which can be mapped to many computers to perform computations and processing. Businesses that have large volumes of data (upwards of 10 terabytes) and high calculation complexity reap the benefits of big data processing and distribution software. However, it should be noted that other types of data solutions, such as relational databases are still useful for businesses for specific use cases, such as line of business (LOB) data, which is typically transactional.

What Types of Big Data Processing and Distribution Software Exist?

There are different methods or manners in which big data processing and distribution takes place. The chief difference lies in the type of data that is being processed.

Stream processing

With stream processing, data is fed into analytics tools in real time, as soon as it is generated. This method is particularly useful in cases like fraud detection where results are critical at the moment.

Batch processing

Batch processing refers to a technique in which data is collected over time and is subsequently sent for processing. This technique works well for large quantities of data that are not time sensitive. It is often used when data is stored in legacy systems, such as mainframes, that cannot deliver data in streams. Cases such as payroll and billing may be adequately handled with batch processing. 

What are the Common Features of Big Data Processing and Distribution Software?

Big data processing and distribution software, with processing at its core, provides users with the capabilities they need to integrate their data for purposes such as analytics and application development. The following features help to facilitate these tasks:

Machine learning: This software helps accelerate data science projects for data experts, such as data analysts and data scientists, helping them operationalize machine learning models on structured or semistructured data using query languages such as SQL. Some advanced tools also work with unstructured data, although these products are few and far between.

Serverless: Users can get up and running quickly with serverless data warehousing, with the software provider focusing on the resource provisioning behind the scenes. Upgrading, securing, and managing infrastructure is handled by the provider, thus giving businesses more time to focus on their data and how to derive insights from it.

Storage and compute: With hosted options, users are enabled to customize the amount of storage and compute they want, tailored to their particular data needs and use case.

Data backup: Many products give the option to track and view historical data and allows them to restore and compare data over time.

Data transfer: Especially in the current data climate, data is frequently distributed across data lakes, data warehouses, legacy systems, and more. Many big data processing and distribution software products allow users to transfer data from external data sources on a scheduled and fully managed basis.

Integration: Most of these products allow integrations with other big data tools and frameworks such as the Apache big data ecosystem.

What are the Benefits of Big Data Processing and Distribution Software?

Analysis of big data allows business users, analysts, and researchers to make more informed and quicker decisions using data that was previously inaccessible or unusable. Businesses use advanced analytics techniques such as text analytics, machine learning, predictive analytics, data mining, statistics, and natural language processing to gain new insights from previously untapped data sources independently or together with existing enterprise data.

Using big data processing and distribution software, companies accelerate processes in big data environments. With open-source tools such as Apache Hadoop (along with commercial offerings, or otherwise), they are able to address the challenges they face around big data security, integration, analysis, and more.

Scalability: In contradistinction, with traditional data processing software, big data processing and distribution software is able to handle vast amounts of data in an effective and efficient manner and has the ability to scale as the data output increases.

Speed: With these products, businesses are able to achieve lightning-fast speeds, giving users the ability to process data in real time.

Sophisticated processing: Users have the ability to perform complex queries and are able to unlock the power of their data for tasks such as analytics and machine learning.

Who Uses Big Data Processing and Distribution Software?

In a data-driven organization, various departments and job types need to work together to deploy these tools successfully. While systems administrators and big data architects are the most common users of big data analytics software, self-service tools allow for a wider range of end users and can be leveraged by sales, marketing, and operations teams.

Developers: Users looking to develop big data solutions, including spinning up clusters and building and designing applications, use big data processing and distribution software.

System administrators: It may be necessary for businesses to employ specialists to make sure that data is being processed and distributed properly. Administrators, who are responsible for the upkeep, operation, and configuration of computer systems fulfill this task and ensure everything runs smoothly.

Big data architects: Translating business needs into data solutions is challenging. Architects bridge this gap, connecting with business leaders and data engineers alike to manage and maintain the data lifecycle.

What are the Alternatives to Big Data Processing and Distribution Software?

Alternatives to big data processing and distribution software can replace this type of software, either partially or completely:

Data warehouse software: Most companies have a large number of disparate data sources. To best integrate all their data, they implement data warehouse software. Data warehouses house data from multiple databases and business applications that allow business intelligence and analytics tools to pull all company data from a single repository. This organization is critical to the quality of the data that is ingested by analytics software.

NoSQL databases: While relational databases solutions excel with structured data, NoSQL databases more effectively store loosely structured and unstructured data. NoSQL databases pair well with relational databases if a company deals with diverse data that is collected by both structured and unstructured means.

Software Related to Big Data Processing and Distribution Software

Related solutions that can be used together with big data processing and distribution software include:

Data preparation software: Data preparation software helps companies with their data management. These solutions allow users to discover, combine, clean, and enrich data for simple analysis. Although big data processing and distribution software typically offer some data preparation features, businesses might opt for a dedicated preparation tool.

Big data analytics software: Businesses with a robust big data processing and distribution solution in place may begin to dig into their data and analyze it. They may adopt tools that are geared toward big data, called big data analytics software, which provides insights into large data sets that are collected from big data clusters.

Stream analytics software: When users are looking for tools specifically geared toward analyzing data in real time, stream analytics software can be helpful. These real-time processing tools help users analyze data in transfer through APIs, between applications, and more. This software is helpful with internet of things (IoT) data that may require frequent analysis in real time.

Log analysis software: Log analysis software is a tool that gives users the ability to analyze log files. This type of software typically includes visualizations and is particularly useful for monitoring and alerting purposes.

Challenges with Big Data Processing and Distribution Software

Software solutions can come with their own set of challenges. 

Need for skilled employees: Handling big data is not necessarily simple. Often, these tools require a dedicated administrator to help implement the solution and assist others with adoption. However, there is a shortage of skilled data scientists and analysts who are equipped to set up such solutions. Additionally, those same data scientists will be tasked with deriving actionable insights from within the data.

Without people skilled in these areas, businesses cannot effectively leverage the tools or their data. Even the self-service tools, which are to be used by the average business user, require someone to help deploy them. Companies can turn to vendor support teams or third-party consultants to assist if they are unable to bring a skilled professional in house.

Data organization: Big data solutions are only as good as the data that they consume. To get the most of the tool, that data needs to be organized. This means that databases should be set up correctly and integrated properly. This may require building a data warehouse, which stores data from a variety of applications and databases in a central location. Businesses may need to purchase a dedicated data preparation software as well to ensure that data is joined and clean for the analytics solution to consume in the right way. This often requires a skilled data analyst, IT employee, or an external consultant to help ensure data quality is at its finest for easy analysis.

User adoption: It is not always easy to transform a business into a data-driven company. Particularly at older companies that have done things the same way for years, it is not simple to force new tools upon employees, especially if there are ways for them to avoid it. If there are other options, they will most likely go that route. However, if managers and leaders ensure that these tools are a necessity in an employee’s routine tasks, then adoption rates will increase.

Which Companies Should Buy Big Data Processing and Distribution Software?

The implementation of data processing solutions can have a positive impact on businesses across a host of different industries.

Financial services: The use of big data processing and distribution in financial services can yield significant gains, such as for banks, which can use it for everything from processing credit score related data to distributing identification data. With big data processing and distribution software, data teams can process company data and deploy it to both internal and external applications.

Health care: Within healthcare, a large amount of data is produced, such as patient records, clinical trial data, and more. In addition, as the process of drug discovery is particularly costly and takes a significant amount of time, healthcare organizations are using this software to speed up the process, using data from past trials, research papers, and more.

Retail: In retail, especially e-commerce, personalization is important. The top retailers are recognizing the importance of big data processing and distribution software to provide customers with highly personalized experiences, based on factors such as previous behavior and location. With the proper software in place, these businesses can begin to get their data in order.

How to Buy Big Data Processing and Distribution Software

Requirements Gathering (RFI/RFP) for Big Data Processing and Distribution Software

If a company is just starting out and looking to purchase its first big data processing and distribution software, wherever a business is in its buying process, g2.com can help select the best big data processing and distribution software for the business.

The first step in the buying process must involve a careful look at how the data is stored, both on premises or in the cloud. If the company has amassed a lot of data, the need is to look for a solution that can grow with the organization. Although cloud solutions are on the rise, each business must evaluate their own data needs to make the right decision. 

Cloud is not always the answer, as it is not always a viable solution. Not all data experts have the luxury of working in the cloud for a number of reasons, including data security and issues related to latency. In cases such as health care, strict regulations such as HIPAA, require that data be secure. Therefore, on-premises solutions can be vital for some professionals, such as those in the healthcare industry and government sector, where privacy compliance is particularly strict and sometimes vital.

Users should think about the pain points, such as getting their data consolidated and collecting their data from disparate sources, and jot them down; these should be used to help create a checklist of criteria. Additionally, the buyer must determine the number of employees who will need to use this software, as this drives the number of licenses they are likely to buy. Taking a holistic overview of the business and identifying pain points can help the team springboard into creating a checklist of criteria. The checklist serves as a detailed guide that includes both necessary and nice-to-have features including budget, features, number of users, integrations, security requirements, cloud or on-premises solutions, and more.

Depending on the scope of the deployment, it might be helpful to produce an RFI, a one-page list with a few bullet points describing what is needed from a big data processing and distribution software.

Compare Big Data Processing and Distribution Software Products

Create a long list

From meeting the business functionality needs to implementation, vendor evaluations are an essential part of the software buying process. For ease of comparison after all demos are complete, it helps to prepare a consistent list of questions regarding specific needs and concerns to ask each vendor.

Create a short list

From the long list of vendors, it is helpful to narrow down the list of vendors and come up with a shorter list of contenders, preferably no more than three to five. With this list in hand, businesses can produce a matrix to compare the features and pricing of the various solutions.

Conduct demos

To ensure the comparison is thoroughgoing, the user should demo each solution on the shortlist with the same use case and datasets. This will allow the business to evaluate like for like and see how each vendor stacks up against the competition.

Selection of Big Data Processing and Distribution Software

Choose a selection team

Before getting started, it's crucial to create a winning team that will work together throughout the entire process, from identifying pain points to implementation. The software selection team should consist of members of the organization who have the right interest, skills, and time to participate in this process. A good starting point is to aim for three to five people who fill roles such as the main decision maker, project manager, process owner, system owner, or staffing subject matter expert, as well as a technical lead, IT administrator, or security administrator. In smaller companies, the vendor selection team may be smaller, with fewer participants multitasking and taking on more responsibilities.

Negotiation

Just because something is written on a company’s pricing page, does not mean it is fixed (although some companies will not budge). It is imperative to open up a conversation regarding pricing and licensing. For example, the vendor may be willing to give a discount for multi-year contracts or for recommending the product to others.

Final decision

After this stage, and before going all in, it is recommended to roll out a test run or pilot program to test adoption with a small sample size of users. If the tool is well used and well received, the buyer can be confident that the selection was correct. If not, it might be time to go back to the drawing board.

What Does Big Data Processing and Distribution Software Cost?

As mentioned above, big data processing and distribution software come as both on-premises and cloud solutions. Pricing between the two might differ, with the former often coming with more upfront costs related to setting up the infrastructure. 

As with any software, these platforms are frequently available in different tiers, with the more entry-level solutions costing less than the enterprise-scale ones. The former will frequently not have as many features and may have caps on usage. Vendors may have tiered pricing, in which the price is tailored to the users’ company size, the number of users, or both. This pricing strategy may come with some degree of support, which might be unlimited or capped at a certain number of hours per billing cycle.

Once set up, they do not often require significant maintenance costs, especially if deployed in the cloud. As these platforms often come with many additional features, businesses looking to maximize the value of their software can contract third-party consultants to help them derive insights from their data and get the most out of the software. Before evaluating the total cost of the solution, a business must carefully consider the full offering which they are purchasing, keeping in mind the cost of each component. It is not infrequent for businesses to sign a contract thinking they will only use a small portion of a given offering, only to realize after-the-fact that they benefited from and paid for a lot more.

Return on Investment (ROI)

Businesses decide to deploy big data processing and distribution software with the goal of deriving some degree of an ROI. As they are looking to recoup their losses that they spent on the software, it is critical to understand the costs associated with it. As mentioned above, these platforms typically are billed per user, which is sometimes tiered depending on the company size. More users will typically translate into more licenses, which means more money.

Users must consider how much is spent and compare that to what is gained, both in terms of efficiency as well as revenue. Therefore, businesses can compare processes between pre- and post-deployment of the software to better understand how processes have been improved and how much time has been saved. They can even produce a case study (either for internal or external purposes) to demonstrate the gains they have seen from their use of the platform.

Implementation of Big Data Processing and Distribution Software

How is Big Data Processing and Distribution Software Implemented?

Implementation differs drastically depending on the complexity and scale of the data. In organizations with vast amounts of data in disparate sources (e.g., applications, databases, etc.), it is often wise to utilize an external party, whether that be an implementation specialist from the vendor or a third-party consultancy. With vast experience under their belts, they can help businesses understand how to connect and consolidate their data sources and how to use the software efficiently and effectively.

Who is Responsible for Big Data Processing and Distribution Software Implementation?

It may require a lot of people, such as the chief technology officer (CTO) and chief information officer (CIO), as well as many teams, to properly deploy, including data engineers, database administrators, and software engineers. This is because, as mentioned, data can cut across teams and functions. As a result, it is rare that one person or even one team has a full understanding of all of a company’s data assets. With a cross-functional team in place, a business can begin to piece together data and begin the journey of data science, starting with proper data preparation and management.