Introducing G2.ai, the future of software buying.Try now
Azure Machine Learning
Save to My Lists
Unclaimed
Unclaimed

Azure Machine Learning Features

What are the features of Azure Machine Learning?

Model Development

  • Language Support
  • Drag and Drop
  • Pre-Built Algorithms
  • Model Training
  • Pre-Built Algorithms

Machine/Deep Learning Services

  • Computer Vision
  • Natural Language Processing
  • Natural Language Generation
  • Artificial Neural Networks
  • Computer Vision

Deployment

  • Managed Service
  • Application
  • Scalability

System

  • Data Ingestion & Wrangling
  • Drag and Drop

Top Rated Azure Machine Learning Alternatives

Vertex AI
(572)
4.3 out of 5
Dataiku
(175)
4.4 out of 5

Filter for Features

Model Development

Language Support

Supports programming languages such as Java, C, or Python. Supports front-end languages such as HTML, CSS, and JavaScript 51 reviewers of Azure Machine Learning have provided feedback on this feature.
86%
(Based on 51 reviews)

Drag and Drop

As reported in 54 Azure Machine Learning reviews. Offers the ability for developers to drag and drop pieces of code or algorithms when building models
89%
(Based on 54 reviews)

Pre-Built Algorithms

As reported in 53 Azure Machine Learning reviews. Provides users with pre-built algorithms for simpler model development
83%
(Based on 53 reviews)

Model Training

Based on 52 Azure Machine Learning reviews. Supplies large data sets for training individual models
87%
(Based on 52 reviews)

Pre-Built Algorithms

Provides users with pre-built algorithms for simpler model development 21 reviewers of Azure Machine Learning have provided feedback on this feature.
81%
(Based on 21 reviews)

Model Training

Supplies large data sets for training individual models This feature was mentioned in 21 Azure Machine Learning reviews.
87%
(Based on 21 reviews)

Feature Engineering

Transforms raw data into features that better represent the underlying problem to the predictive models This feature was mentioned in 21 Azure Machine Learning reviews.
84%
(Based on 21 reviews)

Machine/Deep Learning Services

Computer Vision

As reported in 45 Azure Machine Learning reviews. Offers image recognition services
81%
(Based on 45 reviews)

Natural Language Processing

Offers natural language processing services This feature was mentioned in 45 Azure Machine Learning reviews.
79%
(Based on 45 reviews)

Natural Language Generation

Offers natural language generation services This feature was mentioned in 38 Azure Machine Learning reviews.
78%
(Based on 38 reviews)

Artificial Neural Networks

Offers artificial neural networks for users 42 reviewers of Azure Machine Learning have provided feedback on this feature.
82%
(Based on 42 reviews)

Computer Vision

As reported in 21 Azure Machine Learning reviews. Offers image recognition services
83%
(Based on 21 reviews)

Natural Language Understanding

Based on 21 Azure Machine Learning reviews. Offers natural language understanding services
87%
(Based on 21 reviews)

Natural Language Generation

Based on 20 Azure Machine Learning reviews. Offers natural language generation services
86%
(Based on 20 reviews)

Deep Learning

Provides deep learning capabilities 21 reviewers of Azure Machine Learning have provided feedback on this feature.
85%
(Based on 21 reviews)

Deployment

Managed Service

Manages the intelligent application for the user, reducing the need of infrastructure 50 reviewers of Azure Machine Learning have provided feedback on this feature.
88%
(Based on 50 reviews)

Application

Based on 51 Azure Machine Learning reviews. Allows users to insert machine learning into operating applications
87%
(Based on 51 reviews)

Scalability

Based on 51 Azure Machine Learning reviews. Provides easily scaled machine learning applications and infrastructure
89%
(Based on 51 reviews)

Language Flexibility

Allows users to input models built in a variety of languages.

Not enough data

Framework Flexibility

Allows users to choose the framework or workbench of their preference.

Not enough data

Versioning

Records versioning as models are iterated upon.

Not enough data

Ease of Deployment

Provides a way to quickly and efficiently deploy machine learning models.

Not enough data

Scalability

Offers a way to scale the use of machine learning models across an enterprise.

Not enough data

Managed Service

Manages the intelligent application for the user, reducing the need of infrastructure This feature was mentioned in 21 Azure Machine Learning reviews.
89%
(Based on 21 reviews)

Application

As reported in 21 Azure Machine Learning reviews. Allows users to insert machine learning into operating applications
88%
(Based on 21 reviews)

Scalability

Provides easily scaled machine learning applications and infrastructure 21 reviewers of Azure Machine Learning have provided feedback on this feature.
91%
(Based on 21 reviews)

Language Flexibility

Allows users to input models built in a variety of languages.

Not enough data

Framework Flexibility

Allows users to choose the framework or workbench of their preference.

Not enough data

Versioning

Records versioning as models are iterated upon.

Not enough data

Ease of Deployment

Provides a way to quickly and efficiently deploy machine learning models.

Not enough data

Scalability

Offers a way to scale the use of machine learning models across an enterprise.

Not enough data

Management

Cataloging

Records and organizes all machine learning models that have been deployed across the business.

Not enough data

Monitoring

Tracks the performance and accuracy of machine learning models.

Not enough data

Governing

Provisions users based on authorization to both deploy and iterate upon machine learning models.

Not enough data

Model Registry

Allows users to manage model artifacts and tracks which models are deployed in production.

Not enough data

Cataloging

Records and organizes all machine learning models that have been deployed across the business.

Not enough data

Monitoring

Tracks the performance and accuracy of machine learning models.

Not enough data

Governing

Provisions users based on authorization to both deploy and iterate upon machine learning models.

Not enough data

System

Data Ingestion & Wrangling

Gives user ability to import a variety of data sources for immediate use 22 reviewers of Azure Machine Learning have provided feedback on this feature.
86%
(Based on 22 reviews)

Language Support

As reported in 21 Azure Machine Learning reviews. Supports programming languages such as Java, C, or Python. Supports front-end languages such as HTML, CSS, and JavaScript
89%
(Based on 21 reviews)

Drag and Drop

Offers the ability for developers to drag and drop pieces of code or algorithms when building models 22 reviewers of Azure Machine Learning have provided feedback on this feature.
87%
(Based on 22 reviews)

Operations

Metrics

Control model usage and performance in production

Not enough data

Infrastructure management

Deploy mission-critical ML applications where and when you need them

Not enough data

Collaboration

Easily compare experiments—code, hyperparameters, metrics, predictions, dependencies, system metrics, and more—to understand differences in model performance.

Not enough data

Generative AI

AI Text Generation

Allows users to generate text based on a text prompt.

Not enough data

AI Text Summarization

Condenses long documents or text into a brief summary.

Not enough data

AI Text Generation

Allows users to generate text based on a text prompt. This feature was mentioned in 10 Azure Machine Learning reviews.
85%
(Based on 10 reviews)

AI Text Summarization

Based on 10 Azure Machine Learning reviews. Condenses long documents or text into a brief summary.
82%
(Based on 10 reviews)

AI Text-to-Image

Provides the ability to generate images from a text prompt. 10 reviewers of Azure Machine Learning have provided feedback on this feature.
75%
(Based on 10 reviews)

Scalability and Performance - Generative AI Infrastructure

AI High Availability

Ensures that the service is reliable and available when needed, minimizing downtime and service interruptions.

Not enough data

AI Model Training Scalability

Allows the user to scale the training of models efficiently, making it easier to deal with larger datasets and more complex models.

Not enough data

AI Inference Speed

Provides the user the ability to get quick and low-latency responses during the inference stage, which is critical for real-time applications.

Not enough data

Cost and Efficiency - Generative AI Infrastructure

AI Cost per API Call

Offers the user a transparent pricing model for API calls, enabling better budget planning and cost control.

Not enough data

AI Resource Allocation Flexibility

Provides the user the ability to allocate computational resources based on demand, making it cost-effective.

Not enough data

AI Energy Efficiency

Allows the user to minimize energy usage during both training and inference, which is becoming increasingly important for sustainable operations.

Not enough data

Integration and Extensibility - Generative AI Infrastructure

AI Multi-cloud Support

Offers the user the flexibility to deploy across multiple cloud providers, reducing the risk of vendor lock-in.

Not enough data

AI Data Pipeline Integration

Provides the user the ability to seamlessly connect with various data sources and pipelines, simplifying data ingestion and pre-processing.

Not enough data

AI API Support and Flexibility

Allows the user to easily integrate the generative AI models into existing workflows and systems via APIs.

Not enough data

Security and Compliance - Generative AI Infrastructure

AI GDPR and Regulatory Compliance

Helps the user maintain compliance with GDPR and other data protection regulations, which is crucial for businesses operating globally.

Not enough data

AI Role-based Access Control

Allows the user to set up access controls based on roles within the organization, enhancing security.

Not enough data

AI Data Encryption

Ensures that data is encrypted during transit and at rest, providing an additional layer of security.

Not enough data

Usability and Support - Generative AI Infrastructure

AI Documentation Quality

Provides the user with comprehensive and clear documentation, aiding in quicker adoption and troubleshooting.

Not enough data

AI Community Activity

Allows the user to gauge the level of community support and third-party extensions available, which can be useful for problem-solving and extending functionality.

Not enough data

Prompt Engineering - Large Language Model Operationalization (LLMOps)

Prompt Optimization Tools

Provides users with the ability to test and optimize prompts to improve LLM output quality and efficiency.

Not enough data

Template Library

Gives users a collection of reusable prompt templates for various LLM tasks to accelerate development and standardize output.

Not enough data

Model Garden - Large Language Model Operationalization (LLMOps)

Model Comparison Dashboard

Offers tools for users to compare multiple LLMs side-by-side based on performance, speed, and accuracy metrics.

Not enough data

Custom Training - Large Language Model Operationalization (LLMOps)

Fine-Tuning Interface

Provides users with a user-friendly interface for fine-tuning LLMs on their specific datasets, allowing better alignment with business needs.

Not enough data

Application Development - Large Language Model Operationalization (LLMOps)

SDK & API Integrations

Gives users tools to integrate LLM functionality into their existing applications through SDKs and APIs, simplifying development.

Not enough data

Model Deployment - Large Language Model Operationalization (LLMOps)

One-Click Deployment

Offers users the capability to deploy models quickly to production environments with minimal effort and configuration.

Not enough data

Scalability Management

Provides users with tools to automatically scale LLM resources based on demand, ensuring efficient usage and cost-effectiveness.

Not enough data

Guardrails - Large Language Model Operationalization (LLMOps)

Content Moderation Rules

Gives users the ability to set boundaries and filters to prevent inappropriate or sensitive outputs from the LLM.

Not enough data

Policy Compliance Checker

Offers users tools to ensure their LLMs adhere to compliance standards such as GDPR, HIPAA, and other regulations, reducing risk and liability.

Not enough data

Model Monitoring - Large Language Model Operationalization (LLMOps)

Drift Detection Alerts

Gives users notifications when the LLM performance deviates significantly from expected norms, indicating potential model drift or data issues.

Not enough data

Real-Time Performance Metrics

Provides users with live insights into model accuracy, latency, and user interaction, helping them identify and address issues promptly.

Not enough data

Security - Large Language Model Operationalization (LLMOps)

Data Encryption Tools

Provides users with encryption capabilities for data in transit and at rest, ensuring secure communication and storage when working with LLMs.

Not enough data

Access Control Management

Offers users tools to set access permissions for different roles, ensuring only authorized personnel can interact with or modify LLM resources.

Not enough data

Gateways & Routers - Large Language Model Operationalization (LLMOps)

Request Routing Optimization

Provides users with middleware to route requests efficiently to the appropriate LLM based on criteria like cost, performance, or specific use cases.

Not enough data

Inference Optimization - Large Language Model Operationalization (LLMOps)

Batch Processing Support

Gives users tools to process multiple inputs in parallel, improving inference speed and cost-effectiveness for high-demand scenarios.

Not enough data

Agentic AI - Data Science and Machine Learning Platforms

Autonomous Task Execution

Capability to perform complex tasks without constant human input

Not enough data

Multi-step Planning

Ability to break down and plan multi-step processes

Not enough data

Cross-system Integration

Works across multiple software systems or databases

Not enough data

Adaptive Learning

Improves performance based on feedback and experience

Not enough data

Natural Language Interaction

Engages in human-like conversation for task delegation

Not enough data

Proactive Assistance

Anticipates needs and offers suggestions without prompting

Not enough data

Decision Making

Makes informed choices based on available data and objectives

Not enough data