One of the many things that I like about Red Hat OpenShift Streams is that it simplifies the development and management of Apache Kafka clusters by automating many tasks such as provisioning, scaling and monitoring. It also provides an intuitive User Interface and command line tools for managing Kafka resources. Review collected by and hosted on G2.com.
One thing that I would like RedHat OpenShift Streams to improve is to reduce the dependency on OpenShift ecosystem in scenarios where If you have a different container platform preference or want to use Kafka in a different environment, you may need to consider alternative options. Review collected by and hosted on G2.com.
There are several positive things about Red Hat OpenShift Streams for Apache Kafka that make it a popular choice among businesses and developers:
Scalability: OpenShift Streams for Apache Kafka is highly scalable, allowing users to process and analyze large amounts of data in real time. It can handle millions of events per second, making it ideal for high-throughput data streaming applications.
Integration with OpenShift: The platform seamlessly integrates with OpenShift, which is a popular container orchestration platform. This integration allows for easy deployment and management of Kafka clusters within an OpenShift environment, making it easier for businesses to leverage the power of both platforms.
Multiple data sources and sinks: OpenShift Streams for Apache Kafka supports multiple data sources and sinks, making it easy to integrate with other data platforms and services. This allows for the creation of highly complex data pipelines that can process and analyze data from various sources in real time.
Easy management: The platform comes with an intuitive web console that makes it easy to manage and monitor Kafka clusters and topics, as well as create and configure new topics and partitions. This simplifies the management of Kafka clusters and topics, making it easier for businesses to use Kafka for data streaming applications.
Advanced features and capabilities: OpenShift Streams for Apache Kafka comes with several advanced features and capabilities, such as message compression, partition rebalancing, and message replay. These features make it a powerful tool for processing and analyzing real-time data, allowing businesses to gain valuable insights from their data in real time.
Overall, Red Hat OpenShift Streams for Apache Kafka is a reliable and scalable platform that offers several advanced features and capabilities, making it an ideal choice for businesses looking to build high-throughput data streaming applications. Review collected by and hosted on G2.com.
Red Hat, OpenShift Streams for Apache Kafka, is a powerful platform for data streaming, but there are some things to be aware of:
It can be difficult to use, so it may not be suitable for businesses without experienced technical staff.
It can be more expensive than other options.
It requires significant resources, such as computing power and storage.
It has a steep learning curve, which can result in longer development times. Review collected by and hosted on G2.com.
Scalability: Red Hat OpenShift Streams for Apache Kafka can handle massive volumes of data traffic and scale horizontally to meet your growing business needs, making it an excellent choice for organizations that require a highly scalable streaming platform.
Cloud-Native Architecture: This platform is designed to be cloud-native, making it easy to integrate with other cloud-native technologies like Kubernetes and OpenShift, which makes it ideal for building modern, cloud-native applications.
Real-Time Data Processing: Red Hat OpenShift Streams for Apache Kafka allows you to process and analyze real-time data from multiple sources, giving you up-to-date information to make informed decisions.
Security: The platform provides robust security features, including encryption and authentication, to protect your data and applications from cyber threats.
Open-Source: Red Hat OpenShift Streams for Apache Kafka is built on top of the open-source Apache Kafka platform, which means that you can leverage the collective expertise of the open-source community to improve and customize the platform according to your specific needs. Review collected by and hosted on G2.com.
Learning Curve: Red Hat OpenShift Streams for Apache Kafka can have a steeper learning curve for beginners, particularly those who are not familiar with the Apache Kafka ecosystem. It requires some understanding of distributed systems, event-driven architectures, and stream processing.
Cost: The cost of using Red Hat OpenShift Streams for Apache Kafka can be higher than other streaming platforms, particularly if you opt for the enterprise version. However, the benefits of scalability, reliability, and security may offset the additional cost.
Complexity: The platform can be complex to set up and manage, particularly if you have complex use cases or data pipelines. You may require a team with specialized skills to ensure that the platform runs efficiently. Review collected by and hosted on G2.com.
Since it meets Open Source standards and it is container Portability, totally automated installation and its Scalability and flexibility, multicluster management. Review collected by and hosted on G2.com.
There is no much specific that can be disliked from Red Hat Openshift Streams for Pache Kafka; since its a new beginning and explore from my end, there are many liked components rather unlike. Review collected by and hosted on G2.com.
Previously we use to manage our own kafka , and upgrade was tedious task. Now openshift managet kafka is an ease. We more focus on actual development then managing infra. Review collected by and hosted on G2.com.
We can improve documentation and not very good for large scale systems. E.g Performance environment Review collected by and hosted on G2.com.
Openshift streams for Apache Kafka is the best log monitoring engine when we are using data in motion, because of its high scalability. Also, this platform offers best robust security features. Review collected by and hosted on G2.com.
The only challange I faced was complexity during the learning phase for Apache Kafka. Also, openshift streams for Apache Kafka is not as robust as some of the other Kafka distributions on the market. Review collected by and hosted on G2.com.
Great technology with enormous use cases, helped me a lot in different scenarios during my application design to get certain things done. Review collected by and hosted on G2.com.
Can't really think of any, but if I have to nitpick, there may be a small learning curve involved. Review collected by and hosted on G2.com.
You do no need to host Kafka anymore. It will reduce the time for managing infrastructure Review collected by and hosted on G2.com.
There should be clarity about the setting up the ACLs Review collected by and hosted on G2.com.
Openshit best to manage cluster and deploy applications with seamlessly. Apache kafka is best tool for managing messaging services. Review collected by and hosted on G2.com.
Openshift has nothing to dislike sameas it for apache kafka. Review collected by and hosted on G2.com.
Red Hat OpenShift Streams for Apache Kafka helped make our rather prolonged, and drawn out deployments, a bit simpler, we are able to manage several aspects of the deployment cycle using Openshift. Review collected by and hosted on G2.com.
It is useful for storage of data, however when it comes to certain jobs it can take a long time to process. This is true in the case of ETL jobs it takes a lot of real-time to process these jobs. Review collected by and hosted on G2.com.