Apache Spark and Azure Stream Analytics compete in the big data and real-time analytics category. Azure Stream Analytics seems to have the upper hand due to its superior integration capabilities and ease of use, supported by its quick deployment and efficient customer service.
Features: Apache Spark offers excellent scalability, diverse language support, and the ability to handle complex analytics tasks. Azure Stream Analytics provides seamless integration with Azure services, straightforward real-time analytics, and an effective deployment process for Azure users.
Room for Improvement: Apache Spark users mention the need for easier configuration management, better debugging tools, and improved user experience. Azure Stream Analytics could benefit from enhanced documentation, improved feature functionality, and richer feature sets to further streamline the user experience.
Ease of Deployment and Customer Service: Apache Spark's deployment process can be complex but customizable, requiring expertise. Azure Stream Analytics is favored for its quick and easy deployment, with users reporting immediate customer support options.
Pricing and ROI: Apache Spark offers flexible pricing options that are attractive for large-scale deployments, highlighting its cost-effectiveness. Azure Stream Analytics may involve higher initial costs but offers faster time-to-value within integrated Azure solutions, making it appealing for those seeking seamless integration with other Azure tools.
Spark provides programmers with an application programming interface centered on a data structure called the resilient distributed dataset (RDD), a read-only multiset of data items distributed over a cluster of machines, that is maintained in a fault-tolerant way. It was developed in response to limitations in the MapReduce cluster computing paradigm, which forces a particular linear dataflowstructure on distributed programs: MapReduce programs read input data from disk, map a function across the data, reduce the results of the map, and store reduction results on disk. Spark's RDDs function as a working set for distributed programs that offers a (deliberately) restricted form of distributed shared memory
Azure Stream Analytics is a robust real-time analytics service that has been designed for critical business workloads. Users are able to build an end-to-end serverless streaming pipeline in minutes. Utilizing SQL, users are able to go from zero to production with a few clicks, all easily extensible with unique code and automatic machine learning abilities for the most advanced scenarios.
Azure Stream Analytics has the ability to analyze and accurately process exorbitant volumes of high-speed streaming data from numerous sources at the same time. Patterns and scenarios are quickly identified and information is gathered from various input sources, such as social media feeds, applications, clickstreams, sensors, and devices. These patterns can then be implemented to trigger actions and launch workflows, such as feeding data to a reporting tool, storing data for later use, or creating alerts. Azure Stream Analytics is also offered on Azure IoT Edge runtime, so the data can be processed on IoT devices.
Top Benefits
Reviews from Real Users
“Azure Stream Analytics is something that you can use to test out streaming scenarios very quickly in the general sense and it is useful for IoT scenarios. If I was to do a project with IoT and I needed a streaming solution, Azure Stream Analytics would be a top choice. The most valuable features of Azure Stream Analytics are the ease of provisioning and the interface is not terribly complex.” - Olubisi A., Team Lead at a tech services company.
“It's used primarily for data and mining - everything from the telemetry data side of things. It's great for streaming and makes everything easy to handle. The streaming from the IoT hub and the messaging are aspects I like a lot.” - Sudhendra U., Technical Architect at Infosys
We monitor all Hadoop reviews to prevent fraudulent reviews and keep review quality high. We do not post reviews by company employees or direct competitors. We validate each review for authenticity via cross-reference with LinkedIn, and personal follow-up with the reviewer when necessary.