Software Alternatives & Reviews
Register   |   login

Azure Event Hubs

Learn about Azure Event Hubs, a managed service that can ingest and process massive data streams from websites, apps, or devices.

ยท Add video ยท Edit

Azure Event Hubs Alternatives

The best Azure Event Hubs alternatives based on verified products, votes, reviews and other factors.
Latest update:

  1. Amazon Kinesis services make it easy to work with real-time streaming data in the AWS cloud.

  2. Seamless two-way sync between your CRM, marketing apps and Google in no time

  3. Easily visualize data pushed into Elasticsearch from Logstash, es-hadoop or 3rd party technologies...

  4. Azure Stream Analytics offers real-time stream processing in the cloud.

  5. Amazon Elasticsearch Service is a managed service that makes it easy to deploy, operate, and scale Elasticsearch in the AWS Cloud.

  6. TIBCO Spotfire is a Business Intelligence (BI) solution that provides users with executive dashboards, data visualization, data analytics and KPIs push to mobile devices.

  7. Flink is a streaming dataflow engine that provides data distribution, communication, and fault tolerance for distributed computations.

  8. Cloud Pub/Sub is a flexible, reliable, real-time messaging service for independent applications to publish & subscribe to asynchronous events.

  9. With the PI System, OSIsoft customers have reduced costs, opened new revenue streams, extended equipment life, increased production capacity, and more.

  10. Confluent offers a real-time data platform built around Apache Kafka.

  11. StreamSets provides Continuous Ingest technology for the next generation of big data applications.

  12. A global network infrastructure powering APIs for low-latency realtime messaging to anywhere on Earth.

Azure Event Hubs Reviews

There are no reviews of Azure Event Hubs yet.
Be the first one to submit

Was this alternatives list helpful?
Your feedback is important!

3 out of 4 people consider this article as helpful.
This is equivalent to 3.8 / 5 rating.


This article was published on | Author: | Publisher: SaaSHub
Categories: Stream Processing, Data Management, Big Data