Integrating the Enterprise with a Streaming Data Approach
William McKnight, Jon Bock
About this talk
Streaming and real-time data has high business value, but that value can rapidly decay if not processed quickly. If the value of the data is not realized in a certain window of time, its value is lost and the decision or action that was needed as a result never occurs. Streaming data - whether from sensors, devices, applications, or events - needs special attention because a sudden price change, a critical threshold met, a sensor reading changing rapidly, or a blip in a log file can all be of immense value, but only if the alert is in time.
In this webinar, we will review the landscape of streaming data and message queueing technology and introduce and demonstrate a method for an organization to assess and benchmark—for their own current and future uses and workloads—the technologies currently available. We will also reveal the results of our own execution of the OpenMessaging benchmark on workloads for two of the platforms: Apache Kafka and Apache Pulsar..
What Will Be Discussed:
- The Evolution of Queuing, Messaging, and Streaming
- Today’s Technology Landscape
- Assessing Performance: The OpenMessaging Benchmark
- Considerations for Your Evaluation