Streaming Analytics Made Easy: Kinesis Data Analytics Studio Run on Apache Flink

Описание к видео Streaming Analytics Made Easy: Kinesis Data Analytics Studio Run on Apache Flink

Businesses increasingly need to gain faster insights from their data to improve their customer experiences, detect operational issues, and respond to emergent trends. In this tech talk, we will walk through Amazon Kinesis Data Analytics Studio, a recently launched feature of Amazon Kinesis Data Analytics, which allows you to interactively query data streams and rapidly develop stream processing applications using an interactive development environment powered by Apache Zeppelin notebooks, run on Apache Flink. The session will include a demo to help you easily build stream processing applications that can run at scale to continuously produce real time insights.

Learning Objectives:
*Learn how to simplify ad hoc querying of your streaming data using serverless notebooks in Kinesis Data Analytics Studio.
*Understand how you can create a stream processing application in minutes using Kinesis Data Analytics Studio powered by Apache Flink and Apache Zeppelin.
*See a real-world example to perform analytics on a streaming data source using simple SQL and Python.

***To learn more about the services featured in this talk, please visit: https://aws.amazon.com/kinesis/data-a... Subscribe to AWS Online Tech Talks On AWS:
https://www.youtube.com/@AWSOnlineTec...

Follow Amazon Web Services:
Official Website: https://aws.amazon.com/what-is-aws
Twitch:   / aws  
Twitter:   / awsdevelopers  
Facebook:   / amazonwebservices  
Instagram:   / amazonwebservices  

☁️ AWS Online Tech Talks cover a wide range of topics and expertise levels through technical deep dives, demos, customer examples, and live Q&A with AWS experts. Builders can choose from bite-sized 15-minute sessions, insightful fireside chats, immersive virtual workshops, interactive office hours, or watch on-demand tech talks at your own pace. Join us to fuel your learning journey with AWS.

#AWS

Комментарии

Информация по комментариям в разработке