Blog
Apache Flink, stream processing, event-driven applications, and more.
How-to guide: Build Streaming ETL for MySQL and Postgres based on Flink CDC
This blog post is about how to quickly build streaming ETL for MySQL and ...
Streaming modes of Flink-Kafka connectors
This blog post will guide you through the Kafka connectors that are avail...
How to test your Flink SQL Application
Testing your Apache Flink SQL code is a critical step in ensuring that yo...
Flink SQL: Detecting patterns with MATCH_RECOGNIZE
Ververica Platform makes Flink SQL more accessible and efficiently scalab...
Flink SQL: Queries, Windows, and Time - Part 2
This article will provide a more in-depth look at how to create a time wi...
Flink SQL: Queries, Windows, and Time - Part 1
Time is a critical element in stream processing since data is processed a...
Flink SQL: Deduplication
Flink SQL has emerged as a standard for low-code data analytics. It has m...
How to run PyFlink Jobs and Python UDFs on Ververica Platform
In this tutorial we show how to run PyFlink and Python UDFs on Ververica ...
Flink SQL: Joins Series 3 (Lateral Joins, LAG aggregate function)
Flink SQL joins and how to use them, specifically how to perform lateral ...
Let’s Talk
Ververica's Unified Streaming Data Platform helps organizations to create more value from their data, faster than ever. Generally, our customers are up and running in days and immediately start to see positive impact.
Once you submit this form, we will get in touch with you and arrange a follow-up call to demonstrate how our Platform can solve your particular use case.