In this session, we will explore the stream processing capabilities for Kafka and compare the three popular options: Kafka Streams, ksqlDB, and Apache Flink®. We will dive into the strengths and limitations of each technology, and compare them based on their ease of use, performance, scalability, and flexibility. By the end of the session, attendees will have a better understanding of the different options available for stream processing with Kafka, and which technology might be the best fit for their specific use case. This session is ideal for developers, data engineers, and architects who want to leverage the power of Kafka for real-time data processing.
talk-data.com
Topic
flink
2
tagged
Activity Trend
2
peak/qtr
2020-Q1
2026-Q1
Top Events
Tides of Change: Real-Time Flow with Postgres, Kafka & Flink
3
VIRTUAL: Apache Flink® Meetup
2
Apache Flink® for Apache Kafka® Developers
2
IN-PERSON: Apache Flink® Meetup
2
IN-PERSON: Apache Flink® Meetup
2
Apache Flink® for Apache Kafka® Developers
2
Message Tracking, Fluss in Apache Flink 2.x, & Kafka-to-Iceberg Transformation
1
IN PERSON: Tooling for running Apache Kafka in Production
1
Crypto Streams to AI Predictions: Apache Kafka®, Apache Flink® & Apache Iceberg®
1
Data Berlin Midsummer Meetup - Speeding up Analytics
1
IN-PERSON! Kafka Meetup Septembre: Aiven, Flink, KStreams, Kestra, Google Cloud
1
Apache Kafka® x Apache Flink® x Elastic
1
Filtering by:
Apache Flink® for Apache Kafka® Developers
×
In this session, David will demystify the misconceptions around the complexity of Apache Flink, touch on its use cases, and get you up to speed for your stream processing endeavor. All of that, in real-time.