32 subscribers
התחל במצב לא מקוון עם האפליקציה Player FM !
פודקאסטים ששווה להאזין
בחסות


1 How AI is saving billions of years of human research time | Max Jaderberg 19:15
Why Kafka Streams Does Not Use Watermarks ft. Matthias J. Sax
Manage episode 424666840 series 2510642
Do you ever feel like you’re short on time? Well, good news! Confluent Software Engineer Matthias J. Sax is back to discuss how event streaming has changed the game, making time management more simple yet efficient.
Matthias explains what watermarking is, the reasons behind why Kafka Streams doesn’t use them, and an alternative approach to watermarking informally called the “slack time approach.”
Later, Matthias discusses how you can compare “stream time,” which is the maximum timestamp observed, to the watermark approach as a high-time watermark. Stick around for the end of the episode, where Matthias reveals other new approaches in the pipeline. Learn how to get the most out of your time on today’s episode of Streaming Audio!
EPISODE LINKS
- Kafka Summit talk: The Flux Capacitor of Kafka Streams and ksqlDB
- Watermarks, Tables, Event Time, and the Dataflow Model
- Kafka Streams’ Take on Watermarks and Triggers
- Join the Confluent Community Slack
- Learn more with Kafka tutorials, resources, and guides at Confluent Developer
- Live demo: Kafka streaming in 10 minutes on Confluent Cloud
- Use 60PDCAST to get an additional $60 of free Confluent Cloud usage (details)
265 פרקים
Manage episode 424666840 series 2510642
Do you ever feel like you’re short on time? Well, good news! Confluent Software Engineer Matthias J. Sax is back to discuss how event streaming has changed the game, making time management more simple yet efficient.
Matthias explains what watermarking is, the reasons behind why Kafka Streams doesn’t use them, and an alternative approach to watermarking informally called the “slack time approach.”
Later, Matthias discusses how you can compare “stream time,” which is the maximum timestamp observed, to the watermark approach as a high-time watermark. Stick around for the end of the episode, where Matthias reveals other new approaches in the pipeline. Learn how to get the most out of your time on today’s episode of Streaming Audio!
EPISODE LINKS
- Kafka Summit talk: The Flux Capacitor of Kafka Streams and ksqlDB
- Watermarks, Tables, Event Time, and the Dataflow Model
- Kafka Streams’ Take on Watermarks and Triggers
- Join the Confluent Community Slack
- Learn more with Kafka tutorials, resources, and guides at Confluent Developer
- Live demo: Kafka streaming in 10 minutes on Confluent Cloud
- Use 60PDCAST to get an additional $60 of free Confluent Cloud usage (details)
265 פרקים
सभी एपिसोड
×
1 Apache Kafka 3.5 - Kafka Core, Connect, Streams, & Client Updates 11:25

1 How to use Data Contracts for Long-Term Schema Management 57:28

1 How to use Python with Apache Kafka 31:57

1 Next-Gen Data Modeling, Integrity, and Governance with YODA 55:55

1 Migrate Your Kafka Cluster with Minimal Downtime 1:01:30

1 Real-Time Data Transformation and Analytics with dbt Labs 43:41

1 What is the Future of Streaming Data? 41:29

1 What can Apache Kafka Developers learn from Online Gaming? 55:32


1 How to use OpenTelemetry to Trace and Monitor Apache Kafka Systems 50:01

1 What is Data Democratization and Why is it Important? 47:27

1 Git for Data: Managing Data like Code with lakeFS 30:42

1 Using Kafka-Leader-Election to Improve Scalability and Performance 51:06

1 Real-Time Machine Learning and Smarter AI with Data Streaming 38:56

1 The Present and Future of Stream Processing 31:19

1 Top 6 Worst Apache Kafka JIRA Bugs 1:10:58

1 Learn How Stream-Processing Works The Simplest Way Possible 31:29

1 Building and Designing Events and Event Streams with Apache Kafka 53:06

1 Rethinking Apache Kafka Security and Account Management 41:23

1 Real-time Threat Detection Using Machine Learning and Apache Kafka 29:18

1 Improving Apache Kafka Scalability and Elasticity with Tiered Storage 29:32

1 Decoupling with Event-Driven Architecture 38:38

1 If Streaming Is the Answer, Why Are We Still Doing Batch? 43:58

1 Security for Real-Time Data Stream Processing with Confluent Cloud 48:33

1 Running Apache Kafka in Production 58:44

1 Build a Real Time AI Data Platform with Apache Kafka 37:18

1 Optimizing Apache JVMs for Apache Kafka 1:11:42


1 Application Data Streaming with Apache Kafka and Swim 39:10
ברוכים הבאים אל Player FM!
Player FM סורק את האינטרנט עבור פודקאסטים באיכות גבוהה בשבילכם כדי שתהנו מהם כרגע. זה יישום הפודקאסט הטוב ביותר והוא עובד על אנדרואיד, iPhone ואינטרנט. הירשמו לסנכרון מנויים במכשירים שונים.