You signed in with another tab or window. Reload to refresh your session.You signed out in another tab or window. Reload to refresh your session.You switched accounts on another tab or window. Reload to refresh your session.Dismiss alert
Copy file name to clipboardExpand all lines: website/learn/talks.md
+45Lines changed: 45 additions & 0 deletions
Display the source diff
Display the rich diff
Original file line number
Diff line number
Diff line change
@@ -8,6 +8,51 @@ Talks and presentations about Apache Fluss from conferences, meetups, and commun
8
8
9
9
---
10
10
11
+
### Fluss: A Streaming Storage for Real-Time Lakehouse
12
+
**Jark Wu** • Carnegie Mellon Future Data Systems Seminar Series 2025 • December 2025
13
+
14
+
This seminar session explores Fluss as the foundation of a Streaming Lakehouse model, where real-time data in Fluss and historical data in Lakehouse (Iceberg) are seamlessly unified for truly real-time analytics. Built on Apache Arrow, Fluss provides the columnar streaming storage and sub-second ingestion that make this unified model possible.
15
+
16
+
[📹 Watch on YouTube](https://www.youtube.com/watch?v=mcFHZFb1CAo) | [Slides](https://speakerdeck.com/jark/cmu-db-2025fall-apache-fluss-a-streaming-storage-for-real-time-lakehouse)
17
+
18
+
---
19
+
20
+
### The Seven Deadly Sins of Streaming
21
+
**Giannis Polyzos** • Big Data Conference Europe 2025 • December 2025
22
+
23
+
Exploring the Streaming Lakehouse model—powered by Fluss’s columnar streaming storage—addresses the “Seven Deadly Sins of Streaming,” from redundant data copies and unqueryable streams to stale lakehouse data and costly architectures. By unifying streaming and lakehouse systems through streaming tables, Fluss enables real-time dashboards, streaming ETL, and Customer 360 use cases within a single, modern architecture that delivers fresher, more efficient real-time analytics.
24
+
25
+
[📹 Watch on YouTube](https://www.youtube.com/watch?v=ZOh9XH4zGLM)
26
+
27
+
---
28
+
29
+
### Streaming Down the Fluss: Taming CDC Streams with Fluss, Fluss, and Paimon
30
+
**Dominik Žnidaršič** • Flink Forward 2025 • November 2025
31
+
32
+
This session explores how real-time data processing extends far beyond ingestion, focusing on what happens after the CDC stream lands. It offers a practical look at building a real-time lakehouse pipeline by integrating Flink, Fluss, and Paimon to deliver fast, efficient, and usable end-to-end analytics.
33
+
34
+
[📹 Watch on YouTube](https://www.youtube.com/watch?v=ushwjnXmi2A)
35
+
36
+
---
37
+
38
+
### Fluss: Making Your Lakehouse Truly Real Time
39
+
**Jark Wu** • Flink Forward 2025 • November 2025
40
+
41
+
Exploring how Fluss bridges data streaming and the Lakehouse (Iceberg) by serving real-time data directly on top of it, enabling powerful analytics on streams while delivering low-latency updates to Iceberg—effectively transforming it into a Real-Time Lakehouse. We’ll close with real-world use cases that showcase how Fluss powers Real-Time Lakehouses and fuels the next generation of AI-driven applications.
42
+
43
+
[📹 Watch on YouTube](https://www.youtube.com/watch?v=pnrW5r-4mIQ)
44
+
45
+
---
46
+
47
+
### Apache Fluss and The Seven Deadly Sins of Streaming
48
+
**Giannis Polyzos** • Flink Forward 2025 • November 2025
49
+
50
+
Exploring how Apache Fluss addresses the “seven deadly sins” of streaming by introducing streams-as-tables that unify streaming and lakehouse systems, unlocking modern real-time analytics use cases such as real-time dashboards, streaming ETL, and Customer 360—all within a single, cohesive architecture.
51
+
52
+
[📹 Watch on YouTube](https://www.youtube.com/watch?v=3c5RgJFTsMM)
53
+
54
+
---
55
+
11
56
### Fluss: Redefining Streaming Storage for Real-Time Data Analytics and AI
0 commit comments