Artwork

Inhoud geleverd door Aiven. Alle podcastinhoud, inclusief afleveringen, afbeeldingen en podcastbeschrijvingen, wordt rechtstreeks geüpload en geleverd door Aiven of hun podcastplatformpartner. Als u denkt dat iemand uw auteursrechtelijk beschermde werk zonder uw toestemming gebruikt, kunt u het hier beschreven proces https://nl.player.fm/legal volgen.
Player FM - Podcast-app
Ga offline met de app Player FM !

Hot and cold data with Apache Kafka, Tiered Storage, and Iceberg

48:58
 
Delen
 

Manage episode 429150924 series 3575842
Inhoud geleverd door Aiven. Alle podcastinhoud, inclusief afleveringen, afbeeldingen en podcastbeschrijvingen, wordt rechtstreeks geüpload en geleverd door Aiven of hun podcastplatformpartner. Als u denkt dat iemand uw auteursrechtelijk beschermde werk zonder uw toestemming gebruikt, kunt u het hier beschreven proces https://nl.player.fm/legal volgen.

Utilizing the true potential of data streaming is key to business success.

In this Data (R)evolution episode, we're joined by Josep Prat and Filip Yonov to dive into the transformative features of Apache Kafka and its evolving role in data architecture. They discuss the critical importance of collaboration and feedback in enhancing Kafka's capabilities, the future of "lake house" technology, exciting updates from the Open Source Program Office (OSPO), and the importance of Kafka's readiness to support evolving data formats—making it a backbone for modern data ecosystems.

Key Takeaways:

  1. Community collaboration and contribution are essential for the continuous improvement and testing of Apache Kafka's capabilities
  2. The evolution of Apache Kafka into a more versatile platform, combined with object storage and open table formats, can significantly enhance real-time data streaming, analytics, and the future of "lake house" technology
  3. Tiered storage in Kafka facilitates more efficient and cost-effective data management by decoupling storage from computing

Resources:

Timestamps:

[05:49] Kafka servers have theoretical storage limits

[09:29] Test storage proposal process for Apache Kafka

[17:38] LinkedIn conducted an experiment merging Xcode versions

[22:11] Data lake evolving into lake house architectures

[25:00] Broker pushes data to remote storage, plugin handles retrieval and format translation

[26:40] Kafka excels at high-speed, high-volume data

[32:18] Kafka data consumption evolving with new options

[40:19] Managing metadata for conversion on community level

[47:45] Kafka's potential as a widely used API

  continue reading

11 afleveringen

Artwork
iconDelen
 
Manage episode 429150924 series 3575842
Inhoud geleverd door Aiven. Alle podcastinhoud, inclusief afleveringen, afbeeldingen en podcastbeschrijvingen, wordt rechtstreeks geüpload en geleverd door Aiven of hun podcastplatformpartner. Als u denkt dat iemand uw auteursrechtelijk beschermde werk zonder uw toestemming gebruikt, kunt u het hier beschreven proces https://nl.player.fm/legal volgen.

Utilizing the true potential of data streaming is key to business success.

In this Data (R)evolution episode, we're joined by Josep Prat and Filip Yonov to dive into the transformative features of Apache Kafka and its evolving role in data architecture. They discuss the critical importance of collaboration and feedback in enhancing Kafka's capabilities, the future of "lake house" technology, exciting updates from the Open Source Program Office (OSPO), and the importance of Kafka's readiness to support evolving data formats—making it a backbone for modern data ecosystems.

Key Takeaways:

  1. Community collaboration and contribution are essential for the continuous improvement and testing of Apache Kafka's capabilities
  2. The evolution of Apache Kafka into a more versatile platform, combined with object storage and open table formats, can significantly enhance real-time data streaming, analytics, and the future of "lake house" technology
  3. Tiered storage in Kafka facilitates more efficient and cost-effective data management by decoupling storage from computing

Resources:

Timestamps:

[05:49] Kafka servers have theoretical storage limits

[09:29] Test storage proposal process for Apache Kafka

[17:38] LinkedIn conducted an experiment merging Xcode versions

[22:11] Data lake evolving into lake house architectures

[25:00] Broker pushes data to remote storage, plugin handles retrieval and format translation

[26:40] Kafka excels at high-speed, high-volume data

[32:18] Kafka data consumption evolving with new options

[40:19] Managing metadata for conversion on community level

[47:45] Kafka's potential as a widely used API

  continue reading

11 afleveringen

Alle afleveringen

×
 
Loading …

Welkom op Player FM!

Player FM scant het web op podcasts van hoge kwaliteit waarvan u nu kunt genieten. Het is de beste podcast-app en werkt op Android, iPhone en internet. Aanmelden om abonnementen op verschillende apparaten te synchroniseren.

 

Korte handleiding