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How Apache Pinot Achieves 200,000 Queries per Second (with Tim Berglund)

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Manage episode 407949923 series 3476072
Content provided by Kris Jenkins. All podcast content including episodes, graphics, and podcast descriptions are uploaded and provided directly by Kris Jenkins or their podcast platform partner. If you believe someone is using your copyrighted work without your permission, you can follow the process outlined here https://player.fm/legal.

The likes of LinkedIn and Uber use Pinot to power some astonishingly high-scale queries against realtime data. The numbers alone would make an impressive case-study. But behind the headline lies a fascinating set of architectural decisions and constraints to get there. So how does Pinot work? How does it process queries? How are the various roles split across a cluster? And equally important - what does it *not* try to achieve.

Joining me to go through the nuts and bolts of how Pinot handles SQL queries is Tim Berglund, veteran technology explainer of the realtime-data world. He takes us through Pinot step-by-step, covering the roles of brokers, servers, controllers and minions as we build up the picture of a query engine that's interesting in theory and massively performant in practice.

Apache Pinot: https://pinot.apache.org/

Apache Pinot Docs: https://docs.pinot.apache.org/

StarTree: https://startree.ai/

Event Driven Design episode with Bobby Calderwood: https://youtu.be/V7vhSHqMxus

Tim on Twitter: https://twitter.com/tlberglund

Kris on Mastodon: http://mastodon.social/@krisajenkins

Kris on LinkedIn: https://www.linkedin.com/in/krisjenkins/

Kris on Twitter: https://twitter.com/krisajenkins

#podcast #softwaredevelopment #apachepinot #database #dataengineering #sql

  continue reading

64 episodes

Artwork
iconShare
 
Manage episode 407949923 series 3476072
Content provided by Kris Jenkins. All podcast content including episodes, graphics, and podcast descriptions are uploaded and provided directly by Kris Jenkins or their podcast platform partner. If you believe someone is using your copyrighted work without your permission, you can follow the process outlined here https://player.fm/legal.

The likes of LinkedIn and Uber use Pinot to power some astonishingly high-scale queries against realtime data. The numbers alone would make an impressive case-study. But behind the headline lies a fascinating set of architectural decisions and constraints to get there. So how does Pinot work? How does it process queries? How are the various roles split across a cluster? And equally important - what does it *not* try to achieve.

Joining me to go through the nuts and bolts of how Pinot handles SQL queries is Tim Berglund, veteran technology explainer of the realtime-data world. He takes us through Pinot step-by-step, covering the roles of brokers, servers, controllers and minions as we build up the picture of a query engine that's interesting in theory and massively performant in practice.

Apache Pinot: https://pinot.apache.org/

Apache Pinot Docs: https://docs.pinot.apache.org/

StarTree: https://startree.ai/

Event Driven Design episode with Bobby Calderwood: https://youtu.be/V7vhSHqMxus

Tim on Twitter: https://twitter.com/tlberglund

Kris on Mastodon: http://mastodon.social/@krisajenkins

Kris on LinkedIn: https://www.linkedin.com/in/krisjenkins/

Kris on Twitter: https://twitter.com/krisajenkins

#podcast #softwaredevelopment #apachepinot #database #dataengineering #sql

  continue reading

64 episodes

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