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Building Scalable ML Infrastructure at Outerbounds with Savin Goyal

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Manage episode 471106946 series 2948506
Content provided by The Data Flowcast. All podcast content including episodes, graphics, and podcast descriptions are uploaded and provided directly by The Data Flowcast 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://podcastplayer.com/legal.

Machine learning is changing fast, and companies need better tools to handle AI workloads. The right infrastructure helps data scientists focus on solving problems instead of managing complex systems. In this episode, we talk with Savin Goyal, Co-Founder and CTO at Outerbounds, about building ML infrastructure, how orchestration makes workflows easier and how Metaflow and Airflow work together to simplify data science.

Key Takeaways:

(02:02) Savin spent years building AI and ML infrastructure, including at Netflix.

(04:05) ML engineering was not a defined role a decade ago.

(08:17) Modernizing AI and ML requires balancing new tools with existing strengths.

(10:28) ML workloads can be long-running or require heavy computation.

(15:29) Different teams at Netflix used multiple orchestration systems for specific needs.

(20:10) Stable APIs prevent rework and keep projects moving.

(21:07) Metaflow simplifies ML workflows by optimizing data and compute interactions.

(25:53) Limited local computing power makes running ML workloads challenging.

(27:43) Airflow UI monitors pipelines, while Metaflow UI gives ML insights.

(33:13) The most successful data professionals focus on business impact, not just technology.

Resources Mentioned:

Savin Goyal -

https://www.linkedin.com/in/savingoyal/

Outerbounds -

https://www.linkedin.com/company/outerbounds/

Apache Airflow -

https://airflow.apache.org/

Metaflow -

https://metaflow.org/

Netflix’s Maestro Orchestration System -

https://netflixtechblog.com/maestro-netflixs-workflow-orchestrator-ee13a06f9c78?gi=8e6a067a92e9#:~:text=Maestro%20is%20a%20fully%20managed,data%20between%20different%20storages%2C%20etc.

TensorFlow -

https://www.tensorflow.org/

PyTorch -

https://pytorch.org/

Thanks for listening to “The Data Flowcast: Mastering Airflow for Data Engineering & AI.” If you enjoyed this episode, please leave a 5-star review to help get the word out about the show. And be sure to subscribe so you never miss any of the insightful conversations.

#AI #Automation #Airflow #MachineLearning

  continue reading

54 episodes

Artwork
iconShare
 
Manage episode 471106946 series 2948506
Content provided by The Data Flowcast. All podcast content including episodes, graphics, and podcast descriptions are uploaded and provided directly by The Data Flowcast 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://podcastplayer.com/legal.

Machine learning is changing fast, and companies need better tools to handle AI workloads. The right infrastructure helps data scientists focus on solving problems instead of managing complex systems. In this episode, we talk with Savin Goyal, Co-Founder and CTO at Outerbounds, about building ML infrastructure, how orchestration makes workflows easier and how Metaflow and Airflow work together to simplify data science.

Key Takeaways:

(02:02) Savin spent years building AI and ML infrastructure, including at Netflix.

(04:05) ML engineering was not a defined role a decade ago.

(08:17) Modernizing AI and ML requires balancing new tools with existing strengths.

(10:28) ML workloads can be long-running or require heavy computation.

(15:29) Different teams at Netflix used multiple orchestration systems for specific needs.

(20:10) Stable APIs prevent rework and keep projects moving.

(21:07) Metaflow simplifies ML workflows by optimizing data and compute interactions.

(25:53) Limited local computing power makes running ML workloads challenging.

(27:43) Airflow UI monitors pipelines, while Metaflow UI gives ML insights.

(33:13) The most successful data professionals focus on business impact, not just technology.

Resources Mentioned:

Savin Goyal -

https://www.linkedin.com/in/savingoyal/

Outerbounds -

https://www.linkedin.com/company/outerbounds/

Apache Airflow -

https://airflow.apache.org/

Metaflow -

https://metaflow.org/

Netflix’s Maestro Orchestration System -

https://netflixtechblog.com/maestro-netflixs-workflow-orchestrator-ee13a06f9c78?gi=8e6a067a92e9#:~:text=Maestro%20is%20a%20fully%20managed,data%20between%20different%20storages%2C%20etc.

TensorFlow -

https://www.tensorflow.org/

PyTorch -

https://pytorch.org/

Thanks for listening to “The Data Flowcast: Mastering Airflow for Data Engineering & AI.” If you enjoyed this episode, please leave a 5-star review to help get the word out about the show. And be sure to subscribe so you never miss any of the insightful conversations.

#AI #Automation #Airflow #MachineLearning

  continue reading

54 episodes

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