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1
Intro
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Caveats
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Deep Learning Review
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Deep Learning at Salesforce
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Designing for team specialization
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What about throughput?
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Serving deep learning models
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Interacting with the model server
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This solves additional challenges
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Testing
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Docker simplifies our lives
Description:
Explore the challenges and solutions of deploying deep learning models in a production environment at Salesforce. Learn how Docker enables scalable system design, simplifies development, and facilitates efficient testing. Discover the benefits of using Docker for distributed deep learning, including its role in focusing on service interactions rather than hardware complexities. Gain insights into designing systems for team specialization, addressing throughput concerns, and serving deep learning models effectively. Understand how Docker simplifies the lives of developers and data scientists by allowing them to build and test end-to-end systems on local machines. This 33-minute talk by Jeff Hajewski from Salesforce covers topics such as deep learning review, designing for team specialization, throughput considerations, model serving, and the advantages of Docker in simplifying complex systems.

Distributed Deep Learning with Docker at Salesforce

Docker
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