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Overcoming Distributed ML Challenges with Ray Train

Offered By: Anyscale via YouTube

Tags

Distributed Machine Learning Courses Data Processing Courses Fault Tolerance Courses Scalability Courses Observability Courses

Course Description

Overview

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Explore the complexities of distributed machine learning in this Ray Summit 2024 breakout session presented by Matthew Deng from Anyscale. Dive into key challenges faced by ML practitioners, including setup difficulties, integration issues, and debugging complexities in distributed environments. Discover solutions to streamline ML workflows, with a focus on the Ray Train API and its ecosystem integrations. Learn how to simplify distributed ML setup processes, integrate Ray Train with existing ML workflows, enhance observability for easier debugging, implement fault tolerance to reduce resource waste, and efficiently process large-scale datasets using Ray Data. Gain practical insights to enhance the efficiency and scalability of distributed ML pipelines, valuable for data scientists and ML engineers looking to optimize their training processes at scale.

Syllabus

Overcoming Distributed ML Challenges with Ray Train | Ray Summit 2024


Taught by

Anyscale

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