Ray - A System for High-performance, Distributed Python Applications
Offered By: EuroPython Conference via YouTube
Course Description
Overview
Explore Ray, an open-source distributed framework from U.C. Berkeley's RISELab designed to scale Python applications from laptops to clusters. Learn how Ray addresses performance challenges in ML/AI systems, including heterogeneous task scheduling and state management for hyperparameter tuning, model training, and reinforcement learning simulations. Discover Ray's features for rapid task scheduling, execution, and distributed state management. Compare Ray to other distributed Python libraries and understand when to use it in your projects. Gain insights into Ray's applications in production deployments and open-source systems. Suitable for developers seeking to scale Python applications without extensive distributed systems expertise.
Syllabus
Dean Wampler - Ray: A System for High-performance, Distributed Python Applications
Taught by
EuroPython Conference
Related Courses
A Brief History of Data StorageEuroPython Conference via YouTube Breaking the Stereotype - Evolution & Persistence of Gender Bias in Tech
EuroPython Conference via YouTube We Can Get More from Spatial, GIS, and Public Domain Datasets
EuroPython Conference via YouTube Using NLP to Detect Knots in Protein Structures
EuroPython Conference via YouTube The Challenges of Doing Infra-As-Code Without "The Cloud"
EuroPython Conference via YouTube