How Spotify Built a Robust Ray Platform with a Frictionless Developer Experience
Offered By: Anyscale via YouTube
Course Description
Overview
Explore how Spotify's ML platform team built a centralized Ray platform for thousands of diverse users in this 36-minute conference talk. Discover the team's learnings and solutions over the past year, including creating a seamless developer experience, enhancing platform reliability, scalability, performance, and cost-efficiency, and leveraging the Ray ecosystem for ML development. Learn about the goals and design decisions behind Spotify's managed Ray platform, their focus on frictionless developer experience for ML practitioners, and how Ray has accelerated various ML applications. Gain insights and inspiration for your own Ray journey through Spotify's experiences and lessons learned. Access the accompanying slide deck for additional visual information and details.
Syllabus
How Spotify Built a Robust Ray Platform with a Frictionless Developer Experience
Taught by
Anyscale
Related Courses
Optimizing LLM Inference with AWS Trainium, Ray, vLLM, and AnyscaleAnyscale via YouTube Scalable and Cost-Efficient AI Workloads with AWS and Anyscale
Anyscale via YouTube End-to-End LLM Workflows with Anyscale
Anyscale via YouTube Developing and Serving RAG-Based LLM Applications in Production
Anyscale via YouTube Deploying Many Models Efficiently with Ray Serve
Anyscale via YouTube