Scaling Computer Vision Models with Ray - A Cost-Effective and Efficient Distributed Training Framework
Offered By: Anyscale via YouTube
Course Description
Overview
Explore a 35-minute presentation on implementing a computer vision model using the Ray open-source framework, comparing its training performance against Kubeflow. Evaluate cost-effectiveness, training speed, GPU utilization, and throughput of both frameworks. Discover how Ray leverages distributed training and cost-effective Amazon S3 storage to achieve improved performance over Kubeflow's use of more expensive Amazon EFS. Learn about Ray Dataset's capabilities in parallelizing data IO, preprocessing, and GPU training at scale, as well as its support for full streaming execution. Gain insights into optimizing computer vision workloads with large training datasets using vectorized preprocessing, batching, and prefetching techniques. Understand the potential benefits of Ray for businesses and organizations relying on computer vision models to drive operations.
Syllabus
Scaling Computer Vision Models with Ray:A Cost-Effective and Efficient Distributed Training Framewor
Taught by
Anyscale
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