Efficient Access to Shared GPU Resources: Mechanisms and Use Cases
Offered By: CNCF [Cloud Native Computing Foundation] via YouTube
Course Description
Overview
Explore mechanisms for efficient GPU resource sharing in High Energy Physics and machine learning environments. Learn about GPU scheduling in Kubernetes, time-sharing techniques, and Nvidia Multi-Instance-GPU (MIG) for physical partitioning. Examine benchmark results to understand optimal workload assignment and discover strategies for centralized GPU management to ensure optimal resource utilization in continuous integration, machine learning, and batch services. This conference talk provides insights into improving overall GPU resource usage, addressing limitations in traditional deployments, and maximizing the potential of scarce and expensive accelerators.
Syllabus
Efficient Access to Shared GPU Resources: Mechanisms and Use Cases - Diogo Guerra & Diana Gaponcic
Taught by
CNCF [Cloud Native Computing Foundation]
Related Courses
Физика как глобальный проектNational Research Nuclear University MEPhI via Coursera Introduction to Quantum Field Theory (Theory of Scalar Fields) - Part 2
IIT Hyderabad via Swayam Deep Learning Pipelines for High Energy Physics Using Apache Spark and Distributed Keras
Databricks via YouTube Helium Dimers and Trimers - From Imaging of Structure to Movies of Ultrafast Dynamics - Reinhard Dorner
Kavli Institute for Theoretical Physics via YouTube Bosons and Multi-Component Fermions Near Unitarity - Ubirajara van Kolck
Kavli Institute for Theoretical Physics via YouTube