DGL Operator - Distributed Graph Neural Network Training with DGL and K8s
Offered By: CNCF [Cloud Native Computing Foundation] via YouTube
Course Description
Overview
Explore distributed graph neural network training using DGL (Deep Graph Library) and Kubernetes in this 31-minute conference talk. Learn about processing graph data for various learning tasks, and discover how the DGL Operator solution can improve resource utilization, enable dynamic scaling, and reduce system complexity in production-scale clusters. Gain insights into containerizing DGL components, implementing the DGL Operator, and understanding multiple partitioning options. Follow along as the speaker presents a GNN training example, discusses native DGL distributed training methods, and addresses challenges in large-scale environments. Delve into the future design considerations for enhancing distributed graph neural network training workflows.
Syllabus
DGL Operator: Distributed Graph Neural Network Training with DGL and K8s - Xiaoyu Zhai, Qihoo 360
Taught by
CNCF [Cloud Native Computing Foundation]
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