Overview
Explore large-scale distributed deep learning deployments on Kubernetes clusters in this conference talk. Delve into the use of operators for managing and automating machine learning training processes, comparing the open-source tf-operator and mpi-operator. Examine different distribution strategies and their impact on performance, particularly regarding CPU, GPU, and network utilization. Gain insights into optimizing orchestration for deep learning tasks, which are both network and GPU intensive, to achieve better economics and prevent idle compute capacity. Learn from shared experiences and best practices for TensorFlow 2.0 workflow, parameter servers, Kubernetes operators, mirror strategy in TensorFlow, and integrations with Horovod for both TensorFlow and PyTorch.
Syllabus
Intro
Speakers
TensorFlow 2.0 Workflow
Orchestration for DL
Parameter Server
Reduce
Kubernetes Operators
Mirror Strategy in TF
TensorFlow + Hovorod
PyTorch + Hovorod
Recall: TFJob vs. MPIJob
Shared API and Best Practices
Taught by
Linux Foundation