Machine Learning
Machine Learning
Distributed Deep Learning for Physics with TensorFlow and Kubernetes
Summary: This post details a solution for distributed deep learning training for a High Energy Physics use case, deployed using cloud resources and Kubernetes. You will find the results for training using CPU and GPU nodes. This post also describes an experimental tool that we developed, TF-Spawner, and how we used it to run distributed TensorFlow on a Kubernetes cluster.
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The views expressed in this blog are those of the authors and cannot be regarded as representing CERN’s official position.
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