Difference between revisions of "Distributed Tensorflow in Kubernetes"
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$ docker build -t ecgwc/tf-iris:dist . | $ docker build -t ecgwc/tf-iris:dist . | ||
− | </syntaxhighlight>3. Check if trainig docker is workable.<syntaxhighlight lang="bash"> | + | </syntaxhighlight> |
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+ | 3. Check if trainig docker is workable.<syntaxhighlight lang="bash"> | ||
$ docker run --rm ecgwc/tf-iris:dist | $ docker run --rm ecgwc/tf-iris:dist | ||
− | </syntaxhighlight>[[File:Dist tf k8s-1.png|RTENOTITLE]] 4. Push docker to dockerHub<syntaxhighlight lang="bash"> | + | </syntaxhighlight> |
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+ | [[File:Dist tf k8s-1.png|RTENOTITLE]] | ||
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+ | 4. Push docker to dockerHub<syntaxhighlight lang="bash"> | ||
$ docker push ecgwc/tf-iris:dist | $ docker push ecgwc/tf-iris:dist | ||
− | </syntaxhighlight> 5. Create(Download) yaml file for distributed tensorflow: [[File:Tf-dist-iris.zip|RTENOTITLE]] | + | </syntaxhighlight> |
− | 6. Deploy yaml to k8s | + | |
− | <syntaxhighlight lang="bash"> | + | 5. Create(Download) yaml file for distributed tensorflow: [[File:Tf-dist-iris.zip|RTENOTITLE]] |
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+ | 6. Deploy yaml to k8s<syntaxhighlight lang="bash"> | ||
$ kubectl create -f tf-dist-iris.yaml | $ kubectl create -f tf-dist-iris.yaml | ||
− | </syntaxhighlight> 7. Check training process | + | </syntaxhighlight> |
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+ | 7. Check training process | ||
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[[File:Dist tf k8s-2.png|RTENOTITLE]] | [[File:Dist tf k8s-2.png|RTENOTITLE]] | ||
Revision as of 03:14, 16 November 2018
Contents
Introduce
Distributed Tensorflow (Clustering) can speed up your training. Distributed tensorflow in kubernates make it easy to:
- Add k8s nodes to extend computing capability
- Simplify the work to make a distributed tensorflow
This topic will describe how to make a distributed tensorflow.
Prerequisite
- You must know the basic concept of distributed tensorflow here: Distributed TensorFlow
- You must know how to write a distributed tensorflow training. Ex: train_and_evaluate
Steps
1. Create(Download) source & Dockerfile (File:Iris train and eval.zip) and unzip to the same folder.
2. Create training container, where "ecgwc" is the username in dockerhub and "tf-iris:dist" is the container name
$ docker build -t ecgwc/tf-iris:dist .
$ docker run --rm ecgwc/tf-iris:dist
$ docker push ecgwc/tf-iris:dist
5. Create(Download) yaml file for distributed tensorflow: File:Tf-dist-iris.zip
6. Deploy yaml to k8s$ kubectl create -f tf-dist-iris.yaml
7. Check training process
Reference
https://github.com/Azure/kubeflow-labs/tree/master/7-distributed-tensorflow