examples/github_issue_summarization
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2018-12-05 18:42:11 -08:00
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01_setup_a_kubeflow_cluster.md Fixing broken links (#403) 2018-12-05 18:42:11 -08:00
02_distributed_training.md A bunch of changes to support distributed training using tf.estimator (#265) 2018-11-07 16:23:59 -08:00
02_training_the_model.md Fixed broken link in github issue summarization example (#235) 2018-08-26 18:01:31 -07:00
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requirements.txt Remove third_party folder & MIT license file 2018-02-27 13:17:42 -05:00

README.md

End-to-End kubeflow tutorial using a Sequence-to-Sequence model

This example demonstrates how you can use kubeflow end-to-end to train and serve a Sequence-to-Sequence model on an existing kubernetes cluster. This tutorial is based upon @hamelsmu's article "How To Create Data Products That Are Magical Using Sequence-to-Sequence Models".

Goals

There are two primary goals for this tutorial:

  • Demonstrate an End-to-End kubeflow example
  • Present an End-to-End Sequence-to-Sequence model

By the end of this tutorial, you should learn how to:

  • Setup a Kubeflow cluster on an existing Kubernetes deployment
  • Spawn up a Jupyter Notebook on the cluster
  • Spawn up a shared-persistent storage across the cluster to store large datasets
  • Train a Sequence-to-Sequence model using TensorFlow and GPUs on the cluster
  • Serve the model using Seldon Core
  • Query the model from a simple front-end application

Steps:

  1. Setup a Kubeflow cluster
  2. Training the model. You can train the model using any of the following methods using Jupyter Notebook or using TFJob:
  3. Serving the model
  4. Querying the model
  5. Teardown