TensorFlow Estimator is easy to use for distributed training with parameter server strategy. But I cannot do prediction with the parameter server strategy. I cannot find any resource to introduce the part.

prediction sample code:

    run_config = tf.estimator.RunConfig()
    model = tf.estimator.Estimator(
    results = model.predict(
        input_fn=lambda: test_data.build(


{'task': {'index': '0', 'type': 'ps'}, 'cluster': {'chief': [''], 'ps': ['', '']}}
{'task': {'index': '1', 'type': 'ps'}, 'cluster': {'chief': [''], 'ps': ['', '']}}
{'task': {'index': '0', 'type': 'chief'}, 'cluster': {'chief': [''], 'ps': ['', '']}}

Result: Both PS and Woker did prediction.

Any suggestion? Thanks a lot.


In Estimator predict, every ps and worker use MonitoredSession to start a node which restores from an existing checkpoint. In order to do a distributed prediction, you can refer to Estimator training.

  • start ps
  • run_worker Create MonitoredTrainingSession instead of a MonitoredSession
    • Remember to start worker server.
  • estimator.predict receives a path for checkpoint, MonitoredTrainingSession receives a directory for checkpoint.

You can successfully start all servers and a distributed prediction. But there will be warnings such as that the global step is not increasing.

Detailed code on Github

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