When we want to use distributed TensorFlow, we will create a parameter server using


However, I can't find any way to shut down the server except killing the processing. The TensorFlow documentation for join() is

Blocks until the server has shut down.
This method currently blocks forever.

This is quite bothering to me because I would like to create many servers for computation and shut them down when everything finishes.

Is there possible solutions for this.


3 Answers 3


You can have parameter server processes die on demand by using session.run(dequeue_op) instead of server.join() and having another process enqueue something onto that queue when you want this process to die.

So for k parameter server shards you could create k queues, with unique shared_name property and try to dequeue from that queue. When you want to bring down the servers, you loop over all queues and enqueue a token onto each queue. This would cause session.run to unblock and Python process will run to the end and quit, bringing down the server.

Below is a self-contained example with 2 shards taken from: https://gist.github.com/yaroslavvb/82a5b5302449530ca5ff59df520c369e

(for multi worker/multi shard example, see https://gist.github.com/yaroslavvb/ea1b1bae0a75c4aae593df7eca72d9ca)

import subprocess
import tensorflow as tf
import time
import sys

flags = tf.flags
flags.DEFINE_string("port1", "12222", "port of worker1")
flags.DEFINE_string("port2", "12223", "port of worker2")
flags.DEFINE_string("task", "", "internal use")

# setup local cluster from flags
host = ""
cluster = {"worker": [host+FLAGS.port1, host+FLAGS.port2]}
clusterspec = tf.train.ClusterSpec(cluster).as_cluster_def()

if __name__=='__main__':
  if not FLAGS.task:  # start servers and run client

      # launch distributed service
      def runcmd(cmd): subprocess.Popen(cmd, shell=True, stderr=subprocess.STDOUT)
      runcmd("python %s --task=0"%(sys.argv[0]))
      runcmd("python %s --task=1"%(sys.argv[0]))

      # bring down distributed service
      sess = tf.Session("grpc://"+host+FLAGS.port1)
      queue0 = tf.FIFOQueue(1, tf.int32, shared_name="queue0")
      queue1 = tf.FIFOQueue(1, tf.int32, shared_name="queue1")
      with tf.device("/job:worker/task:0"):
          add_op0 = tf.add(tf.ones(()), tf.ones(()))
      with tf.device("/job:worker/task:1"):
          add_op1 = tf.add(tf.ones(()), tf.ones(()))

      print("Running computation on server 0")
      print("Running computation on server 1")

      print("Bringing down server 0")
      print("Bringing down server 1")

  else: # Launch TensorFlow server
    server = tf.train.Server(clusterspec, config=None,
    print("Starting server "+FLAGS.task)
    sess = tf.Session(server.target)
    queue = tf.FIFOQueue(1, tf.int32, shared_name="queue"+FLAGS.task)
    print("Terminating server"+FLAGS.task)
  • Thanks for your answer. It works very well. But I met some problems when try to adapt to the example using tf.Supervisor (the one on TF website). The graph will be finalized as soon as I instantiate a supervisor object. Thus we can't enqueue after training. Using two graphs may work but according to this post, it may influence performance. Is there a good solution?
    – fois
    Dec 7, 2016 at 16:45
  • queue0.enqueue(1) actually creates an enqueue op and modifies the graph. You can instead do op1=queue0.enqueue(1); <finalize>; sess.run(op1) Dec 7, 2016 at 17:43
  • Both enqueue ops are executed on a session with the target, but one of the dequeue ops is executed on a session with the target. Does this distinction not matter? Why? Jan 22, 2017 at 21:11
  • The distinction should not matter -- both workers provide master interface, so you are free to choose which one to connect to Jan 22, 2017 at 22:05

This page appears pretty often on Google, so I thought I would try to improve on Yaroslav's answer by providing what I hope is a more clear answer for those just getting into distributed Tensorflow.

import tensorflow as tf
import threading

def main(job_name, task):
    cluster = tf.train.ClusterSpec({
        'ps': ['localhost:22222', 'localhost:22223'],
        'worker': ['localhost: 22224','localhost: 22225','localhost: 22226']

    server = tf.train.Server(cluster, job_name=job_name, task_index=task)

    if job_name == 'ps':
        # create a shared queue on the parameter server which is visible on /job:ps/task:%d
        with tf.device('/job:ps/task:%d' % task):
            queue = tf.FIFOQueue(cluster.num_tasks('worker'), tf.int32, shared_name='done_queue%d' % task)

        # wait for the queue to be filled
        with tf.Session(server.target) as sess:
            for i in range(cluster.num_tasks('worker')):
                print('ps:%d received "done" from worker:%d' % (task, i))
            print('ps:%d quitting' % task)

    elif job_name == 'worker':
        queues = []
        # create a shared queue on the worker which is visible on /job:ps/task:%d
        for i in range(cluster.num_tasks('ps')):
            with tf.device('/job:ps/task:%d' % i):
                queues.append(tf.FIFOQueue(cluster.num_tasks('worker'), tf.int32, shared_name='done_queue%d' % i))

        # fill the queue
        with tf.Session(server.target) as sess:
            for i in range(cluster.num_tasks('ps')):
                _, size = sess.run([queues[i].enqueue(task), queues[i].size()])
                print('Worker:%d sending "done" to ps:%d [elements=%d]' % (task, i, size))

if __name__ == '__main__':
    threads = [
        threading.Thread(target=main, args=('ps', 0)),
        threading.Thread(target=main, args=('ps', 1)),
        threading.Thread(target=main, args=('worker', 0)),
        threading.Thread(target=main, args=('worker', 1)),
        threading.Thread(target=main, args=('worker', 2))]
    for thread in threads:
    for thread in threads:

It's pretty simple to extend upon the "canonical" Distributed Tensorflow example by replacing the worker section of the code with this snippet:

    # create a worker that does nothing
    elif job_name == 'worker':
        with tf.device(tf.train.replica_device_setter(worker_device='/job:worker/task:%d' % task, cluster=cluster)):
            global_step = tf.train.get_or_create_global_step()
            no_op = tf.no_op()

        done_ops = []
        # create a shared queue on the worker which is visible on /job:ps/task:%d
        for i in range(cluster.num_tasks('ps')):
            with tf.device('/job:ps/task:%d' % i):
                done_queue = tf.FIFOQueue(cluster.num_tasks('worker'), tf.int32, shared_name='done_queue' + str(i))


        with tf.train.MonitoredTrainingSession(master=server.target,
                                               is_chief=(task == 0),
                                               hooks=hooks) as sess:

Note that the MonitoredTrainingSession version seems to be much slower at connecting all of the workers together.

  • Thanks, it work! But when the code has some errors, it seems this queue will not shut down ps server, right? I am not familiar with tf, so how could the code shut down ps server if there is an error?
    – Tina Liu
    Feb 18, 2020 at 17:10
  • Some kinds of errors are unrecoverable (like a worker machine crashing), so at the end of the day you might do something simple like have a timeout of 24hrs, or perform a liveness check on a separate thread by pinging a liveness endpoint. Fault-tolerant systems are a complicated but orthogonal issue and deserve their own questions and answers Feb 19, 2020 at 21:35

There's currently no clean way to shut down a TensorFlow gRPC server. It is possible to shut down a gRPC server, but doing it safely requires additional memory management for all of the in-flight request and response buffers, which would require a lot of additional plumbing (of the worst kind: asynchronous shared memory management...) for a feature that nobody had requested—until now!

In practice you should be able to use the same tf.train.Server object for many different computations. If this doesn't work for your use case, please feel free to open an GitHub issue and tell us more about your use case.

  • Thanks for your answer. But what would you do if you use the example in the documentation of distributed Tensorflow? I mean, after the computation, the two worker servers finish while two parameter servers remain running.
    – fois
    Oct 1, 2016 at 23:14
  • For the moment, I kill those processes of parameter server from command line. I wonder if it is safe?
    – fois
    Oct 1, 2016 at 23:15
  • But if I don't kill the servers after a complete training, then the variables inside the ps will influence the next training. Is it the case?
    – fois
    Oct 1, 2016 at 23:23
  • One more question, when I search for the solutions, it seems the C++ implementation of Tensorflow allows you to shut down the server. Is this the case?
    – fois
    Oct 1, 2016 at 23:24
  • Killing the parameter servers from the command line is safe. (Typically we use a cluster manager to do this for us, but killing a server manually should work.) You are correct that parameter server variables will persist between training training runs. If you want to avoid this, either use a with tf.container(): block with different container names in your different programs, or call tf.Session.reset() between training runs. Finally, the C++ server shutdown code is implemented, but not heavily tested. In particular, you have to make sure all clients disconnect before shutting down.
    – mrry
    Oct 3, 2016 at 8:37

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