I'm following an example here to learn distributed TF on MNIST. I changed the cluster config to:

parameter_servers = ["1.2.3.4:2222"]
workers = [ "1.2.3.4:2222", "5.6.7.8:2222"]

1.2.3.4 and 5.6.7.8 are just representations of my two nodes. They are not the real IP address. The whole script is named example.py

On 1.2.3.4, I ran: python example.py --job_name=ps --task_index=0 .Then on the same machine, I ran python example --job_name=worker --task_index=0 in a different terminal. Looks like it's just waiting.

On 5,6,7,8, I ran python example.py --job_name=worker --taks_index=1. After that I immediately get the following error on 5.6.7.8:

tensorflow.python.framework.errors.UnavailableError: {"created":"@1480458325.580095889","description":"EOF","file":"external/grpc/src/core/lib/iomgr/tcp_posix.c","file_line":235,"grpc_status":14}
I tensorflow/core/distributed_runtime/master_session.cc:845] DeregisterGraph error: Aborted: Graph handle is not found: . Possibly, this worker just restarted.

And

tensorflow/core/distributed_runtime/graph_mgr.cc:55] 'unit.device' Must be non NULL
Aborted (core dumped)

on 1.2.3.4

Is this because I'm running both the parameter server and worker on the same machine? I don't have more than 2 nodes so how do I fix this?

  • Here's a self-contained example of running 2 workers on single node, can you see if that works for you? gist.github.com/yaroslavvb/1124bb02a9fd4abce3d86caf2f950cb2 – Yaroslav Bulatov Nov 29 '16 at 23:39
  • @YaroslavBulatov: It works but I get CUDA_ERROR_OUT_OF_MEMORY on a GPU server (with 1 GPU). – user3813674 Nov 30 '16 at 3:32
  • You need to do "export CUDA_VISIBLE_DEVICES=" for one of the processes, by default it grabs all GPU memory. With that set, there should be no problem running parameter server and worker on the same machine. – Yaroslav Bulatov Nov 30 '16 at 6:45
  • That fixed it. If you provide that as an answer, i'd accept it. – user3813674 Nov 30 '16 at 17:32
up vote 0 down vote accepted

So after a day I finally got the fix:

  1. Do as Yaroslav suggest for the param server, so that the worker doesn't run out of GPU memory
  2. The param server and worker cannot run on the same port (as the original post), so change workers = [ "1.2.3.4:2222", "5.6.7.8:2222"] to workers = [ "1.2.3.4:2223", "5.6.7.8:2222"]. Note the change in port number.

That's everything that needs to be done.

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