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Subject [GitHub] [incubator-singa] chrishkchris opened a new pull request #532: SINGA-487 Add the support of Python Multiprocess Module
Date Fri, 06 Sep 2019 15:10:49 GMT
chrishkchris opened a new pull request #532: SINGA-487 Add the support of Python Multiprocess
Module
URL: https://github.com/apache/incubator-singa/pull/532
 
 
   I have added the support for the Python Multiprocess Module for single-node multi-gpu scanerio.

   For the old MPI-based NCCL, I have also simplified and cleaned the code, where I removed
the nDev variable (i.e. number of GPU controlled by each process) which is always 1 in our
case.
   
   So, in the following autograd example, 
   (i)  mnist_multiprocess.py is the example using python multiprocessing module
   (ii)  mnist_dist.py is the example using MPI for multiprocessing
   
   The results for both examples are as follows:
   ubuntu@ip-172-31-38-62:~/incubator-singa/examples/autograd$ python3 mnist_multiprocess.py
   Starting Epoch 0:
   Training loss = 801.480042, training accuracy = 0.709101
   Evaluation accuracy = 0.920436, Elapsed Time = 1.248269s
   Starting Epoch 1:
   Training loss = 249.743988, training accuracy = 0.916817
   Evaluation accuracy = 0.956620, Elapsed Time = 1.226179s
   Starting Epoch 2:
   Training loss = 175.276443, training accuracy = 0.942258
   Evaluation accuracy = 0.970498, Elapsed Time = 1.181269s
   Starting Epoch 3:
   Training loss = 144.092194, training accuracy = 0.951289
   Evaluation accuracy = 0.968236, Elapsed Time = 1.168137s
   Starting Epoch 4:
   Training loss = 116.727524, training accuracy = 0.961221
   Evaluation accuracy = 0.977282, Elapsed Time = 1.169854s
   Starting Epoch 5:
   Training loss = 105.698898, training accuracy = 0.964577
   Evaluation accuracy = 0.979132, Elapsed Time = 1.174284s
   Starting Epoch 6:
   Training loss = 94.009590, training accuracy = 0.968616
   Evaluation accuracy = 0.976460, Elapsed Time = 1.172847s
   Starting Epoch 7:
   Training loss = 87.892418, training accuracy = 0.970419
   Evaluation accuracy = 0.979852, Elapsed Time = 1.172124s
   Starting Epoch 8:
   Training loss = 82.783676, training accuracy = 0.972306
   Evaluation accuracy = 0.983141, Elapsed Time = 1.163122s
   Starting Epoch 9:
   Training loss = 76.629707, training accuracy = 0.974576
   Evaluation accuracy = 0.978927, Elapsed Time = 1.160587s
   ubuntu@ip-172-31-38-62:~/incubator-singa/examples/autograd$ /home/ubuntu/mpich-3.3/build/bin/mpiexec
--hostfile host_file python3 mnist_dist.py
   Starting Epoch 0:
   Training loss = 792.865723, training accuracy = 0.713041
   Evaluation accuracy = 0.929174, Elapsed Time = 1.262597s
   Starting Epoch 1:
   Training loss = 250.669327, training accuracy = 0.914931
   Evaluation accuracy = 0.960218, Elapsed Time = 1.198090s
   Starting Epoch 2:
   Training loss = 174.226135, training accuracy = 0.941273
   Evaluation accuracy = 0.966283, Elapsed Time = 1.189961s
   Starting Epoch 3:
   Training loss = 142.276245, training accuracy = 0.952541
   Evaluation accuracy = 0.970806, Elapsed Time = 1.189858s
   Starting Epoch 4:
   Training loss = 121.220009, training accuracy = 0.959769
   Evaluation accuracy = 0.972759, Elapsed Time = 1.190380s
   Starting Epoch 5:
   Training loss = 111.639114, training accuracy = 0.962423
   Evaluation accuracy = 0.975946, Elapsed Time = 1.186215s
   Starting Epoch 6:
   Training loss = 96.729469, training accuracy = 0.967448
   Evaluation accuracy = 0.982216, Elapsed Time = 1.177556s
   Starting Epoch 7:
   Training loss = 89.441696, training accuracy = 0.970169
   Evaluation accuracy = 0.978824, Elapsed Time = 1.183380s
   Starting Epoch 8:
   Training loss = 79.853104, training accuracy = 0.973057
   Evaluation accuracy = 0.982113, Elapsed Time = 1.181502s
   Starting Epoch 9:
   Training loss = 77.974480, training accuracy = 0.974259
   Evaluation accuracy = 0.978516, Elapsed Time = 1.183578s

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