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distbelief's Introduction

distbelief

Implementing Google's DistBelief paper.

Check out the blog post!

Installation/Development instructions

To install the latest stable version (pytorch-distbelief 0.1.0), run pip install pytorch-distbelief

Otherwise, you can build and run the latest master with the instructions below.

You'll want to create a python3 virtualenv first by running make setup, after which, you should run make install.

You'll then be able to use distbelief by importing distbelief

from distbelief.optim import DownpourSGD

optimizer = DownpourSGD(net.parameters(), lr=0.1, n_push=5, n_pull=5, model=net)

As an example, you can see our implementation running by using the script provided in example/main.py.

To run a 2-training node setup locally, open up three terminal windows, source the venv and then run make first, make second, and make server. This will begin training AlexNet on CIFAR10 locally with all default params.

Benchmarking

NOTE: we graph the train/test accuracy of each node, hence node1, node2, node3. A better comparison would be to evaluate the parameter server's params and use that value. However we can see that the accuracy between the three nodes is fairly consistent, and adding an evaluator might put too much stress on our server.

We scale the learning rate of the nodes to be learning_rate/freq (.03) .

train

test

We used AWS c4.xlarge instances to compare the CPU runs, and a GTX 1060 for the GPU run.

DownpourSGD for PyTorch

Diagram

Here 2 and 3 happen concurrently.

You can read more about our implementation here.

References

distbelief's People

Contributors

jcaip avatar rohan-varma avatar

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distbelief's Issues

NCCL doesn't support send and recv

Hey, I am trying to implement distbelief on a single machine with multiple-GPUs but neither GLOO nor NCCL support send or recv, so is there a workaround this? In general is point to point communication possible between GPUs using any of these backend?

segfaults occasionally while model is training

traces:
[1] 98051 segmentation fault /opt/homebrew/bin/python3.5 first_node.py

libc++abi.dylib: terminating with uncaught exception of type std::__1::system_error: mutex lock failed: Invalid argument [1] 98060 abort /opt/homebrew/bin/python3.5 second_node.py

decentralized async sgd

Planning on implementing a decentralized version of asyncSGD.

Current approach is just a ring-based network, but ill investigate different structures.

profile code

curious how much time is spent is send/recv for tensors vs training

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