Sen descrición

Anton Sinitsin 0d7818b2cd fix problem with NamedTuple inheritance in python3.9 (#142) %!s(int64=4) %!d(string=hai) anos
.circleci 0d7818b2cd fix problem with NamedTuple inheritance in python3.9 (#142) %!s(int64=4) %!d(string=hai) anos
.github 9ba811788c add blank issue %!s(int64=5) %!d(string=hai) anos
docs 10917b259e Averager: update group keys after every step, infer nbits dynamically (#141) %!s(int64=4) %!d(string=hai) anos
hivemind 0d7818b2cd fix problem with NamedTuple inheritance in python3.9 (#142) %!s(int64=4) %!d(string=hai) anos
scripts d092810322 Load checkpoints on server start (#138) %!s(int64=4) %!d(string=hai) anos
tests 0d7818b2cd fix problem with NamedTuple inheritance in python3.9 (#142) %!s(int64=4) %!d(string=hai) anos
.gitignore c43fabcddb Add .gitignore %!s(int64=5) %!d(string=hai) anos
.readthedocs.yml c450a43fd0 Fix flaky test_remote_module_call, extract requirements for docs/tests (#118) %!s(int64=4) %!d(string=hai) anos
LICENSE f386fb4d42 Create LICENSE %!s(int64=5) %!d(string=hai) anos
README.md 46c3b85550 Add references, expand README.md (#117) %!s(int64=4) %!d(string=hai) anos
requirements-dev.txt c450a43fd0 Fix flaky test_remote_module_call, extract requirements for docs/tests (#118) %!s(int64=4) %!d(string=hai) anos
requirements-docs.txt c450a43fd0 Fix flaky test_remote_module_call, extract requirements for docs/tests (#118) %!s(int64=4) %!d(string=hai) anos
requirements.txt 8466d722da Add Averager load balancing and public endpoints (#140) %!s(int64=4) %!d(string=hai) anos
setup.py c450a43fd0 Fix flaky test_remote_module_call, extract requirements for docs/tests (#118) %!s(int64=4) %!d(string=hai) anos

README.md

hivemind: decentralized deep learning in PyTorch

Build status Documentation Status Gitter

Hivemind is a PyTorch library to train large neural networks across the Internet. Imagine training one huge Transformer model on thousands of computers from different universities, companies, and volunteers.

img

Key Features

  • Train neural networks of arbitrary size: parts of their layers are distributed across the participants
  • Run distributed training without master node: Distributed Hash Table allows to connect computers in a decentralized network
  • Fault-tolerant backpropagation: forward and backward passes succeed even if some nodes are unresponsive or take too long to respond

To learn more about the idea behind this library and its components, see https://learning-at-home.github.io or read the NeurIPS 2020 paper

Documentation

Contributing

Hivemind is currently at the active development stage, and we welcome all contributions from bug fixes and documentation improvements to entirely new features. If you want to contribute to hivemind, take a look at the issues or join our chat room. The Developer's guide page contains best practices, as well as description of tests and performance benchmarks.

References

You can read the paper that inspired hivemind here:

Towards Crowdsourced Training of Large Neural Networks using Decentralized Mixture-of-Experts (Max Ryabinin and Anton Gusev, NeurIPS 2020).

@misc{ryabinin2020crowdsourced,
      title={Towards Crowdsourced Training of Large Neural Networks using Decentralized Mixture-of-Experts}, 
      author={Max Ryabinin and Anton Gusev},
      year={2020},
      eprint={2002.04013},
      archivePrefix={arXiv},
      primaryClass={cs.DC}
}

The initial implementation of hivemind used to conduct experiments for the paper is available here: mryab/learning-at-home.

In the docs, we list several related projects and acknowledgements.