- 08 Aug, 2019 1 commit
-
-
Dmytro Okhonko authored
Summary: Initial code for speech recognition task. Right now only one ASR model added - https://arxiv.org/abs/1904.11660 unit test testing: python -m unittest discover tests also run model training with this code and obtained 5.0 test_clean | 13.4 test_other on librispeech with pytorch/audio features Pull Request resolved: https://github.com/fairinternal/fairseq-py/pull/810 Reviewed By: cpuhrsch Differential Revision: D16706659 Pulled By: okhonko fbshipit-source-id: 89a5f9883e50bc0e548234287aa0ea73f7402514
-
- 20 Jun, 2019 1 commit
-
-
Myle Ott authored
Summary: Pull Request resolved: https://github.com/pytorch/fairseq/pull/818 Differential Revision: D15916265 Pulled By: myleott fbshipit-source-id: c66c0bd988d3472c4150226952f34ee8d4c3db86
-
- 09 Feb, 2019 1 commit
-
-
Myle Ott authored
Summary: - fairseq can now be installed via pip: `pip install fairseq` - command-line tools are globally accessible: `fairseq-preprocess`, `fairseq-train`, `fairseq-generate`, etc. Pull Request resolved: https://github.com/pytorch/fairseq/pull/495 Differential Revision: D14017761 Pulled By: myleott fbshipit-source-id: 10c9f6634a3056074eac2f33324b4f1f404d4235
-
- 02 Apr, 2018 1 commit
-
-
Myle Ott authored
Changes: - 7d19e36: Add `--sampling` flag to generate.py to sample instead of doing beam search - c777340: Add `scripts/average_checkpoints.py` to average multiple checkpoints into a combined model - 3ea882c: Add `--max-update` option to train.py to stop training after a given number of updates - small bugfixes for distributed training, LSTM, inverse square root LR scheduler
-
- 27 Feb, 2018 1 commit
-
-
Myle Ott authored
This PR includes breaking API changes to modularize fairseq-py and adds support for distributed training across multiple nodes. Changes: - c7033ef: add support for distributed training! See updated README for usage. - e016299: modularize fairseq-py, adding support for register_model, register_criterion, register_optimizer, etc. - 154e440: update LSTM implementation to use PackedSequence objects in the encoder, better following best practices and improving perf - 90c2973 and 1da6265: improve unit test coverage
-