- 15 May, 2022 1 commit
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John Reese authored
Summary: Applies new import merging and sorting from µsort v1.0. When merging imports, µsort will make a best-effort to move associated comments to match merged elements, but there are known limitations due to the diynamic nature of Python and developer tooling. These changes should not produce any dangerous runtime changes, but may require touch-ups to satisfy linters and other tooling. Note that µsort uses case-insensitive, lexicographical sorting, which results in a different ordering compared to isort. This provides a more consistent sorting order, matching the case-insensitive order used when sorting import statements by module name, and ensures that "frog", "FROG", and "Frog" always sort next to each other. For details on µsort's sorting and merging semantics, see the user guide: https://usort.readthedocs.io/en/stable/guide.html#sorting Reviewed By: lisroach Differential Revision: D36402214 fbshipit-source-id: b641bfa9d46242188524d4ae2c44998922a62b4c
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- 16 Feb, 2022 1 commit
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Zhaoheng Ni authored
Summary: Pull Request resolved: https://github.com/pytorch/audio/pull/2237 Reviewed By: mthrok Differential Revision: D34267000 Pulled By: nateanl fbshipit-source-id: 4c264aea6cf3fba5d8728d5fe60f9f471815852d
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- 11 Feb, 2022 3 commits
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hwangjeff authored
Summary: Adds SentencePiece model training script for LibriSpeech Emformer RNN-T example recipe; updates readme with references. Pull Request resolved: https://github.com/pytorch/audio/pull/2218 Reviewed By: nateanl Differential Revision: D34177295 Pulled By: hwangjeff fbshipit-source-id: 9f32805af792fb8c6f834f2812e20104177a6c43
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nateanl authored
Summary: We refactored the demo script that can apply RNNT decoding using both `torchaudio.pipelines.EMFORMER_RNNT_BASE_LIBRISPEECH` and `torchaudio.prototype.pipelines.EMFORMER_RNNT_BASE_TEDLIUM3` in both streaming and non-streaming mode. (The first hypothesis prediction is streaming and the second one is non-streaming). We convert each token id sequence to word pieces and then manually join the word pieces. This allows us to preserve leading whitespaces on output strings and therefore account for word breaks and continuations across token processor invocations, which is particularly useful when performing streaming ASR. https://user-images.githubusercontent.com/8653221/153627956-f0806f18-3c1c-44df-ac07-ec2def58a0cf.mov Pull Request resolved: https://github.com/pytorch/audio/pull/2203 Reviewed By: carolineechen Differential Revision: D34006388 Pulled By: nateanl fbshipit-source-id: 3d31173ee10cdab8a2f5802570e22b50fcce5632
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hwangjeff authored
Summary: Adds unit tests for Emformer RNN-T LibriSpeech recipe. Also makes changes to recipe to resolve errors with pickling lambda functions in Windows. Pull Request resolved: https://github.com/pytorch/audio/pull/2216 Reviewed By: nateanl Differential Revision: D34171480 Pulled By: hwangjeff fbshipit-source-id: 5fcebb457051f3041766324863728411180f5e1e
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- 10 Feb, 2022 1 commit
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hwangjeff authored
Summary: Consolidates LibriSpeech and TED-LIUM Release 3 Emformer RNN-T training recipes in a single directory. Pull Request resolved: https://github.com/pytorch/audio/pull/2212 Reviewed By: mthrok Differential Revision: D34120104 Pulled By: hwangjeff fbshipit-source-id: 29c6e27195d5998f76d67c35b718110e73529456
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