Open-Source Toolkit for End-to-End Speech Recognition leveraging PyTorch-Lightning and Hydra.

Overview

image


OpenSpeech provides reference implementations of various ASR modeling papers and three languages recipe to perform tasks on automatic speech recognition. We aim to make ASR technology easier to use for everyone.

OpenSpeech is backed by the two powerful libraries — PyTorch-Lightning and Hydra. Various features are available in the above two libraries, including Multi-GPU and TPU training, Mixed-precision, and hierarchical configuration management.

We appreciate any kind of feedback or contribution. Feel free to proceed with small issues like bug fixes, documentation improvement. For major contributions and new features, please discuss with the collaborators in corresponding issues.

Why should I use OpenSpeech?

  1. Easy-to-experiment with the famous ASR models.
    • Supports 10+ models and is continuously updated.
    • Low barrier to entry for educators and practitioners.
    • Save time for researchers who want to conduct various experiments.
  2. Provides recipes for the most widely used languages, English, Chinese, and + Korean.
    • LibriSpeech - 1,000 hours of English dataset most widely used in ASR tasks.
    • AISHELL-1 - 170 hours of Chinese Mandarin speech corpus.
    • KsponSpeech - 1,000 hours of Korean open-domain dialogue speech.
  3. Easily customize a model or a new dataset to your needs:
    • The default hparams of the supported models are provided but can be easily adjusted.
    • Easily create a custom model by combining modules that are already provided.
    • If you want to use the new dataset, you only need to define a pl.LightingDataModule and Vocabulary classes.
  4. Audio processing
    • Representative audio features such as Spectrogram, Mel-Spectrogram, Filter-Bank, and MFCC can be used easily.
    • Provides a variety of augmentation, including SpecAugment, Noise Injection, and Audio Joining.

Why shouldn't I use OpenSpeech?

  • This library provides code for learning ASR models, but does not provide APIs by pre-trained models.
  • We do not provide pre-training mechanisms such as Wav2vec 2.0 since pre-training costs a lot of computation. Though computation optimization is very important, and this library does not provide that optimization.

Model architectures

We support all the models below. Note that, the important concepts of the model have been implemented to match, but the details of the implementation may vary.

  1. DeepSpeech2 (from Baidu Research) released with paper Deep Speech 2: End-to-End Speech Recognition in English and Mandarin, by Dario Amodei, Rishita Anubhai, Eric Battenberg, Carl Case, Jared Casper, Bryan Catanzaro, Jingdong Chen, Mike Chrzanowski, Adam Coates, Greg Diamos, Erich Elsen, Jesse Engel, Linxi Fan, Christopher Fougner, Tony Han, Awni Hannun, Billy Jun, Patrick LeGresley, Libby Lin, Sharan Narang, Andrew Ng, Sherjil Ozair, Ryan Prenger, Jonathan Raiman, Sanjeev Satheesh, David Seetapun, Shubho Sengupta, Yi Wang, Zhiqian Wang, Chong Wang, Bo Xiao, Dani Yogatama, Jun Zhan, Zhenyao Zhu.
  2. RNN-Transducer (from University of Toronto) released with paper Sequence Transduction with Recurrent Neural Networks, by Alex Graves.
  3. Listen Attend Spell (from Carnegie Mellon University and Google Brain) released with paper Listen, Attend and Spell, by William Chan, Navdeep Jaitly, Quoc V. Le, Oriol Vinyals.
  4. Location-aware attention based Listen Attend Spell (from University of Wrocław and Jacobs University and Universite de Montreal) released with paper Attention-Based Models for Speech Recognition, by Jan Chorowski, Dzmitry Bahdanau, Dmitriy Serdyuk, Kyunghyun Cho, Yoshua Bengio.
  5. Joint CTC-Attention based Listen Attend Spell (from Mitsubishi Electric Research Laboratories and Carnegie Mellon University) released with paper Joint CTC-Attention based End-to-End Speech Recognition using Multi-task Learning, by Suyoun Kim, Takaaki Hori, Shinji Watanabe.
  6. Deep CNN Encoder with Joint CTC-Attention Listen Attend Spell (from Mitsubishi Electric Research Laboratories and Massachusetts Institute of Technology and Carnegie Mellon University) released with paper Advances in Joint CTC-Attention based End-to-End Speech Recognition with a Deep CNN Encoder and RNN-LM, by Takaaki Hori, Shinji Watanabe, Yu Zhang, William Chan.
  7. Multi-head attention based Listen Attend Spell (from Google) released with paper State-of-the-art Speech Recognition With Sequence-to-Sequence Models, by Chung-Cheng Chiu, Tara N. Sainath, Yonghui Wu, Rohit Prabhavalkar, Patrick Nguyen, Zhifeng Chen, Anjuli Kannan, Ron J. Weiss, Kanishka Rao, Ekaterina Gonina, Navdeep Jaitly, Bo Li, Jan Chorowski, Michiel Bacchiani.
  8. Speech-Transformer (from University of Chinese Academy of Sciences and Institute of Automation and Chinese Academy of Sciences) released with paper Speech-Transformer: A No-Recurrence Sequence-to-Sequence Model for Speech Recognition, by Linhao Dong; Shuang Xu; Bo Xu.
  9. VGG-Transformer (from Facebook AI Research) released with paper Transformers with convolutional context for ASR, by Abdelrahman Mohamed, Dmytro Okhonko, Luke Zettlemoyer.
  10. Transformer with CTC (from NTT Communication Science Laboratories, Waseda University, Center for Language and Speech Processing, Johns Hopkins University) released with paper Improving Transformer-based End-to-End Speech Recognition with Connectionist Temporal Classification and Language Model Integration, by Shigeki Karita, Nelson Enrique Yalta Soplin, Shinji Watanabe, Marc Delcroix, Atsunori Ogawa, Tomohiro Nakatani.
  11. Joint CTC-Attention based Transformer(from NTT Corporation) released with paper Self-Distillation for Improving CTC-Transformer-based ASR Systems, by Takafumi Moriya, Tsubasa Ochiai, Shigeki Karita, Hiroshi Sato, Tomohiro Tanaka, Takanori Ashihara, Ryo Masumura, Yusuke Shinohara, Marc Delcroix.
  12. Jasper (from NVIDIA and New York University) released with paper Jasper: An End-to-End Convolutional Neural Acoustic Model, by Jason Li, Vitaly Lavrukhin, Boris Ginsburg, Ryan Leary, Oleksii Kuchaiev, Jonathan M. Cohen, Huyen Nguyen, Ravi Teja Gadde.
  13. QuartzNet (from NVIDIA and Univ. of Illinois and Univ. of Saint Petersburg) released with paper QuartzNet: Deep Automatic Speech Recognition with 1D Time-Channel Separable Convolutions, by Samuel Kriman, Stanislav Beliaev, Boris Ginsburg, Jocelyn Huang, Oleksii Kuchaiev, Vitaly Lavrukhin, Ryan Leary, Jason Li, Yang Zhang.
  14. Transformer Transducer (from Facebook AI) released with paper Transformer-Transducer: End-to-End Speech Recognition with Self-Attention, by Ching-Feng Yeh, Jay Mahadeokar, Kaustubh Kalgaonkar, Yongqiang Wang, Duc Le, Mahaveer Jain, Kjell Schubert, Christian Fuegen, Michael L. Seltzer.
  15. Conformer (from Google) released with paper Conformer: Convolution-augmented Transformer for Speech Recognition, by Anmol Gulati, James Qin, Chung-Cheng Chiu, Niki Parmar, Yu Zhang, Jiahui Yu, Wei Han, Shibo Wang, Zhengdong Zhang, Yonghui Wu, Ruoming Pang.
  16. Conformer with CTC (from Northwestern Polytechnical University and University of Bordeaux and Johns Hopkins University and Human Dataware Lab and Kyoto University and NTT Corporation and Shanghai Jiao Tong University and Chinese Academy of Sciences) released with paper Recent Developments on ESPNET Toolkit Boosted by Conformer, by Pengcheng Guo, Florian Boyer, Xuankai Chang, Tomoki Hayashi, Yosuke Higuchi, Hirofumi Inaguma, Naoyuki Kamo, Chenda Li, Daniel Garcia-Romero, Jiatong Shi, Jing Shi, Shinji Watanabe, Kun Wei, Wangyou Zhang, Yuekai Zhang.
  17. Conformer with LSTM Decoder (from IBM Research AI) released with paper On the limit of English conversational speech recognition, by Zoltán Tüske, George Saon, Brian Kingsbury.

Create custom model

Open speech can easily create custom models using the encoder and decoder provided.
Below is an example of a custom model that combines Transformer encoder and LSTM decoder.

Get Started

We use Hydra to control all the training configurations. If you are not familiar with Hydra we recommend visiting the Hydra website. Generally, Hydra is an open-source framework that simplifies the development of research applications by providing the ability to create a hierarchical configuration dynamically. If you want to know how we used Hydra, we recommend you to read here.

Supported Datasets

We support LibriSpeech, KsponSpeech, and AISHELL-1.

LibriSpeech is a corpus of approximately 1,000 hours of 16kHz read English speech, prepared by Vassil Panayotov with the assistance of Daniel Povey. The data was derived from reading audiobooks from the LibriVox project, and has been carefully segmented and aligned.

Aishell is an open-source Chinese Mandarin speech corpus published by Beijing Shell Shell Technology Co.,Ltd. 400 people from different accent areas in China were invited to participate in the recording, which was conducted in a quiet indoor environment using high fidelity microphone and downsampled to 16kHz.

KsponSpeech is a large-scale spontaneous speech corpus of Korean. This corpus contains 969 hours of general open-domain dialog utterances, spoken by about 2,000 native Korean speakers in a clean environment. All data were constructed by recording the dialogue of two people freely conversing on a variety of topics and manually transcribing the utterances. To start training, the KsponSpeech dataset must be prepared in advance. To download KsponSpeech, you need permission from AI Hub.

Pre-processed Manifest Files

Dataset Unit Manifest Vocab SP-Model
LibriSpeech character [Link] [Link] -
LibriSpeech subword [Link] [Link] [Link]
AISHELL-1 character [Link] [Link] -
KsponSpeech character [Link] [Link] -
KsponSpeech subword [Link] [Link] [Link]
KsponSpeech grapheme [Link] [Link] -

KsponSpeech needs permission from AI Hub.
Please send e-mail including the approved screenshot to [email protected].

Manifest File

  • Manifest file format:
LibriSpeech/test-other/8188/269288/8188-269288-0052.flac        ▁ANNIE ' S ▁MANNER ▁WAS ▁VERY ▁MYSTERIOUS       4039 20 5 531 17 84 2352
LibriSpeech/test-other/8188/269288/8188-269288-0053.flac        ▁ANNIE ▁DID ▁NOT ▁MEAN ▁TO ▁CONFIDE ▁IN ▁ANYONE ▁THAT ▁NIGHT ▁AND ▁THE ▁KIND EST ▁THING ▁WAS ▁TO ▁LEAVE ▁HER ▁A LONE    4039 99 35 251 9 4758 11 2454 16 199 6 4 323 200 255 17 9 370 30 10 492
LibriSpeech/test-other/8188/269288/8188-269288-0054.flac        ▁TIRED ▁OUT ▁LESLIE ▁HER SELF ▁DROPP ED ▁A SLEEP        1493 70 4708 30 115 1231 7 10 1706
LibriSpeech/test-other/8188/269288/8188-269288-0055.flac        ▁ANNIE ▁IS ▁THAT ▁YOU ▁SHE ▁CALL ED ▁OUT        4039 34 16 25 37 208 7 70
LibriSpeech/test-other/8188/269288/8188-269288-0056.flac        ▁THERE ▁WAS ▁NO ▁REPLY ▁BUT ▁THE ▁SOUND ▁OF ▁HURRY ING ▁STEPS ▁CAME ▁QUICK ER ▁AND ▁QUICK ER ▁NOW ▁AND ▁THEN ▁THEY ▁WERE ▁INTERRUPTED ▁BY ▁A ▁GROAN     57 17 56 1368 33 4 489 8 1783 14 1381 133 571 49 6 571 49 82 6 76 45 54 2351 44 10 3154
LibriSpeech/test-other/8188/269288/8188-269288-0057.flac        ▁OH ▁THIS ▁WILL ▁KILL ▁ME ▁MY ▁HEART ▁WILL ▁BREAK ▁THIS ▁WILL ▁KILL ▁ME 299 46 71 669 50 41 235 71 977 46 71 669 50
...
...

Training examples

You can simply train with LibriSpeech dataset like below:

  • Example1: Train the conformer-lstm model with filter-bank features on GPU.
$ python ./openspeech_cli/hydra_train.py \
    dataset=librispeech \
    dataset.dataset_download=True \
    dataset.dataset_path=$DATASET_PATH \
    dataset.manifest_file_path=$MANIFEST_FILE_PATH \  
    vocab=libri_subword \
    model=conformer_lstm \
    audio=fbank \
    lr_scheduler=warmup_reduce_lr_on_plateau \
    trainer=gpu \
    criterion=joint_ctc_cross_entropy

You can simply train with KsponSpeech dataset like below:

  • Example2: Train the listen-attend-spell model with mel-spectrogram features On TPU:
$ python ./openspeech_cli/hydra_train.py \
    dataset=ksponspeech \
    dataset.dataset_path=$DATASET_PATH \
    dataset.manifest_file_path=$MANIFEST_FILE_PATH \  
    dataset.test_dataset_path=$TEST_DATASET_PATH \
    dataset.test_manifest_dir=$TEST_MANIFEST_DIR \
    vocab=kspon_character \
    model=listen_attend_spell \
    audio=melspectrogram \
    lr_scheduler=warmup_reduce_lr_on_plateau \
    trainer=tpu \
    criterion=joint_ctc_cross_entropy

You can simply train with AISHELL-1 dataset like below:

  • Example3: Train the quartznet model with mfcc features On GPU with FP16:
$ python ./openspeech_cli/hydra_train.py \
    dataset=aishell \
    dataset.dataset_path=$DATASET_PATH \
    dataset.dataset_download=True \
    dataset.manifest_file_path=$MANIFEST_FILE_PATH \  
    vocab=aishell_character \
    model=quartznet15x5 \
    audio=mfcc \
    lr_scheduler=warmup_reduce_lr_on_plateau \
    trainer=gpu-fp16 \
    criterion=ctc

Evaluation examples

  • Example1: Evaluation the listen_attend_spell model:
$ python ./openspeech_cli/hydra_eval.py \
    audio=melspectrogram \
    eval.model_name=listen_attend_spell \
    eval.dataset_path=$DATASET_PATH \
    eval.checkpoint_path=$CHECKPOINT_PATH \
    eval.manifest_file_path=$MANIFEST_FILE_PATH  
  • Example2: Evaluation the listen_attend_spell, conformer_lstm models with ensemble:
$ python ./openspeech_cli/hydra_eval.py \
    audio=melspectrogram \
    eval.model_names=(listen_attend_spell, conformer_lstm) \
    eval.dataset_path=$DATASET_PATH \
    eval.checkpoint_paths=($CHECKPOINT_PATH1, $CHECKPOINT_PATH2) \
    eval.ensemble_weights=(0.3, 0.7) \
    eval.ensemble_method=weighted \
    eval.manifest_file_path=$MANIFEST_FILE_PATH  

Installation

This project recommends Python 3.7 or higher.
We recommend creating a new virtual environment for this project (using virtual env or conda).

Prerequisites

  • numpy: pip install numpy (Refer here for problem installing Numpy).
  • pytorch: Refer to PyTorch website to install the version w.r.t. your environment.
  • librosa: conda install -c conda-forge librosa (Refer here for problem installing librosa)
  • torchaudio: pip install torchaudio==0.6.0 (Refer here for problem installing torchaudio)
  • sentencepiece: pip install sentencepiece (Refer here for problem installing sentencepiece)
  • pytorch-lightning: pip install pytorch-lightning (Refer here for problem installing pytorch-lightning)
  • hydra: pip install hydra-core --upgrade (Refer here for problem installing hydra)
  • warp-rnnt: Refer to warp-rnnt page to install the library.
  • ctcdecode: Refer to ctcdecode page to install the library.

Install from pypi

You can install OpenSpeech with pypi.

pip install openspeech-core

Install from source

Currently we only support installation from source code using setuptools. Checkout the source code and run the
following commands:

$ ./install.sh

Install Apex (for 16-bit training)

For faster training install NVIDIA's apex library:

$ git clone https://github.com/NVIDIA/apex
$ cd apex

# ------------------------
# OPTIONAL: on your cluster you might need to load CUDA 10 or 9
# depending on how you installed PyTorch

# see available modules
module avail

# load correct CUDA before install
module load cuda-10.0
# ------------------------

# make sure you've loaded a cuda version > 4.0 and < 7.0
module load gcc-6.1.0

$ pip install -v --no-cache-dir --global-option="--cpp_ext" --global-option="--cuda_ext" ./

Troubleshoots and Contributing

If you have any questions, bug reports, and feature requests, please open an issue on Github.

We appreciate any kind of feedback or contribution. Feel free to proceed with small issues like bug fixes, documentation improvement. For major contributions and new features, please discuss with the collaborators in corresponding issues.

Code Style

We follow PEP-8 for code style. Especially the style of docstrings is important to generate documentation.

License

This project is licensed under the MIT LICENSE - see the LICENSE.md file for details

Citation

If you use the system for academic work, please cite:

@GITHUB{2021-OpenSpeech,
  author       = {Kim, Soohwan and Ha, Sangchun and Cho, Soyoung},
  author email = {[email protected], [email protected], [email protected]}
  title        = {OpenSpeech: Open-Source Toolkit for End-to-End Speech Recognition},
  howpublished = {\url{https://github.com/sooftware/OpenSpeech}},
  docs         = {\url{https://sooftware.github.io/OpenSpeech}},
  year         = {2021}
}
You might also like...
An End-to-End Trainable Neural Network for Image-based Sequence Recognition and Its Application to Scene Text Recognition
An End-to-End Trainable Neural Network for Image-based Sequence Recognition and Its Application to Scene Text Recognition

CRNN paper:An End-to-End Trainable Neural Network for Image-based Sequence Recognition and Its Application to Scene Text Recognition 1. create your ow

Ptorch NLU, a Chinese text classification and sequence annotation toolkit, supports multi class and multi label classification tasks of Chinese long text and short text, and supports sequence annotation tasks such as Chinese named entity recognition, part of speech tagging and word segmentation.

Pytorch-NLU,一个中文文本分类、序列标注工具包,支持中文长文本、短文本的多类、多标签分类任务,支持中文命名实体识别、词性标注、分词等序列标注任务。 Ptorch NLU, a Chinese text classification and sequence annotation toolkit, supports multi class and multi label classification tasks of Chinese long text and short text, and supports sequence annotation tasks such as Chinese named entity recognition, part of speech tagging and word segmentation.

Text to speech is a process to convert any text into voice. Text to speech project takes words on digital devices and convert them into audio. Here I have used Google-text-to-speech library popularly known as gTTS library to convert text file to .mp3 file. Hope you like my project!
A PyTorch Implementation of End-to-End Models for Speech-to-Text

speech Speech is an open-source package to build end-to-end models for automatic speech recognition. Sequence-to-sequence models with attention, Conne

An open source library for deep learning end-to-end dialog systems and chatbots.
An open source library for deep learning end-to-end dialog systems and chatbots.

DeepPavlov is an open-source conversational AI library built on TensorFlow, Keras and PyTorch. DeepPavlov is designed for development of production re

An open source library for deep learning end-to-end dialog systems and chatbots.
An open source library for deep learning end-to-end dialog systems and chatbots.

DeepPavlov is an open-source conversational AI library built on TensorFlow, Keras and PyTorch. DeepPavlov is designed for development of production re

An open source library for deep learning end-to-end dialog systems and chatbots.
An open source library for deep learning end-to-end dialog systems and chatbots.

DeepPavlov is an open-source conversational AI library built on TensorFlow, Keras and PyTorch. DeepPavlov is designed for development of production re

PhoNLP: A BERT-based multi-task learning toolkit for part-of-speech tagging, named entity recognition and dependency parsing
PhoNLP: A BERT-based multi-task learning toolkit for part-of-speech tagging, named entity recognition and dependency parsing

PhoNLP is a multi-task learning model for joint part-of-speech (POS) tagging, named entity recognition (NER) and dependency parsing. Experiments on Vietnamese benchmark datasets show that PhoNLP produces state-of-the-art results, outperforming a single-task learning approach that fine-tunes the pre-trained Vietnamese language model PhoBERT for each task independently.

Releases(v0.3.0)
Owner
Soohwan Kim
Toward human-like A.I.
Soohwan Kim
DLO8012: Natural Language Processing & CSL804: Computational Lab - II

NATURAL-LANGUAGE-PROCESSING-AND-COMPUTATIONAL-LAB-II DLO8012: NLP & CSL804: CL-II [SEMESTER VIII] Syllabus NLP - Reference Books THE WALL MEGA SATISH

AMEY THAKUR 7 Apr 28, 2022
Pre-Training with Whole Word Masking for Chinese BERT

Pre-Training with Whole Word Masking for Chinese BERT

Yiming Cui 7.7k Dec 31, 2022
Perform sentiment analysis and keyword extraction on Craigslist listings

craiglist-helper synopsis Perform sentiment analysis and keyword extraction on Craigslist listings Background I love Craigslist. I've found most of my

Mark Musil 1 Nov 08, 2021
Code for the paper "Flexible Generation of Natural Language Deductions"

Code for the paper "Flexible Generation of Natural Language Deductions"

Kaj Bostrom 12 Nov 11, 2022
Text vectorization tool to outperform TFIDF for classification tasks

WHAT: Supervised text vectorization tool Textvec is a text vectorization tool, with the aim to implement all the "classic" text vectorization NLP meth

186 Dec 29, 2022
String Gen + Word Checker

Creates random strings and checks if any of them are a real words. Mostly a waste of time ngl but it is cool to see it work and the fact that it can generate a real random word within10sec

1 Jan 06, 2022
This is the library for the Unbounded Interleaved-State Recurrent Neural Network (UIS-RNN) algorithm, corresponding to the paper Fully Supervised Speaker Diarization.

UIS-RNN Overview This is the library for the Unbounded Interleaved-State Recurrent Neural Network (UIS-RNN) algorithm. UIS-RNN solves the problem of s

Google 1.4k Dec 28, 2022
Ecommerce product title recognition package

revizor This package solves task of splitting product title string into components, like type, brand, model and article (or SKU or product code or you

Bureaucratic Labs 16 Mar 03, 2022
A library that integrates huggingface transformers with the world of fastai, giving fastai devs everything they need to train, evaluate, and deploy transformer specific models.

blurr A library that integrates huggingface transformers with version 2 of the fastai framework Install You can now pip install blurr via pip install

ohmeow 253 Dec 31, 2022
A Lightweight NLP Data Loader for All Deep Learning Frameworks in Python

LineFlow: Framework-Agnostic NLP Data Loader in Python LineFlow is a simple text dataset loader for NLP deep learning tasks. LineFlow was designed to

TofuNLP 177 Jan 04, 2023
Code for the paper "BERT Loses Patience: Fast and Robust Inference with Early Exit".

Patience-based Early Exit Code for the paper "BERT Loses Patience: Fast and Robust Inference with Early Exit". NEWS: We now have a better and tidier i

Kevin Canwen Xu 54 Jan 04, 2023
Beyond Masking: Demystifying Token-Based Pre-Training for Vision Transformers

beyond masking Beyond Masking: Demystifying Token-Based Pre-Training for Vision Transformers The code is coming Figure 1: Pipeline of token-based pre-

Yunjie Tian 23 Sep 27, 2022
Rethinking the Truly Unsupervised Image-to-Image Translation - Official PyTorch Implementation (ICCV 2021)

Rethinking the Truly Unsupervised Image-to-Image Translation (ICCV 2021) Each image is generated with the source image in the left and the average sty

Clova AI Research 436 Dec 27, 2022
Natural language computational chemistry command line interface.

nlcc Install pip install nlcc Must have Open-AI Codex key: export OPENAI_API_KEY=your key here then nlcc key bindings ctrl-w copy to clipboard (Note

Andrew White 37 Dec 14, 2022
MRC approach for Aspect-based Sentiment Analysis (ABSA)

B-MRC MRC approach for Aspect-based Sentiment Analysis (ABSA) Paper: Bidirectional Machine Reading Comprehension for Aspect Sentiment Triplet Extracti

Phuc Phan 1 Apr 05, 2022
An extensive UI tool built using new data scraped from BBC News

BBC-News-Analyzer An extensive UI tool built using new data scraped from BBC New

Antoreep Jana 1 Dec 31, 2021
Original implementation of the pooling method introduced in "Speaker embeddings by modeling channel-wise correlations"

Speaker-Embeddings-Correlation-Pooling This is the original implementation of the pooling method introduced in "Speaker embeddings by modeling channel

Themos Stafylakis 10 Apr 30, 2022
CodeBERT: A Pre-Trained Model for Programming and Natural Languages.

CodeBERT This repo provides the code for reproducing the experiments in CodeBERT: A Pre-Trained Model for Programming and Natural Languages. CodeBERT

Microsoft 1k Jan 03, 2023
CPC-big and k-means clustering for zero-resource speech processing

The CPC-big model and k-means checkpoints used in Analyzing Speaker Information in Self-Supervised Models to Improve Zero-Resource Speech Processing.

Benjamin van Niekerk 5 Nov 23, 2022