PyTorch Implementation of Meta-StyleSpeech : Multi-Speaker Adaptive Text-to-Speech Generation

Overview

StyleSpeech - PyTorch Implementation

PyTorch Implementation of Meta-StyleSpeech : Multi-Speaker Adaptive Text-to-Speech Generation.

Status (2021.06.09)

  • StyleSpeech
  • Meta-StyleSpeech

Quickstart

Dependencies

You can install the Python dependencies with

pip3 install -r requirements.txt

Inference

You have to download the pretrained models and put them in output/ckpt/LibriTTS/.

For English single-speaker TTS, run

python3 synthesize.py --text "YOUR_DESIRED_TEXT" --ref_audio path/to/reference_audio.wav --speaker_id <SPEAKER_ID> --restore_step 100000 --mode single -p config/LibriTTS/preprocess.yaml -m config/LibriTTS/model.yaml -t config/LibriTTS/train.yaml

The generated utterances will be put in output/result/. Your synthesized speech will have ref_audio's style spoken by speaker_id speaker. Note that the controllability of speakers is not a vital interest of StyleSpeech.

Batch Inference

Batch inference is also supported, try

python3 synthesize.py --source preprocessed_data/LibriTTS/val.txt --restore_step 100000 --mode batch -p config/LibriTTS/preprocess.yaml -m config/LibriTTS/model.yaml -t config/LibriTTS/train.yaml

to synthesize all utterances in preprocessed_data/LibriTTS/val.txt. This can be viewed as a reconstruction of validation datasets referring to themselves for the reference style.

Controllability

The pitch/volume/speaking rate of the synthesized utterances can be controlled by specifying the desired pitch/energy/duration ratios. For example, one can increase the speaking rate by 20 % and decrease the volume by 20 % by

python3 synthesize.py --text "YOUR_DESIRED_TEXT" --restore_step 100000 --mode single -p config/LibriTTS/preprocess.yaml -m config/LibriTTS/model.yaml -t config/LibriTTS/train.yaml --duration_control 0.8 --energy_control 0.8

Note that the controllability is originated from FastSpeech2 and not a vital interest of StyleSpeech.

Training

Datasets

The supported datasets are

  • LibriTTS: a multi-speaker English dataset containing 585 hours of speech by 2456 speakers.
  • (will be added more)

Preprocessing

First, run

python3 prepare_align.py config/LibriTTS/preprocess.yaml

for some preparations.

In this implementation, Montreal Forced Aligner (MFA) is used to obtain the alignments between the utterances and the phoneme sequences.

Download the official MFA package and run

./montreal-forced-aligner/bin/mfa_align raw_data/LibriTTS/ lexicon/librispeech-lexicon.txt english preprocessed_data/LibriTTS

or

./montreal-forced-aligner/bin/mfa_train_and_align raw_data/LibriTTS/ lexicon/librispeech-lexicon.txt preprocessed_data/LibriTTS

to align the corpus and then run the preprocessing script.

python3 preprocess.py config/LibriTTS/preprocess.yaml

Training

Train your model with

python3 train.py -p config/LibriTTS/preprocess.yaml -m config/LibriTTS/model.yaml -t config/LibriTTS/train.yaml

TensorBoard

Use

tensorboard --logdir output/log/LibriTTS

to serve TensorBoard on your localhost. The loss curves, synthesized mel-spectrograms, and audios are shown.

Implementation Issues

  1. Use 22050Hz sampling rate instead of 16kHz.
  2. Add one fully connected layer at the beginning of Mel-Style Encoder to upsample input mel-spectrogram from 80 to 128.
  3. The Paper doesn't mention speaker embedding for the Generator, but I add it as a normal multi-speaker TTS. And the style_prototype of Meta-StyleSpeech can be seen as a speaker embedding space.
  4. Use HiFi-GAN instead of MelGAN for vocoding.

Citation

@misc{lee2021stylespeech,
  author = {Lee, Keon},
  title = {StyleSpeech},
  year = {2021},
  publisher = {GitHub},
  journal = {GitHub repository},
  howpublished = {\url{https://github.com/keonlee9420/StyleSpeech}}
}

References

Comments
  • What is the perfermance compared with Adaspeech

    What is the perfermance compared with Adaspeech

    Thank you for your great work and share. Your work looks differ form adaspeech and NAUTILUS. You use GANs which i did not see in other papers regarding adaptative TTS. Have you compare this method with adaspeech1/2? how about the mos and similarity?

    opened by Liujingxiu23 10
  • The size of tensor a (xx) must match the size of tensor b (yy)

    The size of tensor a (xx) must match the size of tensor b (yy)

    Hi I try to run your project. I use cuda 10.1, all requirements are installed (with torch 1.8.1), all models are preloaded. But i have an error: python3 synthesize.py --text "Hello world" --restore_step 200000 --mode single -p config/LibriTTS/preprocess.yaml -m config/LibriTTS/model.yaml -t config/LibriTTS/train.yaml --duration_control 0.8 --energy_control 0.8 --ref_audio ref.wav

    Removing weight norm...
    Raw Text Sequence: Hello world
    Phoneme Sequence: {HH AH0 L OW1 W ER1 L D}
    Traceback (most recent call last):
      File "synthesize.py", line 268, in <module>
        synthesize(model, args.restore_step, configs, vocoder, batchs, control_values)
      File "synthesize.py", line 152, in synthesize
        d_control=duration_control
      File "/usr/local/lib/python3.6/dist-packages/torch/nn/modules/module.py", line 889, in _call_impl
        result = self.forward(input, *kwargs)
      File "/usr/local/work/model/StyleSpeech.py", line 144, in forward
        d_control,
      File "/usr/local/work/model/StyleSpeech.py", line 91, in G
        output, mel_masks = self.mel_decoder(output, style_vector, mel_masks)
      File "/usr/local/lib/python3.6/dist-packages/torch/nn/modules/module.py", line 889, in _call_impl
        result = self.forward(input, kwargs)
      File "/usr/local/work/model/modules.py", line 307, in forward
        enc_seq = self.mel_prenet(enc_seq, mask)
      File "/usr/local/lib/python3.6/dist-packages/torch/nn/modules/module.py", line 889, in _call_impl
        result = self.forward(input, kwargs)
      File "/usr/local/work/model/modules.py", line 259, in forward
        x = x.masked_fill(mask.unsqueeze(-1), 0)
    RuntimeError: The size of tensor a (44) must match the size of tensor b (47) at non-singleton dimension 1
    
    opened by DiDimus 9
  • VCTK datasets

    VCTK datasets

    Hi, I note your paper evaluates the models' performance on VCTK datasets, but I not see the process file about VCTK. Hence, could you share the files, thank you very much.

    opened by XXXHUA 7
  • training error

    training error

    Thanks for your sharing!

    I tried both naive and main branches using your checkpoints, it seems the former one is much better. So I trained AISHELL3 models with small changes on your code and the synthesized waves are good for me.

    However when I add my own data into AISHELL3, some error occurred: Training: 0%| | 3105/900000 [32:05<154:31:49, 1.61it/s] Epoch 2: 69%|██████████████████████▏ | 318/459 [05:02<02:14, 1.05it/s] File "train.py", line 211, in main(args, configs) File "train.py", line 87, in main output = model(*(batch[2:])) File "/opt/conda/lib/python3.8/site-packages/torch/nn/modules/module.py", line 889, in _call_impl result = self.forward(*input, **kwargs) File "/opt/conda/lib/python3.8/site-packages/torch/nn/parallel/data_parallel.py", line 165, in forward return self.module(*inputs[0], **kwargs[0]) File "/opt/conda/lib/python3.8/site-packages/torch/nn/modules/module.py", line 889, in _call_impl result = self.forward(*input, **kwargs) File "/workspace/StyleSpeech-naive/model/StyleSpeech.py", line 83, in forward ) = self.variance_adaptor( File "/opt/conda/lib/python3.8/site-packages/torch/nn/modules/module.py", line 889, in _call_impl result = self.forward(*input, **kwargs) File "/workspace/StyleSpeech-naive/model/modules.py", line 404, in forward x = x + pitch_embedding RuntimeError: The size of tensor a (52) must match the size of tensor b (53) at non-singleton dimension 1

    I only replaced two speakers and preprocessed data the same as the in readme.

    Do you have any advice for this error ? Any suggestion is appreciated.

    opened by MingZJU 6
  • the synthesis result is bad when using pretrain model

    the synthesis result is bad when using pretrain model

    hello sir, thanks for your sharing.

    i meet a problem when i using pretrain model to synthsize demo file. the effect of synthesized wav is so bad.

    do you konw what problem happened?

    pretrain_model: output/ckpt/LibriTTS_meta_learner/200000.pth.tar ref_audio: ref_audio.zip demo_txt: {Promises are often like the butterfly, which disappear after beautiful hover. No matter the ending is perfect or not, you cannot disappear from my world.} demo_wav:demo.zip

    opened by mnfutao 4
  • Maybe style_prototype can instead of ref_mel?

    Maybe style_prototype can instead of ref_mel?

    hello @keonlee9420 , thanks for your contribution on StyleSpeech. When I read your paper and source code, I think that the style_prototype (which is an embedding matrix) maybe can instread of the ref_mel, because there is a CE-loss between style_prototype and style_vector, which can control this embedding matrix close to style. In short, we can give a speaker id to synthesize this speaker's wave. Is it right?

    opened by forwiat 3
  • architecture shows bad results

    architecture shows bad results

    Hi, i have completely repeated your steps for learning. During training, style speech loss fell down, but after learning began, meta style speech loss began to grow up. Can you help with training the model? I can describe my steps in more detail.

    opened by e0xextazy 2
  • UnboundLocalError: local variable 'pitch' referenced before assignment

    UnboundLocalError: local variable 'pitch' referenced before assignment

    Hi, when I run preprocessor.py, I have this problem: /preprocessor.py", line 92, in build_from_path if len(pitch) > 0: UnboundLocalError: local variable 'pitch' referenced before assignment When I try to add a global declaration to the function, it shows NameError: name 'pitch' is not defined How should this be resolved? I would be grateful if I could get your guidance soon.

    opened by Summerxu86 0
  • How can I improve the synthesized results?

    How can I improve the synthesized results?

    I have trained the model for 200k steps, and still, the synthesised results are extremely bad. loss_curve This is what my loss curve looks like. Can you help me with what can I do now to improve my synthesized audio results?

    opened by sanjeevani279 1
  • RuntimeError: Error(s) in loading state_dict for Stylespeech

    RuntimeError: Error(s) in loading state_dict for Stylespeech

    Hi @keonlee9420, I am getting the following error, while running the naive branch :

    Traceback (most recent call last):
      File "synthesize.py", line 242, in <module>
        model = get_model(args, configs, device, train=False)
      File "/home/azureuser/aditya_workspace/stylespeech_keonlee_naive/utils/model.py", line 21, in get_model
        model.load_state_dict(ckpt["model"], strict=True)
      File "/home/azureuser/aditya_workspace/keonlee/lib/python3.8/site-packages/torch/nn/modules/module.py", line 1223, in load_state_dict
        raise RuntimeError('Error(s) in loading state_dict for {}:\n\t{}'.format(
    RuntimeError: Error(s) in loading state_dict for StyleSpeech:
    	Missing key(s) in state_dict: "D_t.mel_linear.0.fc_layer.fc_layer.linear.weight_orig", "D_t.mel_linear.0.fc_layer.fc_layer.linear.weight", "D_t.mel_linear.0.fc_layer.fc_layer.linear.weight_u", "D_t.mel_linear.0.fc_layer.fc_layer.linear.weight_orig", "D_t.mel_linear.0.fc_layer.fc_layer.linear.weight_u", "D_t.mel_linear.0.fc_layer.fc_layer.linear.weight_v", "D_t.mel_linear.1.fc_layer.fc_layer.linear.weight_orig", "D_t.mel_linear.1.fc_layer.fc_layer.linear.weight", "D_t.mel_linear.1.fc_layer.fc_layer.linear.weight_u", "D_t.mel_linear.1.fc_layer.fc_layer.linear.weight_orig", "D_t.mel_linear.1.fc_layer.fc_layer.linear.weight_u", "D_t.mel_linear.1.fc_layer.fc_layer.linear.weight_v", "D_t.discriminator_stack.0.fc_layer.fc_layer.linear.weight_orig", "D_t.discriminator_stack.0.fc_layer.fc_layer.linear.weight", "D_t.discriminator_stack.0.fc_layer.fc_layer.linear.weight_u", "D_t.discriminator_stack.0.fc_layer.fc_layer.linear.weight_orig", "D_t.discriminator_stack.0.fc_layer.fc_layer.linear.weight_u", "D_t.discriminator_stack.0.fc_layer.fc_layer.linear.weight_v", "D_t.discriminator_stack.1.fc_layer.fc_layer.linear.weight_orig", "D_t.discriminator_stack.1.fc_layer.fc_layer.linear.weight", "D_t.discriminator_stack.1.fc_layer.fc_layer.linear.weight_u", "D_t.discriminator_stack.1.fc_layer.fc_layer.linear.weight_orig", "D_t.discriminator_stack.1.fc_layer.fc_layer.linear.weight_u", "D_t.discriminator_stack.1.fc_layer.fc_layer.linear.weight_v", "D_t.discriminator_stack.2.fc_layer.fc_layer.linear.weight_orig", "D_t.discriminator_stack.2.fc_layer.fc_layer.linear.weight", "D_t.discriminator_stack.2.fc_layer.fc_layer.linear.weight_u", "D_t.discriminator_stack.2.fc_layer.fc_layer.linear.weight_orig", "D_t.discriminator_stack.2.fc_layer.fc_layer.linear.weight_u", "D_t.discriminator_stack.2.fc_layer.fc_layer.linear.weight_v", "D_t.final_linear.fc_layer.fc_layer.linear.weight_orig", "D_t.final_linear.fc_layer.fc_layer.linear.weight", "D_t.final_linear.fc_layer.fc_layer.linear.weight_u", "D_t.final_linear.fc_layer.fc_layer.linear.weight_orig", "D_t.final_linear.fc_layer.fc_layer.linear.weight_u", "D_t.final_linear.fc_layer.fc_layer.linear.weight_v", "D_s.fc_1.fc_layer.fc_layer.linear.weight_orig", "D_s.fc_1.fc_layer.fc_layer.linear.weight", "D_s.fc_1.fc_layer.fc_layer.linear.weight_u", "D_s.fc_1.fc_layer.fc_layer.linear.weight_orig", "D_s.fc_1.fc_layer.fc_layer.linear.weight_u", "D_s.fc_1.fc_layer.fc_layer.linear.weight_v", "D_s.spectral_stack.0.fc_layer.fc_layer.linear.weight_orig", "D_s.spectral_stack.0.fc_layer.fc_layer.linear.weight", "D_s.spectral_stack.0.fc_layer.fc_layer.linear.weight_u", "D_s.spectral_stack.0.fc_layer.fc_layer.linear.weight_orig", "D_s.spectral_stack.0.fc_layer.fc_layer.linear.weight_u", "D_s.spectral_stack.0.fc_layer.fc_layer.linear.weight_v", "D_s.spectral_stack.1.fc_layer.fc_layer.linear.weight_orig", "D_s.spectral_stack.1.fc_layer.fc_layer.linear.weight", "D_s.spectral_stack.1.fc_layer.fc_layer.linear.weight_u", "D_s.spectral_stack.1.fc_layer.fc_layer.linear.weight_orig", "D_s.spectral_stack.1.fc_layer.fc_layer.linear.weight_u", "D_s.spectral_stack.1.fc_layer.fc_layer.linear.weight_v", "D_s.temporal_stack.0.conv_layer.conv_layer.conv.weight_orig", "D_s.temporal_stack.0.conv_layer.conv_layer.conv.weight", "D_s.temporal_stack.0.conv_layer.conv_layer.conv.weight_u", "D_s.temporal_stack.0.conv_layer.conv_layer.conv.bias", "D_s.temporal_stack.0.conv_layer.conv_layer.conv.weight_orig", "D_s.temporal_stack.0.conv_layer.conv_layer.conv.weight_u", "D_s.temporal_stack.0.conv_layer.conv_layer.conv.weight_v", "D_s.temporal_stack.1.conv_layer.conv_layer.conv.weight_orig", "D_s.temporal_stack.1.conv_layer.conv_layer.conv.weight", "D_s.temporal_stack.1.conv_layer.conv_layer.conv.weight_u", "D_s.temporal_stack.1.conv_layer.conv_layer.conv.bias", "D_s.temporal_stack.1.conv_layer.conv_layer.conv.weight_orig", "D_s.temporal_stack.1.conv_layer.conv_layer.conv.weight_u", "D_s.temporal_stack.1.conv_layer.conv_layer.conv.weight_v", "D_s.slf_attn_stack.0.w_qs.linear.weight_orig", "D_s.slf_attn_stack.0.w_qs.linear.weight", "D_s.slf_attn_stack.0.w_qs.linear.weight_u", "D_s.slf_attn_stack.0.w_qs.linear.weight_orig", "D_s.slf_attn_stack.0.w_qs.linear.weight_u", "D_s.slf_attn_stack.0.w_qs.linear.weight_v", "D_s.slf_attn_stack.0.w_ks.linear.weight_orig", "D_s.slf_attn_stack.0.w_ks.linear.weight", "D_s.slf_attn_stack.0.w_ks.linear.weight_u", "D_s.slf_attn_stack.0.w_ks.linear.weight_orig", "D_s.slf_attn_stack.0.w_ks.linear.weight_u", "D_s.slf_attn_stack.0.w_ks.linear.weight_v", "D_s.slf_attn_stack.0.w_vs.linear.weight_orig", "D_s.slf_attn_stack.0.w_vs.linear.weight", "D_s.slf_attn_stack.0.w_vs.linear.weight_u", "D_s.slf_attn_stack.0.w_vs.linear.weight_orig", "D_s.slf_attn_stack.0.w_vs.linear.weight_u", "D_s.slf_attn_stack.0.w_vs.linear.weight_v", "D_s.slf_attn_stack.0.layer_norm.weight", "D_s.slf_attn_stack.0.layer_norm.bias", "D_s.slf_attn_stack.0.fc.linear.weight_orig", "D_s.slf_attn_stack.0.fc.linear.weight", "D_s.slf_attn_stack.0.fc.linear.weight_u", "D_s.slf_attn_stack.0.fc.linear.weight_orig", "D_s.slf_attn_stack.0.fc.linear.weight_u", "D_s.slf_attn_stack.0.fc.linear.weight_v", "D_s.fc_2.fc_layer.fc_layer.linear.weight_orig", "D_s.fc_2.fc_layer.fc_layer.linear.weight", "D_s.fc_2.fc_layer.fc_layer.linear.weight_u", "D_s.fc_2.fc_layer.fc_layer.linear.weight_orig", "D_s.fc_2.fc_layer.fc_layer.linear.weight_u", "D_s.fc_2.fc_layer.fc_layer.linear.weight_v", "D_s.V.fc_layer.fc_layer.linear.weight", "D_s.w_b_0.fc_layer.fc_layer.linear.weight", "D_s.w_b_0.fc_layer.fc_layer.linear.bias", "style_prototype.weight".
    	Unexpected key(s) in state_dict: "speaker_emb.weight".
    

    Can you help with this, seems like the pre-trained weights are old and do not conform to the current architecture.

    opened by sirius0503 1
  • time dimension doesn't match

    time dimension doesn't match

    ^MTraining: 0%| | 0/200000 [00:00<?, ?it/s] ^MEpoch 1: 0%| | 0/454 [00:00<?, ?it/s]^[[APrepare training ... Number of StyleSpeech Parameters: 28197333 Removing weight norm... Traceback (most recent call last): File "train.py", line 224, in main(args, configs) File "train.py", line 98, in main output = (None, None, model((batch[2:-5]))) File "/share/mini1/sw/std/python/anaconda3-2019.07/v3.7/envs/StyleSpeech/lib/python3.7/site-packages/torch/nn/modules/module.py", line 889, in _call_impl result = self.forward(*input, **kwargs) File "/share/mini1/sw/std/python/anaconda3-2019.07/v3.7/envs/StyleSpeech/lib/python3.7/site-packages/torch/nn/parallel/data_parallel.py", line 165, in forward return self.module(*inputs[0], **kwargs[0]) File "/share/mini1/sw/std/python/anaconda3-2019.07/v3.7/envs/StyleSpeech/lib/python3.7/site-packages/torch/nn/modules/module.py", line 889, in _call_impl result = self.forward(*input, **kwargs) File "/share/mini1/res/t/vc/studio/timap-en/libritts/StyleSpeech/model/StyleSpeech.py", line 144, in forward d_control, File "/share/mini1/res/t/vc/studio/timap-en/libritts/StyleSpeech/model/StyleSpeech.py", line 88, in G d_control, File "/share/mini1/sw/std/python/anaconda3-2019.07/v3.7/envs/StyleSpeech/lib/python3.7/site-packages/torch/nn/modules/module.py", line 889, in _call_impl result = self.forward(*input, **kwargs) File "/share/mini1/res/t/vc/studio/timap-en/libritts/StyleSpeech/model/modules.py", line 417, in forward x = x + pitch_embedding RuntimeError: The size of tensor a (132) must match the size of tensor b (130) at non-singleton dimension 1 ^MTraining: 0%| | 1/200000 [00:02<166:02:12, 2.99s/it]

    I think it might because of mfa I used. As mentioned in https://montreal-forced-aligner.readthedocs.io/en/latest/getting_started.html, I installed mfa through conda.

    Then I used mfa align raw_data/LibriTTS lexicon/librispeech-lexicon.txt english preprocessed_data/LibriTTS instead of the way you showed. But I can't find a way to run it as the way you showed, because I installed mfa through conda.

    opened by MingjieChen 24
Releases(v1.0.2)
Owner
Keon Lee
Expressive Speech Synthesis | Conversational AI | Open-domain Dialog | NLP | Generative Models | Empathic Computing | HCI
Keon Lee
Blender addon - Scrub timeline from viewport with a shortcut

Viewport scrub timeline Move in the timeline directly in viewport and snap to nearest keyframe Note : This standalone feature will be added in the nat

Samuel Bernou 40 Nov 07, 2022
Tevatron is a simple and efficient toolkit for training and running dense retrievers with deep language models.

Tevatron Tevatron is a simple and efficient toolkit for training and running dense retrievers with deep language models. The toolkit has a modularized

texttron 193 Jan 04, 2023
This converter will create the exact measure for your cappuccino recipe from the grandiose Rafaella Ballerini!

About CappuccinoJs This converter will create the exact measure for your cappuccino recipe from the grandiose Rafaella Ballerini! Este conversor criar

Arthur Ottoni Ribeiro 48 Nov 15, 2022
This project converts your human voice input to its text transcript and to an automated voice too.

Human Voice to Automated Voice & Text Introduction: In this project, whenever you'll speak, it will turn your voice into a robot voice and furthermore

Hassan Shahzad 3 Oct 15, 2021
Guide to using pre-trained large language models of source code

Large Models of Source Code I occasionally train and publicly release large neural language models on programs, including PolyCoder. Here, I describe

Vincent Hellendoorn 947 Dec 28, 2022
Contains descriptions and code of the mini-projects developed in various programming languages

TexttoSpeechAndLanguageTranslator-project introduction A pleasant application where the client will be given buttons like play,reset and exit. The cli

Adarsh Reddy 1 Dec 22, 2021
结巴中文分词

jieba “结巴”中文分词:做最好的 Python 中文分词组件 "Jieba" (Chinese for "to stutter") Chinese text segmentation: built to be the best Python Chinese word segmentation

Sun Junyi 29.8k Jan 02, 2023
ConvBERT: Improving BERT with Span-based Dynamic Convolution

ConvBERT Introduction In this repo, we introduce a new architecture ConvBERT for pre-training based language model. The code is tested on a V100 GPU.

YITUTech 237 Dec 10, 2022
Crie tokens de autenticação íntegros e seguros com UToken.

UToken - Tokens seguros. UToken (ou Unhandleable Token) é uma bilioteca criada para ser utilizada na geração de tokens seguros e íntegros, ou seja, nã

Jaedson Silva 0 Nov 29, 2022
code for "AttentiveNAS Improving Neural Architecture Search via Attentive Sampling"

AttentiveNAS: Improving Neural Architecture Search via Attentive Sampling This repository contains PyTorch evaluation code, training code and pretrain

Facebook Research 94 Oct 26, 2022
ACL'22: Structured Pruning Learns Compact and Accurate Models

☕ CoFiPruning: Structured Pruning Learns Compact and Accurate Models This repository contains the code and pruned models for our ACL'22 paper Structur

Princeton Natural Language Processing 130 Jan 04, 2023
SpikeX - SpaCy Pipes for Knowledge Extraction

SpikeX is a collection of pipes ready to be plugged in a spaCy pipeline. It aims to help in building knowledge extraction tools with almost-zero effort.

Erre Quadro Srl 384 Dec 12, 2022
本插件是pcrjjc插件的重置版,可以独立于后端api运行

pcrjjc2 本插件是pcrjjc重置版,不需要使用其他后端api,但是需要自行配置客户端 本项目基于AGPL v3协议开源,由于项目特殊性,禁止基于本项目的任何商业行为 配置方法 环境需求:.net framework 4.5及以上 jre8 别忘了装jre8 别忘了装jre8 别忘了装jre8

132 Dec 26, 2022
Language-Agnostic SEntence Representations

LASER Language-Agnostic SEntence Representations LASER is a library to calculate and use multilingual sentence embeddings. NEWS 2019/11/08 CCMatrix is

Facebook Research 3.2k Jan 04, 2023
Python library for Serbian Natural language processing (NLP)

SrbAI - Python biblioteka za procesiranje srpskog jezika SrbAI je projekat prikupljanja algoritama i modela za procesiranje srpskog jezika u jedinstve

Serbian AI Society 3 Nov 22, 2022
CoNLL-English NER Task (NER in English)

CoNLL-English NER Task en | ch Motivation Course Project review the pytorch framework and sequence-labeling task practice using the transformers of Hu

Kevin 2 Jan 14, 2022
Large-scale open domain KNOwledge grounded conVERsation system based on PaddlePaddle

Knover Knover is a toolkit for knowledge grounded dialogue generation based on PaddlePaddle. Knover allows researchers and developers to carry out eff

606 Dec 28, 2022
用Resnet101+GPT搭建一个玩王者荣耀的AI

基于pytorch框架用resnet101加GPT搭建AI玩王者荣耀 本源码模型主要用了SamLynnEvans Transformer 的源码的解码部分。以及pytorch自带的预训练模型"resnet101-5d3b4d8f.pth"

冯泉荔 2.2k Jan 03, 2023
A pytorch implementation of the ACL2019 paper "Simple and Effective Text Matching with Richer Alignment Features".

RE2 This is a pytorch implementation of the ACL 2019 paper "Simple and Effective Text Matching with Richer Alignment Features". The original Tensorflo

286 Jan 02, 2023
CVSS: A Massively Multilingual Speech-to-Speech Translation Corpus

CVSS: A Massively Multilingual Speech-to-Speech Translation Corpus CVSS is a massively multilingual-to-English speech-to-speech translation corpus, co

Google Research Datasets 118 Jan 06, 2023