MCPcopy Index your code
hub / github.com/jadore801120/attention-is-all-you-need-pytorch

github.com/jadore801120/attention-is-all-you-need-pytorch @main sqlite

repository ↗ · DeepWiki ↗
89 symbols 242 edges 13 files 37 documented · 42%
README

Attention is all you need: A Pytorch Implementation

This is a PyTorch implementation of the Transformer model in "Attention is All You Need" (Ashish Vaswani, Noam Shazeer, Niki Parmar, Jakob Uszkoreit, Llion Jones, Aidan N. Gomez, Lukasz Kaiser, Illia Polosukhin, arxiv, 2017).

A novel sequence to sequence framework utilizes the self-attention mechanism, instead of Convolution operation or Recurrent structure, and achieve the state-of-the-art performance on WMT 2014 English-to-German translation task. (2017/06/12)

The official Tensorflow Implementation can be found in: tensorflow/tensor2tensor.

To learn more about self-attention mechanism, you could read "A Structured Self-attentive Sentence Embedding".

The project support training and translation with trained model now.

Note that this project is still a work in progress.

BPE related parts are not yet fully tested.

If there is any suggestion or error, feel free to fire an issue to let me know. :)

Usage

WMT'16 Multimodal Translation: de-en

An example of training for the WMT'16 Multimodal Translation task (http://www.statmt.org/wmt16/multimodal-task.html).

0) Download the spacy language model.

# conda install -c conda-forge spacy 
python -m spacy download en
python -m spacy download de

1) Preprocess the data with torchtext and spacy.

python preprocess.py -lang_src de -lang_trg en -share_vocab -save_data m30k_deen_shr.pkl

2) Train the model

python train.py -data_pkl m30k_deen_shr.pkl -log m30k_deen_shr -embs_share_weight -proj_share_weight -label_smoothing -output_dir output -b 256 -warmup 128000 -epoch 400

3) Test the model

python translate.py -data_pkl m30k_deen_shr.pkl -model trained.chkpt -output prediction.txt

[(WIP)] WMT'17 Multimodal Translation: de-en w/ BPE

1) Download and preprocess the data with bpe:

Since the interfaces is not unified, you need to switch the main function call from main_wo_bpe to main.

python preprocess.py -raw_dir /tmp/raw_deen -data_dir ./bpe_deen -save_data bpe_vocab.pkl -codes codes.txt -prefix deen

2) Train the model

python train.py -data_pkl ./bpe_deen/bpe_vocab.pkl -train_path ./bpe_deen/deen-train -val_path ./bpe_deen/deen-val -log deen_bpe -embs_share_weight -proj_share_weight -label_smoothing -output_dir output -b 256 -warmup 128000 -epoch 400

3) Test the model (not ready)

  • TODO:
    • Load vocabulary.
    • Perform decoding after the translation.

Performance

Training

  • Parameter settings:
  • batch size 256
  • warmup step 4000
  • epoch 200
  • lr_mul 0.5
  • label smoothing
  • do not apply BPE and shared vocabulary
  • target embedding / pre-softmax linear layer weight sharing.

Testing

- coming soon.

TODO

  • Evaluation on the generated text.
  • Attention weight plot.

Acknowledgement

  • The byte pair encoding parts are borrowed from subword-nmt.
  • The project structure, some scripts and the dataset preprocessing steps are heavily borrowed from OpenNMT/OpenNMT-py.
  • Thanks for the suggestions from @srush, @iamalbert, @Zessay, @JulesGM, @ZiJianZhao, and @huanghoujing.

Core symbols most depended-on inside this repo

file_exist
called by 5
preprocess.py
get_raw_files
called by 3
preprocess.py
compile_files
called by 3
preprocess.py
encode_files
called by 3
preprocess.py
prune_stats
called by 3
learn_bpe.py
get_pad_mask
called by 3
transformer/Models.py
recursive_split
called by 2
apply_bpe.py
cal_performance
called by 2
train.py

Shape

Function 40
Method 36
Class 13

Languages

Python100%

Modules by API surface

transformer/Models.py16 symbols
preprocess.py15 symbols
train.py12 symbols
apply_bpe.py11 symbols
transformer/Translator.py6 symbols
transformer/SubLayers.py6 symbols
transformer/Optim.py6 symbols
transformer/Layers.py6 symbols
learn_bpe.py6 symbols
transformer/Modules.py3 symbols
translate.py2 symbols

Dependencies from manifests, versioned

dill0.3.3 · 1×
msgpack-numpy0.4.7.1 · 1×
msgpack-python1.0.2 · 1×
python3.6.12 · 1×
pytorch1.3.1 · 1×
spacy2.3.5 · 1×
tensorboard1.14.0 · 1×
tensorflow1.14.0 · 1×
terminado0.9.2 · 1×
tqdm4.56.0 · 1×

For agents

$ claude mcp add attention-is-all-you-need-pytorch \
  -- python -m otcore.mcp_server <graph>

⬇ download graph artifact