Implementation of Vaswani, Ashish, et al. "Attention is all you need."

Overview

Attention Is All You Need Paper Implementation

This is my from-scratch implementation of the original transformer architecture from the following paper: Vaswani, Ashish, et al. "Attention is all you need." Advances in neural information processing systems. 2017.

Table of Contents

About

"We propose a new simple network architecture, the Transformer, based solely on attention mechanisms, dispensing with recurrence and convolutions entirely. " - Abstract

Transformers came to be a groundbreaking advance in neural network architectures which revolutionized what we can do with NLP and beyond. To name a few applications consider the application of BERT to Google search and GPT to Github Copilot. Those architectures are upgrades on the original transformer architecture described in this seminal paper. The goal of this repository is to provide an implementation that is easy to follow and understand while reading the paper. Setup is easy and everything is runnable on CPU for learning purposes.

✔️ Highly customizable configuration and training loop
✔️ Runnable on CPU and GPU
✔️ W&B integration for detailed logging of every metric
✔️ Pretrained models and their training details
✔️ Gradient Accumulation
✔️ Label smoothing
✔️ BPE and WordLevel Tokenizers
✔️ Dynamic Batching
✔️ Batch Dataset Processing
✔️ Bleu-score calculation during training
✔️ Documented dimensions for every step of the architecture
✔️ Shown progress of translation for an example after every epoch
✔️ Tutorial notebook (Coming soon...)

Setup

Environment

Using Miniconda/Anaconda:

  1. cd path_to_repo
  2. conda env create
  3. conda activate attention-is-all-you-need-paper

Note: Depending on your GPU you might need to switch cudatoolkit to version 10.2

Pretrained Models

To download the pretrained model and tokenizer run:

python scripts/download_pretrained.py

Note: If prompted about wandb setting select option 3

Usage

Training

Before starting training you can either choose a configuration out of available ones or create your own inside a single file src/config.py. The available parameters to customize, sorted by categories, are:

  • Run 🚅 :
    • RUN_NAME - Name of a training run
    • RUN_DESCRIPTION - Description of a training run
    • RUNS_FOLDER_PTH - Saving destination of a training run
  • Data 🔡 :
    • DATASET_SIZE - Number of examples you want to include from WMT14 en-de dataset (max 4,500,000)
    • TEST_PROPORTION - Test set proportion
    • MAX_SEQ_LEN - Maximum allowed sequence length
    • VOCAB_SIZE - Size of the vocabulary (good choice is dependant on the tokenizer)
    • TOKENIZER_TYPE - 'wordlevel' or 'bpe'
  • Training 🏋️‍♂️ :
    • BATCH_SIZE - Batch size
    • GRAD_ACCUMULATION_STEPS - Over how many batches to accumulate gradients before optimizing the parameters
    • WORKER_COUNT - Number of workers used in dataloaders
    • EPOCHS - Number of epochs
  • Optimizer 📉 :
    • BETAS - Adam beta parameter
    • EPS - Adam eps parameter
  • Scheduler ⏲️ :
    • N_WARMUP_STEPS - How many warmup steps to use in the scheduler
  • Model 🤖 :
    • D_MODEL - Model dimension
    • N_BLOCKS - Number of encoder and decoder blocks
    • N_HEADS - Number of heads in the Multi-Head attention mechanism
    • D_FF - Dimension of the Position Wise Feed Forward network
    • DROPOUT_PROBA - Dropout probability
  • Other 🧰 :
    • DEVICE - 'gpu' or 'cpu'
    • MODEL_SAVE_EPOCH_CNT - After how many epochs to save a model checkpoint
    • LABEL_SMOOTHING - Whether to apply label smoothing

Once you decide on the configuration edit the config_name in train.py and do:

$ cd src
$ python train.py

Inference

For inference I created a simple app with Streamlit which runs in your browser. Make sure to train or download the pretrained models beforehand. The app looks at the model directory for model and tokenizer checkpoints.

$ streamlit run app/inference_app.py
app.mp4

Data

Same WMT 2014 data is used for the English-to-German translation task. Dataset contains about 4,500,000 sentence pairs but you can manually specify the dataset size if you want to lower it and see some results faster. When training is initiated the dataset is automatically downloaded, preprocessed, tokenized and dataloaders are created. Also, a custom batch sampler is used for dynamic batching and padding of sentences of similar lengths which speeds up training. HuggingFace 🤗 datasets and tokenizers are used to achieve this very fast.

Architecture

The original transformer architecture presented in this paper consists of an encoder and decoder part purposely included to match the seq2seq problem type of machine translation. There are also encoder-only (e.g. BERT) and decoder-only (e.g. GPT) transformer architectures, those won't be covered here. One of the main features of transformers , in general, is parallelized sequence processing which RNN's lack. Main ingredient here is the attention mechanism which enables creating modified word representations (attention representations) that take into account the word's meaning in relation to other words in a sequence (e.g. the word "bank" can represent a financial institution or land along the edge of a river as in "river bank"). Depending on how we think about a word we may choose to represent it differently. This transcends the limits of traditional word embeddings.

For a detailed walkthrough of the architecture check the notebooks/tutorial.ipynb

Weights and Biases Logs

Weights and Biases is a very powerful tool for MLOps. I integrated it with this project to automatically provide very useful logs and visualizations when training. In fact, you can take a look at how the training looked for the pretrained models at this project link. All logs and visualizations are synced real time to the cloud.

When you start training you will be asked:

wandb: (1) Create W&B account
wandb: (2) Use an existing W&B account
wandb: (3) Don't visualize my results
wandb: Enter your choice: 

For creating and syncing the visualizations to the cloud you will need a W&B account. Creating an account and using it won't take you more than a minute and it's free. If don't want to visualize results select option 3.

Citation

Please use this bibtex if you want to cite this repository:

@misc{Koch2021attentionisallyouneed,
  author = {Koch, Brando},
  title = {attention-is-all-you-need},
  year = {2021},
  publisher = {GitHub},
  journal = {GitHub repository},
  howpublished = {\url{https://github.com/bkoch4142/MISSING}},
}

License

This repository is under an MIT License

License: MIT

Owner
Brando Koch
Machine Learning Engineer with experience in ML, DL , NLP & CV specializing in ConversationalAI & NLP.
Brando Koch
An original implementation of "MetaICL Learning to Learn In Context" by Sewon Min, Mike Lewis, Luke Zettlemoyer and Hannaneh Hajishirzi

MetaICL: Learning to Learn In Context This includes an original implementation of "MetaICL: Learning to Learn In Context" by Sewon Min, Mike Lewis, Lu

Meta Research 141 Jan 07, 2023
AAAI 2022 paper - Unifying Model Explainability and Robustness for Joint Text Classification and Rationale Extraction

AT-BMC Unifying Model Explainability and Robustness for Joint Text Classification and Rationale Extraction (AAAI 2022) Paper Prerequisites Install pac

16 Nov 26, 2022
Compares various time-series feature sets on computational performance, within-set structure, and between-set relationships.

feature-set-comp Compares various time-series feature sets on computational performance, within-set structure, and between-set relationships. Reposito

Trent Henderson 7 May 25, 2022
A web-based application for quick, scalable, and automated hyperparameter tuning and stacked ensembling in Python.

Xcessiv Xcessiv is a tool to help you create the biggest, craziest, and most excessive stacked ensembles you can think of. Stacked ensembles are simpl

Reiichiro Nakano 1.3k Nov 17, 2022
This repository is the offical Pytorch implementation of ContextPose: Context Modeling in 3D Human Pose Estimation: A Unified Perspective (CVPR 2021).

Context Modeling in 3D Human Pose Estimation: A Unified Perspective (CVPR 2021) Introduction This repository is the offical Pytorch implementation of

37 Nov 21, 2022
Is RobustBench/AutoAttack a suitable Benchmark for Adversarial Robustness?

Adversrial Machine Learning Benchmarks This code belongs to the papers: Is RobustBench/AutoAttack a suitable Benchmark for Adversarial Robustness? Det

Adversarial Machine Learning 9 Nov 27, 2022
code for TCL: Vision-Language Pre-Training with Triple Contrastive Learning, CVPR 2022

Vision-Language Pre-Training with Triple Contrastive Learning, CVPR 2022 News (03/16/2022) upload retrieval checkpoints finetuned on COCO and Flickr T

187 Jan 02, 2023
Pytorch Implementation of the paper "Cross-domain Correspondence Learning for Exemplar-based Image Translation"

CoCosNet Pytorch Implementation of the paper "Cross-domain Correspondence Learning for Exemplar-based Image Translation" (CVPR 2020 oral). Update: 202

Lingbo Yang 38 Sep 22, 2021
LSTC: Boosting Atomic Action Detection with Long-Short-Term Context

LSTC: Boosting Atomic Action Detection with Long-Short-Term Context This Repository contains the code on AVA of our ACM MM 2021 paper: LSTC: Boosting

Tencent YouTu Research 9 Oct 11, 2022
Mercer Gaussian Process (MGP) and Fourier Gaussian Process (FGP) Regression

Mercer Gaussian Process (MGP) and Fourier Gaussian Process (FGP) Regression We provide the code used in our paper "How Good are Low-Rank Approximation

Aristeidis (Ares) Panos 0 Dec 13, 2021
SeqTR: A Simple yet Universal Network for Visual Grounding

SeqTR This is the official implementation of SeqTR: A Simple yet Universal Network for Visual Grounding, which simplifies and unifies the modelling fo

seanZhuh 76 Dec 24, 2022
Rafael Project- Classifying rockets to different types using data science algorithms.

Rocket-Classify Rafael Project- Classifying rockets to different types using data science algorithms. In this project we received data base with data

Hadassah Engel 5 Sep 18, 2021
Visual Adversarial Imitation Learning using Variational Models (VMAIL)

Visual Adversarial Imitation Learning using Variational Models (VMAIL) This is the official implementation of the NeurIPS 2021 paper. Project website

14 Nov 18, 2022
MM1 and MMC Queue Simulation using python - Results and parameters in excel and csv files

implementation of MM1 and MMC Queue on randomly generated data and evaluate simulation results then compare with analytical results and draw a plot curve for them, simulate some integrals and compare

Mohamadreza Rezaei 1 Jan 19, 2022
A treasure chest for visual recognition powered by PaddlePaddle

简体中文 | English PaddleClas 简介 飞桨图像识别套件PaddleClas是飞桨为工业界和学术界所准备的一个图像识别任务的工具集,助力使用者训练出更好的视觉模型和应用落地。 近期更新 2021.11.1 发布PP-ShiTu技术报告,新增饮料识别demo 2021.10.23 发

4.6k Dec 31, 2022
The first public PyTorch implementation of Attentive Recurrent Comparators

arc-pytorch PyTorch implementation of Attentive Recurrent Comparators by Shyam et al. A blog explaining Attentive Recurrent Comparators Visualizing At

Sanyam Agarwal 150 Oct 14, 2022
This PyTorch package implements MoEBERT: from BERT to Mixture-of-Experts via Importance-Guided Adaptation (NAACL 2022).

MoEBERT This PyTorch package implements MoEBERT: from BERT to Mixture-of-Experts via Importance-Guided Adaptation (NAACL 2022). Installation Create an

Simiao Zuo 34 Dec 24, 2022
Controlling a game using mediapipe hand tracking

These scripts use the Google mediapipe hand tracking solution in combination with a webcam in order to send game instructions to a racing game. It features 2 methods of control

3 May 17, 2022
Lighthouse: Predicting Lighting Volumes for Spatially-Coherent Illumination

Lighthouse: Predicting Lighting Volumes for Spatially-Coherent Illumination Pratul P. Srinivasan, Ben Mildenhall, Matthew Tancik, Jonathan T. Barron,

Pratul Srinivasan 65 Dec 14, 2022
Official implementation of "Refiner: Refining Self-attention for Vision Transformers".

RefinerViT This repo is the official implementation of "Refiner: Refining Self-attention for Vision Transformers". The repo is build on top of timm an

101 Dec 29, 2022