• Stars
    star
    880
  • Rank 51,881 (Top 2 %)
  • Language
    Python
  • License
    MIT License
  • Created about 7 years ago
  • Updated over 2 years ago

Reviews

There are no reviews yet. Be the first to send feedback to the community and the maintainers!

Repository Details

๐Ÿ˜‡A pyTorch implementation of the DeepMoji model: state-of-the-art deep learning model for analyzing sentiment, emotion, sarcasm etc

------ Update September 2018 ------

It's been a year since TorchMoji and DeepMoji were released. We're trying to understand how it's being used such that we can make improvements and design better models in the future.

You can help us achieve this by answering this 4-question Google Form. Thanks for your support!

๐Ÿ˜‡ TorchMoji

Read our blog post about the implementation process here.

TorchMoji is a pyTorch implementation of the DeepMoji model developped by Bjarke Felbo, Alan Mislove, Anders Sรธgaard, Iyad Rahwan and Sune Lehmann.

This model trained on 1.2 billion tweets with emojis to understand how language is used to express emotions. Through transfer learning the model can obtain state-of-the-art performance on many emotion-related text modeling tasks.

Try the online demo of DeepMoji http://deepmoji.mit.edu! See the paper, blog post or FAQ for more details.

Overview

  • torchmoji/ contains all the underlying code needed to convert a dataset to the vocabulary and use the model.
  • examples/ contains short code snippets showing how to convert a dataset to the vocabulary, load up the model and run it on that dataset.
  • scripts/ contains code for processing and analysing datasets to reproduce results in the paper.
  • model/ contains the pretrained model and vocabulary.
  • data/ contains raw and processed datasets that we include in this repository for testing.
  • tests/ contains unit tests for the codebase.

To start out with, have a look inside the examples/ directory. See score_texts_emojis.py for how to use DeepMoji to extract emoji predictions, encode_texts.py for how to convert text into 2304-dimensional emotional feature vectors or finetune_youtube_last.py for how to use the model for transfer learning on a new dataset.

Please consider citing the paper of DeepMoji if you use the model or code (see below for citation).

Installation

We assume that you're using Python 2.7-3.5 with pip installed.

First you need to install pyTorch (version 0.2+), currently by:

conda install pytorch -c pytorch

At the present stage the model can't make efficient use of CUDA. See details in the Hugging Face blog post.

When pyTorch is installed, run the following in the root directory to install the remaining dependencies:

pip install -e .

This will install the following dependencies:

Then, run the download script to downloads the pretrained torchMoji weights (~85MB) from here and put them in the model/ directory:

python scripts/download_weights.py

Testing

To run the tests, install nose. After installing, navigate to the tests/ directory and run:

cd tests
nosetests -v

By default, this will also run finetuning tests. These tests train the model for one epoch and then check the resulting accuracy, which may take several minutes to finish. If you'd prefer to exclude those, run the following instead:

cd tests
nosetests -v -a '!slow'

Disclaimer

This code has been tested to work with Python 2.7 and 3.5 on Ubuntu 16.04 and macOS Sierra machines. It has not been optimized for efficiency, but should be fast enough for most purposes. We do not give any guarantees that there are no bugs - use the code on your own responsibility!

Contributions

We welcome pull requests if you feel like something could be improved. You can also greatly help us by telling us how you felt when writing your most recent tweets. Just click here to contribute.

License

This code and the pretrained model is licensed under the MIT license.

Benchmark datasets

The benchmark datasets are uploaded to this repository for convenience purposes only. They were not released by us and we do not claim any rights on them. Use the datasets at your responsibility and make sure you fulfill the licenses that they were released with. If you use any of the benchmark datasets please consider citing the original authors.

Citation

@inproceedings{felbo2017,
  title={Using millions of emoji occurrences to learn any-domain representations for detecting sentiment, emotion and sarcasm},
  author={Felbo, Bjarke and Mislove, Alan and S{\o}gaard, Anders and Rahwan, Iyad and Lehmann, Sune},
  booktitle={Conference on Empirical Methods in Natural Language Processing (EMNLP)},
  year={2017}
}

More Repositories

1

transformers

๐Ÿค— Transformers: State-of-the-art Machine Learning for Pytorch, TensorFlow, and JAX.
Python
133,705
star
2

pytorch-image-models

PyTorch image models, scripts, pretrained weights -- ResNet, ResNeXT, EfficientNet, NFNet, Vision Transformer (ViT), MobileNet-V3/V2, RegNet, DPN, CSPNet, Swin Transformer, MaxViT, CoAtNet, ConvNeXt, and more
Python
28,073
star
3

diffusers

๐Ÿค— Diffusers: State-of-the-art diffusion models for image and audio generation in PyTorch and FLAX.
Python
25,619
star
4

datasets

๐Ÿค— The largest hub of ready-to-use datasets for ML models with fast, easy-to-use and efficient data manipulation tools
Python
17,530
star
5

peft

๐Ÿค— PEFT: State-of-the-art Parameter-Efficient Fine-Tuning.
Python
15,663
star
6

candle

Minimalist ML framework for Rust
Rust
15,011
star
7

trl

Train transformer language models with reinforcement learning.
Python
9,850
star
8

text-generation-inference

Large Language Model Text Generation Inference
Python
8,939
star
9

tokenizers

๐Ÿ’ฅ Fast State-of-the-Art Tokenizers optimized for Research and Production
Rust
8,885
star
10

accelerate

๐Ÿš€ A simple way to launch, train, and use PyTorch models on almost any device and distributed configuration, automatic mixed precision (including fp8), and easy-to-configure FSDP and DeepSpeed support
Python
7,854
star
11

chat-ui

Open source codebase powering the HuggingChat app
TypeScript
7,113
star
12

lerobot

๐Ÿค— LeRobot: Making AI for Robotics more accessible with end-to-end learning
Python
6,522
star
13

alignment-handbook

Robust recipes to align language models with human and AI preferences
Python
4,474
star
14

parler-tts

Inference and training library for high-quality TTS models.
Python
4,027
star
15

autotrain-advanced

๐Ÿค— AutoTrain Advanced
Python
3,925
star
16

deep-rl-class

This repo contains the syllabus of the Hugging Face Deep Reinforcement Learning Course.
MDX
3,680
star
17

diffusion-models-class

Materials for the Hugging Face Diffusion Models Course
Jupyter Notebook
3,508
star
18

notebooks

Notebooks using the Hugging Face libraries ๐Ÿค—
Jupyter Notebook
3,492
star
19

distil-whisper

Distilled variant of Whisper for speech recognition. 6x faster, 50% smaller, within 1% word error rate.
Python
3,455
star
20

neuralcoref

โœจFast Coreference Resolution in spaCy with Neural Networks
C
2,842
star
21

safetensors

Simple, safe way to store and distribute tensors
Python
2,754
star
22

text-embeddings-inference

A blazing fast inference solution for text embeddings models
Rust
2,746
star
23

knockknock

๐ŸšชโœŠKnock Knock: Get notified when your training ends with only two additional lines of code
Python
2,682
star
24

speech-to-speech

Speech To Speech: an effort for an open-sourced and modular GPT4-o
Python
2,540
star
25

swift-coreml-diffusers

Swift app demonstrating Core ML Stable Diffusion
Swift
2,506
star
26

optimum

๐Ÿš€ Accelerate training and inference of ๐Ÿค— Transformers and ๐Ÿค— Diffusers with easy to use hardware optimization tools
Python
2,469
star
27

blog

Public repo for HF blog posts
Jupyter Notebook
2,303
star
28

setfit

Efficient few-shot learning with Sentence Transformers
Jupyter Notebook
2,142
star
29

course

The Hugging Face course on Transformers
MDX
2,005
star
30

awesome-papers

Papers & presentation materials from Hugging Face's internal science day
1,996
star
31

datatrove

Freeing data processing from scripting madness by providing a set of platform-agnostic customizable pipeline processing blocks.
Python
1,909
star
32

evaluate

๐Ÿค— Evaluate: A library for easily evaluating machine learning models and datasets.
Python
1,825
star
33

cookbook

Open-source AI cookbook
Jupyter Notebook
1,660
star
34

transfer-learning-conv-ai

๐Ÿฆ„ State-of-the-Art Conversational AI with Transfer Learning
Python
1,654
star
35

swift-coreml-transformers

Swift Core ML 3 implementations of GPT-2, DistilGPT-2, BERT, and DistilBERT for Question answering. Other Transformers coming soon!
Swift
1,543
star
36

pytorch-openai-transformer-lm

๐ŸฅA PyTorch implementation of OpenAI's finetuned transformer language model with a script to import the weights pre-trained by OpenAI
Python
1,464
star
37

huggingface.js

Utilities to use the Hugging Face Hub API
TypeScript
1,368
star
38

Mongoku

๐Ÿ”ฅThe Web-scale GUI for MongoDB
TypeScript
1,313
star
39

huggingface_hub

All the open source things related to the Hugging Face Hub.
Python
1,311
star
40

gsplat.js

JavaScript Gaussian Splatting library.
TypeScript
1,302
star
41

llm-vscode

LLM powered development for VSCode
TypeScript
1,206
star
42

hmtl

๐ŸŒŠHMTL: Hierarchical Multi-Task Learning - A State-of-the-Art neural network model for several NLP tasks based on PyTorch and AllenNLP
Python
1,185
star
43

nanotron

Minimalistic large language model 3D-parallelism training
Python
1,071
star
44

pytorch-pretrained-BigGAN

๐Ÿฆ‹A PyTorch implementation of BigGAN with pretrained weights and conversion scripts.
Python
986
star
45

optimum-nvidia

Python
888
star
46

awesome-huggingface

๐Ÿค— A list of wonderful open-source projects & applications integrated with Hugging Face libraries.
853
star
47

optimum-quanto

A pytorch quantization backend for optimum
Python
738
star
48

llm.nvim

LLM powered development for Neovim
Lua
728
star
49

naacl_transfer_learning_tutorial

Repository of code for the tutorial on Transfer Learning in NLP held at NAACL 2019 in Minneapolis, MN, USA
Python
718
star
50

dataset-viewer

Backend that powers the dataset viewer on Hugging Face dataset pages through a public API.
Python
689
star
51

swift-transformers

Swift Package to implement a transformers-like API in Swift
Swift
647
star
52

exporters

Export Hugging Face models to Core ML and TensorFlow Lite
Python
587
star
53

llm-ls

LSP server leveraging LLMs for code completion (and more?)
Rust
586
star
54

ratchet

A cross-platform browser ML framework.
Rust
574
star
55

transformers-bloom-inference

Fast Inference Solutions for BLOOM
Python
557
star
56

lighteval

LightEval is a lightweight LLM evaluation suite that Hugging Face has been using internally with the recently released LLM data processing library datatrove and LLM training library nanotron.
Python
554
star
57

pytorch_block_sparse

Fast Block Sparse Matrices for Pytorch
C++
523
star
58

node-question-answering

Fast and production-ready question answering in Node.js
TypeScript
459
star
59

large_language_model_training_playbook

An open collection of implementation tips, tricks and resources for training large language models
Python
452
star
60

swift-chat

Mac app to demonstrate swift-transformers
Swift
444
star
61

llm_training_handbook

An open collection of methodologies to help with successful training of large language models.
Python
437
star
62

text-clustering

Easily embed, cluster and semantically label text datasets
Python
422
star
63

cosmopedia

Python
416
star
64

optimum-intel

๐Ÿค— Optimum Intel: Accelerate inference with Intel optimization tools
Jupyter Notebook
393
star
65

controlnet_aux

Python
386
star
66

community-events

Place where folks can contribute to ๐Ÿค— community events
Jupyter Notebook
368
star
67

tflite-android-transformers

DistilBERT / GPT-2 for on-device inference thanks to TensorFlow Lite with Android demo apps
Java
368
star
68

nn_pruning

Prune a model while finetuning or training.
Jupyter Notebook
360
star
69

speechbox

Python
341
star
70

100-times-faster-nlp

๐Ÿš€100 Times Faster Natural Language Processing in Python - iPython notebook
HTML
325
star
71

education-toolkit

Educational materials for universities
Jupyter Notebook
324
star
72

transformers.js-examples

A collection of ๐Ÿค— Transformers.js demos and example applications
JavaScript
323
star
73

open-muse

Open reproduction of MUSE for fast text2image generation.
Python
320
star
74

local-gemma

Gemma 2 optimized for your local machine.
Python
317
star
75

unity-api

C#
313
star
76

audio-transformers-course

The Hugging Face Course on Transformers for Audio
MDX
308
star
77

datablations

Scaling Data-Constrained Language Models
Jupyter Notebook
305
star
78

hf_transfer

Rust
287
star
79

dataspeech

Python
262
star
80

huggingface-llama-recipes

Jupyter Notebook
259
star
81

optimum-benchmark

๐Ÿ‹๏ธ A unified multi-backend utility for benchmarking Transformers, Timm, PEFT, Diffusers and Sentence-Transformers with full support of Optimum's hardware optimizations & quantization schemes.
Python
245
star
82

diarizers

Python
238
star
83

hub-docs

Docs of the Hugging Face Hub
221
star
84

llm-swarm

Manage scalable open LLM inference endpoints in Slurm clusters
Python
216
star
85

sam2-studio

Swift
196
star
86

optimum-neuron

Easy, fast and very cheap training and inference on AWS Trainium and Inferentia chips.
Jupyter Notebook
193
star
87

data-is-better-together

Let's build better datasets, together!
Jupyter Notebook
192
star
88

instruction-tuned-sd

Code for instruction-tuning Stable Diffusion.
Python
189
star
89

simulate

๐ŸŽข Creating and sharing simulation environments for embodied and synthetic data research
Python
185
star
90

OBELICS

Code used for the creation of OBELICS, an open, massive and curated collection of interleaved image-text web documents, containing 141M documents, 115B text tokens and 353M images.
Python
184
star
91

diffusion-fast

Faster generation with text-to-image diffusion models.
Python
179
star
92

olm-datasets

Pipeline for pulling and processing online language model pretraining data from the web
Python
173
star
93

api-inference-community

Python
161
star
94

jat

General multi-task deep RL Agent
Python
154
star
95

workshops

Materials for workshops on the Hugging Face ecosystem
Jupyter Notebook
148
star
96

coreml-examples

Swift Core ML Examples
Jupyter Notebook
147
star
97

optimum-habana

Easy and lightning fast training of ๐Ÿค— Transformers on Habana Gaudi processor (HPU)
Python
147
star
98

chug

Minimal sharded dataset loaders, decoders, and utils for multi-modal document, image, and text datasets.
Python
140
star
99

sharp-transformers

A Unity plugin for using Transformers models in Unity.
C#
139
star
100

hf-hub

Rust client for the huggingface hub aiming for minimal subset of features over `huggingface-hub` python package
Rust
132
star