FlagAI (Fast LArge-scale General AI models) is a fast, easy-to-use and extensible toolkit for large-scale model. Our goal is to support training, fine-tuning, and deployment of large-scale models on various downstream tasks with multi-modality. Currently, we are focusing on NLP models and tasks. In near futher, we will support for other modalities.
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Now it supports WuDao GLM with a maximum of 10 billion parameters (see Introduction to GLM). It also supports BERT, RoBERTa, GPT2, T5, and models from Huggingface Transformers.
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It provides APIs to quickly download and use those pre-trained models on a given text, fine-tune them on widely-used datasets collected from SuperGLUE and CLUE benchmarks, and then share them with the community on our model hub. It also provides prompt-learning toolkit for few shot tasks.
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These models can be applied to (Chinese/English) Text, for tasks like text classification, information extraction, question answering, summarization, and text generation.
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FlagAI is backed by the three most popular data/model parallel libraries — PyTorch/Deepspeed/Megatron-LM — with seamless integration between them. Users can parallel their training/testing process with less than ten lines of code.
The code is partially based on GLM, Transformers, timm and DeepSpeedExamples.
- Requirements and Installation
- Quick Started
- Pretrained Models and examples
- Tutorials
- Contributing
- Contact us
- License
- PyTorch version >= 1.8.0
- Python version >= 3.8
- For training/testing models on GPUs, you'll also need install CUDA and NCCL
To install FlagAI with pip:
pip install -U flagai
- [Optional]To install FlagAI and develop locally:
git clone https://github.com/FlagAI-Open/FlagAI.git
python setup.py install
- [Optional] For faster training install NVIDIA's apex
git clone https://github.com/NVIDIA/apex
cd apex
pip install -v --disable-pip-version-check --no-cache-dir --global-option="--cpp_ext" --global-option="--cuda_ext" ./
- [Optional] For ZeRO optimizers install DEEPSPEED
git clone https://github.com/microsoft/DeepSpeed
cd DeepSpeed
DS_BUILD_CPU_ADAM=1 DS_BUILD_AIO=1 DS_BUILD_UTILS=1 pip install -e .
ds_report # check the deespeed status
- [Tips] For single-node docker enviroments, we need to setup ports for your ssh. e.g., [email protected] with port 7110
>>> vim ~/.ssh/config
Host 127.0.0.1
Hostname 127.0.0.1
Port 7110
User root
- [Tips] For multi-node docker enviroments, generate ssh keys and copy the public key to all nodes (in
~/.ssh/
)
>>> ssh-keygen -t rsa -C "[email protected]"
We provide many models which are trained to perform different tasks. You can load these models by AutoLoader to make prediction. See more in FlagAI/quickstart
.
We provide the AutoLoad class to load the model and tokenizer quickly, for example:
from flagai.auto_model.auto_loader import AutoLoader
auto_loader = AutoLoader(
task_name="title-generation",
model_name="BERT-base-en"
)
model = auto_loader.get_model()
tokenizer = auto_loader.get_tokenizer()
This example is for the title_generation
task, and you can also model other tasks by modifying the task_name
.
Then you can use the model and tokenizer to finetune or test.
We provide the Predictor
class to predict for different tasks, for example:
from flagai.model.predictor.predictor import Predictor
predictor = Predictor(model, tokenizer)
test_data = [
"Four minutes after the red card, Emerson Royal nodded a corner into the path of the unmarked Kane at the far post, who nudged the ball in for his 12th goal in 17 North London derby appearances. Arteta's misery was compounded two minutes after half-time when Kane held the ball up in front of goal and teed up Son to smash a shot beyond a crowd of defenders to make it 3-0.The goal moved the South Korea talisman a goal behind Premier League top scorer Mohamed Salah on 21 for the season, and he looked perturbed when he was hauled off with 18 minutes remaining, receiving words of consolation from Pierre-Emile Hojbjerg.Once his frustrations have eased, Son and Spurs will look ahead to two final games in which they only need a point more than Arsenal to finish fourth.",
]
for text in test_data:
print(
predictor.predict_generate_beamsearch(text,
out_max_length=50,
beam_size=3))
- Blank_Filling_QA with GLM
- Title Generation with GLM
- Poetry generation with GLM-large-ch
- Using huggingface's t5-11b & tricks
- Title Generation with RoBerta-WWM
- Semantic Matching with RoBerta-WWM
- NER with RoBerta-WWM
- Writing with GPT-2
- Title generation with T5
- Example of OPT
This session explains how the base NLP classes work, how you can load pre-trained models to tag your
text, how you can embed your text with different word or document embeddings, and how you can train your own
language models, sequence labeling models, and text classification models. Let us know if anything is unclear. See more in FlagAI/examples
.
We provide a set of quick tutorials to get you started with the library:
- Tutorial 1: How to construct and use Tokenizer
- Tutorial 2: Dataset Preprocessing Pipeline
- Tutorial 3: Major Function of Model Module
- Tutorial 4: Customize trainer for model and data-parallel training
- Tutorial 5: Simplify model and tokenizer Initialization by Using Autoloader
- Tutorial 6: Use off-the-shelf inference Algorithms with Predictor
- Tutorial 7: Use FlagAI prompt-learning tool-kit to improve performance on SuperGLUE
- Tutorial 8: Setup environment for training models with multi-machine
- Tutorial 9: Text generation with encoder/decoder/encoder-decoder models
- Tutorial 10: How to transform a customized model into a megatron-LM-style parallel model
Thanks for your interest in contributing! There are many ways to get involved; start with our contributor guidelines and then check these open issues for specific tasks.
The majority of FlagAI is licensed under the Apache 2.0 license, however portions of the project are available under separate license terms:
- Megatron-LM is licensed under the Megatron-LM license
- GLM is licensed under the MIT license