Awesome
Announcement: OpenNMT-py is no longer actively supported.
We started a new project Eole available on Github
It is a spin-off of OpenNMT-py in terms of features but we revamped a lot of stuff.
Eole handles NMT, LLM, Encoders as well as a new concept of Estimator within a NMT Model See this post and this news
If you are a developer, switch now. If you are a user only, then we will publish the first py-pi versions shortly.
OpenNMT-py: Open-Source Neural Machine Translation and (Large) Language Models
OpenNMT-py is the PyTorch version of the OpenNMT project, an open-source (MIT) neural machine translation (and beyond!) framework. It is designed to be research friendly to try out new ideas in translation, language modeling, summarization, and many other NLP tasks. Some companies have proven the code to be production ready.
We love contributions! Please look at issues marked with the contributions welcome tag.
Before raising an issue, make sure you read the requirements and the Full Documentation examples.
Unless there is a bug, please use the Forum or Gitter to ask questions.
For beginners:
There is a step-by-step and explained tuto (Thanks to Yasmin Moslem): Tutorial
Please try to read and/or follow before raising newbies issues.
Otherwise you can just have a look at the Quickstart steps
New:
- You will need Pytorch v2 preferably v2.2 which fixes some
scaled_dot_product_attention
issues - LLM support with converters for: Llama (+ Mistral), OpenLlama, Redpajama, MPT-7B, Falcon.
- Support for 8bit and 4bit quantization along with LoRA adapters, with or without checkpointing.
- You can finetune 7B and 13B models on a single RTX 24GB with 4-bit quantization.
- Inference can be forced in 4/8bit using the same layer quantization as in finetuning.
- Tensor parallelism when the model does not fit on one GPU's memory (both training and inference)
- Once your model is finetuned you can run inference either with OpenNMT-py or faster with CTranslate2.
- MMLU evaluation script, see results here
For all usecases including NMT, you can now use Multiquery instead of Multihead attention (faster at training and inference) and remove biases from all Linear (QKV as well as FeedForward modules).
If you used previous versions of OpenNMT-py, you can check the Changelog or the Breaking Changes
Tutorials:
- How to replicate Vicuna with a 7B or 13B llama (or Open llama, MPT-7B, Redpajama) Language Model: Tuto Vicuna
- How to finetune NLLB-200 with your dataset: Tuto Finetune NLLB-200
- How to create a simple OpenNMT-py REST Server: Tuto REST
- How to create a simple Web Interface: Tuto Streamlit
- Replicate the WMT17 en-de experiment: WMT17 ENDE
Setup
Using docker
To facilitate setup and reproducibility, some docker images are made available via the Github Container Registry: https://github.com/OpenNMT/OpenNMT-py/pkgs/container/opennmt-py
You can adapt the workflow and build your own image(s) depending on specific needs by using build.sh
and Dockerfile
in the docker
directory of the repo.
docker pull ghcr.io/opennmt/opennmt-py:3.4.3-ubuntu22.04-cuda12.1
Example oneliner to run a container and open a bash shell within it
docker run --rm -it --runtime=nvidia ghcr.io/opennmt/opennmt-py:test-ubuntu22.04-cuda12.1
Note: you need to have the Nvidia Container Toolkit (formerly nvidia-docker) installed to properly take advantage of the CUDA/GPU features.
Depending on your needs you can add various flags:
-p 5000:5000
to forward some exposed port from your container to your host;-v /some/local/directory:/some/container/directory
to mount some local directory to some container directory;--entrypoint some_command
to directly run some specific command as the container entry point (instead of the default bash shell);
Installing locally
OpenNMT-py requires:
- Python >= 3.8
- PyTorch >= 2.0 <2.2
Install OpenNMT-py
from pip
:
pip install OpenNMT-py
or from the source:
git clone https://github.com/OpenNMT/OpenNMT-py.git
cd OpenNMT-py
pip install -e .
Note: if you encounter a MemoryError
during installation, try to use pip
with --no-cache-dir
.
(Optional) Some advanced features (e.g. working pretrained models or specific transforms) require extra packages, you can install them with:
pip install -r requirements.opt.txt
Manual installation of some dependencies
Apex is highly recommended to have fast performance (especially the legacy fusedadam optimizer and FusedRMSNorm)
git clone https://github.com/NVIDIA/apex
cd apex
pip3 install -v --no-build-isolation --config-settings --build-option="--cpp_ext --cuda_ext --deprecated_fused_adam --xentropy --fast_multihead_attn" ./
cd ..
Flash attention:
As of Oct. 2023 flash attention 1 has been upstreamed to pytorch v2 but it is recommended to use flash attention 2 with v2.3.1 for sliding window attention support.
When using regular position_encoding=True
or Rotary with max_relative_positions=-1
OpenNMT-py will try to use an optimized dot-product path.
if you want to use flash attention then you need to manually install it first:
pip install flash-attn --no-build-isolation
if flash attention 2 is not installed, then we will use F.scaled_dot_product_attention
from pytorch 2.x
When using max_relative_positions > 0
or Alibi max_relative_positions=-2
OpenNMT-py will use its legacy code for matrix multiplications.
flash attention and F.scaled_dot_product_attention
are a bit faster and saves some GPU memory.
AWQ:
If you want to run inference or quantize an AWQ model you will need AutoAWQ.
For AutoAWQ: pip install autoawq
Documentation & FAQs
Acknowledgements
OpenNMT-py is run as a collaborative open-source project. Project was incubated by Systran and Harvard NLP in 2016 in Lua and ported to Pytorch in 2017.
Current maintainers (since 2018):
François Hernandez Vincent Nguyen (Seedfall)
Citation
If you are using OpenNMT-py for academic work, please cite the initial system demonstration paper published in ACL 2017:
@misc{klein2018opennmt,
title={OpenNMT: Neural Machine Translation Toolkit},
author={Guillaume Klein and Yoon Kim and Yuntian Deng and Vincent Nguyen and Jean Senellart and Alexander M. Rush},
year={2018},
eprint={1805.11462},
archivePrefix={arXiv},
primaryClass={cs.CL}
}