A microframework on top of PyTorch with first-class citizen APIs for foundation model adaptation https://refine.rs/
Find a file
2024-04-23 16:58:22 +02:00
.github/workflows add ci.yml to source (so it runs when we change it) 2024-03-28 14:40:07 +01:00
assets README: upgrade hello world 2023-10-20 18:28:31 +02:00
docs fix training_101 import 2024-04-18 20:58:47 +02:00
notebooks deprecate outdated notebooks/basics.ipynb 2024-02-02 14:12:59 +01:00
scripts add support for dinov2 giant flavors 2024-04-11 14:48:33 +02:00
src/refiners initialize StableDiffusion_1_Inpainting with a 9 channel SD1Unet if not provided 2024-04-23 16:58:22 +02:00
tests initialize StableDiffusion_1_Inpainting with a 9 channel SD1Unet if not provided 2024-04-23 16:58:22 +02:00
.gitignore add DINOv2-FD metric 2024-04-03 16:45:00 +02:00
CONTRIBUTING.md refactor dinov2 tests, check against official implementation 2024-04-02 10:02:43 +02:00
LICENSE Update LICENSE 2024-02-02 14:08:09 +01:00
mkdocs.yml write Training 101 guide 2024-02-26 14:44:02 +01:00
pyproject.toml (training_utils) add new ForceCommit callback 2024-04-16 14:43:10 +02:00
README.md Update README.md with HQ-SAM news 2024-03-25 09:19:19 +01:00
requirements.docs.txt (pyproject.toml) move doc deps inside their own project.optional-dependencies 2024-02-02 11:08:21 +01:00
requirements.lock (training_utils) add new ForceCommit callback 2024-04-16 14:43:10 +02:00

Finegrain Refiners Library

The simplest way to train and run adapters on top of foundation models

Manifesto | Docs | Guides | Discussions | Discord


PyPI - Python Version PyPI Status license code bounties chat

Latest News 🔥

Installation

The current recommended way to install Refiners is from source using Rye:

git clone "git@github.com:finegrain-ai/refiners.git"
cd refiners
rye sync --all-features

Documentation

Refiners comes with a MkDocs-based documentation website available at https://refine.rs. You will find there a quick start guide, a description of the key concepts, as well as in-depth foundation model adaptation guides.

Awesome Adaptation Papers

If you're interested in understanding the diversity of use cases for foundation model adaptation (potentially beyond the specific adapters supported by Refiners), we suggest you take a look at these outstanding papers:

Projects using Refiners

Credits

We took inspiration from these great projects:

Citation

@misc{the-finegrain-team-2023-refiners,
  author = {Benjamin Trom and Pierre Chapuis and Cédric Deltheil},
  title = {Refiners: The simplest way to train and run adapters on top of foundation models},
  year = {2023},
  publisher = {GitHub},
  journal = {GitHub repository},
  howpublished = {\url{https://github.com/finegrain-ai/refiners}}
}