metadata
license: agpl-3.0
language:
- en
scripts
Personal scripts to automate some tasks mostly using huggingface_hub.
Feel free to send in PRs or use this code however you'd like.
GitHub mirror
For GitHub: Would recommend creating pull requests and discussions on the offical huggingface repo
existing files
EXL2 Single Quant V3 (COLAB)
work in progress/not tested (ordered by priority)
- Easy exl2 quants
- Add custom safetensors shard size.
- Allow using finegrained tokens to login scripts
other recommended stuff
Download models (download HF Hub models) [Oobabooga]
usage
Auto EXL2 HF upload
- This script is designed to automate the process of quantizing models to EXL2 and uploading them to the HF Hub as seperate branches. This is both available to run on Windows and Linux. You will be required to be logged in to HF Hub. If you are not logged in, you will need a WRITE token.
- Example repo
EXL2 Local Quants
- Easily creates environment to quantize models to exl2 to your local machine. Supports both Windows and Linux.
Upload folder to repo
- Uploads user specified folder to specified repo, can create private repos too. Not the same as git commit and push, instead uploads any additional files. This is more of a practice for me than for actual usage.
Manage branches
- Run script and follow prompts. You will be required to be logged in to HF Hub. If you are not logged in, you will need a WRITE token. You can get one in your HuggingFace settings. Colab and Kaggle secret keys are supported.
EXL2 Single Quant
- Allows you to quantize to exl2 using colab. This version creates a exl2 quant to upload to private repo. Only 7B tested on colab.
Download models (oobabooga)
- To use the script, open a terminal and run '
python download-model.py USER/MODEL:BRANCH
'. There's also a '--help
' flag to show the available arguments. To download from private repositories, make sure to login using 'huggingface-cli login
' or (not recommended)HF_TOKEN
environment variable.
- To use the script, open a terminal and run '
extras
- HF login snippet
- The login method that I wrote to make fetching the token better.
- HF login snippet kaggle
- Same as above but for cloud ipynb environments like Colab and Kaggle (Kaggle secret support)