Go to file
DingDing 0406866c25
Merge branch 'thunlp:main' into main
2022-03-13 22:12:26 +08:00
dist update readme.md 2022-02-14 23:07:36 +08:00
docs merge parallel 2022-03-13 22:04:38 +08:00
examples Merge branch 'thunlp:main' into main 2022-03-13 22:12:26 +08:00
opendelta Merge branch 'thunlp:main' into main 2022-03-13 22:12:26 +08:00
.gitignore remove tfevent 2022-03-13 01:23:54 +08:00
.readthedocs.yaml first commit 2022-02-14 21:19:03 +08:00
README.md Update README.md 2022-02-16 23:43:45 +08:00
requirements.txt mv op dependency 2022-02-14 22:53:09 +08:00
setup.py first commit 2022-02-14 21:19:03 +08:00

README.md

An Open-Source Framework for Paramter Efficient Tuning (Delta Tuning).


OverviewInstallationBasic UsageDocsPerformance

version

Overview

OpenDelta is a toolkit for parameter efficient methods (we dub it as delta tuning), by which users could flexibly assign (or add) a small amount parameters to update while keeping the most paramters frozen. By using OpenDelta, users could easily implement prefix-tuning, adapters, Lora, or any other types of delta tuning with preferred PTMs.

  • Our repo is tested on Python 3.8 and PyTorch 1.9.0. Lower version may also be supported.

  • A demo of using Opendelta to modify the PLM (E.g., BART). How PLM changes using Delta-tuning

Updates

Installation

create a virtualenv (optional)

conda create -n opendelta_env python=3.8
conda activate opendelta_env

Using Pip

Install OpenDelta using pip as follows:

pip install opendelta

To play with the latest features, you can also install OpenDelta from the source.

Build from Source

git clone https://github.com/thunlp/OpenDelta.git
cd OpenDelta

Option 1: If you won't modify the code, run

python setup.py install

Option 2: If you want to modify the code or keep the repo updated by git clone, run

python setup.py develop

Must Try

from transformers import AutoModelForSeq2SeqLM
t5 = AutoModelForSeq2SeqLM.from_pretrained("t5-base")
from opendelta import AutoDeltaModel
delta = AutoDeltaModel.from_finetuned("DeltaHub/lora_t5-base_mrpc", backbone_model=t5)
delta.log()

Verified Supported Models

  • You can try to use OpenDelta on any backbone models based on PyTorch.

  • However, with small chances thatThe interface of the submodules of the backbone model is not supported. Therefore we verified some commonly used models that OpenDelta are sure to support.

  • We will keep testing more and more emerging models.

  • Pull requests are welcomed when you successfully apply OpenDelta on your own backbone model.

Lora Bias
Tuning
Adapter
Houstbly
Adapter
Preffier
Adapter
Drop
Adapater
Low-Rank
Compactor Prefix
Tuning
Prompt
Tuning
T5
GPT-2
BART
DistilBERT
RoBERTa
BERT
T5-3b(parallel)
Deberta-v2
CTRL
ViT

Performance Checked Combination

Google sheet here

Subject to change at any moment.