/LyCORIS

Lora beYond Conventional methods, Other Rank adaptation Implementations for Stable diffusion.

Primary LanguagePythonApache License 2.0Apache-2.0

LyCORIS - Lora beYond Conventional methods, Other Rank adaptation Implementations for Stable diffusion.

image
(This image is generated by the model trained in Hadamard product representation)

A project for implementing different algorithm to do parameter-efficient finetuning on stable diffusion or more.

This project is started from LoCon(see archive branch).

If you are interested in discussing more details, you can join our Discord server.

Discord!

What we have now

See Algo.md or Demo.md for more example and explanation

Conventional LoRA

  • Include Conv layer implementation from LoCon
  • recommended settings
    • dim <= 64
    • alpha = 1 (or lower, like 0.3)

LoRA with Hadamard Product representation (LoHa)

WARNING: You are not supposed to use dim>64 in LoHa, which is over sqrt(original_dim) for almost all layer in SD

High dim with LoHa may cause unstable loss or just goes to NaN. If you want to use high dim LoHa, please use lower lr

WARNING-AGAIN: Use parameter-efficient algorithim in parameter-unefficient way is not a good idea

(IA)^3

LoKR

  • Basically same idea of LoHA, but use kronecker product
  • This algo is quite sensitive and you may need to tune the lr
  • This algo can learn both character and style, but since it is small (auto factor, full rank, 2.5MB), it is also hard to transfer.
  • This algo produce relatively small file(auto factor: 900~2500KB)
  • Use smaller factor will produce bigger file, you can tune it if you think 2.5MB full rank is not good enough.

DyLoRA

  • Ref DyLoRA: Parameter Efficient Tuning of Pre-trained Models using Dynamic Search-Free Low Rank Adaptation
  • Basically a training trick of lora.
  • Every step, only update one row/col of LoRA weight.
  • When we want to update k row/col, we only use 0~k row/col to rebuild the weight (0<=k<=dim)
  • You can easily resize DyLoRA to target and get similar or even better result than LoRA trained at target dim. (And you don't need to train lot loras with different dim to check which is better)
  • You should use large dim with alpha=dim/4~dim (1 or dim is not very recommended)
    • Example: dim=128, alpha=64
  • Since we only update 1 row/col each step, you will need more step to get reasonable result. If you want to train it with few steps, you may need to set block_size (update multiple row/col every step) to higer value (default=0)

usage

You can just use these training scripts.

For kohya script

Activate sd-scripts' venv and then install this package

source PATH_TO_SDSCRIPTS_VENV/Scripts/activate

or

PATH_TO_SDSCRIPTS_VENV\Scripts\Activate.ps1 # or .bat for cmd

And then you can install this package:

  • through pip
pip install lycoris_lora
  • from source
git clone https://github.com/KohakuBlueleaf/LyCORIS
cd LyCORIS
pip install .

Finally you can use this package's kohya module to run kohya's training script

python3 sd-scripts/train_network.py \
  --network_module lycoris.kohya \
  --network_dim "DIM_FOR_LINEAR" --network_alpha "ALPHA_FOR_LINEAR"\
  --network_args "conv_dim=DIM_FOR_CONV" "conv_alpha=ALPHA_FOR_CONV" \
  "dropout=DROPOUT_RATE" "algo=locon" \

to train lycoris module for SD model

  • algo list:

    • locon: Conventional Methods
    • loha: Hadamard product representation introduced by FedPara
    • lokr: Kronecker product representation
    • ia3 : (IA)^3
  • Tips:

    • Use network_dim=0 or conv_dim=0 to disable linear/conv layer
    • LoHa/LoKr/(IA)^3 doesn't support dropout yet.

For a1111's sd-webui

After sd-webui 1.5.0, you can directly use any LyCORIS model with built-in lora system download Extension into sd-webui, and then use LyCORIS model in the extra netowrks tabs.

Extract LoCon

You can extract LoCon from a dreambooth model with its base model.

python3 extract_locon.py <settings> <base_model> <db_model> <output>

Use --help to get more info

$ python3 extract_locon.py --help
usage: extract_locon.py [-h] [--is_v2] [--device DEVICE] [--mode MODE] [--safetensors] [--linear_dim LINEAR_DIM] [--conv_dim CONV_DIM]
                        [--linear_threshold LINEAR_THRESHOLD] [--conv_threshold CONV_THRESHOLD] [--linear_ratio LINEAR_RATIO] [--conv_ratio CONV_RATIO]
                        [--linear_percentile LINEAR_PERCENTILE] [--conv_percentile CONV_PERCENTILE]
                        base_model db_model output_name

Example and Comparing for different algo

see Demo.md and Algo.md

Change Log

For full log, please see Change.md

2023/07/27 update to 1.8.2

  • Update utils in kohya-ss/sd-scripts

2023/07/27 update to 1.8.1

  • Add config/preset system
  • Improve the project structure

Todo list

  • Module and Document for using LyCORIS in any other model, Not only SD.
  • Proposition3 in FedPara
    • also need custom backward to save the vram
  • Low rank + sparse representation
    • For extraction
    • For training
  • Support more operation, not only linear and conv2d.
  • Configure varying ranks or dimensions for specific modules as needed.
  • Automatically selecting an algorithm based on the specific rank requirement.
  • Explore other low-rank representations or parameter-efficient methods to fine-tune either the entire model or specific parts of it.
  • More experiments for different task, not only diffusion models.

Citation

@misc{LyCORIS,
  author       = "Shih-Ying Yeh (Kohaku-BlueLeaf), Yu-Guan Hsieh, Zhidong Gao",
  title        = "LyCORIS - Lora beYond Conventional methods, Other Rank adaptation Implementations for Stable diffusion",
  howpublished = "\url{https://github.com/KohakuBlueleaf/LyCORIS}",
  month        = "March",
  year         = "2023"
}