159 lines
4.2 KiB
Markdown
159 lines
4.2 KiB
Markdown
[日本語版 README はこちら](README_ja.md)
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# Stable Diffusion Modal
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This is a Diffusers-based script for running Stable Diffusion on [Modal](https://modal.com/). It can perform txt2img inference and has the ability to increase resolution using ControlNet Tile and Upscaler.
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## Features
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1. Image generation using txt2img
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2. Upscaling
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| Before upscaling | After upscaling |
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| ---- | ---- |
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| <img src="assets/20230708204347_1172778945_0_0.png" width="300"> | <img src="assets/20230708204347_1172778945_0_2.png" width="300"> |
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## Requirements
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The app requires the following to run:
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- python: > 3.10
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- modal-client
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- A token for Modal.
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The `modal-client` is the Python library. In order to install that:
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```
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pip install modal-client
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```
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And you need a modal token to use this script:
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```
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modal token new
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```
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Please see [the documentation of Modal](https://modal.com/docs/guide) for modals and tokens.
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## Getting Started
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To use the script, execute the below.
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1. git clone the repository.
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2. Copy `./setup_files/config.sample.yml` to `./setup_files/config.yml`
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3. Open the Makefile and set prompts.
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4. Execute `make deploy` command. An application will be deployed to Modal.
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5. Execute `make run` command.
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Images are generated and output to the `outputs/` directory.
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## Directory structure
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```
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.
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├── .env # Secrets manager
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├── Makefile
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├── README.md
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├── sdcli/ # A directory with scripts to run inference.
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│ ├── outputs/ # Images are outputted this directory.
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│ ├── txt2img.py # A script to run txt2img inference.
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│ └── util.py
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└── setup_files/ # A directory with config files.
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├── __main__.py # A main script to run inference.
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├── Dockerfile # To build a base image.
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├── config.yml # To set a model, vae and some tools.
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├── requirements.txt
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├── setup.py # Build an application to deploy on Modal.
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└── txt2img.py # There is a class to run inference.
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```
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## How to use
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### 1. `git clone` the repository
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```
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git clone https://github.com/hodanov/stable-diffusion-modal.git
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cd stable-diffusion-modal
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```
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### 2. Add hugging_face_token to .env file
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Hugging Add hugging_face_token to .env file.
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This script downloads and uses a model from HuggingFace, but if you want to use a model in a private repository, you will need to set this environment variable.
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```
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HUGGING_FACE_TOKEN="Write your hugging face token here."
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```
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### 3. Add the model to ./setup_files/config.yml
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Add the model used for inference. VAE, LoRA, and Textual Inversion are also configurable.
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```
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# ex)
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model:
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name: stable-diffusion-2-1
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repo_id: stabilityai/stable-diffusion-2-1
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vae:
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name: sd-vae-ft-mse
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repo_id: stabilityai/sd-vae-ft-mse
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controlnets:
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- name: control_v11f1e_sd15_tile
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repo_id: lllyasviel/control_v11f1e_sd15_tile
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```
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Use a model configured for Diffusers, such as the one found in [this repository](https://huggingface.co/stabilityai/stable-diffusion-2-1).
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Files in safetensor format shared by Civitai etc. need to be converted (you can do so with a script in the diffusers official repository).
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[https://github.com/huggingface/diffusers/blob/main/scripts/convert_original_stable_diffusion_to_diffusers.py](https://github.com/huggingface/diffusers/blob/main/scripts/convert_original_stable_diffusion_to_diffusers.py)
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```
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# Example of using conversion script
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python ./diffusers/scripts/convert_original_stable_diffusion_to_diffusers.py --from_safetensors \
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--checkpoint_path="Write the filename of safetensor format here" \
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--dump_path="Write the output path here" \
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--device='cuda:0'
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```
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### 4. Setting prompts
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Set the prompt to Makefile.
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```
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# ex)
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run:
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cd ./sdcli && modal run txt2img.py \
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--prompt "hogehoge" \
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--n-prompt "mogumogu" \
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--height 768 \
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--width 512 \
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--samples 1 \
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--steps 30 \
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--seed 12321 |
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--upscaler "RealESRGAN_x2plus" \
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--use-face-enhancer "False" \
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--fix-by-controlnet-tile "True"
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```
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### 5. make deploy
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Execute the below command. An application will be deployed on Modal.
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```
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make deploy
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```
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### 6. make run
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The txt2img inference is executed with the following command.
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```
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make run
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```
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Thank you.
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