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# Generative Models by Stability AI |
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![sample1](assets/000.jpg) |
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## News |
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**November 30, 2023** |
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- Following the launch of SDXL-Turbo, we are releasing [SD-Turbo](https://huggingface.co/stabilityai/sd-turbo). |
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**November 28, 2023** |
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- We are releasing SDXL-Turbo, a lightning fast text-to image model. |
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Alongside the model, we release a [technical report](https://stability.ai/research/adversarial-diffusion-distillation) |
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- Usage: |
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- Follow the installation instructions or update the existing environment with `pip install streamlit-keyup`. |
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- Download the [weights](https://huggingface.co/stabilityai/sdxl-turbo) and place them in the `checkpoints/` directory. |
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- Run `streamlit run scripts/demo/turbo.py`. |
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![tile](assets/turbo_tile.png) |
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**November 21, 2023** |
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- We are releasing Stable Video Diffusion, an image-to-video model, for research purposes: |
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- [SVD](https://huggingface.co/stabilityai/stable-video-diffusion-img2vid): This model was trained to generate 14 |
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frames at resolution 576x1024 given a context frame of the same size. |
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We use the standard image encoder from SD 2.1, but replace the decoder with a temporally-aware `deflickering decoder`. |
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- [SVD-XT](https://huggingface.co/stabilityai/stable-video-diffusion-img2vid-xt): Same architecture as `SVD` but finetuned |
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for 25 frame generation. |
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- You can run the community-build gradio demo locally by running `python -m scripts.demo.gradio_app`. |
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- We provide a streamlit demo `scripts/demo/video_sampling.py` and a standalone python script `scripts/sampling/simple_video_sample.py` for inference of both models. |
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- Alongside the model, we release a [technical report](https://stability.ai/research/stable-video-diffusion-scaling-latent-video-diffusion-models-to-large-datasets). |
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![tile](assets/tile.gif) |
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**July 26, 2023** |
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- We are releasing two new open models with a |
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permissive [`CreativeML Open RAIL++-M` license](model_licenses/LICENSE-SDXL1.0) (see [Inference](#inference) for file |
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hashes): |
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- [SDXL-base-1.0](https://huggingface.co/stabilityai/stable-diffusion-xl-base-1.0): An improved version |
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over `SDXL-base-0.9`. |
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- [SDXL-refiner-1.0](https://huggingface.co/stabilityai/stable-diffusion-xl-refiner-1.0): An improved version |
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over `SDXL-refiner-0.9`. |
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![sample2](assets/001_with_eval.png) |
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**July 4, 2023** |
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- A technical report on SDXL is now available [here](https://arxiv.org/abs/2307.01952). |
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**June 22, 2023** |
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- We are releasing two new diffusion models for research purposes: |
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- `SDXL-base-0.9`: The base model was trained on a variety of aspect ratios on images with resolution 1024^2. The |
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base model uses [OpenCLIP-ViT/G](https://github.com/mlfoundations/open_clip) |
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and [CLIP-ViT/L](https://github.com/openai/CLIP/tree/main) for text encoding whereas the refiner model only uses |
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the OpenCLIP model. |
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- `SDXL-refiner-0.9`: The refiner has been trained to denoise small noise levels of high quality data and as such is |
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not expected to work as a text-to-image model; instead, it should only be used as an image-to-image model. |
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If you would like to access these models for your research, please apply using one of the following links: |
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[SDXL-0.9-Base model](https://huggingface.co/stabilityai/stable-diffusion-xl-base-0.9), |
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and [SDXL-0.9-Refiner](https://huggingface.co/stabilityai/stable-diffusion-xl-refiner-0.9). |
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This means that you can apply for any of the two links - and if you are granted - you can access both. |
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Please log in to your Hugging Face Account with your organization email to request access. |
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**We plan to do a full release soon (July).** |
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## The codebase |
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### General Philosophy |
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Modularity is king. This repo implements a config-driven approach where we build and combine submodules by |
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calling `instantiate_from_config()` on objects defined in yaml configs. See `configs/` for many examples. |
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### Changelog from the old `ldm` codebase |
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For training, we use [PyTorch Lightning](https://lightning.ai/docs/pytorch/stable/), but it should be easy to use other |
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training wrappers around the base modules. The core diffusion model class (formerly `LatentDiffusion`, |
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now `DiffusionEngine`) has been cleaned up: |
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- No more extensive subclassing! We now handle all types of conditioning inputs (vectors, sequences and spatial |
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conditionings, and all combinations thereof) in a single class: `GeneralConditioner`, |
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see `sgm/modules/encoders/modules.py`. |
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- We separate guiders (such as classifier-free guidance, see `sgm/modules/diffusionmodules/guiders.py`) from the |
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samplers (`sgm/modules/diffusionmodules/sampling.py`), and the samplers are independent of the model. |
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- We adopt the ["denoiser framework"](https://arxiv.org/abs/2206.00364) for both training and inference (most notable |
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change is probably now the option to train continuous time models): |
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* Discrete times models (denoisers) are simply a special case of continuous time models (denoisers); |
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see `sgm/modules/diffusionmodules/denoiser.py`. |
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* The following features are now independent: weighting of the diffusion loss |
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function (`sgm/modules/diffusionmodules/denoiser_weighting.py`), preconditioning of the |
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network (`sgm/modules/diffusionmodules/denoiser_scaling.py`), and sampling of noise levels during |
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training (`sgm/modules/diffusionmodules/sigma_sampling.py`). |
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- Autoencoding models have also been cleaned up. |
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## Installation: |
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<a name="installation"></a> |
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#### 1. Clone the repo |
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```shell |
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git clone https://github.com/Stability-AI/generative-models.git |
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cd generative-models |
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``` |
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#### 2. Setting up the virtualenv |
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This is assuming you have navigated to the `generative-models` root after cloning it. |
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**NOTE:** This is tested under `python3.10`. For other python versions, you might encounter version conflicts. |
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**PyTorch 2.0** |
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```shell |
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# install required packages from pypi |
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python3 -m venv .pt2 |
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source .pt2/bin/activate |
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pip3 install -r requirements/pt2.txt |
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``` |
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#### 3. Install `sgm` |
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```shell |
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pip3 install . |
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``` |
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#### 4. Install `sdata` for training |
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```shell |
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pip3 install -e git+https://github.com/Stability-AI/datapipelines.git@main#egg=sdata |
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``` |
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## Packaging |
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This repository uses PEP 517 compliant packaging using [Hatch](https://hatch.pypa.io/latest/). |
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To build a distributable wheel, install `hatch` and run `hatch build` |
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(specifying `-t wheel` will skip building a sdist, which is not necessary). |
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``` |
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pip install hatch |
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hatch build -t wheel |
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``` |
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You will find the built package in `dist/`. You can install the wheel with `pip install dist/*.whl`. |
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Note that the package does **not** currently specify dependencies; you will need to install the required packages, |
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depending on your use case and PyTorch version, manually. |
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## Inference |
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We provide a [streamlit](https://streamlit.io/) demo for text-to-image and image-to-image sampling |
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in `scripts/demo/sampling.py`. |
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We provide file hashes for the complete file as well as for only the saved tensors in the file ( |
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see [Model Spec](https://github.com/Stability-AI/ModelSpec) for a script to evaluate that). |
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The following models are currently supported: |
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- [SDXL-base-1.0](https://huggingface.co/stabilityai/stable-diffusion-xl-base-1.0) |
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``` |
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File Hash (sha256): 31e35c80fc4829d14f90153f4c74cd59c90b779f6afe05a74cd6120b893f7e5b |
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Tensordata Hash (sha256): 0xd7a9105a900fd52748f20725fe52fe52b507fd36bee4fc107b1550a26e6ee1d7 |
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``` |
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- [SDXL-refiner-1.0](https://huggingface.co/stabilityai/stable-diffusion-xl-refiner-1.0) |
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``` |
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File Hash (sha256): 7440042bbdc8a24813002c09b6b69b64dc90fded4472613437b7f55f9b7d9c5f |
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Tensordata Hash (sha256): 0x1a77d21bebc4b4de78c474a90cb74dc0d2217caf4061971dbfa75ad406b75d81 |
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``` |
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- [SDXL-base-0.9](https://huggingface.co/stabilityai/stable-diffusion-xl-base-0.9) |
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- [SDXL-refiner-0.9](https://huggingface.co/stabilityai/stable-diffusion-xl-refiner-0.9) |
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- [SD-2.1-512](https://huggingface.co/stabilityai/stable-diffusion-2-1-base/blob/main/v2-1_512-ema-pruned.safetensors) |
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- [SD-2.1-768](https://huggingface.co/stabilityai/stable-diffusion-2-1/blob/main/v2-1_768-ema-pruned.safetensors) |
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**Weights for SDXL**: |
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**SDXL-1.0:** |
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The weights of SDXL-1.0 are available (subject to |
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a [`CreativeML Open RAIL++-M` license](model_licenses/LICENSE-SDXL1.0)) here: |
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- base model: https://huggingface.co/stabilityai/stable-diffusion-xl-base-1.0/ |
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- refiner model: https://huggingface.co/stabilityai/stable-diffusion-xl-refiner-1.0/ |
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**SDXL-0.9:** |
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The weights of SDXL-0.9 are available and subject to a [research license](model_licenses/LICENSE-SDXL0.9). |
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If you would like to access these models for your research, please apply using one of the following links: |
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[SDXL-base-0.9 model](https://huggingface.co/stabilityai/stable-diffusion-xl-base-0.9), |
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and [SDXL-refiner-0.9](https://huggingface.co/stabilityai/stable-diffusion-xl-refiner-0.9). |
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This means that you can apply for any of the two links - and if you are granted - you can access both. |
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Please log in to your Hugging Face Account with your organization email to request access. |
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After obtaining the weights, place them into `checkpoints/`. |
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Next, start the demo using |
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``` |
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streamlit run scripts/demo/sampling.py --server.port <your_port> |
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``` |
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### Invisible Watermark Detection |
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Images generated with our code use the |
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[invisible-watermark](https://github.com/ShieldMnt/invisible-watermark/) |
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library to embed an invisible watermark into the model output. We also provide |
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a script to easily detect that watermark. Please note that this watermark is |
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not the same as in previous Stable Diffusion 1.x/2.x versions. |
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To run the script you need to either have a working installation as above or |
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try an _experimental_ import using only a minimal amount of packages: |
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```bash |
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python -m venv .detect |
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source .detect/bin/activate |
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pip install "numpy>=1.17" "PyWavelets>=1.1.1" "opencv-python>=4.1.0.25" |
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pip install --no-deps invisible-watermark |
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``` |
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To run the script you need to have a working installation as above. The script |
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is then useable in the following ways (don't forget to activate your |
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virtual environment beforehand, e.g. `source .pt1/bin/activate`): |
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```bash |
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# test a single file |
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python scripts/demo/detect.py <your filename here> |
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# test multiple files at once |
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python scripts/demo/detect.py <filename 1> <filename 2> ... <filename n> |
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# test all files in a specific folder |
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python scripts/demo/detect.py <your folder name here>/* |
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``` |
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## Training: |
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We are providing example training configs in `configs/example_training`. To launch a training, run |
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``` |
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python main.py --base configs/<config1.yaml> configs/<config2.yaml> |
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``` |
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where configs are merged from left to right (later configs overwrite the same values). |
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This can be used to combine model, training and data configs. However, all of them can also be |
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defined in a single config. For example, to run a class-conditional pixel-based diffusion model training on MNIST, |
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run |
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```bash |
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python main.py --base configs/example_training/toy/mnist_cond.yaml |
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``` |
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**NOTE 1:** Using the non-toy-dataset |
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configs `configs/example_training/imagenet-f8_cond.yaml`, `configs/example_training/txt2img-clipl.yaml` |
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and `configs/example_training/txt2img-clipl-legacy-ucg-training.yaml` for training will require edits depending on the |
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used dataset (which is expected to stored in tar-file in |
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the [webdataset-format](https://github.com/webdataset/webdataset)). To find the parts which have to be adapted, search |
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for comments containing `USER:` in the respective config. |
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**NOTE 2:** This repository supports both `pytorch1.13` and `pytorch2`for training generative models. However for |
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autoencoder training as e.g. in `configs/example_training/autoencoder/kl-f4/imagenet-attnfree-logvar.yaml`, |
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only `pytorch1.13` is supported. |
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**NOTE 3:** Training latent generative models (as e.g. in `configs/example_training/imagenet-f8_cond.yaml`) requires |
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retrieving the checkpoint from [Hugging Face](https://huggingface.co/stabilityai/sdxl-vae/tree/main) and replacing |
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the `CKPT_PATH` placeholder in [this line](configs/example_training/imagenet-f8_cond.yaml#81). The same is to be done |
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for the provided text-to-image configs. |
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### Building New Diffusion Models |
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#### Conditioner |
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The `GeneralConditioner` is configured through the `conditioner_config`. Its only attribute is `emb_models`, a list of |
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different embedders (all inherited from `AbstractEmbModel`) that are used to condition the generative model. |
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All embedders should define whether or not they are trainable (`is_trainable`, default `False`), a classifier-free |
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guidance dropout rate is used (`ucg_rate`, default `0`), and an input key (`input_key`), for example, `txt` for |
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text-conditioning or `cls` for class-conditioning. |
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When computing conditionings, the embedder will get `batch[input_key]` as input. |
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We currently support two to four dimensional conditionings and conditionings of different embedders are concatenated |
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appropriately. |
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Note that the order of the embedders in the `conditioner_config` is important. |
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#### Network |
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The neural network is set through the `network_config`. This used to be called `unet_config`, which is not general |
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enough as we plan to experiment with transformer-based diffusion backbones. |
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#### Loss |
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The loss is configured through `loss_config`. For standard diffusion model training, you will have to |
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set `sigma_sampler_config`. |
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#### Sampler config |
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As discussed above, the sampler is independent of the model. In the `sampler_config`, we set the type of numerical |
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solver, number of steps, type of discretization, as well as, for example, guidance wrappers for classifier-free |
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guidance. |
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### Dataset Handling |
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For large scale training we recommend using the data pipelines from |
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our [data pipelines](https://github.com/Stability-AI/datapipelines) project. The project is contained in the requirement |
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and automatically included when following the steps from the [Installation section](#installation). |
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Small map-style datasets should be defined here in the repository (e.g., MNIST, CIFAR-10, ...), and return a dict of |
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data keys/values, |
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e.g., |
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```python |
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example = {"jpg": x, # this is a tensor -1...1 chw |
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"txt": "a beautiful image"} |
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``` |
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where we expect images in -1...1, channel-first format. |
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