1
0
mirror of https://github.com/huggingface/diffusers.git synced 2026-01-27 17:22:53 +03:00
Files
diffusers/examples
Andreas Steiner d06e06940b Adds profiling flags, computes train metrics average. (#3053)
* WIP controlnet training

- bugfix --streaming
- bugfix running report_to!='wandb'
- adds memory profile before validation

* Adds final logging statement.

* Sets train epochs to 11.

Looking at a longer ~16ep run, we see only good validation images
after ~11ep:

https://wandb.ai/andsteing/controlnet_fill50k/runs/3j2hx6n8

* Removes --logging_dir (it's not used).

* Adds --profile flags.

* Updates --output_dir=runs/fill-circle-{timestamp}.

* Compute mean of `train_metrics`.

Previously `train_metrics[-1]` was logged, resulting in very bumpy train
metrics.

* Improves logging a bit.

- adds l2_grads gradient norm logging
- adds steps_per_sec
- sets walltime as x coordinate of train/step
- logs controlnet_params config

* Adds --ccache (doesn't really help though).

* minor fix in controlnet flax example (#2986)

* fix the error when push_to_hub but not log validation

* contronet_from_pt & controlnet_revision

* add intermediate checkpointing to the guide

* Bugfix --profile_steps

* Sets `RACKER_PROJECT_NAME='controlnet_fill50k'`.

* Logs fractional epoch.

* Adds relative `walltime` metric.

* Adds `StepTraceAnnotation` and uses `global_step` insetad of `step`.

* Applied `black`.

* Streamlines commands in README a bit.

* Removes `--ccache`.

This makes only a very small difference (~1 min) with this model size, so removing
the option introduced in cdb3cc.

* Re-ran `black`.

* Update examples/controlnet/README.md

Co-authored-by: Sayak Paul <spsayakpaul@gmail.com>

* Converts spaces to tab.

* Removes repeated args.

* Skips first step (compilation) in profiling

* Updates README with profiling instructions.

* Unifies tabs/spaces in README.

* Re-ran style & quality.

---------
Co-authored-by: Sayak Paul <spsayakpaul@gmail.com>
2023-04-12 08:29:18 -10:00
..
2023-04-11 17:54:50 +01:00
2023-03-01 10:31:00 +01:00
2023-03-01 10:31:00 +01:00

🧨 Diffusers Examples

Diffusers examples are a collection of scripts to demonstrate how to effectively use the diffusers library for a variety of use cases involving training or fine-tuning.

Note: If you are looking for official examples on how to use diffusers for inference, please have a look at src/diffusers/pipelines

Our examples aspire to be self-contained, easy-to-tweak, beginner-friendly and for one-purpose-only. More specifically, this means:

  • Self-contained: An example script shall only depend on "pip-install-able" Python packages that can be found in a requirements.txt file. Example scripts shall not depend on any local files. This means that one can simply download an example script, e.g. train_unconditional.py, install the required dependencies, e.g. requirements.txt and execute the example script.
  • Easy-to-tweak: While we strive to present as many use cases as possible, the example scripts are just that - examples. It is expected that they won't work out-of-the box on your specific problem and that you will be required to change a few lines of code to adapt them to your needs. To help you with that, most of the examples fully expose the preprocessing of the data and the training loop to allow you to tweak and edit them as required.
  • Beginner-friendly: We do not aim for providing state-of-the-art training scripts for the newest models, but rather examples that can be used as a way to better understand diffusion models and how to use them with the diffusers library. We often purposefully leave out certain state-of-the-art methods if we consider them too complex for beginners.
  • One-purpose-only: Examples should show one task and one task only. Even if a task is from a modeling point of view very similar, e.g. image super-resolution and image modification tend to use the same model and training method, we want examples to showcase only one task to keep them as readable and easy-to-understand as possible.

We provide official examples that cover the most popular tasks of diffusion models. Official examples are actively maintained by the diffusers maintainers and we try to rigorously follow our example philosophy as defined above. If you feel like another important example should exist, we are more than happy to welcome a Feature Request or directly a Pull Request from you!

Training examples show how to pretrain or fine-tune diffusion models for a variety of tasks. Currently we support:

Task 🤗 Accelerate 🤗 Datasets Colab
Unconditional Image Generation Open In Colab
Text-to-Image fine-tuning
Textual Inversion - Open In Colab
Dreambooth - Open In Colab
ControlNet -
InstructPix2Pix -
Reinforcement Learning for Control - - coming soon.

Community

In addition, we provide community examples, which are examples added and maintained by our community. Community examples can consist of both training examples or inference pipelines. For such examples, we are more lenient regarding the philosophy defined above and also cannot guarantee to provide maintenance for every issue. Examples that are useful for the community, but are either not yet deemed popular or not yet following our above philosophy should go into the community examples folder. The community folder therefore includes training examples and inference pipelines. Note: Community examples can be a great first contribution to show to the community how you like to use diffusers 🪄.

Research Projects

We also provide research_projects examples that are maintained by the community as defined in the respective research project folders. These examples are useful and offer the extended capabilities which are complementary to the official examples. You may refer to research_projects for details.

Important note

To make sure you can successfully run the latest versions of the example scripts, you have to install the library from source and install some example-specific requirements. To do this, execute the following steps in a new virtual environment:

git clone https://github.com/huggingface/diffusers
cd diffusers
pip install .

Then cd in the example folder of your choice and run

pip install -r requirements.txt