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A package to use the OstrisTraining

Project description

Libs-Ostris (TechTrash_OstrisTraining)

This package provides a small Python wrapper around an Ostris training workflow.

The main entrypoint is OstrisTraining.train().

What train() does

  • Download + prepare dataset from a public ZIP URL
    • ZIP root must contain image files + matching caption files (.txt)
    • Example pair: photobelle.png + photobelle.txt
    • Output: files are normalized to image_0.<ext>, image_0.txt, image_1.<ext>, image_1.txt, ...
  • Write config YAML from a string into a deterministic file:
    • {absolute_path_racine}/config-{user_name}.yaml
    • Before writing, we patch the YAML automatically:
      • config.name is forced to user_name
      • config.process[*].datasets[*].folder_path is forced to the prepared dataset folder
      • config.process[*].trigger_word is forced to:
        • "ohwx woman" if gender="woman"
        • "ohwx man" if gender="man"
  • Run training
    • Currently _train_model() is a stub in main.py (replace with real training call)

Install (local dev)

From this folder:

pip install -e .

Usage (recommended)

The best reference is src/ostristraining/example.py.

You can run it directly after installing:

python3 -m ostristraining.example

Or copy/paste this minimal usage:

from ostristraining.main import OstrisTraining

trainer = OstrisTraining(
    user_name="demo_user",
    absolute_path_ostris="/tmp/ostris_project",
    absolute_path_racine="/tmp/ostris_runs",
    gender="woman",  # "woman" or "man"
)

# Public ZIP URL containing images + captions at the ZIP root.
url_zip_dataset = "https://example.com/dataset.zip"

# YAML config must be a STRING. Newlines + indentation matter in YAML.
# Tip: start from `src/ostristraining/example_config.yaml` and customize it.
config_yaml_content = \"\"\"\
job: "extension"
config:
  name: "will_be_overwritten"
  process:
    - type: "diffusion_trainer"
      trigger_word: "will_be_overwritten"
      datasets:
        - folder_path: "will_be_overwritten"
\"\"\"

trained_model_path = trainer.train(
    url_zip_dataset=url_zip_dataset,
    config_yaml_content=config_yaml_content,
)

print(trained_model_path)

Dataset ZIP format (important)

At the root of the ZIP, you must have:

  • images: .png, .jpg, .jpeg, .webp, .bmp, .gif
  • captions: .txt

And each image must have a caption with the same base name:

  • photo001.png + photo001.txt
  • photo002.jpg + photo002.txt

If an image has no matching .txt, it is skipped.

Config patching rules (quick recap)

If you send a config similar to src/ostristraining/example_config.yaml, the library will ensure:

  • config.name == user_name
  • config.process[*].datasets[*].folder_path == {absolute_path_ostris}/dataset/{user_name}
  • config.process[*].trigger_word == "ohwx woman" | "ohwx man" based on gender

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