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Python implementation of PME-toolkit with PME, PI-PME, and PD-PME workflows

Project description

PME-toolkit (Python)

Python implementation of PME-toolkit for design-space dimensionality reduction in parametric shape optimization.

Supports:

  • PME (Parametric Model Embedding)
  • PI-PME (Physics-Informed PME)
  • PD-PME (Physics-Driven PME)
  • analytical backmapping to original design variables

Overview

The Python package provides a fully functional implementation of PME-based workflows using a JSON-driven interface for reproducible studies.

It is aligned with the MATLAB implementation and validated through cross-language regression tests.


Installation

From PyPI

pip install pme-toolkit

From source (development mode)

pip install -e python/

Command-line interface

Run a PME case:

pme-run tests/cases/test_glider.json

Run backmapping:

pme-back tests/cases/test_glider_back.json

The CLI:

  • parses the JSON configuration
  • executes the PME workflow
  • writes outputs to the specified outdir
  • ensures consistency with MATLAB results

Programmatic usage

Example:

from pme_toolkit.model import fit_from_case

model = fit_from_case("tests/cases/test_glider.json")

print(model.nconf)
print(model.alpha_train.shape)

Repository integration

The Python implementation is part of the full PME-toolkit repository:

  • shared JSON configuration format
  • shared datasets
  • shared benchmark definitions
  • validated against MATLAB through regression testing

Testing

From repository root:

pytest tests/python -q

Test suite covers:

  • configuration loading
  • PME workflows
  • backmapping
  • regression against MATLAB reference

Datasets

  • lightweight test dataset:

    tests/data/

  • benchmark datasets:

    databases/


Status

The Python implementation is fully functional for PME, PI-PME, and PD-PME within the current scope.

It is actively maintained and serves as a production-ready interface for reproducible PME workflows.

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