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@cpml-au

Computational Physics and Machine Learning Lab

Aarhus University

Computational Physics and Machine Learning Lab

Aarhus University, Denmark.

The Computational Physics and Machine Learning lab fosters the use of machine learning and advanced computational techniques for the data-driven modeling of complex systems. Special focus is on the development of novel algorithms that can discover the governing equations underlying some phenomena starting from experimental measurements or other type of data.

In contrast with purely data-driven methods and current trends in AI and ML, we strive to obtain interpretable models that generalize well on unseen data, and can provide guarantees on their safety and reliability. To achieve these goals, we use a combination of equation-based modeling and machine learning techniques, including symbolic regression, evolutionary algorithms, reinforcement learning and deep neural networks.

Link to the Research Group homepage

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  1. AlpineGP Public

    Symbolic regression of physical models via Genetic Programming.

    Python 6 5

Repositories

Showing 5 of 5 repositories
  • AlpineGP Public

    Symbolic regression of physical models via Genetic Programming.

    Python 6 MIT 5 0 1 Updated Apr 1, 2025
  • deap Public Forked from DEAP/deap

    Distributed Evolutionary Algorithms in Python

    Python 1 LGPL-3.0 1,194 0 1 Updated Mar 19, 2025
  • dctkit Public

    A toolkit for discrete calculus.

    Python 6 MIT 2 12 0 Updated Mar 5, 2025
  • .github Public
    0 0 0 0 Updated Feb 25, 2025
  • SR-DEC_Examples Public

    Examples of symbolic regression problems for physical systems using Discrete Exterior Calculus primitives.

    0 0 0 0 Updated Jan 10, 2025

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