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@MachineLearningLifeScience

Machine Learning in Life Science

Welcome to the github page for the Center for Basic Machine Learning Research in Life Science

We conduct the basic machine learning research needed to estimate representations of biomedical data that are

  • Robust
  • Interpretable
  • Data efficient
  • Reflective of inherent data uncertainty
  • Able to leverage existing knowledge

These representations are both predictive and knowledge discovery tasks.

Research

Our research focuses on four themes, and each theme advances different aspects of representation learning for life science and support each other:

  1. Meaningful representation of data and computational and mathematical tools development to realize the answer.
  2. Geometric constructions to incorporate existing knowledge into representations and ensure that the result is understandable by humans.
  3. Representation of data often appearing within life science, such as trees, graphs, and sequences.
  4. Inclusion of real data that is “noisy” and investigation of how associated uncertainty is best encoded.

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  1. meaningful-protein-representations meaningful-protein-representations Public

    Jupyter Notebook 109 7

  2. stochman stochman Public

    Algorithms for computations on random manifolds made easier

    Python 89 10

  3. BEND BEND Public

    Forked from frederikkemarin/BEND

    Benchmarking DNA Language Models on Biologically Meaningful Tasks

    Python 1

  4. poli poli Public

    A library of discrete objectives

    Python 20 1

  5. hdbo_benchmark hdbo_benchmark Public

    Code for "A survey and benchmark of high-dimensional Bayesian optimization of discrete sequences"

    Python 11

  6. torchplot torchplot Public

    Plotting pytorch tensors made easy!

    Python 15 1

Repositories

Showing 10 of 12 repositories

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