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  • Google Research

    Jupyter Notebook Apache License 2.0 Updated Jan 13, 2021
  • Code for optimizing max variance subspaces from Elsayed & Lara et al. Nature Communications 2016

    MATLAB 1 1 Updated Jan 5, 2021
  • Code for sampling random subspaces from Elsayed & Lara et al. Nature Communications 2016

    MATLAB 1 1 Updated Jan 5, 2021
  • An adversarial example library for constructing attacks, building defenses, and benchmarking both

    Python MIT License Updated Jul 9, 2020
  • models Public

    Forked from tensorflow/models

    Models and examples built with TensorFlow

    Python Apache License 2.0 Updated Jul 18, 2019
  • Code for "A Unified Theory of Early Visual Representations from Retina to Cortex through Anatomically Constrained Deep CNNs", ICLR 2019

    Jupyter Notebook 1 1 Updated Jan 7, 2019
  • playground Public

    Jupyter Notebook Updated Aug 3, 2018
  • Feed-Forward Generator Model

    MATLAB Updated Jun 16, 2018
  • CFR Public

    This code package is for the Corrected-Fisher-Randomization (CFR) method. This method generates random surrogate data that preserves a specified set of first and second order marginal moments of a …

    Fortran 10 Updated Sep 9, 2017
  • TME Public

    This code package is for the Tensor-Maximum-Entropy (TME) method. This method generates random surrogate data that preserves a specified set of first and second order marginal moments of a data ten…

    Fortran 18 6 Updated Sep 9, 2017
  • rand_tensor Public

    This code package generates random tensors with user specified marginal means and covariances from one of two optional distributions. The first is the maximum-entropy-distribution with the specifie…

    Python 5 3 Updated Aug 26, 2017
  • Jupyter Notebook Updated Jun 21, 2017
  • Computation using data flow graphs for scalable machine learning

    C++ Apache License 2.0 Updated Feb 3, 2017