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Highlights

  • Pro

Organizations

@scikit-learn @mne-tools @conda-forge @ncsl @bids-standard

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adam2392/README.md

Hi there !

build: running Pronouns: He/Him

I'm Adam, a postdoctoral research scientist at Columbia University in the Causal AI Lab. I am a Computing Innovation Research Fellow funded by the NSF. I obtained my PhD from Johns Hopkins University. I am working at the intersection of neuroscience and causal inference.

Employment

2022-Present

Executive Summary

At the Causal AI Lab, I am a Computing Innovation Research Fellow funded by the NSF. I am working at the intersection of neuroscience and causal inference.

My causal inference research interests are in structure learning and causal estimation in equivalence classes and their relations to neuroscience. More broadly, I develop theoretically grounded neural networks capable of understanding the causal relationships between latent factors within images, or text.

2015-2022

Executive Summary

At Johns Hopkins University, I was a NSF Graduate Research Fellow, Whitaker Fellow, Chateaubriand Fellow and ARCS Chapter Scholar. My research interests were in computational neuroscience, epilepsy, statistical machine learning, dynamical systems and control theory.

Skills

  • Python Expert
  • MATLAB Expert
  • Cython and C++ Proficient
  • R Beginner

Open-Source Summary

I am a core-contributor to scikit-learn, Py-Why, MNE-Python, MNE-BIDS, MNE-Connectivity and contributed to other packages, such as pyDMD, TVB.

Metrics

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  1. scikit-learn/scikit-learn scikit-learn/scikit-learn Public

    scikit-learn: machine learning in Python

    Python 60.1k 25.4k

  2. neurodata/treeple neurodata/treeple Public

    Scikit-learn compatible decision trees beyond those offered in scikit-learn

    Jupyter Notebook 66 14

  3. py-why/pywhy-graphs py-why/pywhy-graphs Public

    [Experimental] Causal graphs that are networkx-compliant for the py-why ecosystem.

    Python 47 8

  4. mne-tools/mne-connectivity mne-tools/mne-connectivity Public

    Connectivity algorithms that leverage the MNE-Python API.

    Python 68 34

  5. py-why/dodiscover py-why/dodiscover Public

    [Experimental] Global causal discovery algorithms

    Python 89 18

  6. mne-tools/mne-icalabel mne-tools/mne-icalabel Public

    Automatic labeling of ICA components in Python.

    Python 95 15