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G. Adam Cox

I am an experimental physicist (Ph.D. UW 2008), with research interest in quantum information sciences (algorithms and hardware), neutrinos (Sudbury Neutrino Observatory), and direct dark matter detection (EDELWEISS). I also have extensive experience in industry building ML and AI tools for both scientific and business applications.

Below is a somewhat organized, though not exhaustive (due to proprietary work or forgetfulness), list of projects, courses, code, notes, etc.

Main GH Page

Quantum Information Science

Neutrinos & Dark Matter

Maching Learning & Deep Learning

Select Publications

todo: add links

Courses Taught

  • Introductory Physics (mechanics, waves, thermodynamic, labs, etc. -- calculus based). Digipen Inst. of Tech (2008-2010)
  • Numerical Methods & Lagrangian Mechanics. Digipen
  • Modern Physics Lab (muon magnetic moment, ). Karlsruhe (with Prof. Joachim Wolf)
  • Contemporary Particle Detector Systems. Karlsruhe (with Prof. Johannes Bluemer)

IBM & SETI Institute Collaboration

Other Experience & Tools

  • Programming Languages: python, C/C++, objective-c, scala, java
  • AWS, IBM Cloud / Watson Data Platform, Google Cloud experience
  • PyTorch, Apache Spark
  • Standard DS Python Stack: numpy, scipy, pandas, xgboost, scikit-learn, etc
  • CouchDB (couchapp to monitor Muon Veto Detector at EDW III: https://github.com/gadamc/muonvetohv)
  • RL course

Education

  • Ph.D., Physics, University of Washington, 2008
  • B.S., Physics, Arizona State University, 2000

G Adam Cox's Projects

dripline icon dripline

nice web slow controls using erlang and prologix gpib/ethernet interfaces

ibmseti icon ibmseti

Simple Python package to read and analyze data files and simulated data from the SETI Institute's Allen Telescope Array

kdata icon kdata

KData: A data structure and analysis platform for the EDELWEISS direct dark matter search experiment

ml4seti icon ml4seti

My entry in the ml4seti competition

mleanalysis icon mleanalysis

Maximum Likelihood Estimation approach to low energy EDELWEISS data

models icon models

Models and examples built with TensorFlow

ntdchar icon ntdchar

NTD Characteristics Couchapp for Edelweiss

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