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Profile Details
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USD 125 /hr
Hire Dr. Gage D.
United States
USD 125 /hr

Princeton PhD Researcher/Lecturer in Physics and Artificial Intelligence

Profile Summary
Subject Matter Expertise
Services
Writing Technical Writing, Creative Writing, General Proofreading & Editing
Research Scientific and Technical Research, Systematic Literature Review
Consulting Scientific and Technical Consulting
Data & AI Algorithm Design-ML
Work Experience

Postdoctoral Researcher and Lecturer in Physics

Princeton Univ

September 2023 - Present

Postdoctoral Researcher

Princeton University

August 2023 - Present

Education

Ph.D. (Physics)

Princeton University

September 2018 - August 2023

B.S. in Physics (Distinguished Major) and Engineering Science (Physics)

University of Virginia

August 2014 - May 2018

Certifications
  • Certification details not provided.
Publications
JOURNAL ARTICLE
Gage DeZoort, Boris Hanin (2025). Principles for Initialization and Architecture Selection in Graph Neural Networks with ReLU Activations . SIAM Journal on Mathematics of Data Science.
Gage DeZoort, Peter W. Battaglia, Catherine Biscarat, Jean-Roch Vlimant (2023). Graph neural networks at the Large Hadron Collider . Nature Reviews Physics.
Gage DeZoort, Savannah Thais, Javier Duarte, Vesal Razavimaleki, Markus Atkinson, Isobel Ojalvo, Mark Neubauer, Peter Elmer(2021). Charged Particle Tracking via Edge-Classifying Interaction Networks . Computing and Software for Big Science. 5. (1). Springer Science and Business Media {LLC}
PREPRINT
(2021). Charged particle tracking via edge-classifying interaction networks.
(2021). Instance Segmentation GNNs for One-Shot Conformal Tracking at the LHC. Third Workshop on Machine Learning and the Physical Sciences (NeurIPS 2020), Vancouver, Canada.
(2020). Accelerated Charged Particle Tracking with Graph Neural Networks on FPGAs. Third Workshop on Machine Learning and the Physical Sciences (NeurIPS 2020), Vancouver, Canada.
(2015). Performance of Wavelength-Shifting Fibers for the Mu2e Cosmic Ray Veto Detector.