Jiaye Guo

Principal Scientist I at Schrödinger

New York, New York, United States
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Summary

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Jiaye Guo is a Principal Scientist at Schrödinger with seven years of research and industry experience bridging structural biology and computational drug discovery. After earning a Ph.D. in Structural Biology from Stony Brook University and a research fellowship at Memorial Sloan Kettering, Jiaye progressed through senior scientific roles to lead projects that translate structural insights into predictive models and actionable chemistry. Based in New York, they combine deep experimental training with hands-on experience in molecular modeling platforms, driving collaboration between computational teams and bench scientists. Known for moving from hypothesis-driven research to deployable solutions, Jiaye brings a practical, cross-disciplinary approach to complex biomolecular problems.
code7 years of coding experience
job2 years of employment as a software developer
bookBachelor of Science (BS) Biological Sciences, Bachelor of Science (BS) Biological Sciences at Sichuan University
bookDoctor of Philosophy (Ph.D.) Structural Biology, Doctor of Philosophy (Ph.D.) Structural Biology at Stony Brook University
languagesChinese, English
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Github Skills (30)

folding9
simulation9
binding8
periodic8
structural-biology8
molecular-simulation7
cuda6
react6
modeling6
molecular-dynamics-simulation6
estimate6
high-performance5
gpu5
mixture5
machine-learning5

Programming languages (5)

C++JavaScriptHTMLJupyter NotebookPython

Github contributions (5)

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inspiremd/kinomodel

Nov 2018 - Aug 2019

A tool for modeling different kinase conformations with various ligand binding poses.
Contributions:39 commits, 35 PRs, 18 pushes in 9 months
modelingligandkinasebinding
choderalab/sams_dunbrack

Mar 2019 - Jan 2020

This is a toolkit to estimate free energy differences between different Dunbrack clusters of kinase conformations using self-adjusted mixture sampling (SAMS).
Contributions:11 commits, 2 PRs, 6 pushes in 9 months
sciencebrain-computer-interfaceclustersfree-energydifferences
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Jiaye Guo - Principal Scientist I at Schrödinger