Bernardo Hernandez Adame

Director of Machine Learning Engineering at OnCorps
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Contact Information
us****@****om
(386) 825-5501
Location
Boston, Massachusetts, United States, US
Languages
  • Spanish Native or bilingual proficiency
  • German Limited working proficiency
  • Russian Professional working proficiency
  • English Native or bilingual proficiency

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Credentials

  • Masters of Arts Applied Mathematics
    University of Southern California
    Dec, 2021
    - Nov, 2024

Experience

    • United States
    • IT Services and IT Consulting
    • 1 - 100 Employee
    • Director of Machine Learning Engineering
      • Dec 2021 - Present

    • United States
    • Biotechnology Research
    • 1 - 100 Employee
    • AI Research Scientist
      • Feb 2021 - Dec 2021

      AI-driven small molecule and protein design. Lead developer of GNN molecular property prediction platform. (PyTorch, DGL). Designed multi-task GNN molecular prediction algorithms and developed in-house library tool for GNN explainability. Mentored junior researchers in algorithm development for drug discovery and best practices for MLOps. Led projects for data collection and CRO management with the Medicinal Chemistry department for the development of our internal pipelines. AI-driven small molecule and protein design. Lead developer of GNN molecular property prediction platform. (PyTorch, DGL). Designed multi-task GNN molecular prediction algorithms and developed in-house library tool for GNN explainability. Mentored junior researchers in algorithm development for drug discovery and best practices for MLOps. Led projects for data collection and CRO management with the Medicinal Chemistry department for the development of our internal pipelines.

    • United States
    • Higher Education
    • 1 - 100 Employee
    • Applied Micro-fluidics researcher
      • 2019 - 2021

      Modeled the behavior of micro-encapsulating particles through mathematical and computational/stochastic models developed by the team. Presented in 2019 APS Department of Fluid Dynamics conference. Work published APS Physical Review Letters E. Modeled the behavior of micro-encapsulating particles through mathematical and computational/stochastic models developed by the team. Presented in 2019 APS Department of Fluid Dynamics conference. Work published APS Physical Review Letters E.

    • United States
    • Higher Education
    • 1 - 100 Employee
    • Research in QML
      • Feb 2019 - Jun 2019

      Researched applications of near-term short-depth quantum circuits (our current quantum computers) in machine learning under the supervision of Peter Shor and Ramis Movassagh.

    • Researcher in Geometric Analysis
      • Feb 2019 - May 2019

      Explored the construction of ancient solutions to the Curve Shortening Flow on the sphere, which obtain infinite length as the flow is run backwards, under the supervision of Prof. Christos Mantoulidis.

    • United States
    • Education Administration Programs
    • 1 - 100 Employee
    • Researcher in Computational Biology
      • Jun 2018 - Aug 2018

      Created a (parallelizable) computer model for the inter-cellular interactions relevant to cancer formation utilizing stochastic numerical PDE methods to create a visualization of cellular membrane in cancerous protein interactions. Presented at the 2019 Joint Mathematics Meeting. Won the ‘Outstanding Poster’ award Created a (parallelizable) computer model for the inter-cellular interactions relevant to cancer formation utilizing stochastic numerical PDE methods to create a visualization of cellular membrane in cancerous protein interactions. Presented at the 2019 Joint Mathematics Meeting. Won the ‘Outstanding Poster’ award

    • United States
    • Higher Education
    • 1 - 100 Employee
    • Researcher in Numerical PDEs
      • Sep 2017 - Jun 2018

      In collaboration with Professors Luiz Faria and Carlos Perez-Arancibia generalized a numerical solver for 2-D PDEs to 3-D and compared its effectiveness to current state of the art algorithms for parabolic/elliptic BVP.

    • Researcher in Geometric Flows
      • May 2017 - Sep 2017

      With the guidance of Professor Tobias Colding and graduate student Jiewon Park analyzed self-similar solutions to the Vortex Filament Equation. Categorized conditions for the existence of rotating solutions to the flow.

Education

  • University of Southern California
    Master of Arts - MA, Computational and Applied Mathematics
    2020 - 2021
  • Massachusetts Institute of Technology
    Bachelor of Science (B.Sc.), Applied Mathematics
    2016 - 2020
  • University of Southern California
    Doctor of Philosophy - PhD, Mathematics
    2020 - 2021

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