Hassan Jahanandish

Instructor at Stanford Byers Center for Biodesign
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(386) 825-5501

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Experience

    • United States
    • Higher Education
    • 1 - 100 Employee
    • Instructor
      • Apr 2023 - 9 months

    • United States
    • Higher Education
    • 700 & Above Employee
    • Postdoctoral Fellow
      • Jul 2022 - 1 year 6 months

    • United States
    • Venture Capital and Private Equity Principals
    • 1 - 100 Employee
    • Technical Founder Fellow
      • Sep 2022 - 1 year 4 months

    • United States
    • Higher Education
    • 700 & Above Employee
    • Graduate Research Assistant
      • Aug 2017 - Jun 2022

      Projects: 1- Deep and reinforcement learning for continuous control of robotic limbs • Developing deep learning and deep reinforcement learning models along with onboard GPU processing for machine learning and embedded control of lower-limb bionic devices using biosignals. Specifically focusing on transformer and attention models to analyze sequences of muscle human images. 2- Integration of the ultrasound technology with a robotic exoskeleton • Obtained $8000 in independent… Show more Projects: 1- Deep and reinforcement learning for continuous control of robotic limbs • Developing deep learning and deep reinforcement learning models along with onboard GPU processing for machine learning and embedded control of lower-limb bionic devices using biosignals. Specifically focusing on transformer and attention models to analyze sequences of muscle human images. 2- Integration of the ultrasound technology with a robotic exoskeleton • Obtained $8000 in independent funding to integrate the ultrasound control with an exoskeleton 3- Task-invariant learning of the human motion during continuous movements • Developed and implemented a model for task-invariant learning of human motion kinematics using ultrasound and EMG features of muscle during locomotion and unstructured movements 4- Segmentation and tracking of morphological features in muscle ultrasound images • Designed a novel algorithm to segment and track physiological features from ultrasound images of human muscle • Generated the results that were the foundation and critical for obtaining a $1.2 million grant with NSF’s National Robotics Initiative to develop intuitive ultrasound-controlled robotic leg prostheses.

    • Co-Instructor and Teaching Assistant
      • Aug 2018 - Nov 2020

      Biomedical Image Processing Numerical Methods for Biomedical Engineers (MATLAB) Nominated for the UTD President's Teaching Excellence Award

    • Telecommunications
    • 700 & Above Employee
    • AI Research Intern
      • Jun 2021 - Aug 2021

      New Jersey, United States Developed and implemented a deep learning approach for human physiological sensing to enhance human-machine interfaces.

    • Research And Development Engineer
      • Feb 2015 - Jul 2016

      Shīrāz, Fars, Iran Contributed to the design and development of a mobile solar-powered traffic surveillance device, which led to filing a local patent as a co-inventor

    • Türkiye
    • Machinery Manufacturing
    • 1 - 100 Employee
    • Research Intern
      • Oct 2013 - Jan 2014

      Ankara, Turkey Assisted the R&D team in dynamic modeling and control of a 6-DOF robotic Stewart platform.

Education

  • Stanford University
    Postdoctoral Fellowship, Artificial Intelligence in Medicine
    2022 - 2024
  • The University of Texas at Dallas
    Doctor of Philosophy - PhD, Bioengineering and Biomedical Engineering
    2017 - 2022
  • UT Southwestern Medical Center
    Doctor of Philosophy - PhD, Bioengineering and Biomedical Engineering
    2018 - 2022
  • The University of Texas at Dallas
    Master’s Degree, Bioengineering and Biomedical Engineering
    2017 - 2019
  • Shiraz University
    Bachelor's Degree, Mechanical Engineering
    2010 - 2015

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