Ming Yang Zhou

Machine Learning Engineer at envision.ai
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Contact Information
us****@****om
(386) 825-5501
Location
Montreal, Quebec, Canada, CA
Languages
  • English Native or bilingual proficiency
  • French Professional working proficiency
  • Chinese Native or bilingual proficiency

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Bio

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Bryan M. Minor, Ph.D.

Ming is an exceptional data scientist with a strong work ethic and skills combined with creative problem solving ability. Always a top contributor to our data science projects with insightful analysis and constantly exceeding expectations. Pleasure to work with, Ming was a valued member of my team and it was an honor to work with him. Anyone would be fortunate to have Ming on their data science team.

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Credentials

  • Deep Learning Specialization
    Coursera
    Aug, 2018
    - Nov, 2024

Experience

    • Canada
    • Software Development
    • 1 - 100 Employee
    • Machine Learning Engineer
      • Apr 2018 - Present

    • Canada
    • Advertising Services
    • 1 - 100 Employee
    • Data Scientist
      • Jan 2018 - Apr 2018

    • Algortihm Analyst
      • Jul 2015 - Jan 2018

    • Algorithm Research Assistant
      • Jul 2014 - Jul 2015

    • Canada
    • Higher Education
    • 700 & Above Employee
    • Research Assistant
      • 2013 - 2014

      Project title: Computational prediction of DNA structureIn this project, we designed algorithms and heuristics to produce three-dimension models of chromatin (DNA). The group has already developed a software, MCMC5C, using Markov Chain Monte Carlo sampling to reproduce a set of structures that represent the input data. My works focused on designing and developing algorithms to accelerate the computation speed. My main contributions are:- Employed Parallel Tempering, an advanced MCMC technique to design a more powerful sampler.- Employed stochastic approximation methods to fine tune different parameters.- Implement parallel computing to maximize the computation efficiency.

Education

  • McGill University
    Bachelor's Degree, Joint Honours in Mathematics and Computer Science
    2011 - 2014
  • Marianopolis College
    College Degree, Pure and Applied Science
    2009 - 2011

Community

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