Data-Driven Engineering Tutorials

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  • Опубліковано 14 бер 2023
  • Title: Learn Data-Driven Engineering with Interactive Modules
    Online Course: apmonitor.com/dde
    Data engineering with acquisition, transport, curation, and storage of data has emerged as a key role in Industry 4.0. This tutorial session shares new resources for hands-on data-driven engineering to teach important data engineering skills in collection, cleansing, pipelines, storage, and quality assessments. The sequence of learning modules covers introduction to data science in Python & MATLAB, data engineering, machine learning, process automation, optimization, and advanced control. Approximately 5,000 students per day access the freely available learning modules as self-paced tutorials on APMonitor.com or for Professional Development Credit on AIChE Academy. The 11 courses contain Python Jupyter Notebooks or MathWorks Live Scripts to provide interactive learning environments. Solution videos for each exercise guide students through potential solution strategies. One of the courses, Machine Learning for Engineers (apmonitor.com/pds), has 36 learning modules and 18 case studies that are specific to engineering practice with classification and regression in computer vision, energy, manufacturing, cybersecurity, and engineering design. This tutorial session gives an overview of the learning modules with a few interactive case studies during the session.
    Dr. John Hedengren is a Professor at Brigham Young University in the Chemical Engineering Department. He leads the BYU Process Research and Intelligent Systems Modeling (PRISM) group with a current focus on structured machine learning for optimization of energy systems, unmanned aircraft, and drilling. Prior to BYU he worked in industry for 7 years on nonlinear estimation and predictive control for polymers. His work includes the APMonitor Optimization Suite with extension to Python GEKKO. He led the development of the Arduino-based Temperature Control Lab that is currently used by 70 universities for data science and process control education. His 85 publications span topics of data science, machine learning, smart grid optimization, unmanned aerial systems, and predictive control. He is the Chair of the Education Committee for the IEEE Control Systems Society, Distinguished Lecturer for the Society of Petroleum Engineers (2018-2019), recipient of the 2014 AIChE CAST Division David Himmelblau Award for Innovations in Computer-Based Chemical Engineering, and the 2018 AIChE CAST Division Computing Practice Award.
  • Наука та технологія

КОМЕНТАРІ • 5

  • @eric13hill
    @eric13hill Рік тому +3

    Thanks for all of the work you do to make some of your knowledge available to others!

  • @HuyNguyen-bw4sv
    @HuyNguyen-bw4sv Рік тому

    Thank you!

  • @HeyFaheem
    @HeyFaheem Рік тому +1

    Your Works are Great Sir...
    Thank You For Recommending This Video To Me.

  • @hubstrangers3450
    @hubstrangers3450 Рік тому +1

    Thanks but programming trend chart is 2019!!!!, with copilot, chatGTP and many more out there, where does this educational scenario leading into .......

    • @apm
      @apm  Рік тому +1

      Python is still on top in 2023. The TIOBE index is a good source of trends: www.tiobe.com/tiobe-index/