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Machine Learning for Engineers in MATLAB

Machine learning drives technological advancement by leveraging data to gain experience. It represents a fusion of linear algebra, statistics, optimization, and computational techniques, enabling computer systems to infer relationships and make decisions from data.

This course, "Machine Learning for Engineers", is designed to immerse engineering students in the world of machine learning. It offers a comprehensive overview of both theoretical concepts and practical applications of machine learning in engineering. The course content is tailored to provide an intuitive understanding of machine learning, covering a range of topics from unsupervised to supervised learning methods.

Open Machine Learning for Engineers Course in MATLAB Online View Machine Learning for Engineers Course on File Exchange

Professor

John Hedengren

John Hedengren leads the BYU PRISM group with interests in combining data science, optimization, and automation with current projects in hybrid nuclear energy system design and unmanned aerial vehicle photogrammetry. He earned a doctoral degree at the University of Texas at Austin and worked 5 years with ExxonMobil Chemical prior to joining BYU in 2011.

Course Overview

Key aspects of the course include:

  • Practical Applications: Students explore how machine learning is reshaping various industries with a focus on engineering applications.

  • Case Studies: The course includes several case studies, providing students with practical insights into classification and regression methods.

  • Hands-on Experience: A significant portion of the course is dedicated to a hands-on group project, allowing students to apply their learning to real-world engineering problems.

  • Tools and Techniques: The course emphasizes the use of MATLAB and Python, equipping students with the skills to implement state-of-the-art machine learning methods.

Data Engineering

Classification

Supervised Learning

Unsupervised Learning

Regression

Time-Series

Computer Vision

Applications

📈=Regression
📊=Classification
⏱️=Time Series
👁️=Computer Vision
🎧=Audio

Github LogoMATLAB and Python Repositories on Github

Github Logo Course Web-site and Schedule

YouTube LogoUpcoming MathWorks Webinar ... See PDC Course for Related Work)

The materials in this archive are released under the MIT License. The financial assistance of MathWorks is gratefully acknowledged with technical assistance of Aycan Hacioglu, Jonathon Loftin, Jianghao Wang, Jacob Burrell, Krystian Perez, Sean Last, Spencer Larson, Sion Jung, Andrew Crop, Andrew Fry, Nathan Phillips, and Hannah Hanson.

For more details on the course content and structure, visit Machine Learning for Engineers course page.

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Machine Learning for Engineers in MATLAB

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