Statistical Machine Learning | SFU CMPT 727 | Maxwell Libbrecht

Maxwell Libbrecht

Gain a strong foundation in statistical machine learning with SFU CMPT 727, taught by expert Maxwell Libbrecht. Covers Bayesian methods, graphical models, and deep learning.

University CoursesMachine Learning

Introduction

CMPT 727 Spring 2022, Probabilistic Machine Learning is a course that covers the fundamental concepts and techniques of statistical machine learning.

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Highlights

  • Covers a wide range of probabilistic machine learning topics, including Bayesian methods, graphical models, and deep learning.
  • Taught by Maxwell Libbrecht, an expert in the field of machine learning.
  • Includes a YouTube playlist with lecture videos for self-paced learning.

Recommendation

This course is recommended for students and professionals interested in gaining a strong foundation in statistical machine learning. It is suitable for those with a background in computer science, mathematics, or a related field, and who want to expand their knowledge in the field of machine learning.

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