Undergraduate Machine Learning at UBC 2012 | Nando de Freitas

Nando de Freitas

Comprehensive undergraduate-level machine learning course taught by renowned expert Nando de Freitas at the University of British Columbia in 2012. Covers fundamental concepts and techniques.

University CoursesArtificial IntelligenceMachine Learning

Introduction

This is an undergraduate-level machine learning course taught by Nando de Freitas at the University of British Columbia in 2012. The course covers fundamental concepts and techniques in machine learning.

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Highlights

  • Comprehensive coverage of machine learning topics, including supervised and unsupervised learning, neural networks, and more
  • Taught by renowned machine learning expert Nando de Freitas
  • Lectures available on YouTube for free access

Recommendation

This course is recommended for students and learners interested in gaining a solid foundation in machine learning. It provides a thorough introduction to the field and is suitable for both beginners and those with some prior knowledge in the subject.

YouTube Videos

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