Machine Learning | Virginia Tech | Bert Huang

Virginia Tech

Comprehensive coverage of machine learning algorithms and techniques, hands-on experience with real-world datasets and projects, taught by an expert in the field, Bert Huang.

University CoursesDeep LearningMachine Learning

Introduction

This course covers the fundamental concepts and techniques of machine learning, including supervised and unsupervised learning, neural networks, and deep learning. It is taught by Bert Huang at Virginia Tech in Fall 2015.

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Highlights

  • Comprehensive coverage of machine learning algorithms and techniques
  • Hands-on experience with real-world datasets and projects
  • Taught by an expert in the field, Bert Huang

Recommendation

This course is highly recommended for students and professionals interested in learning the latest advancements in machine learning and its applications. It provides a solid foundation for those looking to pursue a career in data science, artificial intelligence, or related fields.

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