Machine Learning & Data Mining | Caltech CS155 Course

Caltech

Comprehensive coverage of fundamental machine learning and data mining techniques, taught by experienced Caltech instructors. Hands-on programming assignments and real-world applications.

University CoursesMachine Learning

Introduction

This is the Caltech CS155 course on Machine Learning and Data Mining, offered in the Winter of 2017.

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Highlights

  • Comprehensive coverage of fundamental machine learning and data mining techniques
  • Taught by experienced instructors from Caltech
  • Hands-on programming assignments and projects
  • Exposure to real-world applications and case studies

Recommendation

This course is highly recommended for students and professionals interested in gaining a solid understanding of machine learning and its practical applications. It is suitable for those with a background in computer science, mathematics, or related fields who want to develop their skills in this rapidly evolving field.

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