Data Mining: Learning From Large Datasets | ETH Zurich

ETH Zurich

Comprehensive data mining course covering supervised and unsupervised learning, feature engineering, and model evaluation. Hands-on experience with real-world datasets.

University CoursesData ScienceMachine Learning

Introduction

This course provides an introduction to data mining, focusing on learning from large datasets. It covers fundamental concepts, algorithms, and techniques in data mining, including supervised and unsupervised learning, feature engineering, and model evaluation.

Highlights

  • Comprehensive coverage of data mining techniques for large datasets
  • Hands-on experience with real-world datasets and practical applications
  • Taught by experienced instructors from ETH Zurich

Recommendation

This course is recommended for students and professionals interested in data science, machine learning, and the analysis of large-scale data. It provides a solid foundation in data mining and is suitable for both beginners and those with some prior experience in the field.

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