Introduction to Machine Learning: Unsupervised Learning explores how machines uncover structure, patterns, and relationships in data without labeled outcomes. In this course, you’ll learn how to analyze and visualize high-dimensional data using Principal Component Analysis, discover natural groupings through clustering methods like K-Means and hierarchical clustering, and tackle real-world challenges such as missing data and recommender systems. Through hands-on practice and thoughtful interpretation, you’ll build the intuition and practical skills needed to extract insight from complex, unlabeled datasets.

Introduction to Machine Learning: Unsupervised Learning

Introduction to Machine Learning: Unsupervised Learning
This course is part of Machine Learning: Theory and Hands-on Practice with Python Specialization

Instructor: Daniel E. Acuna
Access provided by Abu Dhabi National Oil Company
Recommended experience
What you'll learn
Explain the goals, challenges, and appropriate use cases of unsupervised learning.
Apply dimensionality reduction techniques to analyze and visualize high-dimensional data.
Discover and interpret structure in data using clustering methods.
Address missing data and recommender system problems using matrix completion techniques.
Skills you'll gain
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January 2026
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