One of the most useful areas in machine learning is discovering hidden patterns from unlabeled data. Add the fundamentals of this in-demand skill to your Data Science toolkit. In this course, we will learn selected unsupervised learning methods for dimensionality reduction, clustering, and learning latent features. We will also focus on real-world applications such as recommender systems with hands-on examples of product recommendation algorithms.
This course is part of the Machine Learning: Theory and Hands-on Practice with Python Specialization
1,667 already enrolled

About this Course
17,069 recent views
Flexible deadlines
Reset deadlines in accordance to your schedule.
Shareable Certificate
Earn a Certificate upon completion
100% online
Start instantly and learn at your own schedule.
Course 2 of 3 in the
Intermediate Level
Calculus, Linear algebra, Python, NumPy, Pandas, Matplotlib, and Scikit-learn.
Approx. 37 hours to complete
English
What you will learn
Explain what unsupervised learning is, and list methods used in unsupervised learning.
List and explain algorithms for various matrix factorization methods, and what each is used for.
List and explain algorithms for various matrix factorization methods, and what each is used for.
Skills you will gain
- Dimensionality Reduction
- Unsupervised Learning
- Cluster Analysis
- Recommender Systems
- Matrix Factorization
Flexible deadlines
Reset deadlines in accordance to your schedule.
Shareable Certificate
Earn a Certificate upon completion
100% online
Start instantly and learn at your own schedule.
Course 2 of 3 in the
Intermediate Level
Calculus, Linear algebra, Python, NumPy, Pandas, Matplotlib, and Scikit-learn.
Approx. 37 hours to complete
English
Offered by
Start working towards your Master's degree
This course is part of the 100% online Master of Science in Data Science from University of Colorado Boulder. If you are admitted to the full program, your courses count towards your degree learning.
Syllabus - What you will learn from this course
9 hours to complete
Unsupervised Learning Intro
9 hours to complete
3 videos (Total 34 min), 9 readings, 4 quizzes
8 hours to complete
Clustering
8 hours to complete
2 videos (Total 23 min), 2 readings, 2 quizzes
8 hours to complete
Recommender System
8 hours to complete
4 videos (Total 37 min), 1 reading, 3 quizzes
14 hours to complete
Matrix Factorization
14 hours to complete
5 videos (Total 55 min), 1 reading, 2 quizzes
About the Machine Learning: Theory and Hands-on Practice with Python Specialization

Frequently Asked Questions
When will I have access to the lectures and assignments?
What will I get if I subscribe to this Specialization?
Is financial aid available?
More questions? Visit the Learner Help Center.