In “Applied Unsupervised Learning in Python,” you will learn how to use algorithms to find interesting structure in datasets. You will practice applying, interpreting, and refining unsupervised machine learning models to solve a diverse set of problems on real-world datasets.

Applied Unsupervised Learning in Python

Applied Unsupervised Learning in Python
This course is part of More Applied Data Science with Python Specialization

Instructor: Kevyn Collins-Thompson
Access provided by Siemens
Recommended experience
What you'll learn
Apply unsupervised learning methods, such as dimensionality reduction, manifold learning, and density estimation, to transform and visualize data.
Understand, evaluate, optimize, and correctly apply clustering algorithms using hierarchical, partitioning, and density-based methods.
Use topic modeling to find important themes in text data and use word embeddings to analyze patterns in text data.
Manage missing data using supervised and unsupervised imputation methods, and use semi-supervised learning to work with partially-labeled datasets.
Skills you'll gain
Tools you'll learn
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There are 4 modules in this course
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University of Michigan

University of Michigan



