Notice: This page requires JavaScript to function properly.
Please enable JavaScript in your browser settings or update your browser.
Learn Clustering Algorithms and Libraries | Clustering Fundamentals
Cluster Analysis
course content

Course Content

Cluster Analysis

Cluster Analysis

1. Clustering Fundamentals
2. Core Concepts
3. K-Means
4. Hierarchical Clustering
5. DBSCAN
6. GMMs

book
Clustering Algorithms and Libraries

Clustering Algorithms

Let's briefly introduce some main clustering algorithms. We'll focus on these in the course:

Python Libraries for Clustering

When you work with clustering in Python, you'll often use the following libraries:

  • Scikit-learn: a comprehensive machine learning library. Scikit-learn provides implementations of many clustering algorithms, including K-means, Hierarchical Clustering, DBSCAN, and GMMs, as well as tools for data preprocessing, evaluation metrics, and more;

  • SciPy: a library for scientific and technical computing. SciPy includes functions for hierarchical clustering, distance calculations, and other utilities that can be useful in clustering tasks.

There are also several auxiliary libraries that come in handy, such as NumPy (for numerical operations), Pandas (for data loading and preprocessing), Matplotlib, and Seaborn (for visualizing data and clustering results). While these aren't clustering libraries themselves, they support the overall workflow.

question mark

Which clustering algorithm is best suited for detecting clusters of arbitrary shape and identifying outliers?

Select the correct answer

Everything was clear?

How can we improve it?

Thanks for your feedback!

SectionΒ 1. ChapterΒ 3
We're sorry to hear that something went wrong. What happened?
some-alt