
Creator: EDUCBA
Category: Software > Computer Software > Educational Software
Topic: Data Analysis, Data Science
Tag: business, clustering, customer, Data, shopping
Availability: In stock
Price: USD 49.00
This practical course equips learners with the analytical skills to explore, model, and visualize customer shopping behavior using Python and K-Means clustering. Through structured modules, learners will prepare real-world customer data, construct meaningful visualizations, analyze variable relationships, and evaluate clustering outcomes to derive actionable business insights. Starting with data preprocessing and environment setup, learners will organize datasets and construct various statistical charts, including pie charts, histograms, and violin plots, to interpret customer attributes.
Building on this foundation, the course guides learners through correlation analysis, scaling, and model development using the K-Means algorithm. Finally, learners will visualize customer clusters and assess shopping behavior to support strategic segmentation and personalized marketing decisions. By the end of this course, learners will be able to apply unsupervised machine learning techniques to segment customers and formulate data-driven business insights from complex shopping datasets.