Learners completing this course will be able to apply regression, clustering, classification, and feature engineering techniques to real-world datasets, evaluate models with performance metrics, and visualize results for actionable insights. Through hands-on case studies, learners will not only understand algorithms but also gain the ability to prepare data, train models, and interpret outputs effectively.



Machine Learning with Python: Case Studies
This course is part of AI Driven Machine Learning with Python Specialization

Instructor: EDUCBA
Access provided by Burma Academy
What you'll learn
Build and evaluate regression, clustering, and classification models.
Prepare, train, and interpret data for predictive modeling.
Apply ML techniques to solve real-world business problems.
Skills you'll gain
- Scikit Learn (Machine Learning Library)
- Regression Analysis
- Classification And Regression Tree (CART)
- Machine Learning
- Python Programming
- Data Visualization
- Time Series Analysis and Forecasting
- Statistical Modeling
- Machine Learning Algorithms
- Applied Machine Learning
- Unsupervised Learning
- Predictive Analytics
- Credit Risk
- Supervised Learning
- Data Manipulation
- Predictive Modeling
- Feature Engineering
Details to know

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15 assignments
October 2025
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There are 4 modules in this course
This module introduces learners to machine learning projects through case studies, covering environment setup, regression methods, and logistic regression. By working with practical datasets, learners will build a strong foundation in modeling approaches and optimization techniques.
What's included
9 videos4 assignments
This module explores unsupervised learning with k-means clustering and introduces time series forecasting techniques. Learners gain hands-on practice with visualization, distance calculations, and analyzing sequential datasets such as airline passengers and Bitcoin prices.
What's included
10 videos3 assignments
This module focuses on supervised learning techniques for classification. Learners apply algorithms such as logistic regression, decision trees, KNN, LDA, and Naive Bayes, while also visualizing decision boundaries to better interpret classifier behavior.
What's included
10 videos4 assignments
This module applies machine learning techniques to financial case studies, focusing on credit card default prediction. Learners practice data preparation, feature engineering, and evaluation using confusion matrices, AUC curves, and visualization with seaborn.
What's included
12 videos4 assignments
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