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Foundations of Machine Learning

Welcome to the Foundations of Machine Learning, your practical guide to fundamental techniques powering data-driven solutions. Master key ML domains—supervised learning (prediction), unsupervised learning (pattern discovery), data preprocessing & feature engineering, and time series forecasting—using Pandas, Scikit-learn, Statsmodels, and Prophet to tackle real-world challenges. By the end of this course, you'll be able to: - Implement and evaluate key supervised models (e.g., regression, classification, Tree-based models & SVMs) for prediction. - Apply unsupervised methods (e.g., K-Means, Isolation Forest) for segmentation and anomaly detection. - Perform robust data preprocessing: handle missing data, encode categoricals, scale features, and apply dimensionality reduction (PCA). - Build and analyze time series forecasts with ARIMA, Exponential Smoothing, Holt-Winters and Prophet. Through hands-on exercises and a capstone customer purchase prediction project, you'll develop versatile skills to confidently address common machine learning challenges.

Status: Classification Algorithms
Status: Dimensionality Reduction
IntermediateCourse30 hours

Featured reviews

SN

5.0Reviewed Feb 1, 2026

Straight forward course with understandable theory.

NN

5.0Reviewed Dec 11, 2025

The Perfect journey-styled build course! I was very confused in from where to start learning ML this helped me alot

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Najeebullah
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