Supervised Learning

Master the most common type of machine learning. Learn to build models that make predictions based on labeled data, covering regression and classification tasks.

129 courses

Linear Regression in Python: Simple, Multiple, and Regularized Models

Master foundational machine learning by building, evaluating, and interpreting linear regression models in Python to solve real-world business problems.
★ 4.3 (1,567)

Support Vector Machines in Python for Machine Learning

Build and evaluate robust classification models using SVM and kernel methods for real-world data analysis.
★ 4.4 (559)

Linear Regression in Python: Foundations of Machine Learning

Build a strong foundation for machine learning and deep learning by mastering linear regression theory and Python implementation from scratch.
★ 4.6 (6,814)

Regression Analysis and Model Interpretability in Python

Build and explain predictive models using linear and non-linear regression, feature selection, and modern interpretability tools like SHAP and LIME.
★ 4.4 (336)

Applied Machine Learning with Python and Scikit-Learn: Practical Projects

Build a strong foundation in predictive modeling by writing clean Python code and implementing classic machine learning algorithms to solve real-world problems.
★ 4.6 (1,062)

SQL for Machine Learning with BigQuery

A practical guide for data professionals to build predictive models using only the SQL they already know.
★ 4.6 (393)

Applied Machine Learning and Data Mining for Beginners

Build a strong foundation in predictive modeling, clustering, and data analysis using Python to solve real-world data challenges.

Python Machine Learning: Classification and Supervised Learning

Learn to build, tune, and evaluate classification models in Python, from logistic regression to ensemble methods, using real-world data science workflows.
★ 4.7 (207)

Logistic Regression in RStudio: Data Modeling Fundamentals

Master the fundamentals of binary classification by building, interpreting, and evaluating logistic regression models using R and RStudio.

Practical Machine Learning with Python and Scikit-Learn

Build, evaluate, and optimize predictive models using Python and scikit-learn through structured, step-by-step written guides.
★ 4.6 (8,780)

Supervised Machine Learning in Python with scikit-learn

Build, tune, and evaluate predictive models using Python and scikit-learn to solve real-world classification and regression problems.
★ 4.8 (8,004)

Machine Learning Fundamentals and Linear Regression

Build a solid foundation in predictive modeling by understanding the core algorithms and mathematical principles behind supervised machine learning.
★ 4.4 (5,259)

Introduction to Machine Learning and Predictive Analysis

Build a solid foundation in predictive modeling and data patterns to solve practical problems using modern machine learning techniques.
★ 4.6 (3,374)

Practical Machine Learning and Predictive Modeling

Build and apply reliable prediction models to solve real-world data challenges using modern algorithmic techniques.
★ 4.5 (3,267)

Supervised Machine Learning for Beginners

Master the fundamentals of regression and classification to build your first predictive models in Python.
★ 4.9 (1,325)

Supervised Machine Learning with Logistic Regression and Naive Bayes

Master the fundamentals of classification to build predictive models for spam detection, sentiment analysis, and data-driven decision making.
★ 4.4 (998)

Regression Models for Supervised Machine Learning

Learn to predict continuous numerical outcomes and evaluate model accuracy using modern data science workflows and best practices.
★ 4.7 (835)

Applied Machine Learning: Problem Framing and Data Preparation

Learn to frame real-world machine learning problems, prepare datasets using modern workflows, and design practical solutions for business, finance, and engineering.
★ 4.7 (747)

Machine Learning with Decision Trees and Ensembles in Python

Learn to build, tune, and evaluate powerful classification and regression models using Python and scikit-learn to solve real-world data challenges.
★ 4.9 (695)

Machine Learning with PySpark for Beginners

Build and scale machine learning models for large datasets using PySpark, from data preparation and regression to decision trees and pipeline automation.
★ 4.8 (671)
Showing 20 of 129 courses