Machine Learning with Python

Categories: Development, Python
Wishlist Share
Share Course
Page Link
Share On Social Media

About Course

This beginner-to-advanced course teaches you how to build real-world machine learning models using Python. You’ll learn core ML concepts, work with Scikit-learn, preprocess data, train models, and optimize them for better accuracy. You’ll also explore ensemble methods, model evaluation, and deployment techniques.

No prior ML knowledge required — just basic Python and math skills.

Course Content

Introduction to Machine Learning

  • Lesson 1: What is Machine Learning?
  • Lesson 2: Types of Machine Learning
  • Lesson 3: Applications of ML in Real World
  • Lesson 4: Understanding Datasets
  • Lesson 5: ML Workflow Overview
  • Lesson 6: Tools & Libraries for ML
  • Lesson 7: Challenges in Machine Learning
  • Lesson 8: ML vs AI vs Deep Learning
  • Lesson 9: Careers in ML
  • Lesson 10: Setting Up Python Environment

Data Preprocessing

Regression Models

Classification Models

Model Evaluation & Optimization