Introduction to Machine Learning

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 Duration 3 days – 21 hrs

 

Overview

 

This course provides a beginner-friendly introduction to the core concepts of machine learning (ML). Participants will learn the differences between supervised and unsupervised learning, explore fundamental algorithms like regression and classification, and get hands-on practice using Python’s powerful scikit-learn library to build simple ML models.

 

Objectives

  • Understand the basic concepts and categories of machine learning.
  • Distinguish between supervised and unsupervised learning.
  • Implement simple regression and classification models.
  • Use scikit-learn to build, train, and evaluate machine learning models.
  • Gain confidence to move forward into deeper ML and AI studies.

Audience

  • Beginners with a basic understanding of Python programming who wants to enter the AI and machine learning field.
  • Aspiring AI practitioners, data scientists, data scientists, AI engineers, and analysts
  • and software developers.
  • Students, IT professionals, and analysts looking to transition into machine learning.
  • Business professionals and technical managers interested in understanding how ML works to support data-driven decision-making

 

Prerequisites 

  • Basic Python programming knowledge and a general understanding of data structures (lists, loops, and functions).

Course Content

 

Day 1: Machine Learning Fundamentals

 

  • What is Machine Learning?
  • Supervised vs Unsupervised Learning explained
  • Real-world examples and use cases
  • Introduction to machine learning workflow (data → model → prediction)

 

Day 2: Key ML Tasks – Regression and Classification

 

  • Regression fundamentals:
    • Predicting continuous outcomes (e.g., house prices)
    • Simple Linear Regression with scikit-learn
  • Classification fundamentals:
    • Predicting categories (e.g., spam or not spam)
    • Logistic Regression basics
  • Evaluating model performance (mean squared error, accuracy, confusion matrix)

 

Day 3: Practical Tools and Hands-on Practice with scikit-learn

 

  • Introduction to scikit-learn: key features and architecture
  • Loading and splitting datasets
  • Training and testing models
  • Model evaluation and simple hyperparameter tuning
  • End-to-end mini project: build a regression or classification model from scratch

 

Final Hands-On Activity:

 

  • Mini project: Load a dataset, choose between regression/classification, train a model using scikit-learn, and evaluate performance.

 

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