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A complete, classroom-ready classification algorithms teaching resource for beginner Computer Science, ICT, STEM, digital literacy, artificial intelligence, machine learning and data science lessons.

This no-prep lesson pack introduces students to key classification methods used in machine learning, including K-Nearest Neighbours, Decision Trees, Support Vector Machines and Random Forests.

Students learn what classification means, how models assign labels to data, how different algorithms make decisions, and why evaluation matters when AI systems are used for real-world classification tasks.

No advanced AI, machine learning or data science experience is required. The resource is suitable for secondary school, high school, vocational education, beginner Python courses and introductory machine learning units.

What is included
Full Teacher Pack PDF and editable DOCX
Lesson Plan PDF and DOCX
Student Worksheet PDF and editable DOCX
Answer Key PDF and DOCX
Summary Notes PDF and DOCX
Printable Activity Cards PDF and DOCX
Exit Tickets PDF and DOCX
Teacher Handbook PDF and DOCX
PowerPoint slide deck
800 × 600 TES cover image
Read Me First file
Students will learn to
Explain what classification means in machine learning
Identify examples of classification tasks such as spam detection, medical screening and image labelling
Understand how K-Nearest Neighbours classifies data using distance and similarity
Explain how Decision Trees split data using simple questions
Understand the basic idea of Support Vector Machines and decision boundaries
Explain how Random Forests combine many decision trees to improve reliability
Compare classification algorithms using strengths, limitations and suitable use cases
Recognise why accuracy, confusion matrices and responsible evaluation matter
Connect classification systems with fairness, bias, transparency and real-world AI risks
Ideal for
Computer Science lessons
ICT and digital skills lessons
STEM enrichment
Beginner Python lessons
Artificial intelligence and machine learning units
Data science introduction lessons
Classification and model evaluation lessons
Secondary, high school and vocational education
Non-specialist teachers introducing machine learning algorithms
Series information

This is Unit 07 of the AI & Machine Learning Fundamentals Series.

Start with the free introductory unit:

Unit 01 – Introduction to Artificial Intelligence

Previous units:

Unit 02 – AI Development Environment Setup
Unit 03 – Data Handling with NumPy & Pandas
Unit 04 – Data Visualisation with Matplotlib & Seaborn
Unit 05 – Introduction to Machine Learning
Unit 06 – Scikit-learn in Depth

This final unit completes the beginner-friendly AI & Machine Learning Fundamentals teaching sequence.

This resource can be used as a standalone complete lesson pack or as part of the full beginner-friendly AI and Machine Learning teaching sequence.

Resource details

Resource type: Lesson (complete)
Age range: 14-16, 16+
Subject: Computer Science

Get this resource as part of a bundle and save up to 33%

A bundle is a package of resources grouped together to teach a particular topic, or a series of lessons, in one place.

Bundle

AI & Machine Learning Fundamentals – Complete No Prep Teaching Bundle – Units 01–07

A complete, classroom-ready Artificial Intelligence and Machine Learning teaching bundle for beginner Computer Science, ICT, STEM, digital literacy, Python, data science and vocational education lessons. This bundle includes 7 complete no-prep lesson packs designed to introduce students to artificial intelligence, machine learning, data handling, data visualisation, Scikit-learn and classification algorithms in a clear, structured and teacher-friendly way. Each unit is designed for teachers who want ready-to-use lesson materials without building slides, worksheets, answer keys and activities from scratch. No advanced AI or machine learning experience is required. Units included Unit 01 – Introduction to Artificial Intelligence Unit 02 – AI Development Environment Setup Unit 03 – Data Handling with NumPy & Pandas Unit 04 – Data Visualisation with Matplotlib & Seaborn Unit 05 – Machine Learning Basics: Workflow, Training & Evaluation Unit 06 – Scikit-learn in Depth Unit 07 – Classification Algorithms What is included in each unit Each unit includes: Full Teacher Pack PDF and editable DOCX Lesson Plan PDF and DOCX Student Worksheet PDF and editable DOCX Answer Key PDF and DOCX Summary Notes PDF and DOCX Printable Activity Cards PDF and DOCX Exit Tickets PDF and DOCX Teacher Handbook PDF and DOCX PowerPoint slide deck 800 × 600 TES cover image Read Me First file Students will learn to Understand what artificial intelligence is and how it is used in real life Explain key AI and machine learning concepts in beginner-friendly language Set up and choose appropriate AI development tools such as Python, Jupyter, Google Colab, Kaggle and VS Code Work with data using NumPy and Pandas Interpret data using Matplotlib and Seaborn visualisations Understand the machine learning workflow, including training, testing and evaluation Use Scikit-learn concepts such as estimators, pipelines, cross-validation and GridSearchCV Compare classification algorithms including K-Nearest Neighbours, Decision Trees, Support Vector Machines and Random Forests Discuss responsible AI, bias, fairness, transparency and real-world AI risks Ideal for Computer Science lessons ICT and digital skills lessons STEM enrichment Artificial intelligence and machine learning units Beginner Python and data science lessons Secondary school and high school teaching Vocational education Non-specialist teachers introducing AI and machine learning Why this bundle is useful This bundle gives teachers a complete beginner-friendly AI and machine learning teaching sequence. The resources can be used as individual standalone lessons or taught as a connected unit across several weeks. The materials are designed to be practical, structured and classroom-ready, with teacher guidance, student worksheets, printable activities, exit tickets, answer keys and editable files included throughout. Resource details Resource type: Lesson bundle / Unit of work Age range: 14-16, 16+ Subject: Computer Science Language: English Format: PDF, editable DOCX and PowerPoint PPTX files

£12.00

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