AI Introduction
Niveaux scolaires: Grade 5 - Grade 6 - Grade 7 - Grade 8 - Grade 9 - Grade 10 - Grade 11 - Grade 12
Système éducatif: National English
Introducing adolescents to AI age 12-18
#kids#ai
1. Classify common AI types (rule-based systems, machine learning, and generative models) and explain their real-world applications, benefits, and limitations using age-appropriate examples.
Objectifs d'apprentissage:
1. Define core terms (algorithm, model, training data, inference, prompt) accurately in student-friendly language.
2. Distinguish AI-powered from non-AI digital tools by applying clear criteria and provide at least two justifications.
3. Categorise at least six real or school-based applications into AI types and defend each categorisation.
4. Illustrate one application’s input–process–output flow using a simple diagram or storyboard.
5. Describe typical limitations (e.g., data dependence, bias, hallucination, overfitting) and match each to an example scenario.
2. Collect, label, and prepare small datasets suitable for beginner ML tasks using spreadsheets and no-code tools (e.g., ML for Kids, Teachable Machine).
Objectifs d'apprentissage:
1. Assemble a dataset of at least 30 labelled items (images, sounds, or text) from safe and permitted sources following consent and safety guidelines.
2. Clean the dataset by removing duplicates, anonymising personal information, and standardising labels.
3. Split data into training and testing sets (e.g., 80/20) and record the split clearly.
4. Document a simple labelling rubric and apply it consistently across all items.
5. Visualise class distributions with a chart and identify any imbalance that may affect model performance.
