πŸ“š FutureTec Academic Syllabus

A comprehensive 12-month "Unplugged AI" curriculum designed to build the logical minds of tomorrow.

Our program follows international K-12 Computer Science Frameworks and UNESCO AI Ethics principles.

πŸ§’ Ages 5–6: Little Explorers

A gentle introduction to the world of patterns, sequences, and logic through play.

Quarter 1: The Magic of Patterns πŸ“¦ Mega-Kit #1
Month 1: The Clapping Code

Learning patterns through rhythm. Children clap sequences (Clap-Clap-Stomp) and match them with colorful wooden blocks. AI Concept: Pattern Recognition.

Month 2: Robot Sandwich Maker

Children give step-by-step instructions to a "Robot" (the teacher). If they forget a step, the robot fails! AI Concept: Algorithms must be precise.

Month 3: Fruit or Veggie?

Sorting 3D blocks by texture and color. Children learn to group objects by features. AI Concept: Classification.

Quarter 2: Following Instructions πŸ“¦ Mega-Kit #2
Month 4: The Treasure Map

Following a simple step-by-step map to find hidden "treasure." AI Concept: Sequential instructions.

Month 5: Copy Cat

One child builds a pattern, the other copies it without seeing. Communication through instructions only. AI Concept: Data transfer.

Month 6: The Sorting Race

Racing to sort objects by size, color, and shape. Which method is fastest? AI Concept: Efficiency & optimization.

Quarter 3: Simple Machines πŸ“¦ Mega-Kit #3
Month 7: Yes or No Garden

Walking through a physical "garden" answering Yes/No questions to find the right flower. AI Concept: Simple decision trees.

Month 8: The Memory Game

Matching pairs of cards. How does remembering help us find answers faster? AI Concept: Data storage & retrieval.

Month 9: My First Network

Passing colored balls through a chain of friends. Each friend adds a color. AI Concept: Simple neural network simulation.

Quarter 4: Being Fair & Kind πŸ“¦ Mega-Kit #4
Month 10: The Fairness Game

Playing a game with "unfair" rules. Children spot what's wrong and fix it. AI Concept: Algorithmic bias (simplified).

Month 11: Robots Are Our Friends

Drawing "helper robots" for the community. What should robots do? What should they never do? AI Concept: AI ethics.

Month 12: My AI Invention

Final project: Children design and present their own "AI invention" using craft materials. Capstone Project.

πŸ‘¦ Ages 7–9: Junior Coders

Building logical thinking through classification, decision trees, and data exploration.

Quarter 1: Data & Classification πŸ“¦ Mega-Kit #1
Month 1: Animal Detective

Using 30 animal trait cards to sort animals into Mammals, Birds, or Reptiles based on physical features. AI Concept: Supervised Learning.

Month 2: Guess Who? AI Edition

Playing a modified Guess Who where students draw a branching map of their Yes/No questions. AI Concept: Decision Trees.

Month 3: The Human Neural Network

A group of kids acts as "Neurons," passing color-coded strings to decide if an image is a cat or dog. AI Concept: Neural Networks.

Quarter 2: Algorithms & Sequences πŸ“¦ Mega-Kit #2
Month 4: The Recipe Challenge

Writing precise "recipes" (algorithms) for everyday tasks. Testing them on a partner who follows them literally. AI Concept: Algorithm design.

Month 5: Maze Runner

Navigating physical mazes using different strategies. Which path is shortest? AI Concept: Search algorithms.

Month 6: Loop the Loop

Using physical "Repeat" and "If/Then" cards to build paper-based programs. AI Concept: Control flow & loops.

Quarter 3: Learning from Data πŸ“¦ Mega-Kit #3
Month 7: The Prediction Game

Using past data (weather cards) to predict tomorrow's weather. AI Concept: Prediction models.

Month 8: Cluster Kingdom

Grouping fantasy characters into kingdoms based on shared traits without labels. AI Concept: Unsupervised Learning.

Month 9: The Feedback Machine

Building a simple "reward/punish" system for a paper robot. AI Concept: Reinforcement Learning basics.

Quarter 4: Responsible Tech πŸ“¦ Mega-Kit #4
Month 10: The Rumour Game

How data changes as it passes through people. AI Concept: Data integrity & noise.

Month 11: Privacy Shield

What information should you share online? Building a "Privacy Shield" poster. AI Concept: Data privacy.

Month 12: My Smart Solution

Final project: Design an AI-powered solution for a school problem. Capstone Project.

πŸ§‘ Ages 10–11: Logic Builders

Deepening understanding through clustering, information gain, and weighted decision making.

Quarter 1: Patterns & Clustering πŸ“¦ Mega-Kit #1
Month 1: Monster Mapping

Grouping 25 unique monsters without labels. Students explain their reasoning. AI Concept: Unsupervised Learning & Clustering.

Month 2: The Information Game

Competing to identify a secret object in the fewest questions. AI Concept: Information Gain.

Month 3: Feature Importance

Using a physical weight scale to decide which data features matter most. AI Concept: Feature Weighting.

Quarter 2: Advanced Algorithms πŸ“¦ Mega-Kit #2
Month 4: Binary vs Linear

Comparing search strategies using physical card decks. Which is faster for finding a number? AI Concept: Search efficiency.

Month 5: The Sorting Tournament

Racing to sort cards using Bubble Sort vs. Merge Sort. AI Concept: Sorting algorithms.

Month 6: Code Blocks

Building complex sequences using interlocking physical code blocks. AI Concept: Programming logic.

Quarter 3: Machine Intelligence πŸ“¦ Mega-Kit #3
Month 7: Training Data Lab

Creating "training sets" to teach a paper classifier. What happens with bad data? AI Concept: Data quality.

Month 8: K-Means Clustering

Physically performing K-means clustering on a large mat using tokens. AI Concept: K-Means algorithm.

Month 9: The Error Correction Race

Simulating backpropagation by adjusting physical "Weight" sliders after each error. AI Concept: Backpropagation basics.

Quarter 4: Ethics & Innovation πŸ“¦ Mega-Kit #4
Month 10: The Bias Audit

Analyzing a fictional school admission dataset to find hidden bias. AI Concept: Algorithmic fairness.

Month 11: The Ethics Debate

Debating real-world AI scenarios using Ethics Debate Cards. AI Concept: Responsible AI.

Month 12: AI for My Community

Final project: Design an AI solution for a local community problem. Capstone Project.

πŸ‘©β€πŸŽ“ Ages 12–13: AI Thinkers

Exploring algorithmic bias, complex flowcharts, and data auditing.

Quarter 1: Bias & Logic πŸ“¦ Mega-Kit #1
Month 1: The Bias Board

Playing a board game where the "rules" unfairly favor certain players. Spotting and rewriting unfair algorithms. AI Concept: Algorithmic Bias.

Month 2: Branching Logic Lab

Designing complex flowcharts using interlocking physical blocks and "If/Then/Else" toggles. AI Concept: Logical flow control.

Month 3: The Bias Detective

Auditing a fictional dataset binder to find and "clean" hidden patterns of bias. AI Concept: Data cleaning & auditing.

Quarter 2: Complex Systems πŸ“¦ Mega-Kit #2
Month 4: The Complexity Timer

Measuring how long different algorithms take as data grows. AI Concept: Time complexity (Big O).

Month 5: Graph Theory Puzzles

Solving physical network puzzles (shortest path, minimum spanning tree). AI Concept: Graph algorithms.

Month 6: The Encryption Challenge

Encoding and decoding secret messages using physical cipher wheels. AI Concept: Cryptography basics.

Quarter 3: Advanced ML πŸ“¦ Mega-Kit #3
Month 7: Ensemble Voting

Building 3 different decision trees and combining their "votes" for accuracy. AI Concept: Ensemble methods.

Month 8: The Overfitting Trap

Training a model too much on limited data and watching it fail on new data. AI Concept: Overfitting vs. generalization.

Month 9: Recommendation Engine

Building a physical "Book Recommendation" system using student preferences. AI Concept: Collaborative filtering.

Quarter 4: Society & AI πŸ“¦ Mega-Kit #4
Month 10: AI in Healthcare

Exploring how AI helps doctors diagnose diseases. AI Concept: AI applications.

Month 11: The AI Policy Maker

Drafting an "AI Policy" for a fictional country using policy templates. AI Concept: AI governance.

Month 12: TED-Style Presentation

Final project: Present a 5-minute "TED Talk" on an AI topic of their choice. Capstone Project.

πŸŽ“ Ages 14–16: Tech Pioneers

Mastering reinforcement learning, ensemble models, and real-world AI ethics.

Quarter 1: Advanced Intelligence πŸ“¦ Mega-Kit #1
Month 1: Reinforcement Learning Lab

Playing Hexapawn against a "paper-based AI." Students train it by removing beads for losing moves. After 20 games, the AI becomes unbeatable. AI Concept: Reinforcement Learning.

Month 2: Decision Forest

Building 3 different decision trees for the same data and combining their "votes." AI Concept: Random Forests & Ensembles.

Month 3: Backpropagation Race

Simulating the "Backward Pass." Students adjust physical weight sliders to correct predictions. AI Concept: Backpropagation.

Quarter 2: Systems Thinking πŸ“¦ Mega-Kit #2
Month 4: The NP-Hard Challenge

Attempting to solve the "Travelling Salesman Problem" with physical maps. AI Concept: Computational complexity.

Month 5: Genetic Algorithms

Evolving solutions to a puzzle by "breeding" the best answers. AI Concept: Evolutionary computation.

Month 6: Simulation Lab

Building a physical simulation of traffic flow and optimizing it. AI Concept: Agent-based modelling.

Quarter 3: Deep Intelligence πŸ“¦ Mega-Kit #3
Month 7: Convolutional Filters

Using physical "filter cards" to detect edges and patterns in images. AI Concept: CNN basics.

Month 8: Natural Language Processing

Building a physical "sentiment analyzer" that rates sentences as positive or negative. AI Concept: NLP fundamentals.

Month 9: Transfer Learning

Taking a trained "model" from one task and applying it to another. AI Concept: Transfer Learning.

Quarter 4: The Future Leader πŸ“¦ Mega-Kit #4
Month 10: AI & Climate Change

Designing AI solutions for environmental challenges using scenario cards. AI Concept: AI for social good.

Month 11: The Turing Test Debate

Debating whether machines can truly "think." AI Concept: Philosophy of AI.

Month 12: Capstone: My AI Startup

Final project: Students pitch a full AI startup ideaβ€”problem, solution, data, and ethics plan. Capstone Project.

🎯 Learning Outcomes (After 12 Months)

  • βœ… Understand core AI concepts (Machine Learning, Neural Networks, Clustering).
  • βœ… Build and test physical "algorithms" and decision trees.
  • βœ… Recognize and address algorithmic bias in data.
  • βœ… Apply computational thinking to real-world problems.
  • βœ… Discuss AI ethics, privacy, and responsible technology use.
  • βœ… Complete a capstone project demonstrating AI problem-solving skills.