AI+ Gaming™
Discover how AI transforms game design, player engagement, and virtual environments. Build real-world gaming projects using cutting-edge AI technologies.
This course delivers comprehensive skill development, enabling learners to master AI-driven game design, adaptive storytelling, and intelligent NPC development for immersive, data-enhanced gaming experiences. Participants earn industry recognition through a globally recognised certification validating expertise in integrating artificial intelligence within modern gaming environments. With a hands-on learning approach, learners work on real-world projects, including AI-based character behaviour modelling and predictive player analytics, strengthening both creativity and technical precision. Designed for career advancement, the course unlocks opportunities in game development, AI simulation design, virtual production, and interactive entertainment. With a future-ready focus, it equips participants with cutting-edge knowledge in generative AI, immersive simulations, and intelligent gameplay systems.
Enrollment Fee:
MUR 5,980
What You'll Learn
1.1 What is AI?
1.2 Evolution of AI in the Gaming Industry
1.3 Types of AI in Games
1.4 Benefits, Challenges, and Innovations in Game AI
2.1 Understanding Game Mechanics and Player Experience
2.2 Role of AI in Gameplay and Narrative Design
2.3 Designing Game Environments for AI Interaction
2.4 AI-Driven Behavior vs Traditional Scripted Logic
2.5 Case Study: Dynamic AI and Narrative Adaptation in Middle earth: Shadow of Mordor
2.6 Hands-On Exercise: Designing Adaptive NPC Behavior and Environment Interaction
3.1 Core AI Concepts for Gaming
3.2 Search Algorithms and Pathfinding
3.3 AI Behavior Modeling and Procedural Content Generation (PCG)
3.4 Introduction to Machine Learning and Reinforcement Learning
3.5 Case Study: AI in Minecraft — Procedural Content Generation and Agent Navigation
3.6 Hands-On: Implementing A* Pathfinding and FSM for NPC Behavior
4.1 Core Concepts: States, Actions, Rewards, Policies, Q-Learning:
4.2 Exploration versus Exploitation in Learning Systems:
4.3 Overview of Deep Q Networks (DQN) and Policy Gradient Methods
4.4 Case Study: Reinforcement Learning in DeepMind’s AlphaGo
4.5 Hands-On: Train a Reinforcement Learning Model on OpenAI Gym’s GridWorld
5.1 Minimax Algorithm and Alpha-Beta Pruning
5.2 Monte Carlo Tree Search (MCTS)
5.3 Applications in Board Games and Real-Time Strategy (RTS) Games
5.4 Case Study: Strategic AI in StarCraft II – Combining Planning Algorithms for Real-Time Strategy
5.5 Hands-on Implementation: Guides on implementing the Minimax algorithm for Tic-Tac-Toe
6.1 Overview of 2D and 3D Game Environments
6.2 Environment Representation Techniques
6.3 Navigation and Pathfinding in 2D/3D Spaces
6.4 Interaction and Behavior Systems in Virtual Environments
6.5 Case Study: Navigation and Interaction AI in The Legend of Zelda: Breath of the Wild
6.6 Hands-On: Building Basic Navigation and Interaction in 2D and 3D Game Environments
7.1 Adaptive Systems Overview
7.2 Dynamic Difficulty Adjustment (DDA) Principles
7.3 Adaptive Storytelling, Personalization, and Player Profiling
7.4 AI Techniques in Adaptive Systems
7.5 Implementation Strategies and Tools
7.6 Case Study: Dynamic Enemy Management and Replayability with Left 4 Dead’s AI Director
7.7 Hands-On: Developing an Adaptive Dynamic Difficulty System in Unity
8.1 Generalist AI Agents and Transfer Learning
8.2 AI-Powered Game Design and Testing Tools
8.3 Ethical Considerations and AI Transparency
8.4 Emerging Technologies: VR/AR AI and AI in Esports Coaching
1. Understanding AI Agents
2. Case Studies
3. Hands-On Practice with AI Agents
Prerequisites
- Basic Programming Skills – Comfortable with Python or similar languages.
- Foundational Math Knowledge – Understanding of linear algebra and probability.
- Intro to Machine Learning – Familiarity with ML concepts and algorithms.
- Game Development Exposure – Experience with Unity or Unreal Engine basics.
- Problem-Solving Mindset – Ability to approach challenges creatively and logically.
Exam Details
Duration:
90 minutes
Passing Score:
70% (35/50)
Format:
50 multiple-choice/multiple-response questions
Delivery Method:
Online via proctored exam platform (flexible scheduling)
Unlock Self-Paced Online Learning
- Unlock Self-Paced Online Learning
- Access learning anytime, anywhere, with built-in quizzes to measure progress.
- Enrollment Fee: MUR 5,980