Detaillierter Kursinhalt
Module 1: Introduction to Artificial Intelligence (AI)
- 1.1 What is Artificial Intelligence?
 - 1.2 A Brief History of AI
 - 1.3 Demystifying AI: Myths vs. Reality
 - 1.4 The Significance of AI in Everyday Life
 
Module 2: AI Technologies
- 2.1 Machine Learning: Basics and Beyond
 - 2.2 Deep Learning and Neural Networks
 - 2.3 AI Technologies in Action: Simplified Examples
 - 2.4 Interactive Workshop: Exploring AI
 
Module 3: AI in Action: Applications and Case Studies
- 3.1 Introduction to AI Applications
 - 3.2 Case Study 1: Smart Speakers
 - 3.3 Case Study 2: Self-Driving Cars
 - 3.4 Case Study 3: Healthcare Applications
 
Module 4: The Workflow of AI Projects
- 4.1 Introduction to AI Project Workflow
 - 4.2 Problem Definition and Data Preparation
 - 4.3 Model Selection, Training, and Validation
 - 4.4 Deployment and Integration
 - 4.5 Evaluation and Iteration
 
Module 5: Ethics and Social Implications of AI
- 5.1 Introduction to AI Ethics and Social Implications
 - 5.2 Bias and Fairness in AI
 - 5.3 Privacy and Security in the Age of AI
 - 5.4 Responsible AI Development
 - 5.5 AI and Society: Looking Ahead
 
Module 6: Generative AI and Creativity
- 6.1 Introduction to Generative AI
 - 6.2 Applications of Generative AI in Creativity
 - 6.3 Ethical Considerations in Generative AI
 - 6.4 Exploring the Future of Creativity with AI
 
Module 7: Preparing for An AI-Driven Future
- 7.1 The Future Landscape of AI
 - 7.2 AI and the Transformation of Work
 - 7.3 Lifelong Learning in an AI World
 - 7.4 Staying Relevant in an AI-Driven World
 - 7.5 Interactive Discussion: Preparing for the Future with AI
 
Module 8: Starting with AI: First Steps and Resources
- 8.1 Introduction to Starting with AI
 - 8.2 Choosing AI Projects
 - 8.3 Forming AI Teams
 - 8.4 Resources for Learning and Development in AI