Introduction to Artificial Intelligence course Syllabus

Full curriculum breakdown — modules, lessons, estimated time, and outcomes.

Overview: This course provides a clear and accessible introduction to artificial intelligence, designed for beginners with no prior technical background. You'll gain essential AI literacy by exploring foundational concepts, key technologies, real-world applications, and ethical considerations. The course is structured into five core modules and a final project, requiring approximately 20-25 hours of learning over 6-8 weeks. Each module combines conceptual understanding with real-life examples to build a strong foundation for further study or informed decision-making in AI-driven environments.

Module 1: Foundations of Artificial Intelligence

Estimated time: 4 hours

  • What is Artificial Intelligence?
  • Historical development of AI
  • Core AI terminology and concepts
  • Examples of AI in everyday life

Module 2: Machine Learning and Core Techniques

Estimated time: 6 hours

  • Introduction to supervised learning
  • Introduction to unsupervised learning
  • How AI models are trained and evaluated
  • Basic AI problem-solving methods

Module 3: AI Applications Across Industries

Estimated time: 6 hours

  • AI in healthcare: diagnostics and patient care
  • AI in finance: fraud detection and risk analysis
  • AI in retail: recommendation systems
  • AI in manufacturing: predictive maintenance and automation

Module 4: Key AI Domains

Estimated time: 5 hours

  • Natural language processing (NLP)
  • Computer vision and image recognition
  • Introduction to robotics and intelligent systems

Module 5: Ethics, Bias, and Responsible AI

Estimated time: 4 hours

  • Fairness, transparency, and accountability in AI
  • Data privacy and ethical risks
  • Responsible AI frameworks and governance

Module 6: Final Project

Estimated time: 5 hours

  • Analyze a real-world AI application
  • Evaluate its technical approach and societal impact
  • Present recommendations for ethical implementation

Prerequisites

  • No programming experience required
  • Basic familiarity with technology and digital tools
  • Interest in AI and its societal implications

What You'll Be Able to Do After

  • Explain the differences between AI, machine learning, and deep learning
  • Identify how AI systems learn from data and make decisions
  • Recognize key AI domains and their practical applications
  • Analyze ethical challenges and biases in AI technologies
  • Apply foundational AI knowledge to business or policy contexts
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