Course Outline

Introduction to Physical AI

  • What is Physical AI?
  • Key components: hardware, software, and AI
  • Applications of Physical AI in real-world scenarios

Foundations of Robotics

  • Basic concepts in robotics and automation
  • Overview of sensors, actuators, and controllers
  • Introduction to Robot Operating System (ROS)

AI Algorithms for Physical Systems

  • Machine learning and perception for robotics
  • Path planning and navigation basics
  • Introduction to decision-making and control

Prototyping and Building Intelligent Machines

  • Choosing the right hardware: Arduino, Raspberry Pi, and others
  • Integrating sensors and actuators
  • Building and testing a simple AI-powered robotic system

Hands-On Activities

  • Setting up a basic ROS environment
  • Developing a line-following robot
  • Implementing a basic obstacle-avoidance system

Deployment and Real-World Testing

  • Debugging and troubleshooting robotic systems
  • Field-testing prototypes
  • Analyzing performance and iterating on design

Challenges and Future Trends

  • Scaling up from prototypes to full systems
  • Ethical and safety considerations in Physical AI
  • Emerging technologies and innovations

Summary and Next Steps

Requirements

  • Basic programming knowledge (Python recommended)
  • Interest in robotics and artificial intelligence

Audience

  • AI developers
  • Tech enthusiasts
  • STEM students
 14 Hours

Number of participants


Price per participant

Provisional Upcoming Courses (Require 5+ participants)

Related Categories