Course Outline

Introduction to Autonomous Systems

  • Overview of autonomous systems and their applications
  • Key components: sensors, actuators, and control systems
  • Challenges in autonomous system development

AI Techniques for Autonomous Decision-Making

  • Machine learning models for decision-making
  • Deep learning approaches for perception and control
  • Real-time processing and inference for autonomous systems

Autonomous Navigation and Control

  • Path planning and obstacle avoidance
  • Control algorithms for stable and responsive navigation
  • Integration of AI with control systems for autonomous vehicles

Safety and Reliability in Autonomous Systems

  • Safety protocols and fail-safe mechanisms
  • Testing and validation of autonomous systems
  • Compliance with industry standards and regulations

Case Studies and Practical Applications

  • Self-driving cars: AI algorithms and real-world implementations
  • Drones: Autonomous flight control and navigation
  • Industrial robots: AI-driven automation in manufacturing

Future Trends in AI-Powered Autonomous Systems

  • Advancements in AI and their impact on autonomy
  • Emerging technologies in autonomous system development
  • Exploring future directions and opportunities in the field

Summary and Next Steps

Requirements

  • Experience in robotics or AI development
  • Understanding of machine learning and real-time systems
  • Familiarity with control systems and safety protocols

Audience

  • Robotics engineers
  • AI developers
  • Automation specialists
 21 Hours

Number of participants


Price per participant

Testimonials (2)

Upcoming Courses

Related Categories