Home > Categories > Artificial Intelligence > AI in Robotics > Advanced AI Techniques for Robotics: Path Planning and Control Systems Training Course
9/10
5 Days
This advanced course delves into cutting-edge Artificial Intelligence (AI) algorithms used in robotics, focusing on path planning, motion control, and real-time decision-making. Participants will explore techniques such as probabilistic roadmaps, A* algorithms, reinforcement learning, and model predictive control (MPC) for developing autonomous robotic systems. The course combines theoretical concepts with hands-on lab exercises, using tools like Python, ROS (Robot Operating System), and simulation environments such as Gazebo. This program is ideal for robotics engineers, AI practitioners, and professionals looking to enhance their expertise in AI-driven robotics.
Day 1: Introduction to Advanced AI Techniques in Robotics
Session 1: Overview of AI in Robotics
Session 2: Fundamentals of Path Planning
Session 3: Hands-on Lab: Implementing A Algorithm for Path Planning*
Session 4: Probabilistic Roadmaps (PRM) and Rapidly-exploring Random Trees (RRT)
Session 5: Hands-on Lab: Path Planning with PRM and RRT
Day 2: Motion Planning and Trajectory Generation
Session 1: Introduction to Motion Planning
Session 2: Hands-on Lab: Trajectory Generation for Mobile Robots
Session 3: Optimization-Based Motion Planning
Session 4: Hands-on Lab: Implementing Model Predictive Control (MPC)
Session 5: Kinematics and Dynamics in Robotics
Day 3: Reinforcement Learning for Robotic Control
Session 1: Introduction to Reinforcement Learning (RL) in Robotics
Session 2: Hands-on Lab: Implementing Q-Learning for Robotic Navigation
Session 3: Deep Reinforcement Learning (DRL) for Complex Environments
Session 4: Hands-on Lab: Building a Deep Q-Network (DQN) for Robot Control
Session 5: Challenges in RL for Robotics
Day 4: Real-Time Decision-Making and Control Systems
Session 1: Real-Time AI Systems for Robotics
Session 2: Hands-on Lab: Real-Time Robot Control with ROS
Session 3: Sensor Fusion for Reliable Decision-Making
Session 4: Hands-on Lab: Implementing Sensor Fusion with ROS and Python
Session 5: Robustness and Safety in AI-Driven Robotics
Day 5: Capstone Project: Design and Implementation of an AI-Powered Robotic System
Session 1: Capstone Project Briefing and Team Formation
Session 2: Capstone Project Work (Hands-on)
Session 3: Project Presentations
Session 4: Lessons Learned and Best Practices for AI in Robotics
Session 5: Course Wrap-Up and Final Q&A
We are open to customizing this program to align with your specific learning objectives. If your team has particular goals or areas they wish to focus on, we would be happy to tailor the course outline to meet those needs and ensure the program supports the achievement of your desired outcomes.
This course provides a comprehensive introduction to the fundamentals of robotics and Artificial Intelligence (AI).
This course provides an in-depth exploration of how Machine Learning (ML) models are integrated into robotics to enhance perception, decision-making, and adaptive learning.
This course provides a comprehensive understanding of how Artificial Intelligence (AI) enhances Robotic Process Automation (RPA) to automate repetitive business tasks, streamline workflows, and improve operational efficiency.
This hands-on course focuses on the integration of Artificial Intelligence (AI) with computer vision technologies to enable object recognition, tracking, and autonomous navigation in robotics.
This advanced course delves into cutting-edge Artificial Intelligence (AI) algorithms used in robotics, focusing on path planning, motion control, and real-time decision-making.
This course provides an in-depth understanding of the ethical implications, safety protocols, and best practices for deploying AI-driven robotic systems across various industries.
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