Artificial Intelligence (AI) for Mechatronics Training Course
Mechatronics (also known as mechatronic engineering) integrates mechanical engineering, electronics, and computer science.
This instructor-led, live training (available online or onsite) is designed for engineers seeking to understand how artificial intelligence can be applied to mechatronic systems.
By the end of this training, participants will be able to:
- Gain a comprehensive overview of artificial intelligence, machine learning, and computational intelligence.
- Understand the fundamental concepts of neural networks and various learning methodologies.
- Effectively select appropriate artificial intelligence approaches to solve real-world problems.
- Implement AI-driven applications within the field of mechatronic engineering.
Course Format
- Interactive lectures and group discussions.
- Extensive exercises and hands-on practice.
- Practical implementation in a live-lab environment.
Course Customization Options
- To request a customized version of this training, please contact us to arrange the details.
Course Outline
Introduction
Overview of Artificial Intelligence (AI)
- Machine learning
- Computational intelligence
Understanding the Concepts of Neural Networks
- Generative networks
- Deep neural networks
- Convolutional neural networks
Understanding Various Learning Methods
- Supervised learning
- Unsupervised learning
- Reinforcement learning
- Semi-supervised learning
Other Computational Intelligence Algorithms
- Fuzzy systems
- Evolutionary algorithms
Exploring Artificial Intelligence Approaches to Optimization
- Choosing AI Approaches Effectively
Learning about Stochastic Dynamic Programming
- Relationship with AI
Implementing Mechatronic Applications with AI
- Medicine
- Rescue operations
- Defense
- Industry-agnostic trends
Case Study: The Intelligent Robotic Car
Programming the Major Systems of a Robot
- Planning the Project
Implementing AI Capabilities
- Searching and Motion Control
- Localization and Mapping
- Tracking and Controlling
Summary and Next Steps
Requirements
- Basic understanding of computer science and engineering principles
Audience
- Engineers
Open Training Courses require 5+ participants.
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Testimonials (2)
Supply of the materials (virtual machine) to get straight into the excersises, and the explanation of the Ros2 core. Why things work a certain way.
Arjan Bakema
Course - Autonomous Navigation & SLAM with ROS 2
its knowledge and utilization of AI for Robotics in the Future.
Ryle - PHILIPPINE MILITARY ACADEMY
Course - Artificial Intelligence (AI) for Robotics
Upcoming Courses
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