Bizi tercih ettiğiniz için teşekkür ederiz. Ekip üyelerimiz en kısa sürede sizlerle iletişime geçecektir.
Rezervasyonunuzu gönderdiğiniz için teşekkür ederiz! Ekibimizden bir yetkili kısa süre içinde sizinle iletişime geçecektir.
Eğitim İçeriği
Introduction to Edge AI in Autonomous Systems
- Overview of Edge AI and its significance in autonomous systems
- Key benefits and challenges of implementing Edge AI in autonomous systems
- Current trends and innovations in Edge AI for autonomy
- Real-world applications and case studies
Real-Time Processing in Autonomous Systems
- Fundamentals of real-time data processing
- AI models for real-time decision making
- Handling data streams and sensor fusion
- Practical examples and case studies
Edge AI in Autonomous Vehicles
- AI models for vehicle perception and control
- Developing and deploying AI solutions for real-time navigation
- Integrating Edge AI with vehicle control systems
- Case studies of Edge AI in autonomous vehicles
Edge AI in Drones
- AI models for drone perception and flight control
- Real-time data processing and decision making in drones
- Implementing Edge AI for autonomous flight and obstacle avoidance
- Practical examples and case studies
Edge AI in Robotics
- AI models for robotic perception and manipulation
- Real-time processing and control in robotic systems
- Integrating Edge AI with robotic control architectures
- Case studies of Edge AI in robotics
Developing AI Models for Autonomous Applications
- Overview of relevant machine learning and deep learning models
- Training and optimizing models for edge deployment
- Tools and frameworks for autonomous Edge AI (TensorFlow Lite, ROS, etc.)
- Model validation and evaluation in autonomous settings
Deploying Edge AI Solutions in Autonomous Systems
- Steps for deploying AI models on various edge hardware
- Real-time data processing and inference on edge devices
- Monitoring and managing deployed AI models
- Practical deployment examples and case studies
Ethical and Regulatory Considerations
- Ensuring safety and reliability in autonomous AI systems
- Addressing bias and fairness in autonomous AI models
- Compliance with regulations and standards in autonomous systems
- Best practices for responsible AI deployment in autonomous systems
Performance Evaluation and Optimization
- Techniques for evaluating model performance in autonomous systems
- Tools for real-time monitoring and debugging
- Strategies for optimizing AI model performance in autonomous applications
- Addressing latency, reliability, and scalability challenges
Innovative Use Cases and Applications
- Advanced applications of Edge AI in autonomous systems
- In-depth case studies in various autonomous domains
- Success stories and lessons learned
- Future trends and opportunities in Edge AI for autonomy
Hands-On Projects and Exercises
- Developing a comprehensive Edge AI application for an autonomous system
- Real-world projects and scenarios
- Collaborative group exercises
- Project presentations and feedback
Summary and Next Steps
Kurs İçin Gerekli Önbilgiler
- An understanding of AI and machine learning concepts
- Experience with programming languages (Python recommended)
- Familiarity with robotics, autonomous systems, or related technologies
Audience
- Robotics engineers
- Autonomous vehicle developers
- AI researchers
14 Saat