Thank you for sending your enquiry! One of our team members will contact you shortly.
Thank you for sending your booking! One of our team members will contact you shortly.
Course Outline
Introduction to Edge AI and NVIDIA Jetson
- Overview of edge AI applications.
- Introduction to NVIDIA Jetson hardware.
- JetPack SDK components and development environment.
Setting Up the Development Environment
- Installing JetPack SDK and configuring the Jetson board.
- Understanding TensorRT and model optimization.
- Configuring the runtime environment.
Optimizing AI Models for Edge Deployment
- Techniques for model quantization and pruning.
- Using TensorRT for model acceleration.
- Converting models to ONNX format.
Deploying AI Models on Jetson Devices
- Running inference with TensorRT.
- Integrating AI models with real-time applications.
- Optimizing performance and reducing latency.
Computer Vision and Deep Learning on Jetson
- Deploying image classification and object detection models.
- Utilizing AI for real-time video analytics.
- Implementing AI-powered robotics applications.
Edge AI Security and Performance Optimization
- Securing AI models on edge devices.
- Power efficiency and thermal management.
- Scaling AI applications on Jetson platforms.
Project Implementation and Real-World Use Cases
- Building an AI-powered IoT solution.
- Deploying AI in autonomous systems.
- Case studies of AI on edge devices.
Summary and Next Steps
Requirements
- Experience with AI model training and inference.
- Fundamental knowledge of embedded systems.
- Familiarity with Python programming.
Target Audience
- AI developers.
- Embedded engineers.
- Robotics engineers.
21 Hours
Testimonials (1)
That we can cover advance topic and work with real-life example