Get in Touch

Course Outline

Introduction to Edge Artificial Intelligence and NVIDIA Jetson

  • Overview of edge artificial intelligence 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 Artificial Intelligence Models for Edge Deployment

  • Model quantization and pruning techniques.
  • Accelerating models using TensorRT.
  • Converting models to ONNX format.

Deploying Artificial Intelligence Models on Jetson Devices

  • Executing inference with TensorRT.
  • Integrating artificial intelligence models with real-time applications.
  • Enhancing performance and reducing latency.

Computer Vision and Deep Learning on Jetson

  • Deploying image classification and object detection models.
  • Leveraging artificial intelligence for real-time video analytics.
  • Implementing artificial intelligence-powered robotics applications.

Edge Artificial Intelligence Security and Performance Optimization

  • Securing artificial intelligence models on edge devices.
  • Power efficiency and thermal management.
  • Scaling artificial intelligence applications on Jetson platforms.

Project Implementation and Real-World Use Cases

  • Developing an artificial intelligence-powered IoT solution.
  • Deploying artificial intelligence in autonomous systems.
  • Case studies of artificial intelligence on edge devices.

Summary and Next Steps

Requirements

  • Experience with artificial intelligence model training and inference.
  • Foundational knowledge of embedded systems.
  • Proficiency in Python programming.

Audience

  • Artificial intelligence developers.
  • Embedded engineers.
  • Robotics engineers.
 21 Hours

Number of participants


Price per participant

Testimonials (1)

Upcoming Courses

Related Categories