Deploying AI Models on Edge Devices with NVIDIA Jetson Training Course
NVIDIA Jetson serves as a robust platform for deploying artificial intelligence models on edge devices, facilitating real-time processing with exceptional efficiency.
This instructor-led, live training session, available either online or onsite, is designed for intermediate-level AI developers, embedded systems engineers, and robotics engineers looking to optimize and deploy AI models on NVIDIA Jetson platforms for edge-based applications.
Upon completion of this training, participants will be capable of:
- Gaining a solid understanding of edge AI principles and NVIDIA Jetson hardware architecture.
- Optimizing AI models specifically for deployment on edge devices.
- Leveraging TensorRT to accelerate deep learning inference.
- Deploying AI models utilizing the JetPack SDK and ONNX Runtime.
Course Format
- Engaging lectures and interactive discussions.
- Extensive exercises and practical practice sessions.
- Hands-on implementation within a live-lab environment.
Options for Course Customization
- To request a tailored training program for this course, please reach out to us to make the necessary arrangements.
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 setting up the Jetson board
- Understanding TensorRT and model optimization
- Configuring the runtime environment
Optimizing AI Models for Edge Deployment
- Model quantization and pruning techniques
- 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
- Using 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 systems engineers
- Robotics engineers
Open Training Courses require 5+ participants.
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