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Jetson Orin Nano Developer Kit

Jetson Orin Nano Developer Kit

MPN: 102110839
NVIDIA
Jetson Orin Nano NVIDIA Jetson Orin Nano - ARM® Cortex®-A78AE MPU Embedded Evaluation Board
Active87 in stock

Overview

The NVIDIA Jetson Orin Nano Developer Kit is a high-performance evaluation platform for edge AI applications, delivering up to 80 times the performance of the previous generation. It features an Arm Cortex-A78AE CPU and Ampere architecture GPU, providing the computational power needed for modern AI workloads in a compact form factor. The kit includes a reference carrier board, a heatsink, and supports external NVMe storage for fast data access.

Why Choose This Part

This kit provides a massive leap in AI performance with a 7W to 15W power envelope, making it suitable for battery-operated or thermally constrained environments. Its extensive I/O, including PCIe Gen3 and multiple USB 3.2 ports, allows for easy integration of diverse peripherals without custom hardware development.

Applications

Autonomous Mobile Robots (AMR)
Processes complex sensor data from MIPI CSI-2 cameras and LiDAR for real-time navigation and obstacle avoidance.
AI-Powered Video Analytics
Utilizes the Ampere GPU and 8GB of RAM to run multiple concurrent neural networks for object detection and tracking.
Edge Gateways
Acts as an intelligent hub with Gigabit Ethernet and 802.11ac wireless connectivity for local data processing and filtering.
Industrial Inspection
Deploys high-resolution vision algorithms via USB 3.2 Gen2 interfaces to detect manufacturing defects on assembly lines.

Key Specifications

Type MPU
Contents Board(s)
Platform NVIDIA Jetson Orin Nano
Mounting Type Fixed
Core Processor ARM Cortex-A78AE
Utilized IC / Part Jetson Orin Nano

Getting Started

Begin by flashing the NVIDIA JetPack SDK onto a microSD card or NVMe drive to access the full Linux environment and CUDA libraries. Utilize the included reference carrier board and 40-pin GPIO header to interface with external sensors via I2C, SPI, or UART. Developers should use the NVIDIA TAO Toolkit and TensorRT to optimize AI models for the Ampere architecture.

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