the AI Hardware Partner
Toggle Nav
Loading...

NVIDIA® Jetson Nano™ Developer Kit

SKU
102110268

It is recommended to buy our newly released reComputer J1020 powered by NVIDIA Jetson Nano Production Module includes a carrier board and heatsink. Check it out!  Find more NVIDIA Jetson-powered AI platforms here.

reComputer J1020 powered by Jetson Nano

$89.00
Out of stock

PRODUCT DETAILS

Note

We just released a new reComputer J10 powered by NVIDIA Jetson Nano module includes a carrier board and heatsink. Check it out

Note

For more NVIDIA product purchase solutions, you can go to this page to learn more.     

Description

The NVIDIA® Jetson Nano™ Developer Kit delivers the compute performance to run modern AI workloads at unprecedented size, power, and cost. Developers, learners, and makers can now run AI frameworks and models for applications like image classification, object detection, segmentation, and speech processing.

 

The developer kit can be powered by micro-USB and comes with extensive I/Os, ranging from GPIO to CSI. This makes it simple for developers to connect a diverse set of new sensors to enable a variety of AI applications. It’s incredibly power-efficient, consuming as little as 5 watts.

 

Jetson Nano is also supported by NVIDIA JetPack, which includes a board support package (BSP), Linux OS, NVIDIA CUDA®, cuDNN, and TensorRT™ software libraries for deep learning, computer vision, GPU computing, multimedia processing, and much more. The software is even available using an easy-to-flash SD card image, making it fast and easy to get started.

 

The same JetPack SDK is used across the entire NVIDIA Jetson™ family of products and is fully compatible with NVIDIA’s world-leading AI platform for training and deploying AI software. This proven software stack reduces complexity and overall effort for developers. 

 

Key Features

 Jetson Nano Module

  • 128-core NVIDIA Maxwell™ GPU
  • Quad-core ARM® A57 CPU
  • 4 GB 64-bit LPDDR4
  • 10/100/1000BASE-T Ethernet

 

 Power Options

  • Micro-USB 5V 2A
  • DC power adapter 5V 4A

 

 I/O

  • USB 3.0 Type A
  • USB 2.0 Micro-B
  • HDMI/DisplayPort
  • M.2 Key E
  • Gigabit Ethernet
  • GPIOs, I2 C, I2 S, SPI, UART
  • MIPI-CSI camera connector
  • Fan connector
  • PoE connector


 Kit Contents

  • NVIDIA Jetson Nano module and carrier board
  • Quick Start Guide and Support Guide  

Create more AI possibilities with Grove PiHAT and NVIDIA Jetson Nano

If you want to use Grove sensors with Jetson Nano, grab the grove.py Python library and get your sensors up in running in minutes! Currently, there are more than 20 Grove modules supported on Jetson Nano and we will keep adding more. You can connect Grove modules using Base HAT for Raspberry Pi or Raspberry Pi Zero with Jetson Nano.

Cooling solution for your Jetson Nano

Here we prepared the cooling solution for your Jetson Nano! Over-heating sometimes may cause a shutdown problem. These two cases will help to improve the stability of Jetson Nano.

Add A Camera

The Raspberry Pi Camera Module V2 can work with Jetson Nano well, it will be a perfect camera in your AI project.

 

Note

We provide a wide selection of AI related products including Machine Learning, Computer Vision, Edge Computing, Speech Recognition & NLP and Neural Networks Acceleration. Check here for more products you may need

We are also calling for feedback and inputs from the developers. Any suggestions on the product features are welcomed at Seeed Forum!

Specifications

GPU 128-core Maxwell
CPU Quad-core ARM A57 @ 1.43 GHz
Memory 4 GB 64-bit LPDDR4 25.6 GB/s
Storage microSD (not included)
Video Encoder 4K @ 30 | 4x 1080p @ 30 | 9x 720p @ 30 (H.264/H.265)
Video Decoder 4K @ 60 | 2x 4K @ 30 | 8x 1080p @ 30 | 18x 720p @ 30|
(H.264/H.265)
Camera 1x MIPI CSI-2 DPHY lanes
Connectivity Gigabit Ethernet, M.2 Key E
Display HDMI 2.0 and eDP 1.4
USB 4x USB 3.0, USB 2.0 Micro-B
Others GPIO, I2C, I2S, SPI, UART
Mechanical 100 mm x 80 mm x 29 mm

Part List:

1 x NVIDIA® Jeston Nano™ Developer Kit

Note

If you are looking for open source SBC for commercial and industrial needs. Seeed provides customization service based on BeagleBone series boards. Seeed Studio BeagleBone® Green(BBG) and Seeed Studio BeagleBone® Green Wireless (BBGW) provide more stable industrial deployment scenarios.

ECCN/HTS

HSCODE 8517180050
USHSCODE 8543708800
UPC
EUHSCODE 8543709099
COO CHINA
RoHS 1

SHARED BY USERS

REVIEWS

Write Your Own Review
Only registered users can write reviews. Please Sign in or create an account
  1. Product Quality
    100%
    Funciona perfectamente!
    Llegué temprano y estaba completamente sellado. Debido a la potencia de los gráficos, se calentará un poco, por lo que requiere un ventilador.
    By
  2. Product Quality
    100%
    Fast sucker
    This is hands down the fastest ARM-based device ever used with Ubuntu running on it.

    It has to use a 4amp power support like https://www.amazon.com/gp/product/B01N4HYWAM

    And also have to set the power jumper to use that jack with these
    https://www.amazon.com/gp/product/B00N552DWK
    By
  3. Product Quality
    100%
    Great hardware
    Nice quick quad core arm64 SBC with a decent amount of computing power available from the nVidia GPU.
    It is definitely a specialised board. While it can be used for watching videos, or running OpenGL or GLES games it's really not for that.

    It takes a while to load what it needs to utilise CUDA as a compute device, so the overhead on short tests is large. Once it is loaded it's quite fast, so it's good in real world application.

    One thing to be wary of is the OS image is set to full speed 10 watt mode, but the hardware is configured to use MicroUSB for power ie 5W mode. Either set the OS to lower power mode or use a jumper (not included) to set the board to use a higher wattage power supply via the barrel connector.
    If either of these is not done, the board will crash under load because of insufficient available current.
    By
  4. Product Quality
    80%
    Not too bad, nice package
    I'm pretty happy so far. Setting up python enviro nment a little finicky - suggest you use virtualenv.
    Don't try 16GB, you will run out of space quickly. Get a 160MB/s microSD card at least 32GB. I created a 4GB swapfile which improved dev env build speed
    By
  5. Product Quality
    80%
    Very nice unit
    Early days still, but the Nano is going great. DHL delivery took too long, but worth the wait.
    By

FAQ

Items 21 to 25 of 28 total

Show per page