reComputer J1010 Edge AI Device with Jetson Nano module, M.2 Key E Slot, Type-C connectors, Aluminium case, pre-installed JetPack System

Availability:

In stock


SKU: 1252359
  1.  quad-core ARM® Cortex®-A57 MPCore processor
  2. 128-core NVIDIA Maxwell™ GPU with 128 NVIDIA CUDA® cores delivers 5 TFLOPs (FP16)
  3. Support wide range of AI application fast building with our ecosystem partners
  4. Storage: 16 GB eMMC 5.1 Flash
  5. Camera: 12 lanes (3×4 or 4×2) MIPI CSI-2 DPHY 1.1 (18 Gbps)

 24,283.00

(Including GST)

In stock

Purchase this product now and earn 243 Robu Points!

Very Low Stock. Order Now !



Have any issues, Get support here.
Have a bulk requirement, mail us to [email protected]
Didn’t Find what you are looking for?

Category: Seeed Studio SBC
Tags: reComputer, reComputer Jetson AI

The Jetson Nano module is a small AI computer that has the performance and power efficiency needed to run modern AI workloads, multiple neural networks in parallel and process data from several high-resolution sensors simultaneously.

This makes it the perfect entry-level option to add advanced AI to embedded products. While talking about Jetson Nano, Quad Core ARM Cortex-A57 which is 1.43 Ghz powerful 64 bit quad core processor Jetson Nano is a small, powerful computer for embedded applications and AI IoT that delivers the power of modern AI in a (1KU+) module.

Get started fast with the comprehensive JetPack SDK with accelerated libraries for deep learning, computer vision, graphics, multimedia, and more. NVIDIA Jetson Nano™ Developer Kit is a small, powerful computer that lets you run multiple neural networks in parallel for applications like image classification, object detection, segmentation, and speech processing. All in an easy-to-use platform that runs in as little as 5 watts.


Features:

  1. Powered by the quad-core ARM® Cortex®-A57 MPCore processor.
  2. 128-core NVIDIA Maxwell™ GPU with 128 NVIDIA CUDA® cores delivers 0.5 TFLOPs (FP16).
  3. RTC Connector
  4. M.2E Connector
  5. Module: JetSon Nano
  6. USB Type: C power Connector
  7. Rich peripherals including Gigabit Ethernet port, USB 3.0 and USB 2.0 Type-A ports, HDMI port.
  8. Pre-installed NVIDIA official JetPack software, ready for cloud native application.
  9. Able to mount on the wall, mounting holes on the back.
  10. Support wide range of AI application fast building with our ecosystem partners.
  11. Support Allxon to enable efficient remote hardware management services.
  12. Hand-size edge AI device with an overall dimension of 130mm*120mm*50mm, fits in everywhere.

Packages  Includes:

1 x Jetson Nano module
1 x Acrylic Cover
1 x Aluminum Frame
1 x Heatsink
1 x Carrier board

SKU: 1252359 Category: Tags: ,
GPU

NVIDIA Maxwell™ architecture with 128 NVIDIA CUDA® cores 0.5 TFLOPs (FP16)

Display

HDMI 2.0 or DP1.2 | eDP 1.4 | DSI (1 x2) 2 simultaneous

Camera

12 lanes (3×4 or 4×2) MIPI CSI-2 DPHY 1.1 (18 Gbps)

I/O Ports

1x SDIO / 2x SPI / 4x I2C / 2x I2S / GPIOs -> I2C, I2S

Connectivity

(M.2 Key M)10/100/1000 BASE-T Ethernet

Video encoder

1x 4K @ 30 (HEVC), 250 MP/sec, 2x 1080p @ 60 (HEVC), 4x 1080p @ 30 (HEVC)

Video decoder

2x 4K @ 30 (HEVC), 4x 1080p @ 60 (HEVC), 500 MP/sec

UPHY

1 x1/2/4 PCIE, 1x USB 3.0, 3x USB 2.0

Mechanical

260-pin edge connector

Shipping Weight 0.3 kg
Shipping Dimensions 130 × 120 × 50 cm
6 Months Warranty

This item is covered with a supplier warranty of 6 months from the time of delivery against manufacturing defects only. This is a quality product from the original manufacturer. Only manufacturing defects are covered under this warranty. Reimbursement or replacement will be done against manufacturing defects.


What voids the warranty:

If the product is subject to misuse, tampering, static discharge, accident, water or fire damage, use of chemicals & soldered or altered in any way.

Datasheet

Questions and answers of the customers

There are no questions yet. Be the first to ask a question about this product.

Only registered users are eligible to enter questions
Country Of Origin: China

You may also like…