NVIDIA Jetson Xavier NX System on Module (SoM) 8GB RAM 16GB eMMC
Make: nVidia
SKU: 02714
Availability: OUT OF STOCK

₹47,198.82 inc. GST
Ex GST: ₹39,999.00

Additional Info
  • Prices shown are Including GST.
  • B2B GST Credit Available.
  • Economy shipping at flat ₹59.
  • Free shipping on value > ₹2499.
  • Whatsapp Support @+917231066325
  • Estimated Delivery time?
  • Manufacturing Services

  • NVIDIA Jetson Xavier NX Module 8GB RAM 16GB eMMC

    Jetson Xavier NX delivers up to 21 TOPS for running modern AI workloads, consumes as little as 10 watts of power, and has a compact form factor smaller than a credit card. It can run modern neural networks in parallel and process data from multiple high-resolution sensors, opening the door for embedded and edge computing devices that demand increased performance but are constrained by size, weight, and power budgets.

    Model Nvidia Jetson Xavier NX
    AI Performance 21 TOPS (INT8)
    GPU 384-core NVIDIA Volta™ GPU with 48 Tensor Cores
    GPU Max Freq 1100 MHz
    CPU 6-core NVIDIA Carmel ARM®v8.2 64-bit CPU
    6MB L2 + 4MB L3
    CPU Max Freq 2-core @ 1900MHz
    4/6-core @ 1400Mhz
    Memory 8 GB 128-bit LPDDR4x @ 1866MHz
    Storage 16 GB eMMC 5.1
    Power 10W|15W|20W
    PCIe 1 x1 + 1x4
    (PCIe Gen3, Root Port & Endpoint)
    CSI Camera Up to 6 cameras (36 via virtual channels)
    12 lanes MIPI CSI-2
    D-PHY 1.2 (up to 30 Gbps)
    Video Encode 2x 4K60 | 4x 4K30 | 10x 1080p60 | 22x 1080p30 (H.265)
    2x 4K60 | 4x 4K30 | 10x 1080p60 | 20x 108p30 (H.264)
    Video Decode 2x 8K30 | 6x 4K60 | 12x 4K30 | 22x 1080p60 | 44x 1080p30 (H.265)
    2x 4K60 | 6x 4K30 | 10x 1080p60 | 22x 1080p30 (H.264)
    Display 2 multi-mode DP 1.4/eDP 1.4/HDMI 2.0
    DL Accelerator 2x NVDLA Engines
    Vision Accelerator 7-Way VLIW Vision Processor
    Networking 10/100/1000 BASE-T Ethernet
    Mechanical 45 mm x 69.6 mm
    260-pin SO-DIMM connector


    Write a review

    Your Name:

    Your Review: Note: HTML is not translated!

    Rating: Bad           Good

    Enter the code in the box below: