NVIDIA JETSON XAVIER NX MODULE 8GB

Preis auf Anfrage
Inhalt: 1 Stück

zzgl. MwSt. zzgl. Versandkosten

 


  • NVIDIA JETSON XAVIER NX MODULE - 900-83668-0000-000
NVIDIA Jetson Xavier NX takes supercomputer performance to the edge in a compact... mehr
Produktinformationen "NVIDIA JETSON XAVIER NX MODULE 8GB"

NVIDIA Jetson Xavier NX takes supercomputer performance to the edge in a compact system-on-module (SOM) that’s smaller than a credit card. It features new cloud-native support and accelerates the NVIDIA software stack with more than 10X the performance of its widely adopted predecessor, Jetson TX2. This power-efficiency enables accurate, multi-modal AI inference in a small form factor and opens the door for innovative edge devices in manufacturing, logistics, retail, service, agriculture, smart city, healthcare and life sciences, and more.

The Jetson Xavier NX module benefits from new cloud-native support across the entire Jetson platform lineup, making it easier to build, deploy, and manage AI at the edge. Pre-trained AI models from NVIDIA NGC, together with the NVIDIA Transfer Learning Toolkit, provide a faster path to inference with optimized AI networks, while containerized deployment to Jetson devices allows flexible and seamless updates.

NVIDIA JetPack SDK enables development of AI applications for Jetson Xavier NX with accelerated libraries supporting all major AI frameworks, as well as computer vision, graphics, multimedia, and more. Together with the latest NVIDIA tools for application development and optimization, JetPack ensures fast time to market and reduced development costs. Ease of development and speed of deployment together with a unique combination of form-factor, performance, and power advantage make Jetson Xavier NX the most flexible and scalable platform to get to market and continuously update over the lifetime of a product.

Jetson Xavier NX System-on-Module (SOM):

  • 384-Core Volta GPU
  • 6-Core ARM 64 Bit CPU
  • 8 GB LPDDR4
  • 16 GB eMMC
CPU: 6-core NVIDIA Carmel ARM®v8.2 64-bit CPU 6MB L2 + 4MB L3
Speicher: 8 GB 128-bit LPDDR4x @ 1600 MHz 51.2GB/s
Datenspeicher: 16 GB eMMC 5.1
GPU: 384-core NVIDIA Volta GPU with 48 Tensor Cores
PCIe: 1 x1 + 1x4 (PCIe Gen3, Root Port & Endpoint)
Konnektivität: 10/100/1000 BASE-T Ethernet
Display: 2 multi-mode DP 1.4/eDP 1.4/HDMI 2.0
Encoder/Decoder: 2x464MP/sec (HEVC) 2x 4K @ 30 (HEVC) 6x 1080p @ 60 (HEVC) 14x 1080p @ 30 (HEVC), 2x690MP/sec (HEVC) 2x 4K @ 60 (HEVC) 4x 4K @ 30 (HEVC) 12x 1080p @ 60 (HEVC) 32x 1080p @ 30 (HEVC) 16x 1080p @ 30 (H.264)
DL Beschleuniger: (2x) NVDLA Engines
CSI: Up to 6 cameras (36 via virtual channels) 12 lanes MIPI CSI-2 D-PHY 1.2 (up to 30 Gbps)
Power: 10W|15W
Abmessung: 45 mm x 69.6 mm 260-pin SO-DIMM connector
Eigenschaften: "NVIDIA JETSON XAVIER NX MODULE 8GB"
CPU: 6-core NVIDIA Carmel ARM®v8.2 64-bit CPU 6MB L2 + 4MB L3
Speicher: 8 GB 128-bit LPDDR4x @ 1600 MHz 51.2GB/s
Datenspeicher: 16 GB eMMC 5.1
GPU: 384-core NVIDIA Volta GPU with 48 Tensor Cores
PCIe: 1 x1 + 1x4 (PCIe Gen3, Root Port & Endpoint)
Konnektivität: 10/100/1000 BASE-T Ethernet
Display: 2 multi-mode DP 1.4/eDP 1.4/HDMI 2.0
Encoder/Decoder: 2x464MP/sec (HEVC) 2x 4K @ 30 (HEVC) 6x 1080p @ 60 (HEVC) 14x 1080p @ 30 (HEVC), 2x690MP/sec (HEVC) 2x 4K @ 60 (HEVC) 4x 4K @ 30 (HEVC) 12x 1080p @ 60 (HEVC) 32x 1080p @ 30 (HEVC) 16x 1080p @ 30 (H.264)
DL Beschleuniger: (2x) NVDLA Engines
CSI: Up to 6 cameras (36 via virtual channels) 12 lanes MIPI CSI-2 D-PHY 1.2 (up to 30 Gbps)
Power: 10W|15W
Abmessung: 45 mm x 69.6 mm 260-pin SO-DIMM connector

Anfrageformular

Sie benötigen weitere Informationen, eine persönliche Beratung oder ein Angebot? Nutzen Sie hierzu gerne unser Anfrageformular oder alternativ unsere weiteren Anfrageformulare: 

NVIDIA DGX Server Storage GPU/Workstation HPC

Wir danken Ihnen im Voraus für Ihr Interesse an unseren Produkten, Dienstleistungen und Lösungen und werden uns baldmöglichst mit Ihnen in Verbindung setzen.

Anfrageformular

Die mit einem * markierten Felder sind Pflichtfelder.

Ich habe die Datenschutzbestimmungen zur Kenntnis genommen.

Zuletzt angesehen