Dell XGJGY NVIDIA Tesla K40 12GB PCIe 3.0 GPU

Dell XGJGY NVIDIA Tesla K40 12GB PCIe 3.0 GPU
Dell XGJGY NVIDIA Tesla K40 12GB PCIe 3.0 GPU
The Dell XGJGY NVIDIA Tesla K40 12GB PCIe 3.0 GPU is a high-performance accelerator built for demanding compute workloads. Based on the Kepler architecture, this card provides massive parallel processing capability that can dramatically reduce time-t... Read More
price
$0.00
  • In Stock: 29
  • Manufacturer: Dell
  • Model or Part: XGJGY
  • Condition: Refurbished
  • Weight: 3.00lb

Get a Price Quote

This Dell XGJGY is ready to ship from our partner network. Because market pricing on this part fluctuates, we want to ensure you get the lowest price possible. Enter your email address below and our team will get back to you with a custom quote.

United States Shipping
Orders over $200 qualify for Free Super-Saver Shipping! We ship at our discretion via the most cost-effective method using FedEx, UPS, or USPS.

To ensure your order is processed efficiently, all shipping charges must be pre-paid at checkout. We are unable to bill directly to third-party shipper accounts or use customer-provided labels for domestic shipments.
International Shipping
International orders begin processing as soon as payment is confirmed.

  • Pre-paid Shipping: For your convenience, you can select and pay for international shipping directly at checkout.
  • Carrier Accounts: Alternatively, we can bill transport costs directly to your FedEx account number. (Note: We cannot bill to DHL, TNT, or UPS accounts).
  • Customer Labels: We are also happy to ship internationally using pre-paid labels provided by you for any carrier.
Expedited and Rush Shipping
Need it faster? HardwareJet.com offers 1 or 2-day expedited shipping options during checkout for eligible items.

To get your order to the front of the line, expedited orders include a small rush fee in addition to the carrier's shipping charges. If an item is not available for expedited shipping, these options will not appear in your cart.

Item Condition

New - Sealed or Open Box Condition
Excellent - Almost-New, Missing Original Packaging
Refurbished - Seller Refurbished, Good Condition, Previously Used Item

To bring you an even wider selection, some of our items are shipped directly from our trusted partners. Delivery times may vary for these items.

Overview

The Dell XGJGY NVIDIA Tesla K40 12GB PCIe 3.0 GPU is a high-performance accelerator built for demanding compute workloads. Based on the Kepler architecture, this card provides massive parallel processing capability that can dramatically reduce time-to-solution for scientific research, artificial intelligence training and large data analytics projects.

Key Features

  • 12 GB of GDDR5 memory with a 384 bit wide interface for high bandwidth access
  • 2880 CUDA cores delivering up to 4.3 TFLOPS of double precision performance
  • PCIe Gen3 x16 interface ensures fast data transfer between host and accelerator
  • Support for NVIDIA GRID, CUDA, OpenCL and Direct Compute APIs for flexible development
  • Thermal design optimized for datacenter environments with active cooling solution

Technical Specifications

  • GPU Architecture: Kepler GK110
  • CUDA Cores: 2880
  • Memory Capacity: 12 GB GDDR5
  • Memory Bandwidth: 288 GB/s
  • Core Clock: 745 MHz (Boost up to 875 MHz)
  • Double Precision Performance: 4.3 TFLOPS
  • Single Precision Performance: 4.29 TFLOPS
  • PCI Express: Gen3 x16
  • Form Factor: Dual slot, full height
  • Power Consumption: 235 W (typical)

Typical Applications

  • Deep learning model training and inference for image, speech and natural language processing
  • Molecular dynamics simulations and computational chemistry calculations
  • Finite element analysis and computational fluid dynamics in engineering design
  • Large scale data mining, graph analytics and database acceleration
  • High performance scientific computing clusters and GPU-enabled servers

This Dell Tesla K40 GPU provides the raw compute power and memory capacity needed to tackle the most intensive parallel workloads while maintaining compatibility with existing software ecosystems.