PNY TCSK80M-PB Dépliant
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Accelerate your most demanding single and double precision
workloads in scientific computing, seismic processing, and
data analytics applications by upgrading to the NVIDIA Tesla
K80 dual-GPU accelerator. It delivers up to 2.2x faster perfor-
mance than the Tesla K20X, up to 2.5x faster performance
than the Tesla K10, and up to 10x faster performance than
CPUs on real-world applications.
The Tesla K80 accelerator delivers more than 2x application speed-up compared to the previous generation of accelerators, and up to 10x
faster performance compared to CPUs. With exclusive features like 24 GB of GDDR5 memory, 480 GB/s memory bandwidth, and improved
GPU Boost technology, the Tesla K80 delivers the computational horsepower that allows you to crunch through petabytes of data and run
simulations faster than ever before.
Tesla GPU Accelerators are built on the NVIDIA Kepler™ compute architecture and powered by CUDA,® the world’s most pervasive paral-
lel-computing model. This makes them ideal for delivering record acceleration and compute performance efficiency for applications in fields
including: Machine Learning and Data Analytics, Seismic Processing, Computational Biology and Chemistry, Weather and Climate Modeling,
Image, Video, and Signal Processing, Computational Finance/Physics, CAE and CFD.
The Kepler-based Tesla family of GPUs is part of the innovative Tesla Accelerated Computing Platform. As the leading platform for accele-
rating data analytics and scientific computing, it combines the world’s fastest GPU accelerators, the widely used CUDA parallel computing
model, and a comprehensive ecosystem of software developers and software vendors.
TESLA K80
1
- PRODUCT SPECIFICATIONS
MEMORY SIZE PER BOARD
24 GB GDDR5 (12 GB per GPU)
MEMORY INTERFACE
384-bit
MEMORY BANDWIDTH
480 Gb/s
CUDA CORES
4992
PEAK DOUBLE PRECISION FLOATING POINT PERFORMANCE
2.91 Tflops (GPU Boost Clocks)
1.87 Tflops (Base Clocks)
PEAK SINGLE PRECISION FLOATING POINT PERFORMANCE
8.74 Tflops (GPU Boost Clocks)
5.6 Tflops (Base Clocks)
SYSTEM INTERFACE
PCI Express 3.0 x16
MAX POWER CONSUMPTION
300 W
THERMAL SOLUTION
passive heat sink
FORM FACTOR
111.15 mm (H) x 267 mm (L)
Dual Slot, Full Height
DISPLAY CONNECTORS
None
POWER CONNECTORS
8-pin CPU power connector
PACKAGE CONTENT
1x Power Adapter (2 x PCIe 8-pit to single CPU 8-pin)
PART NUMBER
TCSK80M-PB
PART NUMBER:
TCSK80M-PB
NVIDIA TESLA K80 by PNY
THE WORLD’S FASTEST ACCELERATOR
FOR DATA ANALYTICS AND SCIENTIFIC
NVIDIA
®
TESLA K80 by PNY
© 2014 NVIDIA Corporation and PNY. All rights reserved. NVIDIA, the NVIDIA logo, Quadro, CUDA, and Kepler are trade-
marks and/or registered trademarks of NVIDIA Corporation in the U.S. and other countries. The PNY logotype is a regis-
tered trademark of PNY Technologies. All other trademarks and copyrights are the property of their respective owners. Dez14
marks and/or registered trademarks of NVIDIA Corporation in the U.S. and other countries. The PNY logotype is a regis-
tered trademark of PNY Technologies. All other trademarks and copyrights are the property of their respective owners. Dez14
The innovative design of the TESLA K80 compute architecture includes:
Zero-power Idle
Increases data center energy efficiency by powering down idle GPUs when running legacy nonaccelerated workloads.
Zero-power Idle
Increases data center energy efficiency by powering down idle GPUs when running legacy nonaccelerated workloads.
2x Shared Memory and 2x Register File
Increases effective throughput and bandwidth with 2x shared memory and 2x register file compared to the K40.
Increases effective throughput and bandwidth with 2x shared memory and 2x register file compared to the K40.
GPU Boost
Enables the end-user to convert power headroom to higher clocks and achieve even greater acceleration for various HPC workloads.
Enables the end-user to convert power headroom to higher clocks and achieve even greater acceleration for various HPC workloads.
Dynamically scales GPU clocks for maximum application performance and improved energy efficiency