Nvidia Shows and Demos Testla Volta V100 has 5120 Shader processors

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Over at GDC Nvidia today announced the Testla Volta V100 processor, this is a Volta based GPU based on Tensor architecture. Tesla Volta V100 will be fabricated on TSMC’s 12nm finfet process, pushing the limits of photo lithography as this GPU is huge.



The Tesla Volta V100 graphics processor has 5,120 CUDA / Shader cores and is based upon an incredible 21 Billion transistors. It offers what Nvidia calls 120 Tensor TeraFLOPS of performance. Gaming wise it would perform in the 15 TFLOP (fp32) region, delivered by a new type of architecture called Tensor cores. The R&D behind this did cost Nvidia many years and about $3 billion worth in investments, CEO JHH stated in his keynote. The first server and deep learning segmented products based on Tesla Volta V100 will become available in Q3 2017. The new Tensor Core is based on a 4×4 matrix array and fully optimized for deep learning. Nvidia stated, they felt Pascal is fast, but isn't fast enough. I already stated that the GPU is huge, it's 815mm2 huge and would fit roughly the palm of your hand.

  • Massive 815mm2 die size
  • 12nm FinFet (TSMC)
  • 21B Transistors
  • 15 FP32 TFLOPS / 7.5 FP64 TFLOPS
  • 120 Tensor TFLOPS
  • 16GB HBM2 which manages @ 900 GB/s
  • 5120 Shader processor cores

 
Tesla Volta V100 is capable of pushing 15 FP32 TFLOPS and much like Pascal GP100 is once again tied towards 4096-bit HBM2 graphics memory (stacked on-die cache). The unit will get 16GB of it divided over four stacks (= 4GB per stack). The memory is fabbed by Samsung. That HUGE die at 815 mm2 is fabbed by TSMC on a 12nm FFN fabrication process. In Q3 you will see the first enterprise based products based on Volta that start at 69.000 dollar. For us gamers, when GeForce GTX 1180 or 2080 will be released. That remains to be topic of a long discussion. Below a comparative specification list of the primary Tesla GPUs running up-to Volta, which runs in the 5120 shader processors at the 1.45 GHz marker for Boost frequency btw. It'll have 320 Texture Units, sheesh.


Tesla ProductTesla K40Tesla M40Tesla P100Tesla V100
GPU GK110 (Kepler) GM200 (Maxwell) GP100 (Pascal) GV100 (Volta)
SMs 15 24 56 80
TPCs 15 24 28 40
FP32 Cores / SM 192 128 64 64
FP32 Cores / GPU 2880 3072 3584 5120
FP64 Cores / SM 64 4 32 32
FP64 Cores / GPU 960 96 1792 2560
Tensor Cores / SM n/a n/a n/a 8
Tensor Cores / GPU n/a n/a n/a 640
GPU Boost Clock 810/875 MHz 1114 MHz 1480 MHz 1455 MHz
Peak FP32 TFLOP/s 5.04 6.8 10.6 15
Peak FP64 TFLOP/s 1.68 2.1 5.3 7.5
Peak Tensor Core TFLOP/s n/a n/a n/a 120
Texture Units 240 192 224 320
Memory Interface 384-bit GDDR5 384-bit GDDR5 4096-bit HBM2 4096-bit HBM2
Memory Size Up to 12 GB Up to 24 GB 16 GB 16 GB
L2 Cache Size 1536 KB 3072 KB 4096 KB 6144 KB
Shared Memory Size / SM 16 KB/32 KB/48 KB 96 KB 64 KB Configurable up to 96 KB
Register File Size / SM 256 KB 256 KB 256 KB 256KB
Register File Size / GPU 3840 KB 6144 KB 14336 KB 20480 KB
TDP 235 Watts 250 Watts 300 Watts 300 Watts
Transistors 7.1 billion 8 billion 15.3 billion 21.1 billion
GPU Die Size 551 mm² 601 mm² 610 mm² 815 mm²
Manufacturing Process 28 nm 28 nm 16 nm FinFET+ 12 nm FFN

Now slightly more detail, a fully enabled  GV100 GPU actually consists of six GPCs, 84 Volta SMs, 42 TPCs (each including two SMs), and eight 512-bit memory controllers (4096 bits total). Each SM has 64 FP32 Cores, 64 INT32 Cores, 32 FP64 Cores, and 8 new Tensor Cores. Each SM also includes four texture units. 

With 84 SMs, a full GV100 GPU has a total of 5376 FP32 cores, 5376 INT32 cores, 2688 FP64 cores, 672 Tensor Cores, and 336 texture units. Each memory controller is attached to 768 KB of L2 cache, and each HBM2 DRAM stack is controlled by a pair of memory controllers. The full GV100 GPU includes a total of 6144 KB of L2 cache. The figure in above table shows a full GV100 GPU with 84 SMs (different products can use different configurations of GV100). The Tesla V100 accelerator uses 80 SMs.

Nvidia Shows and Demos Testla Volta V100 has 5120 Shader processors


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