Nvidia Tesla-GPU data center acceleration solution

TESLA series GPU for data center servers

        Use NVIDIA® Tesla® GPU Faster processing of the most demanding high-performance computing and very large data center workloads. Now, data scientists and researchers can analyze PB-level data in applications such as energy exploration and deep learning, which is several orders of magnitude faster than using traditional CPU. In addition, the Tesla accelerator provides the capabilities needed to run large simulations faster than ever before. Tesla Accelerator is an ideal choice for accelerating the running speed of virtual desktop for any user anywhere.

Using NVIDIA data center platform
Faster processing of data center workloads

NVIDIA Tesla —— GPU Data Center Acceleration Solution

Train

Reason

To improve the work efficiency of data scientists and provide artificial intelligence services faster, the key is to train increasingly complex models faster. The server equipped with NVIDIA Tesla P100 uses the powerful NVIDIA Pascal architecture to shorten the deep learning training time from several months to several hours.

Reasoning is an area where trained neural networks really play a role. With the introduction of new data services such as image, voice, vision and video search, reasoning, as the core of many artificial intelligence services, plays a role in providing answers and suggestions. Compared with a server that only uses a single-socket CPU, a server equipped with a Tesla GPU can provide 27 times the reasoning throughput, so it can save a lot of money.

 

High performance computing

 
 

High-performance computing data center needs to meet the increasing computing needs of researchers, while not exceeding the tight budget. In the past, deploying a large number of general-purpose computing nodes actually increased the cost greatly, and did not improve the performance of the data center accordingly.

NVIDIA Tesla P100 with PCIe interface enables high-performance computing data centers that handle mixed workloads to replace up to half a rack of general-purpose CPU nodes with an acceleration node, and can provide the same throughput in various high-performance computing applications. By speeding up more than 550 kinds of high-performance computing applications (including all the top 10 high-performance computing applications), all high-performance computing customers can now get greatly improved throughput, easily handle workloads and save costs.

 

Choose the right NVIDIA Tesla solution for you

 

 

Job responsibility  Popular applications  Applications mainly used in GPU. Mixed workload HPC Super-large scale HPC
user AI/Deep learning Hyperscale & &HPC data center, which can run applications that extend to multiple GPUs. Supercomputing, universities, governments, research institutes  Oil and gas  Artificial intelligence/deep learning
Optimize for GPU Accelerated operation Maximum absolute performance  Speed up verification time  Imaging accuracy  Training time  Employment/hobbies/research
operating characteristic Volta Architecture, Tensor Core, Next Gen NVLink Hyperscale & &HPC data center, which can run applications that extend to multiple GPUs.  Mixed work requirements Specific applications, such as RTM Deep learning frameworks, such as Caffe and TensorFlow. Deep learning frameworks, such as Caffe and TensorFlow.
Key requirements

·Performance (double precision and single precision)

·Memory size and bandwidth

·Interconnection bandwidth

·can be programmed

·Performance (double precision and single precision)

·Memory size and bandwidth

·Interconnection bandwidth

·can be programmed

·Performance (double precision and single precision)

·Memory size and bandwidth

·Interconnection bandwidth

·Performance (single precision)

·Memory size per GPU

·Interconnection bandwidth

·power consumption

·product mix

Recommend solutions

V100

nvidia-v100

P100

nvidia-p100

Mixed workload

K80

nvidia-k80

 Train

P40

nvidia-p-line

Reason

P4

 

tesla-p4-front

 

 

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