胭脂ㄨ 发表于 2016年10月1日 01:40
GPU-accelerated computing has fueled recent breakthroughs in artificial intelligence, scientific discovery and high performance computing. It now has a cloud computing pipeline to match.
您需要 登录 才可以下载或查看，没有帐号？立即注册
We’ve worked with Amazon Web Services to create their newest and most powerful GPU-accelerated cloud offering: the AWS EC2 P2 instance. Researchers and data scientists can use the instance, which is powered by up to eight NVIDIA Tesla K80 data center GPUs, to accelerate a wide range of compute-intensive applications.
GPU-Powered Deep Learning Where Data Resides
GPUs are helping the world’s cloud customers tackle the explosion of data generated every day by transactional records, sensor logs, images, videos and more. GPU-powered deep learning makes it possible to process and generate insights from this data — and deliver intelligent, personalized experiences to customers.
For computers to understand speech with superhuman accuracy, interact in natural conversationsand perform complex taskssafely and autonomously, they have to process immense amounts of data. Using AWS EC2 P2 instances, businesses and researchers can use the power of GPU-accelerated deep learning without the need to move data into and out of the cloud.
They can provide the most relevant experiences for their users, with the latest data. And they can use the latest deep learning models, which require exponentially higher compute power to process.
Fast Access to Powerful HPC Clusters
The AWS EC2 P2 instance also allows HPC customers looking to eliminate long job queues, meet their computing demands with a low upfront investment, or add short-term bursts of compute power to match peak workloads. For the most demanding HPC applications, up to 16 physical GPUs per instance and multiple instances within a placement group can provide the needed compute power.
To make it easy for people to get started with deep learning, NVIDIA has worked to ensure that every deep learning framework is accelerated on GPUs. In the same spirit, AWS is launching a new set of Amazon Machine Images with popular frameworks pre-installed, including MXNet, Caffe, Theano, TensorFlow and Torch.
To enable provisioning of GPU-accelerated HPC clusters in minutes rather than days or weeks, NVIDIA is providing AMIs in the AWS Marketplace preloaded with NVIDIA drivers,CUDA Toolkit andDIGITS deep learning training software. Automation frameworks for deploying and maintaining HPC instances, like AWS’s CfnCluster framework, eliminate the need for applications to wait in job queues.
Get Started with AWS EC2 P2 Instance Today
With every major deep learning framework and over 400 HPC applications GPU accelerated, including nine out of top 10, all HPC and deep learning customers can benefit from the GPU-accelerated cloud.
AWS EC2 P2 instances are available starting today. To get started, visit the AWS website.
上一篇：Point of view In the age of the algorithm, the human gatekeeper is back
下一篇：How Analytics Is Transforming Customer Loyalty Programs