The Leading Source for Global News and Information Covering the Ecosystem of High Productivity Computing
August 31, 2009
A promising solution that has recently become very popular is the use of GPUs for scientific computing. Although GPUs were initially designed as fixed function graphics chips, they have, over the years, become increasingly programmable.
In recognizing both a need and an opportunity, NVIDIA introduced a completely new GPU architecture that was designed from the ground up to be fully programmable; and function as both a graphics engine and a general purpose scientific processor. NVIDIA debuted the first GPU based on this new massively parallel architecture, called CUDA™, in 2006. This new architecture also allows developers to program to the GPU using traditional and high-level languages like C and Fortran. Since 2006, NVIDIA's C language with CUDA extensions has been widely adopted with hundreds of applications and research papers published, many of which can be found on CUDA Zone.
The combination of advanced, programmable GPUs and CUDA has allowed NVIDIA to design processors and entire systems that provide supercomputing capabilities with an outstanding green performance per watt.
For example, one green computing powerhouse is the NVIDIA Tesla Personal Supercomputer (PSC). This supercomputer sits on your desktop and plugs into a standard office power socket. Containing up to four Tesla C1060 GPU computing processors, a Tesla PSC delivers nearly four teraflops of compute capability and provides application performance that is 250 times faster than traditional CPU-based PCs or workstations. This gives computational researchers and technical professionals a dedicated computing resource at their deskside that is much faster and more energy-efficient than a shared cluster in the data center.
The same high performance can be scaled to the data center by building clusters using the Tesla S1070 1U GPU systems. Whether building small research clusters or building out a petaflop cluster, Tesla S1070 GPU-based systems deliver unprecedented performance per watt.
GPU computing provides a co-processing environment that mixes multi-core CPUs and many-core GPUs for optimized performance and energy efficiency. Scientists, engineers and business users can handle the next generation of computing problems using advanced algorithms. The system's incredible performance per watt means that IT managers can upgrade data center performance without expensive infrastructure modifications for power and cooling, and a big jump in energy bills.
Hybrid clusters with CPUs and GPUs can handle an extensive range of computationally intensive applications for a wide variety of industries. Just a few of the applications areas that can benefit from GPUs include: computational chemistry, fluid dynamics, digital content creation, financial market modeling, genomics, medical imaging, oil and gas exploration, and research and scientific computing.
Tesla Systems at Work – Greening the Data Center
Here are just a few examples of energy efficient NVIDIA Tesla systems at work:
High density computing allows data center managers to meet the constantly increasing performance demands of their users without corresponding demands on the center's electrical and thermal capabilities. Because GPU-based systems combine supercomputer-level performance with significantly lower power and cooling costs, the goal of greening the data center is now mission possible.
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SDSC and Appro Next-Generation Supercomputer: SC09 Video Interview
Learn how SDSC and Appro are pushing the envelope and have come up with a supercomputer design that delivers 32 "supernodes".
Appro Ready-To-Go-Clusters – Quickly deploy ANSYS & Intel Cluster Ready Solutions
Offering a fully integrated Ready-To-Go Cluster based on the Appro GreenBlade System supporting up to 28 blade nodes in a half-size standard rack cabinet, including master nodes and switches.
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Join this online panel discussion for live Q&A with leading industry experts, analysts, and end-users to discuss the latest innovations, best practices, barriers to implementation, and measurable benefits of server virtualization with a particular focus on today's real world solutions.
Learn about scalable fault-tolerant architectures and examples of energy efficient and scalable supercomputing clusters using dual QDR InfiniBand to combine capacity computing with network failover capabilities with the help of programming languages such as MPI and a robust Linux cluster management package.
LIVE@SCO9: The IBM team discusses new innovations in hardware, software and services that help clients better understand their workloads and get insight from their R&D efforts. Technology demonstrations include the soon-to-be-released Power7 HPC processor, the DCS990 system with 2.4 petabytes of storage, the xCAT management tool, secure HPC cloud computing and more. Winners of two HPCwire Readers' and Editors’ Choice Awards! Take the IBM virtual tour at SC09 or more information go online to: http://www-03.ibm.com/systems/deepcomputing/sc09.html