Panel de control

Encontrar contenido

Refinar resultados
Contenido relacionado

Etiquetas activas

  • 16 Resultados
  • Elementos por página

Optimize Code for Highly Parallel Applications

Optimize code and maximize utilization using Intel® Xeon Phi™ coprocessors, enabling research and discovery with highly parallel applications.

Bull Optimizes Application with Intel® Xeon Phi™ Coprocessors

French supercomputer vendor Bull discusses optimizing applications and improving speeds on their HPC blades featuring Intel® Xeon Phi™ coprocessors.

Investments in High Performance Computing Earn TOP500 Status

IBM VP Bob Galush speaks at the Intel® Xeon Phi™ launch event, highlighting the development of high performance computing products.

Intel® Xeon Phi™ Coprocessors Deliver Performance Efficiency

Intel® Xeon Phi™ coprocessors are a performance-efficient solution for rapidly porting applications to the platform and supporting parallel workloads.

Intel® Xeon Phi™ Coprocessor Adds Smarts to SGI UV* Computer

SGI pairs Intel® Xeon Phi™ coprocessor with the 64-terabyte capacity of their UV* big brain computer displayed at the Supercomputing 2012 conference.

NAG Solves Large Data Problems Quickly

NAG’s Mike Dewar discusses how porting legacy code to Intel® Xeon Phi™ coprocessors enables users to solve large data problems quickly.

ScaleMP Improves Performance of Large Scale Virtual Machines

ScaleMP’s Shai Fultheim explains how Intel® Xeon Phi™ coprocessors run large scale virtual machines without the constraints of physical systems.

Intel® Parallel Computing Centers Overview

Researchers discuss how Intel® Parallel Computing Centers will provide the capabilities to answer bigger questions and make new discoveries.

Altair Speeds High Performance Computing Simulations

Altair’s Bill Nitzberg and Eric Lequiniou explain how Intel® Xeon Phi™ coprocessors speed up high performance computing simulations.

Supermicro Reduces Financial and Power Costs with Intel® Xeon Phi™

Supermicro explains how Intel® Xeon Phi™ coprocessor’s parallel workload performance reduces financial and power costs of high performance computing.