iTunes

Abrindo a iTunes Store.Se o iTunes não abrir, clique no ícone de aplicativo do iTunes no dock ou área de trabalho do Windows.Indicador de progresso
Abrindo a iBooks Store.Se o iBooks não abrir, clique no app iBooks em seu dock.Indicador de progresso
iTunes

O iTunes é a maneira mais fácil de organizar e aumentar sua coleção de mídia digital.

Não foi possível encontrar o iTunes no seu computador. Para baixar e assinar Programming Massively Parallel Processors with CUDA de Stanford University, obtenha o iTunes agora mesmo.

Já tem o iTunes? Clique em Já tenho o iTunes para abri-lo agora.

Eu tenho o iTunes Download grátis
iTunes para Mac + PC

Programming Massively Parallel Processors with CUDA

por Stanford University

Para ouvir um podcast de áudio, passe o mouse sobre o título e clique em Reproduzir. Abra o iTunes para baixar e assinar a coleções iTunes U.

Descrição

Virtually all semiconductor market domains, including PCs, game consoles, mobile handsets, servers, supercomputers, and networks, are converging to concurrent platforms. There are two important reasons for this trend. First, these concurrent processors can potentially offer more effective use of chip space and power than traditional monolithic microprocessors for many demanding applications. Second, an increasing number of applications that traditionally used Application Specific Integrated Circuits (ASICs) are now implemented with concurrent processors in order to improve functionality and reduce engineering cost. The real challenge is to develop applications software that effectively uses these concurrent processors to achieve efficiency and performance goals. The aim of this course is to provide students with knowledge and hands-on experience in developing applications software for processors with massively parallel computing resources. In general, we refer to a processor as massively parallel if it has the ability to complete more than 64 arithmetic operations per clock cycle. Many commercial offerings from NVIDIA, AMD, and Intel already offer such levels of concurrency. Effectively programming these processors will require in-depth knowledge about parallel programming principles, as well as the parallelism models, communication models, and resource limitations of these processors. The target audiences of the course are students who want to develop exciting applications for these processors, as well as those who want to develop programming tools and future implementations for these processors. Visit the CS193G companion website for course materials.