• <ins id="pjuwb"></ins>
    <blockquote id="pjuwb"><pre id="pjuwb"></pre></blockquote>
    <noscript id="pjuwb"></noscript>
          <sup id="pjuwb"><pre id="pjuwb"></pre></sup>
            <dd id="pjuwb"></dd>
            <abbr id="pjuwb"></abbr>

            歲月流轉,往昔空明

            C++博客 首頁 新隨筆 聯系 聚合 管理
              118 Posts :: 3 Stories :: 413 Comments :: 0 Trackbacks

            CUDA

            NVIDIA CUDA
            Revolutionary GPU Computing
            NVIDIA? CUDA? technology is a fundamentally new computing architecture for the GPU to solve complex computational problems across consumer, business, and technical industries.? CUDA (compute unified device architecture) technology gives data-intensive applications access to the tremendous processing power of NVIDIA graphics processing units (GPUs) through a revolutionary computing architecture unleashing entirely new capabilities.? Providing orders of magnitude more performance and simplifying software development through the standard C language, CUDA technology enables developers to create solutions for data-intensive processing to produce accurate answers, in less time.?


            If you are interested in developing with CUDA please join our
            registered developer program to get started.


            What is CUDA technology?

            GPU computing with CUDA technology is an innovative combination of computing features in next generation NVIDIA GPUs that are accessed through a standard ‘C’ language.? Where previous generation GPUs were based on “streaming shader programs”, CUDA programmers use ‘C’ to create programs called threads that are similar to multi-threading programs on traditional CPUs.? In contrast to multi-core CPUs, where only a few threads execute at the same time, NVIDIA GPUs featuring CUDA technology process thousands of threads simultaneously enabling a higher capacity of information flow.

            One of the most important innovations offered by CUDA technology is the ability for threads on NVIDIA GPUs to cooperate when solving a problem.? By enabling threads to communicate, CUDA technology allows applications to operate more efficiently.? NVIDIA GPUs featuring CUDA technology have a Parallel Data Cache that saves frequently used information directly on the GPU.? Storing information on the GPU allows computing threads to instantly share information rather than wait for data from much slower, off-chip DRAMs.? This advance in technology enables users to find the answers to complex computational problems in real-time.


            What applications benefit from CUDA?

            CUDA GPU computing is suitable for a wide range of applications that process massive amounts of information.? For example, game applications take advantage of CUDA technology by leveraging the NVIDIA GPU to run the entire physics computation, letting gamers experience amazing performance and visual effects.? In addition, commercial software applications used for product development or large data analysis, previously required a large scale computing system to run applications, can now benefit from using a standard workstation or server enabled with CUDA technology.? This breakthrough in technology enables customers to make real-time analysis and decisions from anywhere.? In addition, scientific applications which require the most intensive technical computing capability are no longer constrained by compute density; computing with CUDA provides a platform with a higher level of performance from the same space requirements.


            Why Use CUDA technology?

            Performance. NVIDIA GPUs offer incredible performance for data-intensive applications.? CUDA technology provides a standard, widely available solution for delivering new applications with unprecedented capability.

            Compatibility. Applications developed with the CUDA C-compiler are compatible with future generation GPUs from NVIDIA.? Developers investing in GPU computing will immediately benefit from the performance of current GPUs and be confident in NVIDIA’s future investment in high performance technology for GPU computing.

            Productivity. Developers wanting to tap into the NVIDIA GPU computing power can now use the industry standard “C” language for software development.? CUDA provides a complete development solution that integrates CPU and GPU software to enable developers to quickly provide new features and greater value for their customers.

            Scalability. Applications developed with CUDA technology scale in performance and features across the full line of NVIDIA GPUs from embedded form factors to high performance professional graphics solutions using multiple GPUs.? The power of CUDA performance is now available in virtually any class system from large, computing installations to consumer products.?


            Developing with CUDA

            The CUDA software development kit (SDK) is a complete software development solution for programming CUDA-enabled GPUs.? The SDK includes standard FFT and BLAS libraries, a C-compiler for the NVIDIA GPU and a runtime driver.? The CUDA runtime driver is separate standalone driver that interoperates with OpenGL and Microsoft? DirectX? drivers from NVIDIA.? CUDA technology is equally supported on both the Linux and Microsoft? Windows? XP operating systems.


            Technology Features

            ??Unified hardware and software solution for thread computing on CUDA-enabled NVIDIA GPUs

            ??CUDA-enabled GPUs support the Parallel Data Cache and Thread Execution Manager for high performance computing

            ??Standard C programming language enabled on a GPU

            ??Standard numerical libraries for FFT and BLAS

            ??Dedicated CUDA driver for computing

            ??Optimized upload and download path from the CPU to CUDA-enabled GPU

            ??CUDA driver interoperates with graphics drivers

            ??Supports Linux and Windows XP operating systems

            ??Scales from high performance professional graphics solutions to mobile and embedded GPUs

            ??Native multi-GPU support for high density computing

            ??Supports hardware debugging and profiler for program development and optimization


            If you are interested in developing with CUDA please join our registered developer program to get started.

            posted on 2006-11-19 20:19 空明流轉 閱讀(1279) 評論(0)  編輯 收藏 引用
            久久九九有精品国产23百花影院| 色诱久久久久综合网ywww| 久久国产精品久久久| 狠狠人妻久久久久久综合| 国产农村妇女毛片精品久久| 热99RE久久精品这里都是精品免费| 久久久国产99久久国产一| 无码人妻少妇久久中文字幕蜜桃| 国产V综合V亚洲欧美久久| 久久www免费人成看国产片| 色欲久久久天天天综合网| 91精品国产91久久久久久蜜臀| 偷窥少妇久久久久久久久| 亚洲国产成人久久精品动漫| 狠狠色丁香久久婷婷综合蜜芽五月 | 久久精品一区二区影院| 精品国产乱码久久久久久呢| 2022年国产精品久久久久| 久久青青色综合| 亚洲国产成人久久精品影视| 亚洲国产一成人久久精品| 国产精品亚洲美女久久久| 色综合久久久久无码专区 | 亚洲AV无码一区东京热久久| 国产精品欧美久久久久无广告| 欧美一区二区三区久久综合| 日产精品久久久久久久| 国产伊人久久| 99久久精品国产一区二区蜜芽| 色88久久久久高潮综合影院| 亚洲美日韩Av中文字幕无码久久久妻妇| 久久精品国产亚洲综合色| 久久久久亚洲AV无码永不| 亚洲AV无码成人网站久久精品大| 久久受www免费人成_看片中文| 久久婷婷色综合一区二区| 久久夜色撩人精品国产| 久久久精品久久久久久| 深夜久久AAAAA级毛片免费看| 久久精品国产亚洲精品| 亚洲日本va午夜中文字幕久久 |