Profile-guided optimization of critical medical imaging algorithms

Boston, MA(2009)

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摘要
Given the rapid growth in computational requirements for medical image analysis, Graphics Processing Units (GPUs) have begun to be utilized to address these demands. But even though GPUs are well-suited to the underlying processing associated with medical image reconstruction, extracting the full benefits of moving to GPU platforms requires significant programming effort, and presents a fundamental barrier for more general adoption of GPU acceleration in a wider range of medical imaging applications. In this paper we describe our experience in accelerating a number of challenging medical imaging applications, and discuss how we utilize profile-guided analysis to reap the full benefits available on GPU platforms. Our work considers different GPU architectures, as well as how to fully exploit the benefits of using multiple GPUs.
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关键词
multiple gpus,gpu acceleration,full benefit,profile-guided optimization,medical image reconstruction,medical imaging application,different gpu architecture,medical image analysis,critical medical imaging algorithm,graphics processing units,profile-guided analysis,gpu platform,tomographic reconstruction,biomedical imaging,image reconstruction,acceleration,computer graphics,optimization,computer architecture,profile guided optimization
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