GPU 加速 mapreduce 的实现:使用 hadoop 和 openCL 进行乳腺癌检测和计算密集型工作

Hamza Ouhakki, Abdelali Elmoufidi
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引用次数: 0

摘要

摘要 在大规模数据处理的分布式计算领域,MapReduce 以其高效性脱颖而出。然而,随着任务的计算密集度越来越高,它在单节点性能方面面临着挑战。在乳腺癌检测(尤其是图像数据)方面,出现了一种通过 GPU 加速来增强 MapReduce 的新方法。该实施方案使用 Hadoop 和 OpenCL 执行,以通用且经济高效的硬件平台为目标,可无缝集成到 Apache Hadoop 中。该解决方案专为异构多机和多核架构量身定制,可解决乳腺癌图像分析中大数据应用的计算密集型问题。值得注意的是,该实施方案的性能显著提高了近 13 倍,而且无需额外优化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

An implementation of GPU accelerated mapreduce: using hadoop with openCL for breast cancer detection and compute-intensive jobs

An implementation of GPU accelerated mapreduce: using hadoop with openCL for breast cancer detection and compute-intensive jobs

Abstract-In the realm of distributed computing for large-scale data processing, MapReduce stands out for its efficiency. However, as tasks become increasingly compute-intensive, it faces challenges in single-node performance. In the context of breast cancer detection, particularly with image data, a new approach has emerged to enhance MapReduce through GPU acceleration. This implementation, executed using Hadoop and OpenCL, targets a general and cost-effective hardware platform, seamlessly integrating into Apache Hadoop. Tailored for a heterogeneous multi-machine and multicore architecture, this solution addresses the compute-intensive nature of big data applications in breast cancer image analysis. Remarkably, the implementation has achieved a significant nearly 13-fold improvement in performance, without the need for additional optimizations.

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