omniClassifier: a Desktop Grid Computing System for Big Data Prediction Modeling.

John H Phan, Sonal Kothari, May D Wang
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Abstract

Robust prediction models are important for numerous science, engineering, and biomedical applications. However, best-practice procedures for optimizing prediction models can be computationally complex, especially when choosing models from among hundreds or thousands of parameter choices. Computational complexity has further increased with the growth of data in these fields, concurrent with the era of "Big Data". Grid computing is a potential solution to the computational challenges of Big Data. Desktop grid computing, which uses idle CPU cycles of commodity desktop machines, coupled with commercial cloud computing resources can enable research labs to gain easier and more cost effective access to vast computing resources. We have developed omniClassifier, a multi-purpose prediction modeling application that provides researchers with a tool for conducting machine learning research within the guidelines of recommended best-practices. omniClassifier is implemented as a desktop grid computing system using the Berkeley Open Infrastructure for Network Computing (BOINC) middleware. In addition to describing implementation details, we use various gene expression datasets to demonstrate the potential scalability of omniClassifier for efficient and robust Big Data prediction modeling. A prototype of omniClassifier can be accessed at http://omniclassifier.bme.gatech.edu/.

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omniClassifier:用于大数据预测建模的桌面网格计算系统。
稳健的预测模型对许多科学、工程和生物医学应用都很重要。然而,优化预测模型的最佳实践程序在计算上非常复杂,尤其是从成百上千个参数中选择模型时更是如此。随着 "大数据 "时代的到来,计算复杂度随着这些领域的数据增长而进一步提高。网格计算是应对大数据计算挑战的潜在解决方案。桌面网格计算可利用商品台式机的闲置 CPU 周期,再加上商业云计算资源,可使研究实验室更轻松、更经济高效地获取大量计算资源。我们开发了多用途预测建模应用程序 omniClassifier,为研究人员提供了在推荐的最佳实践指导下开展机器学习研究的工具。OmniClassifier 是使用伯克利网络计算开放基础设施(BOINC)中间件作为桌面网格计算系统实现的。除了介绍实施细节外,我们还使用各种基因表达数据集来展示 omniClassifier 在高效、稳健的大数据预测建模方面的潜在可扩展性。您可以在 http://omniclassifier.bme.gatech.edu/ 上访问 omniClassifier 的原型。
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