主题演讲1:网格计算:生物信息学研究的机遇

Albert Y. Zomaya
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引用次数: 2

摘要

只提供摘要形式。在过去的几年里,互联网的受欢迎程度一直在突飞猛进地增长。然而,在一项技术的生命中,随着它的成熟,需要回答有关其未来的问题。互联网也不例外。网格计算通常被称为全球互联网技术中的“下一件大事”,被视为能够塑造互联网未来的最佳候选技术之一。网格计算综合利用了过去五年中在微处理器速度、光通信、原始存储容量、万维网和互联网方面取得的巨大进步。网格技术利用了现有资源,推迟了购买新基础设施的需要。随着生命科学和健康信息学等行业对计算机功率的需求几乎是无限的,电网以更低的成本提供更大功率的能力给这项技术带来了巨大的潜力。最终,必须根据应用程序、业务价值和它交付的科学成果来评估网格,而不是它的体系结构。生物学为我们这个时代提供了一些最重要、也最复杂的科学挑战。这些问题包括了解人类基因组,发现基因编码的蛋白质的结构和功能,以及有效地利用这些信息进行药物设计。从计算的角度来看,这些问题中的大多数都是非常密集的。网格框架的主要设计目标之一是通过定义适当的接口,将大规模并行机器编程的复杂性与生物信息学计算的复杂性进行有效的逻辑分离。生物信息学计算方法的语义封装意味着应用程序可以跟踪机器体系结构的演变,并且可以在领域专家或最终用户的最小干预下进行各种并行分解方案的探索。例如,了解蛋白质功能的物理基础是分子生物学的中心目标。蛋白质通过内部运动和与环境的相互作用发挥作用。从最早的蛋白质动力学模拟开始,人们就一直在追求在原子水平上理解蛋白质的运动。当模拟可以与实验结果相联系时,不同过程的微观检查(通过模拟)获得更多的可信度,然后模拟结果可以帮助解释实验数据。网格框架促进了计算能力和模拟方法的改进,可以在蛋白质结构、热力学和动力学的研究中取得重要进展。本次演讲回顾了网格技术的发展现状,并展示了网格技术如何改变竞争格局。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Keynote 1: Grid Computing: Opportunities for Bioinformatics Research
Summary form only given. Over the past few years, the popularity of the Internet has been growing by leaps and bounds. However, there comes a time in the life of a technology, as it matures, where questions about its future need to be answered. The Internet is no exception to this case. Often called the "next big thing" in global Internet technology, grid computing is viewed as one of the top candidates that can shape the future of the Internet. Grid computing takes collective advantage of the vast improvements in microprocessor speeds, optical communications, raw storage capacity, World Wide Web and the Internet that have occurred over the last five years. Grid technology leverages existing resources and delays the need to purchase new infrastructure. With demand for computer power in industries like the life sciences and health informatics almost unlimited, grids ability to deliver greater power at less cost gives the technology tremendous potential. Ultimately, the grid must be evaluated in terms of the applications, business value, and scientific results that it delivers, not its architecture. Biology provides some of the most important, as well as most complex, scientific challenges of our times. These problems include understanding the human genome, discovering the structure and functions of the proteins that the genes encode, and using this information efficiently for drug design. Most of these problems are extremely intensive from a computational perspective. One of the principal design goals for the grid framework is the effective logical separation of the complexities of programming a massively parallel machine from the complexities of bioinformatics computations through the definition of appropriate interfaces. Encapsulation of the semantics of the bioinformatics computations methodologies means that the application can track the evolution of the machine architecture and explorations of various parallel decomposition schemes can take place with minimal intervention from the domain experts or the end users. For example, understanding the physical basis of protein function is a central objective of molecular biology. Proteins function through internal motion and interaction with their environment. An understanding of protein motion at the atomic level has been pursued since the earliest simulations of their dynamics. When simulations can connect to experimental results, the microscopic examinations of the different processes (via simulation) acquire more credibility and the simulation results can then help interpret the experimental data. Improvements in computational power and simulation methods facilitated by the grid framework could to lead to important progress in studies of protein structure, thermodynamics, and kinetics. This talk reviews the state of play and shows how grid technology can change the competitive landscape.
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