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Accomplishments and Challenges in High Performance Computing for Computational Biology

机译:计算生物学高性能计算的成就与挑战

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We review recent research and development in high performance computing (HPC) for computational biology and discuss the great challenges to both biomedical scientists and IT professionals. During the last decades, research in the fields of molecular biology and biomedicine has provided the scientific community with huge amount of data through sequencing, genome-wide annotation and gene expression profiling projects. The genetic databases have been growing exponentially and sophisticated computer algorithms have been developed to cater for needs of data mining, analysis and simulation. It is clear that development of HPC technologies has become crucial for deployment of the software systems to tackle various bioinformatics problems. The goal of this article is to present the current research and our critical review on construction of parallel and distributed computing systems, design of multi-process algorithms, and development of software systems for biocomputing tasks including sequence alignment, heuristic database searching, phylogenetic analysis gene clustering. We also give a brief introduction to our work in development of highly scalable and reproducible HPC algorithms and indicate the challenging problems in this context.
机译:我们回顾了用于计算生物学的高性能计算(HPC)的最新研究和发展,并讨论了生物医学科学家和IT专业人员面临的巨大挑战。在过去的几十年中,分子生物学和生物医学领域的研究通过测序,全基因组注释和基因表达谱分析项目为科学界提供了大量数据。遗传数据库已经呈指数增长,并且已经开发出先进的计算机算法来满足数据挖掘,分析和模拟的需求。显然,HPC技术的发展对于解决各种生物信息学问题的软件系统的部署已经至关重要。本文的目的是介绍有关并行和分布式计算系统的构建,多进程算法的设计以及用于生物计算任务的软件系统(包括序列比对,启发式数据库搜索,系统发育分析基因)的开发的当前研究和我们的关键评论。聚类。我们还简要介绍了我们在开发高度可扩展和可再现的HPC算法方面的工作,并指出了在这种情况下的挑战性问题。

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