用于图形分析的PGAS:单向通信能否打破可扩展性障碍?

J. Langguth
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引用次数: 0

摘要

随着世界日益相互联系,系统日益复杂。因此,能够分析互联系统及其动态特性的技术变得不可或缺。因此,在过去十年中,人们对图形分析的兴趣越来越大,这使得人们可以从这些相互关联的数据中获得见解。并行图分析可以揭示大规模复杂系统和网络的运作,这些系统和网络存在于社会网络、经济交易和蛋白质相互作用等不同领域。虽然顺序图算法已经研究了几十年,但最近大量数据集的可用性引起了对并行图处理的需求,这带来了独特的挑战。
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PGAS for graph analytics: can one sided communications break the scalability barrier?
As the world is becoming increasingly interconnected and systems increasingly complex. Therefore, technologies that can analyze connected systems and their dynamic characteristics become indispensable. Consequently, the last decade has seen increasing interest in graph analytics, which allows obtaining insights from such connected data. Parallel graph analytics can reveal the workings of intricate systems and networks at massive scales, which are found in diverse areas such as social networks, economic transactions, and protein interactions. While sequential graph algorithms have been studied for decades, the recent availability of massive datasets has given rise to the need for parallel graph processing, which poses unique challenges.
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