Anonymized Network Sensing Graph Challenge

Hayden Jananthan, Michael Jones, William Arcand, David Bestor, William Bergeron, Daniel Burrill, Aydin Buluc, Chansup Byun, Timothy Davis, Vijay Gadepally, Daniel Grant, Michael Houle, Matthew Hubbell, Piotr Luszczek, Peter Michaleas, Lauren Milechin, Chasen Milner, Guillermo Morales, Andrew Morris, Julie Mullen, Ritesh Patel, Alex Pentland, Sandeep Pisharody, Andrew Prout, Albert Reuther, Antonio Rosa, Gabriel Wachman, Charles Yee, Jeremy Kepner
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Abstract

The MIT/IEEE/Amazon GraphChallenge encourages community approaches to developing new solutions for analyzing graphs and sparse data derived from social media, sensor feeds, and scientific data to discover relationships between events as they unfold in the field. The anonymized network sensing Graph Challenge seeks to enable large, open, community-based approaches to protecting networks. Many large-scale networking problems can only be solved with community access to very broad data sets with the highest regard for privacy and strong community buy-in. Such approaches often require community-based data sharing. In the broader networking community (commercial, federal, and academia) anonymized source-to-destination traffic matrices with standard data sharing agreements have emerged as a data product that can meet many of these requirements. This challenge provides an opportunity to highlight novel approaches for optimizing the construction and analysis of anonymized traffic matrices using over 100 billion network packets derived from the largest Internet telescope in the world (CAIDA). This challenge specifies the anonymization, construction, and analysis of these traffic matrices. A GraphBLAS reference implementation is provided, but the use of GraphBLAS is not required in this Graph Challenge. As with prior Graph Challenges the goal is to provide a well-defined context for demonstrating innovation. Graph Challenge participants are free to select (with accompanying explanation) the Graph Challenge elements that are appropriate for highlighting their innovations.
匿名网络传感图挑战
麻省理工学院/IEEE/亚马逊图形挑战赛鼓励社区开发新的解决方案,用于分析从社交媒体、传感器馈送和科学数据中获得的图形和稀疏数据,以发现事件在现场发生时之间的关系。匿名网络传感图挑战赛旨在启用大型、开放、基于社区的方法来保护网络。许多大规模的网络问题只能通过社区访问非常广泛的数据集来解决,同时要高度重视隐私问题并得到社区的大力支持。这种方法通常需要基于社区的数据共享。在更广泛的网络社区(商业、联邦和学术界)中,符合数据共享协议的匿名源到目的地流量矩阵已经成为一种数据产品,可以满足许多此类要求。本挑战赛提供了一个机会,可以利用从世界上最大的互联网望远镜(CAIDA)中获得的超过 1000 亿个网络数据包,重点介绍优化匿名流量矩阵构建和分析的新方法。本挑战书规定了这些流量矩阵的匿名化、构建和分析。我们提供了 AGraphBLAS 参考实现,但本图表挑战赛并不要求使用 GraphBLAS。与以往的图形挑战赛一样,本次挑战赛的目标是为展示创新提供一个定义明确的环境。图形挑战赛参赛者可以自由选择适合突出其创新的图形挑战赛元素(附带说明)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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