GraphX

Reynold Xin(University of California, Berkeley), Joseph E. Gonzalez(University of California, Berkeley), Michael J. Franklin(University of California, Berkeley), Ion Stoica(University of California, Berkeley)
Unknown
June 23, 2013
Cited by 583

Abstract

From social networks to targeted advertising, big graphs capture the structure in data and are central to recent advances in machine learning and data mining. Unfortunately, directly applying existing data-parallel tools to graph computation tasks can be cumbersome and inefficient. The need for intuitive, scalable tools for graph computation has lead to the development of new graph-parallel systems (e.g., Pregel, PowerGraph) which are designed to efficiently execute graph algorithms. Unfortunately, these new graph-parallel systems do not address the challenges of graph construction and transformation which are often just as problematic as the subsequent computation. Furthermore, existing graph-parallel systems provide limited fault-tolerance and support for interactive data mining.


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