GraphZeppelin: Storage-Friendly Sketching for Connected Components on Dynamic Graph Streams

March 28, 2022 ยท Declared Dead ยท ๐Ÿ› SIGMOD Conference

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Authors David Tench, Evan West, Victor Zhang, Michael A. Bender, Abiyaz Chowdhury, J. Ahmed Dellas, Martin Farach-Colton, Tyler Seip, Kenny Zhang arXiv ID 2203.14927 Category cs.DS: Data Structures & Algorithms Citations 9 Venue SIGMOD Conference Last Checked 3 months ago
Abstract
Finding the connected components of a graph is a fundamental problem with uses throughout computer science and engineering. The task of computing connected components becomes more difficult when graphs are very large, or when they are dynamic, meaning the edge set changes over time subject to a stream of edge insertions and deletions. A natural approach to computing the connected components on a large, dynamic graph stream is to buy enough RAM to store the entire graph. However, the requirement that the graph fit in RAM is prohibitive for very large graphs. Thus, there is an unmet need for systems that can process dense dynamic graphs, especially when those graphs are larger than available RAM. We present a new high-performance streaming graph-processing system for computing the connected components of a graph. This system, which we call GraphZeppelin, uses new linear sketching data structures (CubeSketches) to solve the streaming connected components problem and as a result requires space asymptotically smaller than the space required for a lossless representation of the graph. GraphZeppelin is optimized for massive dense graphs: GraphZeppelin can process millions of edge updates (both insertions and deletions) per second, even when the underlying graph is far too large to fit in available RAM. As a result GraphZeppelin vastly increases the scale of graphs that can be processed.
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