DIMMining
Guohao Dai, Zhenhua Zhu, Tianyu Fu, Chiyue Wei, Bangyan Wang, Xiangyu Li, Yuan Xie, Huazhong Yang, Yu Wang
Abstract
Graph mining, which finds specific patterns in the graph, is becoming increasingly important in various domains. We point out that accelerating graph mining suffers from the following challenges: (1) Heavy comparison for pruning: Pruning technique is widely used to reduce search space in graph mining. It applies constraints on vertex indices and involves massive index comparisons. (2) Low parallelism of set operations: The typical graph mining algorithms can be expressed as a series of set operations between neighbors of vertices, which suffer from low parallelism if vertices are streaming to the computation units. (3) Heavy data transfer: Graph mining needs to transfer intermediate data with two orders of magnitude larger than the original data volume between CPU and memory.