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Streaming Graph Partitioning for Large Graphs with Limited Memory

机译:具有受限内存的大型图的流图分区

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摘要

With the graph data scale constantly expanding, the personal computer has brought in severe challenge for the traditional graph partitioning because of its limited memory capacity. The streaming model has been applied in graph partitioning in recent years because it is more efficient than offline partitioning. However, the cache storage structure of original streaming method is inefficient for searching operations on the one hand, on the other hand, the efficiency gradually is reduced with the number of vertices which have been allocated increased because there is no space left for storing more in memory. A caching strategy for streaming algorithm is put forward in this paper including efficient cache storage structure, which uses the vertex and its neighbors' subset information as basic entry. The cache management module manages cache content. Our method is effective on the condition whether it has limitation to cache capacity or not. By using our cache strategy, it only takes about 25 minutes for partitioning twitter-2010 that have 1.4 billion edges while the original streaming method needs 42 minutes, As can prove the effectiveness and superiority of our method.
机译:随着图形数据规模的不断扩大,个人计算机由于其有限的存储容量而对传统图形分区提出了严峻的挑战。近年来,流传输模型已应用于图分区,因为它比离线分区更有效。但是,原始流方法的高速缓存存储结构一方面对于搜索操作效率低下,另一方面,由于已分配的顶点数量增加,效率逐渐降低,因为没有足够的空间来存储更多的数据。记忆。提出了一种流算法的缓存策略,该算法包括有效的缓存存储结构,该结构以顶点及其邻居的子集信息为基本条目。缓存管理模块管理缓存内容。我们的方法在是否限制缓存容量的条件下有效。通过使用我们的缓存策略,对具有14亿边缘的twitter-2010进行分区只需要大约25分钟,而原始流方法则需要42分钟。这可以证明我们方法的有效性和优越性。

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