Scalable Packet Classification with Hash Tables
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概要
- 論文の詳細を見る
In the last decade, the technique of packet classification has been widely deployed in various network devices, including routers, firewalls and network intrusion detection systems. In this work, we improve the performance of packet classification by using multiple hash tables. The existing hash-based algorithms have superior scalability with respect to the required space; however, their search performance may not be comparable to other algorithms. To improve the search performance, we propose a tuple reordering algorithm to minimize the number of accessed hash tables with the aid of bitmaps. We also use pre-computation to ensure the accuracy of our search procedure. Performance evaluation based on both real and synthetic filter databases shows that our scheme is effective and scalable and the pre-computation cost is moderate.
- (社)電子情報通信学会の論文
- 2010-05-01
著者
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WANG Pi-Chung
Institute of Networking and Multimedia and the Department of Computer Science and Engineering, Natio
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Wang Pi-chung
Institute Of Networking And Multimedia And The Department Of Computer Science And Engineering Nation
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Wang Pi-chung
Institute Of Networking And Multimedia And The Department Of Computer Science And Engineering Nation
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