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NameFilter : Achieving fast name lookup with low memory cost via applying two-stage Bloom filters

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NameFilter : Achieving fast name lookup with low memory cost via applying two-stage Bloom filters. Authors: Yi Wang, Tian Pan, Zhian Mi , Huichen Dai, Xiaoyu Guo , Ting Zhang, Bin Liu, and Qunfeng Dong Publisher: INFOCOM 2013 mini Presenter: Chai-Yi Chu Date: 2013/04/24. - PowerPoint PPT Presentation
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NameFilter: Achieving fast name lookup with low memory cost via applying two-stage Bloom filters Authors: Yi Wang, Tian Pan, Zhian Mi, Huichen Dai, Xiaoyu Guo, Ting Zhang, Bin Liu, and Qunfeng Dong Publisher: INFOCOM 2013 mini Presenter: Chai-Yi Chu Date: 2013/04/24 1
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Page 1: NameFilter : Achieving  fast name lookup with low memory cost via applying two-stage Bloom filters

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NameFilter: Achieving fast name lookup with low memory

cost via applying two-stage Bloom filters

Authors: Yi Wang, Tian Pan, Zhian Mi, Huichen Dai, Xiaoyu Guo, Ting Zhang, Bin Liu, and Qunfeng Dong

Publisher: INFOCOM 2013 mini

Presenter: Chai-Yi Chu

Date: 2013/04/24

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Introduction Architecture◦Bloom filter and Hash table◦Replace Hash table to Bloom filter◦Merged Bloom filter◦Update

Experimental Evaluation

Outline

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A two-stage Bloom filter-based scheme for Named Data Networking name lookup.

The first stage determines the length of a name prefix, and the second stage looks up the prefix in a narrowed group of Bloom filters based on the results from the first stage.

Introduction

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Bloom filter and Hash table1. Name prefixes are thus classified into different subsets

according to their prefix length, and each subset is organized has a hash table.

2. The hash table stores the first name prefix corresponding to the hash value with other conflicted name prefixes chained downwards.

Architecture

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Replace Hash table to Bloom filter◦Bloom filters could be used as classifiers for name prefixes

to the same outgoing ports. The number of required Bloom filters in the second stage is

equal to the number of router’s ports.

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Merged Bloom filter◦Set the Bloom filters to be equal size and apply the same

group of hash functions to all the 𝑁 Bloom filters.◦Combines the 𝑁 Bloom filters bound to 𝑁 forwarding ports,

with 𝑁 bits in the same location aggregated into one bit string.◦ From the most significant bit to the least significant bit, the -𝑁

th bit store the corresponding hash results from the -th 𝑁Bloom filter and the remaining unused bits are padded with 0.

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◦ There are 𝑘 hash computations required when a prefix looks for its forwarding port by obtaining the 𝑘 bit strings corresponding to the 𝑘 hash functions with an ′AND′ operation finally implemented on them. The locations of ′1′ in the results represent the final forwarding decision.

◦ For example, in the Figure 2, the bit strings are 11...1, 11...1, 10...0, 11...1, and the ′AND′ result of them is 10...0, which denotes that the forwarding port is 1.

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Prefix table◦ 3M : 2,763,780 entries ◦ 10M: 10,000,000 entries – crawled from Internet

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Experimental Evaluation

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Name Trace◦Two types of name traces are generated to measure the

lookup performance.1. Average workload: randomly selected from prefix tables.2. Heavy workload: randomly chosen from the top 10% longest

prefixes in the prefix tables.

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Computational platform

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(Million Search Per Second)

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