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A Low-Power Content-Addressable-Memory Based on Clustered-Sparse-Networks

2013-02-18
Hooman Jarollahi, Vincent Gripon, Naoya Onizawa, Warren J. Gross

Abstract

A low-power Content-Addressable-Memory (CAM) is introduced employing a new mechanism for associativity between the input tags and the corresponding address of the output data. The proposed architecture is based on a recently developed clustered-sparse-network using binary-weighted connections that on-average will eliminate most of the parallel comparisons performed during a search. Therefore, the dynamic energy consumption of the proposed design is significantly lower compared to that of a conventional low-power CAM design. Given an input tag, the proposed architecture computes a few possibilities for the location of the matched tag and performs the comparisons on them to locate a single valid match. A 0.13 um CMOS technology was used for simulation purposes. The energy consumption and the search delay of the proposed design are 9.5%, and 30.4% of that of the conventional NAND architecture respectively with a 3.4% higher number of transistors.

Abstract (translated by Google)
URL

https://arxiv.org/abs/1302.4463

PDF

https://arxiv.org/pdf/1302.4463


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