Synthesis and design of parameter extractors for low-power pre-computation-based content-addressable memory using gate-block selection algorithm

Jui-Yuan Hsieh, S. Ruan
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引用次数: 11

Abstract

Content addressable memory (CAM) is frequently used in applications, such as lookup tables, databases, associative computing, and networking, that require high-speed searches due to its ability to improve application performance by using parallel comparison to reduce search time. Although the use of parallel comparison results in fast search time, it also significantly increases power consumption. In this paper, we propose a gate- block selection algorithm, which can synthesize a proper parameter extractor of the pre-computation-based CAM (PB-CAM) to improve the efficiency for specific applications such as embedded systems. Through experimental results, we found that our approach effectively reduces the number of comparison operations for specific data types (ranging from 19.24% to 27.42%) compared with the 1's count approach. We used Synopsys Nanosim to estimate the power consumption in TSMC 0.35 um CMOS process. Compared to the 1's count PB-CAM, our proposed PB-CAM achieves 17.72% to 21.09% in power reduction for specific data types.
基于门块选择算法的低功耗预计算内容可寻址存储器参数提取器的合成与设计
内容可寻址内存(CAM)经常用于需要高速搜索的应用程序,例如查找表、数据库、关联计算和网络,因为它能够通过使用并行比较来减少搜索时间来提高应用程序性能。虽然使用并行比较可以缩短搜索时间,但也会显著增加功耗。本文提出了一种门块选择算法,该算法可以合成一个合适的基于预计算的CAM参数提取器(PB-CAM),以提高嵌入式系统等特定应用的效率。通过实验结果,我们发现与1's count方法相比,我们的方法有效地减少了特定数据类型的比较操作次数(范围从19.24%到27.42%)。我们使用Synopsys Nanosim来估算TSMC 0.35 um CMOS工艺的功耗。与1的计数PB-CAM相比,我们提出的PB-CAM在特定数据类型上实现了17.72%到21.09%的功耗降低。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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