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COSIME

Authors :
Liu, Che-Kai
Chen, Haobang
Imani, Mohsen
Ni, Kai
Kazemi, Arman
Laguna, Ann Franchesca
Niemier, Michael
Hu, Xiaobo Sharon
Zhao, Liang
Zhuo, Cheng
Yin, Xunzhao
Source :
Proceedings of the 41st IEEE/ACM International Conference on Computer-Aided Design.
Publication Year :
2022
Publisher :
ACM, 2022.

Abstract

In a number of machine learning models, an input query is searched across the trained class vectors to find the closest feature class vector in cosine similarity metric. However, performing the cosine similarities between the vectors in Von-Neumann machines involves a large number of multiplications, Euclidean normalizations and division operations, thus incurring heavy hardware energy and latency overheads. Moreover, due to the memory wall problem that presents in the conventional architecture, frequent cosine similarity-based searches (CSSs) over the class vectors requires a lot of data movements, limiting the throughput and efficiency of the system. To overcome the aforementioned challenges, this paper introduces COSIME, an general in-memory associative memory (AM) engine based on the ferroelectric FET (FeFET) device for efficient CSS. By leveraging the one-transistor AND gate function of FeFET devices, current-based translinear analog circuit and winner-take-all (WTA) circuitry, COSIME can realize parallel in-memory CSS across all the entries in a memory block, and output the closest word to the input query in cosine similarity metric. Evaluation results at the array level suggest that the proposed COSIME design achieves 333X and 90.5X latency and energy improvements, respectively, and realizes better classification accuracy when compared with an AM design implementing approximated CSS. The proposed in-memory computing fabric is evaluated for an HDC problem, showcasing that COSIME can achieve on average 47.1X and 98.5X speedup and energy efficiency improvements compared with an GPU implementation.<br />Comment: Accepted by the 41st International Conference on Computer Aided Design (ICCAD), San Diego, USA

Details

Database :
OpenAIRE
Journal :
Proceedings of the 41st IEEE/ACM International Conference on Computer-Aided Design
Accession number :
edsair.doi.dedup.....2183188b2ae9ee8c7fb822950927abd7