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  4. FastMem: A Fast Architecture-aware Memory Layout Design
 
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FastMem: A Fast Architecture-aware Memory Layout Design

Source
Proceedings International Symposium on Quality Electronic Design Isqed
ISSN
19483287
Date Issued
2022-01-01
Author(s)
Parmar, Alok
Prasad, Kailash
Rao, Nanditha
Mekie, Joycee  
DOI
10.1109/ISQED54688.2022.9806258
Volume
2022-April
Abstract
Memory design can be an extremely challenging and time-consuming task, which includes several exploratory studies to find the most optimal size of the array. Thus, to speed up the memory design, it is imperative that low-level circuit details should be masked when doing architectural analysis. In this paper, we propose FastMem - an approach that allows designers to obtain memories with the highest area-efficiency (AE) and least energy-delay product (EDP) using an architectural tool (CACTI) which can then be fed to a memory compiler to obtain the final layout. We use FastMem to obtain optimal memory configurations for 65nm, 32nm, and 7nm technology nodes. As part of the experiments, we observe that, as technology scales from 65nm to 32nm to 7nm, the contribution of peripherals and interconnects to the access time increases from 32% to 70%. Thus, we need to optimize the peripherals and interconnects at lower technology nodes rather than the actual SRAM cells. FastMem allows us to study the near-threshold operation and 8T SRAM configuration as well. We introduce a metric called the Figure of Metric (FOM= AE/EDP) and show that increasing the number of banks for large-sized memory arrays improves the FOM by nearly 33%. Lastly, FastMem shows that a square (or near-square) sub-array results in 75% higher FOM against skewed sub-arrays for bulk CMOS technology, whereas a skewed sub-array results in optimum performance for the FinFET technology node.
Unpaywall
URI
https://d8.irins.org/handle/IITG2025/26290
Subjects
area efficiency | CACTI | energy-delay product | memory design | OpenRAM
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