Symbolic-functional representation inference for gate-level power estimation

IF 1.9 3区 工程技术 Q3 ENGINEERING, ELECTRICAL & ELECTRONIC
Zejia Lyu, Jizhong Shen
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引用次数: 0

Abstract

We propose SyfriPow, a method for estimating the vectorless average power consumption of gate-level circuits using sparse symbolic matrix inference. SyfriPow employs a probability-based approach, utilizing signal and transition probability to assess power consumption across various nodes. We present a symbolic representation probabilistic model for reasoning signal and transition probability through polynomial-based symbolic inference, incorporating a polynomial approximation strategy for spatial correlations and functional mapping for quick secondary computation. The model is sparsified with GPU accelerated polynomial sparse arithmetic engine, achieving sparse symbolic inference and sparse functional mapping which are implemented on Pytorch. Experiments demonstrate that SyfriPow achieves node-level probabilistic accuracy and significantly improves power accuracy compared to industrial software and academic algorithms, with an average power error of less than 4%. SFM efficiently analyzes large-scale circuits, processing up to 250k nodes in 100 s. SyfriPow can also function as an independent logic prediction engine, surpassing state-of-the-art algorithms in accuracy and speed.
用于门级功率估算的符号-函数表示推理
我们提出的 SyfriPow 是一种利用稀疏符号矩阵推理估算门级电路无矢量平均功耗的方法。SyfriPow 采用基于概率的方法,利用信号和转换概率来评估不同节点的功耗。我们提出了一种符号表示概率模型,通过基于多项式的符号推理来推理信号和转换概率,并为空间相关性和快速二次计算的函数映射采用了多项式近似策略。该模型通过 GPU 加速的多项式稀疏算术引擎进行稀疏化,实现了在 Pytorch 上实现的稀疏符号推理和稀疏函数映射。实验证明,与工业软件和学术算法相比,SyfriPow 实现了节点级概率精度,并显著提高了功率精度,平均功率误差小于 4%。SyfriPow 还可作为独立的逻辑预测引擎,在精度和速度上超越了最先进的算法。
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来源期刊
Microelectronics Journal
Microelectronics Journal 工程技术-工程:电子与电气
CiteScore
4.00
自引率
27.30%
发文量
222
审稿时长
43 days
期刊介绍: Published since 1969, the Microelectronics Journal is an international forum for the dissemination of research and applications of microelectronic systems, circuits, and emerging technologies. Papers published in the Microelectronics Journal have undergone peer review to ensure originality, relevance, and timeliness. The journal thus provides a worldwide, regular, and comprehensive update on microelectronic circuits and systems. The Microelectronics Journal invites papers describing significant research and applications in all of the areas listed below. Comprehensive review/survey papers covering recent developments will also be considered. The Microelectronics Journal covers circuits and systems. This topic includes but is not limited to: Analog, digital, mixed, and RF circuits and related design methodologies; Logic, architectural, and system level synthesis; Testing, design for testability, built-in self-test; Area, power, and thermal analysis and design; Mixed-domain simulation and design; Embedded systems; Non-von Neumann computing and related technologies and circuits; Design and test of high complexity systems integration; SoC, NoC, SIP, and NIP design and test; 3-D integration design and analysis; Emerging device technologies and circuits, such as FinFETs, SETs, spintronics, SFQ, MTJ, etc. Application aspects such as signal and image processing including circuits for cryptography, sensors, and actuators including sensor networks, reliability and quality issues, and economic models are also welcome.
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