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PRIMAL: Power Inference using Machine Learning

机译:主要:使用机器学习进行功率推理

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This paper introduces PRIMAL, a novel learning-based frame-work that enables fast and accurate power estimation for ASIC designs. PRIMAL trains machine learning (ML) models with design verification testbenches for characterizing the power of reusable circuit building blocks. The trained models can then be used to generate detailed power profiles of the same blocks under different workloads. We evaluate the performance of several established ML models on this task, including ridge regression, gradient tree boosting, multi-layer perceptron, and convolutional neural network (CNN). For average power estimation, ML-based techniques can achieve an average error of less than 1% across a diverse set of realistic benchmarks, outperforming a commercial RTL power estimation tool in both accuracy and speed (15x faster). For cycle-by-cycle power estimation, PRIMAL is on average 50x faster than a commercial gate-level power analysis tool, with an average error less than 5%. In particular, our CNN-based method achieves a 35x speed-up and an error of 5.2% for cycle-by-cycle power estimation of a RISC-V processor core. Furthermore, our case study on a NoC router shows that PRIMAL can achieve a small estimation error of 4.5% using cycle-approximate traces from SystemC simulation.CCS Concepts• Computing methodologies ⟶ Machine learning; Modeling methodologies;. Hardware ⟶ Power estimation and optimization;
机译:本文介绍PRIMAL,这是一种新颖的基于学习的框架,可为ASIC设计提供快速,准确的功耗估算。 PRIMAL使用设计验证测试平台训练机器学习(ML)模型,以表征可重复使用的电路构建块的功能。然后,可以使用训练有素的模型来生成不同工作负载下相同模块的详细功率曲线。我们在此任务上评估了几种已建立的ML模型的性能,包括岭回归,梯度树增强,多层感知器和卷积神经网络(CNN)。对于平均功率估计,基于ML的技术在各种实际基准中可以实现小于1%的平均误差,在准确性和速度(速度提高15倍)方面均优于商用RTL功率估计工具。对于逐周期功率估算,PRIMAL平均比商用门级功率分析工具快50倍,平均误差小于5%。特别是,我们的基于CNN的方法可实现RISC-V处理器内核逐周期功耗估算的35倍加速和5.2%的误差。此外,我们在NoC路由器上的案例研究表明,使用SystemC仿真中的近似循环轨迹,PRIMAL可以实现4.5%的较小估计误差。CCS概念•计算方法建模方法;硬件⟶功耗估算和优化;

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