Learning-Based On-Chip Parallel Interconnect Delay Estimation

A. Najafi, Ardalan Najafi, Yarib Nevarez, A. García-Ortiz
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引用次数: 0

Abstract

Interconnect is a crucial challenge to achieve overall chip performance in current and future technology nodes. An accurate, universal, and portable delay model is essential for interconnects’ analysis and coding development. Machine learning algorithms are used in many applications and provide solutions for problems that are difficult to achieve using conventional approaches. Using machine learning techniques for delay estimation can be helpful since they can capture the complex behavior of the propagation of the signals. This paper proposes a neural-network learning-based delay model for parallel multi-segment interconnects using a conventional multi-layer perceptron network. For the network to learn the complex signals’ misalignment effect, we propose a framework to transform initial delay data into a learnable set of numbers. This transformation process is critical to have an accurate delay estimation. The proposed model has been validated using commercial 65 nm technology. The results show significant improvement in accuracy compared with previous models.
基于学习的片上并行互连延迟估计
互连是当前和未来技术节点实现整体芯片性能的关键挑战。一个准确的、通用的、可移植的延迟模型对于互连分析和编码开发至关重要。机器学习算法用于许多应用程序,并为使用传统方法难以实现的问题提供解决方案。使用机器学习技术进行延迟估计是有帮助的,因为它们可以捕获信号传播的复杂行为。本文提出了一种基于神经网络学习的并行多段互联延迟模型,该模型采用传统的多层感知器网络。为了使网络能够学习复杂信号的偏差效应,我们提出了一个将初始延迟数据转换为可学习的数字集的框架。此转换过程对于获得准确的延迟估计至关重要。该模型已使用商用65纳米技术进行了验证。结果表明,与以前的模型相比,精度有了显著提高。
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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