A performance-centric ML-based multi-application mapping technique for regular Network-on-Chip

Jitesh Choudhary , Chitrapu Sai Sudarsan , Soumya J.
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引用次数: 3

Abstract

This research article discusses the challenges faced by the Network-on-Chip (NoC) architecture due to increased integration density and proposes a novel fault-tolerant multi-application mapping approach called ”FANC.” The approach is based on Machine Learning (ML) and can provide solutions for unseen graphs and topologies without prior training. The proposed technique uses an ML-based model to extract relevant information from the search data and incorporate it into the search process. This results in a more robust model with a higher convergence rate and solution quality. The approach is evaluated using a variety of simulation parameters, such as communication cost, network latency, throughput, and power usage. Static simulations are performed in a Python programming environment, while dynamic simulations are performed with a SystemC-based cycle-accurate NoC simulator and the Orion2.0 Power tool. The results show that FANC reduces communication costs by 266%. It also improves network latency by 9%, throughput by 1%, and power consumption by 7%. The approach also simplifies and minimizes the search area in the design exploration process and can be used as an auxiliary component for other optimization algorithms.

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一种基于性能中心ML的常规片上网络多应用映射技术
本文讨论了片上网络(NoC)架构由于集成密度的增加而面临的挑战,并提出了一种新的容错多应用映射方法“FANC”该方法基于机器学习(ML),可以在没有事先训练的情况下为看不见的图和拓扑提供解决方案。所提出的技术使用基于ML的模型从搜索数据中提取相关信息,并将其纳入搜索过程。这导致了具有更高收敛速度和求解质量的更稳健的模型。该方法使用各种模拟参数进行评估,如通信成本、网络延迟、吞吐量和功耗。静态模拟在Python编程环境中执行,而动态模拟则使用基于SystemC的循环精确NoC模拟器和Orion2.0 Power工具执行。结果表明,FANC降低了266%的通信成本。它还将网络延迟提高了9%,吞吐量提高了1%,功耗提高了7%。该方法还简化并最小化了设计探索过程中的搜索区域,并且可以用作其他优化算法的辅助组件。
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