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UPM-NoC: Learning Based Framework to Predict Performance Parameters of Mesh Architecture in On-Chip Networks

机译:UPM-NOC:基于学习的框架,以预测片上网络网格架构的性能参数

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Conventional Bus-based On-Chips are replaced by Packet-switched Network-on-Chip (NoC) as a large number of cores are contained on a single chip. Cycle accurate NoC simulators are essential tools in the earlier stages of design. Simulators which are cycle accurate performs gradually as the architecture size of NoC increases. NoC architectures need to be validated against discrete synthetic traffic patterns. The overall performance of NoC architecture depends on performance parameters like network latency, packet latency, flit latency, and hop count. Hence we propose a Unified Performance Model (UPM) to deliver precise measurements of NoC performance parameters. This framework is modeled using distinct Machine Learning (ML) regression algorithms to predict performance parameters of NoCs considering different synthetic traffic patterns. The UPM framework can be used to analyze the performance parameters of Mesh NoC architecture. Results obtained were compared against the widely used cycle accurate Booksim simulator. Experiments were conducted by varying topology size from 2×2 to 50×50 with different virtual channels, traffic patterns, and injection rates. The framework showed an approximate prediction error of 5% to 6% and overall minimum speedup of 3000x to 3500 ×.
机译:传统的基于总线的芯片由分组交换网(NOC)取代,因为在单个芯片上包含大量核心。周期准确的NOC模拟器是较早阶段的设计工具。随着NOC的架构大小的增加,循环精确的模拟器逐渐执行。 NOC架构需要针对离散的合成流量模式进行验证。 NOC架构的整体性能取决于网络延迟,数据包延迟,闪烁延迟和跳数等的性能参数。因此,我们提出了一个统一的性能模型(UPM),以提供NOC性能参数的精确测量。该框架是使用独特的机器学习(ML)回归算法建模的,以预测考虑不同的合成流量模式的NOCS的性能参数。 UPM框架可用于分析网格NOC架构的性能参数。将获得的结果与广泛使用的周期精确的书籍模拟器进行比较。通过不同的虚拟通道,交通模式和注射率不同地通过2×2至50×50的拓扑大小进行实验。该框架显示近似预测误差为5%至6%,总体最小加速度为3000x至3500×。

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