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REDUCING CONTROL LATENCY IN DISTRIBUTED SHARED-MEMORY MULTIPROCESSOR SYSTEMS USING FUZZY LOGIC PREDICTION

机译:基于模糊逻辑预测的分布式共享存储器多处理器系统控制时延降低

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摘要

Communication latency is a major limiting factor for scalability in distributed shared-memory multiprocessor systems. It can be generally reduced by predicting the communication traffic in a system connected through a reconfigurable interconnection network. The State Sequence Routing (SSR) control-based algorithm uses a set of predicted paths to do an anticipatory reconfiguration for the interconnection network (IN) in such a way as to include the set of predicted paths in the current state sequence. By reducing the control latency and thus the overall execution time of a parallel application, we can increase the network size and therefore improve the scalability. In this article we use a fuzzy inference system (FIS) to perform online prediction of the paths between processors and memory units. The fuzzy system uses as input the memory access patterns across a set of time-windows to predict the communication paths within the next time window. Hence, the prediction is based on the locality inherent in the memory access patterns for all processors across the network. To investigate the effectiveness of our approach, we perform several simulation experiments using a program-driven simulator. Based on the results of experiments, our algorithm reduces the communication latency and thus the overall execution time according to the locality inherent in the communication traffic across the network using as little resources as possible in terms of the length of the state sequence router and the size of the rule base.
机译:通信延迟是分布式共享内存多处理器系统中可伸缩性的主要限制因素。通常可以通过预测通过可重新配置的互连网络连接的系统中的通信流量来减少通信量。基于状态序列路由(SSR)控制的算法使用一组预测路径对互连网络(IN)进行预期的重新配置,以使该组预测路径包括在当前状态序列中。通过减少控制延迟,从而减少并行应用程序的总体执行时间,我们可以增加网络大小,从而提高可伸缩性。在本文中,我们使用模糊推理系统(FIS)对处理器和内存单元之间的路径进行在线预测。模糊系统使用一组时间窗口内的存储器访问模式作为输入,以预测下一个时间窗口内的通信路径。因此,该预测基于整个网络上所有处理器的内存访问模式中固有的局部性。为了研究我们方法的有效性,我们使用程序驱动的模拟器执行了多个模拟实验。根据实验结果,我们的算法根据状态序列路由器的长度和大小,使用尽可能少的资源,根据网络中通信流量所固有的局部性,减少了通信延迟,从而缩短了总体执行时间。规则库。

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