RACE: A Reinforcement Learning Framework for Improved Adaptive Control of NoC Channel Buffers

Kamil Khan, S. Pasricha, R. Kim
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引用次数: 2

Abstract

Network-on-chip (NoC) architectures rely on buffers to store flits to cope with contention for router resources during packet switching. Recently, reversible multi-function channel (RMC) buffers have been proposed to simultaneously reduce power and enable adaptive NoC buffering between adjacent routers. While adaptive buffering can improve NoC performance by maximizing buffer utilization, controlling the RMC buffer allocations requires a congestion-aware, scalable, and proactive policy. In this work, we present RACE, a novel reinforcement learning (RL) framework that utilizes better awareness of network congestion and a new reward metric ("falsefulls") to help guide the RL agent towards better RMC buffer control decisions. We show that RACE reduces NoC latency by up to 48.9%, and energy consumption by up to 47.1% against state-of-the-art NoC buffer control policies.
RACE:用于改进NoC信道缓冲自适应控制的强化学习框架
片上网络(NoC)体系结构依靠缓冲区来存储文件,以应对分组交换过程中对路由器资源的争夺。最近,人们提出了可逆多功能通道(RMC)缓冲区,以同时降低功耗并实现相邻路由器之间的自适应NoC缓冲。虽然自适应缓冲可以通过最大化缓冲区利用率来提高NoC性能,但控制RMC缓冲区分配需要一个感知拥塞、可扩展和主动的策略。在这项工作中,我们提出了RACE,这是一种新的强化学习(RL)框架,它利用更好的网络拥塞意识和新的奖励指标(“错误”)来帮助引导RL代理做出更好的RMC缓冲控制决策。我们展示了RACE将NoC延迟降低了48.9%,并将能耗降低了47.1%,与最先进的NoC缓冲控制策略相比。
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