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MAPLE: A Scalable Architecture for Maintaining Packet Latency Measurements

机译:枫树:可扩展的架构,用于维护数据包延迟测量

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Latency has become an important metric for network moni-toring since the emergence of new latency-sensitive applications (e.g., algorithmic trading and high-performance computing). To satisfy the need, researchers have proposed new architectures such as LDA and RLI that can provide fine-grained latency measurements. However, these architectures are fundamentally ossified in their design as they are designed to provide only a specific pre-configured aggregate measurement-either average latency across all packets (LDA) or per-flow latency measurements (RLI). Network operators, however, need latency measurements at both finer (e.g., packet) as well as flexible (e.g., flow subsets) levels of granularity. To bridge this gap, we propose an architecture called MAPLE that essentially stores packet-level latencies in routers and allows network operators to query the latency of arbitrary traffic sub-populations. MAPLE is built using scalable data structures with small storage needs (uses only 12.8 bits/packet), and uses a novel mechanism to reduce the query bandwidth significantly (by a factor of 17 compared to the naive method of sending packet queries individually).
机译:由于新的延迟敏感应用(例如,算法交易和高性能计算)出现,因此延迟已成为网络单次折断的重要指标。为了满足需求,研究人员提出了新的架构,例如LDA和RLI,可以提供细粒度的延迟测量。然而,这些架构在它们的设计中基本上ossifiged,因为它们旨在仅提供特定的预配置聚合测量 - 跨所有数据包(LDA)或每流程延迟测量的平均延迟(RLI)。然而,网络运营商需要在更精细的(例如,包)以及粒度的柔性(例如,流子集)水平的延迟测量。为了弥合这一差距,我们提出了一种称为MAPLE的架构,基本上存储路由器中的数据包级延迟,并允许网络运营商查询任意流量子群的延迟。使用具有小存储需求的可扩展数据结构(仅使用12.8位/数据包)构建枫树,并使用新机制来显着降低查询带宽(与单独发送数据包查询的天真查询相比,通过17倍)。

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