Time-SWAD: A Dataflow Engine for Time-Based Single Window Stream Aggregation

Prajith Ramakrishnan Geethakumari, Vincenzo Gulisano, P. Trancoso, I. Sourdis
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引用次数: 3

Abstract

High throughput and low latency streaming aggregation is essential for many applications that analyze massive volumes of data in real-time. Incoming data need to be stored in a single sliding window before processing, in cases where incremental aggregations are wasteful or not possible at all; this puts tremendous pressure to the memory bandwidth. In addition, particular problems call for time-based windows, defined by a time-interval, where the amount of data per window may vary and as a consequence are more challenging to handle. This paper describes Time-SWAD, the first accelerator for time-based single-window stream aggregation. Time-SWAD is a dataflow engine (DFE), implemented on a Maxeler machine, offering high processing throughput, up to 150 Mtuples/sec, similar to related GPU systems, which however do not support both time-based and single windows. It uses a direct feed of incoming data from the network and has direct access to off-chip DRAM, enabling ultra-low processing latency of 1-10 µsec, at least 4 orders of magnitude lower than software-based solutions.
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Time-SWAD:基于时间的单窗口流聚合的数据流引擎
高吞吐量和低延迟流聚合对于实时分析大量数据的许多应用程序至关重要。在处理之前,传入的数据需要存储在单个滑动窗口中,在增量聚合浪费或根本不可能的情况下;这给内存带宽带来了巨大的压力。此外,某些问题需要使用基于时间的窗口(由时间间隔定义),其中每个窗口的数据量可能会变化,因此处理起来更具挑战性。本文介绍了Time-SWAD,第一个基于时间的单窗口流聚合加速器。Time-SWAD是一个数据流引擎(DFE),在Maxeler机器上实现,提供高处理吞吐量,高达150组/秒,类似于相关的GPU系统,但不支持基于时间和单窗口。它使用来自网络的传入数据的直接馈送,并可直接访问片外DRAM,实现1-10µs的超低处理延迟,比基于软件的解决方案至少低4个数量级。
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