Pluto: High-Performance IoT-Aware Stream Processing

Taegeon Um, Gyewon Lee, Byung-Gon Chun
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引用次数: 1

Abstract

Nowadays, large numbers of small IoT stream queries are created from diverse IoT applications and executed on cloud backend servers. However, existing distributed stream processing systems such as Storm and Flink do not efficiently handle the large numbers of IoT stream queries because of their tightly-coupled query/code submission layer and inefficient query execution layer. In this paper, we propose Pluto, a new IoT-aware stream processing system. As a first step for IoT stream processing, this paper focuses on optimizing the execution of many IoT stream queries on a node. Pluto optimizes the end-to-end query processing with a three-phase execution, harnessing IoT-query characteristics. First, Pluto minimizes bottlenecks in the IoT query submission by decoupling the code registration from the query submission process with new APIs, which eliminates duplicate code registration and enables code sharing across queries. Second, in the execution phase, Pluto shares system resources as much as possible and minimizes resource bottlenecks in a machine by exploiting commonalities among IoT stream queries and information exposed in the API. Our evaluations show that Pluto improves the throughput by an order of magnitude compared to other stream processing systems on a 24-core machine, keeping P99 latency less than one second.
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Pluto:高性能物联网感知流处理
如今,大量的小型物联网流查询是从不同的物联网应用程序创建的,并在云后端服务器上执行。然而,现有的分布式流处理系统,如Storm和Flink,由于其紧密耦合的查询/代码提交层和低效的查询执行层,并不能有效地处理大量的物联网流查询。本文提出了一种新的物联网感知流处理系统Pluto。作为物联网流处理的第一步,本文着重于优化节点上许多物联网流查询的执行。Pluto利用物联网查询特性,通过三阶段执行优化端到端查询处理。首先,Pluto通过使用新的api将代码注册与查询提交过程解耦,从而最大限度地减少了物联网查询提交中的瓶颈,从而消除了重复的代码注册并实现了查询之间的代码共享。其次,在执行阶段,Pluto尽可能地共享系统资源,并通过利用IoT流查询和API中暴露的信息之间的共性来最小化机器中的资源瓶颈。我们的评估表明,与24核机器上的其他流处理系统相比,Pluto将吞吐量提高了一个数量级,使P99延迟低于一秒。
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