Resource- and Message Size-Aware Scheduling of Stream Processing at the Edge with application to Realtime Microscopy

12/19/2019
by   Ben Blamey, et al.
0

Whilst computational resources at the cloud edge can be leveraged to improve latency and reduce the costs of cloud services for a wide variety mobile, web, and IoT applications; such resources are naturally constrained. For distributed stream processing applications, there are clear advantages to offloading some processing work to the cloud edge. Many state of the art stream processing applications such as Flink and Spark Streaming, being designed to run exclusively in the cloud, are a poor fit for such hybrid edge/cloud deployment settings, not least because their schedulers take limited consideration of the heterogeneous hardware in such deployments. In particular, their schedulers broadly assume a homogeneous network topology (aside from data locality consideration in, e.g., HDFS/Spark). Specialized stream processing frameworks intended for such hybrid deployment scenarios, especially IoT applications, allow developers to manually allocate specific operators in the pipeline to nodes at the cloud edge. In this paper, we investigate scheduling stream processing in hybrid cloud/edge deployment settings with sensitivity to CPU costs and message size, with the aim of maximizing throughput with respect to limited edge resources. We demonstrate real-time edge processing of a stream of electron microscopy images, and measure a consistent reduction in end-to-end latency under our approach versus a resource-agnostic baseline scheduler, under benchmarking.

READ FULL TEXT

page 1

page 5

page 6

research
07/02/2020

S2CE: A Hybrid Cloud and Edge Orchestrator for Mining Exascale Distributed Streams

The explosive increase in volume, velocity, variety, and veracity of dat...
research
07/10/2022

Efficient RDF Streaming for the Edge-Cloud Continuum

With the ongoing, gradual shift of large-scale distributed systems towar...
research
05/03/2023

GALOIS: A Hybrid and Platform-Agnostic Stream Processing Architecture

With the increasing prevalence of IoT environments, the demand for proce...
research
04/25/2022

Streaming vs. Functions: A Cost Perspective on Cloud Event Processing

In cloud event processing, data generated at the edge is processed in re...
research
05/17/2021

A Two-Sided Matching Model for Data Stream Processing in the Cloud-Fog Continuum

Latency-sensitive and bandwidth-intensive stream processing applications...
research
04/10/2019

R-Storm: Resource-Aware Scheduling in Storm

The era of big data has led to the emergence of new systems for real-tim...
research
05/11/2020

Performance Modeling and Vertical Autoscaling of Stream Joins

Streaming analysis is widely used in cloud as well as edge infrastructur...

Please sign up or login with your details

Forgot password? Click here to reset