Litcius/Paper detail

ECO: Edge-Cloud Optimization of 5G applications

Kunal Rao, Giuseppe Coviello, Wang-Pin Hsiung, Srimat Chakradhar

202124 citationsDOI

Abstract

Centralized cloud computing with 100+ milliseconds network latencies cannot meet the tens of milliseconds to sub-millisecond response times required for emerging 5G applications like autonomous driving, smart manufacturing, tactile internet, and augmented or virtual reality. We describe a new, dynamic runtime that enables such applications to make effective use of a 5G network, computing at the edge of this network, and resources in the centralized cloud, at all times. Our runtime continuously monitors the interaction among the microservices, estimates the data produced and exchanged among the microservices, and uses a novel graph min-cut algorithm to dynamically map the microservices to the edge or the cloud to satisfy application-specific response times. Our runtime also handles temporary network partitions, and maintains data consistency across the distributed fabric by using microservice proxies to reduce WAN bandwidth by an order of magnitude, all in an application-specific manner by leveraging knowledge about the application's functions, latency-critical pipelines and intermediate data. We illustrate the use of our runtime by successfully mapping two complex, representative real-world video analytics applications to the AWS/Verizon Wavelength edge-cloud architecture, and improving application response times by 2x when compared with a static edge-cloud implementation.

Topics & Concepts

MicroservicesComputer scienceCloud computingDistributed computingDifferentiatorEnhanced Data Rates for GSM EvolutionEdge computingMillisecondLatency (audio)Edge deviceBandwidth (computing)Computer networkOperating systemTelecommunicationsPhysicsAstronomyIoT and Edge/Fog ComputingSoftware System Performance and ReliabilitySoftware-Defined Networks and 5G
ECO: Edge-Cloud Optimization of 5G applications | Litcius