Litcius/Paper detail

Edge‐adaptable serverless acceleration for machine learning Internet of Things applications

Michael Zhang, Chandra Krintz, Rich Wolski

2020Software Practice and Experience23 citationsDOI

Abstract

Abstract Serverless computing is an emerging event‐driven programming model that accelerates the development and deployment of scalable web services on cloud computing systems. Though widely integrated with the public cloud, serverless computing use is nascent for edge‐based, Internet of Things (IoT) deployments. In this work, we present STOIC (serverless teleoperable hybrid cloud), an IoT application deployment and offloading system that extends the serverless model in three ways. First, STOIC adopts a dynamic feedback control mechanism to precisely predict latency and dispatch workloads uniformly across edge and cloud systems using a distributed serverless framework. Second, STOIC leverages hardware acceleration (e.g., GPU resources) for serverless function execution when available from the underlying cloud system. Third, STOIC can be configured in multiple ways to overcome deployment variability associated with public cloud use. We overview the design and implementation of STOIC and empirically evaluate it using real‐world machine learning applications and multitier IoT deployments (edge and cloud). Specifically, we show that STOIC can be used for training image processing workloads (for object recognition)—once thought too resource‐intensive for edge deployments. We find that STOIC reduces overall execution time (response latency) and achieves placement accuracy that ranges from 92% to 97%.

Topics & Concepts

Cloud computingComputer scienceSoftware deploymentDistributed computingScalabilityLatency (audio)Internet of ThingsEnhanced Data Rates for GSM EvolutionEdge computingOperating systemArtificial intelligenceEmbedded systemTelecommunicationsIoT and Edge/Fog ComputingCloud Computing and Resource ManagementBlockchain Technology Applications and Security