Title
Utility-based Allocation of Industrial IoT Applications in Mobile Edge Clouds
Abstract
Mobile Edge Clouds (MECs) create new opportunities and challenges in terms of scheduling and running applications that have a wide range of latency requirements, such as intelligent transportation systems, process automation, and smart grids. We propose a two-tier scheduler for allocating runtime resources to Industrial Internet of Things (IIoT) applications in MECs. The scheduler at the higher level runs periodically - monitors system state and the performance of applications - and decides whether to admit new applications and migrate existing applications. In contrast, the lower-level scheduler decides which application will get the runtime resource next. We use performance based metrics that tells the extent to which the runtimes are meeting the Service Level Objectives (SLOs) of the hosted applications. The Application Happiness metric is based on a single application's performance and SLOs. The Runtime Happiness metric is based on the Application Happiness of the applications the runtime is hosting. These metrics may be used for decision-making by the scheduler, rather than runtime utilization, for example. We evaluate four scheduling policies for the high-level scheduler and five for the low-level scheduler. The objective for the schedulers is to minimize cost while meeting the SLO of each application. The policies are evaluated with respect to the number of runtimes, the impact on the performance of applications and utilization of the runtimes. The results of our evaluation show that the high-level policy based on Runtime Happiness combined with the low-level policy based on Application Happiness outperforms other policies for the schedulers, including the bin packing and random strategies. In particular, our combined policy requires up to 30% fewer runtimes than the simple bin packing strategy and increases the runtime utilization up to 40% for the Edge Data Center (DC) in the scenarios we evaluated.
Year
DOI
Venue
2018
10.1109/PCCC.2018.8711075
2018 IEEE 37th International Performance Computing and Communications Conference (IPCCC)
Keywords
Field
DocType
performance based metrics,runtime utilization,scheduling policies,utility-based allocation,service level objectives,industrial IoT applications,industrial Internet of Things,mobile edge clouds,runtime resource allocation,application happiness metric,runtime happiness metric
Computer science,Scheduling (computing),Latency (engineering),Internet of Things,Computer network,Intelligent transportation system
Conference
ISSN
ISBN
Citations 
1097-2641
978-1-5386-6809-2
0
PageRank 
References 
Authors
0.34
9
4
Name
Order
Citations
PageRank
Amardeep Mehta1353.50
Ewnetu Bayuh Lakew2818.83
Johan Tordsson3127666.49
Erik Elmroth41675149.84