Abstract

Fog computing is becoming a vital component for the Internet of things (IoT) applications acting as its computational engine. Mission‐critical IoT applications are highly sensitive to latency, which depends on the location of the cloud server. Fog nodes of varying level response rates are available to the cloud service provider (CSP) and it is faced with a challenge of forwarding the sequentially received IoT data to one of the fog nodes for processing. Since the arrival and nature of requests is random, it is important to optimally classify the requests and allocate available virtual machine instances (VMIs) at the fog nodes to provide a high quality‐of‐experience (QoE) to the users and consequently generate higher revenues for the CSP. In this chapter, we use a pricing policy based on the QoE of the applications as a result of the allocation and obtain an optimal dynamic allocation rule based on the statistical information of the computational requests. The developed solution is statistically optimal, dynamic, and implementable in real‐time as opposed to other static matching schemes in the literature. The performance of the proposed framework has been evaluated using simulations and the results show significant improvement as compared with benchmark schemes.

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