Developing User Perceived Value Based Pricing Models for Cloud Markets

With the rapid deployment of cloud computing infrastructures, understanding the economics of cloud computing has become a pressing issue for cloud service providers. However, existing pricing models rarely consider the dynamic interactions between user requests and the cloud service provider. Thus,...

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Veröffentlicht in:IEEE transactions on parallel and distributed systems 2018-12, Vol.29 (12), p.2742-2756
Hauptverfasser: Cong, Peijin, Li, Liying, Zhou, Junlong, Cao, Kun, Wei, Tongquan, Chen, Mingsong, Hu, Shiyan
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container_end_page 2756
container_issue 12
container_start_page 2742
container_title IEEE transactions on parallel and distributed systems
container_volume 29
creator Cong, Peijin
Li, Liying
Zhou, Junlong
Cao, Kun
Wei, Tongquan
Chen, Mingsong
Hu, Shiyan
description With the rapid deployment of cloud computing infrastructures, understanding the economics of cloud computing has become a pressing issue for cloud service providers. However, existing pricing models rarely consider the dynamic interactions between user requests and the cloud service provider. Thus, the law of supply and demand in marketing is not fully explored in these pricing models. In this paper, we propose a dynamic pricing model based on the concept of user perceived value that accurately captures the real supply and demand relationship in the cloud service market. Subsequently, a profit maximization scheme is designed based on the dynamic pricing model that optimizes profit of the cloud service provider without violating service-level agreement. Finally, a dynamic closed loop control scheme is developed to adjust the cloud service price and multiserver configurations according to the dynamics of the cloud computing environment such as fluctuating electricity and rental fees. Extensive simulations using the data extracted from real-world applications validate the effectiveness of the proposed user perceived value-based pricing model and the dynamic profit maximization scheme. Our algorithm can achieve up to 31.32 percent profit improvement compared to a state-of-the-art approach.
doi_str_mv 10.1109/TPDS.2018.2843343
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subjects augmented Lagrange function
Biological system modeling
Cloud computing
Computational modeling
Computer simulation
Computing costs
dynamic pricing model
Electricity pricing
Maximization
Pricing
Pricing policies
Profit maximization
Random variables
State of the art
Supply & demand
Supply and demand
user perceived value
Variation
title Developing User Perceived Value Based Pricing Models for Cloud Markets
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