ADS: Adaptive and Dynamic Scaling Mechanism for Multimedia Conferencing Services in the Cloud
November 06, 2017 Β· Declared Dead Β· π Consumer Communications and Networking Conference
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Authors
Abbas Soltanian, Diala Naboulsi, Mohammad A. Salahuddin, Roch Glitho, Halima Elbiaze, Constant Wette
arXiv ID
1711.02150
Category
cs.MM: Multimedia
Citations
5
Venue
Consumer Communications and Networking Conference
Last Checked
3 months ago
Abstract
Multimedia conferencing is used extensively in a wide range of applications, such as online games and distance learning. These applications need to efficiently scale the conference size as the number of participants fluctuates. Cloud is a technology that addresses the scalability issue. However, the proposed cloud-based solutions have several shortcomings in considering the future demand of applications while meeting both Quality of Service (QoS) requirements and efficiency in resource usage. In this paper, we propose an Adaptive and Dynamic Scaling mechanism (ADS) for multimedia conferencing services in the cloud. This mechanism enables scalable and elastic resource allocation with respect to the number of participants. ADS produces a cost-efficient scaling schedule while considering the QoS requirements and the future demand of the conferencing service. We formulate the problem using Integer Linear Programming (ILP) and design a heuristic for it. Simulation results show that ADS mechanism elastically scales conferencing services. Moreover, the ADS heuristic is shown to outperform a greedy algorithm from a resource-efficiency perspective.
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