Social Network Analysis Inspired Content Placement with QoS in Cloud-based Content Delivery Networks
Mohammad A. Salahuddin, Halima Elbiaze, Wessam Ajib, Roch Glitho

TL;DR
This paper introduces a novel content placement model and heuristic for cloud-based CDNs that optimally allocate resources to minimize costs, ensure SLA compliance, and reduce QoS violations, outperforming existing methods.
Contribution
The paper presents a new NP-hard content placement model and a weighted social network analysis heuristic tailored for CCDNs, addressing cost, SLA, and QoS challenges.
Findings
W-SNA heuristic outperforms GS and SNA in cost minimization
W-SNA guarantees SLA and reduces QoS violations
First model and heuristic of its kind for CCDN content placement
Abstract
Content Placement (CP) problem in Cloud-based Content Delivery Networks (CCDNs) leverage resource elasticity to build cost effective CDNs that guarantee QoS. In this paper, we present our novel CP model, which optimally places content on surrogates in the cloud, to achieve (a) minimum cost of leasing storage and bandwidth resources for data coming into and going out of the cloud zones and regions, (b) guarantee Service Level Agreement (SLA), and (c) minimize degree of QoS violations. The CP problem is NP-Hard, hence we design a unique push-based heuristic, called Weighted Social Network Analysis (W-SNA) for CCDN providers. W-SNA is based on Betweeness Centrality (BC) from SNA and prioritizes surrogates based on their relationship to the other vertices in the network graph. To achieve our unique objectives, we further prioritize surrogates based on weights derived from storage cost and…
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Taxonomy
TopicsCaching and Content Delivery · Software-Defined Networks and 5G · Recommender Systems and Techniques
