Cloud-Based Augmentation for Mobile Devices: Motivation, Taxonomies, and Open Challenges
Saeid Abolfazli, Zohreh Sanaei, Ejaz Ahmed, Abdullah Gani, Rajkumar, Buyya

TL;DR
This paper surveys cloud-based mobile augmentation, analyzing its types, benefits, challenges, and decision factors, to guide future research in enhancing mobile computing with cloud resources.
Contribution
It provides a comprehensive taxonomy of CMA approaches, analyzes their impacts, and discusses open challenges and future directions in cloud-based mobile augmentation.
Findings
Classified CMA approaches into four groups: distant fixed, proximate fixed, proximate mobile, hybrid.
Identified key decision factors affecting CMA adoption and performance.
Highlighted open challenges and opportunities for future research in CMA.
Abstract
Recently, Cloud-based Mobile Augmentation (CMA) approaches have gained remarkable ground from academia and industry. CMA is the state-of-the-art mobile augmentation model that employs resource-rich clouds to increase, enhance, and optimize computing capabilities of mobile devices aiming at execution of resource-intensive mobile applications. Augmented mobile devices envision to perform extensive computations and to store big data beyond their intrinsic capabilities with least footprint and vulnerability. Researchers utilize varied cloud-based computing resources (e.g., distant clouds and nearby mobile nodes) to meet various computing requirements of mobile users. However, employing cloud-based computing resources is not a straightforward panacea. Comprehending critical factors that impact on augmentation process and optimum selection of cloud-based resource types are some challenges…
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