Abstract

Cloud computing provides a platform for services and resources over the internet for users. The large pool of data resources and services has enabled the emergence of several novel applications such as smart grids, smart environments, and virtual reality. However, the state-of-the-art of cloud computing faces a delay constraint, which becomes a major barrier for reliable cloud services. This constraint is mostly highlighted in the case of smart cities (SC) and the Internet of Things (IoT). Therefore, the recent cloud computing paradigm has poor performance and cannot meet the low delay, navigation, and mobility support requirements.Machine-to-machine (M2M) connectivity has drawn considerable interest from both academia and industry with a growing number of machine-type communication devices (MTCDs). The data links with M2M communications are usually small but high bandwidth, unlike conventional networking networks, demanding performance management of both energy consumption and computing. The main challenges faced in mobile edge computing are task offloading, congestion control, Resource allocation, security and privacy issue, mobility and standardization .Our work mainly focus on offloading based resource allocation and security issues by analyzing the network parameters like reduction of latency and improvisation of bandwidth involved in cloud environment. The cloudsim simulation tool has been utilized to implement the offload balancing mechanism to decrease the energy consumption and optimize the computing resource allocation as well as improve computing capability.

Highlights

  • The use of mobile devices such as smart phones, tablets and notebooks is growing day by day, and the per capita number of connected mobile devices is expected to exceed 1.5 by 2020

  • The development from desktop to mobile device paved way for the development of various third party mobile applications in order to satisfy the ever growing demand of the mobile application users. These growths lead to millions of mobile application with specific requirements that are hosted in different platforms such as App store (Apple 2016), Google’s Play (Google 2016) and Microsoft’s Windows Phone Store (Azure 2016)

  • Such trade-offs contribute to the development of numerous types of mobile devices and apps to meet the specifications of the end consumer

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Summary

Introduction

The use of mobile devices such as smart phones, tablets and notebooks is growing day by day, and the per capita number of connected mobile devices is expected to exceed 1.5 by 2020 This motivates research into the importance of offloading mobile cloud. The smaller the unit, the less efficient it is in terms of space, memory and computing, let us take the example of device portability (which is indicated by physical form and size) and Power (which is indicated by resources available). Such trade-offs contribute to the development of numerous types of mobile devices and apps to meet the specifications of the end consumer. There would be changes in QoE if we can decrease the size of the data to be transmitted

Mobile Cloud Offloading
RELATED WORKS
CLOUDLETS IN OFFLOADING
STAGES FOR OFFLOADING MECHANISM
IMPLEMENTATION AND RESULTS
CONCLUSION
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