Automatic offloading of mobile applications into the cloud by means of genetic programming
نویسندگان
چکیده
The limited battery life of modern mobile devices is one of the key problems limiting their use. Even if the offloading of computation onto cloud computing platforms can considerably extend battery duration, it is really hard not only to evaluate the cases where offloading guarantees real advantages on the basis of the requirements of the application in terms of data transfer, computing power needed, etc., but also to evaluate whether user requirements (i.e. the costs of using the cloud services, a determined QoS required, etc.) are satisfied. To this aim, this paper presents a framework for generating models to make automatic decisions on the offloading of mobile applications using a genetic programming (GP) approach. The GP system is designed using a taxonomy of the properties useful to the offloading process concerning the user, the network, the data and the application. The fitness function adopted permits different weights to ata mining be given to the four categories considered during the process of building the model. Experimental results, conducted on datasets representing different categories of mobile applications, permit the analysis of the behavior of our algorithm in different applicative contexts. Finally, a comparison with the state of the art of the classification algorithm establishes the goodness of the approach in modeling the offloading
منابع مشابه
Design and Evaluation of a Method for Partitioning and Offloading Web-based Applications in Mobile Systems with Bandwidth Constraints
Computation offloading is known to be among the effective solutions of running heavy applications on smart mobile devices. However, irregular changes of a mobile data rate have direct impacts on code partitioning when offloading is in progress. It is believed that once a rate-adaptive partitioning performed, the replication of such substantial processes due to bandwidth fluctuation can be avoid...
متن کاملA Computation Offloading Framework to Optimize Energy Utilisation in Mobile Cloud Computing Environment
ABSTRACT Newly emerged computing concept Mobile cloud computing, is a combination of mobile computing and cloud computing. Mobile Cloud Computing (MCC) enables mobile applications to get built, powered and hosted using cloud resources. As few years back mobile devices were merely used for making calls but nowadays enormous applications can be run on top of the mobile devices. Mobile systems, su...
متن کاملAdaptive Code Offloading and Resource-intensive Task Delegation for Mobile Cloud Applications
Mobile cloud computing is arising as a prominent domain that is seeking to bring the massive advantages of the cloud to the resource constrained smartphones, by following a delegation or offloading criteria. In a delegation model, a mobile device consumes services from multiple clouds by following their Web API. In the offloading model, a mobile application is partitioned and analyzed so that t...
متن کاملComputational Offloading for Mashup Services in Mobile Cloud Computing Environment
The cloud system is considered as the hub of hosted services in which a particular user can access the cloud system remotely by using applications or by using the browsers. Compared to desktop devices, mobile device have inherent constraints such as limited processing power, memory, and battery capacity. With the propagation of mobile cloud applications, researches are looking for new solutions...
متن کاملInternational Journal of Advanced Engineering Research and Applications
Mobile Cloud Computing is an evolving technology that combines the concept of cloud computing into the mobile environment. With the rise of mobile devices the resource demands of applications also grows. However, mobile devices have limited resources like its storage capacity, battery lifetime, bandwidth etc. These limitations can be overcome by offloading of applications, which is the focus of...
متن کاملذخیره در منابع من
با ذخیره ی این منبع در منابع من، دسترسی به آن را برای استفاده های بعدی آسان تر کنید
عنوان ژورنال:
- Appl. Soft Comput.
دوره 25 شماره
صفحات -
تاریخ انتشار 2014