Enhancing Mobile Efficiency: A Cloud-Powered Paradigm for Extended Battery Life and Enhanced Processing Capabilities

Abstract

In an interconnected world where mobile phones are essential to everyday operations, the constraints of these devices in terms of processing power, memory, storage, and energy efficiency are becoming increasingly apparent. This research introduces an innovative solution by integrating Mobile Cloud Computing (MCC) to address these challenges. The research focuses on the creation of an Android application called "ServiVerse" that efficiently drains the phone's battery to imitate real-world conditions. The software is accompanied by a Firebase-connected battery optimizer, which provides users with complete insights into battery state, cleaning history, and graphical representations of performance. The system's distinguishing feature is outsourcing power-intensive operations to a cloud server, resulting in increased energy efficiency and battery life. The study demonstrated successful battery optimization tactics adapted to individual users, such as the amount of cache and RAM deleted and storage space freed up on the mobile devices. This strategy has proven to be vital in addressing a key concern about background processing and the loss of power generation on mobiles, which is providing users with more efficient and longer-lasting battery life.

Authors and Affiliations

Dua Agha, Veena Kumari, Areej Fatemah Meghji

Keywords

Related Articles

Enhancing Face Mask Detection in Public Places with Improved Yolov4 Model for Covid-19 Transmission Reduction

Over the past decade, computer vision has emerged as a pivotal field, focusing on automating systems through the interpretation of images and video frames. In response to the global impact of the COVID-19 pandemic, the...

Improving Credit Card Fraud Detection Using Machine Learning with Under-Samplingand SMOTE Techniques

Credit card fraud detection is currently the most popular implementation domain of Computational Intelligence techniques. A common issue in the present world is being faced by many organizations and institutions. This...

Numerical Simulation of Flow Past a Square Object Detached with Controlling Object at Various Reynolds Number

A two-dimensional (2-D) numerical study has been conducted for flow past of two different configurations of square objects by using the numerical technique Lattice Boltzmann Method (LBM). In these configurations, one o...

Real-Time Detection of Diabetic Retinopathy Using Deep Learning Techniques

Diabetic retinopathy is a prevalent disease which is a medical condition frequently caused due to high sugar levels in the blood. It deteriorates the optic nerve as it compresses and blurs the vision, which is used to...

Human Factors and Risk Analysis in Conventional System of Marble Mining: Using HFACS Framework and Structural Equation Modeling Technique

ccidents in mines can occur due to sources of hazards that lead to the loss of hundreds of precious lives every year. Among these sources, human error is considered one of the significant sources that contribute to hum...

Download PDF file
  • EP ID EP760294
  • DOI -
  • Views 14
  • Downloads 0

How To Cite

Dua Agha, Veena Kumari, Areej Fatemah Meghji (2024). Enhancing Mobile Efficiency: A Cloud-Powered Paradigm for Extended Battery Life and Enhanced Processing Capabilities. International Journal of Innovations in Science and Technology, 6(1), -. https://europub.co.uk./articles/-A-760294