Aishwarya Shekhar

Work place: Department of Computer Science and Engineering, Sandip University, Sijoul, Madhubani, Bihar, India

E-mail: aishwarya1.2.shekhar@outlook.com

Website:

Research Interests:

Biography

Aishwarya Shekhar working as an Assistant Professor in the Department of Computer Science and Engineering at Sandip University, Sijoul, Madhubani. He is currently pursuing Ph.D. in Computer Science and Engineering from Galgotias University, with an expected completion in 2025. His academic journey has been marked by a consistent pursuit of excellence, as evidenced by securing an A+ grade in his Ph.D. coursework exams. Mr. Shekhar also completed a Post Graduate Diploma in Management (PGDM) in IT from SVKM's Narsee Monjee Institute of Management Studies in 2022. He holds a Master of Technology degree in Computer Science and Engineering from Manipal University Jaipur, obtained in 2015, and a Bachelor of Technology in Computer Science and Engineering from UPTU, where he graduated with first division honors in 2013. Professionally, Mr. Shekhar began his career at AWC Software Pvt. Ltd, where he served as a Software Developer. He then transitioned to Velocis Systems Pvt. Ltd as a Senior Software Developer. Currently, he is the Academic Coordinator for the B.Tech and M.Tech courses at Sandip University, Madhubani. He has published more than 20 research papers in national and international journals, including five Scopus-indexed papers and three IEEE Conference Papers, which are also indexed in Scopus. Additionally, he has Co-authored a book. Mr. Shekhar has six years of experience in the IT industry and three years in academia. He is a member of IEEE, ACM, and IAENG. His research interests include IoT, Cloud Computing, AI, and Machine Learning.

Author Articles
Adaptive Osprey-bowerbird Optimized Green Cloud Computing with Randomized Attention Coupled Fair Resource Distribution in Scalable Systems

By Aishwarya Shekhar Abdul Aleem

DOI: https://doi.org/10.5815/ijcnis.2026.03.06, Pub. Date: 8 Jun. 2026

Cloud computing forms the basis for the emerging technologies in various fields, providing a reliable framework for managing resources to meet the needs of different applications. The rapidly increasing energy requirements inherent to cloud computing pose a real problem concerning sustainability. Energy efficiency, fair resource sharing, and performance consistent across the dynamic and heterogeneous cloud computing system are essential since existing approaches introduce inefficiency, energy consumption, and unfair distribution of loads. This research introduces Adaptive Osprey-Bowerbird Optimized Green Cloud Computing with Randomized Attention Coupled Fair Resource Distribution in Scalable Systems (AO-BO-RNCN-MAN) to address these challenges. The proposed framework integrates the Randomized Neural Coupling Network to learn diverse data representations, with the Multi-instance Attention Network to prioritize tasks, and Adaptive Osprey-Bowerbird Optimization, which is a combination of the Osprey Adaptive Algorithm and the Adaptive Bowerbird Optimization for further fine-tuning of the system. By optimizing the placement of virtual machines and scheduling of tasks, the proposed framework guarantees fairness and high utilization of energy with low turnaround time. Performance assessments indicate that the proposed framework outperforms the existing systems with energy efficiency of 99.82%, precise task scheduling of 99.61% and fair resource allocation of 99.74%. AO-BO-RNCN-MAN not only proposes a new way of addressing green computing challenges but also opens the gates to sustainable, adaptive, and scalable designed cloud infrastructures for resource management in cloud ecosystems and establishes the proposed conceptual framework as a new standard.

[...] Read more.
Other Articles