Work place: Aryan institute of engineering and technology, Odisha 752050 India
E-mail: abkakade22@gmail.com
Website: https://orcid.org//0000-0001-6932-7616
Research Interests:
Biography
Dr. Aparna Rajesh Atmakuri received the Ph.D. degree in computer science and engineering from Visvesvaraya Technological University, Belagavi, India. She is currently working as an Associate Professor with the Department of CSE-AI/ML, Keshav Memorial Engineering College, Hyderabad-India. She has published several papers and book chapters in international conferences and journals, authored four technical books, and hold three patents. Her research interests include cybersecurity, cloud computing, the IoT, and Deep Learning.
By G. M. Kiran A. Aparna Rajesh D. Basavesha
DOI: https://doi.org/10.5815/ijigsp.2025.05.04, Pub. Date: 8 Oct. 2025
Infrastructure as a service is used for resource management. Resources that will be available on demand are effectively managed using the resource management module. Predicting CPU and memory usage assists with resource management when cloud resources are provided. This study uses a hybrid DS-RAE model to forecast CPU and memory utilization in the future. Predictions are made using the range of values found, which is helpful for resource management. The memory and CPU use patterns in the cloud traces are identified by the Double Channel Residual Self-Attention Temporal Convolution Network (DSTNW) model as having linear components. The Recursive Autoencoder (RAE) model for tracing and enlarging nonlinear components and power consumption was developed using the DSTNW model. Gathers the raw data taken from the system's operational state, such as bandwidth, disk I/O time, disk space, CPU, and memory utilization. Discover patterns and oscillations in the workload trace by preprocessing the data to increase the prediction efficacy of this model. During data pre-processing, missing value edge computing and z-score normalization are used to select the important properties from raw data samples, eliminate irrelevant elements, and normalize them. After that, preprocessing utilizes a dynamization of the sliding window to improve the proposed model's accuracy on non-random workloads. Next, utilize a hybrid DS-RAE to attain accurate workload forecasting. Comparing the suggested methodology with existing models, experimental results show that it offers a better trade-off between training time and accuracy. The suggested method provides higher performance, with an execution time of 32 seconds and an accuracy rate of 97%. According to the simulation results, the DS-RAE workload prediction method performs better than other algorithms.
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