Cost-Performance Optimization in Hybrid Cloud Deployment Models
Keywords:
Hybrid Cloud, Cost Optimization, Performance Tuning, Workload Allocation, Cloud Simulation, Auto-Scaling, Cloud EconomicsAbstract
The hybrid cloud deployment model, integrating private and public cloud infrastructures, has become a cornerstone of modern IT strategy, enabling organizations to balance cost efficiency, performance, and regulatory compliance. However, optimizing this balance remains a multidimensional challenge involving workload placement, scaling policies, and dynamic cost models. This research presents an integrated approach combining predictive workload modeling, intelligent resource allocation, and simulation-based validation to address cost–performance trade-offs in hybrid environments. Drawing upon a comprehensive literature review, the study identifies key parameters influencing hybrid cloud economics, including compute cost variability, data egress fees, storage tiering, and network latency.
The methodology leverages workload profiling, a dual cost–performance model, and CloudSim-based simulations to compare threshold-based and machine learning (ML)-driven scaling strategies. Statistical analysis of simulated workloads (n=120 test runs) shows that the ML-based scaling approach yields an average 27% cost reduction, 22.9% improvement in average response times, and 25.9% increase in resource utilization, with all results statistically significant at p < 0.05. Notably, SLA compliance improved by 4.1%, demonstrating that cost savings did not come at the expense of service quality.
These findings contribute to both academic research and industry practice by providing a reproducible optimization framework. The results are particularly relevant for organizations experiencing unpredictable workloads, such as e-commerce platforms, financial analytics services, and computational research clusters. This work further highlights that hybrid cloud cost–performance optimization is not solely a technical exercise but also a strategic decision-making process requiring continuous monitoring and adaptive governance. Recommendations are provided for integrating the proposed approach into existing cloud management platforms and DevOps pipelines to ensure long-term sustainability and return on investment.
Downloads
Downloads
Additional Files
Published
Issue
Section
License
Copyright (c) 2025 The journal retains copyright of all published articles, ensuring that authors have control over their work while allowing wide dissenmination.

This work is licensed under a Creative Commons Attribution-NonCommercial 4.0 International License.
Articles are published under the Creative Commons Attribution NonCommercial 4.0 License (CC BY NC 4.0), allowing others to distribute, remix, adapt, and build upon the work for non-commercial purposes while crediting the original author.
