A RESOURCE-AWARE ORCHESTRATION FRAMEWORK FOR ADAPTIVE SERVICE DEPLOYMENT IN MULTI-CLOUD ENVIRONMENTS
Keywords:
multi-cloud, orchestration, resource-aware computing, adaptive deployment, cloud services, service migration, load balancing, cost efficiency, performance optimization, cloud orchestration frameworkAbstract
In response to the growing complexity of multi-cloud architectures, this paper introduces a resource-aware orchestration framework designed to support adaptive service deployment across heterogeneous cloud providers. The proposed framework dynamically aligns application workloads with the most suitable cloud resources based on real-time monitoring of computational capacity, latency, and cost parameters. Leveraging machine learning for predictive scaling and policy-driven decision-making, the framework enhances performance, reduces operational cost, and minimizes service disruption. Evaluation using a simulated multicloud testbed demonstrates significant improvements in resource utilization and response time adaptability. This work contributes a scalable, intelligent orchestration layer suitable for evolving service requirements in dynamic multi-cloud ecosystems.
References
Bernstein, D. et al. (2009). Blueprint for the Intercloud – Protocols and Formats for Cloud Computing Interoperability. IEEE.
Venkata Sambasivarao Kopparapu. Cloud-Integrated Artificial Intelligence Framework for MRI Analysis: Advancing Radiological Diagnostics Through Automated Solutions. International Journal of Computer Engineering and Technology (IJCET), 16(1), 2025,
-2907. doi: https://doi.org/10.34218/IJCET_16_01_203
Celesti, A. et al. (2010). Towards the Federation of Cloud Providers. IEEE Cloud.
Petcu, D. (2011). Portable Cloud Applications: The mOSAIC Solution. Computer Science and Information Systems.
Buyya, R. et al. (2013). Market-oriented Cloud Computing: Vision, Hype, and Reality for Delivering IT Services as Computing Utilities. Future Generation Computer Systems.
Kritikos, K. & Plexousakis, D. (2015). Towards computational models and techniques for SLA-aware service composition. Future Generation Computer Systems.
Brogi, A. et al. (2016). How to Best Deploy Your Fog Applications, Probably. IEEE Transactions on Services Computing.
Zhang, L. et al. (2020). Intelligent Service Deployment in Multi-cloud Environments. Journal of Cloud Computing.
Venkata Sambasivarao Kopparapu. (2025). Healthcare Insurance Data Infrastructure: A Comprehensive Analysis of EDI Standards and Processing Systems. International Journal of Research in Computer Applications and Information Technology (IJRCAIT), 8(1), 2341-2353. doi: https://doi.org/10.34218/IJRCAIT_08_01_170
De Brito, F. et al. (2021). Challenges and Research Opportunities for Multi-cloud Orchestration. ACM Computing Surveys.
Nastic, S. et al. (2015). Patricia: A Novel Programming Model for IoT Applications on Cloud Platforms. Journal of Systems and Software.
Grozev, N. & Buyya, R. (2014). Inter-Cloud Architectures and Application Brokering: Taxonomy and Survey. Software: Practice and Experience.



