Federated Cloud Approaches for Multi-Regional Payment Messaging Systems

Main Article Content

Avinash Reddy Segireddy

Abstract

Payment messaging systems are becoming an essen- tial element for many cross-border financial processes. However, supporting the growing volume of payment messages while adhering to local data residency policies requires significant investments, which can be a barrier for many regional players. Federated cloud approaches—data-sharing partnerships with cross-border regions that reciprocate the processing of mes- sages—could help multi-regional cloud providers offer such services in a cost-effective, secure, and compliant manner. The candidate federated architecture models are examined from key aspects of multi-regional message-processing and offering- resilience perspectives. These aspects include the support of local data residency; treaty-based interoperability for data-sharing under local sovereign laws; a reduced attack surface; coverage of service-messaging supply chains; and support of incoming financial borders where Director Exposure and common mes- saging protocol. By enabling low-latency, cost-efficient legal- standardized cost-based reciprocal payment messaging; with copy-matching support; and for fully managed, self-service ser- vices.

Downloads

Download data is not yet available.

Article Details

How to Cite
Reddy Segireddy, A. (2024). Federated Cloud Approaches for Multi-Regional Payment Messaging Systems. Turkish Journal of Computer and Mathematics Education (TURCOMAT), 15(2), 442–450. https://doi.org/10.61841/turcomat.v15i2.15464
Section
Articles

References

[1] Park, K. (2024). Andy Warhol and the Inadequacy of the Fair Use Doctrine. Southern California Law Review Postscript, 97(PS81).

[2] Schiavo, F. P., Monforte, S., & Venticinque, S. (2016). FaaS: Federation-as-a-Service. In Proceedings of the 6th International Conference on Cloud Computing and Services Science (pp. 283–290). SCITEPRESS.

[3] Paleti, S., Mashetty, S., Challa, S. R., Adusupalli, B., & Singireddy, J. (2024). Intelligent Technologies for Modern Financial Ecosystems: Transforming Housing Finance, Risk Management, and Advisory Services Through Advanced Analytics and Secure Cloud Solutions.

[4] Chowdhury, A. G. (2024, June 3). Everyone’s a critic! From Warhol to Eleanor, when IP law takes the stand on art and pop culture. Daily Journal. Retrieved from https://www.dailyjournal.com/articles/385938

[5] Koppolu, H. K. R., & Sheelam, G. K. (2024). Machine Learning-Driven Optimization in 6G Telecommunications: The Role of Intelligent Wireless and Semiconductor Innovation. Global Research Development (GRD), 9(12), ISSN: 2455-5703.

[6] Bhuskute, S. S., & Kadu, S. (2021). A study on federated cloud computing environment. International Journal of Recent Technology and Engineering, 10(2), 187–193. https://doi.org/10.35940/ijrte.B6311.0710221

[7] Challa, S. R., Challa, K., Lakkarasu, P., Sriram, H. K., & Adusupalli, B. (2024). Strategic Financial Growth: Strengthening Investment Management, Secure Transactions, and Risk Protection in the Digital Era. Journal of Artificial Intelligence and Big Data Disciplines, 1(1), 97–108.

[8] Marella, V. C., Erukude, S. T., & Veluru, S. (2024, September 7). The impact of artificial intelligence on traditional art forms: A disruption or enhancement. arXiv. https://arxiv.org/abs/2509.07029

[9] Caramiaux, B., Crawford, K., Liao, Q. V., Ramos, G., & Williams, J. (2024, February 6). Generative AI and creative work: Narratives, values, and impacts. arXiv. https://arxiv.org/abs/2502.03940

[10] Yellanki, S. K. (2024). Leveraging Deep Learning and Neural Networks for Real-Time Crop Monitoring in Smart Agricultural Systems. American Data Science Journal for Advanced Computations (ADSJAC), 2(1), ISSN: 3067-4166.

[11] Zhou, A.-L. (2024, July 22). A relational (re)turn: Revisit interactive art through interaction and aesthetics. arXiv. https://arxiv.org/abs/2508.00878

[12] Motamary, S. (2024). Transforming Customer Experience in Telecom: Agentic AI-Driven BSS Solutions for Hyper-Personalized Service Delivery. SSRN. https://ssrn.com/abstract=5240126

[13] Grba, D. (2024, February 26). The shady light of art automation. arXiv. https://arxiv.org/abs/2502.19107

[14] Lee, C. A., Cheung, S., Dinh, T., Cohn, R., & Harang, R. (2020). The NIST cloud federation reference architecture (NIST Special Publication 500-332). National Institute of Standards and Technology. https://doi.org/10.6028/NIST.SP.500-332

[15] Inala, R., & Somu, B. (2024). Agentic AI in Retail Banking: Redefining Customer Service and Financial Decision-Making. Journal of Artificial Intelligence and Big Data Disciplines, 1(1).

[16] Ewing, J. (2024). Pop on Paper: Lichtenstein, Ruscha & Warhol. Tyler Museum of Art Review.

[17] My Art Broker. (2024). Andy Warhol: The original influencer artist. Retrieved August 30, 2024, from https://www.myartbroker.com/artist-andy-warhol/articles/andy-warhol-original-influencer-artist

[18] Pandiri, L., & Chitta, S. (2024). Machine Learning-Powered Actuarial Science: Revolutionizing Underwriting and Policy Pricing for Enhanced Predictive Analytics in Life and Health Insurance. Turkish Journal of Computer and Mathematics Education (TURCOMAT), ISSN: 3048-4855.

[19] Toosi, A. N., Calheiros, R. N., & Buyya, R. (2014). Interconnected cloud computing environments: Challenges, taxonomy, and survey. ACM Computing Surveys, 47(1), Article 7. https://doi.org/10.1145/2593512

[20] Lesiuk, C. (2023, May 13). Andy Warhol and photography: A social media (exhibition review). Memo Review. https://www.memoreview.net/reviews/andy-warhol-and-photography-a-social-media-by-caitlyn-lesiuk

[21] Nandan, B. P. (2024). Revolutionizing Semiconductor Chip Design through Generative AI and Reinforcement Learning: A Novel Approach to Mask Patterning and Resolution Enhancement. International Journal of Medical Toxicology and Legal Medicine, 27(5), 759–772.

[22] Villari, M., Fazio, M., Dustdar, S., Rana, O. F., & Ranjan, R. (2016). Osmotic computing: A new paradigm for edge/cloud integration. IEEE Cloud Computing, 3(6), 76–83. https://doi.org/10.1109/MCC.2016.124

[23] Combe, T., Martin, A., & Di Pietro, R. (2016). To cloud or not to cloud: A study of cloud computing security risks. Computers & Security, 68, 154–165. https://doi.org/10.1016/j.cose.2017.04.007

[24] Agentic AI in Data Pipelines: Self-Optimizing Systems for Continuous Data Quality, Performance, and Governance. (2024). American Data Science Journal for Advanced Computations (ADSJAC), 2(1). https://adsjac.com/index.php/adsjac/article/view/23

[25] Chen, L., & Zhang, Y. (2024). Federated data exchange frameworks in multi-regional banking systems: A regulatory perspective. Financial Technology Review, 18(3), 211–230.

[26] Inala, R., & Somu, B. (2024). Agentic AI in Retail Banking: Redefining Customer Service and Financial Decision-Making. Journal of Artificial Intelligence and Big Data Disciplines, 1(1).

[27] European Central Bank (ECB). (2024). Cross-border instant payments and data sovereignty: Technical perspectives. ECB Payments Report 2024.

[28] Microsoft Azure. (2024, May). Federated multi-cloud deployments for compliant financial data management. Microsoft Cloud Architecture Center.

[29] Meda, R. (2024). Predictive Maintenance of Spray Equipment Using Machine Learning in Paint Application Services. European Data Science Journal (EDSJ), 2(1), p-ISSN 3050-9572, e-ISSN 3050-9580.*

[30] Ramesh, K., & Patel, D. (2024). Secure message queuing in distributed financial architectures: Comparative latency analysis. ACM Journal on Distributed Ledger Technologies, 4(1), 55–70.*

Similar Articles

<< < 197 198 199 200 201 202 203 204 205 206 > >> 

You may also start an advanced similarity search for this article.