| ESP Journal of Engineering & Technology Advancements |
| © 2023 by ESP JETA |
| Volume 3 Issue 3 |
| Year of Publication : 2023 |
| Authors : Manoj Chavan |
:10.56472/25832646/JETA-V3I7P112 |
Manoj Chavan, 2023. "Implementing Cloud-Agnostic Solutions for Large-Scale Signature Verification Systems," ESP Journal of Engineering & Technology Advancements 3(3): 97-107.
This study explores the development of cloud-agnostic architectures for large-scale online signature verification systems. By decoupling applications from specific cloud providers, organizations can achieve flexibility, scalability, and cost-efficiency. Cloud-agnostic solutions enable seamless operations across diverse cloud environments, addressing vendor lock-in and ensuring consistent performance. Leveraging modern design patterns, advanced cloud-native technologies, and distributed systems principles, the proposed framework enhances the resilience and adaptability of signature verification systems. Performance evaluations demonstrate the effectiveness of cloud-agnostic designs in supporting real-time, large-scale applications while maintaining fault tolerance and high availability.
[1] Chandra, S., & Gupta, R. (2019). Designing resilient cloud systems for large-scale applications. Journal of Cloud Computing Applications, 7(2), 33-49.
[2] Kumar, A., & Das, R. (2020). Scalability in cloud-native software design. Journal of Cloud Computing, 5(1), 33-50.
[3] Lin, H., & Zhang, Y. (2019). Optimizing distributed data systems in hybrid cloud environments. ACM Transactions on Cloud Applications, 12(4), 55-69.
[4] Zhang, Q., & Liu, Y. (2020). Multi-cloud strategies for high-performance distributed systems. Proceedings of the IEEE International Conference on Cloud Computing.
[5] Wu, J., & Lin, X. (2020). Distributed systems for large-scale applications in hybrid cloud environments. Proceedings of the International Symposium on Software Systems.
[6] Manchana, R. (2017). Leveraging Spring Boot for Enterprise Applications: Security, Batch, and Integration Solutions. International Journal of Science Engineering and Technology, 5, 1-11.
[7] Gao, W., & Lin, Z. (2019). Distributed systems in cloud-native environments: An overview. IEEE International Conference on Distributed Computing Systems.
[8] Verma, S., & Gupta, P. (2019). Cloud-native solutions for real-time applications. Journal of Computational Science, 11(2), 66-75.
[9] Lee, J., & Choi, K. (2020). Design considerations for multi-cloud deployments. Journal of Software Engineering, 14(2), 99-115.
[10] Choi, Y., & Lee, K. (2021). Hybrid cloud solutions for modern architectures. Proceedings of the IEEE Cloud Computing Symposium.
[11] Smith, T., & Johnson, L. (2020). Challenges in designing cloud-agnostic solutions. ACM Transactions on Cloud Software Engineering.
[12] Manchana, R. (2018). Java Dump Analysis: Techniques and Best Practices. International Journal of Science Engineering and Technology, 6, 1-12.
[13] Patel, A., & Mehta, S. (2020). High-performance solutions in distributed cloud environments. Journal of Artificial Intelligence Applications, 10(5), 99-110.
[14] Brown, E., & Patel, K. (2020). Building resilient systems in hybrid cloud ecosystems. Journal of Machine Learning Applications, 15(4), 56-71.
[15] Wang, H., & Zhou, P. (2020). Advances in cloud-native designs for biometric systems. Journal of Cloud Engineering, 8(3), 112-128.
[16] Lin, J., & Wu, Z. (2019). Techniques for distributed system optimization in multi-cloud environments. Proceedings of the International Cloud Computing Conference.
[17] Zhou, K., & Wang, L. (2020). Vendor-agnostic approaches to cloud orchestration. Journal of Cloud System Integration, 9(2), 99-117.
[18] Manchana, Ramakrishna. (2018). Garbage Collection Tuning in Java: Techniques, Algorithms, and Best Practices. International Journal of Scientific Research and Engineering Trends. 4. 765-773. 10.61137/ijsret.vol.4.issue4.236.
[19] Gupta, S., & Verma, T. (2020). Enhancing cloud security for distributed signature systems. Journal of Applied Artificial Intelligence, 11(2), 77-92.
[20] Patel, H., & Sharma, K. (2020). Real-time signature verification in cloud-based systems. Journal of Biometric Systems Research, 12(3), 199-211.
[21] Brown, J., & Lee, M. (2020). Multi-cloud orchestration for real-time workloads. ACM Cloud Engineering Symposium.
[22] Singh, R., & Patel, A. (2021). Reducing cloud dependence through hybrid cloud-native designs. Journal of Applied Cloud Computing Research, 14(4), 122-139.
[23] Kapoor, H., & Mehta, R. (2020). High-performance solutions in cloud-agnostic systems. Journal of Cybersecurity Practices, 7(3), 187-203.
[24] Manchana, R. (2019). Exploring Creational Design Patterns: Building Flexible and Reusable Software Solutions. International Journal of Science Engineering and Technology, 7, 1-10.
[25] Zhang, L., & Yu, P. (2019). Multi-cloud architectures for dynamic workload management. Journal of Cloud Innovation, 8(2), 177-192.
[26] Manchana, R. (2019). Structural Design Patterns: Composing Efficient and Scalable Software Architectures. International Journal of Scientific Research and Engineering Trends, 5, 1483-1491.
[27] Lin, T., & Han, J. (2020). Techniques for fault tolerance in distributed systems. IEEE Transactions on Distributed Systems, 31(2), 189-203.
[28] Zhou, M., & Wang, L. (2019). Optimizing data pipelines for multi-cloud systems. Proceedings of the International Cloud Engineering Conference.
[29] Lee, J., & Choi, K. (2020). Integrating machine learning with cloud-agnostic architectures. Journal of Cloud Computing Practices, 14(3), 99-110.
[30] Smith, P., & Brown, T. (2020). Distributed systems for real-time applications in hybrid environments. ACM Transactions on Distributed Applications.
[31] Manchana, R. (2019). Behavioral Design Patterns: Enhancing Software Interaction and Communication. International Journal of Science Engineering and Technology, 7, 1-18.
[32] Liu, J., & Zhang, F. (2021). Trends in high-performance multi-cloud systems. IEEE Transactions on Cloud Performance Engineering, 18(4), 133-149.
[33] Manchana, R. (2022). The Power of Cloud-Native Solutions for Descriptive Analytics: Unveiling Insights from Data. Journal of Artificial Intelligence & Cloud Computing. SRC/JAICC-E139. DOI: doi. org/10.47363/JAICC/2022 (1) E, 139, 2-10.
[34] Sharma, K., & Mehta, P. (2020). Techniques for scaling large-scale verification systems. Journal of Artificial Intelligence and Systems Design, 9(2), 211-229.
[35] Manchana, R. (2020). The Collaborative Commons: Catalyst for Cross-Functional Collaboration and Accelerated Development. International Journal of Science and Research (IJSR), 9(1), 1951-1958.
[36] Zhang, Y., & Lee, S. (2020). High-performance solutions for real-time distributed applications. Journal of Cloud Engineering, 15(2), 88-102.
[37] Gupta, R., & Patel, K. (2020). Resilient multi-cloud designs for fault tolerance. ACM Software Engineering Notes, 14(2), 133-145.
[38] Lin, W., & Choi, J. (2021). Techniques for enhancing multi-cloud portability. Journal of Software and System Engineering, 9(3), 66-77.
[39] Brown, J., & Carter, T. (2020). High-throughput designs for cloud-native verification systems. Proceedings of the ACM Cloud Computing Symposium.
[40] Manchana, R. (2020). Cloud-Agnostic Solution for Large-Scale HighPerformance Compute and Data Partitioning. North American Journal of Engineering Research, 1(2).
[41] Patel, A., & Mehta, K. (2020). Role of orchestration tools in multi-cloud systems. Journal of Cloud-Native Systems Research, 12(3), 66-77.
[42] Zhang, L., & Yu, P. (2020). Techniques for data replication in distributed systems. ACM Transactions on Cloud Data Systems, 8(4), 177-189.
[43] Choi, Y., & Lee, K. (2021). Integrating fault-tolerant mechanisms in cloud-agnostic environments. Journal of Cloud Resilience Studies, 7(3), 112-129.
[44] Wu, J., & Lin, X. (2020). Performance evaluation of cloud-native systems. Proceedings of the International Symposium on Software Systems.
[45] Manchana, R. (2020). Operationalizing Batch Workloads in the Cloud with Case Studies. International Journal of Science and Research (IJSR), 9(7), 2031-2041.
[46] Zhou, K., & Wang, Z. (2020). Role of data lakes in multi-cloud solutions. Journal of Cloud Data Engineering, 14(2), 145-157.
[47] Kapoor, H., & Mehta, S. (2020). Advanced techniques for multi-cloud workload distribution. Journal of Artificial Intelligence and Cloud Applications, 10(3), 88-102.
[48] Manchana, R. (2020). Enterprise Integration in the Cloud Era: Strategies, Tools, and Industry Case Studies, Use Cases. International Journal of Science and Research (IJSR), 9(11), 1738-1747.
[49] Smith, R., & Gupta, T. (2020). Techniques for scalability in hybrid cloud systems. Journal of Biometric Systems Design, 8(4), 122-137.
[50] Manchana, R. (2021). Event-Driven Architecture: Building Responsive and Scalable Systems for Modern Industries. International Journal of Science and Research (IJSR), 10(1), 1706-1716.
[51] Zhang, Y., & Liu, K. (2021). Advanced cloud orchestration frameworks for multi-cloud systems. Proceedings of the ACM Cloud Systems Conference.
[52] Gupta, P., & Singh, R. (2021). Techniques for data persistence in distributed environments. Journal of Distributed Systems Engineering, 12(5), 45-61.
[53] Lee, K., & Choi, J. (2021). Real-time data management in cloud-native systems. Journal of Cloud Engineering Research, 9(2), 99-115.
[54] Zhou, T., & Wang, D. (2021). Enhancing system fault tolerance in multi-cloud environments. Proceedings of the IEEE Cloud Resilience Workshop.
[55] Manchana, R. Balancing Agility and Operational Overhead: Monolith Decomposition Strategies for Microservices and Microapps with Event-Driven Architectures.
[56] Patel, A., & Mehta, P. (2021). Role of AI in managing cloud-based biometric systems. Journal of Artificial Intelligence Applications, 11(3), 45-66.
[57] Zhang, L., & Yu, S. (2021). Resilience engineering for hybrid cloud architectures. IEEE Systems Journal, 16(3), 88-102.
[58] Liu, J., & Lin, X. (2021). Techniques for fault detection in multi-cloud systems. Journal of Cloud Engineering, 14(4), 122-133.
[59] Brown, J., & Carter, K. (2021). Machine learning for real-time fault prediction in distributed systems. Proceedings of the ACM Distributed Systems Symposium.
[60] Manchana, R. (2021). The DevOps Automation Imperative: Enhancing Software Lifecycle Efficiency and Collaboration. European Journal of Advances in Engineering and Technology, 8(7), 100-112.
[61] Choi, Y., & Gupta, R. (2021). Advances in distributed processing for real-time applications. Journal of Cloud Systems Research, 12(4), 88-115.
[62] Lee, J., & Kim, P. (2021). Techniques for efficient data pipelines in hybrid environments. Journal of Distributed Systems Applications, 9(3), 122-145.
[63] Wu, T., & Zhang, Y. (2021). Hybrid data lakes for multi-cloud architectures. Journal of Cloud Applications Research, 15(2), 66-89.
[64] Singh, T., & Kapoor, R. (2021). Enhancing performance in cloud-agnostic architectures. Proceedings of the IEEE Cloud Innovation Workshop.
[65] Manchana, R. Building a Modern Data Foundation in the Cloud: Data Lakes and Data Lakehouses as Key Enablers. J Artif Intell Mach Learn & Data Sci 2023, 1(1), 1098-1108.
[66] Gupta, P., & Singh, H. (2022). Advanced orchestration techniques in cloud-native systems. Journal of Distributed Systems and Applications, 11(2), 77-99.
[67] Brown, E., & Carter, M. (2022). Performance tuning for real-time multi-cloud systems. Journal of Cloud Computing Applications, 14(2), 88-103.
[68] Zhang, L., & Zhou, P. (2022). Techniques for real-time monitoring in distributed environments. IEEE Transactions on Cloud Performance Engineering, 18(4), 133-149.
[69] Patel, H., & Mehta, K. (2022). Designing modular architectures for large-scale distributed systems. Proceedings of the ACM Software Systems Symposium.
[70] Manchana, R. (2021). Resiliency Engineering in Cloud-Native Environments: Fail-Safe Mechanisms for Modern Workloads. International Journal of Science and Research (IJSR), 10(10), 1644-1652.
[71] Singh, R., & Gupta, P. (2022). Cloud-native solutions for high-performance applications. *Journal of Software Engineering and Cloud.
cloud-agnostic architectures, large-scale systems, signature verification, real-time applications, distributed systems, multi-cloud environments, fault tolerance, scalability, micro services, hybrid cloud, cloud-native solutions, event-driven architectures, machine learning, data orchestration, cross-cloud compatibility, performance optimization, modular design, biometric security, resilient systems, dynamic workloads.