Multi-Cloud Strategy and Governance Models for Enterprise IT Management
DOI:
https://doi.org/10.15662/IJEETR.2023.0506016Keywords:
Multi-cloud strategy, Cloud governance, Enterprise IT management, Cloud compliance, Vendor management, Security and risk management, Cost optimizationAbstract
This paper examines multi-cloud strategy and governance models for enterprise IT management, focusing on how organizations can leverage multiple cloud service providers to achieve flexibility, resilience, cost efficiency, and regulatory compliance; it proposes an integrated governance framework that aligns cloud strategy with business objectives through standardized policies for security, data management, vendor control, performance monitoring, and cost optimization, enabling enterprises to manage complexity, mitigate risks, and maximize value from heterogeneous cloud environments
References
1. Mahajan, R. A., Shaikh, N. K., Tikhe, A. B., Vyas, R., & Chavan, S. M. (2022). Hybrid Sea Lion Crow Search Algorithm-based stacked autoencoder for drug sensitivity prediction from cancer cell lines. International Journal of Swarm Intelligence Research, 13(1), 21. https://doi.org/10.4018/IJSIR.304723
2. Patel, K. A., Gandhi, K. K., & Vyas, A. S. (2021, August). An effective approach to classify white blood cell using CNN. In Proceedings of the International e-Conference on Intelligent Systems and Signal Processing: e-ISSP 2020 (pp. 633-641). Singapore: Springer Singapore.
3. Patel, K. A., Patel, A., Patel, D. P., & Bhanderi, S. J. (2022). ConvMax: Classification of COVID-19, pneumonia, and normal lungs from X-ray images using CNN with modified max-pooling layer. In Intelligent Systems and Machine Learning for Industry (pp. 23-38). CRC Press.
4. Patel, P. J., Kheni Rukshmani, S., Patel, U., Patel, D. P., Patel, K. N., & Patel, K. A. (2022). Offline handwritten character recognition of Gujarati characters using convolutional neural network. In Rising Threats in Expert Applications and Solutions: Proceedings of FICR-TEAS 2022 (pp. 419-425). Singapore: Springer Nature Singapore
5. Sahoo, S. C., Sil, A., Riya, R., & Solankip, T. (2021). Synthesis and properties of UF/pMDI hybrid resin for better water resistance properties of interior plywood. Int J Innov Sci Eng Technol, 8, 148-158.
6. Sil, A. (2021). Structural Analysis of Bamboo Wall Framed Structure–An Approach. INFORMATION TECHNOLOGY IN INDUSTRY, 9(2), 121-124.
7. Sil, A. (2021). Structural Analysis of Bamboo Wall Framed Structure–An Approach. INFORMATION TECHNOLOGY IN INDUSTRY, 9(2), 121-124.
8. Sil, A., VR, R. K., & Sahoo, S. (2023). Estimation for characteristic value mechanical properties of structural timber. Journal of Structural Engineering, 12(1), 10.
9. Roy, Dilip Kumar, and Amitava Sil. "Effect of Partial Replacement of Cement by Glass Powder on Hardened Concrete." International Journal of Emerging Technology and Advanced Engineering (ISSN 2250-2459, Volume 2, Issue 8 (2012).
10. Sahoo, S. C., Sil, A., Solanki, A., & Khatua, P. K. (2015). Enhancement of fire retardancy properties of plywood by incorporating silicate, phosphate and boron compounds as additives in PMUF resin. International Journal of Polymer Science, 1(1).
11. Gupta, P. K., Nawaz, M. H., Mishra, S. S., Roy, R., Keshamma, E., Choudhary, S., ... & Sheriff, R. S. (2020). Value Addition on Trend of Tuberculosis Disease in India-The Current Update. Int J Trop Dis Health, 41(9), 41-54.
12. Hiremath, L., Kumar, N. S., Gupta, P. K., Srivastava, A. K., Choudhary, S., Suresh, R., & Keshamma, E. (2019). Synthesis, characterization of TiO2 doped nanofibres and investigation on their antimicrobial property. J Pure Appl Microbiol, 13(4), 2129-2140.
13. Gupta, P. K., Lokur, A. V., Kallapur, S. S., Sheriff, R. S., Reddy, A. M., Chayapathy, V., ... & Keshamma, E. (2022). Machine Interaction-Based Computational Tools in Cancer Imaging. Human-Machine Interaction and IoT Applications for a Smarter World, 167-186.
14. Gopinandhan, T. N., Keshamma, E., Velmourougane, K., & Raghuramulu, Y. (2006). Coffee husk-a potential source of ochratoxin A contamination.
15. Keshamma, E., Rohini, S., Rao, K. S., Madhusudhan, B., & Udaya Kumar, M. (2008). In planta transformation strategy: an Agrobacterium tumefaciens-mediated gene transfer method to overcome recalcitrance in cotton (Gossypium hirsutum L.). J Cotton Sci, 12, 264-272.
16. Gupta, P. K., Mishra, S. S., Nawaz, M. H., Choudhary, S., Saxena, A., Roy, R., & Keshamma, E. (2020). Value Addition on Trend of Pneumonia Disease in India-The Current Update.
17. Sumanth, K., Subramanya, S., Gupta, P. K., Chayapathy, V., Keshamma, E., Ahmed, F. K., & Murugan, K. (2022). Antifungal and mycotoxin inhibitory activity of micro/nanoemulsions. In Bio-Based Nanoemulsions for Agri-Food Applications (pp. 123-135). Elsevier.
18. Hiremath, L., Sruti, O., Aishwarya, B. M., Kala, N. G., & Keshamma, E. (2021). Electrospun nanofibers: Characteristic agents and their applications. In Nanofibers-Synthesis, Properties and Applications. IntechOpen.
19. Kaur, Achint, Urmila Shrawankar, N. Shobha, T. Asha, D. Niranjan, B. Ashwini, Ranjan Jana et al. "Artificial Neural Network based Identification and Classification of Images of Bharatanatya Gestures." Energy 14: 5.
20. Shobha, N., Asha, T., Seemanthini, K., & Jagadishwari, V. Rainfall and outlier rain prediction with ARIMA and ANN models.
21. Shobha, N., & Asha, T. (2023). Using of Meteorological Data to Estimate the Multilevel Clustering for Rainfall Forecasting. Research Highlights in Science and Technology Vol. 1, 1, 115-129.
22. Jagadishwari, V., & Shobha, N. (2023, December). Deep learning models for Covid 19 diagnosis. In AIP Conference Proceedings (Vol. 2901, No. 1, p. 060005). AIP Publishing LLC.
23. Shanthala, K., Chandrakala, B. M., & Shobha, N. (2023, November). Automated Diagnosis of brain tumor classification and segmentation of MRI Images. In 2023 International Conference on the Confluence of Advancements in Robotics, Vision and Interdisciplinary Technology Management (IC-RVITM) (pp. 1-7). IEEE.
24. Jagadishwari, V., Lakshmi Narayan, N., & Shobha, N. (2023, December). Empirical analysis of machine learning models for detecting credit card fraud. In AIP Conference Proceedings (Vol. 2901, No. 1, p. 060013). AIP Publishing LLC.
25. Jagadishwari, V., & Shobha, N. (2023, January). Comparative study of Deep Learning Models for Covid 19 Diagnosis. In 2023 Third International Conference on Advances in Electrical, Computing, Communication and Sustainable Technologies (ICAECT) (pp. 1-5). IEEE
26. Jagadishwari, V., & Shobha, N. (2022, February). Sentiment analysis of COVID 19 vaccines using Twitter data. In 2022 Second International Conference on Artificial Intelligence and Smart Energy (ICAIS) (pp. 1121-1125). IEEE.
27. Shobha, N., & Asha, T. (2019). Mean Squared Error Applied in Back Propagation for Non Linear Rainfall Prediction. Compusoft, 8(9), 3431-3439.
28. Nagar, H., & Menaria, A. K. Compositions of the Generalized Operator (????�????�, ????�, ????�, ????�; ????� ????�)(????�) and their Application.
29. NAGAR, H., & MENARIA, A. K. (2012). Applications of Fractional Hamilton Equations within Caputo Derivatives. Journal of Computer and Mathematical Sciences Vol, 3(3), 248-421.
30. Nagar, H., & Menaria, A. K. On Generalized Function Gρ, η, γ [a, z] And It’s Fractional Calculus.
31. Suma, V., & Nair, T. G. (2008, October). Enhanced approaches in defect detection and prevention strategies in small and medium scale industries. In 2008 The Third International Conference on Software Engineering Advances (pp. 389-393). IEEE.
32. Rashmi, K. S., Suma, V., & Vaidehi, M. (2012). Enhanced load balancing approach to avoid deadlocks in cloud. arXiv preprint arXiv:1209.6470.
33. Nair, T. G., & Suma, V. (2010). The pattern of software defects spanning across size complexity. International Journal of Software Engineering, 3(2), 53-70.
34. Rao, Jawahar J., and V. Suma. "Effect of Scope Creep in Software Projects–Its Bearing on Critical SuccessFactors." International Journal of Computer Applications 975 (2014): 8887.
35. Rashmi, N., & Suma, V. (2014). Defect detection efficiency of the combined approach. In ICT and Critical Infrastructure: Proceedings of the 48th Annual Convention of Computer Society of India-Vol II: Hosted by CSI Vishakapatnam Chapter (pp. 485-490). Cham: Springer International Publishing.
36. Pushphavathi, T. P., Suma, V., & Ramaswamy, V. (2014, February). A novel method for software defect prediction: hybrid of fcm and random forest. In 2014 International Conference on Electronics and Communication Systems (ICECS) (pp. 1-5). IEEE.
37. Suma, V., & Gopalakrishnan Nair, T. R. (2010). Better defect detection and prevention through improved inspection and testing approach in small and medium scale software industry. International Journal of Productivity and Quality Management, 6(1), 71-90.
38. Anandkumar, C. P., Prasad, A. M., & Suma, V. (2017, March). Multipath load balancing and secure adaptive routing protocol for service oriented WSNs. In Proceedings of the 5th International Conference on Frontiers in Intelligent Computing: Theory and Applications: FICTA 2016, Volume 2 (pp. 595-601). Singapore: Springer Singapore.
39. Bhargavi, S. B., & Suma, V. (2017, February). An analysis of suitable CTD model for applications. In 2017 International Conference on Innovative Mechanisms for Industry Applications (ICIMIA) (pp. 766-769). IEEE.
40. Christa, S., & Suma, V. (2016, March). Significance of ticket analytics in effective software maintenance: Awareness. In Proceedings of the ACM Symposium on Women in Research 2016 (pp. 126-130).
41. Deshpande, B., Rao, J. J., & Suma, V. (2015). Comprehension of Defect Pattern at Code Construction Phase during Software Development Process. In Proceedings of the 3rd International Conference on Frontiers of Intelligent Computing: Theory and Applications (FICTA) 2014: Volume 2 (pp. 659-666). Cham: Springer International Publishing.
42. Harekal, D., Rao, J. J., & Suma, V. (2015). Pattern Analysis of Post Production Defects in Software Industry. In Proceedings of the 3rd International Conference on Frontiers of Intelligent Computing: Theory and Applications (FICTA) 2014: Volume 2 (pp. 667-671). Cham: Springer International Publishing.
43. Madhuri, K. L., Suma, V., & Mokashi, U. M. (2018). A triangular perception of scope creep influencing the project success. International Journal of Business Information Systems, 27(1), 69-85.
44. Suma, V. (2020). Automatic spotting of sceptical activity with visualization using elastic cluster for network traffic in educational campus. Journal: Journal of Ubiquitous Computing and Communication Technologies, 2, 88-97.
45. Nair, TR Gopalakrishnan, and V. Suma. "A paradigm for metric based inspection process for enhancing defect management." ACM SIGSOFT Software Engineering Notes 35, no. 3 (2010): 1.
46. Polamarasetti, S. (2021). Evaluating the Effectiveness of Prompt Engineering in Salesforce Prompt Studio. International Journal of Emerging Trends in Computer Science and Information Technology, 2(3), 96-103.
47. Ramadugu, G. (2021). Digital Banking: A Blueprint for Modernizing Legacy Systems. International Journal on Recent and Innovation Trends in Computing and Communication, 47-52.
48. Ramadugu, G. (2021). Continuous Integration and Delivery in Cloud-Native Environments: Best Practices for Large-Scale Saas Migrations. International Journal of Communication Networks and Information Security (IJCNIS), 13(1), 246-254.
49. Suma, V. (2021). Community based network reconstruction for an evolutionary algorithm framework. Journal of Artificial Intelligence, 3(01), 53-61.
50. Rajoria, N. V., & Menaria, A. K. Numerical Approach of Fractional Integral Operators on Heat Flux and Temperature Distribution in Solid.
51. Polamarasetti, S. (2022). Using Machine Learning for Intelligent Case Routing in Salesforce Service Cloud. International Journal of AI, BigData, Computational and Management Studies, 3(1), 109-113.
52. Polamarasetti, S. (2021). Enhancing CRM Accuracy Using Large Language Models (LLMs) in Salesforce Einstein GPT. International Journal of Emerging Trends in Computer Science and Information Technology, 2(4), 81-85.
53. Polamarasetti, S. (2022). Building Trustworthy AI in Salesforce: An Ethical and Governance Framework. International Journal of AI, BigData, Computational and Management Studies, 3(2), 99-103.
54. Ramadugu, G. (2022). Scaling Software Development Teams: Best Practices for Managing Cross-Functional Teams in Global Software Projects. International Journal of Communication Networks and Information Security (IJCNIS), 14(3), 766-775.





