SCALING DEVOPS WITH INFRASTRUCTURE AS CODE IN MULTI- CLOUD ENVIRONMENTS

Main Article Content

Vinodh Gunnam
Naresh Babu Kilaru
Sai Krishna Manohar Cheemakurthi

Abstract

In the dynamic environment of contemporary cloud technologies, combining DevOps with such technologies as IaC is critical. This report looks at DevOps in multi-cloud setup, focusing on IaC as part of the DevOps' Pillars.' Catering for extensive DevOps adoption across different clouds, the discussion in this paper reveals the value of large-scale DevOps through reports based on simulated real-life scenarios and situations. The main findings reveal that IaC positively improves operationality, reliability and agility in the cycle process. But at the same time, it brings additional issues connected to the problem of cloud compatibility, safety, and the issue of cloud management. Thus, this report outlines recurrent problems and provides realistic recommendations to tackle such difficulties and maintain trustworthy and efficient DevOps when using multiple clouds. Through the enablement of IaC, organizations shall experience enhanced efficiency in day-to-day operations and float consolidation of development and operations teams, which, in the long run, create competitiveness in the cloud computing discourse.


 

Downloads

Download data is not yet available.

Metrics

Metrics Loading ...

Article Details

How to Cite
Gunnam, V. G., Kilaru, N. B., & Cheemakurthi, S. K. M. . (2022). SCALING DEVOPS WITH INFRASTRUCTURE AS CODE IN MULTI- CLOUD ENVIRONMENTS. Turkish Journal of Computer and Mathematics Education (TURCOMAT), 13(2), 1189–1200. https://doi.org/10.61841/turcomat.v13i2.14764
Section
Research Articles

References

Jangampeta, S., Mallreddy, S.R., & Padamati, J.R. (2021). Anomaly Detection for Data Security in SIEM: Identifying Malicious Activity in Security Logs and User Sessions. 10(12), 295-298

Jangampeta, S., Mallreddy, S.R., & Padamati, J.R. (2021). Data security: Safeguardingthe digital lifeline in an era of growing threats. 10(4), 630-632

Sukender Reddy Mallreddy(2020).Cloud Data Security: Identifying Challenges and Implementing Solutions. Journal for Educators, TeachersandTrainers,Vol.11(1).96 -102.

Venkata Phanindra Peta, Venkata Praveen Kumar KaluvaKuri & Sai Krishna Reddy Khambam. (2021). "Smart AI Systems for Monitoring Database Pool Connections: Intelligent AI/ML Monitoring and Remediation of Database Pool Connection Anomalies in Enterprise Applications." REVUE EUROPEENNE D ETUDES EUROPEAN JOURNAL OF MILITARU STUDES, 11(1), 349-359

Venkata Praveen Kumar Kaluvakuri, Sai Krishna Reddy Khambam, Venkata Phanindra Peta. ( 2021). "Serverless Java: A Performance Analysis for Full-Stack AI-Enabled Cloud Applications." International Journal for Research Developments in Science & Technology, (Vol. 5, Issue 5, 157–159).

Nunnaguppala, L. S. C. , Sayyaparaju, K. K., & Padamati, J. R.. (2021). "Securing The Cloud: Automating Threat Detection with SIEM, Artificial Intelligence & Machine Learning", International Journal For Advanced Research In Science & Technology, Vol 11 No 3, 385-392

Padamati, J., Nunnaguppala, L., & Sayyaparaju, K. . (2021). "Evolving Beyond Patching: A Framework for Continuous Vulnerability Management", Journal for Educators, Teachers and Trainers, 12(2), 185-193.

Nunnaguppala, L. S. C. . (2021). "Leveraging AI In Cloud SIEM And SOAR: Real- World Applications For Enhancing SOC And IRT Effectiveness", International Journal for Innovative Engineering and Management Research,10(08), 376-393

Padamati, J. R.. (2021). "DevOps on Warp Drive: Accelerating Delivery with AI Powered Cloud Pipelines", International Journal for Innovative Engineering and Management Research, 10(08), 394-405

Sayyaparaju, K. K., Nunnaguppala, L. S. C. , & Padamati, J. R.. (2021). "Building SecureAI/ML Pipelines: Cloud Data Engineering for Compliance and Vulnerability Management", International Journal for Innovative Engineering and Management Research,10(10), 330-340

Venkata Praveen Kumar Kaluvakuri, Sai Krishna Reddy Khambam, Venkata Phanindra Peta. (2021). "AI-Powered Predictive Thread Deadlock Resolution: An Intelligent System for Early Detection and Prevention of Thread Deadlocks in Cloud Applications." International Journal for Innovative Engineering and Management Research, (Vol. 10, Issue-9, 622-640 )