The Future of Site Reliability Engineering: AI-Driven Observability and Autonomous Operations in Multi-Cloud Environments

Authors

  • Srichandra Boosa Senior Associate at Vertify & Proinkfluence IT Solutions Pvt Ltd, India. Author

DOI:

https://doi.org/10.63282/3050-9246.IJETCSIT-V5I2P122

Keywords:

Site Reliability Engineering (SRE), Artificial Intelligence, Aiops, Observability, Autonomous Operations, Multi-Cloud Computing, Cloud Reliability, Machine Learning, Incident Management, Predictive Analytics, Devops, Cloud Native Systems

Abstract

SRE has come a long way since its start, from monitoring infrastructure health to reactive events. Modern SRE is an AI-driven observability platform providing real-time visibility into complex distributed systems. As multi-cloud use grows, operational complexity increases and it becomes increasingly complicated to provide dependability, performance and security across a broad range of cloud platforms. Artificial Intelligence (AI), Machine Learning (ML) and AIOps technologies are changing Service Availability and Incident Response (SRE) with intelligent anomaly detection, predictive analytics, automated root-cause investigation and autonomous remediation in response to such. The effort aims at investigating the future of service-oriented architecture (SRE) in the age of AI-based observability and autonomous operations in multi-cloud environments. Through a review of current technologies, industry practice and upcoming trends in research. The objective of this research is to investigate the viability of the application of AI-based solutions to enhance system dependability, minimize operational overhead and optimize incident response efficiency. The study will also address issues of scalability, interoperability and governance. The results indicate that AI and ML in observability systems can deliver automated operational workflows that help enable proactive reliability management, minimize downtime and accelerate decision making. This makes AIOps powered autonomous operations a rapidly growing important enabler for cloud native infrastructures with self repairing systems. This paper describes the convergence of AI with software defined networking (SRE) and strategic implications for enterprises seeking strong, scalable and efficient cloud operations. The results show intelligent automation is becoming more important in shaping the future of cloud-native reliability management and operational excellence.

Downloads

Download data is not yet available.

References

[1] Sikha, V. K. (2023). The SRE Playbook: Multi-Cloud Observability, Security, and Automation (Vol. 2, No. 2, pp. 2-7). SRC/JAICC-136. Journal of Artificial Intelligence & Cloud Computing DOI: doi. org/10.47363/JAICC/2023 (2) E136 J Arti Inte & Cloud Comp.

[2] Jangala, V. K. (2020). Monitoring and observability tools for cloud-based enterprise systems. International Journal of Trend in Research and Development, 7(2), 311-317.

[3] Gaddam, R. R. (2023). Progressive Delivery for Models with Quality KPIs. American International Journal of Computer Science and Technology, 5(4), 33-47. https://doi.org/10.63282/3117-5481/AIJCST-V5I4P104

[4] Vppalapati, M., & Talasila, P. K. (2023). Unobservable Performance: Storage Failures That Leave No Metrics Behind. International Journal of Artificial Intelligence, Data Science, and Machine Learning, 4(4), 177-188. https://doi.org/10.63282/3050-9262.IJAIDSML-V4I4P120

[5] Thota, M. R. (2016). Resilient Data Engineering: The Evolution of Database and Big Data Administration in Cloud-Native Platforms. European Journal of Advances in Engineering and Technology, 3(12), 63-69.

[6] Katangoori, Sivadeep, and Anudeep Katangoori. "Intelligent ETL Orchestration with Reinforcement Learning and Bayesian Optimization." American Journal of Data Science and Artificial Intelligence Innovations 3 (2023): 458-488.

[7] Kumar Doodala, A. N., Thatraju, S., & Kankanala, V. (2023). Post- Pandemic QA evolution in Healthcare IT. International Journal of Emerging Trends in Computer Science and Information Technology, 4(2), 223-232. https://doi.org/10.63282/3050-9246.IJETCSIT-V4I2P122

[8] Mohammed, S., & Polamarasetty, V. K. (2021). Enterprise multi-cloud transformation and managed services modernization. International Journal of Engineering & Extended Technologies Research (IJEETR), 3(5), 3725-3729.

[9] Allenki, S. S. (2023). Reducing Security Vulnerabilities with Encryption, IAM, and Regular Audits. International Journal of Emerging Trends in Computer Science and Information Technology, 4(1), 265-275. https://doi.org/10.63282/3050-9246.IJETCSIT-V4I1P127

[10] Kulkarni, S. (2021). Performance and Reliability Engineering in Cloud-Native Architectures.

[11] Vppalapati, M. (2023). When Identity Decisions Throttle Data Movement. International Journal of Emerging Research in Engineering and Technology, 4(3), 160-170. https://doi.org/10.63282/3050-922X.IJERET-V4I3P117

[12] Allam, H. (2023). Declarative Operations: GitOps in Large-Scale Production Systems. International Journal of Emerging Trends in Computer Science and Information Technology, 4(2), 68-77. https://doi.org/10.63282/3050-9246.IJETCSIT-V4I2P108

[13] Muppaneni, K. (2021). HTTP/3 & REST Latency Improvement. International Journal of Emerging Research in Engineering and Technology, 2(1), 122-132. https://doi.org/10.63282/3050-922X.IJERET-V2I1P113

[14] Gaddam, R. R., & Krishna, K. (2023). KFP v2 Artifact-Centric ML Pipeline Governance. International Journal of Artificial Intelligence, Data Science, and Machine Learning, 4(2), 142-153. https://doi.org/10.63282/3050-9262.IJAIDSML-V4I2P116

[15] Padur, S. K. R. (2020). AI augmented disaster recovery simulations: From chaos engineering to autonomous resilience orchestration. International Journal of Scientific Research in Science, Engineering and Technology, 7(6), 367-378.

[16] Katangoori, Sivadeep, and Anudeep Katangoori. "Data-Centric AI in the Era of Large Volumes: Improving Model Outcomes through Data Quality Engineering." American Journal of Data Science and Artificial Intelligence Innovations 3 (2023): 430-457.

[17] Parakala, A. (2023). Citizen-Facing Automation: Chatbots and Self-Service in Public Services. International Journal of AI, BigData, Computational and Management Studies, 4(4), 108-118. https://doi.org/10.63282/3050-9416.IJAIBDCMS-V4I4P112

[18] Rana, K. M. (2019). The Impact of Cloud-Native Observability Platforms on Service Performance Visibility.

[19] Shiramalla, R. (2023). Optimizing Cross-Platform Enterprise Integrations Using Workato: A Case Study of Salesforce and Oracle SaaS Applications. International Journal of Emerging Trends in Computer Science and Information Technology, 4(1), 232-243. https://doi.org/10.63282/3050-9246.IJETCSIT-V4I1P124

[20] Srigadde, B. R. (2023). Creating Object Quick Actions with Lightning Web Components. International Journal of Artificial Intelligence, Data Science, and Machine Learning, 4(2), 167-180. https://doi.org/10.63282/3050-9262.IJAIDSML-V4I2P118

[21] Anderson, F. (2003). Systems Engineering in the Transformed South African Defence Evaluation and Research Institutes.

[22] Suryadevara, S. S. K., & Shaik, K. (2023). Real-Time Anomaly Detection and Attack Mitigation for Cloud-Based Content Delivery Paths Using AI. International Journal of Emerging Research in Engineering and Technology, 4(1), 175-185. https://doi.org/10.63282/3050-922X.IJERET-V4I1P119

[23] Muppaneni, K. (2021). Cross-Browser Debugging Strategies. American International Journal of Computer Science and Technology, 3(5), 25-36. https://doi.org/10.63282/3117-5481/AIJCST-V3I5P103

[24] Mutyam, N. (2023). A Hybrid Machine Learning and Control-Theoretic Framework for Stability-Assured Resource Management in Large-Scale Cloud Computing Environments. International Journal of Emerging Research in Engineering and Technology, 4(4), 198-207. https://doi.org/10.63282/3050-922X.IJERET-V4I4P122

[25] Muppaneni, R. K. (2023). AI-Driven Forecasting in Dynamics 365 Sales: What Businesses Need to Know. International Journal of AI, BigData, Computational and Management Studies, 4(1), 168-176. https://doi.org/10.63282/3050-9416.IJAIBDCMS-V4I1P117

[26] Kumar Doodala, A. N. (2023). Offline-First Android Architecture for waste management in low connectivity zones. International Journal of Emerging Trends in Computer Science and Information Technology, 4(1), 201-209. https://doi.org/10.63282/3050-9246.IJETCSIT-V4I1P121

[27] Thota, M. R. (2020). AI-Augmented Database Administration: From Reactive Operations to Predictive, Self-Optimizing Data Ecosystems. European Journal of Advances in Engineering and Technology.

[28] Allenki, S. S. (2023). Applying Cloud Security Best Practices in Regulated Environments. American International Journal of Computer Science and Technology, 5(3), 48-60. https://doi.org/10.63282/3117-5481/AIJCST-V5I3P105

[29] Takkalapally, D., & Takkellapally, M. R. (2023). AdaptCacheAI: Adaptive Hybrid Caching with Machine-Learned Eviction for Dynamic Cloud Workloads. International Journal of Emerging Research in Engineering and Technology, 4(1), 165-174. https://doi.org/10.63282/3050-922X.IJERET-V4I1P118

[30] Gangina, P. (2023). Service mesh implementation strategies for zero-downtime migrations in production environments. International Journal of Engineering & Extended Technologies Research (IJEETR), 5(5), 7208-7220.

[31] Muppaneni, R. K. (2023). Low-Code Revolution: How Power Platform Extends Dynamics 365 Capabilities. International Journal of Artificial Intelligence, Data Science, and Machine Learning, 4(3), 162-171. https://doi.org/10.63282/3050-9262.IJAIDSML-V4I3P119

[32] Srigadde, B. R. (2023). The Hidden Gem: Lightning Headless Component. International Journal of Emerging Trends in Computer Science and Information Technology, 4(1), 244-254. https://doi.org/10.63282/3050-9246.IJETCSIT-V4I1P125

[33] Venkata, B. (2022). Cloud Resiliency Engineering: Best Practices for Ensuring High Availability in Multi-Cloud Architectures.

[34] Suryadevara, S. S. K., & Nakirikanti, S. (2023). Privacy-Preserving Personalization Using Federated Learning in AEM . International Journal of AI, BigData, Computational and Management Studies, 4(4), 190-199. https://doi.org/10.63282/3050-9416.IJAIBDCMS-V4I4P119

[35] Parakala, A. (2023). Vendor Highlights – IoT, AI, and Process Mining. International Journal of Emerging Trends in Computer Science and Information Technology, 4(4), 135-146. https://doi.org/10.63282/3050-9246.IJETCSIT-V4I4P115

[36] Mahmood, T. (2023). Cloud-Native Enterprise Engineering: Design, Automation, and Operations.

[37] Takkalapally, D., & Takkellapally, M. R. (2023). GC-TuneHFT: AI-Based Garbage Collection Optimization in High-Frequency Trading Environments. American International Journal of Computer Science and Technology, 5(6), 25-37. https://doi.org/10.63282/3117-5481/AIJCST-V5I6P103

[38] Shiramalla, R. (2022). Predictive Record Assignment Engine in Salesforce using LWC and Einstein AI. International Journal of AI, BigData, Computational and Management Studies, 3(3), 147-159. https://doi.org/10.63282/3050-9416.IJAIBDCMS-V3I3P117

[39] Anderson, D., Bennett, L., Foster, D., Hayes, C., Scott, M., & Krishnan, J. (2022). From incident response to preventive engineering: A systemic approach to eliminating recurring failures in enterprise platforms. International Journal of Science, Engineering and Technology, 10(1).

[40] Veershetty, G. (2023). Risk-adaptive transition and transformation (RATT): A predictive governance framework for SAP cloud migration programs. International Journal of Leading Research Publication, 4(12). https://doi.org/10.70528/IJLRP.v4.i12.2170

Published

2024-06-30

Issue

Section

Articles

How to Cite

1.
Boosa S. The Future of Site Reliability Engineering: AI-Driven Observability and Autonomous Operations in Multi-Cloud Environments. IJETCSIT [Internet]. 2024 Jun. 30 [cited 2026 Jul. 11];5(2):204-1. Available from: https://www.ijetcsit.org/index.php/ijetcsit/article/view/772

Similar Articles

31-40 of 620

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