Sakhamuri, Naga Sai Bandhavi (2025) AIOps-driven adaptive observability framework for cloud-native applications. World Journal of Advanced Engineering Technology and Sciences, 15 (2). pp. 1774-1782. ISSN 2582-8266
![WJAETS-2025-0724.pdf [thumbnail of WJAETS-2025-0724.pdf]](https://eprint.scholarsrepository.com/style/images/fileicons/text.png)
WJAETS-2025-0724.pdf - Published Version
Available under License Creative Commons Attribution Non-commercial Share Alike.
Abstract
The emergence of cloud-native architectures has fundamentally transformed how applications are developed and deployed, bringing unprecedented complexity to monitoring and troubleshooting processes. Traditional observability approaches that rely on static thresholds and manual correlation prove inadequate in dynamic environments where microservices communicate through various protocols, creating exponential interaction paths. This document introduces an AIOps-driven Adaptive Observability Framework specifically designed for cloud-native environments, addressing critical challenges including distributed system complexity, static instrumentation limitations, signal-to-noise ratio problems, and resource constraints. The framework leverages advanced machine learning techniques such as transformer architectures and autoencoder-based anomaly detection to dynamically adjust observability granularity based on real-time predictions and detected anomalies. Comprising four core components—Telemetry Collection Layer, ML Processing Pipeline, Adaptive Intelligence Core, and Orchestration Layer—the system operates as a continuous feedback loop that learns from observed behaviors. Implementation across diverse production environments demonstrates substantial improvements in detection accuracy, prediction capabilities, root cause identification, resource utilization, and resolution times. Case studies from e-commerce and financial services sectors validate the framework's effectiveness in enhancing operational efficiency while reducing observability costs.
Item Type: | Article |
---|---|
Official URL: | https://doi.org/10.30574/wjaets.2025.15.2.0724 |
Uncontrolled Keywords: | Adaptive Observability; AIOps; Cloud-Native; Dynamic Instrumentation; Causal Inference |
Depositing User: | Editor Engineering Section |
Date Deposited: | 04 Aug 2025 16:30 |
Related URLs: | |
URI: | https://eprint.scholarsrepository.com/id/eprint/3898 |