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AI-Driven Data Observability: A Hybrid Approach Using Graph Neural Networks and Bayesian Anomaly Detection

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  • Ranjeet Kumar

  • Mohan Vamsi Musunuru

  • Swaminathan Sethuraman

Abstract

In modern data-intensive enterprises, ensuring reliability, accuracy, and trust in data pipelines is critical for downstream analytics and decision-making. Traditional monitoring systems often struggle to detect complex dependencies and subtle anomalies across distributed data ecosystems, leading to delayed remediation and increased operational risk. This research introduces a hybrid AI-driven data observability framework that combines Graph Neural Networks (GNNs) for structural dependency modeling with Bayesian anomaly detection for probabilistic uncertainty estimation. The proposed approach leverages GNNs to capture high-dimensional relational patterns across datasets, workflows, and metadata, while Bayesian inference provides robust anomaly detection under uncertainty and sparse conditions. Experiments conducted on enterprise-scale synthetic and real-world datasets demonstrate significant improvements in anomaly detection accuracy, early incident identification, and false-positive reduction compared to conventional rule-based and statistical monitoring techniques. By unifying structural learning with probabilistic reasoning, this hybrid framework enhances trust in data pipelines, reduces mean-time-to-detection (MTTD), and ensures resilient data operations. The findings highlight the potential of AI-driven observability as a foundational capability for next-generation data reliability engineering.

Suggested Citation

  • Ranjeet Kumar & Mohan Vamsi Musunuru & Swaminathan Sethuraman, 2024. "AI-Driven Data Observability: A Hybrid Approach Using Graph Neural Networks and Bayesian Anomaly Detection," Journal of Artificial Intelligence General science (JAIGS) ISSN:3006-4023, Open Knowledge, vol. 6(1), pages 634-648.
  • Handle: RePEc:das:njaigs:v:6:y:2024:i:1:p:634-648:id:412
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