OSAISEApr 1, 2024

AIOps Solutions for Incident Management: Technical Guidelines and A Comprehensive Literature Review

arXiv:2404.01363v113 citationsh-index: 20
Originality Synthesis-oriented
AI Analysis

It addresses the problem of decentralized and inconsistent frameworks in AIOps for IT operations teams, but it is incremental as it organizes existing knowledge rather than introducing new methods.

This study tackles the lack of standardization in AIOps for incident management by proposing a terminology, taxonomy, and structured procedure, providing a comprehensive literature review to categorize contributions and identify gaps.

The management of modern IT systems poses unique challenges, necessitating scalability, reliability, and efficiency in handling extensive data streams. Traditional methods, reliant on manual tasks and rule-based approaches, prove inefficient for the substantial data volumes and alerts generated by IT systems. Artificial Intelligence for Operating Systems (AIOps) has emerged as a solution, leveraging advanced analytics like machine learning and big data to enhance incident management. AIOps detects and predicts incidents, identifies root causes, and automates healing actions, improving quality and reducing operational costs. However, despite its potential, the AIOps domain is still in its early stages, decentralized across multiple sectors, and lacking standardized conventions. Research and industrial contributions are distributed without consistent frameworks for data management, target problems, implementation details, requirements, and capabilities. This study proposes an AIOps terminology and taxonomy, establishing a structured incident management procedure and providing guidelines for constructing an AIOps framework. The research also categorizes contributions based on criteria such as incident management tasks, application areas, data sources, and technical approaches. The goal is to provide a comprehensive review of technical and research aspects in AIOps for incident management, aiming to structure knowledge, identify gaps, and establish a foundation for future developments in the field.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes