DeepAI AI Chat
Log In Sign Up

A Systematic Mapping Study in AIOps

12/15/2020
by   Paolo Notaro, et al.
0

IT systems of today are becoming larger and more complex, rendering their human supervision more difficult. Artificial Intelligence for IT Operations (AIOps) has been proposed to tackle modern IT administration challenges thanks to AI and Big Data. However, past AIOps contributions are scattered, unorganized and missing a common terminology convention, which renders their discovery and comparison impractical. In this work, we conduct an in-depth mapping study to collect and organize the numerous scattered contributions to AIOps in a unique reference index. We create an AIOps taxonomy to build a foundation for future contributions and allow an efficient comparison of AIOps papers treating similar problems. We investigate temporal trends and classify AIOps contributions based on the choice of algorithms, data sources and the target components. Our results show a recent and growing interest towards AIOps, specifically to those contributions treating failure-related tasks (62

READ FULL TEXT

page 1

page 2

page 3

page 4

11/07/2022

Proceedings of Principle and practice of data and Knowledge Acquisition Workshop 2022 (PKAW 2022)

Over the past two decades, PKAW has provided a forum for researchers and...
09/19/2018

The Key Concepts of Ethics of Artificial Intelligence - A Keyword based Systematic Mapping Study

The growing influence and decision-making capacities of Autonomous syste...
06/18/2022

Robin Milner's Work on Concurrency: An Appreciation

We give a short appreciation of Robin Milner's seminal contributions to ...
09/26/2019

Admiring the Great Mountain: A Celebration Special Issue in Honor of Stephen Grossbergs 80th Birthday

This editorial summarizes selected key contributions of Prof. Stephen Gr...
09/18/2021

Multimodal Classification: Current Landscape, Taxonomy and Future Directions

Multimodal classification research has been gaining popularity in many d...