Hi, how can I help you?: Automating enterprise IT support help desks
Senthil Mani, Neelamadhav Gantayat, Rahul Aralikatte, Monika Gupta,, Sampath Dechu, Anush Sankaran, Shreya Khare, Barry Mitchell, Hemamalini, Subramanian, Hema Venkatarangan

TL;DR
This paper presents a hybrid question answering system for enterprise IT support that integrates deep learning, knowledge graphs, and search techniques, enabling scalable, context-aware assistance across heterogeneous data sources.
Contribution
It introduces a novel hybrid model and a cognitive platform tailored for enterprise IT support, capable of handling diverse answer types and seamlessly involving human experts when needed.
Findings
Deployed across 675 enterprise projects.
Achieved effective context disambiguation and answer confidence.
System handles diverse data sources and answer types.
Abstract
Question answering is one of the primary challenges of natural language understanding. In realizing such a system, providing complex long answers to questions is a challenging task as opposed to factoid answering as the former needs context disambiguation. The different methods explored in the literature can be broadly classified into three categories namely: 1) classification based, 2) knowledge graph based and 3) retrieval based. Individually, none of them address the need of an enterprise wide assistance system for an IT support and maintenance domain. In this domain the variance of answers is large ranging from factoid to structured operating procedures; the knowledge is present across heterogeneous data sources like application specific documentation, ticket management systems and any single technique for a general purpose assistance is unable to scale for such a landscape. To…
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