Litcius/Paper detail

Adapting Foundation Models for Operator Data Analytics

Manikanta Kotaru

202318 citationsDOI

Abstract

The complexity of operator networks and myriad of specialized metrics produced by network function providers present a formidable challenge in retrieving and analyzing operator data, a vital component for network operations. This necessitates specialist intervention, which is time-consuming and limits customization. This paper proposes Data Intelligence for Operators Copilot, a natural language interface for retrieval and analytics tasks on operator data, leveraging foundation models. It addresses the challenges posed by operator data through a novel application of semantic search to effectively provide necessary context regarding specialized metrics. The system has outperformed state-of-the-art natural language interfaces for databases, when applied to an operator-specific benchmark dataset of expert-generated representative queries, with 66% execution accuracy.

Topics & Concepts

Computer scienceOperator (biology)PersonalizationContext (archaeology)Natural languageAnalyticsBenchmark (surveying)Data miningArtificial intelligenceWorld Wide WebGeographyTranscription factorGeodesyGenePaleontologyRepressorBiochemistryBiologyChemistrySemantic Web and OntologiesData Quality and ManagementData Mining Algorithms and Applications