Litcius/Paper detail

DataOps for Societal Intelligence: a Data Pipeline for Labor Market Skills Extraction and Matching

Damian A. Tamburri, Willem-Jan Van Den Heuvel, Martin Garriga

202019 citationsDOIOpen Access PDF

Abstract

Big Data analytics supported by AI algorithms enable skills localization and retrieval, in the context of a labor market intelligence problem. We formulate and solve this problem through specific DataOps models, blending data sources from administrative and technical partners in several countries into cooperation, creating shared knowledge to support policy and decision-making. We then focus on the critical task of skills extraction from resumes and vacancies featuring state-of-the-art machine learning models. We showcase preliminary results with applied machine learning on real data from the employment agencies of the Netherlands and the Flemish region in Belgium. The final goal is to match these skills to standard ontologies of skills, jobs and occupations.

Topics & Concepts

Pipeline (software)Matching (statistics)Computer scienceTask (project management)Context (archaeology)FlemishBig dataData scienceAnalyticsArtificial intelligenceKnowledge managementFocus (optics)Market intelligenceOutsourcingMachine learningData integrationBusiness intelligenceData analysisKnowledge extractionOperations researchPlan (archaeology)Data extractionRecommender Systems and TechniquesData Quality and ManagementData Mining Algorithms and Applications