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Results for "Curriculum-labor market alignment"

An NLP-Driven Framework for Curriculum-Labor Market Alignment: Schema-Constrained LLM Extraction, ESCO-Anchored Semantic Matching, and Multi-Dimensional Gap Quantification

arXiv ·

Researchers proposed a four-stage NLP framework combining schema-constrained LLM extraction, Sentence-BERT (SBERT) alignment with ESCO, an adjudication protocol, and a verification mechanism for curriculum-labor market alignment. The framework was instantiated for the ABET-accredited BSc Computer Science program at the United Arab Emirates University (UAEU), extracting 400 competency records from the study plan and aligning them with 30 job postings. The extractor achieved a Cohen's kappa of 0.79 on the skill slot and surfaced interpretable supply-demand gaps in general, transversal, algorithms, and software engineering skills, with a minimal gap in AI and data science. Why it matters: This framework provides a robust, NLP-driven method to identify crucial skill gaps in higher education curricula, directly supporting quality assurance and workforce development initiatives in the region.

SDAIA launches national data, AI curriculum - Arab News

SDAIA ·

The Saudi Data & AI Authority (SDAIA) has launched a national curriculum focused on data and artificial intelligence. This initiative aims to develop local talent and capabilities across various educational levels within the Kingdom. The curriculum is designed to equip the Saudi workforce with essential skills for the future digital economy. Why it matters: This curriculum represents a strategic effort by Saudi Arabia to build a skilled workforce, crucial for advancing its national AI agenda and diversifying its economy.