AI-Driven Workforce Planning: Predictive Models for Future Talent Needs, by Jonathan H. Westover PhD
Description
Abstract: Organizations increasingly deploy artificial intelligence to anticipate workforce requirements, moving beyond reactive headcount management toward predictive talent architecture. This article examines how AI-driven workforce planning systems combine machine learning, organizational data, and external labor market signals to forecast skill gaps, succession risks, and capacity constraints. Drawing on recent empirical studies and practitioner cases across technology, healthcare, and manufacturing sectors, the analysis identifies evidence-based implementation strategies including data infrastructure development, algorithm transparency protocols, and human-centered design principles. The article synthesizes organizational performance outcomes—ranging from reduced time-to-hire to improved diversity metrics—alongside emerging governance challenges surrounding algorithmic bias and employee privacy. Forward-looking recommendations emphasize the integration of predictive workforce analytics within broader talent ecosystems, the cultivation of internal analytics capability, and the establishment of ethical guardrails that balance optimization with human dignity.
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