Integrating Predictive Analytics for Workforce Planning
Main Article Content
Abstract
Workforce planning helps in aligning human resources with the goals of an organization; accordingly, the present era’s marketing scenario needs widespread workforce planning. In this article, we examine the roles of predictive analytics in marketing workforce planning and offer recommendations for optimizing resource allocation and effective decision-making. The research builds and validates predictive models that help forecast workforce demand, personnel supply-skill gaps, and cost-efficiency using machine learning algorithms and statistical forecasting techniques. The paper takes advantage of real-world historical workforce data from different marketing organizations. The results show that predictive analytics enhance operational efficiency in tackling the under and overstaffing problems and utilizing resources more efficiently.
For practitioners, the research provides marketing managers with data-driven insights for managerial decisions regarding the hiring and training of the workforce, as well as the allocation of marketing resources so that they can proactively match market demands with their human capital. From a strategic angle, predictive modeling promotes flexibility against changes in operation for success. While predictive analytics has been applied to human resource management, this study contributes to the literature by examining a new domain of marketing workforce planning that has more unique dynamics and exigencies than other types of human resources. Their results fill an important gap between theory and practice by providing targeted recommendations for both academia and industry.