A Predictive HR Analytics Model Integrating Computing and Data Science to Optimize Workforce Productivity Globally
  • Author(s): Mayokun Oluwabukola Aduwo ; Adaobi Beverly Akonobi ; Christiana Onyinyechi Okpokwu
  • Paper ID: 1710388
  • Page: 798-821
  • Published Date: 31-08-2019
  • Published In: Iconic Research And Engineering Journals
  • Publisher: IRE Journals
  • e-ISSN: 2456-8880
  • Volume/Issue: Volume 3 Issue 2 August-2019
Abstract

The rapid evolution of digital technologies and the increasing availability of workforce data have created unprecedented opportunities for organizations to leverage predictive analytics in human resource management. This study presents a comprehensive predictive HR analytics model that integrates advanced computing techniques and data science methodologies to optimize workforce productivity on a global scale. The research addresses the critical need for evidence-based decision-making in human capital management by developing a framework that combines machine learning algorithms, statistical modeling, and big data analytics to predict employee performance, retention, and engagement patterns across diverse organizational contexts. The proposed model incorporates multiple data sources including employee demographics, performance metrics, engagement surveys, learning and development records, and external labor market indicators to create a holistic view of workforce dynamics. Through the application of ensemble learning techniques, natural language processing for sentiment analysis of employee feedback, and time-series forecasting methods, the model demonstrates significant improvements in predicting key HR outcomes compared to traditional analytical approaches. The framework addresses challenges related to data quality, privacy concerns, and cross-cultural variations in workforce behavior while maintaining scalability for global implementation. Empirical validation of the model across multiple industry sectors reveals substantial enhancements in recruitment efficiency, employee retention rates, and overall productivity metrics. The study demonstrates that organizations implementing this predictive analytics framework experience an average of 23% improvement in talent acquisition accuracy, 31% reduction in voluntary turnover, and 18% increase in employee engagement scores. Furthermore, the model's capability to identify high-potential employees and predict skill gaps enables proactive workforce planning and strategic talent development initiatives. The research contributes to the growing body of knowledge in HR analytics by providing a practical, scalable solution that bridges the gap between theoretical data science concepts and real-world human resource challenges. The findings suggest that strategic integration of predictive analytics in HR processes not only enhances operational efficiency but also drives sustainable competitive advantage through optimized human capital utilization. The model's adaptability to different organizational cultures and regulatory environments makes it particularly valuable for multinational corporations seeking to standardize their talent management practices while respecting local market conditions. This comprehensive approach to HR analytics represents a significant advancement in the field, offering organizations a data-driven foundation for strategic workforce decisions. The study's implications extend beyond immediate operational benefits, contributing to the broader understanding of how advanced analytics can transform human resource management in the digital age. Future research directions include exploring the integration of artificial intelligence and blockchain technologies to further enhance the model's predictive capabilities and data security features.

Keywords

Predictive Analytics, Human Resources, Workforce Optimization, Data Science, Machine Learning, Employee Performance, Talent Management, Big Data, Organizational Productivity, Global Workforce

Citations

IRE Journals:
Mayokun Oluwabukola Aduwo , Adaobi Beverly Akonobi , Christiana Onyinyechi Okpokwu "A Predictive HR Analytics Model Integrating Computing and Data Science to Optimize Workforce Productivity Globally" Iconic Research And Engineering Journals Volume 3 Issue 2 2019 Page 798-821

IEEE:
Mayokun Oluwabukola Aduwo , Adaobi Beverly Akonobi , Christiana Onyinyechi Okpokwu "A Predictive HR Analytics Model Integrating Computing and Data Science to Optimize Workforce Productivity Globally" Iconic Research And Engineering Journals, 3(2)