Optimizing Talent Management in Cloud-Based HCM Systems: Leveraging Machine Learning for Personalized Employee Development Programs

Optimizing Talent Management in Cloud-Based HCM Systems: Leveraging Machine Learning for Personalized Employee Development Programs

Authors

  • Gunaseelan Namperumal ERP Analysts Inc, USA
  • Akila Selvaraj iQi Inc, USA
  • Priya Ranjan Parida Universal Music Group, USA

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Keywords:

cloud-based HCM, talent managemen

Abstract

The rapid evolution of cloud-based Human Capital Management (HCM) systems has significantly transformed the way organizations manage their talent, shifting from traditional static approaches to dynamic and data-driven methods. This research delves into the optimization of talent management processes within cloud-based HCM solutions by leveraging machine learning algorithms to develop personalized employee development programs. The paper explores the capabilities of machine learning in analyzing vast amounts of employee data, enabling the prediction of skill gaps, and identifying personalized training and development needs. The integration of predictive analytics and artificial intelligence within cloud-based HCM systems enhances the effectiveness of talent management strategies, ensuring a more tailored approach to employee development, skill assessment, and career progression planning.

The study examines the architecture and functionalities of modern cloud-based HCM systems, highlighting their role as centralized platforms that facilitate data-driven decision-making for human resources (HR) departments in large organizations. By incorporating machine learning techniques, these systems can analyze historical employee performance data, monitor key performance indicators (KPIs), and provide actionable insights for developing personalized learning and development programs. Specifically, the research discusses various machine learning models such as decision trees, random forests, and deep learning algorithms that are utilized to process employee data to predict potential career paths, recommend relevant training modules, and identify high-potential employees for leadership roles. Additionally, the study underscores the importance of integrating employee feedback mechanisms and real-time performance monitoring to dynamically adjust development programs based on evolving employee needs and organizational goals.

This paper also explores the technical challenges associated with implementing machine learning algorithms in cloud-based HCM systems, including data privacy, data integration, and the scalability of machine learning models in handling large-scale employee datasets. It discusses the necessity for robust data governance frameworks and data encryption methods to ensure the confidentiality and integrity of sensitive employee information. The research further evaluates the computational efficiency of cloud-based solutions in executing complex machine learning algorithms and the role of cloud computing infrastructure in enhancing processing speed, storage, and accessibility. Case studies from leading organizations are presented to demonstrate the practical application and benefits of machine learning-driven HCM systems in optimizing talent management, highlighting improved employee engagement, retention, and overall organizational performance.

The study also provides a comparative analysis of traditional and machine learning-driven approaches to talent management, demonstrating how machine learning models significantly outperform manual and rule-based methods in terms of accuracy, adaptability, and scalability. The potential for cloud-based HCM systems to evolve into comprehensive, AI-driven talent ecosystems is discussed, with a focus on continuous learning, development, and career growth opportunities for employees. The research emphasizes the critical role of machine learning in facilitating a culture of continuous improvement and agility within organizations by enabling real-time analysis and optimization of talent management strategies.

Future research directions identified in this paper include the exploration of advanced machine learning techniques such as reinforcement learning and natural language processing (NLP) for more sophisticated talent analytics, the development of hybrid models that combine supervised and unsupervised learning for more accurate employee profiling, and the integration of external data sources to enhance predictive capabilities. Furthermore, the paper suggests the need for cross-disciplinary collaboration between HR professionals, data scientists, and cloud solution architects to design and implement machine learning algorithms that align with both technological advancements and organizational objectives.

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Published

09-11-2022

How to Cite

Gunaseelan Namperumal, Akila Selvaraj, and Priya Ranjan Parida. “Optimizing Talent Management in Cloud-Based HCM Systems: Leveraging Machine Learning for Personalized Employee Development Programs”. Journal of Science & Technology, vol. 3, no. 6, Nov. 2022, pp. 1-42, https://thesciencebrigade.com/jst/article/view/381.
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