Executive Development Programme in Data-Driven Mining HRM
-- ViewingNowThe Executive Development Programme in Data-Driven Mining HRM is a certificate course designed to provide learners with essential skills for career advancement in the mining industry. This program emphasizes the importance of data-driven decision making in Human Resource Management (HRM) within the mining sector, making it highly relevant and in-demand in today's data-driven world.
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โข Data-Driven HRM Analytics: Understanding the importance of data-driven decision making in Human Resource Management. Introduction to HR metrics, people analytics, and data visualization.
โข Data Collection and Management: Techniques for collecting, cleaning, and managing HR data. Data sources, data quality, and data security.
โข Predictive Analytics in HRM: Introduction to predictive analytics and its applications in HRM. Predictive modeling, machine learning, and artificial intelligence.
โข Talent Acquisition and Analytics: Using data to optimize the recruitment process. Sourcing strategies, talent assessment, and predictive hiring.
โข Employee Engagement and Retention Analytics: Measuring and analyzing employee engagement and retention. Employee surveys, sentiment analysis, and predictive attrition modeling.
โข Performance Management and Analytics: Linking data to employee performance. Performance metrics, goal setting, and performance appraisals.
โข Compensation and Benefits Analytics: Using data to optimize compensation and benefits strategies. Pay equity, total rewards, and benefits administration.
โข Data Storytelling and Communication: Communicating insights from HR data. Data storytelling, data presentation, and data-driven decision making.
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