Assessment of Human Resource Practices and Employee Performance in Automobile Manufacturing Industry
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https://doi.org/10.58414/SCIENTIFICTEMPER.2026.17.1.19Keywords:
Workforce Dynamics, Qualitative Assessment, HR Strategies, Employee Engagement, Organizational Culture, Job Satisfaction, Manufacturing IndustryDimensions Badge
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Within manufacturing organizations, the efficacy of the workforce directly impacts organizational outcomes, necessitating the implementation of Human Resource (HR) strategies to influence employee performance, commitment and motivation. This investigation evaluates the qualitative experiences of employees with respect to critical HR practices, including talent management, career development initiatives and workplace engagement programs. This research identifies fundamental patterns that emphasize the strengths and limitations of current HR strategies through a thematic analysis of narratives collected from 270 employees. The results indicate that there are new trends in job satisfaction, motivational motivations and employee perceptions of HR policies regarding professional development and career progression. Additionally, HR practitioners and policymakers who are endeavouring to cultivate a motivated and resilient workforce can draw valuable recommendations from insights into employee sentiments regarding organizational culture, corporate leadership and training frameworks. This study contributes to the discourse on sustainable workforce management by emphasizing employee-centric HR interventions, which integrate HR innovations with wider corporate sustainability objectives. The research is particularly pertinent to HR professionals, industry leaders and scholars who specialize in strategic people management in industrial environments, as the results offer actionable strategies for improving HR effectiveness in manufacturing settings. The interview data was analyzed through qualitative and quantitative methods. The interview procedure involved the recording of data, which was subsequently transcribed according to the responses of each participant.Abstract
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