Affiliation:
1. Kongu Engineering College, India
2. Sri Vasavi College, India
3. Amrita School of Agricultural Sciences, India
4. Ujjivan Small Finance Bank, India
Abstract
This chapter explores the intersection of human resources management and cutting-edge technology in the realm of public space security. In an era where safety concerns are paramount, the integration of generative adversarial networks (GANs) into human resources strategies presents a novel and powerful approach to optimizing workforce efficiency. The chapter delves into the conceptualization, implementation, and impact of leveraging GANs in human resource practices to enhance public safety. The discussion begins by providing a comprehensive overview of the challenges faced in securing public spaces and highlights the evolving role of human resources in addressing these challenges. Drawing from real-world examples and case studies, the chapter illustrates how GANs, with their ability to generate realistic data and simulate complex scenarios, can be instrumental in refining the selection, training, and deployment of security personnel. Furthermore, the chapter explores the ethical considerations and potential pitfalls associated with the integration of GANs in human resources practices.
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