AI-Powered Safety Compliance Frameworks: Aligning Workplace Security with National Safety Goals
Keywords:
AI-powered safety, compliance frameworks, workplace security, deep learning, predictive analyticsAbstract
By integrating advanced deep learning models with national safety priorities plays a crucial role in workplace security which is enhanced by AI-powered safety compliance frameworks. The objective of this paper is to presents a comprehensive framework for aligning AI-driven safety compliance systems with the regulatory standards established by the Occupational Safety and Health Administration (OSHA) and the National Safety Council (NSC).
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References
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