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Published January 13, 2024 | Version v1
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Evaluating the Social Impact of AI in Manufacturing: A Methodological Framework for Ethical Production

  • 1. Independent Research

Description

At a time when artificial intelligence (AI) is transforming the manufacturing landscape, it is important to understand its impact on society. This paper presents a comprehensive framework for evaluating and ensuring the ethical production of AI in an integrated manufacturing environment.By taking an in-depth look at the impact of AI on the workforce, economic dynamics, and ethical issues, this study highlights the need for a balanced approach that both drives technological progress and embraces social responsibility. Using case studies and participatory methods, this study aims to explore the practical application of ethical codes in different manufacturing environments. The findings suggest a range of policy recommendations and regulatory strategies to drive responsible AI integration in manufacturing.

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References

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