This paper introduces a novel generative artificial intelligence workbench specifically tailored to the field of safety sciences. Utilizing large language models (LLMs), this innovative approach significantly diverges from traditional methods by enabling the rapid development, refinement, and preliminary testing of new safety methodologies. Traditional techniques in this field typically depend on slow, iterative cycles of empirical data collection and analysis, which can be both time-intensive and costly. In contrast, our LLM-based workbench leverages synthetic data generation and advanced prompt engineering to simulate complex safety scenarios and generate diverse, realistic data sets on demand. This capability allows for more flexible and accelerated experimentation, enhancing the efficiency and scalability of safety science research. By detailing an application case, we demonstrate the practical implementation and advantages of our framework, such as its ability to adapt quickly to evolving safety requirements and its potential to significantly cut down development time and resources. The introduction of this workbench represents a paradigm shift in safety methodology development, offering a potent tool that combines the theoretical rigor of traditional methods with the agility of modern AI technologies.

A generative Artificial-Intelligence-based workbench to test new methodologies in organisational health and safety / Falegnami, Andrea; Tomassi, Andrea; Corbelli, Giuseppe; Nucci, Francesco; Romano, Elpidio. - In: APPLIED SCIENCES. - ISSN 2076-3417. - 14:24(2024). [10.3390/app142411586]

A generative Artificial-Intelligence-based workbench to test new methodologies in organisational health and safety

Falegnami, Andrea
;
Tomassi, Andrea;Corbelli, Giuseppe;
2024

Abstract

This paper introduces a novel generative artificial intelligence workbench specifically tailored to the field of safety sciences. Utilizing large language models (LLMs), this innovative approach significantly diverges from traditional methods by enabling the rapid development, refinement, and preliminary testing of new safety methodologies. Traditional techniques in this field typically depend on slow, iterative cycles of empirical data collection and analysis, which can be both time-intensive and costly. In contrast, our LLM-based workbench leverages synthetic data generation and advanced prompt engineering to simulate complex safety scenarios and generate diverse, realistic data sets on demand. This capability allows for more flexible and accelerated experimentation, enhancing the efficiency and scalability of safety science research. By detailing an application case, we demonstrate the practical implementation and advantages of our framework, such as its ability to adapt quickly to evolving safety requirements and its potential to significantly cut down development time and resources. The introduction of this workbench represents a paradigm shift in safety methodology development, offering a potent tool that combines the theoretical rigor of traditional methods with the agility of modern AI technologies.
2024
OHS; ChatGPT; AI; chain of thought; complexity; design science research; methodology design
01 Pubblicazione su rivista::01a Articolo in rivista
A generative Artificial-Intelligence-based workbench to test new methodologies in organisational health and safety / Falegnami, Andrea; Tomassi, Andrea; Corbelli, Giuseppe; Nucci, Francesco; Romano, Elpidio. - In: APPLIED SCIENCES. - ISSN 2076-3417. - 14:24(2024). [10.3390/app142411586]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/1735557
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