Demystifying Ten Big Ideas and Rules Every Fire Scientist & Engineer Should Know About Blackbox, Whitebox & Causal Artificial Intelligence
M.Z. Naser

TL;DR
This paper aims to clarify fundamental AI concepts and misconceptions for fire scientists and engineers, providing a framework to adopt AI effectively in fire research and practice.
Contribution
It introduces key ideas and practical rules to demystify AI adoption in fire engineering, fostering strategic discussions and informed implementation.
Findings
Clarifies core AI concepts and misconceptions
Provides practical rules for AI application in fire engineering
Encourages strategic AI integration in fire research
Abstract
Artificial intelligence (AI) is paving the way towards the fourth industrial revolution with the fire domain (Fire 4.0). As a matter of fact, the next few years will be elemental to how this technology will shape our academia, practice, and entrepreneurship. Despite the growing interest between fire research groups, AI remains absent of our curriculum, and we continue to lack a methodical framework to adopt, apply and create AI solutions suitable for our problems. The above is also true for parallel engineering domains (i.e., civil/mechanical engineering), and in order to negate the notion of history repeats itself (e.g., look at the continued debate with regard to modernizing standardized fire testing, etc.), it is the motivation behind this letter to the Editor to demystify some of the big ideas behind AI to jump-start prolific and strategic discussions on the front of AI & Fire. In…
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