Abstract
In science, the terminology “data” is used to describe a gathered body of facts, which represents the information obtained from observing and testing experiments.
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Zhang, T., Jiang, Y., Zhong, R.Y. (2024). Fire Database and Cybersecurity. In: Huang, X., Tam, W.C. (eds) Intelligent Building Fire Safety and Smart Firefighting. Digital Innovations in Architecture, Engineering and Construction. Springer, Cham. https://doi.org/10.1007/978-3-031-48161-1_11
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