Harnessing the Tide of Innovation: The Dual Faces of Generative AI in Applied Sciences; Letter to Editor

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A.S. Albahri
Idrees A. Zahid
Mohanad G. Yaseen
Mohammad Aljanabi
Ahmed Hussein Ali
Akhmed Kaleel

Abstract

Advancements in Artificial Intelligence (AI) and emerging generative capabilities added paradoxical aspects. One aspect is its positive impact and limitless power it brings to users. On the other hand, concerns about the misuse of this powerful tool have consistently increased [1]. AI advancements affect all domains and sectors as they evolve in their applicable nature in the applied sciences. The more powerful AI the more influence it has on the model workflow within the specific domain and its applied field [2]. This dual nature of generative AI ignited a wide discussion on implementation and produced a debate according to the latest employed tools and technologies by scientists and researchers.

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Albahri, A., Zahid , I. A., Yaseen, M. G., Aljanabi, M., Ali, A. H., & Kaleel, A. (2024). Harnessing the Tide of Innovation: The Dual Faces of Generative AI in Applied Sciences; Letter to Editor. Applied Data Science and Analysis, 2024, 1–3. https://doi.org/10.58496/ADSA/2024/001
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