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April, 2024 | Volume 03 | Issue 02
AI-Powered Solutions in Healthcare and Transportation Overcoming Challenges and Shaping the Future
Mahesh Kumar Tiwari
Bachelors of Computer Application, National Post Graduation College, Lucknow, India
Author
Aditya Saxena
Bachelors of Computer Application, National Post Graduation College, Lucknow, India
Author
📌 DOI: https://doi.org/10.63920/tjths.32001
🔑 Keywords: Artificial intelligence; healthcare; transportation; future advancements; deep learning; predictive modelling; personalized treatment; autonomous vehicles;
📅 Publication Date:04 April, 2024
📜 License:
This work is licensed under a Creative Commons Attribution 4.0 International License
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Abstract:
In current years, Artificial Intelligence (AI) has emerged as a transformative force, reshaping industries and revolutionizing conventional practices. In the domain of healthcare and transportation, AI holds great promise for advancing the quality, efficiency, and accessibility of services. This research paper explores the frontier of AI destiny improvements in healthcare and AI-powered transportation, delving into the contemporary improvements, challenges, and moral considerations. In healthcare, AI-pushed answers which include deep learning-primarily based totally scientific picture analysis, predictive modelling of affected person outcomes, and personalised remedy are paving the manner for greater correct diagnoses, personalised treatments, and progressed affected person care. Simultaneously, in transportation, AI is riding improvements in self- reliant vehicles, shrewd site visitors control systems, and concrete mobility answers, promising safer, greater efficient, and sustainable transportation networks. However, the huge adoption of AI in those domain names increases moral worries surrounding privacy, bias, cybersecurity, and public perception. Through a complete analysis, this paper goals to offer insights into the modern kingdom of AI in healthcare and transportation, even as additionally dropping mild on destiny trajectories and the results for studies, practice, and policy.
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