Developing AI-Powered Applications for Real-Time Decision Support in Autonomous Vehicles
Keywords:
Autonomous Vehicles, AI Applications, Real-Time Decision Support, Machine Learning, Autonomous Driving Systems, Intelligent Transport SystemsAbstract
The advancement of autonomous vehicle technology has brought about the need for real-time decision-making capabilities, where AI-powered applications play a critical role in ensuring safety, efficiency, and functionality. This paper explores the importance of AI-driven decision support systems in autonomous vehicles, with a focus on the development of real-time algorithms that help in navigating complex environments. The paper further investigates the state of the art in AI applications for autonomous vehicles, reviewing relevant literature and discussing the challenges faced in integrating AI systems into vehicles. By analyzing recent innovations and applications, this work aims to provide insight into how these technologies can drive the next generation of intelligent, autonomous transportation solutions.
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Copyright (c) 2025 José Rodrigues (Author)

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