Smart Cities' IoT Device Management with Real-Time AI
Keywords:
IoT, predictive analytics, real-time AI, smart citiesAbstract
IOT devices transform the city operations as they become more efficient and sustainable. The objective of this article is to discuss Smart city IOT device fleet management in real time using AI model for predictive analysis. Enhancing real time data analysis, system failure, prediction, and machine scheduling can be done by using machine learning and deep learning algorithms.
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