AI for Smart Healthcare Monitoring Using Wearable Devices

Prof. Praveen Gupta

Abstract


Wearable devices offer continuous health monitoring, but their full potential is realized when coupled with AI-driven analysis. This paper proposes an AI framework for smart healthcare monitoring using data from wearable sensors. The system employs machine learning algorithms to analyze physiological signals such as heart rate, temperature, and activity levels to detect early signs of health issues. The framework provides real-time health assessments and alerts for timely intervention. Evaluation on datasets from wearable devices demonstrates high accuracy in detecting conditions such as arrhythmia and hypertension. This research emphasizes the role of AI in proactive healthcare management.

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