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Enhancing IoT Data Analysis with Machine Learning: A Comprehensive Overview

Amit Kumar Dinkar, Md. Alimul Haque, Ajay Kumar Choudhary

2024LatIA20 citationsDOIOpen Access PDF

Abstract

Machine learning techniques are essential for processing the vast volume of IoT data efficiently, improving performance, and managing IoT applications effectively. Machine learning algorithms play a crucial role in detecting malicious attacks and anomalies in real-time IoT data analysis, thereby enhancing the security of IoT devices. The integration of big data analytics methods with machine learning techniques can further enhance IoT data analysis, improving the performance of IoT applications and overcoming related challenges. Real-time data collection using sensors like DHT11 and Gas level sensors, coupled with machine learning algorithms, enables efficient analysis of IoT data, aiding in the identification of anomalies and attacks. The comprehensive overview of enhancing IoT data analysis with machine learning provides insights for future research, including exploring advanced machine learning algorithms and optimizing data preprocessing techniques to enhance IoT data analysis capabilities.

Topics & Concepts

Computer scienceData pre-processingData analysisBig dataInternet of ThingsMachine learningAnalyticsPreprocessorIdentification (biology)Artificial intelligenceData processingData scienceData miningEmbedded systemDatabaseBotanyBiologyNetwork Security and Intrusion DetectionAnomaly Detection Techniques and ApplicationsData Stream Mining Techniques
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