Leveraging the Machine Learning Tools and Techniques in Enhancing the Effectiveness of Real-time Data Analysis of Internet of Things (IoT) Devices

Updesh Sachdeva

Volume 7, Issue 4 2023

Page: 6-11

Abstract

The world is evolving quickly, and multiple web-based organizations rely upon gathering information for future analysis. IoT frameworks can access numerous gadgets, and much information can be stored in an IoT cloud like Thing speak. DHT11 gas level sensors will be used in this project to collect real-time data and use machine learning algorithms (random forest, decision tree classifier, linear discriminant analysis) to analyse it. We are looking at the presentation of analyses using measurements like precision, disarray network, accuracy, review, and score to find the best calculation that distinguishes assaults or information peculiarities all the more precisely.

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