The Academic Perspective Procedia publishes Academic Platform symposiums papers as three volumes in a year. DOI number is given to all of our papers.
Publisher : Academic Perspective
Journal DOI : 10.33793/acperpro
Journal eISSN : 2667-5862
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[8] Mishra A, Mohapatro M. An IoT framework for Bio-medical sensor data acquisition and machine learning for early detection. International Journal of Advanced Technology and Engineering Exploration 2019; 6:112-125.
[9] Devi R, Kalaivani V. Machine learning and IoT-based cardiac arrhythmia diagnosis using statistical and dynamic features of ECG. The Journal of Supercomputing 2020; 76. 10.1007/s11227-019-02873-y.
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