NMIMS - Navi Mumbai
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Mrs. Asha Rawat

Mrs. Asha Rawat

Assistant Professor
School of Technology, Management & Engineering

Ph.D. pursuing (SPSU), M.E. Computer Engineering (MGM), B.Sc.Tech (Computer Technology)

Email ID: asha.rawat@nmims.edu

Subject teaching:

C++

Certifications:

Certified course on ‘Machine Learning Web App with Streamlit and Python’

Certified course on ‘Exploratory Data Analysis with Python and Pandas’

Certified course on ‘Agile Project Management’ by Google

Certified course on ‘Scrum Master Training’

Certified course on ‘Fundamentals of Network Communication’

Teaching Experience

19 years

Teaching Interest

Computer Network, Project Management, Software Engineering, Digital Forensic, Machine Learning, Python programming, C++

Ph.D. - Topic

Energy Optimization in Wireless Sensor Network Using Probabilistic Approach

Memberships

CSI, IETE, ISTE

Research Interest

Wireless Network, Machine Learning, Artificial Intelligence

Recent Publications

INTERNATIONAL PUBLICATIONS:

Energy and Distance Based Cluster Head Selection Technique for Optimal Network Lifetime in WSN, The Seybold Report, Vol. 7, No. 9, September 2022, pages 1500-1519

Clustering Algorithm for Energy-Efficient Wireless Sensor Network, Turkish Journal of Computer and Mathematics Education, Vol. 12, No. 5, April 2021, pages 877-884

 

CONFERENCES

A Survey on Network Coverage, Data Redundancy and Energy Optimization in Wireless Sensor Network, International Conference on Cybernetics, Cognition and Machine Learning Applications, 16-17th Aug, 2019

Probabilistic Approach in Video Based Face Recognition, at ICAISC 2011, Bhubhneshwar, Orissa.

Emotion Detection with the help of Image & Stroke Pattern Information, at Saraswati College of Engg., in 2009 Kharghar.

Presented paper at National Conference on ‘Face Recognition – A Probabilistic View, at NCAM, Pimpri-Chinchwad College of Engg. In 2011, Pune.

 

           
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