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Niteesh K R

Assistant Professor
  • Teaching

About

Currently serving as an Assistant Professor in the Department of Computer Applications, Niteesh K R is very passionate about passing on the torch of knowledge and motivating generations of students to come. He believes in treating his students as his co-learners and also has a commitment to scholarly research. He holds an MCA degree from B M S College of Engineering, Bangalore and his research interests include machine learning, deep learning, artificial intelligence, and data analytics. He's also very passionate about mathematics and data mining. He has successfully completed many MOOCs and is currently working on relevant research in the field of data science. Apart from teaching and research, he also is a part of the Rotaract Community and has been associated with various Rotaract clubs in the past as well.

Education

  • Bachelor of Computer Applications (BCA), AIMS Institutes of Higher Education (Affiliated to Bangalore University), 2020

  • Master of Computer Applications (MCA), BMS College of Engineering (Autonomous Under VTU), 2023

Achievements

  • Board Member, AIMS Alumni Association (Since 2021)

  • Rotaract Service: Charter Vice-President, Rotaract Club of AIMS, RID 3190, 2018-19

  • Served as the President of Techie Tribe, Departmental Technical Club under Department of BCA, AIMS IHE, 2019-20

  • Workshop attended: Data Science Hands-on at IISc, Bangalore, 2nd to 4th September, 2022

  • Professional Certification: IT Automation with Python from Google, 2022

  • Professional Certification: Data Science Specialisation from IBM, 2023

  • Qualified UGC-NET for Assistant Professor, 2023

Teaching

  • Java Enterprise Application Development

Research Interest

  • Intelligent Transport Systems

  • Machine Learning

  • Image Processing and Analytics

  • Deep Learning

  • Data Analytics

  • Artificial Intelligence

Conferences

  • Niteesh, K. R., Pooja, T. S., Pushpa, T. S., Lakshminarayana, P., & Girish, K. (2024). Comparative Analysis of Machine Learning Models for Earthquake Prediction Using Large Textual Datasets. In Lecture Notes in Civil Engineering (pp. 237–244). Springer Nature Singapore. https://doi.org/10.1007/978-981-99-9610-0_21

 Staff Contacts
 Staff Campus Location
 RR Campus

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