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Ms. Himani Tyagi

Ms. Himani Tyagi

Assistant Professor , Computer Science & Applications (CSA)

himani.tyagi@sharda.ac.in

About

Himani Tyagi is a dedicated and experienced Assistant Professor with a demonstrated history of working in the field of Computer Science and applications. With five years of academic and industrial experience in both teaching and research, I am committed to fostering a dynamic and engaging learning environment for students.

Experience
  • 7 years
Qualification
  • PH.D in CSE pursuing from SRM University, Chennai
  • M.Tech Computer science from IIT KGP
  • M.Sc in Mathematics
Award & Recognition

  • Qualified GATE-2012 with AIR-139
  • Qualified CSIR NET-2012 December with AIR -145
  • Qualified UPSC MAINS- Twice
  • Appeared for Interview in 2015 Civil services exam.

Research

  • Data Pre-Processing And Its Implications In Data Mining . Dr Preeti Bala1*, Himani Tyagi2, Ms. Rashmi Vaishnav3, Shikha Tiwari4, Sunil Kumar5;Educational Administration: Theory and Practice 2024, 30(5), 10844-10854 ISSN: 2148-2403
  • Revolutionizing Peach Farming: Advanced Disease Classification Through CNN And Random Forest; Madhavi Tripathi1 , Himani Tyagi2 & Gyanendra Kumar Shukla3 ; BHARATI INTERNATIONAL JOURNAL OF MULTIDISCIPLINARY RESEARCH & DEVELOPMENT (BIJMRD) (Open Access Peer-Reviewed International journal) Available Online: www.bijmrd.com|BIJMRD Volume: 1 | Issue: 2 | January 2024 | e-ISSN: 2584-1890
  • MemoChat App: An Advancement in Existing in WhatsApp Accepted in IEEE Conference
  • Written a book with Pritam publication private ltd. Named “ A Textbook on computer Education”
  • “An Extensive Overview of anamoly Detection Analysis in FL- Based IDS” Himani Tyagi and Dr. Abhilasha Singh Accepted in Procedia Computer science

Certifications

  • Six days FDP on “Advanced MATLAB PROGRAMMING WITH APPLICATIONS IN EMERGING TECHNOLOGIES”.

Area of Interest

  • Federated machine learning , Edge Computing