Research Article Open Access

Deep Learning Perspective on Assessing and Elevating Engineering Student’s Performance

Kandula Neha1 and Ram Kumar2
  • 1 Department of Computer Science and Engineering Lovely Professional University, Punjab, India
  • 2 Department of Computing Science and Engineering, VIT Bhopal University, Madhya Pradesh, Bhopal, India

Abstract

In addressing the need for successful frameworks to break down understudy execution, this study presents a profound learning-based approach for thorough understudy execution examination inside instructive establishments. The framework intends to evaluate understudies' presentation levels and distinguish those qualified for positions, needing extra help, or in danger of exiting. Utilizing a Long Momentary Memory (LSTM) model, a sort of intermittent brain organization (RNN), the proposed framework predicts fourth-year understudies' presentation by utilizing three years of verifiable understudy marks information to catch fleeting examples and conditions. Broad testing and assessment show the LSTM model's surprising exactness, accomplishing an accuracy of 99.8% in distinctive understudies’ exhibition levels. Through the force of profound realizing, this framework engages instructive establishments to precisely separate between high-performing, low-performing, and in-danger understudies, working with vocation arranging and giving designated open doors to understudy positions. In addition, it promotes good help and mediation for students who are at risk of dropping out and improving real standards. By introducing deep learning strategies, especially LSTM models, this research provides valuable experience and direct prospects for investigating the implementation of non-earning people, empowering learning organizations to follow making informed choices, and showing direction and mediation. Finally, the framework that is being developed can improve the result of education without achieving it by enhancing dynamic changes and encouraging individual contributions in educational areas.

Journal of Computer Science
Volume 20 No. 11, 2024, 1455-1469

DOI: https://doi.org/10.3844/jcssp.2024.1455.1469

Submitted On: 14 February 2024 Published On: 21 September 2024

How to Cite: Neha, K. & Kumar, R. (2024). Deep Learning Perspective on Assessing and Elevating Engineering Student’s Performance. Journal of Computer Science, 20(11), 1455-1469. https://doi.org/10.3844/jcssp.2024.1455.1469

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Keywords

  • Student Performance Analysis
  • Deep Learning
  • LSTM Model
  • Good Performers
  • Poor Performers
  • Student Support
  • Placement Eligibility
  • Dropout Prediction