Smart Campus Placement System Leveraging Recruitment Efficiency
DOI:
https://doi.org/10.47392/IRJAEM.2025.0305Keywords:
Intelligence quotient (IQ), student assessment, academic performance, machine learning, data miningAbstract
The goal of this research is to figure out how to calculate academic achievements and students cognitive quotients for placement. This study will attempt to forecast students intelligence quotients or academic grades to measure the IQ of a student in a holistic manner using all kinds of parameters, from students academic records to input from their professors and even their family background, thus creating a dataset of 9000 instances with all these data. We implemented and trained multiple machine learning algorithms on the data and collected the outcomes to select the best algorithm. Students quantitative reasoning ability was selected as a parameter that could be assessed by their performance on aptitude tests. Certi cations of the student during their bachelors degree have been considered, which would also give us an idea about the students critical and logical thinking ability. All the parameters were rated on a scale of 1-10. The driving motivation behind this investigation was to discover what parameters force a student to be placed in a company then the final overall student score is calculated to determine a students intelligence quotient. The final IQ score of the student-generated was graded on a scale of 0-3 and a suitable salary package range for the student was estimated giving the company a good idea of the students capability.
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Copyright (c) 2025 International Research Journal on Advanced Engineering and Management (IRJAEM)

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