Published August 31, 2025 | Version v1
Journal article Open

Development of an online examination system for staff recruitment in Omani hospitals with automated grading and certification

  • 1. Department of Engineering, University of Technology and Applied Sciences-Al Musannah, Sultanate of Oman.
  • 2. Department of Engineering, Nellai College of Engineering, Tirunelveli, Tamil Nadu, India.

Description

This Paper aims to streamline the recruitment process by introducing a digital platform that automates key stages, particularly online exams. By shifting to an online system, time spent on administering and evaluating exams is reduced, minimizing administrative tasks and enhancing efficiency. This allows for faster decision-making and a smoother recruitment process for both recruiters and candidates. The platform will automate tasks like exam distribution and grading, while also incorporating security features such as identity verification and anti-cheating measures. It also automates scheduling and result analysis, reducing HR workload and improving overall productivity. The goal is to create a faster, more efficient, and fair recruitment process. This Idea aims to develop an online testing platform tailored to Oman’s recruitment needs, enabling the creation, administration, and evaluation of online tests for various job roles across industries. The platform will generate performance reports, offering insights like average scores, question difficulty, and time spent on each question. It will integrate with existing HR systems for smooth data transfer and candidate tracking. The platform aims to make the recruitment process more cost-effective, efficient, and transparent, offering a faster, unbiased evaluation method. Candidates can take exams remotely and receive instant feedback, enhancing engagement and satisfaction. This approach creates a more efficient, secure, and candidate-friendly hiring process for both recruiters and job seekers in Oman.

Files

WJARR-2025-3031.pdf

Files (713.3 kB)

Name Size Download all
md5:235c550adcc8487bcbb9d2e8ec6efe4c
713.3 kB Preview Download

Additional details