
Optimization of Resource Allocation of University Innovation and Entrepreneurship Education | IJET – Volume 12 Issue 2 | IJET-V12I2P47

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ToggleInternational Journal of Engineering and Techniques (IJET)
Open Access • Peer Reviewed • High Citation & Impact Factor • ISSN: 2395-1303
Volume 12, Issue 2 | Published: March 2026
Author: U. Sriya Reddy, Sandhya Rani Padhy, Salina Pradhan, Amita Patro, Prof. Ashish Kumar Dass
DOI: https://doi.org/{{doi}} • PDF: Download
Abstract
In various educational institutes and universities, it has always been quite difficult and a source of headache while constructing no or less conflict timetables especially for a large mass of teachers and students who are divided into different batches, branches and sections. Timetabling is categorized as NP-hard as there exists massive number of combinations and large search space. Not only teachers and students, but also managing other common or general resources such as Labs, Auditoriums, Conference Halls, is not that easy. Thus, this paper proposes an automated timetable generation and resource allocation system which is based on Genetic Algorithm and Constraint Satisfaction Problem techniques.
Keywords
Genetic Algorithm, Constraint Satisfaction Problem, Evolutionary Algorithm, Resource Utilization, Timetabling, Meta-heuristics
Conclusion
The hybrid approach of Genetic Algorithm and Constraint Satisfaction Problem is one of the best ways to demonstrate and solve optimized allocation of resource as it can be implemented in real world. Timetabling is a just subset of our system’s capabilities and effectively minimizes conflicts, saves significant administrative time and provides flexibility and fairness that manual scheduling cannot achieve. It also ensures that specialized resources are utilized in a correct manner.
Beyond academic environments the core GA-CSP architecture can be further improved to solve other real world problems that ask for a proper scheduling and optimization.
References
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Cite this article
APA
U. Sriya Reddy, Sandhya Rani Padhy, Salina Pradhan, Amita Patro, Prof. Ashish Kumar Dass (March 2026). Optimization of Resource Allocation of University Innovation and Entrepreneurship Education. International Journal of Engineering and Techniques (IJET), 12(2). https://doi.org/{{doi}}
U. Sriya Reddy, Sandhya Rani Padhy, Salina Pradhan, Amita Patro, Prof. Ashish Kumar Dass, “Optimization of Resource Allocation of University Innovation and Entrepreneurship Education,” International Journal of Engineering and Techniques (IJET), vol. 12, no. 2, March 2026, doi: {{doi}}.
