Fuzzy Logic -- Based Scheduling System for Part-Time Workforce
By: Tri Nguyen, Kelly Cohen
Potential Business Impact:
Smarter computer makes student work schedules easily.
This paper explores the application of genetic fuzzy systems to efficiently generate schedules for a team of part-time student workers at a university. Given the preferred number of working hours and availability of employees, our model generates feasible solutions considering various factors, such as maximum weekly hours, required number of workers on duty, and the preferred number of working hours. The algorithm is trained and tested with availability data collected from students at the University of Cincinnati. The results demonstrate the algorithm's efficiency in producing schedules that meet operational criteria and its robustness in understaffed conditions.
Similar Papers
A Multi-Objective Genetic Algorithm for Healthcare Workforce Scheduling
Artificial Intelligence
Schedules nurses better, saving money and improving care.
Simulation of Autonomous Industrial Vehicle Fleet Using Fuzzy Agents: Application to Task Allocation and Battery Charge Management
Multiagent Systems
Robots smartly share airport baggage jobs, saving power.
LLM-Enhanced, Data-Driven Personalized and Equitable Clinician Scheduling: A Predict-then-Optimize Approach
Optimization and Control
Helps doctors get better work schedules.