An Intelligent Voice-Driven Automated Timetable Generation Framework Using Natural Language Processing and Constraint Optimization

Dr. CH V Phani Krishna,
M Kavya, M Sabitha Reddy, P Varun, M Shiva

Manual timetable generation in educational institutions is labor-intensive, error-prone, and timeconsuming, often requiring multiple iterations to satisfy complex constraints like teacher availability, room capacity, and curriculum requirements. This paper proposes an intelligent voice-driven automated timetable generation framework that integrates Natural Language Processing (NLP) for intuitive voice/ text input and constraint optimization for conflict-free scheduling. Users provide requirements via natural language voice commands (e.g., "Schedule Mathematics for Class 10 on Monday mornings, avoid overlapping with Physics lab"). Speech-to-text (STT) converts audio to text, NLP (BERT-based intent extraction and entity recognition) parses constraints into structured parameters, and a hybrid solver (Constraint Satisfaction Problem with Genetic Algorithm fallback) optimizes the timetable. The system generates feasible schedules, handles soft/hard constraints, and provides conflict resolution.
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