INTEGRATING AI-BASED SPEECH RECOGNITION TECHNOLOGY TO ENHANCE READING ASSESSMENTS WITHIN MOROCCO’S TaRL PROGRAM
Abstract
Keywords
Artificial Intelligence, Automatic Speech Recognition, Reading Assessment, Teaching at the Right Level (TaRL), Moroccan Education System, e-learning
References
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