AI-Assisted E-Learning Platform
Keywords:
E-learning, Learning Management System (LMS), Artificial Intelligence, Adaptive Learning, NLP Chatbot, Voice Interaction, Secure Learning SystemsAbstract
The integration of artificial intelligence into e-learning systems has the potential to enhance learner engagement, accessibility, and operational efficiency; however, many existing platforms still lack real-time support and adaptive interaction. This paper presents an AI-Assisted E-Learning Platform that incorporates an intelligent assistant to provide continuous academic and technical support. The primary objective of the proposed system is to improve learner interaction through natural language–based assistance and voice-enabled functionality while simultaneously reducing administrative and instructional workload. The intelligent assistant facilitates instant query resolution, voice-based interaction for learning activities, and personalized guidance throughout user interaction. Experimental evaluation conducted in a controlled testing environment indicates improved learner accessibility, system usability, and administrative efficiency, along with secure access control mechanisms. The results suggest that integrating AI-driven assistance within e-learning environments can enhance the effectiveness and responsiveness of learning systems.
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