ryantigi254 / URBAN-AI-for-Independent-Learning-and-AI-Assisted-Learning-Revision

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URBAN-AI-for-Independent-Learning-and-AI-Assisted-Learning-Revision

AI for Independent Learning and AI-Assisted Learning Revision Project

Welcome to the AI for Independent Learning and AI-Assisted Learning Revision project! This project aims to develop and integrate an AI chatbot into educational environments to enhance learning experiences through personalized and interactive engagement with course content.

Project Overview

This project focuses on creating an AI chatbot to be used in digital learning environments such as NILE (Northampton Integrated Learning Environment) and other higher education platforms. The AI chatbot will offer various functionalities to support students in their independent learning and revision processes.

Core Functionalities

  • Summarization of Coursework: Provides concise summaries of course materials, making key concepts easily accessible.
  • Interactive Q&A: Uses advanced natural language processing (NLP) techniques to answer student queries related to course content.
  • Extended Reading Suggestions: Recommends additional resources for further exploration, including lecturer-suggested readings and AI-discovered content.
  • Content Simplification: Simplifies complex concepts into more digestible formats using large language model (LLM) capabilities.

Enhanced Features

  • Personalized Learning Insights: Analyzes individual student interactions to offer tailored advice on study habits, revision schedules, and research approaches.
  • Educator Interface: Provides a backend portal for educators to input, update, and guide the chatbot’s recommendations.
  • Module Structure Analysis and Recommendations: Assesses module frameworks and suggests enhanced content organization based on identified best practices.

Data Utilization and Ethics

  • Collaboration for Data Access: Engages with the NILE analytics team to secure access to student interaction data, adhering to privacy regulations and ethical standards.
  • Sensitive Data Handling: Prioritizes the security of student data using state-of-the-art encryption and anonymization techniques.

Integration and Scalability

  • Broad Platform Compatibility: Initially focused on NILE, with potential for integration into other university platforms.
  • Adaptive Learning Support: Continuously learns from student interactions, adapting its responses and recommendations to meet evolving educational needs.

Thank you for your interest in the AI for Independent Learning and AI-Assisted Learning Revision project! We look forward to your contributions and feedback.

For any questions or further information, please reach out to us at ryantigi2020@gmail.com.

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