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MasteryBridge AI 🧠⚡

A Concept Understanding & Self-Testing Assistant Stop Reading. Start Mastering.

Live Demo Design Thinking

📌 The Problem

Research shows that 60% of students suffer from the "Illusion of Competence." They passively read textbooks or highlight notes and feel prepared, only to go blank during exams. Traditional testing methods (like mid-semesters) happen too late in the academic cycle to provide actionable feedback.

💡 The Solution

MasteryBridge AI is a hybrid learning assistant designed to bridge the gap between passive reading and active mastery. By converting static PDF notes into interactive, context-aware micro-quizzes, it exposes knowledge blind spots instantly.

Most importantly, it digitizes the Feynman Technique: instead of just clicking multiple-choice options, students are challenged to explain concepts back to the AI in simple, jargon-free terms.

✨ Key Features

  • PDF-to-Quiz Pipeline: Instantly generates context-specific micro-quizzes from uploaded syllabus materials.
  • The "Feynman Mirror": An AI chatbot interface that forces users to teach the concept back, identifying exact knowledge gaps.
  • Knowledge Heatmap: A visual dashboard tracking long-term progress (Green = Mastered, Red = Needs Review).
  • Low-Friction UI: Designed with calming colors and "glassmorphism" to reduce exam anxiety and cognitive load.

🛠️ Tech Stack & Prototyping

  • Frontend: React, Vite, Tailwind CSS, UI components.
  • Prototyping Tool: Lovable.dev (High-Fidelity AI Generation)
  • Hosting: GitHub Pages / Cloudflare

👥 The Team

Built by First-Year B.Tech CSE students at DES Pune University (Semester 2, 2026-27):

  • Arnav Nisal (Lead & Presenter)
  • Rohit Mate (User Research)
  • Samarth Sathe (UI/UX Iteration)
  • Parth Koli (Prototyping & Tech)
  • Yash Anarse (Impact & Viability)

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