https://github.com/Evadshell/Aminovate2
Github link to my project
Project Name: MathQuester!
Tagline: Your Personal Math Assistant
Description:
MathQuester! is an interactive math learning platform designed to make math learning more engaging and accessible to students of all levels. With MathQuester!, users can explore mathematical concepts, solve problems, and receive step-by-step guidance through complex equations.
Features:
- Full Results API Integration: Utilizing Wolfram's Full Results API, MathQuester! delivers comprehensive solutions to mathematical queries, including step-by-step solutions, visual representations, and related concepts.
- Conversational AI: MathQuester! incorporates conversational AI to provide an interactive learning experience. Users can ask questions in natural language and receive detailed explanations and solutions.
- MathBot Integration: In addition to text-based interaction, MathQuester! features MathBot, an AI-powered assistant that enhances interactivity through voice control and audio feedback. MathBot makes learning math more intuitive and engaging.
- OAuth2 Google Login: Users can securely log in to MathQuester! using their Google accounts, ensuring a seamless and personalized experience.
- Chakra UI: MathQuester! boasts a user-friendly interface built with Chakra UI, offering a sleek and responsive design across all devices.
- Future Scope: In the future, MathQuester! aims to further enhance its interactivity and accessibility. Planned features include audio-controlled interactions, real-time collaboration tools, and personalized learning paths tailored to individual users' strengths and weaknesses.
Challenges Faced:
During development, we encountered challenges in integrating various APIs seamlessly and ensuring a smooth user experience across different platforms. However, through rigorous testing and iterative improvements, we overcame these hurdles to deliver a polished product.
Future Scope:
- Enhanced Interactivity: Implementing audio-controlled interactions to enable hands-free operation, catering to users with diverse needs and preferences.
- Real-time Collaboration: Introducing collaborative features that allow multiple users to work on math problems together in real-time, fostering teamwork and peer learning.
- Personalized Learning Paths: Utilizing machine learning algorithms to analyze user performance and provide personalized recommendations for improving math skills.
Attachments: