FUTURE FIT – CAREER COACH
Abstract
This project presents a comprehensive guide to developing an advanced full-stack web platform integrated with Artificial Intelligence (AI) to provide customized career guidance. The application employs Next.js for a scalable, high-performance frontend, while Shadcn UI ensures a smooth and user-friendly interface. Gemini AI powers the backend, enabling context-aware and intelligent responses for personalized career advice. Tailwind CSS supports a responsive and visually appealing design with a utility-first approach, and Prisma ORM simplifies database operations, ensuring secure and efficient data management throughout the system.
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A. Jain et al., “AI in Career Guidance: A Review,” International Journal of AI Research, 2022.
M. Brown, “Using Next.js and Tailwind CSS to Create Full-Stack Web Applications,” Web Dev Journal, 2023.
R. Smith, “Integrating AI Models in Web Applications,” Journal of Software Engineering, 2021.
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