

RESUMATE: A Smart Resume Builder Using AI for Personalized Content and Professional Profile Management
Abstract
Making resumes that are both effective and applicant tracking system (ATS) compliant is a major challenge for job seekers in the competitive job market of today. This project presents an AI-powered resume builder that uses Google's Gemini API in conjunction with contemporary full-stack web technologies to expedite and customise the resume creation process. Strapi CMS and MySQL manage backend content and storage, while React (Vite), Next.js, and Tailwind CSS are used to create the platform's responsive frontend. Gemini AI uses job descriptions and user input to dynamically create context-aware resume content. Real-time content preview, dynamic form generation, resume conversion to PDF, and secure user authentication through Clerk are all supported by the system. Vercel and cloud platforms are used for deployment in order to guarantee performance and scalability.This project improves usability and personalisation by providing a clever, intuitive, and effective automated resume creation solution.
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