REALCODEAI : An AI-Powered Real-Time Code Collaboration and Interview Platform
Keywords:
Artificial Intelligence, Real-Time Collabora-tion, Code Evaluation, Plagiarism Detection, Online Coding Interview, Natural Language Processing, MERN Stack, Cloud Computing, AI AutomationAbstract
REALCODEAI is an AI-powered real-time code collaboration and interview platform designed to transform the way technical assessments and collaborative programming sessions are conducted. Unlike traditional coding editors, this system allows multiple users to simultaneously edit and execute code in real time while integrating artificial intelligence for evaluation and feedback. The platform leverages technologies such as Liveblocks and Monaco Editor to enable smooth, synchronized collaboration and employs the OpenAI API to provide intelligent code suggestions, bug detection, and natural language-based assistance. It features an integrated Interview Mode powered by the Judge0 API, allowing interviewers to assign coding challenges, monitor execution, and automatically evaluate candidate per-formance. Developed using the MERN stack (MongoDB, Ex-press.js, React.js, and Node.js), the platform ensures scalabil-ity, cloud deployment readiness, and strong data security. The inclusion of AI-based plagiarism detection, Natural Language Processing (NLP) for communication analysis, and real-time monitoring further enhances fairness and efficiency in the inter-view process. The proposed system aims to reduce interviewer workload, ensure unbiased assessment, and provide an engaging and intelligent coding environment suitable for recruitment, education, and collaborative development.
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