
SNIPP is a smart remote interview platform that allows secure technical assessments through real-time coding and AI evaluation. It includes MediaPipe-based proctoring, role-based question generation, fullscreen enforcement, and automated handling of violations. These features help ensure fair and reliable interviews. The platform uses a full-stack setup with Next.js for both the frontend and backend. It uses Convex for real-time data synchronization, Clerk for secure authentication, and Monaco Editor for an interactive coding environment. It supports conflict-free interview scheduling, automatic email notifications, and real-time updates through Convex mutations. The system allows browser-based code execution across multiple programming languages with a responsive and device-optimized interface. Key features include MediaPipe AI proctoring, AI-generated questions, a 6-strike violation policy, automatic interview termination, and enforced fullscreen mode. It provides detailed violation reports after interviews, while role-based access control helps manage sessions securely and maintains data integrity. Thorough testing confirmed the platform's effectiveness and reliability. It achieved a 100% functional test pass rate and can handle up to 50 concurrent users. The average API response time is 1.5 seconds. The platform is fully secure, implementing JWT-based authentication and input validation, and maintained 99.9% uptime during load testing. SNIPP delivers a scalable, robust solution that reduces scheduling conflicts in remote interviews, removes the need for infrastructure setup for coding assessments, and helps recruiters work efficiently.
Smart Tourism, Tourist Safety, Smart Cities, Internet of Things (IoT), Emergency Management, Travel Security, Mobile Applications.
Smart Tourism, Tourist Safety, Smart Cities, Internet of Things (IoT), Emergency Management, Travel Security, Mobile Applications.
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