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Abstract— In the current era of automation and data-driven technology, Artificial Intelligence (AI) has transformed the way humans interact with machines and perform complex computational tasks. However, most AI-based systems are designed for specific, single-purpose tasks such as text generation, image enhancement, or document analysis. This project introduces Quick AI, an innovative multi-functional AI platform developed using the PERN Stack (PostgreSQL, Express.js, React.js, and Node.js) that integrates multiple AI-powered tools under a single interface. The platform offers five powerful modules — Article Generator, Blog Title Generator, Background Remover, Object Remover, and Resume Analyzer. Each module is powered by machine learning (ML) and natural language processing (NLP) or computer vision models, enabling users to automate creative and analytical tasks such as content generation, image editing, and professional document analysis. Quick AI aims to minimize human effort while ensuring high performance, scalability, and user satisfaction. The results show that the system delivers fast, accurate, and high-quality outputs across all modules. Furthermore, the modular design allows easy integration of future AI services. This paper discusses the architecture, design methodology, model training, datasets, research gaps, and potential future improvements of Quick AI, contributing to the advancement of integrated AI-driven automation tools. Key Word: Content Generation, AI Tool Integration, Resume Screening, PERN Stack, Multifunctional AI Platform, Hybrid AI System.
Published in: INTERANTIONAL JOURNAL OF SCIENTIFIC RESEARCH IN ENGINEERING AND MANAGEMENT
Volume 10, Issue 03, pp. 1-9
DOI: 10.55041/ijsrem58415