International Journal of Innovative Research in Computer and Communication Engineering
ISSN Approved Journal | Impact factor: 8.771 | ESTD: 2013 | Follows UGC CARE Journal Norms and Guidelines
| Monthly, Peer-Reviewed, Refereed, Scholarly, Multidisciplinary and Open Access Journal | High Impact Factor 8.771 (Calculated by Google Scholar and Semantic Scholar | AI-Powered Research Tool | Indexing in all Major Database & Metadata, Citation Generator | Digital Object Identifier (DOI) |
| TITLE | AI-Based Automated File Organizer |
|---|---|
| ABSTRACT | The rapid growth of digital data has made manual file organization increasingly inefficient, time-consuming, and prone to human error. Users often accumulate thousands of unorganized files across devices, leading to clutter and reduced productivity. This project proposes an AI Based Automated File Organizer designed to intelligently analyze, categorize, and structure files using both rule-based techniques and artificial intelligence. The system employs file-type detection, content extraction, and semantic understanding to generate meaningful categories for documents, images, and media files. PDF content is processed using a local large language model to identify themes and generate summaries. The organizer operates through a user friendly Electron.js desktop application and ensures privacy by performing all AI processing locally. Mixed analysis combines type-based and AI-based methods, offering high accuracy and flexibility. The result is an efficient, scalable, and intelligent file-management solution that significantly reduces digital clutter and improves file retrieval. This project demonstrates the practical application of AI in enhancing digital organization and personal productivity. |
| AUTHOR | PROF. ANU C S, AMOGH P PUTHANIKAR, VIBHA G S, VINEETH S S Assistant Professor, Department of CS&E, Bapuji Institute of Engineering and Technology, Davanagere, Karnataka, India U.G. Student, Department of CS&E, Bapuji Institute of Engineering and Technology, Davanagere, Karnataka, India |
| VOLUME | 177 |
| DOI | DOI: 10.15680/IJIRCCE.2025.1312045 |
| pdf/45_AI-Based Automated File Organizer.pdf | |
| KEYWORDS | |
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