Content HUB a Unified Content Aggregation Platform

Abstract

The project is a dynamic and versatile system designed to aggregate web content efficiently. This innovative framework leverages cutting-edge technologies to collect, organize, and present diverse online content in a unified and user-friendly manner. By enabling the aggregation of web data from various sources, including websites, social media, and news feeds, this project empowers users to access a comprehensive and curate stream of information. Whether for research, content duration, or staying informed, the framework simplifies the process of collecting and managing web content, enhancing the accessibility and utility of online information. The Carrier Content Aggregation and Preference Finding System is a comprehensive project designed to streamline and enhance the user’s carrier content consumption experience. This system aggregates diverse carrier content from various sources, such as CVs, and Candidates, and employs advanced algorithms like Keyword Extraction & Text Mining to understand user preferences. Through User inter action sand feedback, it adapts and recommends personalized content tailored to individual tastes and interests. This project not only simplifies content discovery but also offers users a more engaging and relevant carrier experience in an increasingly digital world.

Country : India

1 A Shruti Patil2 Vidhya Chavan3 Prof. Archana Chalwa

  1. Student, Department of Computer Engineering, Siddhant College of Engineering, Sudumbare, Pune, Maharashtra, India
  2. Student, Department of Computer Engineering, Siddhant College of Engineering, Sudumbare, Pune, Maharashtra, India
  3. Professor, Department of Computer Engineering, Siddhant College of Engineering, Sudumbare, Pune, Maharashtra, India

IRJIET, Volume 8, Issue 4, April 2024 pp. 207-212

doi.org/10.47001/IRJIET/2024.804029

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