Affiliation:
1. Global Academy of Technology, Bangalore, India
Abstract
In a world where collaboration is increasingly digital, the efficiency and security of meetings have become paramount. Our project introduces a comprehensive online meeting platform extension that leverages advanced technologies to enhance the meeting experience. Using BERT for data classification, question answering, and summarization, along with an advanced Language Model (LLM) for data protection, we address common challenges such as information overload, language barriers, limited searchability, and a lack of actionable insights. This extension aims to revolutionize meetings, making them more productive, collaborative, and secure
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