Published December 13, 2024 | Version v1
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Real-Time Audio Transcription with Automated PDF Summarization and Contextual Insights

Description

This research provides a comprehensive  examination of automated PDF summarization and real- time audio transcription systems, focusing on their  integration to derive contextual insights. The study explores recent advancements in automatic speech recognition (ASR) technologies that enable instantaneous conversion of spoken language into text, as well as techniques for both extractive and abstractive summarization of PDF 4 documents. The paper investigates how combining these technologies can enhance applications across various sectors, including media, business, healthcare, and education, by delivering real-time, contextually relevant information. It also addresses key industry challenges, such as handling complex documents, ensuring scalability, achieving high transcription accuracy, and managing noisy environments. The research concludes with a discussion on potential future developments, including improving multilingual capabilities, reducing biases in AI models, and enhancing system integration with other technologies to provide more efficient and personalized insights.

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Dates

Accepted
2024-12-13