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Text Summarization Using LLM

Author

Listed:
  • Utsha Sarker

  • Lalit Vaishnav

  • Archy Biswas

  • Ashish Raj; Saurabh

  • Saurabh

Abstract

The main reason for the high effectiveness of text summarization is due to the success of LLMs for this task and across different domains. This work aims at understanding how LLMs are used to summarize domains and make it more accurate and efficient. We discuss how current models perform with regard to specialized information, with focus on the financial and medical domains. The work suggests that an approach using Vertex AI, a generative machine learning platform in the cloud, can be used to assess pre-trained summarization models for different tasks. Most of the research presented in the paper also reveals the efficacy of Vertex AI for text summarization with high accuracy and efficiency. We demonstrate the applicability of the platform for summarizing transcripts and dialogues, generating bullet points, titles and to- do lists. Also, the research show that Vertex AI is reliable in terms of cost since it can be used by businesses and individual researchers.

Suggested Citation

  • Utsha Sarker & Lalit Vaishnav & Archy Biswas & Ashish Raj; Saurabh & Saurabh, 2025. "Text Summarization Using LLM," International Journal of Innovative Science and Research Technology (IJISRT), IJISRT Publication, vol. 10(11), pages 1193-1198, November.
  • Handle: RePEc:cvr:ijisrt:2025:11:ijisrt25nov797
    DOI: 10.38124/ijisrt/25nov797
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