How can Generative AI be used for text summarization?
Answer / Poonam Gautam
"Generative AI can be used for text summarization by training models on large datasets of news articles or other texts, learning to extract the most important information and condense it into a shorter summary. Sequence-to-sequence models, such as Encoder-Decoder architectures, are commonly used for this purpose. These models can be further fine-tuned with specific summarization objectives to produce better summaries."n
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