How do you address the challenge of maintaining coherent and contextually relevant outputs during long-form text generation

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With the help of python programming suggest how can we address the challenge of maintaining coherent and contextually relevant outputs?
Nov 8 in Generative AI by Ashutosh
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1 answer to this question.

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You can maintain coherent and contextually relevant outputs by referring to code below:

In the above reference Context Window , Temperature , Top-p , No repeat Ngram techniques were implemented

answered Nov 8 by shalini mishra

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