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

0 votes
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
• 4,290 points
32 views

1 answer to this question.

0 votes

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

Related Questions In Generative AI

0 votes
1 answer

What methods do you use to handle out-of-vocabulary words or tokens during text generation in GPT models?

The three efficient techniques are as follows: 1.Subword Tokenization(Byte ...READ MORE

answered Nov 8 in Generative AI by ashu yadav
64 views
0 votes
0 answers
0 votes
1 answer

What are the best practices for fine-tuning a Transformer model with custom data?

Pre-trained models can be leveraged for fine-tuning ...READ MORE

answered Nov 5 in ChatGPT by Somaya agnihotri

edited Nov 8 by Ashutosh 136 views
0 votes
1 answer

What preprocessing steps are critical for improving GAN-generated images?

Proper training data preparation is critical when ...READ MORE

answered Nov 5 in ChatGPT by anil silori

edited Nov 8 by Ashutosh 83 views
0 votes
1 answer

How do you handle bias in generative AI models during training or inference?

You can address biasness in Generative AI ...READ MORE

answered Nov 5 in Generative AI by ashirwad shrivastav

edited Nov 8 by Ashutosh 117 views
0 votes
1 answer
0 votes
1 answer
webinar REGISTER FOR FREE WEBINAR X
REGISTER NOW
webinar_success Thank you for registering Join Edureka Meetup community for 100+ Free Webinars each month JOIN MEETUP GROUP