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Mitigating negative KL divergence

You were fine-tuning the model using RLHF techniques and noticed that the model's performance has worsened compared to the base model. You suspect this is due to negative KL divergence, so you want to set the correct generation parameters to prevent this issue.

The tokenizer has been pre-imported.

This exercise is part of the course

Reinforcement Learning from Human Feedback (RLHF)

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Exercise instructions

  • Set top_k and min_length to values that help avoid KL divergence.

Hands-on interactive exercise

Have a go at this exercise by completing this sample code.

generation_kwargs = {
    # Set min length and top k parameters
    ____, 
  	"top_p": 1.0,
  	"do_sample": True,  
  	"pad_token_id": tokenizer.eos_token_id, 
  	"max_new_tokens": 32}
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