Papers with full fine-tuning of language models

1 papers
SMoP: Towards Efficient and Effective Prompt Tuning with Sparse Mixture-of-Prompts (2023.emnlp-main)

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Challenge: Prompt tuning has emerged as a successful parameter-efficient alternative to the full fine-tuning of language models.
Approach: They propose a prompt tuning method that utilizes short soft prompts for efficient training and inference while maintaining performance gains typically induced by longer soft prompt.
Outcome: The proposed method outperforms baseline methods while preserving memory usage.

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