VeLoRA: Memory Efficient Training using Rank-1 Sub-Token Projections
Large language models (LLMs) have recently emerged as powerful tools for tackling many language-processing tasks. Despite their success, training and fine-tuning these models is still far too computationally and memory intensive. In this paper, we identify and characterise the important components n...
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Zusammenfassung: | Large language models (LLMs) have recently emerged as powerful tools for
tackling many language-processing tasks. Despite their success, training and
fine-tuning these models is still far too computationally and memory intensive.
In this paper, we identify and characterise the important components needed for
effective model convergence using gradient descent. In doing so we find that
the intermediate activations used to implement backpropagation can be
excessively compressed without incurring any degradation in performance. This
result leads us to a cheap and memory-efficient algorithm for both fine-tuning
and pre-training LLMs. The proposed algorithm simply divides the tokens up into
smaller sub-tokens before projecting them onto a fixed 1-dimensional subspace
during the forward pass. These features are then coarsely reconstructed during
the backward pass to implement the update rules. We confirm the effectiveness
of our algorithm as being complimentary to many state-of-the-art PEFT methods
on the VTAB-1k fine-tuning benchmark. Furthermore, we outperform QLoRA for
fine-tuning LLaMA and show competitive performance against other
memory-efficient pre-training methods on the large-scale C4 dataset. |
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DOI: | 10.48550/arxiv.2405.17991 |