Tensorgpt: Efficient Compression Of The Embedding Layer In Llms Based On The Tensor-train Decomposition · The Large Language Model Bible Contribute to LLM-Bible

Tensorgpt: Efficient Compression Of The Embedding Layer In Llms Based On The Tensor-train Decomposition

Xu Mingxue, Xu Yao Lei, Mandic Danilo P.. Arxiv 2023

[Paper]    
GPT Model Architecture RAG

High-dimensional token embeddings underpin Large Language Models (LLMs), as they can capture subtle semantic information and significantly enhance the modelling of complex language patterns. However, the associated high dimensionality also introduces considerable model parameters, and a prohibitively high model storage. To address this issue, this work proposes an approach based on the Tensor-Train Decomposition (TTD), where each token embedding is treated as a Matrix Product State (MPS) that can be efficiently computed in a distributed manner. The experimental results on GPT-2 demonstrate that, through our approach, the embedding layer can be compressed by a factor of up to 38.40 times, and when the compression factor is 3.31 times, even produced a better performance than the original GPT-2 model.

Similar Work