WIKINDX

WIKINDX Resources

Hua, W., Williams, B., & Shamsi, D. LACoS-BLOOM: Low-rank Adaptation with Contrastive objective on 8 bits Siamese-BLOOM. 
Resource type: Journal Article
BibTeX citation key: anon.72
View all bibliographic details
Categories: General
Creators: Hua, Shamsi, Williams
Attachments   URLs   https://www.semant ... 260a3e048d6d8eae72
Abstract
A Low-rank Adaptation with a Contrastive objective on top of 8-bit Siamese-BLOOM, a multilingual large language model optimized to produce semantically meaningful word embeddings, achieves significant improvement on both English and multi-lingual STS tasks. Text embeddings are useful features for several NLP applications, such as sentence similarity, text clustering, and semantic search. In this paper, we present a Low-rank Adaptation with a Contrastive objective on top of 8-bit Siamese-BLOOM, a multilingual large language model optimized to produce semantically meaningful word embeddings. The innovation is threefold. First, we cast BLOOM weights to 8-bit values. Second, we fine-tune BLOOM with a scalable adapter (LoRA) and 8-bit Adam optimizer for sentence similarity classification. Third, we apply a Siamese architecture on BLOOM model with a contrastive objective to ease the multi-lingual labeled data scarcity. The experiment results show the quality of learned embeddings from LACoS-BLOOM is proportional to the number of model parameters and the amount of unlabeled training data. With the parameter efficient fine-tuning design, we are able to run BLOOM 7.1 billion parameters end-to-end on a single GPU machine with 32GB memory. Compared to previous solution Sentence-BERT, we achieve significant improvement on both English and multi-lingual STS tasks.
  
WIKINDX 6.11.0 | Total resources: 209 | Username: -- | Bibliography: WIKINDX Master Bibliography | Style: American Psychological Association (APA)