English

OpenBA-V2: Reaching 77.3% High Compression Ratio with Fast Multi-Stage Pruning

Computation and Language 2024-05-10 v1

Abstract

Large Language Models (LLMs) have played an important role in many fields due to their powerful capabilities.However, their massive number of parameters leads to high deployment requirements and incurs significant inference costs, which impedes their practical applications. Training smaller models is an effective way to address this problem. Therefore, we introduce OpenBA-V2, a 3.4B model derived from multi-stage compression and continual pre-training from the original 15B OpenBA model. OpenBA-V2 utilizes more data, more flexible training objectives, and techniques such as layer pruning, neural pruning, and vocabulary pruning to achieve a compression rate of 77.3\% with minimal performance loss. OpenBA-V2 demonstrates competitive performance compared to other open-source models of similar size, achieving results close to or on par with the 15B OpenBA model in downstream tasks such as common sense reasoning and Named Entity Recognition (NER). OpenBA-V2 illustrates that LLMs can be compressed into smaller ones with minimal performance loss by employing advanced training objectives and data strategies, which may help deploy LLMs in resource-limited scenarios.

Keywords

Cite

@article{arxiv.2405.05957,
  title  = {OpenBA-V2: Reaching 77.3% High Compression Ratio with Fast Multi-Stage Pruning},
  author = {Dan Qiao and Yi Su and Pinzheng Wang and Jing Ye and Wenjing Xie and Yuechi Zhou and Yuyang Ding and Zecheng Tang and Jikai Wang and Yixin Ji and Yue Wang and Pei Guo and Zechen Sun and Zikang Zhang and Juntao Li and Pingfu Chao and Wenliang Chen and Guohong Fu and Guodong Zhou and Qiaoming Zhu and Min Zhang},
  journal= {arXiv preprint arXiv:2405.05957},
  year   = {2024}
}
R2 v1 2026-06-28T16:22:26.307Z