Section 01
VAC: Guide to Intelligent Neural Network Compression Technology Guided by Fisher Information
Core Overview of the VAC Project
VAC (Variable Allocation Compression) is a structured neural network compression method that combines Fisher information sensitivity analysis and evolutionary strategy search. By allocating optimal compression budgets to each weight matrix, it achieves a compression ratio of up to 2x while maintaining model performance, providing new insights for the efficient deployment of large language models.
Project Source
- Original author/maintainer: asystemoffields
- Source platform: GitHub
- Release time: May 26, 2026
- Project link: https://github.com/asystemoffields/v-a-c