Sparsellm: Towards Global Pruning For Pre-trained Language Models · The Large Language Model Bible Contribute to LLM-Bible

Sparsellm: Towards Global Pruning For Pre-trained Language Models

Bai Guangji, Li Yijiang, Ling Chen, Kim Kibaek, Zhao Liang. Arxiv 2024

[Paper]    
Efficiency And Optimization GPT Model Architecture Pruning RAG Reinforcement Learning Tools

The transformative impact of large language models (LLMs) like LLaMA and GPT on natural language processing is countered by their prohibitive computational demands. Pruning has emerged as a pivotal compression strategy, introducing sparsity to enhance both memory and computational efficiency. Yet, traditional global pruning is impractical for LLMs due to scalability issues, while local pruning, despite its efficiency, leads to suboptimal solutions. Addressing these challenges, we propose SparseLLM, a novel framework that redefines the global pruning process into manageable, coordinated subproblems, allowing for resource-efficient optimization with global optimality. SparseLLM’s approach, which conceptualizes LLMs as a chain of modular functions and leverages auxiliary variables for problem decomposition, not only facilitates a pragmatic application on LLMs but also demonstrates significant performance improvements, particularly in high-sparsity regimes where it surpasses current state-of-the-art methods.

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