Publication | Closed Access
One-Shot Sensitivity-Aware Mixed Sparsity Pruning for Large Language Models
22
Citations
26
References
2024
Year
Unknown Venue
Llm Fine-tuningEngineeringMachine LearningLarge Language ModelSpeech RecognitionNatural Language ProcessingLarge Language ModelsData ScienceSparse Neural NetworkComputational LinguisticsLanguage StudiesLlm StudiesMachine TranslationHigh Inference LatencyComputer ScienceDeep LearningModel CompressionPruning-induced ErrorLinguistics
Various Large Language Models (LLMs) from the Generative Pretrained Transformer (GPT) family have achieved outstanding performances in a wide range of text generation tasks. However, the enormous model sizes have hindered their practical use in real-world applications due to high inference latency. Therefore, improving the efficiencies of LLMs through quantization, pruning, and other means has been a key issue in LLM studies. In this work, we propose a method based on Hessian sensitivity-aware mixed sparsity pruning to prune LLMs to at least 50% sparsity without the need of any retraining. It allocates sparsity adaptively based on sensitivity, allowing us to reduce pruning-induced error while maintaining the overall sparsity level. The advantages of the proposed method exhibit even more when the sparsity is extremely high. Furthermore, our method is compatible with quantization, enabling further compression of LLMs.
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