LGCLFeb 2

TraceNAS: Zero-shot LLM Pruning via Gradient Trace Correlation

arXiv:2602.02891v1
Originality Incremental advance
AI Analysis

This addresses the computational burden of pruning LLMs for deployment, though it is incremental as it builds on existing pruning and NAS techniques.

The paper tackles the problem of efficiently pruning Large Language Models (LLMs) by proposing TraceNAS, a training-free Neural Architecture Search framework that identifies pruned models with high loss landscape alignment, achieving a 10× reduction in GPU-hours compared to training-aware methods while maintaining competitive performance on benchmarks.

Structured pruning is essential for efficient deployment of Large Language Models (LLMs). The varying sensitivity of LLM sub-blocks to pruning necessitates the identification of optimal non-uniformly pruned models. Existing methods evaluate the importance of layers, attention heads, or weight channels in isolation. Such localized focus ignores the complex global structural dependencies that exist across the model. Training-aware structured pruning addresses global dependencies, but its computational cost can be just as expensive as post-pruning training. To alleviate the computational burden of training-aware pruning and capture global structural dependencies, we propose TraceNAS, a training-free Neural Architecture Search (NAS) framework that jointly explores structured pruning of LLM depth and width. TraceNAS identifies pruned models that maintain a high degree of loss landscape alignment with the pretrained model using a scale-invariant zero-shot proxy, effectively selecting models that exhibit maximal performance potential during post-pruning training. TraceNAS is highly efficient, enabling high-fidelity discovery of pruned models on a single GPU in 8.5 hours, yielding a 10$\times$ reduction in GPU-hours compared to training-aware methods. Evaluations on the Llama and Qwen families demonstrate that TraceNAS is competitive with training-aware baselines across commonsense and reasoning benchmarks.

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