DCAISep 27, 2025

Scaling LLM Test-Time Compute with Mobile NPU on Smartphones

Microsoft
arXiv:2509.23324v13 citationsh-index: 16
Originality Incremental advance
AI Analysis

It addresses performance and resource issues for mobile LLM deployment, representing an incremental improvement with domain-specific optimizations.

This paper tackles the challenge of deploying Large Language Models on mobile devices by leveraging underutilized mobile NPU compute for test-time scaling, achieving up to 19.0x speedup in mixed-precision GEMM and enabling smaller models to match or exceed the accuracy of larger ones.

Deploying Large Language Models (LLMs) on mobile devices faces the challenge of insufficient performance in smaller models and excessive resource consumption in larger ones. This paper highlights that mobile Neural Processing Units (NPUs) have underutilized computational resources, particularly their matrix multiplication units, during typical LLM inference. To leverage this wasted compute capacity, we propose applying parallel test-time scaling techniques on mobile NPUs to enhance the performance of smaller LLMs. However, this approach confronts inherent NPU challenges, including inadequate hardware support for fine-grained quantization and low efficiency in general-purpose computations. To overcome these, we introduce two key techniques: a hardware-aware tile quantization scheme that aligns group quantization with NPU memory access patterns, and efficient LUT-based replacements for complex operations such as Softmax and dequantization. We design and implement an end-to-end inference system that leverages the NPU's compute capability to support test-time scaling on Qualcomm Snapdragon platforms. Experiments show our approach brings significant speedups: up to 19.0 for mixed-precision GEMM and 2.2 for Softmax. More importantly, we demonstrate that smaller models using test-time scaling can match or exceed the accuracy of larger models, achieving a new performance-cost Pareto frontier.

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