LGPFOct 7, 2025

lm-Meter: Unveiling Runtime Inference Latency for On-Device Language Models

arXiv:2510.06126v11 citationsh-index: 6Has CodeSEC
Originality Incremental advance
AI Analysis

This tool addresses performance bottlenecks for developers optimizing LLMs on resource-constrained mobile and edge devices, though it is incremental as it builds on existing profiling concepts.

The paper tackles the challenge of profiling runtime inference latency for on-device language models, proposing lm-Meter, a lightweight online profiler that achieves high accuracy with minimal overhead, such as only 2.58% throughput reduction in prefill phases.

Large Language Models (LLMs) are increasingly integrated into everyday applications, but their prevalent cloud-based deployment raises growing concerns around data privacy and long-term sustainability. Running LLMs locally on mobile and edge devices (on-device LLMs) offers the promise of enhanced privacy, reliability, and reduced communication costs. However, realizing this vision remains challenging due to substantial memory and compute demands, as well as limited visibility into performance-efficiency trade-offs on resource-constrained hardware. We propose lm-Meter, the first lightweight, online latency profiler tailored for on-device LLM inference. lm-Meter captures fine-grained, real-time latency at both phase (e.g., embedding, prefill, decode, softmax, sampling) and kernel levels without auxiliary devices. We implement lm-Meter on commercial mobile platforms and demonstrate its high profiling accuracy with minimal system overhead, e.g., only 2.58% throughput reduction in prefill and 0.99% in decode under the most constrained Powersave governor. Leveraging lm-Meter, we conduct comprehensive empirical studies revealing phase- and kernel-level bottlenecks in on-device LLM inference, quantifying accuracy-efficiency trade-offs, and identifying systematic optimization opportunities. lm-Meter provides unprecedented visibility into the runtime behavior of LLMs on constrained platforms, laying the foundation for informed optimization and accelerating the democratization of on-device LLM systems. Code and tutorials are available at https://github.com/amai-gsu/LM-Meter.

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