English

ProfInfer: An eBPF-based Fine-Grained LLM Inference Profiler

Software Engineering 2026-01-30 v2

Abstract

As large language models (LLMs) move from research to production, understanding how inference engines behave in real time has become both essential and elusive. Unlike general-purpose engines such as ONNX Runtime, today's LLM inference systems offer little operator-level visibility, leaving developers blind to where time and resources go. Even basic questions -- is this workload memory-bound or compute-bound? -- often remain unanswered. To close this gap, we develop a fine-grained, non-intrusive profiling framework for modern LLM inference engines, exemplified by llama-cpp but applicable to similar runtime architectures. Built on extended Berkeley Packet Filter (eBPF) technology, our system dynamically attaches probes to runtime functions across multiple layers -- without modifying or recompiling the source. It transforms collected traces into rich visualizations of operators, graphs, timelines, and hardware counter trends, exposing how dense inference, Mixture-of-Experts routing, and operator offloading behave in practice. With less than 4% runtime overhead and high profiling fidelity, our framework makes LLM inference both transparent and diagnosable, turning performance profiling into a practical tool for optimization, scheduling, and resource-aware deployment.

Keywords

Cite

@article{arxiv.2601.20755,
  title  = {ProfInfer: An eBPF-based Fine-Grained LLM Inference Profiler},
  author = {Bohua Zou and Debayan Roy and Dhimankumar Yogesh Airao and Weihao Xu and Binqi Sun and Yutao Liu and Haibo Chen},
  journal= {arXiv preprint arXiv:2601.20755},
  year   = {2026}
}

Comments

Accepted in the 9th Annual Conference on Machine Learning and Systems (MLSys 2026)

R2 v1 2026-07-01T09:24:11.217Z