中文

Stop Comparing LLM Agents Without Disclosing the Harness

人工智能 2026-05-26 v1 软件工程

摘要

This position paper argues that, for long-horizon tasks evaluated across models with comparable frontier capability, the agent execution harness, namely the infrastructure layer that governs context construction, tool interaction, orchestration, and verification around a language model, is often a stronger determinant of agent performance than the model it wraps. We formalize and defend the Binding Constraint Thesis: in this regime, performance variance is governed more by harness configuration than by model choice, and current evaluation protocols therefore systematically misattribute harness-level gains to model improvements. We support this thesis along three lines. First, a control-theoretic formalization treats the harness as the controller of a closed-loop dynamical system and the LLM as the stochastic policy it governs, which explains why small harness changes can produce performance shifts that exceed those obtained by substituting one model for another. Second, published benchmarks, industry deployments, and a controlled variance decomposition show that harness-induced variance can substantially exceed model-induced variance, including cases of model ranking reversal. Third, we propose a harness-aware evaluation framework with a disclosure standard and a variance decomposition protocol. Until harness specifications are disclosed, leaderboard comparisons for long-horizon agents should be treated as incomplete and potentially misleading.

关键词

引用

@article{arxiv.2605.23950,
  title  = {Stop Comparing LLM Agents Without Disclosing the Harness},
  author = {Yunbei Zhang and Janet Wang and Yingqiang Ge and Weijie Xu and Jihun Hamm and Chandan K. Reddy},
  journal= {arXiv preprint arXiv:2605.23950},
  year   = {2026}
}