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Self-Harness: Harnesses That Improve Themselves

▲ 80 points 6 comments by jonnonz 3d ago HN discussion ↗

Pangram verdict · v3.3

We believe that this document is fully AI-generated

92 %

AI likelihood · overall

AI
0% human-written 100% AI-generated
SEGMENTS · HUMAN 0 of 2
SEGMENTS · AI 2 of 2
WORD COUNT 265
PEAK AI % 93% · §2
Analyzed
Jun 24
backend: pangram/v3.3
Segments scanned
2 windows
avg 133 words each
Distribution
0 / 100%
human / AI fraction
Verdict
AI
Pangram v3.3

Article text · 265 words · 2 segments analyzed

Human AI-generated
§1 AI · 92%

View PDF HTML (experimental) Abstract:The performance of LLM-based agents is jointly shaped by their base models and the harnesses that mediate their interaction with the environment. Because different models exhibit distinct behaviors, effective harness design is inherently model-specific. Yet agent harnesses are still largely engineered by human experts, a paradigm that scales poorly as modern LLMs become increasingly diverse and rapidly evolving. In this paper, we introduce Self-Harness, a new paradigm in which an LLM-based agent improves its own operating harness, without relying on human engineers or stronger external agents. We operationalize Self-Harness as an iterative loop with three stages: Weakness Mining, which identifies model-specific failure patterns from execution traces; Harness Proposal, which generates diverse yet minimal harness modifications tied to these failures; and Proposal Validation, which accepts candidate edits only after regression testing. We instantiate Self-Harness on Terminal-Bench-2.0 using a minimal initial harness and three base models from diverse families: MiniMax M2.5, Qwen3.5-35B-A3B, and GLM-5. Across all three models, Self-Harness consistently improves performance, with held-out pass rates increasing from 40.5% to 61.9%, 23.8% to 38.1%, and 42.9% to 57.1%, respectively. Qualitative analyses further show that Self-Harness does not simply add generic instructions, but effectively turns model-specific weaknesses into concrete, executable harness changes. These results suggest a path toward LLM-based agents that are not merely shaped by their harnesses, but can also participate in reshaping them.

Subjects: Computation and Language (cs.CL) Cite as: arXiv:2606.09498 [cs.CL]   (or arXiv:2606.09498v1 [cs.

§2 AI · 93%

CL] for this version)   https://doi.org/10.48550/arXiv.2606.09498 arXiv-issued DOI via DataCite (pending registration) Submission history From: Hangfan Zhang [view email] [v1] Mon, 8 Jun 2026 13:50:23 UTC (3,355 KB)