Natural-Language Agent Harnesses

Linyue Pan, Lexiao Zou, Shuo Guo et al.

March 26, 2026 Score: 7.7

Interest Score Breakdown

Seismic Impact (30%)

7.0/10

Industry-wide significance

Ecosystem Relevance (70%)

8.0/10

Applicable to your apps

Abstract

Agent performance increasingly depends on \emph{harness engineering}, yet harness design is usually buried in controller code and runtime-specific conventions, making it hard to transfer, compare, and study as a scientific object. We ask whether the high-level control logic of an agent harness can instead be externalized as a portable executable artifact. We introduce \textbf{Natural-Language Agent Harnesses} (NLAHs), which express harness behavior in editable natural language, and \textbf{Intelligent Harness Runtime} (IHR), a shared runtime that executes these harnesses through explicit contracts, durable artifacts, and lightweight adapters. Across coding and computer-use benchmarks, we conduct controlled evaluations of operational viability, module ablation, and code-to-text harness migration.

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