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arxiv:2607.03935

Harness-Aware Self-Evolving: Co-Evolving Model Weights, Harness, and Task Solutions

Published on Jul 4
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Abstract

HASE is an agentic reinforcement-learning framework that simultaneously optimizes task solutions and adapts harness components through a unified process, achieving performance comparable to larger models while improving both solution quality and harness functionality.

Self-evolving frameworks usually optimize task solutions while treating the surrounding harness as fixed. We introduce Harness-Aware Self-Evolving (HASE), an agentic reinforcement-learning framework in which a single model can generate task solutions or edit selected harness components in a multi-turn action space. HASE enables a single Qwen3-8B model to match the text-classification performance of a GPT-OSS-120B model that uses Claude Code as the harness proposer. In alpha factor mining, HASE outperforms the reported GPT-OSS-120B baseline. HASE also repairs imperfect evaluation components and converges to state-of-the-art performance in circle-packing algorithm discovery. These results show that HASE improves the harness and the solution through one unified agentic process.

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