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Xiaomi’s HarnessX rewrites its own AI scaffolding mid-task — and smaller models gain the most
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As enterprise AI agents take on increasingly complex, long-horizon tasks, their performance is often restricted by their harness, the software scaffolding that connects the backbone LLM to its environment. Currently, harnesses are largely static and hand-crafted. Improving them is largely manual… As enterprise AI agents take on increasingly complex, long-horizon tasks, their performance is often restricted by their harness, the software scaffolding that connects the backbone LLM to its environment. Currently, harnesses are largely static and hand-crafted. Improving them is largely manual and they do not automatically improve based on the execution data they collect from their environment.To address this engineering bottleneck, researchers at Xiaomi introduced HarnessX, a framework that treats the AI harness as a composable object and autonomously applies improvements to its code. In real-world enterprise applications, this automated adaptation enables AI systems to dynamically adjust to application-specific requirements. Practical tests showed HarnessX delivering substantial performance gains across domains like software engineering and web interaction. The results demonstrate that scaling the foundation model is not the only path to more capable AI — and for smaller models, it may not even be the best one. HarnessX's harness evolution yielded an average +14.5% performance gain across 15 model-benchmark combinations; for the open-weight Qwen3.5-9B,…
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