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      <title>走出“GenAI鸿沟”：Agent工程化的评估范式革命</title>
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      <description>企业级Agent落地困难的核心不在于模型能力，而在于缺乏针对非确定性输出的工程评估标准。本文通过剖析ADLC方法论与评估框架，指出企业唯有通过自建评估基准与可观测性体系，才能突破“GenAI鸿沟”，实现AI Agent的规模化生产。</description>
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