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    <title>存算一体 on Deep Research</title>
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      <title>1000倍性能的承诺：为什么模拟AI加速器在实验室表现卓越，却难以进入你的手机</title>
      <link>https://dailydigest.aabot.us/zh/posts/2026-05-05-the-1000x-promise-why-analog-ai-accelerators-work-brilliantly-in-labs-but-struggle-reaching-your-phone/</link>
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      <description>IBM的模拟AI芯片在实验室演示中比数字处理器实现了1000倍的能效提升，以飞焦级精度处理语音识别任务。然而，尽管在物理突破和技术优势方面得到证实，这些革命性加速器面临着现实鸿沟：制造成本、软件兼容性障碍以及基础设施要求，这解释了为什么你的下一部智能手机很可能不会包含模拟AI——无论研究结果看起来多么令人印象深刻。</description>
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