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    <title>Transformer替代 on AI内参</title>
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      <title>状态空间模型：重塑边缘AI，开启泛在智能新纪元</title>
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      <description>状态空间模型（SSMs）正以其独特的“无记忆”架构，有望克服Transformer模型在边缘设备上的功耗与内存瓶颈。BrainChip的TENN 1B LLM展示了SSMs在低功耗边缘设备上运行大语言模型的潜力，这将开启一个泛在智能的新纪元，彻底重塑从消费电子到工业物联网的商业格局，但也需关注随之而来的伦理挑战。</description>
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