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      <title>张量：深度学习的数据容器</title>
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      <description>张量是深度学习的核心数据结构。本文从维度递进讲起，深入解析秩、轴、形状三大属性，揭示内存中的步长机制，追踪Transformer中的张量流动，解释GPU并行计算的原理，并提供常见错误的调试策略。</description>
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