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zeusees / Hyperdl Tutorial

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HyperDL-Tutorial

HyperDL-Tutorial 是一个深度学习相关的系列文章,总结了我们在深度学习实践中的一些经验。

目录

  1. 常见深度学习框架
  2. 基础网络
  3. 神经网络的优化
  4. 模型之间的转换
  5. 适用于移动端的框架
  6. 神经网络的设计
  7. 神经网络的适用场景
  8. 基础网络的训练
  9. 相关面试题
  10. 对抗蒸馏

教程在逐渐完善中,感兴趣的同学可以给我们提一些意见,如果文中理解有误或者表述不当,也欢迎指出。

欢迎大家转载,请标明出处,谢谢大家。

如果你也愿意分享自己的技术心得,欢迎加我们的交流群 QQ:737677707, 备注:HyperDL

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