Skip to content

Shitaolol/Dive-Into-Deep-Learning-With-PyTorch

 
 

Repository files navigation

Dive-Into-Deep-Learning-With-PyTorch

动手学深度学习(PyTorch实现)

Dive-Into-Deep Learning-With-PyTorch

伯禹平台视频课程: https://www.boyuai.com/elites/course/cZu18YmweLv10OeV

K-Lab动手实践: https://www.kesci.com/org/boyuai/workspace/project

Homework1

  • Task01:线性回归;Softmax与分类模型;多层感知机(1天)
  • Task02:文本预处理;语言模型;循环神经网络基础(1天)

Homework2

  • Task03:过拟合、欠拟合及其解决方案;梯度消失、梯度爆炸;循环神经网络进阶(1天)
  • Task04:机器翻译及相关技术;注意力机制与Seq2seq模型;Transformer(1天)
  • Task05:卷积神经网络基础;leNet;卷积神经网络进阶(1天)

Homework3

  • Task06:批量归一化和残差网络;凸优化;梯度下降(1天)
  • Task07:优化算法进阶;word2vec;词嵌入进阶(1天)
  • Task08:文本分类;数据增强;模型微调(1天)

Homework4

  • Task09:目标检测基础;图像风格迁移;图像分类案例1(1天)
  • Task10:图像分类案例2;GAN;DCGAN(1天)

About

动手学深度学习(PyTorch实现)

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages

  • Jupyter Notebook 100.0%