Skip to content

sampathweb/dl-course

This branch is 12 commits behind catalyst-team/dl-course:master.

Folders and files

NameName
Last commit message
Last commit date

Latest commit

Jan 5, 2021
02131cc · Jan 5, 2021

History

80 Commits
Oct 10, 2020
Dec 24, 2020
Dec 24, 2020
Dec 24, 2020
Jan 5, 2021
Jan 5, 2021
Jan 5, 2021
Jan 5, 2021
Jan 5, 2021
Jan 5, 2021
Jan 5, 2021
Jan 5, 2021
Jan 5, 2021
Dec 24, 2020
Dec 24, 2020
Dec 24, 2020
Dec 11, 2020
Sep 12, 2020
Sep 12, 2020
Jan 5, 2021

Repository files navigation

Deep Learning with Catalyst Stepik Slack

dls-catalyst-course

This is an open deep learning course made by Deep Learning School, Tinkoff and Catalyst team. Lectures and practice notebooks located in '''./week*''' folders. Homeworks are in '''./homework*''' folders.

Syllabus

  • week 1: Deep learning intro
    • Deep learning – introduction, backpropagation algorithm. Optimization methods.
    • Neural Network in numpy.
  • week 2: Deep learning frameworks
    • Regularization methods and deep learning frameworks.
    • Pytorch basics & extras.
  • week 3: Convolutional Neural Network
    • CNN. Model Zoo.
    • Convolutional kernels. ResNet. Simple Noise Attack.
  • week 4: Object Detection, Image Segmentation
    • Object Detection. (One, Two)-Stage methods. Anchors.
    • Image Segmentation. Up-scaling. FCN, U-net, FPN. DeepMask.
  • week 5: Metric Learning
    • Metric Learning. Contrastive and Triplet Loss. Samplers.
    • Cross Entropy Loss modifications. SphereFace, CosFace, ArcFace.
  • week 6: Autoencoders
    • AutoEncoders. Denoise, Sparse, Variational.
    • Generative Models. Autoregressive models.
  • week 7: Generative Adversarial Models
    • Generative Adversarial Networks. VAE-GAN. AAE.
    • Energy based model.
  • week 8: Natural Language Processing
    • Embeddings.
    • RNN. LSTM, GRU.
  • week 9: Attention and transformer model
    • Attention Mechanism.
    • Transformer Model.
  • week 10: Transfer Learning in NLP
    • Pretrained Transformers. BERT. GPT.
    • Data Augmentation in Texts. Domain Adaptation.
  • week 11: Recommender Systems
    • Collaborative Filtering. FunkSVD.
    • Neural Collaborative Filtering.
  • week 12: Reinforcement Learning for RecSys
    • Reinforcement Learning. DQN Algorithm.
    • DDPG Algorithm. Wolpertinger.
  • week 13: Extras
    • Research & Deploy.
    • Config API. Reaction.

Course staff & contributors

About

Deep Learning with Catalyst

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages

  • Jupyter Notebook 95.3%
  • Python 4.6%
  • Other 0.1%