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GunhoChoi / Deep Learning For Beginners

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Deep Learning for beginners

2016년 8월부터 딥러닝공부를 하면서 봤던 강의영상, 동영상, 블로그들의 목록입니다.

What is Deep Learning ?

  1. Deep Learning introduced by Nvidia (https://www.youtube.com/watch?v=C2FS9WVm7j4)
  2. Deep Learrning Roadmap (https://github.com/songrotek/Deep-Learning-Papers-Reading-Roadmap)
  3. What is deep learning (http://machinelearningmastery.com/what-is-deep-learning/)

Installation

  1. Azure server NV series install (https://docs.microsoft.com/en-us/azure/virtual-machines/linux/n-series-driver-setup)

Libraries

  1. Tensorflow (https://www.tensorflow.org/)
  2. Tensorflow Cookbook (https://github.com/nfmcclure/tensorflow_cookbook)
  3. CNTK (https://github.com/Microsoft/CNTK, https://www.microsoft.com/en-us/research/product/cognitive-toolkit/)
  4. CNTK Tutorial (https://notebooks.azure.com/library/cntkbeta2)
  5. Keras Pretrained Models (https://github.com/fchollet/keras/blob/master/docs/templates/applications.md)
  6. Keras Blog (https://blog.keras.io/index.html)
  7. Python Torch tutorial (https://github.com/yunjey/pytorch-tutorial)
  8. Incredible Pytorch (https://github.com/ritchieng/the-incredible-pytorch)
  9. Caffe2 (https://caffe2.ai/)

Machine Learning Basics

  1. 딥러닝과 관련된 개념들 (https://www.youtube.com/playlist?list=PLjJh1vlSEYgvGod9wWiydumYl8hOXixNu)
  2. Andrew NG 교수님의 Coursera 강의 (https://www.coursera.org/learn/machine-learning)
  3. Ian goodfellow의 책 (https://github.com/HFTrader/DeepLearningBook)
  4. Numpy-100 Tutorial (https://github.com/rougier/numpy-100)
  5. Numpy tutorial (http://www.dataquest.io/blog/numpy-tutorial-python/?utm_source=mybridge&utm_medium=blog&utm_campaign=read_more)
  6. Kaggle 1st place for 2 years (http://course.fast.ai/lessons/lesson1.html)
  7. 아니 이 많은걸 언제 다 정리하셨대 (https://handong1587.github.io/index.html)
  8. Experiments about ReLU/LeakyReLu/PReLU (https://arxiv.org/pdf/1505.00853.pdf)
  9. Hyperparameter optimization (https://arimo.com/data-science/2016/bayesian-optimization-hyperparameter-tuning/)
  10. FastAI Linear Algebra (https://github.com/fastai/numerical-linear-algebra)

General Neural Networks

  1. 열한줄로 뉴럴넷 짜보기 (https://iamtrask.github.io/2015/07/12/basic-python-network/)
  2. 한단계 한단계 Back propagation에 대한 친절한 설명 (https://mattmazur.com/2015/03/17/a-step-by-step-backpropagation-example/)
  3. Batch Normalization (https://kratzert.github.io/2016/02/12/understanding-the-gradient-flow-through-the-batch-normalization-layer.html)
  4. Gradient Descent Optimization Algorithm 비교 (http://sebastianruder.com/optimizing-gradient-descent/)
  5. Adagrad, Adadelta,RMSProp,Adam (http://prinsphield.github.io/2016/02/04/An%20Overview%20on%20Optimization%20Algorithms%20in%20Deep%20Learning%20(II)/)

Convolutional Neural Networks

  1. CNN을 쉽게 이해하도록 도와준 영상 (https://youtu.be/FmpDIaiMIeA, https://brohrer.github.io/how_convolutional_neural_networks_work.html)
  2. 그 유명한 cs231n 강의 (https://www.youtube.com/playlist?list=PLkt2uSq6rBVctENoVBg1TpCC7OQi31AlC)
  3. 그 유명한 cs231n 강의노트 (http://cs231n.github.io/)
  4. 한글로 설명이 잘되어있는 라온피플 블로그 (http://laonple.blog.me/220463627091)
  5. 시각화된 Convolution의 작동 (https://github.com/vdumoulin/conv_arithmetic)
  6. 강의자 Andrej Kaparthy의 볼게 많은 블로그 (http://cs.stanford.edu/people/karpathy/)
  7. 명화의 화풍을 따라 그리는 Neural Style (http://www.anishathalye.com/2015/12/19/an-ai-that-can-mimic-any-artist/, https://github.com/cysmith/neural-style-tf, https://www.youtube.com/watch?v=N14_w2RG1A8)
  8. 레이어별로 뉴런의 Activation 및 반응을 볼 수 있는 자료 (https://github.com/yosinski/deep-visualization-toolbox)
  9. Google Deepdream (https://github.com/google/deepdream)
  10. 2016 No.1 ResNet (https://github.com/KaimingHe/deep-residual-networks)
  11. Transposed Convoultion의 문제점과 해결방안 (http://distill.pub/2016/deconv-checkerboard/)
  12. 자료들이 모여있는 Awesome Deep vision (https://github.com/kjw0612/awesome-deep-vision)
  13. ResNet in Tensorflow (https://github.com/ry/tensorflow-resnet)
  14. ResNet, DenseNet (https://chatbotslife.com/resnets-highwaynets-and-densenets-oh-my-9bb15918ee32#.rbzbvof9l)
  15. Spatial Transformer Network (https://github.com/fxia22/stn.pytorch)
  16. Filtered image after convolution (http://setosa.io/ev/image-kernels/)
  17. Convolution Transposed (https://arxiv.org/pdf/1603.07285.pdf)
  18. LeNet to ResNet (http://slazebni.cs.illinois.edu/spring17/lec01_cnn_architectures.pdf,http://vision.stanford.edu/teaching/cs231b_spring1415/slides/alexnet_tugce_kyunghee.pdf)
  19. 2017 cs21n (http://cs231n.stanford.edu/)
  20. Convolution function as matrix multiplication (https://nrupatunga.github.io/convolution-2/)
  21. Depth-wise Seperable Convolution (https://www.youtube.com/watch?v=T7o3xvJLuHk)

Detection & Semantic Segmentation

  1. Fully Convolutional Network for Semantic Segmentation (https://github.com/shekkizh/FCN.tensorflow)
  2. Faster R-CNN (https://github.com/rbgirshick/py-faster-rcnn)
  3. Semantic Flow segmentation (https://ps.is.tuebingen.mpg.de/research_projects/semantic-optical-flow, https://ps.is.tuebingen.mpg.de/uploads_file/attachment/attachment/261/semanticflow.pdf)
  4. Image Segmentation (http://warmspringwinds.github.io/tensorflow/tf-slim/2016/12/18/image-segmentation-with-tensorflow-using-cnns-and-conditional-random-fields/)
  5. Localization & Detection gitbook (https://leonardoaraujosantos.gitbooks.io/artificial-inteligence/content/object_localization_and_detection.html)
  6. Image Processing in classical ways(?)(https://www.giassa.net/?page_id=118)
  7. All about segmentation (https://github.com/mrgloom/Semantic-Segmentation-Evaluation)
  8. Tensorflow Faster R-CNN (https://github.com/endernewton/tf-faster-rcnn)
  9. Deeplab Resnet Tensorflow (https://github.com/DrSleep/tensorflow-deeplab-resnet)
  10. Segmentation Overview (https://meetshah1995.github.io/semantic-segmentation/deep-learning/pytorch/visdom/2017/06/01/semantic-segmentation-over-the-years.html)

Unsupervised Learning

  1. Semi-supervised Learning (http://rinuboney.github.io/2016/01/19/ladder-network.html, https://github.com/CuriousAI/ladder)

Autoencoder

  1. 김범준씨의 Variational Autoencoder의 번역 (http://nolsigan.com/blog/what-is-variational-autoencoder/)
  2. Generating Large Images from Latent Vectors (http://blog.otoro.net/2016/04/01/generating-large-images-from-latent-vectors/, https://arxiv.org/pdf/1512.09300.pdf)
  3. Variational Autoencoder (https://www.youtube.com/watch?v=BiWRaES2WN0&t=991s, http://blog.fastforwardlabs.com/2016/08/12/introducing-variational-autoencoders-in-prose-and.html, https://github.com/kvfrans/variational-autoencoder)

Generative Adversarial Networks

  1. Adversarial Nets papers (https://github.com/zhangqianhui/AdversarialNetsPapers)
  2. Generative Adversarial Networks by OpenAI (https://openai.com/blog/generative-models/)
  3. 김태훈씨의 쉽게 설명한 DCGAN in Tensorflow (http://www.slideshare.net/carpedm20/pycon-korea-2016, https://github.com/carpedm20/DCGAN-tensorflow)
  4. 간단한 GAN 설명과 동영상 예시 (http://keunwoochoi.blogspot.kr/)
  5. 이미지의 빈부분을 채우는 GAN (http://bamos.github.io/2016/08/09/deep-completion/, https://github.com/bamos/dcgan-completion.tensorflow)
  6. 텍스트를 이미지로 바꾸는 GAN text-to-image (https://github.com/reedscot/icml2016)
  7. GAN video generation (http://web.mit.edu/vondrick/tinyvideo/)
  8. DCGAN Tutorial (https://medium.com/@awjuliani/generative-adversarial-networks-explained-with-a-classic-spongebob-squarepants-episode-54deab2fce39#.gdxkk32d7)
  9. InfoGAN Tutorial (https://medium.com/emergent-future/learning-interpretable-latent-representations-with-infogan-dd710852db46#.9iaqd4it5)
  10. DiscoGAN in Pytorch (https://github.com/carpedm20/DiscoGAN-pytorch)
  11. Wiseodd GANs (https://github.com/wiseodd/generative-models)
  12. DiscoGAN official (https://github.com/SKTBrain/DiscoGAN)
  13. CycleGAN tutorial (https://hardikbansal.github.io/CycleGANBlog/)

Recurrent Neural Networks

  1. RNN에 대한 친절한 설명 (https://iamtrask.github.io/2015/11/15/anyone-can-code-lstm/)
  2. Andrej Kaparthy RNN의 활용가능성 (http://karpathy.github.io/2015/05/21/rnn-effectiveness/)
  3. Image caption generator in Tensorflow (https://github.com/tensorflow/models/tree/master/im2txt)
  4. Awesome RNN (https://github.com/kjw0612/awesome-rnn)
  5. Pytorch RNN (https://github.com/spro/practical-pytorch)
  6. LSTM experiments (http://blog.echen.me/2017/05/30/exploring-lstms/)
  7. Attention Mechanism in RNN (https://www.youtube.com/watch?v=QuvRWevJMZ4)
  8. Stanford CS224d(https://github.com/DSKSD/DeepNLP-models-Pytorch)

NLP

  1. CS224d for NLP (https://youtu.be/Qy0oEkCZkBI?list=PLlJy-eBtNFt4CSVWYqscHDdP58M3zFHIG)
  2. Oxford Deep NLP (https://github.com/oxford-cs-deepnlp-2017/lectures)
  3. Seq2seq TF1.0 code (https://github.com/ematvey/tensorflow-seq2seq-tutorials)
  4. Denny Britz Seq2seq (https://github.com/google/seq2seq)
  5. Pytorch for NLP tutorial (https://github.com/rguthrie3/DeepLearningForNLPInPytorch)
  6. Practical Pytorch for NLP (https://github.com/spro/practical-pytorch)

Word2vec

  1. Word2vec이 필요한 이유와 코드 공식사이트 번역본 (http://khanrc.tistory.com/entry/TensorFlow-6-word2vec-Theory, http://khanrc.tistory.com/entry/TensorFlow-7-word2vec-Implementation)
  2. Chris Mccormick의 Word2vec 설명 (http://mccormickml.com/tutorials/)
  3. 한국어와 NLTK, Gensim에 대한 박은정씨의 발표 (https://www.lucypark.kr/slides/2015-pyconkr/#1)
  4. Genism tutorial (https://radimrehurek.com/gensim/models/word2vec.html)
  5. Kaggle word2vec tutorial (https://www.kaggle.com/c/word2vec-nlp-tutorial/details/part-1-for-beginners-bag-of-words)
  6. Word2vec의 역사(http://sebastianruder.com/word-embeddings-1/)

Reinforcement Learning

  1. Simple Reinforcement Learning with Tensorflow by Arthur Juliani (https://medium.com/emergent-future/simple-reinforcement-learning-with-tensorflow-part-0-q-learning-with-tables-and-neural-networks-d195264329d0#.hegtvglmg)
  2. Udacity Self Driving Car Simulator (https://github.com/udacity/self-driving-car-sim)
  3. UC Berkeley RL (http://rll.berkeley.edu/deeprlcourse/)
  4. Denny Britz RL (http://www.wildml.com/2016/10/learning-reinforcement-learning/, https://github.com/dennybritz/reinforcement-learning)
  5. RL Derivatives (http://www.alexirpan.com/rl-derivations/)

Visualization

  1. t-SNE (https://www.analyticsvidhya.com/blog/2017/01/t-sne-implementation-r-python/, http://distill.pub/2016/misread-tsne/)
  2. t-SNE 저자 설명 (https://www.youtube.com/watch?v=EMD106bB2vY)
  3. MNIST 시각화 (http://colah.github.io/posts/2014-10-Visualizing-MNIST/)
  4. Tensorboard 예시 (https://github.com/normanheckscher/mnist-tensorboard-embeddings)
  5. How to use t-SNE effectively (http://distill.pub/2016/misread-tsne/)
  6. CAM:Class Activation Map (http://cnnlocalization.csail.mit.edu/)
  7. CAM:Class Activation Map 한글설명 (http://tmmse.xyz/2016/04/10/object-localization-with-weakly-supervised-learning/)
  8. Grad-CAM Pytorch(https://github.com/jacobgil/pytorch-grad-cam)
  9. Grad-CAM Visualization(https://ramprs.github.io/2017/01/21/Grad-CAM-Making-Off-the-Shelf-Deep-Models-Transparent-through-Visual-Explanations.html)
  10. Optimizer Visualization(https://github.com/wassname/viz_torch_optim)

Data Augmentation

  1. Data Augmentation with Keras api (http://machinelearningmastery.com/image-augmentation-deep-learning-keras/)
  2. Winner of Galaxy zoo (http://benanne.github.io/2014/04/05/galaxy-zoo.html)
  3. Elastic Deformation (https://gist.github.com/chsasank/4d8f68caf01f041a6453e67fb30f8f5a)
  4. Elastic Deformation2 (https://www.kaggle.com/bguberfain/ultrasound-nerve-segmentation/elastic-transform-for-data-augmentation)
  5. Image Data Augmentations (https://github.com/aleju/imgaug)
  6. Scipy Lectures (http://www.scipy-lectures.org/index.html#)

Ensemble

  1. Snapshot Ensembles: Train 1, get M for free (https://arxiv.org/abs/1704.00109)

Attention + Classification

  1. Residual Attention Network for Image Classification (http://arxiv.org/abs/1704.06904)
  2. Learn To Pay Attention (http://arxiv.org/abs/1804.02391)
  3. Tell Me Where to Look: Guided Attention Inference Network (https://arxiv.org/abs/1802.10171)

Blogs & Gist

  1. Fast Forward Labs (http://blog.fastforwardlabs.com/)
  2. Variational Autoencoder (http://oduerr.github.io/talks/)
  3. Google Experiments (https://aiexperiments.withgoogle.com/)
  4. Deep learning 2016 summary(https://tryolabs.com/blog/2016/12/06/major-advancements-deep-learning-2016/)
  5. Brandon Amos Blog (https://bamos.github.io/)
  6. Hvass_lab_tutorials (https://github.com/Hvass-Labs/TensorFlow-Tutorials)
  7. Tensorflow Queue and Threads (https://blog.metaflow.fr/tensorflow-how-to-optimise-your-input-pipeline-with-queues-and-multi-threading-e7c3874157e0#.fbfqfygsm)
  8. How to read images using tf.queue (https://gist.github.com/eerwitt/518b0c9564e500b4b50f)
  9. Sungjoon choi's blog (http://enginius.tistory.com/)
  10. Openresearch.ai(http://openresearch.ai/)
  11. Why Denoising?(https://thecuriousaicompany.com/another-test-learning-by-denoising-part-1-what-and-why-of-denoising/)

Awesome Series

  1. Awesome2vec (https://github.com/MaxwellRebo/awesome-2vec)
  2. Awesome Bayesian Deep Learning (https://github.com/robi56/awesome-bayesian-deep-learning)

Mathematics for Deep Learning

  1. Essence of Linear Algebra (https://www.youtube.com/playlist?list=PLZHQObOWTQDPD3MizzM2xVFitgF8hE_ab)
  2. 공돌이의 수학정리노트 (https://wikidocs.net/book/563)
  3. Brilliant.org (https://brilliant.org/)
  4. Cross Entropy Loss & KL divergence (http://rdipietro.github.io/friendly-intro-to-cross-entropy-loss/)
  5. PRML by Bishop in Korean (http://norman3.github.io/prml/)
  6. Mathematical Tour in Python (http://www.numerical-tours.com/python/)
  7. Statistical Distributions (http://hamelg.blogspot.kr/2015/11/python-for-data-analysis-part-22.html)
  8. PRML algorithms implemented in Python (https://github.com/ctgk/PRML)
  9. Bloomberg Foundation of Machine Learning (https://bloomberg.github.io/foml/#lectures)
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