Skip to content

gmortuza/Deep-Learning-Specialization

Repository files navigation

Deep learning course offered by deeplearning.ai at coursera

Quizes

Programming assignment

Lectures + my notes

  • Week 1 --> Introduction, NN, Why Deep learning
  • Week 2 --> Logistic regression, Gradient Descent, Derivatives, Vectorization, Python Broadcasting
  • Week 3 --> NN, Activation function, Backpropagate, Random Initialization
  • Week 4 --> Deep L-layer Neural network, Matrix dimension right, Why Deep representation, Building blocks of NN, Parameters vs Hyperparameters, Relationship with brain

Quizes

Programming assignment

Lectures + My notes

  • Week 1 --> Train/Dev/Test set, Bias/Variance, Regularization, Why regularization, Dropout, Normalizing inputs, vanishing/exploding gradients, Gradient checking
  • Week 2 --> Mini-batch, Exponentially weighted average, GD with momentum, RMSProp, Adam optimizer, Learning rate decay, Local optima problem, Plateaus problem
  • Week 3 --> Tuning process, Picking hyperparameter, Normalizing activations, Softmax regression, Deep learning programming framework

Quizes

Lectures + my notes

  • Week 1 --> Why ML Strategy?, Orthogonalization, Single number evaluation metric, Satisficing and optimizing metrics, Train/dev/test distribution, Human level performance, Avoidable bias
  • Week 2 --> Error analysis, Incorrectly labeled data, Data augmentation, Transfer learning, Multitask learning, End-to-End Deep learning

Quizes

Programming excercise

Lectures + My notes

  • Week 1 --> Computer vision, Edge detection, Padding, Strided convolution, Convolutions over volume, Pooling layers, CNN, Why CNN?
  • Week 2 --> LeNet-5, AlexNet, VGG-16, ResNets, 1x1 convolutions, InceptionNet, Data augmentation
  • Week 3 --> Object localization, Landmark detection, Object detection, Sliding window, Bounding box prediction, Intersection over union(IOU), Non-max suppression, Anchor box, YOLO algorithm
  • Week 4 --> Face recognition, One-shot learning, Siamese network, Neural style transfer

Quizes

Programming assignment

Lectures + My notes

  • Week 1 --> RNN, Notation, Vanishing gradient, GRU, LSTM, Bidirectional RNN, Deep RNN
  • Week 2 --> Word representation, Word embedding, Cosine similarity, Word2Vec, Negetive sampling, GloVe words, Debiasing word
  • Week 3 --> Beam search, Error analysis in Beam search, Bleu score, Attention model, Speech recognition

Specialization certificate:

Certificate

Releases

No releases published

Packages

No packages published