Week 1:  Introduction to Deep Learning, Bayesian Learning, Decision Surfaces
Week 2:  Linear Classifiers, Linear Machines with Hinge Loss
Week 3:  Optimization Techniques, Gradient Descent, Batch Optimization
Week 4:  Introduction to Neural Network, Multilayer Perceptron, Back Propagation Learning
Week 5:  Unsupervised Learning with Deep Network, Autoencoders
Week 6:  Convolutional Neural Network, Building blocks of CNN, Transfer Learning
Week 7:  Revisiting Gradient Descent, Momentum Optimizer, RMSProp, Adam
Week 8:  Effective training in Deep Net- early stopping, Dropout, Batch Normalization, Instance Normalization, Group Normalization
Week 9:  Recent Trends in Deep Learning Architectures, Residual Network, Skip Connection Network, Fully Connected CNN etc.
Week 10: Classical Supervised Tasks with Deep Learning, Image Denoising, Semanticd Segmentation, Object Detection etc.
Week 11: LSTM Networks
Week 12: Generative Modeling with DL, Variational Autoencoder, Generative Adversarial Network Revisiting Gradient Descent, Momentum Optimizer, RMSProp, Adam
 
    
DOWNLOAD APP
FOLLOW US