Foundations of Neural Networks and Deep Learning: Basics of image/signal like convolution – Perceptron – Multi Layer Perceptron – Feedforward Neural Networks – Back propagation, Training and Testing Neural Networks, Activation Functions, Loss Functions, Hyperparameters. Optimization algorithms and Regularization – Batch Normalization.
Deep Neural Networks: Common Architectural Principles of Deep Networks, Building Blocks of Deep Networks.
Major Architectures of Deep Networks: Convolutional Neural Networks (CNNs), Deep CNN, Recurrent Neural Networks, Recursive Neural Networks, Adversarial learning, Transfer Learning, Generative AI.
Linear factor models, Autoencoders, Representation learning, Structured probabilistic models, Monte-Carlo models. Tensorflow/Pytorch: DenoisingSparsity in Autoencoders Models for Sequence Analysis –Vanishing Gradients Long Short-Term Memory (LSTM) Units- Primitives for RNN Models– Named Entity Recognition/Opinion Mining/Sentiment Analysis/Question Answering/Neural Summarization. Seminar : Cutting edge technologies like LLMs.