Deep Learning

Neural Networks and Deep Learning.

MIT 6.S191: Introduction to Deep Learning

RegexOne

Fundamentals of Deep Learning of Neural Networks

Module 1- Structure of Neural Networks

Course Introduction

Neural Networks: Inspiration from the Human Brain

Introduction to perceptron

Binary Classification using Perceptron

Perceptron- Training

Multiclass Classification using Perceptrons

Working of Neuron

Input and Output of a Neural Network-I

Input and Output of a Neural Network-II

Assumptions made to Simplify Neural Networks

Parameters and Hyperparameters of Neural Netwoks

Activation Functions

Summary

Module 2- Feed Forward in Neural Networks

Introduction

Information Flow in Neural Networks- Between 2 Layers

Information Flow- Image Recognisation

Comprehensions- Count of Pixals

Learning the Dimension Weight Matrices

Feedforwatd Algorithem

Vectorizes Feedforward Implementation

Understnding Vectorizes Feedforward Implementation

Summary

Module 3- Backpogation in Neural Networks

Introduction

What Does Training a Network Mean?

Complexity of Loss Function

Comprehension- Training a neural Network

Updationg the Weight and Biases-I

Updationg the Weight and Biases-II

Updationg the Weight and Biases-III

Sigmoid Backpropagation

Updationg the Weight and Biases-IV

Updationg the Weight and Biases-V

Updationg the Weight and Biases-VI

Batch in Propagation

Training in Batches

Summary

Module 4- Modifications of Neural Network

Introduction

Regularization

Dropouts

Batch Normalisation

Introduction to Keras

Summary

Module 5- Hyperparameters Tuning in Neural Network

Introduction

Loss Function-I

Loss Function-II

Minibatch Gradient Descent

Gradient Descent-I

Gradient Descent-II

Gradient Descent-III

Gradient Descent-IV

Momentum based Methods-I

Momentum based Methods-II

Momentum based Methods-III

Dropote- Bayesian appraoch

Vanishing and Exploding Gradients

Initialisation

Summary

Introduction to Natural Language Processing (NLP)

Module 1- Introduction to NLP

Introduction

NLP: Areas of Application

Understanding Text

Text Encoding

Regular expressions: Qunatifiers-I

Regular expressions: Qunatifiers-II

Comprehensive: Regular expressions

Regular expressions: Anchors and Wildcards

Regular expressions: Charaters sets

Greedy vesus Non-greedy Search

Commonlu Used RE Functions

Regular expressions: Grouping

Regular expressions: Use Cases

Summary

Module 1- Basic Laxical Processing

Introduction

Word Frequencies and Srop Words

Tokenisation

Bag-of-Words Representation

Stemming and Lemmatisation

Final Bag-of-Words Representation

TF-IDF Representation

Building a Spam Detector -I

Building a Spam Detector -II

Summary

Module 1- Advanced Laxical Processing

Introduction

Canonacalisation

Phonetic Hashing

Edit Distance

Spell Collector-I

Spell Collector-II

Pointwise Mutual Information-I

Pointwise Mutual Information-II

Summary