Book Image

Intelligent Projects Using Python

By : Santanu Pattanayak
Book Image

Intelligent Projects Using Python

By: Santanu Pattanayak

Overview of this book

This book will be a perfect companion if you want to build insightful projects from leading AI domains using Python. The book covers detailed implementation of projects from all the core disciplines of AI. We start by covering the basics of how to create smart systems using machine learning and deep learning techniques. You will assimilate various neural network architectures such as CNN, RNN, LSTM, to solve critical new world challenges. You will learn to train a model to detect diabetic retinopathy conditions in the human eye and create an intelligent system for performing a video-to-text translation. You will use the transfer learning technique in the healthcare domain and implement style transfer using GANs. Later you will learn to build AI-based recommendation systems, a mobile app for sentiment analysis and a powerful chatbot for carrying customer services. You will implement AI techniques in the cybersecurity domain to generate Captchas. Later you will train and build autonomous vehicles to self-drive using reinforcement learning. You will be using libraries from the Python ecosystem such as TensorFlow, Keras and more to bring the core aspects of machine learning, deep learning, and AI. By the end of this book, you will be skilled to build your own smart models for tackling any kind of AI problems without any hassle.
Table of Contents (12 chapters)

Deep learning for latent factor collaborative filtering

Instead of using SVD, you can leverage deep learning methods to derive the user and item profile vectors of given dimensions.

For each user i, you can define a user vector ui ∈ Rk through an embedding layer. Similarly, for each item j, you can define a item vector vj ∈ Rk through another embedding layer. Then, the rating rij of a user i to an item j can be represented as the dot product of ui and vj as shown:

You can modify the neural network to add biases for users and items. Given that we want k latent components, the dimensions of the embedding matrix U for m users would be m x k. Similarly, the dimensions of the embedding matrix V for n items would be n x k.

In the The deep learning-based latent factor model section, we will use this embedding approach to create a recommender system based on the 100K Movie...