# Advanced Deep Learning with Python

## Design and implement advanced next-generation AI solutions using TensorFlow and PyTorch

Key Features

Get to grips with building faster and more robust deep learning architectures

Investigate and train convolutional neural network (CNN) models with GPU-accelerated libraries such as TensorFlow and PyTorch

Apply deep neural networks (DNNs) to computer vision problems, NLP, and GANs

Book DescriptionIn order to build robust deep learning systems, you'll need to understand everything from how neural networks work to training CNN models. Les mer

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**528,-**

(Paperback)
**Fri frakt!**

Leveringstid: Sendes innen 21 dager

På grunn av Brexit-tilpasninger og tiltak for å begrense covid-19 kan det dessverre oppstå forsinket levering.

Key Features

Get to grips with building faster and more robust deep learning architectures

Investigate and train convolutional neural network (CNN) models with GPU-accelerated libraries such as TensorFlow and PyTorch

Apply deep neural networks (DNNs) to computer vision problems, NLP, and GANs

Book DescriptionIn order to build robust deep learning systems, you'll need to understand everything from how neural networks work to training CNN models. In this book, you'll discover newly developed deep learning models, methodologies used in the domain, and their implementation based on areas of application.

You'll start by understanding the building blocks and the math behind neural networks, and then move on to CNNs and their advanced applications in computer vision. You'll also learn to apply the most popular CNN architectures in object detection and image segmentation. Further on, you'll focus on variational autoencoders and GANs. You'll then use neural networks to extract sophisticated vector representations of words, before going on to cover various types of recurrent networks, such as LSTM and GRU. You'll even explore the attention mechanism to process sequential data without the help of recurrent neural networks (RNNs). Later, you'll use graph neural networks for processing structured data, along with covering meta-learning, which allows you to train neural networks with fewer training samples. Finally, you'll understand how to apply deep learning to autonomous vehicles.

By the end of this book, you'll have mastered key deep learning concepts and the different applications of deep learning models in the real world.

What you will learn

Cover advanced and state-of-the-art neural network architectures

Understand the theory and math behind neural networks

Train DNNs and apply them to modern deep learning problems

Use CNNs for object detection and image segmentation

Implement generative adversarial networks (GANs) and variational autoencoders to generate new images

Solve natural language processing (NLP) tasks, such as machine translation, using sequence-to-sequence models

Understand DL techniques, such as meta-learning and graph neural networks

Who this book is forThis book is for data scientists, deep learning engineers and researchers, and AI developers who want to further their knowledge of deep learning and build innovative and unique deep learning projects. Anyone looking to get to grips with advanced use cases and methodologies adopted in the deep learning domain using real-world examples will also find this book useful. Basic understanding of deep learning concepts and working knowledge of the Python programming language is assumed.

Table of Contents

The Nuts and Bolts of Neural Networks

Understanding Convolutional Networks

Advanced
Convolutional Networks

Object Detection and Image Segmentation

Generative Models

Language Modelling

Understanding
Recurrent Networks

Sequence-to-Sequence Models and Attention

Emerging Neural Network Designs

Meta Learning

Deep Learning for Autonomous Vehicles