Currently Deep Learning is required for at least 80% of jobs for data scientists and machine learning engineers. This workshop introduces Deep Learning concepts, models, and applications with Keras, the most popular high-level library for Deep Learning in Python. Topics include Keras’ sequential models, Convolutional Neural Networks for Image Classification, Recurrent Neural Networks (LSTM) for natural language processing. Some advanced and popular topics such as transfer learning with pre-trained models, reinforcement Q-learning with OpenAI Gym, and training Deep Learning models with GPU may be covered as well. While some experience in Python or Data Analytics may be beneficial, no previous knowledge about Deep Learning is required. All wo...
Automatically processing natural language is quite a challenge for a machine. Complex structure and ...
This book is a practical guide to applying deep neural networks including MLPs, CNNs, LSTMs, and mor...
For certain problems, training deep artificial neural networks can require far more compute resource...
This book explains the essential learning algorithms used for deep and shallow architectures. Packed...
The book will help you learn deep neural networks and their applications in computer vision, generat...
This book gives you a practical, hands-on understanding of how you can leverage the power of Python ...
This is the second book in Deep Learning models series by the author. Deep learning models are widel...
Python is one of the most widely adopted programming languages, having replaced a number of those in...
Description This course gives a practical introduction to deep learning, convolutional and recurren...
Keras is a deep learning library that enables the fast, efficient training of deep learning models. ...
Getting started with data science can be overwhelming, even for experienced developers. In this two-...
Keras is a modular, powerful and intuitive open-source Deep Learning library built on Theano and Ten...
This tutorial will introduce the latest deep learning software packages and explain how to get start...
Python Deep Learning Projects book will simplify and ease how deep learning works, and demonstrate h...
Deep Learning Models and its application: An overview with the help of R software Preface Deep lea...
Automatically processing natural language is quite a challenge for a machine. Complex structure and ...
This book is a practical guide to applying deep neural networks including MLPs, CNNs, LSTMs, and mor...
For certain problems, training deep artificial neural networks can require far more compute resource...
This book explains the essential learning algorithms used for deep and shallow architectures. Packed...
The book will help you learn deep neural networks and their applications in computer vision, generat...
This book gives you a practical, hands-on understanding of how you can leverage the power of Python ...
This is the second book in Deep Learning models series by the author. Deep learning models are widel...
Python is one of the most widely adopted programming languages, having replaced a number of those in...
Description This course gives a practical introduction to deep learning, convolutional and recurren...
Keras is a deep learning library that enables the fast, efficient training of deep learning models. ...
Getting started with data science can be overwhelming, even for experienced developers. In this two-...
Keras is a modular, powerful and intuitive open-source Deep Learning library built on Theano and Ten...
This tutorial will introduce the latest deep learning software packages and explain how to get start...
Python Deep Learning Projects book will simplify and ease how deep learning works, and demonstrate h...
Deep Learning Models and its application: An overview with the help of R software Preface Deep lea...
Automatically processing natural language is quite a challenge for a machine. Complex structure and ...
This book is a practical guide to applying deep neural networks including MLPs, CNNs, LSTMs, and mor...
For certain problems, training deep artificial neural networks can require far more compute resource...