About the Book:
Deep Learning
in Practice helps you learn how to
develop and optimize a model for your projects using Deep Learning (DL) methods
and architectures.
Key features: - Demonstrates a quick
review on Python, NumPy, and TensorFlow fundamentals.
- Explains and provides
examples of deploying TensorFlow and Keras in several projects.
- Explains the
fundamentals of Artificial Neural Networks (ANNs).
- Presents several
examples and applications of ANNs.
- Learning the most
popular DL algorithms features.
- Explains and provides
examples for the DL algorithms that are presented in this book.
- Analyzes the DL
network’s parameter and hyperparameters.
- Reviews
state-of-the-art DL examples.
- Necessary and main
steps for DL modeling.
- Implements a Virtual
Assistant Robot (VAR) using DL methods.
- Necessary and
fundamental information to choose a proper DL algorithm.
- Gives instructions to
learn how to optimize your DL model IN PRACTICE.
This book is useful
for undergraduate and graduate students, as well as practitioners in industry
and academia. It will serve as a useful reference for learning deep learning
fundamentals and implementing a deep learning model for any project, step by
step. |
Contents: 1.
Introduction 2.
Python/NumPy
Fundamentals 3.
TensorFlow
Fundamentals 4.
Artificial
Neural Networks Fundamentals and Architectures 5.
Deep
Neural Networks (DNNs)Fundamentals and Architectures 6.
Deep
Neural Networks (DNNs) for Images Analysis 7.
Deep
Neural Networks for Virtual Assistant Robot 8. Finding
the Best Model |
About the Author:
Dr. Mehdi
Ghayoumi is a course
facilitator at Cornell University and adjunct faculty of Computer Science at
the University of San Diego. Prior to this, he was a research assistant
professor at SUNY at Binghamton, where he was the Media Core Lab’s dynamic
leader. He was also a lecturer at Kent State University, where he received the
Teaching Award for two consecutive years in 2016 and 2017. In addition, he has
been teaching machine learning, data science, robotic and programming courses
for several years.
Dr. Ghayoumi
research interests are in Machine Learning, Machine Vision, Robotics, and
Human-Robot Interaction (HRI). His research focuses are on building real systems
for realistic environment settings, and his current projects have applications
in Human-Robot Interaction, manufacturing, biometric, and healthcare.
He is a technical
program committee member of several conferences, workshops, and editorial board
member of several journals in machine learning, mathematics, and robotics, like
ICML, ICPR, HRI, FG, WACV, IROS, CIBCB, and JAI. In addition, his research
papers have been published at conferences and journals in the fields, including
Human-Computer Interaction (HRI), Robotics Science and Systems (RSS),
International Conference on Machine Learning and Applications (ICMLA), and
others. |