Experience reading like never before
Sign in to continue reading.
Discover and read thousands of books from independent authors across India
Visit the bookstore"It was a wonderful experience interacting with you and appreciate the way you have planned and executed the whole publication process within the agreed timelines.”
Subrat SaurabhAuthor of Kuch Woh Pal
This book is written for people with Python programming experience who want to get
started with machine learning and deep learning. But this book can also be valuable
to many different types of readers:
If you’re a data scientist familiar with machine learning, this book will provide
you with a solid, practical introduction to deep learning, the fastest-growing
and most significant subfield of machine learning.
This book is written for people with Python programming experience who want to get
started with machine learning and deep learning. But this book can also be valuable
to many different types of readers:
If you’re a data scientist familiar with machine learning, this book will provide
you with a solid, practical introduction to deep learning, the fastest-growing
and most significant subfield of machine learning.
If you’re a deep-learning expert looking to get started with the Keras framework,
you’ll find this book to be the best Keras crash course available.
If you’re a graduate student studying deep learning in a formal setting, you’ll
find this book to be a practical complement to your education, helping you
build intuition around the behavior of deep neural networks and familiarizing
you with key best practices.
Even technically minded people who don’t code regularly will find this book useful as
an introduction to both basic and advanced deep-learning concepts.
In order to use Keras, you’ll need reasonable Python proficiency. Additionally, familiarity with the Numpy library will be helpful, although it isn’t required. You don’t need previous experience with machine learning or deep learning: this book covers from scratch all the necessary basics. You don’t need an advanced mathematics background, either—high school–level mathematics should suffice in order to follow along.
This book is written for people with Python programming experience who want to get
started with machine learning and deep learning. But this book can also be valuable
to many different types of readers:
If you’re a data scientist familiar with machine learning, this book will provide
you with a solid, practical introduction to deep learning, the fastest-growing
and most significant subfield of machine learning.
This book is written for people with Python programming experience who want to get
started with machine learning and deep learning. But this book can also be valuable
to many different types of readers:
If you’re a data scientist familiar with machine learning, this book will provide
you with a solid, practical introduction to deep learning, the fastest-growing
and most significant subfield of machine learning.
If you’re a deep-learning expert looking to get started with the Keras framework,
you’ll find this book to be the best Keras crash course available.
If you’re a graduate student studying deep learning in a formal setting, you’ll
find this book to be a practical complement to your education, helping you
build intuition around the behavior of deep neural networks and familiarizing
you with key best practices.
Even technically minded people who don’t code regularly will find this book useful as
an introduction to both basic and advanced deep-learning concepts.
In order to use Keras, you’ll need reasonable Python proficiency. Additionally, familiarity with the Numpy library will be helpful, although it isn’t required. You don’t need previous experience with machine learning or deep learning: this book covers from scratch all the necessary basics. You don’t need an advanced mathematics background, either—high school–level mathematics should suffice in order to follow along.
"Quantum Computing with Python: From Theory to Implementation" is a comprehensive guide to the fascinating field of quantum computing, designed for programmers who want to learn how to implement quantum algorithms using Python.
With a focus on practical implementation, the book walks readers through building and running quantum circuits and algorithms, including Grover's algorithm, Shor's algorithm, and Quantum Fourier Transform. It also covers topics
"Quantum Computing with Python: From Theory to Implementation" is a comprehensive guide to the fascinating field of quantum computing, designed for programmers who want to learn how to implement quantum algorithms using Python.
With a focus on practical implementation, the book walks readers through building and running quantum circuits and algorithms, including Grover's algorithm, Shor's algorithm, and Quantum Fourier Transform. It also covers topics like quantum error correction, quantum machine learning and quantum simulations using quantum simulators like Qiskit Aer and Cirq.
Throughout the book, readers will find clear explanations, examples, and exercises to help them grasp the concepts and put them into practice. Whether you are a computer science student, researcher or software engineer, "Quantum Computing with Python: From Theory to Implementation" is the perfect resource to begin your journey into the world of quantum computing.
Are you sure you want to close this?
You might lose all unsaved changes.
The items in your Cart will be deleted, click ok to proceed.