Parallel and High Performance Programming with Python Parallel and High Performance Programming with Python

Parallel and High Performance Programming with Python

Unlock parallel and concurrent programming in Python using multithreading, CUDA, Pytorch and Dask. (English Edition)

    • € 22,99
    • € 22,99

Beschrijving uitgever

Unleash the capabilities of Python and its libraries for solving high performance computational problems.

KEY FEATURES 
● Explores parallel programming concepts and techniques for high-performance computing. 
● Covers parallel algorithms, multiprocessing, distributed computing, and GPU programming. 
● Provides practical use of popular Python libraries/tools like NumPy, Pandas, Dask, and TensorFlow.

DESCRIPTION
This book will teach you everything about the powerful techniques and applications of parallel computing, from the basics of parallel programming to the cutting-edge innovations shaping the future of computing. 

The book starts with an introduction to parallel programming and the different types of parallelism, including parallel programming with threads and processes. The book then delves into asynchronous programming, distributed Python, and GPU programming with Python, providing you with the tools you need to optimize your programs for distributed and high-performance computing. 

The book also covers a wide range of applications for parallel computing, including data science, artificial intelligence, and other complex scientific simulations. You will learn about the challenges and opportunities presented by parallel computing for these applications and how to overcome them. 

By the end of the book, you will have insights into the future of parallel computing, the latest research and developments in the field, and explore the exciting possibilities that lie ahead.

WHAT WILL YOU LEARN 
● Build faster, smarter, and more efficient applications for data analysis, machine learning, and scientific computing
● Implement parallel algorithms in Python
● Best practices for designing, implementing, and scaling parallel programs in Python

WHO IS THIS BOOK FOR?
This book is aimed at software developers who wish to take their careers to the next level by improving their skills and learning about concurrent and parallel programming. It is also intended for Python developers who aspire to write fast and efficient programs, and for students who wish to learn the fundamentals of parallel computing and its practical uses.

TABLE OF CONTENTS 
1. Introduction to Parallel Programming 
2. Building Multithreaded Programs 
3. Working with Multiprocessing and mpi4py Library
4. Asynchronous Programming with AsyncIO
5. Realizing Parallelism with Distributed Systems 
6. Maximizing Performance with GPU Programming using CUDA
7. Embracing the Parallel Computing Revolution
8. Scaling Your Data Science Applications with Dask
9. Exploring the Potential of AI with Parallel Computing
10. Hands-on Applications of Parallel Computing

AUTHOR BIO 
Fabio Nelli holds a Master's Degree in Chemistry and a Bachelor's Degree in IT and Automation Engineering. He currently works at various research institutes and private companies, where he delivers educational courses on data analysis and data visualization technologies. He contributes to writing articles on the web and writes in-depth books on the subject.

GENRE
Computers en internet
UITGEGEVEN
2023
23 augustus
TAAL
EN
Engels
LENGTE
346
Pagina's
UITGEVER
Orange Education Pvt Ltd
GROOTTE
5,2
MB

Meer boeken van Fabio Nelli

Python Data Analytics Python Data Analytics
2018
Pandas in 7 Days: Utilize Python to Manipulate Data, Conduct Scientific Computing, Time Series Analysis, and Exploratory Data Analysis Pandas in 7 Days: Utilize Python to Manipulate Data, Conduct Scientific Computing, Time Series Analysis, and Exploratory Data Analysis
2022
Beginning JavaScript Charts Beginning JavaScript Charts
2014
Python Data Analytics Python Data Analytics
2023
Parallel and High Performance Programming with Python Parallel and High Performance Programming with Python
2023
Python Data Analytics Python Data Analytics
2015