2nd ed. — Birmingham: Packt Publishing, 2022. — 605 p. — ISBN 1801814015.
Write fast, robust, and highly reusable applications using Python's internal optimization, state-of-the-art performance-benchmarking tools, and cutting-edge libraries.Key FeaturesBenchmark, profile, and accelerate Python programs using
optimization tools.
Scale applications to multiple processors with
concurrent programming.Make applications
robust and reusable using effective design patterns.
Python's powerful capabilities for implementing robust and efficient programs make it one of the most sought-after programming languages. In this book, you'll explore the tools that allow you to improve performance and take your Python programs to the next level. This book starts by examining the built-in as well as external libraries that streamline tasks in the development cycle, such as benchmarking, profiling, and optimizing. You'll then get to grips with using
specialized tools such as dedicated libraries and compilers to increase your performance at number-crunching tasks, including training machine learning models. The book covers
concurrency, a major solution to making programs more efficient and scalable, and various concurrent programming techniques such as
multithreading, multiprocessing, and asynchronous programming. You'll also understand the common problems that cause
undesirable behavior in concurrent programs. Finally, you'll work with a wide range of design patterns, including
creational, structural, and behavioral patterns that enable you to tackle complex design and architecture challenges, making your programs more robust and maintainable. By the end of the book, you'll be exposed to a wide range of
advanced functionalities in Python and be equipped with the practical knowledge needed to apply them to your use cases.
What you will learnWrite efficient numerical code with NumPy, pandas, and Xarray.
Use
Cython and Numba to achieve native performance.
Find bottlenecks in your Python code using
profilers.
Optimize your machine learning models with
JAX.
Implement multithreaded, multiprocessing, and asynchronous programs.
Solve common problems in concurrent programming, such as deadlocks.
Tackle architecture challenges with design patterns.
Who this book is forThis book is for
intermediate to experienced Python programmers who are looking to scale up their applications in a systematic and robust manner. Programmers from a range of backgrounds will find this book useful, including
software engineers, scientific programmers, and software architects.
Benchmarking and Profiling.
Pure Python Optimizations.
Fast Array Operations with NumPy and Pandas.
C Performance with Cython.
Exploring Compilers.
Automatic Differentiation and Accelerated Linear Algebra for Machine Learning.
Implementing Concurrency.
Parallel Processing.
Concurrent Web Requests.
Concurrent Image Processing.
Building Communication Channels with asyncio.
Deadlocks.
Starvation.
Race Conditions.
The Global Interpreter Lock.
The Factory Pattern.
The Builder Pattern.
Other Creational Patterns.
The Adapter Pattern.
The Decorator Pattern.
The Bridge Pattern.
The Facade Pattern.
Other Structural Patterns.
The Chain of Responsibility Pattern.
The Command Pattern.
The Observer Pattern.
True PDF