Free Download PARALLEL PROGRAMMING WITH JOBLIB AND DASK: Boost Performance with Easy-to-Follow Parallel Computing Strategies (Tech Programs For Beginners series) by Elmer wright
English | June 13, 2025 | ISBN: N/A | ASIN: B0FD6L61DH | 110 pages | EPUB | 1.50 Mb
Want to Speed Up Your Python Code Without the Headaches of Complex Multithreading? This Book Shows You How.
Are your Python scripts slowing down when handling large datasets or heavy computations? Tired of watching your programs crawl while your CPU sits idle?
"PARALLEL PROGRAMMING WITH JOBLIB AND DASK: Boost Performance with Easy-to-Follow Parallel Computing Strategies" by Elmer Wright is the hands-on guide you've been waiting for - practical, accessible, and focused on real-world performance.
Whether you're working with data science workflows, machine learning models, or custom Python applications, this book teaches you how to implement parallelism using Joblib and Dask - two powerful libraries that simplify concurrency, scaling, and multiprocessing.What You'll Learn:
Understand the difference between threads, processes, and distributed computing - without the jargon.
Learn how to parallelize loops and pipelines using Joblib's simple, efficient syntax.
Process massive datasets on a single machine or across a cluster - with minimal code changes.
Speed up NumPy operations, scikit-learn models, and data wrangling tasks with ease.
Use Dask graphs, delayed functions, and distributed schedulers to manage large workflows.
Follow step-by-step coding examples you can apply directly to your own projects.Who This Book Is For
You don't need a background in high-performance computing. Just a working knowledge of Python and the desire to write smarter, faster code.
Code:
Bitte
Anmelden
oder
Registrieren
um Code Inhalt zu sehen!