Cargando…

Concurrent and parallel programming in Python.

In a big data project, a plethora of information is retrieved, big numbers are crunched on our machine, or both. If the coding is sequential or synchronous, our application will struggle to execute. Two mechanisms to alleviate such bottlenecks are concurrency and parallelism. In Python, concurrency...

Descripción completa

Detalles Bibliográficos
Clasificación:Libro Electrónico
Formato: Electrónico Video
Idioma:Inglés
Publicado: [Place of publication not identified] : Packt Publishing, [2022]
Edición:[First edition].
Temas:
Acceso en línea:Texto completo (Requiere registro previo con correo institucional)

MARC

LEADER 00000cgm a22000007i 4500
001 OR_on1351840700
003 OCoLC
005 20231017213018.0
006 m o c
007 vz czazuu
007 cr cnannnuuuuu
008 221128s2022 xx 369 o vleng d
040 |a ORMDA  |b eng  |e rda  |e pn  |c ORMDA  |d OCLCF  |d OCLCO 
020 |a 9781804611944  |q (electronic video) 
020 |a 1804611948  |q (electronic video) 
029 1 |a AU@  |b 000072997760 
035 |a (OCoLC)1351840700 
037 |a 9781804611944  |b O'Reilly Media 
050 4 |a QA76.73.P98 
082 0 4 |a 005.13/3  |2 23/eng/20221128 
049 |a UAMI 
245 0 0 |a Concurrent and parallel programming in Python. 
250 |a [First edition]. 
264 1 |a [Place of publication not identified] :  |b Packt Publishing,  |c [2022] 
300 |a 1 online resource (1 video file (6 hr., 9 min.)) :  |b sound, color. 
306 |a 060900 
336 |a two-dimensional moving image  |b tdi  |2 rdacontent 
337 |a computer  |b c  |2 rdamedia 
338 |a online resource  |b cr  |2 rdacarrier 
344 |a digital  |2 rdatr 
347 |a video file  |2 rdaft 
380 |a Instructional films  |2 lcgft 
511 0 |a Maximilian Schallwig, presenter. 
500 |a "Published in November 2022." 
520 |a In a big data project, a plethora of information is retrieved, big numbers are crunched on our machine, or both. If the coding is sequential or synchronous, our application will struggle to execute. Two mechanisms to alleviate such bottlenecks are concurrency and parallelism. In Python, concurrency is represented by threading, whereas multiprocessing achieves parallelism. This course begins with an introduction about potential programming speed bottlenecks and solving them. You will delve into Python concepts and create a Wikipedia Reader, Yahoo Finance Reader, Queues, and Master Scheduler. You will build a multi-threaded program to grab data from the Internet and parse and save them into a local database. Implement multiprocessing in Python, which lets us use multiple CPUs in our code. Learn about threading, multiprocessing, asynchronous wait, locking, multiprocessing queues, Pool Map Multiple Arguments, writing asynchronous programs, and combining async and multiprocessing. Upon completion, we can spread our workload over all cores available on the used machine. We will combine both elements, multiprocessing with asynchronous programming, to maximize benefit and CPU resource usage and minimize the time spent waiting for IO responses. You will create multi-threaded, asynchronous, multi-process programs to make programs run faster. What You Will Learn Learn to use concurrency and parallelism in Python Write multi-threaded programs in Python to reduce coding lengths Write multi-process programs that execute even faster Understand the differences between concurrency and parallelism Create asynchronous programs in Python by adding concurrency Spread workload over all the cores available on a machine being used Audience This course is aimed at intermediate- to mastery-level seeking programmers, API developers, web developers, and application developers who know basic- to intermediate-level Python coding beforehand. The topics on concurrency and parallelism expect one to be aware of basic to intermediate understanding of coding on Python. Prior knowledge of basic Python coding is desirable for optimal benefit from this course. About The Author Maximilian Schallwig: Maximilian Schallwig is a data engineer and a proficient Python programmer. He holds a bachelor's degree in physics and a master's degree in astrophysics. He has been working on data for over five years, first as a data scientist and then as a data engineer. He can talk endlessly about big data pipelines, data infrastructure, and his unwavering devotion to Python. Even after two unsuccessful attempts in high school, he still decided to learn Python at the University. He cautiously stepped into the realm of data, beginning with a simple Google search for "what does a data scientist do" He was determined to pursue a career in data science to become a data engineer by learning about big data tools and infrastructure design to build scalable systems and pipelines. He enjoys sharing his programming skills with the rest of the world. 
588 |a Online resource; title from title details screen (O'Reilly, viewed November 28, 2022). 
590 |a O'Reilly  |b O'Reilly Online Learning: Academic/Public Library Edition 
650 0 |a Python (Computer program language) 
650 0 |a Computer programming. 
650 6 |a Python (Langage de programmation) 
650 6 |a Programmation (Informatique) 
650 7 |a computer programming.  |2 aat 
650 7 |a Computer programming  |2 fast 
650 7 |a Python (Computer program language)  |2 fast 
655 7 |a Instructional films  |2 fast 
655 7 |a Internet videos  |2 fast 
655 7 |a Nonfiction films  |2 fast 
655 7 |a Instructional films.  |2 lcgft 
655 7 |a Nonfiction films.  |2 lcgft 
655 7 |a Internet videos.  |2 lcgft 
655 7 |a Films de formation.  |2 rvmgf 
655 7 |a Films autres que de fiction.  |2 rvmgf 
655 7 |a Vidéos sur Internet.  |2 rvmgf 
700 1 |a Schallwig, Maximilian,  |e presenter. 
710 2 |a Packt Publishing,  |e publisher. 
856 4 0 |u https://learning.oreilly.com/videos/~/9781804611944/?ar  |z Texto completo (Requiere registro previo con correo institucional) 
994 |a 92  |b IZTAP