python 多线程与多进程

原文地址:https://medium.com/@nbosco/multithreading-vs-multiprocessing-in-python-c7dc88b50b5b

Multithreading vs Multiprocessing in Python ?

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Nov 27, 2017

What do I leverage!?!?!

Executive Summary

The Python threading module uses threads instead of processes. Threads run in the same unique memory heap. Whereas Processes run in separate memory heaps. This, makes sharing information harder with processes and object instances. One problem arises because threads use the same memory heap, multiple threads can write to the same location in the memory heap which is why the global interpreter lock(GIL) in CPython was created as a mutex to prevent it from happening.

What’s Multithreading?

The multithreading library is lightweight, shares memory, responsible for responsive UI and is used well for I/O bound applications. However, the module isn’t killable and is subject to the GIL

Threading library in Python

Multiple threads live in the same process in the same space, each thread will do a specific task, have its own code, own stack memory, instruction pointer, and share heap memory. If a thread has a memory leak it can damage the other threads and parent process.

import threading
def calc_square(number):
    print('Square:' , number * number)
def calc_quad(number):
    print('Quad:' , number * number * number * number)
if __name__ == "__main__":
    number = 7
thread1 = threading.Thread(target=calc_square, args=(number,))
    thread2 = threading.Thread(target=calc_quad, args=(number,))
# Will execute both in parallel
    thread1.start()
    thread2.start()
# Joins threads back to the parent process, which is this
    # program
    thread1.join()
    thread2.join()
# This program reduces the time of execution by running tasks in              parallel

What’s multiprocessing?

The multiprocessing library uses separate memory space, multiple CPU cores, bypasses GIL limitations in CPython, child processes are killable(ex. function calls in program) and is much easier to use. Some caveats of the module are a larger memory footprint and IPC’s a little more complicated with more overhead.

Checkout Multiprocessing library in the Python docs

import multiprocessing
def calc_square(number):
    print('Square:' , number * number)
    result = number * number
    print(result)
def calc_quad(number):
    print('Quad:' , number * number * number * number)
if __name__ == "__main__":
    number = 7
    result = None
p1 = multiprocessing.Process(target=calc_square, args=(number,))
    p2 = multiprocessing.Process(target=calc_quad, args=(number,))
p1.start()
    p2.start()
p1.join()
    p2.join()
    
    # Wont print because processes run using their own memory location                     
    print(result)

An exercise, execute these programs and measure the time delta, between process & threading, relative to never using either of the libraries.

This is my first technical blog post, let me know if you found it interesting to read. It’s mostly a quick brain dump I did on a whim, I can keep doing more if you found it useful.

在IT领域,尤其是地理信息系统(GIS)中,坐标转换是一项关键技术。本文将深入探讨百度坐标系、火星坐标系和WGS84坐标系之间的相互转换,并介绍如何使用相关工具进行批量转换。 首先,我们需要了解这三种坐标系的基本概念。WGS84坐标系,即“World Geodetic System 1984”,是一种全球通用的地球坐标系统,广泛应用于GPS定位和地图服务。它以地球椭球模型为基础,以地球质心为原点,是国际航空和航海的主要参考坐标系。百度坐标系(BD-09)是百度地图使用的坐标系。为了保护隐私和安全,百度对WGS84坐标进行了偏移处理,导致其与WGS84坐标存在差异。火星坐标系(GCJ-02)是中国国家测绘局采用的坐标系,同样对WGS84坐标进行了加密处理,以防止未经授权的精确位置获取。 坐标转换的目的是确保不同坐标系下的地理位置数据能够准确对应。在GIS应用中,通常通过特定的算法实现转换,如双线性内插法或四参数转换法。一些“坐标转换小工具”可以批量转换百度坐标、火星坐标与WGS84坐标。这些工具可能包含样本文件(如org_xy_格式参考.csv),用于提供原始坐标数据,其中包含需要转换的经纬度信息。此外,工具通常会附带使用指南(如重要说明用前必读.txt和readme.txt),说明输入数据格式、转换步骤及可能的精度问题等。x86和x64目录则可能包含适用于32位和64位操作系统的软件或库文件。 在使用这些工具时,用户需要注意以下几点:确保输入的坐标数据准确无误,包括经纬度顺序和浮点数精度;按照工具要求正确组织数据,遵循读写规则;注意转换精度,不同的转换方法可能会产生微小误差;在批量转换时,检查每个坐标是否成功转换,避免个别错误数据影响整体结果。 坐标转换是GIS领域的基础操作,对于地图服务、导航系统和地理数据分析等至关重要。理解不同坐标系的特点和转换方法,有助于我们更好地处
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