How to read .py files correctly in Python?
Apr 03, 2024 pm 04:21 PM在 Python 中, 讀取 .py 文件有三種方法。第一種方法是使用內(nèi)置函數(shù) open(),如 with open('example.py', 'r') as f: content = f.read()。第二種方法是使用 import 語句,如 import example。第三種方法是使用 exec() 函數(shù),如 with open('example.py', 'r') as f: code = f.read() exec(code)。
如何正確讀取 .py 文件?
引入
讀取其他 Python 腳本對于模塊化編程至關(guān)重要。本文將介紹在 Python 中正確讀取 .py 文件的三種常見方法。
方法 1:使用內(nèi)置函數(shù)
內(nèi)置函數(shù) open()
可用于讀取文件內(nèi)容。其語法如下:
open(filename, mode)
其中:
filename
是要打開的文件名mode
是打開模式(例如,'r' 表示讀?。?/li>
例如:
with open('example.py', 'r') as f: content = f.read()
方法 2:使用 import
語句
import
語句可用于導(dǎo)入其他模塊(.py 文件)的內(nèi)容。其語法如下:
import module_name
例如:
import example
導(dǎo)入后,可以訪問模塊中定義的變量和函數(shù)。
方法 3:使用 exec()
函數(shù)
exec()
函數(shù)可用于動態(tài)執(zhí)行 Python 代碼。其語法如下:
exec(code, globals, locals)
其中:
code
是要執(zhí)行的 Python 代碼globals
和locals
是可選的字典,分別指定全局和局部變量空間
例如:
with open('example.py', 'r') as f: code = f.read() exec(code)
實戰(zhàn)案例
考慮一個名為 example.py
的文件,其中定義了一個函數(shù) add()
:
def add(a, b): return a + b
為了從一個不同的 Python 腳本中調(diào)用此函數(shù),我們可以使用以下代碼:
# 使用方法 1 import example print(example.add(1, 2)) # 使用方法 3 with open('example.py', 'r') as f: code = f.read() exec(code) print(add(1, 2))
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