


Python code example for traversing subfiles and all subfolders
最近看ECShop到网上找资料,发现好多说明ECShop的文件结构不全面,于是想自己弄个出来。但这是个无聊耗时的工作,自己就写了个Python脚本,可以递归遍历目录下的所有文件和所有子目录,并将结果记录到一个.xml文件中(因为想使用Notepad++的代码折叠功能,所以使用.xml文件)。
下面就是Python代码:
# -*- coding: cp936 -*- ############################################# # Written By Qian_F # # 获取文件路径列表,并写入到当前目录生成test.txt # ############################################# import os def getfilelist(filepath, tabnum=1): simplepath = os.path.split(filepath)[1] returnstr = simplepath+"目录<>"+"\n" returndirstr = "" returnfilestr = "" filelist = os.listdir(filepath) for num in range(len(filelist)): filename=filelist[num] if os.path.isdir(filepath+"/"+filename): returndirstr += "\t"*tabnum+getfilelist(filepath+"/"+filename, tabnum+1) else: returnfilestr += "\t"*tabnum+filename+"\n" returnstr += returnfilestr+returndirstr return returnstr+"\t"*tabnum+"</>\n" path = raw_input("请输入文件路径:") usefulpath = path.replace('\\', '/') if usefulpath.endswith("/"): usefulpath = usefulpath[:-1] if not os.path.exists(usefulpath): print "路径错误!" elif not os.path.isdir(usefulpath): print "输入的不是目录!" else: filelist = os.listdir(usefulpath) o=open("test.xml","w+") o.writelines(getfilelist(usefulpath)) o.close() print "成功!请查看test.xml文件"
执行该Python脚本后会在当前目录生成test.xml文件,使用Notepad++打开(以ANSI编码方式)就可以看到指定目录的文件结构了。下面是我生成的ECShop下upload目录的文件结构部分截图:
以上就是本文的全部内容,希望对大家的学习有所帮助,也希望大家多多支持PHP中文网。
更多Python 遍历子文件和所有子文件夹的代码实例相关文章请关注PHP中文网!

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