继上一篇【Python数据分析】Python3操做Excel-以豆瓣图书Top250为例 对豆瓣图书Top250进行爬取之后,鉴于还有一些问题没有解决,因此进行了进一步的交流讨论,这期间获得了一只尼玛的帮助与启发,十分感谢!html
上次存在的问题以下:python
1.写入不能继续的问题app
2.在Python IDLE中明明输出正确的结果,写到excel中就乱码了。ide
上述两个问题促使我改换excel处理模块,由于听说xlwt只支持到Excel 2003,颇有可能会出问题。函数
虽然“一只尼玛”给了一个Validate函数,但是那是针对去除Windows下文件名中非法字符的函数,跟写入excel乱码没有关系,因此仍是考虑更换模块。post
此次我改为xlsxwriter这个模块,https://pypi.python.org/pypi/XlsxWriter. 一样能够pip3 install xlsxwriter,自动下载安装,简便易行。一些用法样例:url
import xlsxwriter # Create an new Excel file and add a worksheet. workbook = xlsxwriter.Workbook('demo.xlsx') worksheet = workbook.add_worksheet() # Widen the first column to make the text clearer. worksheet.set_column('A:A', 20) # Add a bold format to use to highlight cells. bold = workbook.add_format({'bold': True}) # Write some simple text. worksheet.write('A1', 'Hello') # Text with formatting. worksheet.write('A2', 'World', bold) # Write some numbers, with row/column notation. worksheet.write(2, 0, 123) worksheet.write(3, 0, 123.456) # Insert an image. worksheet.insert_image('B5', 'logo.png') workbook.close()
果断更换写入excel的代码。效果以下:spa
果真鼻子是鼻子脸是脸,该是连接就是连接,无论什么字符都能写,毕竟unicode。调试
因此说,选对模块很重要!选对模块很重要!选对模块很重要!(重说三)excel
若是要爬的内容不是很公正标准的字符串或数字的话,我是不会用xlwt啦。
这里有4中Python写入excel的模块对比:http://ju.outofmemory.cn/entry/56671
我截了一个对比图以下,具体能够看上面那篇文章,很是详细!
这个既然如此顺畅,还能够写入图片,那咱们何不试试看呢?
目标:把图片连接那一列的内容换成真正的图片!
其实很简单,由于咱们以前已经有了图片的存储路径,把它插入到里面就能够了。
the_img = "I:\\douban\\image\\"+bookName+".jpg" writelist=[i+j,bookName,nickname,rating,nums,the_img,bookurl,notion,tag] for k in range(0,9): if k == 5: worksheet.insert_image(i+j,k,the_img) else: worksheet.write(i+j,k,writelist[k])
出来是这样的效果,显然不美观,那咱们应该适当调整一些每行的高度,以及让他们居中试试看:
查阅xlsxwriter文档可知,能够这么设置行列宽度和居中:(固然,这些操做在excel中能够直接作,并且可能会比写代码更快,可是我却是想更多试试这个模块)
format = workbookx.add_format() format.set_align('justify') format.set_align('center') format.set_align('vjustify') format.set_align('vcenter') format.set_text_wrap() worksheet.set_row(0,12,format) for i in range(1,251): worksheet.set_row(i,70) worksheet.set_column('A:A',3,format) worksheet.set_column('B:C',17,format) worksheet.set_column('D:D',4,format) worksheet.set_column('E:E',7,format) worksheet.set_column('F:F',10,format) worksheet.set_column('G:G',19,format) worksheet.set_column('H:I',40,format)
至此完成了excel的写入,只不过设置格式这块实在繁杂,得不断调试距离,大小,因此在excel里面作会简单些。
最终代码:
# -*- coding:utf-8 -*- import requests import re import xlwt import xlsxwriter from bs4 import BeautifulSoup from datetime import datetime import codecs now = datetime.now() #开始计时 print(now) def validate(title): #from nima rstr = r"[\/\\\:\*\?\"\<\>\|]" # '/\:*?"<>|-' new_title = re.sub(rstr, "", title) return new_title txtfile = codecs.open("top2501.txt",'w','utf-8') url = "http://book.douban.com/top250?" header = { "User-Agent": "Mozilla/5.0 (Windows NT 6.3; WOW64) AppleWebKit/537.36 (KHTML, like Gecko) Chrome/49.0.2623.13 Safari/537.36", "Referer": "http://book.douban.com/" } image_dir = "I:\\douban\\image\\" #下载图片 def download_img(imageurl,imageName = "xxx.jpg"): rsp = requests.get(imageurl, stream=True) image = rsp.content path = image_dir + imageName +'.jpg' #print(path) with open(path,'wb') as file: file.write(image) #创建Excel workbookx = xlsxwriter.Workbook('I:\\douban\\btop250.xlsx') worksheet = workbookx.add_worksheet() format = workbookx.add_format() format.set_align('justify') format.set_align('center') format.set_align('vjustify') format.set_align('vcenter') format.set_text_wrap() worksheet.set_row(0,12,format) for i in range(1,251): worksheet.set_row(i,70) worksheet.set_column('A:A',3,format) worksheet.set_column('B:C',17,format) worksheet.set_column('D:D',4,format) worksheet.set_column('E:E',7,format) worksheet.set_column('F:F',10,format) worksheet.set_column('G:G',19,format) worksheet.set_column('H:I',40,format) item = ['书名','别称','评分','评价人数','封面','图书连接','出版信息','标签'] for i in range(1,9): worksheet.write(0,i,item[i-1]) s = requests.Session() #创建会话 s.get(url,headers=header) for i in range(0,250,25): geturl = url + "/start=" + str(i) #要获取的页面地址 print("Now to get " + geturl) postData = {"start":i} #post数据 res = s.post(url,data = postData,headers = header) #post soup = BeautifulSoup(res.content.decode(),"html.parser") #BeautifulSoup解析 table = soup.findAll('table',{"width":"100%"}) #找到全部图书信息的table sz = len(table) #sz = 25,每页列出25篇文章 for j in range(1,sz+1): #j = 1~25 sp = BeautifulSoup(str(table[j-1]),"html.parser") #解析每本图书的信息 imageurl = sp.img['src'] #找图片连接 bookurl = sp.a['href'] #找图书连接 bookName = sp.div.a['title'] nickname = sp.div.span #找别名 if(nickname): #若是有别名则存储别名不然存’无‘ nickname = nickname.string.strip() else: nickname = "" notion = str(sp.find('p',{"class":"pl"}).string) #抓取出版信息,注意里面的.string还不是真的str类型 rating = str(sp.find('span',{"class":"rating_nums"}).string) #抓取平分数据 nums = sp.find('span',{"class":"pl"}).string #抓取评分人数 nums = nums.replace('(','').replace(')','').replace('\n','').strip() nums = re.findall('(\d+)人评价',nums)[0] download_img(imageurl,bookName) #下载图片 book = requests.get(bookurl) #打开该图书的网页 sp3 = BeautifulSoup(book.content,"html.parser") #解析 taglist = sp3.find_all('a',{"class":" tag"}) #找标签信息 tag = "" lis = [] for tagurl in taglist: sp4 = BeautifulSoup(str(tagurl),"html.parser") #解析每一个标签 lis.append(str(sp4.a.string)) tag = ','.join(lis) #加逗号 the_img = "I:\\douban\\image\\"+bookName+".jpg" writelist=[i+j,bookName,nickname,rating,nums,the_img,bookurl,notion,tag] for k in range(0,9): if k == 5: worksheet.insert_image(i+j,k,the_img) else: worksheet.write(i+j,k,writelist[k]) txtfile.write(str(writelist[k])) txtfile.write('\t') txtfile.write(u'\r\n') end = datetime.now() #结束计时 print(end) print("程序耗时: " + str(end-now)) txtfile.close() workbookx.close()
运行结果以下:
2016-03-28 11:40:50.525635 Now to get http://book.douban.com/top250?/start=0 Now to get http://book.douban.com/top250?/start=25 Now to get http://book.douban.com/top250?/start=50 Now to get http://book.douban.com/top250?/start=75 Now to get http://book.douban.com/top250?/start=100 Now to get http://book.douban.com/top250?/start=125 Now to get http://book.douban.com/top250?/start=150 Now to get http://book.douban.com/top250?/start=175 Now to get http://book.douban.com/top250?/start=200 Now to get http://book.douban.com/top250?/start=225 2016-03-28 11:48:14.946184 程序耗时: 0:07:24.420549
顺利爬完250本书。这次爬取行动就正确性来讲已告完成!
本次耗时7分24秒,仍是显得太慢了。下一步就应该是如何在提升效率上面下功夫了。