数据结构化与保存
1.将新闻的正文内容保存到文本文件。
1 def writeNewsDetails(contents): 2 f = open('gzccnews.txt', 'a', encoding='utf-8') 3 f.write(contents) 4 f.close()
2. 将新闻数据结构化为字典的列表:
- 单条新闻的详情-->字典news
- 一个列表页所有单条新闻汇总-->列表newsls.append(news)
- 所有列表页的所有新闻汇总列表newstotal.extend(newsls)
1 import requests 2 from bs4 import BeautifulSoup 3 from datetime import datetime 4 import re 5 import pandas 6 7 8 url = "http://news.gzcc.cn/html/xiaoyuanxinwen/" 9 res = requests.get(url); 10 res.encoding = "utf-8" 11 soup = BeautifulSoup(res.text, "html.parser"); 12 13 def writeDetailNews(contents): 14 f = open('gzccnews.txt', "a", encoding="utf-8") 15 f.write(contents) 16 f.close() 17 18 def getClickCount(newUrl): 19 newsId = re.findall("\_(.*).html", newUrl)[0].split("/")[-1]; 20 res = requests.get("http://oa.gzcc.cn/api.php?op=count&id= {}&modelid=80".format(newsId)) 21 return int(res.text.split(".html")[-1].lstrip("('").rsplit("');")[0]) 22 23 # 获取新闻详情 24 def getNewDetails(newsDetailUrl): 25 detail_res = requests.get(newsDetailUrl) 26 detail_res.encoding = "utf-8" 27 detail_soup = BeautifulSoup(detail_res.text, "html.parser") 28 29 news = {} 30 news['title'] = detail_soup.select(".show-title")[0].text 31 info = detail_soup.select(".show-info")[0].text 32 news['date_time'] = datetime.strptime(info.lstrip('发布时间:')[:19], "%Y-%m-%d %H:%M:%S") 33 if info.find('来源:') > 0: 34 news['source'] = info[info.find("来源:"):].split()[0].lstrip('来源:') 35 else: 36 news['source'] = 'none' 37 news['content'] = detail_soup.select("#content")[0].text 38 writeDetailNews(news['content']) 39 news['click'] = getClickCount(newsDetailUrl) 40 return news 41 # print(news) 42 43 # 获取总页数 44 def getPageN(url): 45 res = requests.get(url) 46 res.encoding = 'utf-8' 47 soup = BeautifulSoup(res.text, 'html.parser') 48 return int(soup.select(".a1")[0].text.rstrip("条")) // 10 + 1 49 50 # 获取新闻一页的所有信息 51 def getListPage(url): 52 newsList = [] 53 for news in soup.select("li"): 54 if len(news.select(".news-list-title")) > 0: # 排除为空的li 55 # time = news.select(".news-list-info")[0].contents[0].text 56 # title = news.select(".news-list-title")[0].text 57 # description = news.select(".news-list-description")[0].text 58 detail_url = news.select('a')[0].attrs['href'] 59 newsList.append(getNewDetails(detail_url)) 60 return newsList 61 62 newsTotal = [] 63 totalPageNum = getPageN(url) 64 firstPageUrl = "http://news.gzcc.cn/html/xiaoyuanxinwen/" 65 newsTotal.extend(getListPage(firstPageUrl)) 66 67 for num in range(totalPageNum, totalPageNum + 1): 68 listpageurl = "http://news.gzcc.cn/html/xiaoyuanxinwen/{}.html".format(num) 69 getListPage(listpageurl) 70 71 print(newsTotal)
3. 安装pandas,用pandas.DataFrame(newstotal),创建一个DataFrame对象df.
df = pandas.DataFrame(newsTotal) print(df)
4. 通过df将提取的数据保存到csv或excel 文件。
1 df.to_excel('gzcss.xlsx')
5. 用pandas提供的函数和方法进行数据分析:
- 提取包含点击次数、标题、来源的前6行数据
- 提取‘学校综合办’发布的,‘点击次数’超过3000的新闻。
- 提取'国际学院'和'学生工作处'发布的新闻。
- 进取2018年3月的新闻
1 print(df[['title', 'click', 'source']][:6]) 2 3 print(df[(df['click'] > 3000) & (df['source'] == '学校综合办')]) 4 5 sou = ['国际学院', '学生工作处'] 6 print(df[df['source'].isin(sou)]) 7 8 # 进取2018年3月的新闻 9 df1 = df.set_index('date_time') 10 #没有三月的时间 11 print(df1['2018-04'])
6. 保存到sqlite3数据库
import sqlite3
with sqlite3.connect('gzccnewsdb.sqlite') as db:
df3.to_sql('gzccnews05',con = db, if_exists='replace')
7. 从sqlite3读数据
with sqlite3.connect('gzccnewsdb.sqlite') as db:
df2 = pandas.read_sql_query('SELECT * FROM gzccnews05',con=db)
print(df2)
8. df保存到mysql数据库
安装SQLALchemy
安装PyMySQL
MySQL里创建数据库:create database gzccnews charset utf8;
import pymysql
from sqlalchemy import create_engine
conn = create_engine('mysql+pymysql://root:root@localhost:3306/gzccnews?charset=utf8')
pandas.io.sql.to_sql(df, 'gzccnews', con=conn, if_exists='replace')
MySQL里查看已保存了数据。(通过MySQL Client或Navicate。)
浙公网安备 33010602011771号