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Python的Scrapy爬虫框架简单学习笔记

2020-11-27 来源:星星旅游

一、简单配置,获取单个网页上的内容。
(1)创建scrapy项目

scrapy startproject getblog

(2)编辑 items.py

# -*- coding: utf-8 -*-
 
# Define here the models for your scraped items
#
# See documentation in:
# http://doc.scrapy.org/en/latest/topics/items.html
 
from scrapy.item import Item, Field
 
class BlogItem(Item):
 title = Field()
 desc = Field()

(3)在 spiders 文件夹下,创建 blog_spider.py

需要熟悉下xpath选择,感觉跟JQuery选择器差不多,但是不如JQuery选择器用着舒服( w3school教程: http://www.w3school.com.cn/xpath/ )。

# coding=utf-8
 
from scrapy.spider import Spider
from getblog.items import BlogItem
from scrapy.selector import Selector
 
 
class BlogSpider(Spider):
 # 标识名称
 name = 'blog'
 # 起始地址
 start_urls = ['http://www.cnblogs.com/']
 
 def parse(self, response):
 sel = Selector(response) # Xptah 选择器
 # 选择所有含有class属性,值为‘post_item'的div 标签内容
 # 下面的 第2个div 的 所有内容
 sites = sel.xpath('//div[@class="post_item"]/div[2]')
 items = []
 for site in sites:
 item = BlogItem()
 # 选取h3标签下,a标签下,的文字内容 ‘text()'
 item['title'] = site.xpath('h3/a/text()').extract()
 # 同上,p标签下的 文字内容 ‘text()'
 item['desc'] = site.xpath('p[@class="post_item_summary"]/text()').extract()
 items.append(item)
 return items

(4)运行,

scrapy crawl blog # 即可

(5)输出文件。

在 settings.py 中进行输出配置。

# 
输出文件位置 FEED_URI = 'blog.xml' # 输出文件格式 可以为 json,xml,csv FEED_FORMAT = 'xml'

输出位置为项目根文件夹下。

二、基本的 -- scrapy.spider.Spider

(1)使用交互shell

dizzy@dizzy-pc:~$ scrapy shell "http://www.baidu.com/"

2014-08-21 04:09:11+0800 [scrapy] INFO: Scrapy 0.24.4 started (bot: scrapybot)
2014-08-21 04:09:11+0800 [scrapy] INFO: Optional features available: ssl, http11, django
2014-08-21 04:09:11+0800 [scrapy] INFO: Overridden settings: {'LOGSTATS_INTERVAL': 0}
2014-08-21 04:09:11+0800 [scrapy] INFO: Enabled extensions: TelnetConsole, CloseSpider, WebService, CoreStats, SpiderState
2014-08-21 04:09:11+0800 [scrapy] INFO: Enabled downloader middlewares: HttpAuthMiddleware, DownloadTimeoutMiddleware, UserAgentMiddleware, RetryMiddleware, DefaultHeadersMiddleware, MetaRefreshMiddleware, HttpCompressionMiddleware, RedirectMiddleware, CookiesMiddleware, ChunkedTransferMiddleware, DownloaderStats
2014-08-21 04:09:11+0800 [scrapy] INFO: Enabled spider middlewares: HttpErrorMiddleware, OffsiteMiddleware, RefererMiddleware, UrlLengthMiddleware, DepthMiddleware
2014-08-21 04:09:11+0800 [scrapy] INFO: Enabled item pipelines: 
2014-08-21 04:09:11+0800 [scrapy] DEBUG: Telnet console listening on 127.0.0.1:6024
2014-08-21 04:09:11+0800 [scrapy] DEBUG: Web service listening on 127.0.0.1:6081
2014-08-21 04:09:11+0800 [default] INFO: Spider opened
2014-08-21 04:09:12+0800 [default] DEBUG: Crawled (200)  (referer: None)
[s] Available Scrapy objects:
[s] crawler 
[s] item {}
[s] request 
[s] response <200 http://www.baidu.com/>
[s] settings 
[s] spider 
[s] Useful shortcuts:
[s] shelp() Shell help (print this help)
[s] fetch(req_or_url) Fetch request (or URL) and update local objects
[s] view(response) View response in a browser
 
>>> 
 # response.body 返回的所有内容
 # response.xpath('//ul/li') 可以测试所有的xpath内容
 More important, if you type response.selector you will access a selector object you can use to
query the response, and convenient shortcuts like response.xpath() and response.css() mapping to
response.selector.xpath() and response.selector.css()

也就是可以很方便的,以交互的形式来查看xpath选择是否正确。之前是用FireFox的F12来选择的,但是并不能保证每次都能正确的选择出内容。

也可使用:

scrapy shell 'http://scrapy.org' --nolog
# 参数 --nolog 没有日志

(2)示例

from scrapy import Spider
from scrapy_test.items import DmozItem
 
 
class DmozSpider(Spider):
 name = 'dmoz'
 allowed_domains = ['dmoz.org']
 start_urls = ['http://www.dmoz.org/Computers/Programming/Languages/Python/Books/',
 'http://www.dmoz.org/Computers/Programming/Languages/Python/Resources/,'
 '']
 
 def parse(self, response):
 for sel in response.xpath('//ul/li'):
 item = DmozItem()
 item['title'] = sel.xpath('a/text()').extract()
 item['link'] = sel.xpath('a/@href').extract()
 item['desc'] = sel.xpath('text()').extract()
 yield item

(3)保存文件

可以使用,保存文件。格式可以 json,xml,csv

scrapy crawl -o 'a.json' -t 'json'

(4)使用模板创建spider

scrapy genspider baidu baidu.com
 
# -*- coding: utf-8 -*-
import scrapy
 
 
class BaiduSpider(scrapy.Spider):
 name = "baidu"
 allowed_domains = ["baidu.com"]
 start_urls = (
 'http://www.baidu.com/',
 )
 
 def parse(self, response):
 pass

这段先这样吧,记得之前5个的,现在只能想起4个来了. :-(

千万记得随手点下保存按钮。否则很是影响心情的(⊙o⊙)!

三、高级 -- scrapy.contrib.spiders.CrawlSpider

例子

#coding=utf-8
from scrapy.contrib.spiders import CrawlSpider, Rule
from scrapy.contrib.linkextractors import LinkExtractor
import scrapy
 
 
class TestSpider(CrawlSpider):
 name = 'test'
 allowed_domains = ['example.com']
 start_urls = ['http://www.example.com/']
 rules = (
 # 元组
 Rule(LinkExtractor(allow=('category.php', ), deny=('subsection.php', ))),
 Rule(LinkExtractor(allow=('item.php', )), callback='pars_item'),
 )
 
 def parse_item(self, response):
 self.log('item page : %s' % response.url)
 item = scrapy.Item()
 item['id'] = response.xpath('//td[@id="item_id"]/text()').re('ID:(d+)')
 item['name'] = response.xpath('//td[@id="item_name"]/text()').extract()
 item['description'] = response.xpath('//td[@id="item_description"]/text()').extract()
 return item

其他的还有 XMLFeedSpider

  • class scrapy.contrib.spiders.XMLFeedSpider
  • class scrapy.contrib.spiders.CSVFeedSpider
  • class scrapy.contrib.spiders.SitemapSpider
  • 四、选择器

     >>> from scrapy.selector import Selector
     >>> from scrapy.http import HtmlResponse
    

    可以灵活的使用 .css() 和 .xpath() 来快速的选取目标数据

    关于选择器,需要好好研究一下。xpath() 和 css() ,还要继续熟悉 正则.

    当通过class来进行选择的时候,尽量使用 css() 来选择,然后再用 xpath() 来选择元素的熟悉

    五、Item Pipeline

    Typical use for item pipelines are:
    • cleansing HTML data # 清除HTML数据
    • validating scraped data (checking that the items contain certain fields) # 验证数据
    • checking for duplicates (and dropping them) # 检查重复
    • storing the scraped item in a database # 存入数据库
    (1)验证数据

    from scrapy.exceptions import DropItem
     
    class PricePipeline(object):
     vat_factor = 1.5
     def process_item(self, item, spider):
     if item['price']:
     if item['price_excludes_vat']:
     item['price'] *= self.vat_factor
     else:
     raise DropItem('Missing price in %s' % item)
    

    (2)写Json文件

    import json
     
    class JsonWriterPipeline(object):
     def __init__(self):
     self.file = open('json.jl', 'wb')
     def process_item(self, item, spider):
     line = json.dumps(dict(item)) + '
    '
     self.file.write(line)
     return item
    

    (3)检查重复

    from scrapy.exceptions import DropItem
     
    class Duplicates(object):
     def __init__(self):
     self.ids_seen = set()
     def process_item(self, item, spider):
     if item['id'] in self.ids_seen:
     raise DropItem('Duplicate item found : %s' % item)
     else:
     self.ids_seen.add(item['id'])
     return item
    

    至于将数据写入数据库,应该也很简单。在 process_item 函数中,将 item 存入进去即可了。