scrapy

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中文文档   http://scrapy-chs.readthedocs.io/zh_CN/1.0/intro/tutorial.html



一 介绍

    Scrapy一个开源和协作的框架,其最初是为了页面抓取 (更确切来说, 网络抓取 )所设计的,使用它可以以快速、简单、可扩展的方式从网站中提取所需的数据。但目前Scrapy的用途十分广泛,可用于如数据挖掘、监测和自动化测试等领域,也可以应用在获取API所返回的数据(例如 Amazon Associates Web Services ) 或者通用的网络爬虫。

    Scrapy 是基于twisted框架开发而来,twisted是一个流行的事件驱动的python网络框架。因此Scrapy使用了一种非阻塞(又名异步)的代码来实现并发。整体架构大致如下

The data flow in Scrapy is controlled by the execution engine, and goes like this:

  1. The Engine gets the initial Requests to crawl from the Spider.
  2. The Engine schedules the Requests in the Scheduler and asks for the next Requests to crawl.
  3. The Scheduler returns the next Requests to the Engine.
  4. The Engine sends the Requests to the Downloader, passing through the Downloader Middlewares (see process_request()).
  5. Once the page finishes downloading the Downloader generates a Response (with that page) and sends it to the Engine, passing through the Downloader Middlewares (see process_response()).
  6. The Engine receives the Response from the Downloader and sends it to the Spider for processing, passing through the Spider Middleware (see process_spider_input()).
  7. The Spider processes the Response and returns scraped items and new Requests (to follow) to the Engine, passing through the Spider Middleware (see process_spider_output()).
  8. The Engine sends processed items to Item Pipelines, then send processed Requests to the Scheduler and asks for possible next Requests to crawl.
  9. The process repeats (from step 1) until there are no more requests from the Scheduler.

 

Components:

  1. 引擎(EGINE)

    引擎负责控制系统所有组件之间的数据流,并在某些动作发生时触发事件。有关详细信息,请参见上面的数据流部分。

  2. 调度器(SCHEDULER)
    用来接受引擎发过来的请求, 压入队列中, 并在引擎再次请求的时候返回. 可以想像成一个URL的优先级队列, 由它来决定下一个要抓取的网址是什么, 同时去除重复的网址
  3. 下载器(DOWLOADER)
    用于下载网页内容, 并将网页内容返回给EGINE,下载器是建立在twisted这个高效的异步模型上的
  4. 爬虫(SPIDERS)
    SPIDERS是开发人员自定义的类,用来解析responses,并且提取items,或者发送新的请求
  5. 项目管道(ITEM PIPLINES)
    在items被提取后负责处理它们,主要包括清理、验证、持久化(比如存到数据库)等操作
  6. 下载器中间件(Downloader Middlewares)
    位于Scrapy引擎和下载器之间,主要用来处理从EGINE传到DOWLOADER的请求request,已经从DOWNLOADER传到EGINE的响应response,你可用该中间件做以下几件事
    1. process a request just before it is sent to the Downloader (i.e. right before Scrapy sends the request to the website);
    2. change received response before passing it to a spider;
    3. send a new Request instead of passing received response to a spider;
    4. pass response to a spider without fetching a web page;
    5. silently drop some requests.
  7. 爬虫中间件(Spider Middlewares)
    位于EGINE和SPIDERS之间,主要工作是处理SPIDERS的输入(即responses)和输出(即requests)

官网链接:https://docs.scrapy.org/en/latest/topics/architecture.html

二 安装


#Windows平台    1、pip3 install wheel #安装后,便支持通过wheel文件安装软件,wheel文件官网:https://www.lfd.uci.edu/~gohlke/pythonlibs    3、pip3 install lxml    4、pip3 install pyopenssl    5、下载并安装pywin32:https://sourceforge.net/projects/pywin32/files/pywin32/    6、下载twisted的wheel文件:http://www.lfd.uci.edu/~gohlke/pythonlibs/#twisted    7、执行pip3 install 下载目录\Twisted-17.9.0-cp36-cp36m-win_amd64.whl    8、pip3 install scrapy  #Linux平台    1、pip3 install scrapy

三 命令行工具


#1 查看帮助    scrapy -h    scrapy <command> -h#2 有两种命令:其中Project-only必须切到项目文件夹下才能执行,而Global的命令则不需要    Global commands:        startproject #创建项目        genspider    #创建爬虫程序        settings     #如果是在项目目录下,则得到的是该项目的配置        runspider    #运行一个独立的python文件,不必创建项目        shell        #scrapy shell url地址  在交互式调试,如选择器规则正确与否        fetch        #独立于程单纯地爬取一个页面,可以拿到请求头        view         #下载完毕后直接弹出浏览器,以此可以分辨出哪些数据是ajax请求        version      #scrapy version 查看scrapy的版本,scrapy version -v查看scrapy依赖库的版本    Project-only commands:        crawl        #运行爬虫,必须创建项目才行,确保配置文件中ROBOTSTXT_OBEY = False        check        #检测项目中有无语法错误        list         #列出项目中所包含的爬虫名        edit         #编辑器,一般不用        parse        #scrapy parse url地址 --callback 回调函数  #以此可以验证我们的回调函数是否正确        bench        #scrapy bentch压力测试#3 官网链接    https://docs.scrapy.org/en/latest/topics/commands.html

#1、执行全局命令:请确保不在某个项目的目录下,排除受该项目配置的影响scrapy startproject MyProjectcd MyProjectscrapy genspider baidu www.baidu.comscrapy settings --get XXX #如果切换到项目目录下,看到的则是该项目的配置scrapy runspider baidu.pyscrapy shell https://www.baidu.com    response    response.status    response.body    view(response)    scrapy view https://www.taobao.com #如果页面显示内容不全,不全的内容则是ajax请求实现的,以此快速定位问题scrapy fetch --nolog --headers https://www.taobao.comscrapy version #scrapy的版本scrapy version -v #依赖库的版本#2、执行项目命令:切到项目目录下scrapy crawl baiduscrapy checkscrapy listscrapy parse http://quotes.toscrape.com/ --callback parsescrapy bench    

四 项目结构以及爬虫应用简介 


project_name/   scrapy.cfg   project_name/       __init__.py       items.py       pipelines.py       settings.py       spiders/           __init__.py           爬虫1.py           爬虫2.py           爬虫3.py

 

文件说明:

  • scrapy.cfg  项目的主配置信息,用来部署scrapy时使用,爬虫相关的配置信息在settings.py文件中。
  • items.py    设置数据存储模板,用于结构化数据,如:Django的Model
  • pipelines    数据处理行为,如:一般结构化的数据持久化
  • settings.py 配置文件,如:递归的层数、并发数,延迟下载等。强调:配置文件的选项必须大写否则视为无效,正确写法USER_AGENT='xxxx'
  • spiders      爬虫目录,如:创建文件,编写爬虫规则

注意:一般创建爬虫文件时,以网站域名命名


import scrapy class XiaoHuarSpider(scrapy.spiders.Spider):    name = "xiaohuar"                            # 爬虫名称 *****    allowed_domains = ["xiaohuar.com"]  # 允许的域名    start_urls = [        "http://www.xiaohuar.com/hua/",   # 其实URL    ]     def parse(self, response):        # 访问起始URL并获取结果后的回调函数

import sys,ossys.stdout=io.TextIOWrapper(sys.stdout.buffer,encoding='gb18030')

五 Spiders


#在项目目录下新建:entrypoint.pyfrom scrapy.cmdline import executeexecute(['scrapy', 'crawl', 'xiaohua'])

强调:配置文件的选项必须是大写,如X='1'



# -*- coding: utf-8 -*-import scrapyfrom scrapy.linkextractors import LinkExtractorfrom scrapy.spiders import CrawlSpider, Ruleclass BaiduSpider(CrawlSpider):    name = 'xiaohua'    allowed_domains = ['www.xiaohuar.com']    start_urls = ['http://www.xiaohuar.com/v/']    # download_delay = 1    rules = (        Rule(LinkExtractor(allow=r'p\-\d\-\d+\.html$'), callback='parse_item',follow=True,),    )    def parse_item(self, response):        if url:            print('======下载视频==============================', url)            yield scrapy.Request(url,callback=self.save)    def save(self,response):        print('======保存视频==============================',response.url,len(response.body))        import time        import hashlib        m=hashlib.md5()        m.update(str(time.time()).encode('utf-8'))        m.update(response.url.encode('utf-8'))        filename=r'E:\\mv\\%s.mp4' %m.hexdigest()        with open(filename,'wb') as f:            f.write(response.body)

https://docs.scrapy.org/en/latest/topics/spiders.html

六 Selectors


#1 //与/#2 text#3、extract与extract_first:从selector对象中解出内容#4、属性:xpath的属性加前缀@#4、嵌套查找#5、设置默认值#4、按照属性查找#5、按照属性模糊查找#6、正则表达式#7、xpath相对路径#8、带变量的xpath

response.selector.css()response.selector.xpath()可简写为response.css()response.xpath()#1 //与/response.xpath('//body/a/')#response.css('div a::text')>>> response.xpath('//body/a') #开头的//代表从整篇文档中寻找,body之后的/代表body的儿子[]>>> response.xpath('//body//a') #开头的//代表从整篇文档中寻找,body之后的//代表body的子子孙孙[<Selector xpath='//body//a' data='<a href="image1.html">Name: My image 1 <'>, <Selector xpath='//body//a' data='<a href="image2.html">Name: My image 2 <'>, <Selector xpath='//body//a' data='<a href="image3.html">Name: My image 3 <'>, <Selector xpath='//body//a' data='<a href="image4.html">Name: My image 4 <'>, <Selector xpath='//body//a' data='<a href="image5.html">Name: My image 5 <'>]#2 text>>> response.xpath('//body//a/text()')>>> response.css('body a::text')#3、extract与extract_first:从selector对象中解出内容>>> response.xpath('//div/a/text()').extract()['Name: My image 1 ', 'Name: My image 2 ', 'Name: My image 3 ', 'Name: My image 4 ', 'Name: My image 5 ']>>> response.css('div a::text').extract()['Name: My image 1 ', 'Name: My image 2 ', 'Name: My image 3 ', 'Name: My image 4 ', 'Name: My image 5 ']>>> response.xpath('//div/a/text()').extract_first()'Name: My image 1 '>>> response.css('div a::text').extract_first()'Name: My image 1 '#4、属性:xpath的属性加前缀@>>> response.xpath('//div/a/@href').extract_first()'image1.html'>>> response.css('div a::attr(href)').extract_first()'image1.html'#4、嵌套查找>>> response.xpath('//div').css('a').xpath('@href').extract_first()'image1.html'#5、设置默认值>>> response.xpath('//div[@id="xxx"]').extract_first(default="not found")'not found'#4、按照属性查找response.xpath('//div[@id="images"]/a[@href="image3.html"]/text()').extract()response.css('#images a[@href="image3.html"]/text()').extract()#5、按照属性模糊查找response.xpath('//a[contains(@href,"image")]/@href').extract()response.css('a[href*="image"]::attr(href)').extract()response.xpath('//a[contains(@href,"image")]/img/@src').extract()response.css('a[href*="imag"] img::attr(src)').extract()response.xpath('//*[@href="image1.html"]')response.css('*[href="image1.html"]')#6、正则表达式response.xpath('//a/text()').re(r'Name: (.*)')response.xpath('//a/text()').re_first(r'Name: (.*)')#7、xpath相对路径>>> res=response.xpath('//a[contains(@href,"3")]')[0]>>> res.xpath('img')[<Selector xpath='img' data='<img src="image3_thumb.jpg">'>]>>> res.xpath('./img')[<Selector xpath='./img' data='<img src="image3_thumb.jpg">'>]>>> res.xpath('.//img')[<Selector xpath='.//img' data='<img src="image3_thumb.jpg">'>]>>> res.xpath('//img') #这就是从头开始扫描[<Selector xpath='//img' data='<img src="image1_thumb.jpg">'>, <Selector xpath='//img' data='<img src="image2_thumb.jpg">'>, <Selector xpath='//img' data='<img src="image3_thumb.jpg">'>, <Selector xpath='//img' data='<img src="image4_thumb.jpg">'>, <Selector xpath='//img' data='<img src="image5_thumb.jpg">'>]#8、带变量的xpath>>> response.xpath('//div[@id=$xxx]/a/text()',xxx='images').extract_first()'Name: My image 1 '>>> response.xpath('//div[count(a)=$yyy]/@id',yyy=5).extract_first() #求有5个a标签的div的id'images'


爬取亚马逊商品信息


1、scrapy startproject Amazoncd Amazonscrapy genspider spider_goods www.amazon.cn2、settings.pyROBOTSTXT_OBEY = False#请求头DEFAULT_REQUEST_HEADERS = {    'Referer':'https://www.amazon.cn/',    'User-Agent':'Mozilla/5.0 (Windows NT 6.1; WOW64) AppleWebKit/537.36 (KHTML, like Gecko) Chrome/62.0.3202.75 Safari/537.36'}#打开注释HTTPCACHE_ENABLED = TrueHTTPCACHE_EXPIRATION_SECS = 0HTTPCACHE_DIR = 'httpcache'HTTPCACHE_IGNORE_HTTP_CODES = []HTTPCACHE_STORAGE = 'scrapy.extensions.httpcache.FilesystemCacheStorage'3、items.pyclass GoodsItem(scrapy.Item):    # define the fields for your item here like:    # name = scrapy.Field()    #商品名字    goods_name = scrapy.Field()    #价钱    goods_price = scrapy.Field()    #配送方式    delivery_method=scrapy.Field()4、spider_goods.py# -*- coding: utf-8 -*-import scrapyfrom Amazon.items import  GoodsItemfrom scrapy.http import Requestfrom urllib.parse import urlencodeclass SpiderGoodsSpider(scrapy.Spider):    name = 'spider_goods'    allowed_domains = ['www.amazon.cn']    # start_urls = ['http://www.amazon.cn/']    def __int__(self,keyword=None,*args,**kwargs):        super(SpiderGoodsSpider).__init__(*args,**kwargs)        self.keyword=keyword    def start_requests(self):        url='https://www.amazon.cn/s/ref=nb_sb_noss_1?'        paramas={            '__mk_zh_CN': '亚马逊网站',            'url': 'search - alias = aps',            'field-keywords': self.keyword        }        url=url+urlencode(paramas,encoding='utf-8')        yield Request(url,callback=self.parse_index)    def parse_index(self, response):        print('解析索引页:%s' %response.url)        urls=response.xpath('//*[contains(@id,"result_")]/div/div[3]/div[1]/a/@href').extract()        for url in urls:            yield Request(url,callback=self.parse_detail)        next_url=response.urljoin(response.xpath('//*[@id="pagnNextLink"]/@href').extract_first())        print('下一页的url',next_url)        yield Request(next_url,callback=self.parse_index)    def parse_detail(self,response):        print('解析详情页:%s' %(response.url))        item=GoodsItem()        # 商品名字        item['goods_name'] = response.xpath('//*[@id="productTitle"]/text()').extract_first().strip()        # 价钱        item['goods_price'] = response.xpath('//*[@id="priceblock_ourprice"]/text()').extract_first().strip()        # 配送方式        item['delivery_method'] = ''.join(response.xpath('//*[@id="ddmMerchantMessage"]//text()').extract())        return item5、自定义pipelines#sql.pyimport pymysqlimport settingsMYSQL_HOST=settings.MYSQL_HOSTMYSQL_PORT=settings.MYSQL_PORTMYSQL_USER=settings.MYSQL_USERMYSQL_PWD=settings.MYSQL_PWDMYSQL_DB=settings.MYSQL_DBconn=pymysql.connect(    host=MYSQL_HOST,    port=int(MYSQL_PORT),    user=MYSQL_USER,    password=MYSQL_PWD,    db=MYSQL_DB,    charset='utf8')cursor=conn.cursor()class Mysql(object):    @staticmethod    def insert_tables_goods(goods_name,goods_price,deliver_mode):        sql='insert into goods(goods_name,goods_price,delivery_method) values(%s,%s,%s)'        cursor.execute(sql,args=(goods_name,goods_price,deliver_mode))        conn.commit()    @staticmethod    def is_repeat(goods_name):        sql='select count(1) from goods where goods_name=%s'        cursor.execute(sql,args=(goods_name,))        if cursor.fetchone()[0] >= 1:            return Trueif __name__ == '__main__':    cursor.execute('select * from goods;')    print(cursor.fetchall())#pipelines.pyfrom Amazon.mysqlpipelines.sql import Mysqlclass AmazonPipeline(object):    def process_item(self, item, spider):        goods_name=item['goods_name']        goods_price=item['goods_price']        delivery_mode=item['delivery_method']        if not Mysql.is_repeat(goods_name):            Mysql.insert_table_goods(goods_name,goods_price,delivery_mode)6、创建数据库表create database amazon charset utf8;create table goods(    id int primary key auto_increment,    goods_name char(30),    goods_price char(20),    delivery_method varchar(50));7、settings.pyMYSQL_HOST='localhost'MYSQL_PORT='3306'MYSQL_USER='root'MYSQL_PWD='123'MYSQL_DB='amazon'#数字代表优先级程度(1-1000随意设置,数值越低,组件的优先级越高)ITEM_PIPELINES = {   'Amazon.mysqlpipelines.pipelines.mazonPipeline': 1,}#8、在项目目录下新建:entrypoint.pyfrom scrapy.cmdline import executeexecute(['scrapy', 'crawl', 'spider_goods','-a','keyword=iphone8'])















































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