• Scrapy


      Scrapy是一个为了爬取网站数据,提取结构性数据而编写的应用框架。 其可以应用在数据挖掘,信息处理或存储历史数据等一系列的程序中。
    其最初是为了页面抓取 (更确切来说, 网络抓取 )所设计的, 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用途广泛,可以用于数据挖掘、监测和自动化测试。

    Scrapy 使用了 Twisted异步网络库来处理网络通讯。整体架构大致如下

     

     

     

    Scrapy主要包括了以下组件:

    • 引擎(Scrapy)
      用来处理整个系统的数据流处理, 触发事务(框架核心)
    • 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(抓取网页的网址或者说是链接)的优先队列, 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
    • 下载器(Downloader)
      用于下载网页内容, 并将网页内容返回给蜘蛛(Scrapy下载器是建立在twisted这个高效的异步模型上的)
    • 爬虫(Spiders)
      爬虫是主要干活的, 用于从特定的网页中提取自己需要的信息, 即所谓的实体(Item)。用户也可以从中提取出链接,让Scrapy继续抓取下一个页面
    • 项目管道(Pipeline)
      负责处理爬虫从网页中抽取的实体,主要的功能是持久化实体、验证实体的有效性、清除不需要的信息。当页面被爬虫解析后,将被发送到项目管道,并经过几个特定的次序处理数据。
    • 下载器中间件(Downloader Middlewares)
      位于Scrapy引擎和下载器之间的框架,主要是处理Scrapy引擎与下载器之间的请求及响应。
    • 爬虫中间件(Spider Middlewares)
      介于Scrapy引擎和爬虫之间的框架,主要工作是处理蜘蛛的响应输入和请求输出。
    • 调度中间件(Scheduler Middewares)
      介于Scrapy引擎和调度之间的中间件,从Scrapy引擎发送到调度的请求和响应。

    Scrapy运行流程大概如下:

      1. 引擎从调度器中取出一个链接(URL)用于接下来的抓取
      2. 引擎把URL封装成一个请求(Request)传给下载器
      3. 下载器把资源下载下来,并封装成应答包(Response)
      4. 爬虫解析Response
      5. 解析出实体(Item),则交给实体管道进行进一步的处理
      6. 解析出的是链接(URL),则把URL交给调度器等待抓取

    一,安装:

    Linux
          pip3 install scrapy
    ubantu
       1,安装依赖
          sudo apt-get install build-essential python3-dev libssl-dev libffi-dev libxml2 libxml2-dev libxslt1-dev zlib1g-dev
       2,安装
        pip3 install scrapy

    Windows a. pip3 install wheel b. 下载twisted http:
    //www.lfd.uci.edu/~gohlke/pythonlibs/#twisted c. 进入下载目录,执行 pip3 install Twisted‑17.1.0‑cp35‑cp35m‑win_amd64.whl d. pip3 install scrapy e. 下载并安装pywin32:https://sourceforge.net/projects/pywin32/files/

    二,基本使用

    1. 创建project
            scrapy startproject 项目名称
                    
                    项目名称
                       项目名称/
                            - spiders                # 爬虫文件 
                                - chouti.py 
                                - cnblgos.py 
                                ....
                        - items.py                 # 持久化
                            - pipelines                # 持久化
                            - middlewares.py        # 中间件
                            - settings.py             # 配置文件(爬虫)
                       scrapy.cfg                    # 配置文件(部署)
                
    2. 创建爬虫 
                cd 项目名称
                    
                    scrapy genspider chouti chouti.com 
                    scrapy genspider cnblgos cnblgos.com 
                    
                3. 启动爬虫
                    scrapy crawl chouti 
                    scrapy crawl chouti --nolog  #不打印日志 

    简单说明:

    • scrapy.cfg  项目的主配置信息。(真正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
    • spiders      爬虫目录,如:创建文件,编写爬虫规则

     

    import scrapy
    from scrapy.selector import HtmlXPathSelector
    from scrapy.http.request import Request
     
     
    class DigSpider(scrapy.Spider):
        # 爬虫应用的名称,通过此名称启动爬虫命令
        name = "dig"
        # 允许的域名
        allowed_domains = ["chouti.com"]
        # 起始URL
        start_urls = [
            'http://dig.chouti.com/',
        ]
    
    
            item_list = response.xpath('//div[@id="content-list"]/div[@class="item"]')
            for item in item_list:
                text = item.xpath('.//a/text()').extract_first()
                href = item.xpath('.//a/@href').extract_first()
                print(text,href)
    初识
    def parse(self,response):
     #响应
    # response封装了响应相关的所有数据:
        - response.text 
        - response.encoding
        - response.body 
        - response.request # 当前响应是由那个请求发起;请求中 封装(要访问的url,下载完成之后执行那个函数)
    View Code

    三,选择器

    from scrapy.selector import Selector, HtmlXPathSelector
    from scrapy.http import HtmlResponse
    html = """<!DOCTYPE html>
    <html>
        <head lang="en">
            <meta charset="UTF-8">
            <title></title>
        </head>
        <body>
            <ul>
                <li class="item-"><a id='i1' href="link.html">first item</a></li>
                <li class="item-0"><a id='i2' href="llink.html">first item</a></li>
                <li class="item-1"><a href="llink2.html">second item<span>vv</span></a></li>
            </ul>
            <div><a href="llink2.html">second item</a></div>
        </body>
    </html>
    """
    response = HtmlResponse(url='http://example.com', body=html,encoding='utf-8')
    # hxs = HtmlXPathSelector(response)
    # print(hxs)
    # hxs = Selector(response=response).xpath('//a')
    # print(hxs)
    # hxs = Selector(response=response).xpath('//a[2]')
    # print(hxs)
    # hxs = Selector(response=response).xpath('//a[@id]')
    # print(hxs)
    # hxs = Selector(response=response).xpath('//a[@id="i1"]')
    # print(hxs)
    # hxs = Selector(response=response).xpath('//a[@href="link.html"][@id="i1"]')
    # print(hxs)
    # hxs = Selector(response=response).xpath('//a[contains(@href, "link")]')
    # print(hxs)
    # hxs = Selector(response=response).xpath('//a[starts-with(@href, "link")]')
    # print(hxs)
    # hxs = Selector(response=response).xpath('//a[re:test(@id, "id+")]')
    # print(hxs)
    # hxs = Selector(response=response).xpath('//a[re:test(@id, "id+")]/text()').extract()
    # print(hxs)
    # hxs = Selector(response=response).xpath('//a[re:test(@id, "id+")]/@href').extract()
    # print(hxs)
    # hxs = Selector(response=response).xpath('/html/body/ul/li/a/@href').extract()
    # print(hxs)
    # hxs = Selector(response=response).xpath('//body/ul/li/a/@href').extract_first()
    # print(hxs)
     
    # ul_list = Selector(response=response).xpath('//body/ul/li')
    # for item in ul_list:
    #     v = item.xpath('./a/span')
    #     # 或
    #     # v = item.xpath('a/span')
    #     # 或
    #     # v = item.xpath('*/a/span')
    #     print(v)
    View Code
    # -*- coding: utf-8 -*-
    import scrapy
    from scrapy.http.response.html import HtmlResponse
    from scrapy.http import Request
    from scrapy.http.cookies import CookieJar
    
    
    class ChoutiSpider(scrapy.Spider):
        name = "chouti"
        allowed_domains = ["chouti.com"]
        start_urls = (
            'http://www.chouti.com/',
        )
    
        def start_requests(self):
            url = 'http://dig.chouti.com/'
            yield Request(url=url, callback=self.login, meta={'cookiejar': True})
    
        def login(self, response):
            print(response.headers.getlist('Set-Cookie'))
            req = Request(
                url='http://dig.chouti.com/login',
                method='POST',
                headers={'Content-Type': 'application/x-www-form-urlencoded; charset=UTF-8'},
                body='phone=8613121758648&password=woshiniba&oneMonth=1',
                callback=self.check_login,
                meta={'cookiejar': True}
            )
            yield req
    
        def check_login(self, response):
            print(response.text)
    处理cookie

    四,格式化处理

      对于想要获取更多的数据处理,则可以利用Scrapy的items将数据格式化,然后统一交由pipelines来处理。

    import scrapy
    from scrapy.selector import HtmlXPathSelector
    from scrapy.http.request import Request
    from scrapy.http.cookies import CookieJar
    from scrapy import FormRequest
    
    
    class XiaoHuarSpider(scrapy.Spider):
        # 爬虫应用的名称,通过此名称启动爬虫命令
        name = "xiaohuar"
        # 允许的域名
        allowed_domains = ["xiaohuar.com"]
    
        start_urls = [
            "http://www.xiaohuar.com/list-1-1.html",
        ]
        # custom_settings = {
        #     'ITEM_PIPELINES':{
        #         'spider1.pipelines.JsonPipeline': 100
        #     }
        # }
        has_request_set = {}
    
        def parse(self, response):
            # 分析页面
            # 找到页面中符合规则的内容(校花图片),保存
            # 找到所有的a标签,再访问其他a标签,一层一层的搞下去
    
            hxs = HtmlXPathSelector(response)
    
            items = hxs.select('//div[@class="item_list infinite_scroll"]/div')
            for item in items:
                src = item.select('.//div[@class="img"]/a/img/@src').extract_first()
                name = item.select('.//div[@class="img"]/span/text()').extract_first()
                school = item.select('.//div[@class="img"]/div[@class="btns"]/a/text()').extract_first()
                url = "http://www.xiaohuar.com%s" % src
                from ..items import XiaoHuarItem
                obj = XiaoHuarItem(name=name, school=school, url=url)
                yield obj
    
            urls = hxs.select('//a[re:test(@href, "http://www.xiaohuar.com/list-1-d+.html")]/@href')
            for url in urls:
                key = self.md5(url)
                if key in self.has_request_set:
                    pass
                else:
                    self.has_request_set[key] = url
                    req = Request(url=url,method='GET',callback=self.parse)
                    yield req
    
        @staticmethod
        def md5(val):
            import hashlib
            ha = hashlib.md5()
            ha.update(bytes(val, encoding='utf-8'))
            key = ha.hexdigest()
            return key
    
    spiders/xiahuar.py
    spiders/xx.py
    import scrapy
    
    
    class XiaoHuarItem(scrapy.Item):
        name = scrapy.Field()
        school = scrapy.Field()
        url = scrapy.Field()
    item
    import json
    import os
    import requests
    
    
    class JsonPipeline(object):
        def __init__(self):
            self.file = open('xiaohua.txt', 'w')
    
        def process_item(self, item, spider):
            v = json.dumps(dict(item), ensure_ascii=False)
            self.file.write(v)
            self.file.write('
    ')
            self.file.flush()
            return item
    
    
    class FilePipeline(object):
        def __init__(self):
            if not os.path.exists('imgs'):
                os.makedirs('imgs')
    
        def process_item(self, item, spider):
            response = requests.get(item['url'], stream=True)
            file_name = '%s_%s.jpg' % (item['name'], item['school'])
            with open(os.path.join('imgs', file_name), mode='wb') as f:
                f.write(response.content)
            return item
    
    pipelines
    pipeline
    ITEM_PIPELINES = {
       'spider1.pipelines.JsonPipeline': 100,
       'spider1.pipelines.FilePipeline': 300,
    }
    # 每行后面的整型值,确定了他们运行的顺序,item按数字从低到高的顺序,通过pipeline,通常将这些数字定义在0-1000范围内。
    settings

    pipeline还可以做得更多,如,操作文件时:

    from scrapy.exceptions import DropItem
    
    class ChtPipeline(object):
        def __init__(self,path):
            self.f=None
            self.path=path
    
        @classmethod
        def from_crawler(cls,crawler):
            path=crawler.settings.get("HPEF_FILE_PATH")
            return cls(path)
    
        # 在爬虫开始时打开文件
        def open_spider(self,spider):
            self.f=open(self.path,"a+")
    
    
        def process_item(self, item, spider):
            self.f.write(item['href']+'
    ')
           
          # return表示会被后续的pipeline继续处理
           return item
    
            # 表示将item丢弃,不会被后续pipeline处理
            # raise DropItem()
    
         # 爬虫结束时关闭掉文件
        def colse_spider(self,spider):
            self.f.close()        
    View Code

    五,中间件

    class SpiderMiddleware(object):
    
        def process_spider_input(self,response, spider):
            """
            下载完成,执行,然后交给parse处理
            :param response: 
            :param spider: 
            :return: 
            """
            pass
    
        def process_spider_output(self,response, result, spider):
            """
            spider处理完成,返回时调用
            :param response:
            :param result:
            :param spider:
            :return: 必须返回包含 Request 或 Item 对象的可迭代对象(iterable)
            """
            return result
    
        def process_spider_exception(self,response, exception, spider):
            """
            异常调用
            :param response:
            :param exception:
            :param spider:
            :return: None,继续交给后续中间件处理异常;含 Response 或 Item 的可迭代对象(iterable),交给调度器或pipeline
            """
            return None
    
    
        def process_start_requests(self,start_requests, spider):
            """
            爬虫启动时调用,只在爬虫启动时,执行一次
            :param start_requests:
            :param spider:
            :return: 包含 Request 对象的可迭代对象
            """
            return start_requests
    爬虫中间件
    class DownMiddleware1(object):
        def process_request(self, request, spider):
            """
            请求需要被下载时,经过所有下载器中间件的process_request调用
            :param request: 
            :param spider: 
            :return:  
                None,继续后续中间件去下载;
                Response对象,停止process_request的执行,开始执行process_response
                Request对象,停止中间件的执行,将Request重新调度器
                raise IgnoreRequest异常,停止process_request的执行,开始执行,
                对请求进行加工(*):
              # request.headers['user-agent'] = "Mozilla/5.0 (Windows NT 6.1; Win64; x64) AppleWebKit/537.36 (KHTML, like Gecko) Chrome/63.0.3239.132 Safari/537.36"
    
    
        
    
    process_exception
            """
            pass
    
    
    
        def process_response(self, request, response, spider):
            """
            spider处理完成,返回时调用
            :param response:
            :param result:
            :param spider:
            :return: 
                Response 对象:转交给其他中间件process_response
                Request 对象:停止中间件,request会被重新调度下载
                raise IgnoreRequest 异常:调用Request.errback
            """
            print('response1')
            return response
    
        def process_exception(self, request, exception, spider):
            """
            当下载处理器(download handler)或 process_request() (下载中间件)抛出异常
            :param response:
            :param exception:
            :param spider:
            :return: 
                None:继续交给后续中间件处理异常;
                Response对象:停止后续process_exception方法
                Request对象:停止中间件,request将会被重新调用下载
            """
            return None        
    下载中间件

    六,自定制命令

      一直开启着终端,在终端启动爬虫是否觉得太麻烦?如果是就是可以使用自定制命令,我们直接运行启动文件就可以启动爬虫了。

    # 在项目文件夹下,创建一个py文件
    
    from scrapy.cmdline import execute
    
    if __name__ == '__main__':
        execute(["scrapy","crawl","chouti""--onlog"])
    启动单个爬虫
    • 在spiders同级创建任意目录,如:commands
    • 在其中创建 crawlall.py 文件 (此处文件名就是自定义的命令)
    from scrapy.commands import ScrapyCommand
    from scrapy.utils.project import get_project_settings
    
    class Command(ScrapyCommand):
        requires_project = True
    
        def syntax(self):
            return '[options]'
    
        def short_desc(self):
            return 'Runs all of spoders'
    
    
        def run(self, args, opts):
            spider_list=self.crawler_process.spiders.list()
            for name in spider_list:
                self.crawler_process.crawl(name,**opts.__dict__)
            self.crawler_process.start()
    启动所有爬虫
    from scrapy.cmdline import execute
    
    if __name__ == '__main__':
        execute(["scrapy","crawlall","--nolog"])
    启动文件

     

    # pycharm 默认是不能调试scrapy,就是看不到任何结果,只有在命令行才能看到结果。
    # 创建一个和项目文件夹同级的entrypoint.py文件。
    
    from scrapy import execute
    
    execute(["scrapy","crawl","project_folder"])
    
    # 前面两个都是固定的,后面就是项目文件夹
    调试文件(entrypoint.py)

     

     

     

    在settings.py 中添加配置 COMMANDS_MODULE = '项目名称.目录名称'

    七,去重规则

    1,使用scrapy默认的scrapy.dupefilter.RFPDupeFilter进行去重。

    DUPEFILTER_CLASS = 'scrapy.dupefilter.RFPDupeFilter'
    DUPEFILTER_DEBUG = False
    JOBDIR = "保存范文记录的日志路径,如:/root/"  # 最终路径为 /root/requests.seen
    class RepeatUrl:
        def __init__(self):
            self.visited_url = set()
    
        @classmethod
        def from_settings(cls, settings):
            """
            初始化时,调用
            :param settings: 
            :return: 
            """
            return cls()
    
        def request_seen(self, request):
            """
            检测当前请求是否已经被访问过
            :param request: 
            :return: True表示已经访问过;False表示未访问过
            """
            if request.url in self.visited_url:
                return True
            self.visited_url.add(request.url)
            return False
    
        def open(self):
            """
            开始爬去请求时,调用
            :return: 
            """
            print('open replication')
    
        def close(self, reason):
            """
            结束爬虫爬取时,调用
            :param reason: 
            :return: 
            """
            print('close replication')
    
        def log(self, request, spider):
            """
            记录日志
            :param request: 
            :param spider: 
            :return: 
            """
            print('repeat', request.url)
    自定义去重

    八,定义扩展

    点击查看

    九,scrapy-redis(分布式爬虫组件)

    - 基于redis的集合 
    
                    - 完全自定义 
    from scrapy.dupefilter import BaseDupeFilter
    import redis
    from scrapy.utils.request import request_fingerprint
    
    class DupFilter(BaseDupeFilter):
            def __init__(self):
            self.conn=redis.Redis(host='140.143.227.206',port=8888,password='beta')
    
            def request_seen(self, request):
                                """
                                检测当前请求是否已经被访问过
                                :param request: 
                                :return: True表示已经访问过;False表示未访问过
                                """
                                fid = request_fingerprint(request)
                                result = self.conn.sadd('visited_urls', fid)
                                if result == 1:
                                    return False
                                return True
                
                    - 使用scrapy-redis 
                    
                    - 继承scrapy-redis 实现自定制 
                        
                        from scrapy_redis.dupefilter import RFPDupeFilter
                        from scrapy_redis.connection import get_redis_from_settings
                        from scrapy_redis import defaults
    
                        class RedisDupeFilter(RFPDupeFilter):
                            @classmethod
                            def from_settings(cls, settings):
                                """Returns an instance from given settings.
    
                                This uses by default the key ``dupefilter:<timestamp>``. When using the
                                ``scrapy_redis.scheduler.Scheduler`` class, this method is not used as
                                it needs to pass the spider name in the key.
    
                                Parameters
                                ----------
                                settings : scrapy.settings.Settings
    
                                Returns
                                -------
                                RFPDupeFilter
                                    A RFPDupeFilter instance.
    
    
                                """
                                server = get_redis_from_settings(settings)
                                # XXX: This creates one-time key. needed to support to use this
                                # class as standalone dupefilter with scrapy's default scheduler
                                # if scrapy passes spider on open() method this wouldn't be needed
                                # TODO: Use SCRAPY_JOB env as default and fallback to timestamp.
                                key = defaults.DUPEFILTER_KEY % {'timestamp': 'xiaodongbei'}
                                debug = settings.getbool('DUPEFILTER_DEBUG')
                                return cls(server, key=key, debug=debug)
        
                - 配置:
                    
                    # ############### scrapy redis连接 ####################
    
                    REDIS_HOST = '140.143.227.206'                            # 主机名
                    REDIS_PORT = 8888                                   # 端口
                    REDIS_PARAMS  = {'password':'beta'}                                  # Redis连接参数             默认:REDIS_PARAMS = {'socket_timeout': 30,'socket_connect_timeout': 30,'retry_on_timeout': True,'encoding': REDIS_ENCODING,})
                    REDIS_ENCODING = "utf-8"                            # redis编码类型             默认:'utf-8'
                    # REDIS_URL = 'redis://user:pass@hostname:9001'       # 连接URL(优先于以上配置)
                    
                    # ############### scrapy redis去重 ####################
                    
                    
                    DUPEFILTER_KEY = 'dupefilter:%(timestamp)s'
                    
                    # DUPEFILTER_CLASS = 'scrapy_redis.dupefilter.RFPDupeFilter'
                    DUPEFILTER_CLASS = 'dbd.xxx.RedisDupeFilter'    
    View Code

    十,其他

    # -*- coding: utf-8 -*-
    
    # Scrapy settings for step8_king project
    #
    # For simplicity, this file contains only settings considered important or
    # commonly used. You can find more settings consulting the documentation:
    #
    #     http://doc.scrapy.org/en/latest/topics/settings.html
    #     http://scrapy.readthedocs.org/en/latest/topics/downloader-middleware.html
    #     http://scrapy.readthedocs.org/en/latest/topics/spider-middleware.html
    
    # 1. 爬虫名称
    BOT_NAME = 'step8_king'
    
    # 2. 爬虫应用路径
    SPIDER_MODULES = ['step8_king.spiders']
    NEWSPIDER_MODULE = 'step8_king.spiders'
    
    # Crawl responsibly by identifying yourself (and your website) on the user-agent
    # 3. 客户端 user-agent请求头
    # USER_AGENT = 'step8_king (+http://www.yourdomain.com)'
    
    # Obey robots.txt rules
    # 4. 禁止爬虫配置
    # ROBOTSTXT_OBEY = False
    
    # Configure maximum concurrent requests performed by Scrapy (default: 16)
    # 5. 并发请求数
    # CONCURRENT_REQUESTS = 4
    
    # Configure a delay for requests for the same website (default: 0)
    # See http://scrapy.readthedocs.org/en/latest/topics/settings.html#download-delay
    # See also autothrottle settings and docs
    # 6. 延迟下载秒数
    # DOWNLOAD_DELAY = 2
    
    
    # The download delay setting will honor only one of:
    # 7. 单域名访问并发数,并且延迟下次秒数也应用在每个域名
    # CONCURRENT_REQUESTS_PER_DOMAIN = 2
    # 单IP访问并发数,如果有值则忽略:CONCURRENT_REQUESTS_PER_DOMAIN,并且延迟下次秒数也应用在每个IP
    # CONCURRENT_REQUESTS_PER_IP = 3
    
    # Disable cookies (enabled by default)
    # 8. 是否支持cookie,cookiejar进行操作cookie
    # COOKIES_ENABLED = True
    # COOKIES_DEBUG = True
    
    # Disable Telnet Console (enabled by default)
    # 9. Telnet用于查看当前爬虫的信息,操作爬虫等...
    #    使用telnet ip port ,然后通过命令操作
    # TELNETCONSOLE_ENABLED = True
    # TELNETCONSOLE_HOST = '127.0.0.1'
    # TELNETCONSOLE_PORT = [6023,]
    
    
    # 10. 默认请求头
    # Override the default request headers:
    # DEFAULT_REQUEST_HEADERS = {
    #     'Accept': 'text/html,application/xhtml+xml,application/xml;q=0.9,*/*;q=0.8',
    #     'Accept-Language': 'en',
    # }
    
    
    # Configure item pipelines
    # See http://scrapy.readthedocs.org/en/latest/topics/item-pipeline.html
    # 11. 定义pipeline处理请求
    # ITEM_PIPELINES = {
    #    'step8_king.pipelines.JsonPipeline': 700,
    #    'step8_king.pipelines.FilePipeline': 500,
    # }
    
    
    
    # 12. 自定义扩展,基于信号进行调用
    # Enable or disable extensions
    # See http://scrapy.readthedocs.org/en/latest/topics/extensions.html
    # EXTENSIONS = {
    #     # 'step8_king.extensions.MyExtension': 500,
    # }
    
    
    # 13. 爬虫允许的最大深度,可以通过meta查看当前深度;0表示无深度
    # DEPTH_LIMIT = 3
    
    # 14. 爬取时,0表示深度优先Lifo(默认);1表示广度优先FiFo
    
    # 后进先出,深度优先
    # DEPTH_PRIORITY = 0
    # SCHEDULER_DISK_QUEUE = 'scrapy.squeue.PickleLifoDiskQueue'
    # SCHEDULER_MEMORY_QUEUE = 'scrapy.squeue.LifoMemoryQueue'
    # 先进先出,广度优先
    
    # DEPTH_PRIORITY = 1
    # SCHEDULER_DISK_QUEUE = 'scrapy.squeue.PickleFifoDiskQueue'
    # SCHEDULER_MEMORY_QUEUE = 'scrapy.squeue.FifoMemoryQueue'
    
    # 15. 调度器队列
    # SCHEDULER = 'scrapy.core.scheduler.Scheduler'
    # from scrapy.core.scheduler import Scheduler
    
    
    # 16. 访问URL去重
    # DUPEFILTER_CLASS = 'step8_king.duplication.RepeatUrl'
    
    
    # Enable and configure the AutoThrottle extension (disabled by default)
    # See http://doc.scrapy.org/en/latest/topics/autothrottle.html
    
    """
    17. 自动限速算法
        from scrapy.contrib.throttle import AutoThrottle
        自动限速设置
        1. 获取最小延迟 DOWNLOAD_DELAY
        2. 获取最大延迟 AUTOTHROTTLE_MAX_DELAY
        3. 设置初始下载延迟 AUTOTHROTTLE_START_DELAY
        4. 当请求下载完成后,获取其"连接"时间 latency,即:请求连接到接受到响应头之间的时间
        5. 用于计算的... AUTOTHROTTLE_TARGET_CONCURRENCY
        target_delay = latency / self.target_concurrency
        new_delay = (slot.delay + target_delay) / 2.0 # 表示上一次的延迟时间
        new_delay = max(target_delay, new_delay)
        new_delay = min(max(self.mindelay, new_delay), self.maxdelay)
        slot.delay = new_delay
    """
    
    # 开始自动限速
    # AUTOTHROTTLE_ENABLED = True
    # The initial download delay
    # 初始下载延迟
    # AUTOTHROTTLE_START_DELAY = 5
    # The maximum download delay to be set in case of high latencies
    # 最大下载延迟
    # AUTOTHROTTLE_MAX_DELAY = 10
    # The average number of requests Scrapy should be sending in parallel to each remote server
    # 平均每秒并发数
    # AUTOTHROTTLE_TARGET_CONCURRENCY = 1.0
    
    # Enable showing throttling stats for every response received:
    # 是否显示
    # AUTOTHROTTLE_DEBUG = True
    
    # Enable and configure HTTP caching (disabled by default)
    # See http://scrapy.readthedocs.org/en/latest/topics/downloader-middleware.html#httpcache-middleware-settings
    
    
    """
    18. 启用缓存
        目的用于将已经发送的请求或相应缓存下来,以便以后使用
        
        from scrapy.downloadermiddlewares.httpcache import HttpCacheMiddleware
        from scrapy.extensions.httpcache import DummyPolicy
        from scrapy.extensions.httpcache import FilesystemCacheStorage
    """
    # 是否启用缓存策略
    # HTTPCACHE_ENABLED = True
    
    # 缓存策略:所有请求均缓存,下次在请求直接访问原来的缓存即可
    # HTTPCACHE_POLICY = "scrapy.extensions.httpcache.DummyPolicy"
    # 缓存策略:根据Http响应头:Cache-Control、Last-Modified 等进行缓存的策略
    # HTTPCACHE_POLICY = "scrapy.extensions.httpcache.RFC2616Policy"
    
    # 缓存超时时间
    # HTTPCACHE_EXPIRATION_SECS = 0
    
    # 缓存保存路径
    # HTTPCACHE_DIR = 'httpcache'
    
    # 缓存忽略的Http状态码
    # HTTPCACHE_IGNORE_HTTP_CODES = []
    
    # 缓存存储的插件
    # HTTPCACHE_STORAGE = 'scrapy.extensions.httpcache.FilesystemCacheStorage'
    
    
    """
    19. 代理,需要在环境变量中设置
        from scrapy.contrib.downloadermiddleware.httpproxy import HttpProxyMiddleware
        
        方式一:使用默认
            os.environ
            {
                http_proxy:http://root:woshiniba@192.168.11.11:9999/
                https_proxy:http://192.168.11.11:9999/
            }
        方式二:使用自定义下载中间件
        
        def to_bytes(text, encoding=None, errors='strict'):
            if isinstance(text, bytes):
                return text
            if not isinstance(text, six.string_types):
                raise TypeError('to_bytes must receive a unicode, str or bytes '
                                'object, got %s' % type(text).__name__)
            if encoding is None:
                encoding = 'utf-8'
            return text.encode(encoding, errors)
            
        class ProxyMiddleware(object):
            def process_request(self, request, spider):
                PROXIES = [
                    {'ip_port': '111.11.228.75:80', 'user_pass': ''},
                    {'ip_port': '120.198.243.22:80', 'user_pass': ''},
                    {'ip_port': '111.8.60.9:8123', 'user_pass': ''},
                    {'ip_port': '101.71.27.120:80', 'user_pass': ''},
                    {'ip_port': '122.96.59.104:80', 'user_pass': ''},
                    {'ip_port': '122.224.249.122:8088', 'user_pass': ''},
                ]
                proxy = random.choice(PROXIES)
                if proxy['user_pass'] is not None:
                    request.meta['proxy'] = to_bytes("http://%s" % proxy['ip_port'])
                    encoded_user_pass = base64.encodestring(to_bytes(proxy['user_pass']))
                    request.headers['Proxy-Authorization'] = to_bytes('Basic ' + encoded_user_pass)
                    print "**************ProxyMiddleware have pass************" + proxy['ip_port']
                else:
                    print "**************ProxyMiddleware no pass************" + proxy['ip_port']
                    request.meta['proxy'] = to_bytes("http://%s" % proxy['ip_port'])
        
        DOWNLOADER_MIDDLEWARES = {
           'step8_king.middlewares.ProxyMiddleware': 500,
        }
        
    """
    
    """
    20. Https访问
        Https访问时有两种情况:
        1. 要爬取网站使用的可信任证书(默认支持)
            DOWNLOADER_HTTPCLIENTFACTORY = "scrapy.core.downloader.webclient.ScrapyHTTPClientFactory"
            DOWNLOADER_CLIENTCONTEXTFACTORY = "scrapy.core.downloader.contextfactory.ScrapyClientContextFactory"
            
        2. 要爬取网站使用的自定义证书
            DOWNLOADER_HTTPCLIENTFACTORY = "scrapy.core.downloader.webclient.ScrapyHTTPClientFactory"
            DOWNLOADER_CLIENTCONTEXTFACTORY = "step8_king.https.MySSLFactory"
            
            # https.py
            from scrapy.core.downloader.contextfactory import ScrapyClientContextFactory
            from twisted.internet.ssl import (optionsForClientTLS, CertificateOptions, PrivateCertificate)
            
            class MySSLFactory(ScrapyClientContextFactory):
                def getCertificateOptions(self):
                    from OpenSSL import crypto
                    v1 = crypto.load_privatekey(crypto.FILETYPE_PEM, open('/Users/wupeiqi/client.key.unsecure', mode='r').read())
                    v2 = crypto.load_certificate(crypto.FILETYPE_PEM, open('/Users/wupeiqi/client.pem', mode='r').read())
                    return CertificateOptions(
                        privateKey=v1,  # pKey对象
                        certificate=v2,  # X509对象
                        verify=False,
                        method=getattr(self, 'method', getattr(self, '_ssl_method', None))
                    )
        其他:
            相关类
                scrapy.core.downloader.handlers.http.HttpDownloadHandler
                scrapy.core.downloader.webclient.ScrapyHTTPClientFactory
                scrapy.core.downloader.contextfactory.ScrapyClientContextFactory
            相关配置
                DOWNLOADER_HTTPCLIENTFACTORY
                DOWNLOADER_CLIENTCONTEXTFACTORY
    
    """
    
    
    
    """
    21. 爬虫中间件
        class SpiderMiddleware(object):
    
            def process_spider_input(self,response, spider):
                '''
                下载完成,执行,然后交给parse处理
                :param response: 
                :param spider: 
                :return: 
                '''
                pass
        
            def process_spider_output(self,response, result, spider):
                '''
                spider处理完成,返回时调用
                :param response:
                :param result:
                :param spider:
                :return: 必须返回包含 Request 或 Item 对象的可迭代对象(iterable)
                '''
                return result
        
            def process_spider_exception(self,response, exception, spider):
                '''
                异常调用
                :param response:
                :param exception:
                :param spider:
                :return: None,继续交给后续中间件处理异常;含 Response 或 Item 的可迭代对象(iterable),交给调度器或pipeline
                '''
                return None
        
        
            def process_start_requests(self,start_requests, spider):
                '''
                爬虫启动时调用
                :param start_requests:
                :param spider:
                :return: 包含 Request 对象的可迭代对象
                '''
                return start_requests
        
        内置爬虫中间件:
            'scrapy.contrib.spidermiddleware.httperror.HttpErrorMiddleware': 50,
            'scrapy.contrib.spidermiddleware.offsite.OffsiteMiddleware': 500,
            'scrapy.contrib.spidermiddleware.referer.RefererMiddleware': 700,
            'scrapy.contrib.spidermiddleware.urllength.UrlLengthMiddleware': 800,
            'scrapy.contrib.spidermiddleware.depth.DepthMiddleware': 900,
    
    """
    # from scrapy.contrib.spidermiddleware.referer import RefererMiddleware
    # Enable or disable spider middlewares
    # See http://scrapy.readthedocs.org/en/latest/topics/spider-middleware.html
    SPIDER_MIDDLEWARES = {
       # 'step8_king.middlewares.SpiderMiddleware': 543,
    }
    
    
    """
    22. 下载中间件
        class DownMiddleware1(object):
            def process_request(self, request, spider):
                '''
                请求需要被下载时,经过所有下载器中间件的process_request调用
                :param request:
                :param spider:
                :return:
                    None,继续后续中间件去下载;
                    Response对象,停止process_request的执行,开始执行process_response
                    Request对象,停止中间件的执行,将Request重新调度器
                    raise IgnoreRequest异常,停止process_request的执行,开始执行process_exception
                '''
                pass
        
        
        
            def process_response(self, request, response, spider):
                '''
                spider处理完成,返回时调用
                :param response:
                :param result:
                :param spider:
                :return:
                    Response 对象:转交给其他中间件process_response
                    Request 对象:停止中间件,request会被重新调度下载
                    raise IgnoreRequest 异常:调用Request.errback
                '''
                print('response1')
                return response
        
            def process_exception(self, request, exception, spider):
                '''
                当下载处理器(download handler)或 process_request() (下载中间件)抛出异常
                :param response:
                :param exception:
                :param spider:
                :return:
                    None:继续交给后续中间件处理异常;
                    Response对象:停止后续process_exception方法
                    Request对象:停止中间件,request将会被重新调用下载
                '''
                return None
    
        
        默认下载中间件
        {
            'scrapy.contrib.downloadermiddleware.robotstxt.RobotsTxtMiddleware': 100,
            'scrapy.contrib.downloadermiddleware.httpauth.HttpAuthMiddleware': 300,
            'scrapy.contrib.downloadermiddleware.downloadtimeout.DownloadTimeoutMiddleware': 350,
            'scrapy.contrib.downloadermiddleware.useragent.UserAgentMiddleware': 400,
            'scrapy.contrib.downloadermiddleware.retry.RetryMiddleware': 500,
            'scrapy.contrib.downloadermiddleware.defaultheaders.DefaultHeadersMiddleware': 550,
            'scrapy.contrib.downloadermiddleware.redirect.MetaRefreshMiddleware': 580,
            'scrapy.contrib.downloadermiddleware.httpcompression.HttpCompressionMiddleware': 590,
            'scrapy.contrib.downloadermiddleware.redirect.RedirectMiddleware': 600,
            'scrapy.contrib.downloadermiddleware.cookies.CookiesMiddleware': 700,
            'scrapy.contrib.downloadermiddleware.httpproxy.HttpProxyMiddleware': 750,
            'scrapy.contrib.downloadermiddleware.chunked.ChunkedTransferMiddleware': 830,
            'scrapy.contrib.downloadermiddleware.stats.DownloaderStats': 850,
            'scrapy.contrib.downloadermiddleware.httpcache.HttpCacheMiddleware': 900,
        }
    
    """
    # from scrapy.contrib.downloadermiddleware.httpauth import HttpAuthMiddleware
    # Enable or disable downloader middlewares
    # See http://scrapy.readthedocs.org/en/latest/topics/downloader-middleware.html
    # DOWNLOADER_MIDDLEWARES = {
    #    'step8_king.middlewares.DownMiddleware1': 100,
    #    'step8_king.middlewares.DownMiddleware2': 500,
    # }
    
    settings
    View Code

     scrapy中文文档 1.7

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  • 原文地址:https://www.cnblogs.com/glf1160/p/9256296.html
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