Introduce the scrapy crawler framework
Installation method pip install scrapy can be installed. I use the anaconda command to conda install scrapy.
1 Engine obtains the crawling request (Request) from Spider<br>2Engine will The crawling request is forwarded to Scheduler for scheduling
3 Engine obtains the next request to crawl from Scheduler<br>4 Engine sends the crawling request to Downloader through middleware<br>5 Crawl After the web page, the Downloader forms a response (Response) and sends it to the Engine through the middleware<br>6 The Engine sends the received response to the Spider through the middleware for processing. The Engine forwards the crawling request to the Scheduler for scheduling
7 After Spider processes the response, it generates scraped Item<br> and new crawling requests (Requests) to Engine<br>8 Engine sends the scraped item to Item Pipeline (framework exit)<br>9 Engine will The crawling request is sent to the Scheduler
Engine controls the data flow of each module and continuously obtains crawling requests from the Scheduler<br> until the request is empty<br>Frame entry: Spider's initial crawling request<br>Frame export: Item Pipeline
Engine Downloader<br>Download web pages according to requests<br>No user modification required<br>
SchedulerScheduling and management of all crawling requests<br>No user modification required<br>
Downloader MiddlewarePurpose: Implement user-configurable control between Engine, Scheduler and Downloader<br><br>Function: modify, discard, add request or response
User can write Configuration codeSpider<br><br>(1) Parse the response returned by Downloader<br>(2) Generate scraped item<br>(3) Generate Additional crawling requests (Request)
Require users to write configuration codeItem Pipelines<br><br>(1) Process the crawled items generated by Spider in a pipeline manner<br>( 2) It consists of a set of operation sequences, similar to a pipeline. Each operation <br> is an Item Pipeline type
(3) Possible operations include: cleaning, checking and duplication checking of theHTML data in the crawled items , Storing data into the databaseRequires users to write configuration code<br>After understanding the basic concepts, let’s start writing the first scrapy crawler. <br><br>First, create a new crawler project scrapy startproject xxx (project name) <br><br><br>
This crawler will simply crawl the title and author of a novel website. .
We have created the reptile project book now to edit his configuration
This is the introduction of the configuration file. Before modifying these
修 We now create a start.py in the first -level Book directory to use it for the Scrapy reptile to run in the IDE
## noodles. Write the following code in the file. The first two parameters are fixed, and the third parameter is the name of your spider
Next we fill in the fields in items:
By clicking on the different types of novels on the website, you will find that the website address is +Novel Type Pinyin.html
Through this we write and read the content of the web page
<span style="color: #000000">ITEM_PIPELINES = { 'book.pipelines.xxx': 300,}<br>xxx为存储方法的类名,想用什么方法存储就改成那个名字就好运行结果没什么看头就略了<br>第一个爬虫框架就这样啦期末忙没时间继续完善这个爬虫之后有时间将这个爬虫完善成把小说内容等一起爬下来的程序再来分享一波。<br>附一个book的完整代码:<br></span>
import scrapyfrom bs4 import BeautifulSoupfrom book.items import BookItemclass Bookspider(scrapy.Spider): name = 'book' #名字 allowed_domains = ['book.km.com'] #包含了spider允许爬取的域名(domain)列表(list) zurl=''def start_requests(self): D=['jushi','xuanhuan'] #数组里面包含了小说种类这里列举两个有需要可以自己添加for i in D: #通过循环遍历 url=self.zurl+i+'.html'yield scrapy.Request(url, callback=self.parse) def parse(self, response): imf=BeautifulSoup(response.text,'lxml') b=imf.find_all('dl',class_='info')for i in b: bookname=i.a.stringauthor = i.dd.span.stringitem = BookItem() item['name'] = bookname item['author'] = authoryield item
<br>
The above is the detailed content of Introduction to scrapy crawler framework. For more information, please follow other related articles on the PHP Chinese website!

TomergelistsinPython,youcanusethe operator,extendmethod,listcomprehension,oritertools.chain,eachwithspecificadvantages:1)The operatorissimplebutlessefficientforlargelists;2)extendismemory-efficientbutmodifiestheoriginallist;3)listcomprehensionoffersf

In Python 3, two lists can be connected through a variety of methods: 1) Use operator, which is suitable for small lists, but is inefficient for large lists; 2) Use extend method, which is suitable for large lists, with high memory efficiency, but will modify the original list; 3) Use * operator, which is suitable for merging multiple lists, without modifying the original list; 4) Use itertools.chain, which is suitable for large data sets, with high memory efficiency.

Using the join() method is the most efficient way to connect strings from lists in Python. 1) Use the join() method to be efficient and easy to read. 2) The cycle uses operators inefficiently for large lists. 3) The combination of list comprehension and join() is suitable for scenarios that require conversion. 4) The reduce() method is suitable for other types of reductions, but is inefficient for string concatenation. The complete sentence ends.

PythonexecutionistheprocessoftransformingPythoncodeintoexecutableinstructions.1)Theinterpreterreadsthecode,convertingitintobytecode,whichthePythonVirtualMachine(PVM)executes.2)TheGlobalInterpreterLock(GIL)managesthreadexecution,potentiallylimitingmul

Key features of Python include: 1. The syntax is concise and easy to understand, suitable for beginners; 2. Dynamic type system, improving development speed; 3. Rich standard library, supporting multiple tasks; 4. Strong community and ecosystem, providing extensive support; 5. Interpretation, suitable for scripting and rapid prototyping; 6. Multi-paradigm support, suitable for various programming styles.

Python is an interpreted language, but it also includes the compilation process. 1) Python code is first compiled into bytecode. 2) Bytecode is interpreted and executed by Python virtual machine. 3) This hybrid mechanism makes Python both flexible and efficient, but not as fast as a fully compiled language.

Useaforloopwheniteratingoverasequenceorforaspecificnumberoftimes;useawhileloopwhencontinuinguntilaconditionismet.Forloopsareidealforknownsequences,whilewhileloopssuitsituationswithundeterminediterations.

Pythonloopscanleadtoerrorslikeinfiniteloops,modifyinglistsduringiteration,off-by-oneerrors,zero-indexingissues,andnestedloopinefficiencies.Toavoidthese:1)Use'i


Hot AI Tools

Undresser.AI Undress
AI-powered app for creating realistic nude photos

AI Clothes Remover
Online AI tool for removing clothes from photos.

Undress AI Tool
Undress images for free

Clothoff.io
AI clothes remover

Video Face Swap
Swap faces in any video effortlessly with our completely free AI face swap tool!

Hot Article

Hot Tools

SublimeText3 English version
Recommended: Win version, supports code prompts!

PhpStorm Mac version
The latest (2018.2.1) professional PHP integrated development tool

SAP NetWeaver Server Adapter for Eclipse
Integrate Eclipse with SAP NetWeaver application server.

Safe Exam Browser
Safe Exam Browser is a secure browser environment for taking online exams securely. This software turns any computer into a secure workstation. It controls access to any utility and prevents students from using unauthorized resources.

WebStorm Mac version
Useful JavaScript development tools
