dockerfiles/scrapyd
kev 8d7331807e update 2021-12-09 18:11:29 +08:00
..
arm update 2021-12-07 16:50:20 +08:00
onbuild chore: Use --no-cache-dir flag to pip in Dockerfiles, to save space 2021-07-02 01:02:49 +05:30
py3 update 2021-12-07 16:50:20 +08:00
Dockerfile update 2021-12-07 16:50:20 +08:00
README.md update 2021-12-09 18:11:29 +08:00
docker-compose.yml update scrapyd 2021-11-03 18:14:38 +08:00
scrapyd.conf Update scrapyd.conf 2017-04-29 01:32:32 -03:00

scrapyd

⚠️ THIS PROJECT WAS MOVED TO: https://github.com/EasyPi/docker-scrapyd

scrapy is an open source and collaborative framework for extracting the data you need from websites. In a fast, simple, yet extensible way.

scrapyd is a service for running Scrapy spiders. It allows you to deploy your Scrapy projects and control their spiders using a HTTP JSON API.

scrapyd-client is a client for scrapyd. It provides the scrapyd-deploy utility which allows you to deploy your project to a Scrapyd server.

scrapy-splash provides Scrapy+JavaScript integration using Splash.

scrapyrt allows you to easily add HTTP API to your existing Scrapy project.

Spidermon is a framework to build monitors for Scrapy spiders.

pillow is the Python Imaging Library to support the ImagesPipeline.

This image is based on debian:buster, 7 latest python packages are installed:

Please use this as base image for your own project.

⚠️ Scrapy has dropped support for Python 2.7, which reached end-of-life on 2020-01-01.

docker-compose.yml

version: "3.8"

services:

  scrapyd:
    image: vimagick/scrapyd:py3
    ports:
      - "6800:6800"
    volumes:
      - ./data:/var/lib/scrapyd
      - /usr/local/lib/python3.9/dist-packages
    restart: unless-stopped

  scrapy:
    image: vimagick/scrapyd:py3
    command: bash
    volumes:
      - .:/code
    working_dir: /code
    restart: unless-stopped

  scrapyrt:
    image: vimagick/scrapyd:py3
    command: scrapyrt -i 0.0.0.0 -p 9080
    ports:
      - "9080:9080"
    volumes:
      - .:/code
    working_dir: /code
    restart: unless-stopped

Run it as background-daemon for scrapyd

$ docker-compose up -d scrapyd
$ docker-compose logs -f scrapyd
$ docker cp scrapyd_scrapyd_1:/var/lib/scrapyd/items .
$ tree items
└── myproject
    └── myspider
        └── ad6153ee5b0711e68bc70242ac110005.jl
$ mkvirtualenv -p python3 webbot
$ pip install scrapy scrapyd-client

$ scrapy startproject myproject
$ cd myproject
$ setvirtualenvproject

$ scrapy genspider myspider mydomain.com
$ scrapy edit myspider
$ scrapy list

$ vi scrapy.cfg
$ scrapyd-client deploy
$ curl http://localhost:6800/schedule.json -d project=myproject -d spider=myspider
$ firefox http://localhost:6800

File: scrapy.cfg

[settings]
default = myproject.settings

[deploy]
url = http://localhost:6800/
project = myproject

Run it as interactive-shell for scrapy

$ cat > stackoverflow_spider.py << _EOF_
import scrapy

class StackOverflowSpider(scrapy.Spider):
    name = 'stackoverflow'
    start_urls = ['http://stackoverflow.com/questions?sort=votes']

    def parse(self, response):
        for href in response.css('.question-summary h3 a::attr(href)'):
            full_url = response.urljoin(href.extract())
            yield scrapy.Request(full_url, callback=self.parse_question)

    def parse_question(self, response):
        yield {
            'title': response.css('h1 a::text').extract()[0],
            'votes': response.css('.question div[itemprop="upvoteCount"]::text').extract()[0],
            'body': response.css('.question .postcell').extract()[0],
            'tags': response.css('.question .post-tag::text').extract(),
            'link': response.url,
        }
_EOF_

$ docker-compose run --rm scrapy
>>> scrapy runspider stackoverflow_spider.py -o top-stackoverflow-questions.jl
>>> cat top-stackoverflow-questions.jl
>>> exit

Run it as realtime crawler for scrapyrt

$ git clone https://github.com/scrapy/quotesbot.git .
$ docker-compose up -d scrapyrt
$ curl -s 'http://localhost:9080/crawl.json?spider_name=toscrape-css&callback=parse&url=http://quotes.toscrape.com/&max_requests=5' | jq -c '.items[]'