This is not working anymore, scrapy's API has changed.

Now the documentation feature a way to "Run Scrapy from a script" but I get the ReactorNotRestartable error.

My task:

from celery import Task

from twisted.internet import reactor

from scrapy.crawler import Crawler
from scrapy import log, signals
from scrapy.utils.project import get_project_settings

from .spiders import MySpider

class MyTask(Task):
    def run(self, *args, **kwargs):
        spider = MySpider
        settings = get_project_settings()
        crawler = Crawler(settings)
        crawler.signals.connect(reactor.stop, signal=signals.spider_closed)

  • What version of scrapy are you using?
    – Talvalin
    Mar 1 '14 at 18:36
  • @Talvalin Scrapy==0.22.2
    – Juan Riaza
    Mar 1 '14 at 21:07
  • 1
    @shirkey I refer to that question in the first link
    – Juan Riaza
    Mar 3 '14 at 10:42

The twisted reactor cannot be restarted. A work around for this is to let the celery task fork a new child process for each crawl you want to execute as proposed in the following post:

This gets around the "reactor cannot be restart-able" issue by utilizing the multiprocessing package. But the problem with this is that the workaround is now obsolete with the latest celery version due to the fact that you will instead run into another issue where a daemon process can't spawn sub processes. So in order for the workaround to work you need to go down in celery version.

Yes, and the scrapy API has changed. But with minor modifications (import Crawler instead of CrawlerProcess). You can get the workaround to work by going down in celery version.

The Celery issue can be found here: Celery Issue #1709

Here is my updated crawl-script that works with newer celery versions by utilizing billiard instead of multiprocessing:

from scrapy.crawler import Crawler
from scrapy.conf import settings
from myspider import MySpider
from scrapy import log, project
from twisted.internet import reactor
from billiard import Process
from scrapy.utils.project import get_project_settings
from scrapy import signals

class UrlCrawlerScript(Process):
    def __init__(self, spider):
        settings = get_project_settings()
        self.crawler = Crawler(settings)
        self.crawler.signals.connect(reactor.stop, signal=signals.spider_closed)
        self.spider = spider

    def run(self):

def run_spider(url):
    spider = MySpider(url)
    crawler = UrlCrawlerScript(spider)

Edit: By reading the celery issue #1709 they suggest to use billiard instead of multiprocessing in order for the subprocess limitation to be lifted. In other words we should try billiard and see if it works!

Edit 2: Yes, by using billiard, my script works with the latest celery build! See my updated script.

  • 2
    Note - I had to move the self.crawler.signals.connect(reactor.stop, signal=signals.spider_closed) line outside of the initialization check or the second run through would hang. Moving it makes it work fine in my project. Also, as scrapy.project is depreciated, used billiard's current_thread to set an initialization flag on a per thread basis. That worked great too.
    – jlovison
    May 22 '14 at 7:35
  • 1
    jlovison, can you please share the changes you made on current_thread? and where did you place signals.spider_closed? thanks in advance Dec 13 '14 at 13:19
  • @BjBlazkowicz since Process is the base class here and there is a call to Process.__init__(self) , isn't it also necessary for __del__ to be called for the derived class UrlCrawlerScript or will it be called automatically ?
    – wsdookadr
    Apr 22 '15 at 6:17
  • 1
    @lennard Without forking a new process it will not work. It will work for x times the concurrency you have setup, but only once for each celery worker. But if you can join the celery processes after each task it will work. For this you can make use of the setting: CELERYD_MAX_TASKS_PER_CHILD = 1 May 3 '16 at 7:09
  • 1
    For celery==4.1.0 Scrapy==1.5.0 billiard==, I tried making modifications to this but failed. I was using this in django. Then I tried CrawlerRunner and failed too. Eventually I just gave up and fell back to using CELERY_WORKER_MAX_TASKS_PER_CHILD = 1. Published code in this gist
    – Shadi
    May 11 '18 at 17:00

The Twisted reactor cannot be restarted, so once one spider finishes running and crawler stops the reactor implicitly, that worker is useless.

As posted in the answers to that other question, all you need to do is kill the worker which ran your spider and replace it with a fresh one, which prevents the reactor from being started and stopped more than once. To do this, just set:


The downside is that you're not really using the Twisted reactor to its full potential and wasting resources running multiple reactors, as one reactor can run multiple spiders at once in a single process. A better approach is to run one reactor per worker (or even one reactor globally) and don't let crawler touch it.

I'm working on this for a very similar project, so I'll update this post if I make any progress.

  • 6
    I'm interested in your workaround. Please let us know when you have come up with something. Mar 5 '14 at 16:03
  • Very interezssting, Did you get anywhere with this?
    – gerosalesc
    Jun 11 '15 at 10:19

To avoid ReactorNotRestartable error when running Scrapy in Celery Tasks Queue I've used threads. The same approach used to run Twisted reactor several times in one app. Scrapy also used Twisted, so we can do the same way.

Here is the code:

from threading import Thread
from scrapy.crawler import CrawlerProcess
import scrapy

class MySpider(scrapy.Spider):
    name = 'my_spider'

class MyCrawler:

    spider_settings = {}

    def run_crawler(self):

        process = CrawlerProcess(self.spider_settings)

Don't forget to increase CELERYD_CONCURRENCY for celery.


works fine for me.

This is not blocking process running, but anyway scrapy best practice is to process data in callbacks. Just do this way:

for crawler in process.crawlers:
    crawler.spider.save_result_callback = some_callback
    crawler.spider.save_result_callback_params = some_callback_params


I would say this approach is very inefficient if you have a lot of tasks to process. Because Celery is threaded - runs every task within its own thread. Let's say with RabbitMQ as a broker you can pass >10K q/s. With Celery this would potentially cause to 10K threads overhead! I would advise not to use celery here. Instead access the broker directly!

  • 1
    Access the broker directly? What do you mean? Mar 5 '14 at 16:17

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