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Comment gratter des pages Web à défilement infini avec Python

王林
王林original
2024-08-28 18:33:111200parcourir

Comment gratter des pages Web à défilement infini avec Python

Bonjour, développeurs Crawlee, et bienvenue dans un autre tutoriel sur le blog Crawlee. Ce didacticiel vous apprendra comment supprimer des sites Web à défilement infini à l'aide de Crawlee pour Python.

Pour le contexte, les pages à défilement infini sont une alternative moderne à la pagination classique. Lorsque les utilisateurs font défiler la page Web vers le bas au lieu de choisir la page suivante, la page charge automatiquement plus de données et les utilisateurs peuvent faire défiler davantage.

En tant que grand sneakerhead, je prendrai comme exemple le site Web à défilement infini des chaussures Nike, et nous en récupérerons des milliers de baskets.

Crawlee pour Python possède des fonctionnalités initiales étonnantes, telles qu'une interface unifiée pour l'exploration HTTP et sans tête du navigateur, des tentatives automatiques et bien plus encore.

Prérequis et démarrage du projet

Commençons le tutoriel en installant Crawlee pour Python avec cette commande :

pipx run crawlee create nike-crawler

Avant de continuer, si vous aimez lire ce blog, nous serions vraiment heureux si vous donniez une étoile à Crawlee pour Python sur GitHub !

How to scrape infinite scrolling webpages with Python apifier / crawlee-python

Crawlee : une bibliothèque de scraping Web et d'automatisation du navigateur pour Python permettant de créer des robots d'exploration fiables. Extrayez des données pour l'IA, les LLM, les RAG ou les GPT. Téléchargez des fichiers HTML, PDF, JPG, PNG et autres à partir de sites Web. Fonctionne avec BeautifulSoup, Playwright et HTTP brut. Mode avec et sans tête. Avec rotation des procurations.

How to scrape infinite scrolling webpages with Python
Une bibliothèque de web scraping et d'automatisation du navigateur

How to scrape infinite scrolling webpages with Python How to scrape infinite scrolling webpages with Python How to scrape infinite scrolling webpages with Python How to scrape infinite scrolling webpages with Python

Crawlee couvre votre exploration et votre grattage de bout en bout et vous aide à construire des grattoirs fiables. Rapide.

? Crawlee pour Python est ouvert aux premiers utilisateurs !

Vos robots apparaîtront presque comme des humains et passeront sous le radar des protections modernes contre les robots, même avec la configuration par défaut. Crawlee vous offre les outils nécessaires pour explorer le Web à la recherche de liens, récupérer des données et les stocker de manière persistante dans des formats lisibles par machine, sans avoir à vous soucier des détails techniques. Et grâce aux riches options de configuration, vous pouvez modifier presque tous les aspects de Crawlee pour l'adapter aux besoins de votre projet si les paramètres par défaut ne suffisent pas.

? Voir la documentation complète, les guides et les exemples sur le site Web du projet Crawlee ?

Nous avons également une implémentation TypeScript de Crawlee, que vous pouvez explorer et utiliser pour vos projets. Visitez notre référentiel GitHub pour plus d'informations Crawlee pour JS/TS sur GitHub.

Installation

Nous…


Voir sur GitHub


We will scrape using headless browsers. Select PlaywrightCrawler in the terminal when Crawlee for Python asks for it.

After installation, Crawlee for Python will create boilerplate code for you. Redirect into the project folder and then run this command for all the dependencies installation:

poetry install

How to scrape infinite scrolling webpages

  1. Handling accept cookie dialog

  2. Adding request of all shoes links

  3. Extract data from product details

  4. Accept Cookies context manager

  5. Handling infinite scroll on the listing page

  6. Exporting data to CSV format

Handling accept cookie dialog

After all the necessary installations, we'll start looking into the files and configuring them accordingly.

When you look into the folder, you'll see many files, but for now, let’s focus on main.py and routes.py.

In __main__.py, let's change the target location to the Nike website. Then, just to see how scraping will happen, we'll add headless = False to the PlaywrightCrawler parameters. Let's also increase the maximum requests per crawl option to 100 to see the power of parallel scraping in Crawlee for Python.

The final code will look like this:

import asyncio

from crawlee.playwright_crawler import PlaywrightCrawler

from .routes import router


async def main() -> None:

    crawler = PlaywrightCrawler(
        headless=False,
        request_handler=router,
        max_requests_per_crawl=100,
    )

    await crawler.run(
        [
            'https://nike.com/,
        ]
    )


if __name__ == '__main__':
    asyncio.run(main())

Now coming to routes.py, let’s remove:

await context.enqueue_links()

As we don’t want to scrape the whole website.

Now, if you run the crawler using the command:

poetry run python -m nike-crawler

As the cookie dialog is blocking us from crawling more than one page's worth of shoes, let’s get it out of our way.

We can handle the cookie dialog by going to Chrome dev tools and looking at the test_id of the "accept cookies" button, which is dialog-accept-button.

Now, let’s remove the context.push_data call that was left there from the project template and add the code to accept the dialog in routes.py. The updated code will look like this:

from crawlee.router import Router
from crawlee.playwright_crawler import PlaywrightCrawlingContext

router = Router[PlaywrightCrawlingContext]()

@router.default_handler
async def default_handler(context: PlaywrightCrawlingContext) -> None:

    # Wait for the popup to be visible to ensure it has loaded on the page.
    await context.page.get_by_test_id('dialog-accept-button').click()

Adding request of all shoes links

Now, if you hover over the top bar and see all the sections, i.e., man, woman, and kids, you'll notice the “All shoes” section. As we want to scrape all the sneakers, this section interests us. Let’s use get_by_test_id with the filter of has_text=’All shoes’ and add all the links with the text “All shoes” to the request handler. Let’s add this code to the existing routes.py file:

    shoe_listing_links = (
        await context.page.get_by_test_id('link').filter(has_text='All shoes').all()
    )
    await context.add_requests(
        [
            Request.from_url(url, label='listing')
            for link in shoe_listing_links
            if (url := await link.get_attribute('href'))
        ]
    )

@router.handler('listing')
async def listing_handler(context: PlaywrightCrawlingContext) -> None:
    """Handler for shoe listings."""

Extract data from product details

Now that we have all the links to the pages with the title “All Shoes,” the next step is to scrape all the products on each page and the information provided on them.

We'll extract each shoe's URL, title, price, and description. Again, let's go to dev tools and extract each parameter's relevant test_id. After scraping each of the parameters, we'll use the context.push_data function to add it to the local storage. Now let's add the following code to the listing_handler and update it in the routes.py file:

@router.handler('listing')
async def listing_handler(context: PlaywrightCrawlingContext) -> None:
    """Handler for shoe listings."""        

    await context.enqueue_links(selector='a.product-card__link-overlay', label='detail')


@router.handler('detail')
async def detail_handler(context: PlaywrightCrawlingContext) -> None:
    """Handler for shoe details."""

    title = await context.page.get_by_test_id(
        'product_title',
    ).text_content()

    price = await context.page.get_by_test_id(
        'currentPrice-container',
    ).first.text_content()

    description = await context.page.get_by_test_id(
        'product-description',
    ).text_content()

    await context.push_data(
        {
            'url': context.request.loaded_url,
            'title': title,
            'price': price,
            'description': description,
        }
    )

Accept Cookies context manager

Since we're dealing with multiple browser pages with multiple links and we want to do infinite scrolling, we may encounter an accept cookie dialog on each page. This will prevent loading more shoes via infinite scroll.

We'll need to check for cookies on every page, as each one may be opened with a fresh session (no stored cookies) and we'll get the accept cookie dialog even though we already accepted it in another browser window. However, if we don't get the dialog, we want the request handler to work as usual.

To solve this problem, we'll try to deal with the dialog in a parallel task that will run in the background. A context manager is a nice abstraction that will allow us to reuse this logic in all the router handlers. So, let's build a context manager:

from playwright.async_api import TimeoutError as PlaywrightTimeoutError

@asynccontextmanager
async def accept_cookies(page: Page):
    task = asyncio.create_task(page.get_by_test_id('dialog-accept-button').click())
    try:
        yield
    finally:
        if not task.done():
            task.cancel()

        with suppress(asyncio.CancelledError, PlaywrightTimeoutError):
            await task

This context manager will make sure we're accepting the cookie dialog if it exists before scrolling and scraping the page. Let’s implement it in the routes.py file, and the updated code is here

Handling infinite scroll on the listing page

Now for the last and most interesting part of the tutorial! How to handle the infinite scroll of each shoe listing page and make sure our crawler is scrolling and scraping the data constantly.

To handle infinite scrolling in Crawlee for Python, we just need to make sure the page is loaded, which is done by waiting for the network_idle load state, and then use the infinite_scroll helper function which will keep scrolling to the bottom of the page as long as that makes additional items appear.

Let’s add two lines of code to the listing handler:

@router.handler('listing')
async def listing_handler(context: PlaywrightCrawlingContext) -> None:
    # Handler for shoe listings

    async with accept_cookies(context.page):
        await context.page.wait_for_load_state('networkidle')
        await context.infinite_scroll()
        await context.enqueue_links(
            selector='a.product-card__link-overlay', label='detail'
        )

Exporting data to CSV format

As we want to store all the shoe data into a CSV file, we can just add a call to the export_data helper into the __main__.py file just after the crawler run:

await crawler.export_data('shoes.csv')

Working crawler and its code

Now, we have a crawler ready that can scrape all the shoes from the Nike website while handling infinite scrolling and many other problems, like the cookies dialog.

You can find the complete working crawler code here on the GitHub repository.

If you have any doubts regarding this tutorial or using Crawlee for Python, feel free to join our discord community and ask fellow developers or the Crawlee team.

Crawlee & Apify

This is the official developer community of Apify and Crawlee. | 8365 members

How to scrape infinite scrolling webpages with Python discord.com

This tutorial is taken from the webinar held on August 5th where Jan Buchar, Senior Python Engineer at Apify, gave a live demo about this use case. Watch the whole webinar here.

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