I have been evaluating the science of web scraping. The framework I use to do so is Python/Scrapy. I am sure there may be many more. My question is more around the basics. Suppose I have to scrape news content. So, I crawl a page and then write selectors to extract content, images, author, published date, sub description, comments etc. Writing this code is no big deal.
The question is how can I optimize this so it is scalable to large number of data sources. For instance, there may be thousands of news sites, each with its own html/page structure, so inevitably I need to write a scraping logic for EACH ONE OF THEM. Although possible, this would require a big team of resources working for a large duration of time to create and update these crawlers/scrapers.
Is there an easy way to do this? Can I somehow ease the process of creating a different scraper for each and every data source (website)?
How do sites like recordedfuture do it? Do they also have a big team working round the clock as they claim to extract data from 250000+ DISTINCT sources?