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feedparservsrvest

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feedparser is a Python module for downloading and parsing syndicated feeds. It can handle RSS 0.90, Netscape RSS 0.91, Userland RSS 0.91, RSS 0.92, RSS 0.93, RSS 0.94, RSS 1.0, RSS 2.0, Atom 0.3, Atom 1.0, and CDF feeds. It also parses several popular extension modules, including Dublin Core and Apple’s iTunes extensions.

To use Universal Feed Parser, you will need Python 3.6 or later. Universal Feed Parser is not meant to run standalone; it is a module for you to use as part of a larger Python program.

feedparser can be used to scrape data feeds as it can download them and parse the XML structured data.

rvest is a popular R library for web scraping and parsing HTML and XML documents. It is built on top of the xml2 and httr libraries and provides a simple and consistent API for interacting with web pages.

One of the main advantages of using rvest is its simplicity and ease of use. It provides a number of functions that make it easy to extract information from web pages, even for those who are not familiar with web scraping. The html_nodes and html_node functions allow you to select elements from an HTML document using CSS selectors, similar to how you would select elements in JavaScript.

rvest also provides functions for interacting with forms, including html_form, set_values, and submit_form functions. These functions make it easy to navigate through forms and submit data to the server, which can be useful when scraping sites that require authentication or when interacting with dynamic web pages.

rvest also provides functions for parsing XML documents. It includes xml_nodes and xml_node functions, which also use CSS selectors to select elements from an XML document, as well as xml_attrs and xml_attr functions to extract attributes from elements.

Another advantage of rvest is that it provides a way to handle cookies, so you can keep the session alive while scraping a website, and also you can handle redirections with handle_redirects

Example Use


```python import feedparser # the feed can be loaded from a remote URL data = feedparser.parse('http://feedparser.org/docs/examples/atom10.xml') # local path data = feedparser.parse('/home/user/data.xml') # or raw string data = feedparser.parse('...') # the result dataset is a nested python dictionary containing feed data: data['feed']['title'] ```
```r library("rvest") # Rvest can use basic HTTP client to download remote HTML: tree <- read_html("http://webscraping.fyi/lib/r/rvest") # or read from string: tree <- read_html(' ') # to parse HTML trees with rvest we use r pipes (the %>% symbol) and html_element function: # we can use css selectors: print(tree %>% html_element(".products>a") %>% html_text()) # "[1] "\nCat Food\nDog Food\n"" # or XPath: print(tree %>% html_element(xpath="//div[@class='products']/a") %>% html_text()) # "[1] "\nCat Food\nDog Food\n"" # Additionally rvest offers many quality of life functions: # html_text2 - removes trailing and leading spaces and joins values print(tree %>% html_element("div") %>% html_text2()) # "[1] "Cat Food Dog Food"" # html_attr - selects element's attribute: print(tree %>% html_element("div") %>% html_attr('class')) # "products" ```

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