


How Can You Create a Simple XML File in Python Using the ElementTree API?
Oct 27, 2024 am 11:44 AMCreating a Simple XML File in Python
Creating XML files in Python offers multiple approaches, with various libraries available. This article explores these options and provides a detailed solution using the ElementTree API.
ElementTree:
Introduced in Python 2.5, ElementTree is the most commonly employed XML library. It's an easy-to-use, pure-Python implementation that provides a straightforward API.
Available Options:
- ElementTree: Basic, pure-Python implementation.
- cElementTree: Optimized C implementation, included in the standard library.
- LXML: Extends the ElementTree API with XPath, CSS Selectors, and more.
Example Using cElementTree:
To generate the specified XML document using cElementTree:
<code class="python">import xml.etree.cElementTree as ET root = ET.Element("root") doc = ET.SubElement(root, "doc") ET.SubElement(doc, "field1", name="blah").text = "some value1" ET.SubElement(doc, "field2", name="asdfasd").text = "some vlaue2" tree = ET.ElementTree(root) tree.write("filename.xml")</code>
This code creates the desired XML structure and writes it to a file named "filename.xml."
Further Reading:
- [ElementTree API Documentation](https://docs.python.org/3/library/xml.etree.elementtree.html)
- [ElementTree Introductory Tutorial](https://effbot.org/zone/elementtree.htm)
- [LXML etree Tutorial](https://lxml.de/tutorial.html)
Additional Notes:
- cElementTree and LXML are optimized for speed, making them suitable for most applications.
- LXML offers superior performance for generating XML but can be slower for parsing due to its implementation of parent traversal.
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