How do you determine file MIME types in Python?
How to Determine File MIME Types in Python
Determining the MIME type of a file can be useful when storing and distributing files, as it enables the browser or application to automatically launch the appropriate software for viewing or opening the file.
Using python-magic Library
The python-magic library, available on GitHub, provides a convenient method for extracting MIME types from files.
import magic mime = magic.Magic(mime=True) mime_type = mime.from_file("testdata/test.pdf") # Returns 'application/pdf'
Alternatives to python-magic
If python-magic does not meet your requirements, consider these alternatives:
- mimetypes.guess_type(): Determines probable MIME types based on the file extension and contents.
- validators package: Offers a more comprehensive approach to validating data, including detection of MIME types.
Does the Browser Add MIME Type Information?
In general, browsers do not automatically add MIME type information when posting files to a web page. Instead, it is typically the responsibility of the server to set the appropriate content-type header based on the MIME type of the file being served.
Data Services for MIME Type Information
While there are no dedicated databases specifically for MIME type information, several web services can help identify MIME types.
- Apache's Portable MIME Database: Comprehensive list of file extensions and corresponding MIME types maintained by the Apache Foundation.
- Internet Assigned Numbers Authority (IANA): Registry of standard MIME types established by the Internet Engineering Task Force (IETF).
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