A packaging prelude:
Before you can even worry about reading resource files, the first step is to make sure that the data files are getting packaged into your distribution in the first place - it is easy to read them directly from the source tree, but the important part is making sure these resource files are accessible from code within an installed package.
Structure your project like this, putting data files into a subdirectory within the package:
│ ├── __init__.py
│ ├── templates
│ │ └── temp_file
│ ├── mymodule1.py
│ └── mymodule2.py
You should pass
include_package_data=True in the
setup() call. The manifest file is only needed if you want to use setuptools/distutils and build source distributions. To make sure the
templates/temp_file gets packaged for this example project structure, add a line like this into the manifest file:
recursive-include package *
Historical cruft note: Using a manifest file is not needed for modern build backends such as flit, poetry, which will include the package data files by default. So, if you're using
pyproject.toml and you don't have a
setup.py file then you can ignore all the stuff about
Now, with packaging out of the way, onto the reading part...
Use standard library
pkgutil APIs. It's going to look like this in library code:
# within package/mymodule1.py, for example
data = pkgutil.get_data(__name__, "templates/temp_file")
It works in zips. It works on Python 2 and Python 3. It doesn't require third-party dependencies. I'm not really aware of any downsides (if you are, then please comment on the answer).
Bad ways to avoid:
Bad way #1: using relative paths from a source file
This was previously described in the accepted answer. At best, it looks something like this:
from pathlib import Path
resource_path = Path(__file__).parent / "templates"
data = resource_path.joinpath("temp_file").read_bytes()
What's wrong with that? The assumption that you have files and subdirectories available is not correct. This approach doesn't work if executing code which is packed in a zip or a wheel, and it may be entirely out of the user's control whether or not your package gets extracted to a filesystem at all.
Bad way #2: using pkg_resources APIs
This is described in the top-voted answer. It looks something like this:
from pkg_resources import resource_string
data = resource_string(__name__, "templates/temp_file")
What's wrong with that? It adds a runtime dependency on setuptools, which should preferably be an install time dependency only. Importing and using
pkg_resources can become really slow, as the code builds up a working set of all installed packages, even though you were only interested in your own package resources. That's not a big deal at install time (since installation is once-off), but it's ugly at runtime.
Bad way #3: using legacy importlib.resources APIs
is currently was previously the recommendation of the top-voted answer. It's in the standard library since Python 3.7. It looks like this:
from importlib.resources import read_binary
data = read_binary("package.templates", "temp_file")
What's wrong with that? Well, unfortunately, the implementation left some things to be desired and it
is likely to be was deprecated in Python 3.11. Using
importlib.resources.read_text and friends will require you to add an empty file
templates/__init__.py so that data files reside within a sub-package rather than in a subdirectory. It will also expose the
package/templates subdirectory as an importable
package.templates sub-package in its own right. This won't work with many existing packages which are already published using resource subdirectories instead of resource sub-packages, and it's inconvenient to add the
__init__.py files everywhere muddying the boundary between data and code.
This approach was deprecated in upstream
importlib_resources in 2021, and was deprecated in stdlib from version Python 3.11. bpo-45514 tracked the deprecation and migrating from legacy offers
_legacy.py wrappers to aid with transition.
Honorable mention: using the traversable importlib resources API
This had not been mentioned in the top-voted answer when I posted about it (2020), but the author has subsequently edited it into their answer (2023).
importlib_resources is more than a simple backport of the Python 3.7+
importlib.resources code. It has traversable APIs for accessing resources with usage similar to
my_resources = importlib_resources.files("package")
data = my_resources.joinpath("templates", "temp_file").read_bytes()
This works on Python 2 and 3, it works in zips, and it doesn't require spurious
__init__.py files to be added in resource subdirectories. The only downside vs
pkgutil that I can see is that the traversable APIs are only available in the stdlib
importlib.resources from Python-3.9+, so there is still a third-party dependency needed to support older Python versions. If you only need to run on Python-3.9+ then use this approach, or you can add a compatibility layer and a conditional dependency on the backport for older Python versions:
# in your library code:
from importlib.resources import files
from importlib_resources import files
# in your setup.py or similar:
from setuptools import setup
'importlib_resources; python_version < "3.9"',
Until Python 3.8 is end-of-life, my recommendation remains with stdlib
pkgutil, to avoid the extra complexity of a conditional dependency.
I've created an example project on GitHub and uploaded on PyPI, which demonstrates all five approaches discussed above. Try it out with:
$ pip install resources-example
See https://github.com/wimglenn/resources-example for more info.