Python: Difference between revisions
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=== Using uv === | === Using uv === | ||
<blockquote>A single tool to replace <code>pip</code>, <code>pip-tools</code>, <code>pipx</code>, <code>poetry</code>, <code>pyenv</code>, <code>virtualenv</code>, and more.</blockquote> | <blockquote>A single tool to replace <code>pip</code>, <code>pip-tools</code>, <code>pipx</code>, <code>poetry</code>, <code>pyenv</code>, <code>virtualenv</code>, and more.</blockquote>uv is very simple to use. Simply <code>uv init</code> to get started. No need for shells, as it creates virtual environments. | ||
As a systemPackage<syntaxhighlight lang="nix"> | As a systemPackage<syntaxhighlight lang="nix"> |
Revision as of 22:00, 25 September 2024
Python development environments with Nix
Nix supports a number of approaches to creating "development environments" for Python programming. These provide functionality analogous to virtualenv or conda: a shell environment with access to pinned versions of the python
executable and Python packages.
Using the Nixpkgs Python infrastructure via shell.nix
(recommended)
Nixpkgs has the few last Python versions packaged, as well as a consequent set of Python packages packaged that you can use to quickly create a Python environment.
Create a file shell.nix
in the project directory, with the following template:
# shell.nix
let
# We pin to a specific nixpkgs commit for reproducibility.
# Last updated: 2024-04-29. Check for new commits at https://status.nixos.org.
pkgs = import (fetchTarball "https://github.com/NixOS/nixpkgs/archive/cf8cc1201be8bc71b7cbbbdaf349b22f4f99c7ae.tar.gz") {};
in pkgs.mkShell {
packages = [
(pkgs.python3.withPackages (python-pkgs: with python-pkgs; [
# select Python packages here
pandas
requests
]))
];
}
In this example, we create a Python environment with packages pandas
and requests
.
You can find Python packages that are available in Nixpkgs using search.nixos.org. For instance, type a Python package name like numpy
in the search bar and click on the search button on the right. You can narrow down results by clicking on eg. "python311Packages" in the "Package sets" section on the left. Note that in the snippet above, on lines 8 and 9, each package is listed in the form python-pkgs.<name>
where <name>
corresponds to the one found in search.nixos.org . See Nix language basics for more information on the python-pkgs
attribute set.
Once you have picked the Python packages you want, run nix-shell
(or nix develop -f shell.nix
) to build the Python environment and enter it. Once in the environment Python will be available in your PATH, so you can run eg. python --version
.
Using a Python package not in Nixpkgs
Python packages in Nixpkgs are created and updated by Nixpkgs maintainers. Although the community invests a great effort to keep a complete and up-to-date package set, some packages you want may be missing, out of date, or broken. To use your own packages in a Nix environment, you may package it yourself.
The following is a high-level overview. For a complete explanation, see Developing with Python in the Nixpkgs Manual.
Generally, you may create a file that looks like this:
# toolz.nix
{ lib
, buildPythonPackage
, fetchPypi
, setuptools
, wheel
}:
buildPythonPackage rec {
pname = "toolz";
version = "0.10.0";
src = fetchPypi {
inherit pname version;
hash = "sha256-CP3V73yWSArRHBLUct4hrNMjWZlvaaUlkpm1QP66RWA=";
};
# do not run tests
doCheck = false;
# specific to buildPythonPackage, see its reference
pyproject = true;
build-system = [
setuptools
wheel
];
}
Given the file above is named toolz.nix
and is the same directory as the previous shell.nix
, you can edit shell.nix
to use the package toolz
above like so:
# shell.nix
let
pkgs = import <nixpkgs> {};
python = pkgs.python3.override {
self = python;
packageOverrides = pyfinal: pyprev: {
toolz = pyfinal.callPackage ./toolz.nix { };
};
};
in pkgs.mkShell {
packages = [
(python.withPackages (python-pkgs: [
# select Python packages here
python-pkgs.pandas
python-pkgs.requests
python-pkgs.toolz
]))
];
}
Next time you enter the shell specified by this file, Nix will build and include the Python package you have written.
Running compiled libraries
If you want to run some compiled libraries as for example grpcio
[1], you may encounter the following error :
$ python -c 'import grpc'
Traceback (most recent call last):
File "<string>", line 1, in <module>
File "/.../grpc/__init__.py", line 22, in <module>
from grpc import _compression
File "/.../grpc/_compression.py", line 20, in <module>
from grpc._cython import cygrpc
ImportError: libstdc++.so.6: cannot open shared object file: No such file or directory
This means that the library use compiled dynamically linked binaries that your NixOs environment fail to resolve.
On NixOS, installing packages that need to compile code or use C libraries from outside of the nix
package manager may fail if dependencies are not found in the expected locations.
There are multiple ways to make it work:
- Use fix-python, this is most suited for beginners.
- Create a FHS user env with
buildFHSUserEnv
. - Setup
nix-ld
[2] in your NixOS configuration. - Prefix library paths using wrapProgram utility.
Setup nix-ld
nix-ld[2] allow you to run unpatched dynamic binaries on NixOS.
The following configuration automatically fix the dependencies:
let
python = pkgs.python311;
# We currently take all libraries from systemd and nix as the default
# https://github.com/NixOS/nixpkgs/blob/c339c066b893e5683830ba870b1ccd3bbea88ece/nixos/modules/programs/nix-ld.nix#L44
pythonldlibpath = lib.makeLibraryPath (with pkgs; [
zlib
zstd
stdenv.cc.cc
curl
openssl
attr
libssh
bzip2
libxml2
acl
libsodium
util-linux
xz
systemd
]);
patchedpython = (python.overrideAttrs (
previousAttrs: {
# Add the nix-ld libraries to the LD_LIBRARY_PATH.
# creating a new library path from all desired libraries
postInstall = previousAttrs.postInstall + ''
mv "$out/bin/python3.11" "$out/bin/unpatched_python3.11"
cat << EOF >> "$out/bin/python3.11"
#!/run/current-system/sw/bin/bash
export LD_LIBRARY_PATH="${pythonldlibpath}"
exec "$out/bin/unpatched_python3.11" "\$@"
EOF
chmod +x "$out/bin/python3.11"
'';
}
));
# if you want poetry
patchedpoetry = ((pkgs.poetry.override { python3 = patchedpython; }).overrideAttrs (
previousAttrs: {
# same as above, but for poetry
# not that if you dont keep the blank line bellow, it crashes :(
postInstall = previousAttrs.postInstall + ''
mv "$out/bin/poetry" "$out/bin/unpatched_poetry"
cat << EOF >> "$out/bin/poetry"
#!/run/current-system/sw/bin/bash
export LD_LIBRARY_PATH="${pythonldlibpath}"
exec "$out/bin/unpatched_poetry" "\$@"
EOF
chmod +x "$out/bin/poetry"
'';
}
));
in
{
# Some other config...
environment.systemPackages = with pkgs; [
patchedpython
# if you want poetry
patchedpoetry
];
}
This configuration set the LD_LIBRARY_PATH
environment variable before running python using the overrideAttrs
[3] function to override the postInstall
script of cpython mkDerivation
[4].
After this step, you should be able to install compiled libraries using venv, poetry, conda or other packages managers...
Prefix library paths using wrapProgram
wrapProgram is a part of the makeWrapper build input[5]. By combining it with the symlinkJoin, we can create a wrapper around the Python executable that will always set the required library paths. It’s worth noting that, for this solution to be compatible with Darwin, we need to use a different wrap prefix, as shown in the example below.
let
# We currently take all libraries from systemd and nix as the default
# https://github.com/NixOS/nixpkgs/blob/c339c066b893e5683830ba870b1ccd3bbea88ece/nixos/modules/programs/nix-ld.nix#L44
pythonldlibpath = lib.makeLibraryPath (with pkgs; [
zlib
zstd
stdenv.cc.cc
curl
openssl
attr
libssh
bzip2
libxml2
acl
libsodium
util-linux
xz
systemd
]);
# Darwin requires a different library path prefix
wrapPrefix = if (!pkgs.stdenv.isDarwin) then "LD_LIBRARY_PATH" else "DYLD_LIBRARY_PATH";
patchedpython = (pkgs.symlinkJoin {
name = "python";
paths = [ pkgs.python312 ];
buildInputs = [ pkgs.makeWrapper ];
postBuild = ''
wrapProgram "$out/bin/python3.12" --prefix ${wrapPrefix} : "${pythonldlibpath}"
'';
});
in
{
environment.systemPackages = with pkgs; [
patchedpython
];
}
Using venv
To create a Python virtual environment with venv
:
$ nix-shell -p python3 --command "python -m venv .venv --copies"
You can then activate and use the Python virtual environment as usual and install dependencies with pip
and similar.
Using uv
A single tool to replace
pip
,pip-tools
,pipx
,poetry
,pyenv
,virtualenv
, and more.
uv is very simple to use. Simply uv init
to get started. No need for shells, as it creates virtual environments.
As a systemPackage
environment.systemPackages = with pkgs; [
uv
];
or as a home-manager package
home.packages = with pkgs; [
uv
];
Using poetry
# shell.nix
let
pkgs = import <nixpkgs> {};
in pkgs.mkShell {
packages = with pkgs; [
python310
(poetry.override { python3 = python310; })
];
}
Using micromamba
Install the micromamba
package to create environments and install packages as documented by micromamba.
To activate an environment you will need a FHS environment e.g.:
$ nix-shell -E 'with import <nixpkgs> {}; (pkgs.buildFHSUserEnv { name = "fhs"; }).env'
$ eval "$(micromamba shell hook -s bash)"
$ micromamba activate my-environment
$ python
>>> import numpy as np
Eventually you'll probably want to put this in a shell.nix so you won't have to type all that stuff every time e.g.:
{ pkgs ? import <nixpkgs> {}}:
let
fhs = pkgs.buildFHSUserEnv {
name = "my-fhs-environment";
targetPkgs = _: [
pkgs.micromamba
];
profile = ''
set -e
eval "$(micromamba shell hook --shell=posix)"
export MAMBA_ROOT_PREFIX=${builtins.getEnv "PWD"}/.mamba
if ! test -d $MAMBA_ROOT_PREFIX/envs/my-mamba-environment; then
micromamba create --yes -q -n my-mamba-environment
fi
micromamba activate my-mamba-environment
micromamba install --yes -f conda-requirements.txt -c conda-forge
set +e
'';
};
in fhs.env
Using conda
Install the package conda
and run
$ conda-shell
$ conda-install
$ conda env update --file environment.yml
Imperative use
It is also possible to use conda-install
directly. On first use, run:
$ conda-shell
$ conda-install
to set up conda in ~/.conda
Package a Python application
With setup.py
To package a Python application that uses setup.py
you can use buildPythonApplication
. More details about this and similar functions can be found in the nixpkgs manual.
For example, we can package this simple flask server main.py:
#!/usr/bin/env python
from flask import Flask
app = Flask(__name__)
@app.route('/')
def hello_world():
return 'Hello, World!'
if __name__ == '__main__':
app.run(host="0.0.0.0", port=8080)
We also need a setup.py
file, like this:
from setuptools import setup, find_packages
setup(name='myFlaskServer',
version='1.0',
# Modules to import from other scripts:
packages=find_packages(),
# Executables
scripts=["main.py"],
)
Then, we use the buildPythonApplication
in the default.nix
:
{ pkgs ? import <nixpkgs> {} }:
pkgs.python3Packages.buildPythonApplication {
pname = "myFlaskApp";
version = "0.1.0";
propagatedBuildInputs = with pkgs.python3Packages; [
flask
];
src = ./.;
}
Finally, build your project using nix-build
. The result will be executable in ./result/bin/app.py
.
With pyproject.toml
When your project is using pyproject.toml
you can use pyproject.nix to package your application.
First, a simple file structure could look like this:
├── app/
└── main.py
├── flake.nix
├── pyproject.toml
└── README.md
To reuse the example from above, we use the same flask application:
from flask import Flask
app = Flask(__name__)
@app.route('/')
def hello_world():
return 'Hello, World!'
if __name__ == '__main__':
app.run(host="0.0.0.0", port=8080)
Also, you need to define the pyproject.toml
. Here, we only show some of the important parts. Please refer to pyproject.nix
documentation for a full example.
[project]
name = "my-app"
version = "0.1.0"
description = "Simple app"
# define any Python dependencies
dependencies = [
"flask>3",
]
# define the CLI executable
# Here, we define the entry point to be the 'main()' function in the module 'app/main.py'
[project.scripts]
cli = "app.main:main"
We package the application by calling the loadPyproject
function from pyproject.nix
. Again, we only show a minimal example. More information can be found in the documentation.
{
description = "A basic flake using pyproject.toml project metadata";
inputs = {
pyproject-nix = {
url = "github:nix-community/pyproject.nix";
inputs.nixpkgs.follows = "nixpkgs";
};
};
outputs = { nixpkgs, pyproject-nix, ... }:
let
inherit (nixpkgs) lib;
project = pyproject-nix.lib.project.loadPyproject {
# Read & unmarshal pyproject.toml relative to this project root.
# projectRoot is also used to set `src` for renderers such as buildPythonPackage.
projectRoot = ./.;
};
# This example is only using x86_64-linux
pkgs = nixpkgs.legacyPackages.x86_64-linux;
python = pkgs.python3;
in
{
# Build our package using `buildPythonPackage
packages.x86_64-linux.default =
let
# Returns an attribute set that can be passed to `buildPythonPackage`.
attrs = project.renderers.buildPythonPackage { inherit python; };
in
# Pass attributes to buildPythonPackage.
# Here is a good spot to add on any missing or custom attributes.
python.pkgs.buildPythonPackage (attrs // {
env.CUSTOM_ENVVAR = "hello";
});
};
}
To run the application, call nix run
.
Nixpkgs Python contribution guidelines
Libraries
According to the official guidelines for Python, new package expressions for libraries should be placed in pkgs/development/python-modules/<name>/default.nix
.
Those expressions are then referenced from pkgs/top-level/python-packages.nix
as in
aenum = callPackage ../development/python-modules/aenum { };
Applications
Applications meant to be executed should be referenced directly from pkgs/top-level/all-packages.nix
.
Other Python packages used in the Python package of the application should be taken from the callPackage
argument pythonPackages
, which guarantees that they belong to the same "pythonPackage" set. For example:
{ lib
, pythonPackages
}:
buildPythonApplication {
propagatedBuildInputs = [ pythonPackages.numpy ];
# ...
}
Special Modules
GNOME
gobject-introspection
based python modules need some environment variables to work correctly. For standalone
applications, wrapGAppsHook
(see the relevant documentation) wraps the executable with the necessary variables. But this is not fit for development.
In this case use a nix-shell
with gobject-introspection
and all the libraries you are using (gtk and so on) as buildInputs
.
For example:
$ nix-shell -p gobjectIntrospection gtk3 'python2.withPackages (ps: with ps; [ pygobject3 ])' --run "python -c \"import pygtkcompat; pygtkcompat.enable_gtk(version='3.0')\""
Or, if you want to use matplotlib interactively:
$ nix-shell -p gobject-introspection gtk3 'python36.withPackages(ps : with ps; [ matplotlib pygobject3 ipython ])'
$ ipython
In [1]: import matplotlib
In [2]: matplotlib.use('gtk3agg')
In [3]: import matplotlib.pyplot as plt
In [4]: plt.ion()
In [5]: plt.plot([1,3,2,4])
You can also set backend : GTK3Agg
in your ~/.config/matplotlib/matplotlibrc
file to avoid having to call matplotlib.use('gtk3agg')
.
Performance
The derivation of CPython that is available via nixpkgs
only contains optimizations that do not harm reproducibility. Link-Time-Optimization (LTO) is only enabled on 64-bit Linux systems, while Profile Guided Optimization (PGO) is currently disabled. See Configuring Python 3.1.3. Performance options
Additionally, when compiling something within nix-shell
or a derivation security hardening flags are passed to the compiler by default which may have a small performance impact.
At the time of writing certain optimizations cause Python wheels to be non-reproducible and increase install times. For a detailed overview of the trials and tribulations of discovering such performance regressions see Why is the nix-compiled Python slower?.
Regression
With the nixpkgs
version of Python you can expect anywhere from a 30-40% regression on synthetic benchmarks. For example:
## Ubuntu's Python 3.8
username:dir$ python3.8 -c "import timeit; print(timeit.Timer('for i in range(100): oct(i)', 'gc.enable()').repeat(5))"
[7.831622750498354, 7.82998560462147, 7.830805554986, 7.823807033710182, 7.84282516874373]
## nix-shell's Python 3.8
[nix-shell:~/src]$ python3.8 -c "import timeit; print(timeit.Timer('for i in range(100): oct(i)', 'gc.enable()').repeat(5))"
[10.431915327906609, 10.435049421153963, 10.449542525224388, 10.440207410603762, 10.431304694153368]
However, synthetic benchmarks are not necessarily reflective of real-world performance. In common real-world situations, the performance difference between optimized and non-optimized interpreters is minimal. For example, using pylint
with a significant number of custom linters to scan a very large Python codebase (>6000 files) resulted in only a 5.5% difference. Other workflows that were not performance sensitive saw no impact to their run times.
Possible Optimizations
If you run code that heavily depends on Python performance, and you desire the most performant Python interpreter possible, here are some possible things you can do:
- Enable the
enableOptimizations
flag for your Python derivation. See Example. Do note that this will cause you to compile Python the first time that you run it which will take a few minutes. - Switch to a newer version of Python. In the example above, going from 3.8 to 3.10 yielded an average 7.5% performance improvement, but this is only a single benchmark. Switching versions most likely won't make all your code 7.5% faster.
- Disable hardening. Beware this only yields a small performance boost and it has impacts beyond Python code. See Hardening in Nixpkgs.
Ultimately, it is up to your use case to determine if you need an optimized version of the Python interpreter. We encourage you to benchmark and test your code to determine if this is something that would benefit you.
Troubleshooting
My module cannot be imported
If you are unable to do `import yourmodule` there are a number of reasons that could explain that.
First, make sure that you installed/added your module to python. Typically you would use something like (python3.withPackages (ps: with ps; [ yourmodule ]))
in the list of installed applications.
It is also still possible (e.g. when using nix-shell) that you aren't using the python interpreter you want because another package provides its own python3.withPackages
in buildInputs, for example, yosys. In this case, you should either include that package (or all needed packages) in your withPackages list to only have a single Python interpreter. Or you can change the order of your packages, such that the python3.withPackages
comes first, and becomes the Python interpreter that you get.
If you packaged yourself your application, make sure to use buildPythonPackage
and **not** buildPythonApplication
or stdenv.mkDerivation
. The reason is that python3.withPackages
filters the packages to check that they are built using the appropriate python interpreter: this is done by verifying that the derivation has a pythonModule
attribute and only buildPythonPackage sets this value (passthru here) thanks to, notably passthru = { pythonModule = python; }
. If you used stdenv.mkDerivation
then you can maybe set this value manually, but it's safer to simply use buildPythonPackage {format = "other"; … your derivation …}
instead of mkDerivation
.
See also
- ↑ https://pypi.org/project/grpcio/
- ↑ 2.0 2.1 https://github.com/Mic92/nix-ld
- ↑ https://nixos.org/manual/nixpkgs/stable/#sec-pkg-overrideAttrs
- ↑ https://github.com/NixOS/nixpkgs/blob/24.05/pkgs/development/interpreters/python/cpython/default.nix
- ↑ https://github.com/NixOS/nixpkgs/blob/master/pkgs/build-support/setup-hooks/make-wrapper.sh