Python Gazelle plugin

Gazelle is a build file generator for Bazel projects. It can create new BUILD.bazel files for a project that follows language conventions, and it can update existing build files to include new sources, dependencies, and options.

Gazelle may be run by Bazel using the gazelle rule, or it may be installed and run as a command line tool.

This directory contains a plugin for Gazelle that generates BUILD files content for Python code. When Gazelle is run as a command line tool with this plugin, it embeds a Python interpreter resolved during the plugin build. The behavior of the plugin is slightly different with different version of the interpreter as the Python stdlib changes with every minor version release. Distributors of Gazelle binaries should, therefore, build a Gazelle binary for each OS+CPU architecture+Minor Python version combination they are targeting.

The following instructions are for when you use bzlmod. Please refer to older documentation that includes instructions on how to use Gazelle without using bzlmod as your dependency manager.

Example

We have an example of using Gazelle with Python located here. A fully-working example without using bzlmod is in examples/build_file_generation.

The following documentation covers using bzlmod.

Adding Gazelle to your project

First, you'll need to add Gazelle to your MODULES.bazel file. Get the current version of Gazelle from there releases here: https://github.com/bazelbuild/bazel-gazelle/releases/.

See the installation MODULE.bazel snippet on the Releases page: https://github.com/bazelbuild/rules_python/releases in order to configure rules_python.

You will also need to add the bazel_dep for configuration for rules_python_gazelle_plugin.

Here is a snippet of a MODULE.bazel file.

# The following stanza defines the dependency rules_python.
bazel_dep(name = "rules_python", version = "0.22.0")

# The following stanza defines the dependency rules_python_gazelle_plugin.
# For typical setups you set the version.
bazel_dep(name = "rules_python_gazelle_plugin", version = "0.22.0")

# The following stanza defines the dependency gazelle.
bazel_dep(name = "gazelle", version = "0.31.0", repo_name = "bazel_gazelle")

# Import the python repositories generated by the given module extension into the scope of the current module.
use_repo(python, "python3_9")
use_repo(python, "python3_9_toolchains")

# Register an already-defined toolchain so that Bazel can use it during toolchain resolution.
register_toolchains(
    "@python3_9_toolchains//:all",
)

# Use the pip extension
pip = use_extension("@rules_python//python:extensions.bzl", "pip")

# Use the extension to call the `pip_repository` rule that invokes `pip`, with `incremental` set.
# Accepts a locked/compiled requirements file and installs the dependencies listed within.
# Those dependencies become available in a generated `requirements.bzl` file.
# You can instead check this `requirements.bzl` file into your repo.
# Because this project has different requirements for windows vs other
# operating systems, we have requirements for each.
pip.parse(
    name = "pip",
    requirements_lock = "//:requirements_lock.txt",
    requirements_windows = "//:requirements_windows.txt",
)

# Imports the pip toolchain generated by the given module extension into the scope of the current module.
use_repo(pip, "pip")

Next, we‘ll fetch metadata about your Python dependencies, so that gazelle can determine which package a given import statement comes from. This is provided by the modules_mapping rule. We’ll make a target for consuming this modules_mapping, and writing it as a manifest file for Gazelle to read. This is checked into the repo for speed, as it takes some time to calculate in a large monorepo.

Gazelle will walk up the filesystem from a Python file to find this metadata, looking for a file called gazelle_python.yaml in an ancestor folder of the Python code. Create an empty file with this name. It might be next to your requirements.txt file. (You can just use touch at this point, it just needs to exist.)

To keep the metadata updated, put this in your BUILD.bazel file next to gazelle_python.yaml:

load("@pip//:requirements.bzl", "all_whl_requirements")
load("@rules_python_gazelle_plugin//manifest:defs.bzl", "gazelle_python_manifest")
load("@rules_python_gazelle_plugin//modules_mapping:def.bzl", "modules_mapping")

# This rule fetches the metadata for python packages we depend on. That data is
# required for the gazelle_python_manifest rule to update our manifest file.
modules_mapping(
    name = "modules_map",
    wheels = all_whl_requirements,
)

# Gazelle python extension needs a manifest file mapping from
# an import to the installed package that provides it.
# This macro produces two targets:
# - //:gazelle_python_manifest.update can be used with `bazel run`
#   to recalculate the manifest
# - //:gazelle_python_manifest.test is a test target ensuring that
#   the manifest doesn't need to be updated
gazelle_python_manifest(
    name = "gazelle_python_manifest",
    modules_mapping = ":modules_map",
    # This is what we called our `pip_parse` rule, where third-party
    # python libraries are loaded in BUILD files.
    pip_repository_name = "pip",
    # This should point to wherever we declare our python dependencies
    # (the same as what we passed to the modules_mapping rule in WORKSPACE)
    # This argument is optional. If provided, the `.test` target is very
    # fast because it just has to check an integrity field. If not provided,
    # the integrity field is not added to the manifest which can help avoid
    # merge conflicts in large repos.
    requirements = "//:requirements_lock.txt",
)

Finally, you create a target that you'll invoke to run the Gazelle tool with the rules_python extension included. This typically goes in your root /BUILD.bazel file:

load("@bazel_gazelle//:def.bzl", "gazelle")

# Our gazelle target points to the python gazelle binary.
# This is the simple case where we only need one language supported.
# If you also had proto, go, or other gazelle-supported languages,
# you would also need a gazelle_binary rule.
# See https://github.com/bazelbuild/bazel-gazelle/blob/master/extend.rst#example
gazelle(
    name = "gazelle",
    gazelle = "@rules_python_gazelle_plugin//python:gazelle_binary",
)

That's it, now you can finally run bazel run //:gazelle anytime you edit Python code, and it should update your BUILD files correctly.

Usage

Gazelle is non-destructive. It will try to leave your edits to BUILD files alone, only making updates to py_* targets. However it will remove dependencies that appear to be unused, so it's a good idea to check in your work before running Gazelle so you can easily revert any changes it made.

The rules_python extension assumes some conventions about your Python code. These are noted below, and might require changes to your existing code.

Note that the gazelle program has multiple commands. At present, only the update command (the default) does anything for Python code.

Directives

You can configure the extension using directives, just like for other languages. These are just comments in the BUILD.bazel file which govern behavior of the extension when processing files under that folder.

See https://github.com/bazelbuild/bazel-gazelle#directives for some general directives that may be useful. In particular, the resolve directive is language-specific and can be used with Python. Examples of these directives in use can be found in the /gazelle/testdata folder in the rules_python repo.

Python-specific directives are as follows:

DirectiveDefault value
# gazelle:python_extensionenabled
Controls whether the Python extension is enabled or not. Sub-packages inherit this value. Can be either “enabled” or “disabled”.
# gazelle:python_rootn/a
Sets a Bazel package as a Python root. This is used on monorepos with multiple Python projects that don't share the top-level of the workspace as the root. See Directive: python_root below.
# gazelle:python_manifest_file_namegazelle_python.yaml
Overrides the default manifest file name.
# gazelle:python_ignore_filesn/a
Controls the files which are ignored from the generated targets.
# gazelle:python_ignore_dependenciesn/a
Controls the ignored dependencies from the generated targets.
# gazelle:python_validate_import_statementstrue
Controls whether the Python import statements should be validated. Can be “true” or “false”
# gazelle:python_generation_modepackage
Controls the target generation mode. Can be “file”, “package”, or “project”
# gazelle:python_generation_mode_per_file_include_initfalse
Controls whether __init__.py files are included as srcs in each generated target when target generation mode is “file”. Can be “true”, or “false”
# gazelle:python_generation_mode_per_package_require_test_entry_pointtrue
Controls whether a file called __test__.py or a target called __test__ is required to generate one test target per package in package mode.
# gazelle:python_library_naming_convention$package_name$
Controls the py_library naming convention. It interpolates $package_name$ with the Bazel package name. E.g. if the Bazel package name is foo, setting this to $package_name$_my_lib would result in a generated target named foo_my_lib.
# gazelle:python_binary_naming_convention$package_name$_bin
Controls the py_binary naming convention. Follows the same interpolation rules as python_library_naming_convention.
# gazelle:python_test_naming_convention$package_name$_test
Controls the py_test naming convention. Follows the same interpolation rules as python_library_naming_convention.
# gazelle:resolve py ...n/a
Instructs the plugin what target to add as a dependency to satisfy a given import statement. The syntax is # gazelle:resolve py import-string label where import-string is the symbol in the python import statement, and label is the Bazel label that Gazelle should write in deps.
# gazelle:python_default_visibility labels
Instructs gazelle to use these visibility labels on all python targets. labels is a comma-separated list of labels (without spaces).//$python_root$:__subpackages__
# gazelle:python_visibility label
Appends additional visibility labels to each generated target. This directive can be set multiple times.
# gazelle:python_test_file_pattern*_test.py,test_*.py
Filenames matching these comma-separated globs will be mapped to py_test targets.
# gazelle:python_label_convention$distribution_name$
Defines the format of the distribution name in labels to third-party deps. Useful for using Gazelle plugin with other rules with different repository conventions (e.g. rules_pycross). Full label is always prepended with (pip) repository name, e.g. @pip//numpy.
# gazelle:python_label_normalizationsnake_case
Controls how distribution names in labels to third-party deps are normalized. Useful for using Gazelle plugin with other rules with different label conventions (e.g. rules_pycross uses PEP-503). Can be “snake_case”, “none”, or “pep503”.

Directive: python_root:

Set this directive within the Bazel package that you want to use as the Python root. For example, if using a src dir (as recommended by the Python Packaging User Guide), then set this directive in src/BUILD.bazel:

# ./src/BUILD.bazel
# Tell gazelle that are python root is the same dir as this Bazel package.
# gazelle:python_root

Note that the directive does not have any arguments.

Gazelle will then add the necessary imports attribute to all targets that it generates:

# in ./src/foo/BUILD.bazel
py_libary(
    ...
    imports = [".."],  # Gazelle adds this
    ...
)

# in ./src/foo/bar/BUILD.bazel
py_libary(
    ...
    imports = ["../.."],  # Gazelle adds this
    ...
)

Directive: python_default_visibility:

Instructs gazelle to use these visibility labels on all python targets (typically py_*, but can be modified via the map_kind directive). The arg to this directive is a a comma-separated list (without spaces) of labels.

For example:

# gazelle:python_default_visibility //:__subpackages__,//tests:__subpackages__

produces the following visibility attribute:

py_library(
    ...,
    visibility = [
        "//:__subpackages__",
        "//tests:__subpackages__",
    ],
    ...,
)

You can also inject the python_root value by using the exact string $python_root$. All instances of this string will be replaced by the python_root value.

# gazelle:python_default_visibility //$python_root$:__pkg__,//foo/$python_root$/tests:__subpackages__

# Assuming the "# gazelle:python_root" directive is set in ./py/src/BUILD.bazel,
# the results will be:
py_library(
    ...,
    visibility = [
        "//foo/py/src/tests:__subpackages__",  # sorted alphabetically
        "//py/src:__pkg__",
    ],
    ...,
)

Two special values are also accepted as an argument to the directive:

  • NONE: This removes all default visibility. Labels added by the python_visibility directive are still included.
  • DEFAULT: This resets the default visibility.

For example:

# gazelle:python_default_visibility NONE

py_library(
    name = "...",
    srcs = [...],
)
# gazelle:python_default_visibility //foo:bar
# gazelle:python_default_visibility DEFAULT

py_library(
    ...,
    visibility = ["//:__subpackages__"],
    ...,
)

These special values can be useful for sub-packages.

Directive: python_visibility:

Appends additional visibility labels to each generated target.

This directive can be set multiple times. The generated visibility attribute will include the default visibility and all labels defined by this directive. All labels will be ordered alphabetically.

# ./BUILD.bazel
# gazelle:python_visibility //tests:__pkg__
# gazelle:python_visibility //bar:baz

py_library(
   ...
   visibility = [
       "//:__subpackages__",  # default visibility
       "//bar:baz",
       "//tests:__pkg__",
   ],
   ...
)

Child Bazel packages inherit values from parents:

# ./bar/BUILD.bazel
# gazelle:python_visibility //tests:__subpackages__

py_library(
   ...
   visibility = [
       "//:__subpackages__",       # default visibility
       "//bar:baz",                # defined in ../BUILD.bazel
       "//tests:__pkg__",          # defined in ../BUILD.bazel
       "//tests:__subpackages__",  # defined in this ./BUILD.bazel
   ],
   ...
)

This directive also supports the $python_root$ placeholder that # gazelle:python_default_visibility supports.

# gazlle:python_visibility //$python_root$/foo:bar

py_library(
    ...
    visibility = ["//this_is_my_python_root/foo:bar"],
    ...
)

Directive: python_test_file_pattern:

This directive adjusts which python files will be mapped to the py_test rule.

  • The default is *_test.py,test_*.py: both test_*.py and *_test.py files will generate py_test targets.
  • This directive must have a value. If no value is given, an error will be raised.
  • It is recommended, though not necessary, to include the .py extension in the globs: foo*.py,?at.py.
  • Like most directives, it applies to the current Bazel package and all subpackages until the directive is set again.
  • This directive accepts multiple glob patterns, separated by commas without spaces:
# gazelle:python_test_file_pattern foo*.py,?at

py_library(
    name = "mylib",
    srcs = ["mylib.py"],
)

py_test(
    name = "foo_bar",
    srcs = ["foo_bar.py"],
)

py_test(
    name = "cat",
    srcs = ["cat.py"],
)

py_test(
    name = "hat",
    srcs = ["hat.py"],
)
Notes

Resetting to the default value (such as in a subpackage) is manual. Set:

# gazelle:python_test_file_pattern *_test.py,test_*.py

There currently is no way to tell gazelle that no files in a package should be mapped to py_test targets (see Issue #1826). The workaround is to set this directive to a pattern that will never match a .py file, such as foo.bar:

# No files in this package should be mapped to py_test targets.
# gazelle:python_test_file_pattern foo.bar

py_library(
    name = "my_test",
    srcs = ["my_test.py"],
)

Directive: python_generation_mode_per_package_require_test_entry_point:

When # gazelle:python_generation_mode package, whether a file called __test__.py or a target called __test__, a.k.a., entry point, is required to generate one test target per package. If this is set to true but no entry point is found, Gazelle will fall back to file mode and generate one test target per file. Setting this directive to false forces Gazelle to generate one test target per package even without entry point. However, this means the main attribute of the py_test will not be set and the target will not be runnable unless either:

  1. there happen to be a file in the srcs with the same name as the py_test target, or
  2. a macro populating the main attribute of py_test is configured with gazelle:map_kind to replace py_test when Gazelle is generating Python test targets. For example, user can provide such a macro to Gazelle:
load("@rules_python//python:defs.bzl", _py_test="py_test")
load("@aspect_rules_py//py:defs.bzl", "py_pytest_main")

def py_test(name, main=None, **kwargs):
    deps = kwargs.pop("deps", [])
    if not main:
        py_pytest_main(
            name = "__test__",
            deps = ["@pip_pytest//:pkg"],  # change this to the pytest target in your repo.
        )
    
        deps.append(":__test__")
        main = ":__test__.py"

    _py_test(
        name = name,
        main = main,
        deps = deps,
        **kwargs,
)

Annotations

Annotations refer to comments found within Python files that configure how Gazelle acts for that particular file.

Annotations have the form:

# gazelle:annotation_name value

and can reside anywhere within a Python file where comments are valid. For example:

import foo
# gazelle:annotation_name value

def bar():  # gazelle:annotation_name value
    pass

The annotations are:

AnnotationDefault value
# gazelle:ignore importsN/A
Tells Gazelle to ignore import statements. imports is a comma-separated list of imports to ignore.
# gazelle:include_dep targetsN/A
Tells Gazelle to include a set of dependencies, even if they are not imported in a Python module. targets is a comma-separated list of target names to include as dependencies.

Annotation: ignore

This annotation accepts a comma-separated string of values. Values are names of Python imports that Gazelle should not include in target dependencies.

The annotation can be added multiple times, and all values are combined and de-duplicated.

For python_generation_mode = "package", the ignore annotations found across all files included in the generated target are removed from deps.

Example:

import numpy  # a pypi package

# gazelle:ignore bar.baz.hello,foo
import bar.baz.hello
import foo

# Ignore this import because _reasons_
import baz  # gazelle:ignore baz

will cause Gazelle to generate:

deps = ["@pypi//numpy"],

Annotation: include_dep

This annotation accepts a comma-separated string of values. Values must be Python targets, but no validation is done. If a value is not a Python target, building will result in an error saying:

<target> does not have mandatory providers: 'PyInfo' or 'CcInfo' or 'PyInfo'.

Adding non-Python targets to the generated target is a feature request being tracked in Issue #1865.

The annotation can be added multiple times, and all values are combined and de-duplicated.

For python_generation_mode = "package", the include_dep annotations found across all files included in the generated target are included in deps.

Example:

# gazelle:include_dep //foo:bar,:hello_world,//:abc
# gazelle:include_dep //:def,//foo:bar
import numpy  # a pypi package

will cause Gazelle to generate:

deps = [
    ":hello_world",
    "//:abc",
    "//:def",
    "//foo:bar",
    "@pypi//numpy",
]

Libraries

Python source files are those ending in .py but not ending in _test.py.

First, we look for the nearest ancestor BUILD file starting from the folder containing the Python source file.

In package generation mode, if there is no py_library in this BUILD file, one is created using the package name as the target's name. This makes it the default target in the package. Next, all source files are collected into the srcs of the py_library.

In project generation mode, all source files in subdirectories (that don't have BUILD files) are also collected.

In file generation mode, each file is given its own target.

Finally, the import statements in the source files are parsed, and dependencies are added to the deps attribute.

Unit Tests

A py_test target is added to the BUILD file when gazelle encounters a file named __test__.py. Often, Python unit test files are named with the suffix _test. For example, if we had a folder that is a package named “foo” we could have a Python file named foo_test.py and gazelle would create a py_test block for the file.

The following is an example of a py_test target that gazelle would add when it encounters a file named __test__.py.

py_test(
    name = "build_file_generation_test",
    srcs = ["__test__.py"],
    main = "__test__.py",
    deps = [":build_file_generation"],
)

You can control the naming convention for test targets by adding a gazelle directive named # gazelle:python_test_naming_convention. See the instructions in the section above that covers directives.

Binaries

When a __main__.py file is encountered, this indicates the entry point of a Python program. A py_binary target will be created, named [package]_bin.

When no such entry point exists, Gazelle will look for a line like this in the top level in every module:

if __name == "__main__":

Gazelle will create a py_binary target for every module with such a line, with the target name the same as the module name.

If python_generation_mode is set to file, then instead of one py_binary target per module, Gazelle will create one py_binary target for each file with such a line, and the name of the target will match the name of the script.

Note that it's possible for another script to depend on a py_binary target and import from the py_binary's scripts. This can have possible negative effects on Bazel analysis time and runfiles size compared to depending on a py_library target. The simplest way to avoid these negative effects is to extract library code into a separate script without a main line. Gazelle will then create a py_library target for that library code, and other scripts can depend on that py_library target.

Developer Notes

Gazelle extensions are written in Go. This gazelle plugin is a hybrid, as it uses Go to execute a Python interpreter as a subprocess to parse Python source files. See the gazelle documentation https://github.com/bazelbuild/bazel-gazelle/blob/master/extend.md for more information on extending Gazelle.

If you add new Go dependencies to the plugin source code, you need to “tidy” the go.mod file. After changing that file, run go mod tidy or bazel run @go_sdk//:bin/go -- mod tidy to update the go.mod and go.sum files. Then run bazel run //:gazelle_update_repos to have gazelle add the new dependenies to the deps.bzl file. The deps.bzl file is used as defined in our /WORKSPACE to include the external repos Bazel loads Go dependencies from.

Then after editing Go code, run bazel run //:gazelle to generate/update the rules in the BUILD.bazel files in our repo.