python-infer
Options controlling which dependencies will be inferred for Python targets.
Backend: pants.backend.python
Config section: [python-infer]
Basic options
ambiguity_resolution
--python-infer-ambiguity-resolution=<AmbiguityResolution>
PANTS_PYTHON_INFER_AMBIGUITY_RESOLUTION
[python-infer]
ambiguity_resolution = <AmbiguityResolution>
none, by_source_root
default:
none
When multiple sources provide the same symbol, how to choose the provider to use.
none
: Do not attempt to resolve this ambiguity. No dependency will be inferred, and warnings will be logged.
by_source_root
: Choose the provider with the closest common ancestor to the consumer's source root. If the provider is under the same source root then this will be the source root itself. This is useful when multiple projects in different source roots provide the same symbols (because of repeated first-party module paths or overlapping requirements.txt) and you want to resolve the ambiguity locally in each project.
assets
--[no-]python-infer-assets
PANTS_PYTHON_INFER_ASSETS
[python-infer]
assets = <bool>
False
Infer a target's asset dependencies based on strings that look like Posix filepaths, such as those given to open
or pkgutil.get_data
.
To ignore a false positive, you can either put # pants: no-infer-dep
on the line of the string or put !{bad_address}
in the dependencies
field of your target.
assets_min_slashes
--python-infer-assets-min-slashes=<int>
PANTS_PYTHON_INFER_ASSETS_MIN_SLASHES
[python-infer]
assets_min_slashes = <int>
1
If --assets is True, treat valid-looking strings with at least this many forward slash characters as potential assets. E.g. 'data/databases/prod.db'
will be treated as a potential candidate if this option is set to 2 but not to 3.
conftests
--[no-]python-infer-conftests
PANTS_PYTHON_INFER_CONFTESTS
[python-infer]
conftests = <bool>
True
Infer a test target's dependencies on any conftest.py files in the current directory and ancestor directories.
entry_points
--[no-]python-infer-entry-points
PANTS_PYTHON_INFER_ENTRY_POINTS
[python-infer]
entry_points = <bool>
True
Infer dependencies on targets' entry points, e.g. pex_binary
's entry_point
field, python_awslambda
's handler
field and python_distribution
's entry_points
field.
ignored_unowned_imports
--python-infer-ignored-unowned-imports="['<str>', '<str>', ...]"
PANTS_PYTHON_INFER_IGNORED_UNOWNED_IMPORTS
[python-infer]
ignored_unowned_imports = [
'<str>',
'<str>',
...,
]
[]
Unowned imports that should be ignored.
If there are any unowned import statements and adding the `# pants: no-infer-dep`
to the lines of the import is impractical, you can instead provide a list of imports
that Pants should ignore. You can declare a specific import or a path to a package
if you would like any of the package imports to be ignored.
For example, you could ignore all the following imports of the code
```
import src.generated.app
from src.generated.app import load
from src.generated.app import start
from src.generated.client import connect
```
by setting `ignored-unowned-imports=["src.generated.app", "src.generated.client.connect"]`.
imports
--[no-]python-infer-imports
PANTS_PYTHON_INFER_IMPORTS
[python-infer]
imports = <bool>
True
Infer a target's imported dependencies by parsing import statements from sources.
To ignore a false positive, you can either put # pants: no-infer-dep
on the line of the import or put !{bad_address}
in the dependencies
field of your target.
init_files
--python-infer-init-files=<InitFilesInference>
PANTS_PYTHON_INFER_INIT_FILES
[python-infer]
init_files = <InitFilesInference>
always, content_only, never
default:
content_only
Infer a target's dependencies on any __init__.py
files in the packages it is located in (recursively upward in the directory structure).
Even if this is set to never
or content_only
, Pants will still always include any ancestor __init__.py
files in the sandbox. Only, they will not be "proper" dependencies, e.g. they will not show up in pants dependencies
and their own dependencies will not be used.
By default, Pants only adds a "proper" dependency if there is content in the __init__.py
file. This makes sure that dependencies are added when likely necessary to build, while also avoiding adding unnecessary dependencies. While accurate, those unnecessary dependencies can complicate setting metadata like the interpreter_constraints
and resolve
fields.
string_imports
--[no-]python-infer-string-imports
PANTS_PYTHON_INFER_STRING_IMPORTS
[python-infer]
string_imports = <bool>
False
Infer a target's dependencies based on strings that look like dynamic dependencies, such as Django settings files expressing dependencies as strings.
To ignore a false positive, you can either put # pants: no-infer-dep
on the line of the string or put !{bad_address}
in the dependencies
field of your target.
string_imports_min_dots
--python-infer-string-imports-min-dots=<int>
PANTS_PYTHON_INFER_STRING_IMPORTS_MIN_DOTS
[python-infer]
string_imports_min_dots = <int>
2
If --string-imports is True, treat valid-looking strings with at least this many dots in them as potential dynamic dependencies. E.g., 'foo.bar.Baz'
will be treated as a potential dependency if this option is set to 2 but not if set to 3.
unowned_dependency_behavior
--python-infer-unowned-dependency-behavior=<UnownedDependencyUsage>
PANTS_PYTHON_INFER_UNOWNED_DEPENDENCY_BEHAVIOR
[python-infer]
unowned_dependency_behavior = <UnownedDependencyUsage>
error, warning, ignore
default:
warning
How to handle imports that don't have an inferrable owner.
Usually when an import cannot be inferred, it represents an issue like Pants not being properly configured, e.g. targets not set up. Often, missing dependencies will result in confusing runtime errors like ModuleNotFoundError
, so this option can be helpful to error more eagerly.
To ignore any false positives, either add # pants: no-infer-dep
to the line of the import or put the import inside a try: except ImportError:
block.
Advanced options
None
Deprecated options
None
Related subsystems
None