phenotypic.refine.ManualRefine#
- class phenotypic.refine.ManualRefine(*, centers: list[tuple[int, int]] | None = None, shape: Literal['square', 'diamond', 'disk'] = 'disk', width: Annotated[int, TuneSpec(low=None, high=None, step=None, log=False, categories=None, tunable=False)] = 15)[source]#
Bases:
ObjectRefiner,PointPickerMixin,FootprintMixinKeep only objects whose footprints overlap user-specified coordinates.
Filter an existing
objmap/objmaskby stamping a morphological footprint at each user-provided(y, x)coordinate and retaining only the labelled objects whose pixels intersect any stamp. Non-selected objects are dropped; selected objects keep their original label IDs, which allows downstream measurements and analyses to reference the same identifiers that existed before refinement.Unlike
ManualPointDetector, which produces anobjmapfrom scratch at picked coordinates, this refiner filters the output of an earlier detector. It is the manual-curation counterpart to automated refiners such asSmallObjectRemoverorRemoveLowCircularity, and is suitable for ground-truth curation, interactive review, and correcting systematic detector misses on a handful of colonies. For where refinement sits in a pipeline see Refinement Strategies.- Best For:
Manual curation of auto-detected objects before measurement — drop false positives (dust, plate artefacts, merged colonies) without re-running the detector.
Building curated ground-truth subsets for benchmarking detection or measurement algorithms.
Interactive review of sparse or irregular plates where auto-detection misfires on a handful of colonies; pick the subset to keep rather than enumerating those to remove.
- Consider Also:
ManualPointDetectorwhen you want to produce anobjmapat user coordinates rather than filter an existing one.RemoveBorderObjectsfor automated exclusion of objects touching the image border (no manual step required).SmallObjectRemoverfor size-based filtering when artefacts are systematically smaller than true colonies.
- Parameters:
centers (list[tuple[int, int]] | None) – An N x 2 array-like of
(y, x)pixel coordinates, one per colony to keep, supplied by the user (purely a manual choice). Accepts any sequence thatnp.asarraycan convert (list of tuples, nested list, or NumPy array). When None (default) or empty,apply()returns the image unchanged (no-op) rather than zeroing the map — safer when this refiner is chained in a pipeline before points have been picked.shape (Literal['square', 'diamond', 'disk']) – Morphological footprint shape stamped at each coordinate when locating candidate labels.
"disk"(default) preserves round colony geometry."square"covers rectangular regions."diamond"offers a compromise between the two.width (Annotated[int, TuneSpec(low=None, high=None, step=None, log=False, categories=None, tunable=False)]) – Diameter of the stamp footprint in pixels, governing how forgiving each pick is rather than the final object shape (the kept object retains its detected extent). Larger widths tolerate clicks that land slightly off the colony body but risk a single pick selecting two touching colonies; smaller widths demand more precise clicks. A reasonable starting point is a small fraction of the colony spacing so one click maps to one colony, then grow it if your picks routinely miss. Typical range: 5–50, depending on image resolution and colony size. Default: 15.
- Returns:
Input image with
objmap/objmaskrestricted to the objects whose pixels overlap any stamped footprint. Original label IDs for surviving objects are preserved (non-consecutive labels are allowed).- Return type:
Image
Note
The bundled
PointPickerWidgetused bynapari()displays onlyrgb,gray, anddetect_matlayers — it does not overlay the existingobjmap. Before callingManualRefine.napari(image), preview what is available to pick withimage.objmap.show()orimage.plot.show()so you can see which detections exist.See also
- Tutorial 2: Detecting Colonies
Step-by-step tutorial for basic colony detection.
- How To: Choose a Detection Algorithm
Guide for selecting the right detector for your plate images.
- Refinement Strategies
How refiners fit into the detection-to-measurement pipeline.
Methods
Create a new model by parsing and validating input data from keyword arguments.
Applies the operation to an image, either in-place or on a copy.
Returns a copy of the model.
Reconstruct an operation from JSON written by
to_json().Creates a new instance of the Model class with validated data.
!!! abstract "Usage Documentation"
!!! abstract "Usage Documentation"
!!! abstract "Usage Documentation"
Generates a JSON schema for a model class.
Compute the class name for parametrizations of generic classes.
Initialize logging and memory tracking after model construction.
Try to rebuild the pydantic-core schema for the model.
Validate a pydantic model instance.
!!! abstract "Usage Documentation"
Validate the given object with string data against the Pydantic model.
Interactively pick coordinates using a napari viewer.
Serialize this operation to JSON.
Return (and optionally display) the root widget.
Attributes
Configuration for the model, should be a dictionary conforming to [ConfigDict][pydantic.config.ConfigDict].
Get extra fields set during validation.
Returns the set of fields that have been explicitly set on this model instance.
- shape: Literal['square', 'diamond', 'disk']#
- __del__()#
Automatically stop tracemalloc when the object is deleted.
- classmethod __get_pydantic_json_schema__(core_schema: CoreSchema, handler: GetJsonSchemaHandler, /) JsonSchemaValue#
Hook into generating the model’s JSON schema.
- Parameters:
core_schema (CoreSchema) – A pydantic-core CoreSchema. You can ignore this argument and call the handler with a new CoreSchema, wrap this CoreSchema ({‘type’: ‘nullable’, ‘schema’: current_schema}), or just call the handler with the original schema.
handler (GetJsonSchemaHandler) – Call into Pydantic’s internal JSON schema generation. This will raise a pydantic.errors.PydanticInvalidForJsonSchema if JSON schema generation fails. Since this gets called by BaseModel.model_json_schema you can override the schema_generator argument to that function to change JSON schema generation globally for a type.
- Returns:
A JSON schema, as a Python object.
- Return type:
JsonSchemaValue
- __init__(**data: Any) None#
Create a new model by parsing and validating input data from keyword arguments.
Raises [ValidationError][pydantic_core.ValidationError] if the input data cannot be validated to form a valid model.
self is explicitly positional-only to allow self as a field name.
- Parameters:
data (Any)
- Return type:
None
- __pretty__(fmt: Callable[[Any], Any], **kwargs: Any) Generator[Any]#
Used by devtools (https://python-devtools.helpmanual.io/) to pretty print objects.
- classmethod __pydantic_init_subclass__(**kwargs: Any) None#
Populate field descriptions from the subclass docstring.
Runs once per concrete subclass after pydantic has built its model. Copies parameter descriptions parsed from the Google-style
Args:docstring block onto each field’sdescriptionslot so they surface inmodel_json_schema()— the machine-readable contract used by downstream tooling (e.g. an MCP server).- Parameters:
**kwargs (Any) – Class-keyword arguments forwarded by pydantic.
- Return type:
None
- classmethod __pydantic_on_complete__() None#
This is called once the class and its fields are fully initialized and ready to be used.
This typically happens when the class is created (just before [__pydantic_init_subclass__()][pydantic.main.BaseModel.__pydantic_init_subclass__] is called on the superclass), except when forward annotations are used that could not immediately be resolved. In that case, it will be called later, when the model is rebuilt automatically or explicitly using [model_rebuild()][pydantic.main.BaseModel.model_rebuild].
- Return type:
None
- __rich_repr__() RichReprResult#
Used by Rich (https://rich.readthedocs.io/en/stable/pretty.html) to pretty print objects.
- Return type:
RichReprResult
- apply(image, inplace=False)#
Applies the operation to an image, either in-place or on a copy.
- Parameters:
image (Image) – The arr image to apply the operation on.
inplace (bool) – If True, modifies the image in place; otherwise, operates on a copy of the image.
- Returns:
The modified image after applying the operation.
- Return type:
Image
- copy(*, include: AbstractSetIntStr | MappingIntStrAny | None = None, exclude: AbstractSetIntStr | MappingIntStrAny | None = None, update: Dict[str, Any] | None = None, deep: bool = False) Self#
Returns a copy of the model.
- !!! warning “Deprecated”
This method is now deprecated; use model_copy instead.
If you need include or exclude, use:
`python {test="skip" lint="skip"} data = self.model_dump(include=include, exclude=exclude, round_trip=True) data = {**data, **(update or {})} copied = self.model_validate(data) `- Parameters:
include (AbstractSetIntStr | MappingIntStrAny | None) – Optional set or mapping specifying which fields to include in the copied model.
exclude (AbstractSetIntStr | MappingIntStrAny | None) – Optional set or mapping specifying which fields to exclude in the copied model.
update (Dict[str, Any] | None) – Optional dictionary of field-value pairs to override field values in the copied model.
deep (bool) – If True, the values of fields that are Pydantic models will be deep-copied.
- Returns:
A copy of the model with included, excluded and updated fields as specified.
- Return type:
Self
- dict(*, include: set[int] | set[str] | Mapping[int, set[int] | set[str] | Mapping[int, IncEx | bool] | Mapping[str, IncEx | bool] | bool] | Mapping[str, set[int] | set[str] | Mapping[int, IncEx | bool] | Mapping[str, IncEx | bool] | bool] | None = None, exclude: set[int] | set[str] | Mapping[int, set[int] | set[str] | Mapping[int, IncEx | bool] | Mapping[str, IncEx | bool] | bool] | Mapping[str, set[int] | set[str] | Mapping[int, IncEx | bool] | Mapping[str, IncEx | bool] | bool] | None = None, by_alias: bool = False, exclude_unset: bool = False, exclude_defaults: bool = False, exclude_none: bool = False) Dict[str, Any]#
- Parameters:
include (set[int] | set[str] | Mapping[int, set[int] | set[str] | Mapping[int, IncEx | bool] | Mapping[str, IncEx | bool] | bool] | Mapping[str, set[int] | set[str] | Mapping[int, IncEx | bool] | Mapping[str, IncEx | bool] | bool] | None)
exclude (set[int] | set[str] | Mapping[int, set[int] | set[str] | Mapping[int, IncEx | bool] | Mapping[str, IncEx | bool] | bool] | Mapping[str, set[int] | set[str] | Mapping[int, IncEx | bool] | Mapping[str, IncEx | bool] | bool] | None)
by_alias (bool)
exclude_unset (bool)
exclude_defaults (bool)
exclude_none (bool)
- Return type:
- classmethod from_json(json_data: str | Path | dict) BaseOperation#
Reconstruct an operation from JSON written by
to_json().Accepts a JSON string, a path to a JSON file, or a pre-parsed envelope dict (same input handling as
ImagePipeline.from_json()). Polymorphic:ImageOperation.from_json(path)returns whatever concrete operation the file holds. When called on a narrower subclass, the resolved class must be a subclass of it, else aTypeErroris raised.- Parameters:
json_data (str | Path | dict) – A JSON string, path to a JSON file, or envelope dict.
- Returns:
The reconstructed operation instance.
- Raises:
AttributeError – If the recorded class cannot be resolved in the
phenotypicnamespace.TypeError – If called on a concrete subclass and the file holds a class that is not a subclass of it.
- Return type:
Example
>>> import tempfile >>> from pathlib import Path >>> from phenotypic.abc_ import ImageOperation >>> from phenotypic.detect import OtsuDetector >>> with tempfile.TemporaryDirectory() as d: ... p = Path(d) / "op.json" ... OtsuDetector().to_json(p) ... loaded = ImageOperation.from_json(p) # polymorphic >>> type(loaded).__name__ 'OtsuDetector'
- json(*, include: set[int] | set[str] | Mapping[int, set[int] | set[str] | Mapping[int, IncEx | bool] | Mapping[str, IncEx | bool] | bool] | Mapping[str, set[int] | set[str] | Mapping[int, IncEx | bool] | Mapping[str, IncEx | bool] | bool] | None = None, exclude: set[int] | set[str] | Mapping[int, set[int] | set[str] | Mapping[int, IncEx | bool] | Mapping[str, IncEx | bool] | bool] | Mapping[str, set[int] | set[str] | Mapping[int, IncEx | bool] | Mapping[str, IncEx | bool] | bool] | None = None, by_alias: bool = False, exclude_unset: bool = False, exclude_defaults: bool = False, exclude_none: bool = False, encoder: Callable[[Any], Any] | None = PydanticUndefined, models_as_dict: bool = PydanticUndefined, **dumps_kwargs: Any) str#
- Parameters:
include (set[int] | set[str] | Mapping[int, set[int] | set[str] | Mapping[int, IncEx | bool] | Mapping[str, IncEx | bool] | bool] | Mapping[str, set[int] | set[str] | Mapping[int, IncEx | bool] | Mapping[str, IncEx | bool] | bool] | None)
exclude (set[int] | set[str] | Mapping[int, set[int] | set[str] | Mapping[int, IncEx | bool] | Mapping[str, IncEx | bool] | bool] | Mapping[str, set[int] | set[str] | Mapping[int, IncEx | bool] | Mapping[str, IncEx | bool] | bool] | None)
by_alias (bool)
exclude_unset (bool)
exclude_defaults (bool)
exclude_none (bool)
models_as_dict (bool)
dumps_kwargs (Any)
- Return type:
- model_computed_fields = {}#
- model_config: ClassVar[ConfigDict] = {'arbitrary_types_allowed': True, 'extra': 'forbid', 'validate_assignment': True}#
Configuration for the model, should be a dictionary conforming to [ConfigDict][pydantic.config.ConfigDict].
- classmethod model_construct(_fields_set: set[str] | None = None, **values: Any) Self#
Creates a new instance of the Model class with validated data.
Creates a new model setting __dict__ and __pydantic_fields_set__ from trusted or pre-validated data. Default values are respected, but no other validation is performed.
- !!! note
model_construct() generally respects the model_config.extra setting on the provided model. That is, if model_config.extra == ‘allow’, then all extra passed values are added to the model instance’s __dict__ and __pydantic_extra__ fields. If model_config.extra == ‘ignore’ (the default), then all extra passed values are ignored. Because no validation is performed with a call to model_construct(), having model_config.extra == ‘forbid’ does not result in an error if extra values are passed, but they will be ignored.
- Parameters:
_fields_set (set[str] | None) – A set of field names that were originally explicitly set during instantiation. If provided, this is directly used for the [model_fields_set][pydantic.BaseModel.model_fields_set] attribute. Otherwise, the field names from the values argument will be used.
values (Any) – Trusted or pre-validated data dictionary.
- Returns:
A new instance of the Model class with validated data.
- Return type:
- model_copy(*, update: Mapping[str, Any] | None = None, deep: bool = False) Self#
- !!! abstract “Usage Documentation”
[model_copy](../concepts/models.md#model-copy)
Returns a copy of the model.
- !!! note
The underlying instance’s [__dict__][object.__dict__] attribute is copied. This might have unexpected side effects if you store anything in it, on top of the model fields (e.g. the value of [cached properties][functools.cached_property]).
- model_dump(*, mode: Literal['json', 'python'] | str = 'python', include: set[int] | set[str] | Mapping[int, set[int] | set[str] | Mapping[int, IncEx | bool] | Mapping[str, IncEx | bool] | bool] | Mapping[str, set[int] | set[str] | Mapping[int, IncEx | bool] | Mapping[str, IncEx | bool] | bool] | None = None, exclude: set[int] | set[str] | Mapping[int, set[int] | set[str] | Mapping[int, IncEx | bool] | Mapping[str, IncEx | bool] | bool] | Mapping[str, set[int] | set[str] | Mapping[int, IncEx | bool] | Mapping[str, IncEx | bool] | bool] | None = None, context: Any | None = None, by_alias: bool | None = None, exclude_unset: bool = False, exclude_defaults: bool = False, exclude_none: bool = False, exclude_computed_fields: bool = False, round_trip: bool = False, warnings: bool | Literal['none', 'warn', 'error'] = True, fallback: Callable[[Any], Any] | None = None, serialize_as_any: bool = False) dict[str, Any]#
- !!! abstract “Usage Documentation”
[model_dump](../concepts/serialization.md#python-mode)
Generate a dictionary representation of the model, optionally specifying which fields to include or exclude.
- Parameters:
mode (Literal['json', 'python'] | str) – The mode in which to_python should run. If mode is ‘json’, the output will only contain JSON serializable types. If mode is ‘python’, the output may contain non-JSON-serializable Python objects.
include (set[int] | set[str] | Mapping[int, set[int] | set[str] | Mapping[int, IncEx | bool] | Mapping[str, IncEx | bool] | bool] | Mapping[str, set[int] | set[str] | Mapping[int, IncEx | bool] | Mapping[str, IncEx | bool] | bool] | None) – A set of fields to include in the output.
exclude (set[int] | set[str] | Mapping[int, set[int] | set[str] | Mapping[int, IncEx | bool] | Mapping[str, IncEx | bool] | bool] | Mapping[str, set[int] | set[str] | Mapping[int, IncEx | bool] | Mapping[str, IncEx | bool] | bool] | None) – A set of fields to exclude from the output.
context (Any | None) – Additional context to pass to the serializer.
by_alias (bool | None) – Whether to use the field’s alias in the dictionary key if defined.
exclude_unset (bool) – Whether to exclude fields that have not been explicitly set.
exclude_defaults (bool) – Whether to exclude fields that are set to their default value.
exclude_none (bool) – Whether to exclude fields that have a value of None.
exclude_computed_fields (bool) – Whether to exclude computed fields. While this can be useful for round-tripping, it is usually recommended to use the dedicated round_trip parameter instead.
round_trip (bool) – If True, dumped values should be valid as input for non-idempotent types such as Json[T].
warnings (bool | Literal['none', 'warn', 'error']) – How to handle serialization errors. False/”none” ignores them, True/”warn” logs errors, “error” raises a [PydanticSerializationError][pydantic_core.PydanticSerializationError].
fallback (Callable[[Any], Any] | None) – A function to call when an unknown value is encountered. If not provided, a [PydanticSerializationError][pydantic_core.PydanticSerializationError] error is raised.
serialize_as_any (bool) – Whether to serialize fields with duck-typing serialization behavior.
- Returns:
A dictionary representation of the model.
- Return type:
- model_dump_json(*, indent: int | None = None, ensure_ascii: bool = False, include: set[int] | set[str] | Mapping[int, set[int] | set[str] | Mapping[int, IncEx | bool] | Mapping[str, IncEx | bool] | bool] | Mapping[str, set[int] | set[str] | Mapping[int, IncEx | bool] | Mapping[str, IncEx | bool] | bool] | None = None, exclude: set[int] | set[str] | Mapping[int, set[int] | set[str] | Mapping[int, IncEx | bool] | Mapping[str, IncEx | bool] | bool] | Mapping[str, set[int] | set[str] | Mapping[int, IncEx | bool] | Mapping[str, IncEx | bool] | bool] | None = None, context: Any | None = None, by_alias: bool | None = None, exclude_unset: bool = False, exclude_defaults: bool = False, exclude_none: bool = False, exclude_computed_fields: bool = False, round_trip: bool = False, warnings: bool | Literal['none', 'warn', 'error'] = True, fallback: Callable[[Any], Any] | None = None, serialize_as_any: bool = False) str#
- !!! abstract “Usage Documentation”
[model_dump_json](../concepts/serialization.md#json-mode)
Generates a JSON representation of the model using Pydantic’s to_json method.
- Parameters:
indent (int | None) – Indentation to use in the JSON output. If None is passed, the output will be compact.
ensure_ascii (bool) – If True, the output is guaranteed to have all incoming non-ASCII characters escaped. If False (the default), these characters will be output as-is.
include (set[int] | set[str] | Mapping[int, set[int] | set[str] | Mapping[int, IncEx | bool] | Mapping[str, IncEx | bool] | bool] | Mapping[str, set[int] | set[str] | Mapping[int, IncEx | bool] | Mapping[str, IncEx | bool] | bool] | None) – Field(s) to include in the JSON output.
exclude (set[int] | set[str] | Mapping[int, set[int] | set[str] | Mapping[int, IncEx | bool] | Mapping[str, IncEx | bool] | bool] | Mapping[str, set[int] | set[str] | Mapping[int, IncEx | bool] | Mapping[str, IncEx | bool] | bool] | None) – Field(s) to exclude from the JSON output.
context (Any | None) – Additional context to pass to the serializer.
by_alias (bool | None) – Whether to serialize using field aliases.
exclude_unset (bool) – Whether to exclude fields that have not been explicitly set.
exclude_defaults (bool) – Whether to exclude fields that are set to their default value.
exclude_none (bool) – Whether to exclude fields that have a value of None.
exclude_computed_fields (bool) – Whether to exclude computed fields. While this can be useful for round-tripping, it is usually recommended to use the dedicated round_trip parameter instead.
round_trip (bool) – If True, dumped values should be valid as input for non-idempotent types such as Json[T].
warnings (bool | Literal['none', 'warn', 'error']) – How to handle serialization errors. False/”none” ignores them, True/”warn” logs errors, “error” raises a [PydanticSerializationError][pydantic_core.PydanticSerializationError].
fallback (Callable[[Any], Any] | None) – A function to call when an unknown value is encountered. If not provided, a [PydanticSerializationError][pydantic_core.PydanticSerializationError] error is raised.
serialize_as_any (bool) – Whether to serialize fields with duck-typing serialization behavior.
- Returns:
A JSON string representation of the model.
- Return type:
- property model_extra: dict[str, Any] | None#
Get extra fields set during validation.
- Returns:
A dictionary of extra fields, or None if config.extra is not set to “allow”.
- model_fields = {'centers': FieldInfo(annotation=Union[list[tuple[int, int]], NoneType], required=False, default=None, description='An N x 2 array-like of ``(y, x)`` pixel coordinates, one per colony to keep, supplied by the user (purely a manual choice). Accepts any sequence that ``np.asarray`` can convert (list of tuples, nested list, or NumPy array). When *None* (default) or empty, :meth:`apply` returns the image unchanged (no-op) rather than zeroing the map — safer when this refiner is chained in a pipeline before points have been picked.'), 'shape': FieldInfo(annotation=Literal['square', 'diamond', 'disk'], required=False, default='disk', description='Morphological footprint shape stamped at each coordinate when locating candidate labels. ``"disk"`` (default) preserves round colony geometry. ``"square"`` covers rectangular regions. ``"diamond"`` offers a compromise between the two.'), 'width': FieldInfo(annotation=int, required=False, default=15, description='Diameter of the stamp footprint in pixels, governing how forgiving each pick is rather than the final object shape (the kept object retains its detected extent). Larger widths tolerate clicks that land slightly off the colony body but risk a single pick selecting two touching colonies; smaller widths demand more precise clicks. A reasonable starting point is a small fraction of the colony spacing so one click maps to one colony, then grow it if your picks routinely miss. Typical range: 5--50, depending on image resolution and colony size. Default: 15.', metadata=[TuneSpec(low=None, high=None, step=None, log=False, categories=None, tunable=False)])}#
- property model_fields_set: set[str]#
Returns the set of fields that have been explicitly set on this model instance.
- Returns:
- A set of strings representing the fields that have been set,
i.e. that were not filled from defaults.
- classmethod model_json_schema(by_alias: bool = True, ref_template: str = '#/$defs/{model}', schema_generator: type[~pydantic.json_schema.GenerateJsonSchema] = <class 'pydantic.json_schema.GenerateJsonSchema'>, mode: ~typing.Literal['validation', 'serialization'] = 'validation', *, union_format: ~typing.Literal['any_of', 'primitive_type_array'] = 'any_of') dict[str, Any]#
Generates a JSON schema for a model class.
- Parameters:
by_alias (bool) – Whether to use attribute aliases or not.
ref_template (str) – The reference template.
union_format (Literal['any_of', 'primitive_type_array']) –
The format to use when combining schemas from unions together. Can be one of:
’any_of’: Use the [anyOf](https://json-schema.org/understanding-json-schema/reference/combining#anyOf)
keyword to combine schemas (the default). - ‘primitive_type_array’: Use the [type](https://json-schema.org/understanding-json-schema/reference/type) keyword as an array of strings, containing each type of the combination. If any of the schemas is not a primitive type (string, boolean, null, integer or number) or contains constraints/metadata, falls back to any_of.
schema_generator (type[GenerateJsonSchema]) – To override the logic used to generate the JSON schema, as a subclass of GenerateJsonSchema with your desired modifications
mode (Literal['validation', 'serialization']) – The mode in which to generate the schema.
- Returns:
The JSON schema for the given model class.
- Return type:
- classmethod model_parametrized_name(params: tuple[type[Any], ...]) str#
Compute the class name for parametrizations of generic classes.
This method can be overridden to achieve a custom naming scheme for generic BaseModels.
- Parameters:
params (tuple[type[Any], ...]) – Tuple of types of the class. Given a generic class Model with 2 type variables and a concrete model Model[str, int], the value (str, int) would be passed to params.
- Returns:
String representing the new class where params are passed to cls as type variables.
- Raises:
TypeError – Raised when trying to generate concrete names for non-generic models.
- Return type:
- model_post_init(_BaseOperation__context: Any) None#
Initialize logging and memory tracking after model construction.
Replaces the legacy
__init__body: creates the per-class logger and, when that logger is enabled for INFO level or higher, startstracemallocso per-operation memory usage can be logged.- Parameters:
__context – Pydantic post-init context (unused).
_BaseOperation__context (Any)
- Return type:
None
- classmethod model_rebuild(*, force: bool = False, raise_errors: bool = True, _parent_namespace_depth: int = 2, _types_namespace: MappingNamespace | None = None) bool | None#
Try to rebuild the pydantic-core schema for the model.
This may be necessary when one of the annotations is a ForwardRef which could not be resolved during the initial attempt to build the schema, and automatic rebuilding fails.
- Parameters:
force (bool) – Whether to force the rebuilding of the model schema, defaults to False.
raise_errors (bool) – Whether to raise errors, defaults to True.
_parent_namespace_depth (int) – The depth level of the parent namespace, defaults to 2.
_types_namespace (MappingNamespace | None) – The types namespace, defaults to None.
- Returns:
Returns None if the schema is already “complete” and rebuilding was not required. If rebuilding _was_ required, returns True if rebuilding was successful, otherwise False.
- Return type:
bool | None
- classmethod model_validate(obj: Any, *, strict: bool | None = None, extra: Literal['allow', 'ignore', 'forbid'] | None = None, from_attributes: bool | None = None, context: Any | None = None, by_alias: bool | None = None, by_name: bool | None = None) Self#
Validate a pydantic model instance.
- Parameters:
obj (Any) – The object to validate.
strict (bool | None) – Whether to enforce types strictly.
extra (Literal['allow', 'ignore', 'forbid'] | None) – Whether to ignore, allow, or forbid extra data during model validation. See the [extra configuration value][pydantic.ConfigDict.extra] for details.
from_attributes (bool | None) – Whether to extract data from object attributes.
context (Any | None) – Additional context to pass to the validator.
by_alias (bool | None) – Whether to use the field’s alias when validating against the provided input data.
by_name (bool | None) – Whether to use the field’s name when validating against the provided input data.
- Raises:
ValidationError – If the object could not be validated.
- Returns:
The validated model instance.
- Return type:
- classmethod model_validate_json(json_data: str | bytes | bytearray, *, strict: bool | None = None, extra: Literal['allow', 'ignore', 'forbid'] | None = None, context: Any | None = None, by_alias: bool | None = None, by_name: bool | None = None) Self#
- !!! abstract “Usage Documentation”
[JSON Parsing](../concepts/json.md#json-parsing)
Validate the given JSON data against the Pydantic model.
- Parameters:
json_data (str | bytes | bytearray) – The JSON data to validate.
strict (bool | None) – Whether to enforce types strictly.
extra (Literal['allow', 'ignore', 'forbid'] | None) – Whether to ignore, allow, or forbid extra data during model validation. See the [extra configuration value][pydantic.ConfigDict.extra] for details.
context (Any | None) – Extra variables to pass to the validator.
by_alias (bool | None) – Whether to use the field’s alias when validating against the provided input data.
by_name (bool | None) – Whether to use the field’s name when validating against the provided input data.
- Returns:
The validated Pydantic model.
- Raises:
ValidationError – If json_data is not a JSON string or the object could not be validated.
- Return type:
- classmethod model_validate_strings(obj: Any, *, strict: bool | None = None, extra: Literal['allow', 'ignore', 'forbid'] | None = None, context: Any | None = None, by_alias: bool | None = None, by_name: bool | None = None) Self#
Validate the given object with string data against the Pydantic model.
- Parameters:
obj (Any) – The object containing string data to validate.
strict (bool | None) – Whether to enforce types strictly.
extra (Literal['allow', 'ignore', 'forbid'] | None) – Whether to ignore, allow, or forbid extra data during model validation. See the [extra configuration value][pydantic.ConfigDict.extra] for details.
context (Any | None) – Extra variables to pass to the validator.
by_alias (bool | None) – Whether to use the field’s alias when validating against the provided input data.
by_name (bool | None) – Whether to use the field’s name when validating against the provided input data.
- Returns:
The validated Pydantic model.
- Return type:
- napari(image: Image) _T#
Interactively pick coordinates using a napari viewer.
Opens a blocking napari viewer displaying the plate image layers. Click points on the image, then click Confirm in the dock widget. The picked coordinates are stored in the attribute named by
_point_picker_param_name. If the viewer is closed without confirming any points, existing coordinates are preserved.- Parameters:
image (Image) – The Image to display for coordinate selection.
self (_T)
- Returns:
The mixin-bearing instance, for method chaining.
- Raises:
ImportError – If napari is not installed.
- Return type:
_T
- classmethod parse_file(path: str | Path, *, content_type: str | None = None, encoding: str = 'utf8', proto: DeprecatedParseProtocol | None = None, allow_pickle: bool = False) Self#
- classmethod parse_raw(b: str | bytes, *, content_type: str | None = None, encoding: str = 'utf8', proto: DeprecatedParseProtocol | None = None, allow_pickle: bool = False) Self#
- classmethod schema_json(*, by_alias: bool = True, ref_template: str = '#/$defs/{model}', **dumps_kwargs: Any) str#
- to_json(filepath: str | Path | None = None) str | None#
Serialize this operation to JSON.
Captures the operation as a
{"class", "params"}envelope:paramsismodel_dump(mode="json")(every declared field, including nested operations and raw arrays;PrivateAttrstate such as loggers and timing is excluded automatically), andclassrecords the concrete class name sofrom_json()can rebuild the right subclass. This mirrorsImagePipeline.to_json().- Parameters:
filepath (str | Path | None) – Optional path to write the JSON to. When None, the JSON string is returned instead. Accepts a
strorPath.- Returns:
The JSON string when
filepathis None, otherwise None.- Return type:
str | None
Example
>>> import tempfile >>> from pathlib import Path >>> from phenotypic.detect import OtsuDetector >>> from phenotypic.sdk_ import CONFIG_SUFFIX_OPERATION, ensure_typed_json_suffix >>> with tempfile.TemporaryDirectory() as d: ... p = Path(d) / "op.json" ... saved = ensure_typed_json_suffix(p, CONFIG_SUFFIX_OPERATION) ... OtsuDetector(ignore_zeros=True).to_json(p) ... loaded = OtsuDetector.from_json(saved) >>> loaded.ignore_zeros True
- widget(image: Image | None = None, show: bool = False) Widget#
Return (and optionally display) the root widget.
- Parameters:
image (Image | None) – Optional image to visualize. If provided, visualization controls will be added to the widget.
show (bool) – Whether to display the widget immediately. Defaults to False.
- Returns:
The root widget.
- Return type:
ipywidgets.Widget
- Raises:
ImportError – If ipywidgets or IPython are not installed.