# coding: utf-8 """ VCell API VCell API The version of the OpenAPI document: 1.0.1 Contact: vcell_support@uchc.com Generated by OpenAPI Generator (https://openapi-generator.tech) Do not edit the class manually. """ # noqa: E501 from __future__ import annotations import pprint import re # noqa: F401 import json from typing import Any, ClassVar, Dict, List, Optional, Union from pydantic import BaseModel, StrictBool, StrictFloat, StrictInt, StrictStr from pydantic import Field from vcell_client.models.coordinate import Coordinate try: from typing import Self except ImportError: from typing_extensions import Self class Curve(BaseModel): """ Curve """ # noqa: E501 b_closed: Optional[StrictBool] = Field(default=None, alias="bClosed") description: Optional[StrictStr] = None type: StrictStr beginning_coordinate: Optional[Coordinate] = Field(default=None, alias="beginningCoordinate") default_num_samples: Optional[StrictInt] = Field(default=None, alias="defaultNumSamples") ending_coordinate: Optional[Coordinate] = Field(default=None, alias="endingCoordinate") num_sample_points: Optional[StrictInt] = Field(default=None, alias="numSamplePoints") segment_count: Optional[StrictInt] = Field(default=None, alias="segmentCount") spatial_length: Optional[Union[StrictFloat, StrictInt]] = Field(default=None, alias="spatialLength") closed: Optional[StrictBool] = None valid: Optional[StrictBool] = None __properties: ClassVar[List[str]] = ["bClosed", "description", "type", "beginningCoordinate", "defaultNumSamples", "endingCoordinate", "numSamplePoints", "segmentCount", "spatialLength", "closed", "valid"] model_config = { "populate_by_name": True, "validate_assignment": True } # JSON field name that stores the object type __discriminator_property_name: ClassVar[List[str]] = 'type' # discriminator mappings __discriminator_value_class_map: ClassVar[Dict[str, str]] = { 'AnalyticCurve': 'AnalyticCurve','CompositeCurve': 'CompositeCurve','ControlPointCurve': 'ControlPointCurve','SampledCurve': 'SampledCurve','Spline': 'Spline' } @classmethod def get_discriminator_value(cls, obj: Dict) -> str: """Returns the discriminator value (object type) of the data""" discriminator_value = obj[cls.__discriminator_property_name] if discriminator_value: return cls.__discriminator_value_class_map.get(discriminator_value) else: return None def to_str(self) -> str: """Returns the string representation of the model using alias""" return pprint.pformat(self.model_dump(by_alias=True)) def to_json(self) -> str: """Returns the JSON representation of the model using alias""" # TODO: pydantic v2: use .model_dump_json(by_alias=True, exclude_unset=True) instead return json.dumps(self.to_dict()) @classmethod def from_json(cls, json_str: str) -> Union[Self, Self, Self]: """Create an instance of Curve from a JSON string""" return cls.from_dict(json.loads(json_str)) def to_dict(self) -> Dict[str, Any]: """Return the dictionary representation of the model using alias. This has the following differences from calling pydantic's `self.model_dump(by_alias=True)`: * `None` is only added to the output dict for nullable fields that were set at model initialization. Other fields with value `None` are ignored. """ _dict = self.model_dump( by_alias=True, exclude={ }, exclude_none=True, ) # override the default output from pydantic by calling `to_dict()` of beginning_coordinate if self.beginning_coordinate: _dict['beginningCoordinate'] = self.beginning_coordinate.to_dict() # override the default output from pydantic by calling `to_dict()` of ending_coordinate if self.ending_coordinate: _dict['endingCoordinate'] = self.ending_coordinate.to_dict() return _dict @classmethod def from_dict(cls, obj: Dict) -> Union[Self, Self, Self]: """Create an instance of Curve from a dict""" # look up the object type based on discriminator mapping object_type = cls.get_discriminator_value(obj) if object_type: klass = globals()[object_type] return klass.from_dict(obj) else: raise ValueError("Curve failed to lookup discriminator value from " + json.dumps(obj) + ". Discriminator property name: " + cls.__discriminator_property_name + ", mapping: " + json.dumps(cls.__discriminator_value_class_map)) from vcell_client.models.analytic_curve import AnalyticCurve from vcell_client.models.composite_curve import CompositeCurve from vcell_client.models.control_point_curve import ControlPointCurve from vcell_client.models.sampled_curve import SampledCurve from vcell_client.models.spline import Spline # TODO: Rewrite to not use raise_errors Curve.model_rebuild(raise_errors=False)