# coding: utf-8 """ Jungfraujoch Jungfraujoch Broker Web API The version of the OpenAPI document: 1.0.0-rc.15 Contact: filip.leonarski@psi.ch 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 pydantic import BaseModel, ConfigDict, Field, StrictBool, StrictInt from typing import Any, ClassVar, Dict, List, Optional from typing_extensions import Annotated from typing import Optional, Set from typing_extensions import Self class DetectorSettings(BaseModel): """ DetectorSettings """ # noqa: E501 frame_time_us: Annotated[int, Field(strict=True, ge=450)] = Field(description="Interval between consecutive frames.") count_time_us: Optional[StrictInt] = Field(default=None, description="Integration time of the detector. If not provided count time will be set to maximum value for a given frame time.") storage_cell_count: Annotated[int, Field(le=16, strict=True, ge=1)] internal_frame_generator: StrictBool = Field(description="Use internal frame generator in FPGA instead of getting data from a real detector") internal_frame_generator_images: Annotated[int, Field(le=128, strict=True, ge=1)] pedestal_g0_frames: Annotated[int, Field(strict=True, ge=0)] pedestal_g1_frames: Annotated[int, Field(strict=True, ge=0)] pedestal_g2_frames: Annotated[int, Field(strict=True, ge=0)] pedestal_g0_rms_limit: Annotated[int, Field(strict=True, ge=0)] = Field(description="Pixels with pedestal G0 RMS above the threshold are marked as masked pixels") pedestal_min_image_count: Annotated[int, Field(strict=True, ge=32)] = Field(description="Minimum number of collected images for pedestal to consider it viable") storage_cell_delay_ns: Annotated[int, Field(strict=True, ge=2100)] = Field(description="Delay between two storage cells [ns]") detector_trigger_delay_ns: Optional[Annotated[int, Field(strict=True, ge=0)]] = Field(default=0, description="Delay between TTL trigger and acquisition start [ns]") fixed_gain_g1: Optional[StrictBool] = Field(default=False, description="Fix gain to G1 (can be useful for storage cells)") use_gain_hg0: Optional[StrictBool] = Field(default=False, description="Use high G0 (for low energy applications)") __properties: ClassVar[List[str]] = ["frame_time_us", "count_time_us", "storage_cell_count", "internal_frame_generator", "internal_frame_generator_images", "pedestal_g0_frames", "pedestal_g1_frames", "pedestal_g2_frames", "pedestal_g0_rms_limit", "pedestal_min_image_count", "storage_cell_delay_ns", "detector_trigger_delay_ns", "fixed_gain_g1", "use_gain_hg0"] model_config = ConfigDict( populate_by_name=True, validate_assignment=True, protected_namespaces=(), ) 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) -> Optional[Self]: """Create an instance of DetectorSettings 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. """ excluded_fields: Set[str] = set([ ]) _dict = self.model_dump( by_alias=True, exclude=excluded_fields, exclude_none=True, ) return _dict @classmethod def from_dict(cls, obj: Optional[Dict[str, Any]]) -> Optional[Self]: """Create an instance of DetectorSettings from a dict""" if obj is None: return None if not isinstance(obj, dict): return cls.model_validate(obj) _obj = cls.model_validate({ "frame_time_us": obj.get("frame_time_us"), "count_time_us": obj.get("count_time_us"), "storage_cell_count": obj.get("storage_cell_count") if obj.get("storage_cell_count") is not None else 1, "internal_frame_generator": obj.get("internal_frame_generator") if obj.get("internal_frame_generator") is not None else False, "internal_frame_generator_images": obj.get("internal_frame_generator_images") if obj.get("internal_frame_generator_images") is not None else 1, "pedestal_g0_frames": obj.get("pedestal_g0_frames") if obj.get("pedestal_g0_frames") is not None else 2000, "pedestal_g1_frames": obj.get("pedestal_g1_frames") if obj.get("pedestal_g1_frames") is not None else 300, "pedestal_g2_frames": obj.get("pedestal_g2_frames") if obj.get("pedestal_g2_frames") is not None else 300, "pedestal_g0_rms_limit": obj.get("pedestal_g0_rms_limit") if obj.get("pedestal_g0_rms_limit") is not None else 100, "pedestal_min_image_count": obj.get("pedestal_min_image_count") if obj.get("pedestal_min_image_count") is not None else 128, "storage_cell_delay_ns": obj.get("storage_cell_delay_ns") if obj.get("storage_cell_delay_ns") is not None else 5000, "detector_trigger_delay_ns": obj.get("detector_trigger_delay_ns") if obj.get("detector_trigger_delay_ns") is not None else 0, "fixed_gain_g1": obj.get("fixed_gain_g1") if obj.get("fixed_gain_g1") is not None else False, "use_gain_hg0": obj.get("use_gain_hg0") if obj.get("use_gain_hg0") is not None else False }) return _obj