tidy3d.web.Job
tidy3d.web.Job#
- class tidy3d.web.Job(*, type: Literal['Job'] = 'Job', simulation: Union[tidy3d.components.simulation.Simulation, tidy3d.components.heat.simulation.HeatSimulation], task_name: str, folder_name: str = 'default', callback_url: str = None, solver_version: str = None, verbose: bool = True, simulation_type: str = 'tidy3d', parent_tasks: Tuple[str, ...] = None, task_id: str = None)#
Bases:
tidy3d.web.api.container.WebContainerInterface for managing the task runs on the server.
- Parameters
simulation (Union[Simulation, HeatSimulation]) – Simulation to run as a ‘task’.
task_name (str) – Unique name of the task.
folder_name (str = default) – Name of folder to store task on web UI.
callback_url (Optional[str] = None) – Http PUT url to receive simulation finish event. The body content is a json file with fields
{'id', 'status', 'name', 'workUnit', 'solverVersion'}.solver_version (Optional[str] = None) – verbose : bool = True Whether to print info messages and progressbars.
simulation_type (str = tidy3d) – Type of simulation, used internally only.
parent_tasks (Optional[Tuple[str, ...]] = None) – Tuple of parent task ids, used internally only.
task_id (Optional[str] = None) – Task ID number, set when the task is uploaded, leave as None.
- __init__(**kwargs)#
Init method, includes post-init validators.
Methods
__init__(**kwargs)Init method, includes post-init validators.
Automatically place "type" field with model name in the model field dictionary.
construct([_fields_set])Creates a new model setting __dict__ and __fields_set__ from trusted or pre-validated data.
copy(**kwargs)Copy a Tidy3dBaseModel.
delete()Delete server-side data associated with
Job.dict(*[, include, exclude, by_alias, ...])Generate a dictionary representation of the model, optionally specifying which fields to include or exclude.
dict_from_file(fname[, group_path])Loads a dictionary containing the model from a .yaml, .json, .hdf5, or .hdf5.gz file.
dict_from_hdf5(fname[, group_path, ...])Loads a dictionary containing the model contents from a .hdf5 file.
dict_from_hdf5_gz(fname[, group_path, ...])Loads a dictionary containing the model contents from a .hdf5.gz file.
dict_from_json(fname)Load dictionary of the model from a .json file.
dict_from_yaml(fname)Load dictionary of the model from a .yaml file.
download([path])Download results of simulation.
estimate_cost([verbose])Compute the maximum FlexCredit charge for a given
Job.from_file(fname[, group_path])Loads a
Tidy3dBaseModelfrom .yaml, .json, .hdf5, or .hdf5.gz file.from_hdf5(fname[, group_path, custom_decoders])Loads
Tidy3dBaseModelinstance to .hdf5 file.from_hdf5_gz(fname[, group_path, ...])Loads
Tidy3dBaseModelinstance to .hdf5.gz file.from_json(fname, **parse_obj_kwargs)Load a
Tidy3dBaseModelfrom .json file.from_orm(obj)from_yaml(fname, **parse_obj_kwargs)Loads
Tidy3dBaseModelfrom .yaml file.Generates a docstring for a Tidy3D mode and saves it to the __doc__ of the class.
get_info()Return information about a
Job.Return information about the running
Job.get_sub_model(group_path, model_dict)Get the sub model for a given group path.
Return a dictionary of this object's sub-models indexed by their hash values.
get_tuple_group_name(index)Get the group name of a tuple element.
get_tuple_index(key_name)Get the index into the tuple based on its group name.
help([methods])Prints message describing the fields and methods of a
Tidy3dBaseModel.json(*[, include, exclude, by_alias, ...])Generate a JSON representation of the model, include and exclude arguments as per dict().
load([path])Download job results and load them into a data object.
monitor()Monitor progress of running
Job.parse_file(path, *[, content_type, ...])parse_obj(obj)parse_raw(b, *[, content_type, encoding, ...])real_cost([verbose])Get the billed cost for the task associated with this job.
run([path])Run
Joball the way through and return data.schema([by_alias, ref_template])schema_json(*[, by_alias, ref_template])start()Start running a
Job.to_file(fname)Exports
Tidy3dBaseModelinstance to .yaml, .json, or .hdf5 fileto_hdf5(fname[, custom_encoders])Exports
Tidy3dBaseModelinstance to .hdf5 file.to_hdf5_gz(fname[, custom_encoders])Exports
Tidy3dBaseModelinstance to .hdf5.gz file.to_json(fname)Exports
Tidy3dBaseModelinstance to .json fileto_yaml(fname)Exports
Tidy3dBaseModelinstance to .yaml file.tuple_to_dict(tuple_values)How we generate a dictionary mapping new keys to tuple values for hdf5.
update_forward_refs(**localns)Try to update ForwardRefs on fields based on this Model, globalns and localns.
updated_copy(**kwargs)Make copy of a component instance with
**kwargsindicating updated field values.validate(value)Attributes
Return current status of
Job.simulationtask_namefolder_namecallback_urlsolver_versionverbosesimulation_typeparent_taskstask_id- class Config#
Bases:
objectSets config for all
Tidy3dBaseModelobjects.- allow_population_by_field_namebool = True
Allow properties to stand in for fields(?).
- arbitrary_types_allowedbool = True
Allow types like numpy arrays.
- extrastr = ‘forbid’
Forbid extra kwargs not specified in model.
- json_encodersDict[type, Callable]
Defines how to encode type in json file.
- validate_allbool = True
Validate default values just to be safe.
- validate_assignmentbool
Re-validate after re-assignment of field in model.
- __eq__(other)#
Define == for two Tidy3DBaseModels.
- __ge__(other)#
define >= for getting unique indices based on hash.
- __gt__(other)#
define > for getting unique indices based on hash.
- __hash__() int#
Hash method.
- classmethod __init_subclass__() None#
Things that are done to each of the models.
- __iter__() TupleGenerator#
so dict(model) works
- __le__(other)#
define <= for getting unique indices based on hash.
- __lt__(other)#
define < for getting unique indices based on hash.
- __pretty__(fmt: Callable[[Any], Any], **kwargs: Any) Generator[Any, None, None]#
Used by devtools (https://python-devtools.helpmanual.io/) to provide a human readable representations of objects
- __repr_name__() str#
Name of the instance’s class, used in __repr__.
- __rich_repr__() RichReprResult#
Get fields for Rich library
- classmethod __try_update_forward_refs__(**localns: Any) None#
Same as update_forward_refs but will not raise exception when forward references are not defined.
- classmethod add_type_field() None#
Automatically place “type” field with model name in the model field dictionary.
- classmethod construct(_fields_set: Optional[SetStr] = None, **values: Any) Model#
Creates a new model setting __dict__ and __fields_set__ from trusted or pre-validated data. Default values are respected, but no other validation is performed. Behaves as if Config.extra = ‘allow’ was set since it adds all passed values
- copy(**kwargs) tidy3d.components.base.Tidy3dBaseModel#
Copy a Tidy3dBaseModel. With
deep=Trueas default.
- dict(*, include: Optional[Union[AbstractSetIntStr, MappingIntStrAny]] = None, exclude: Optional[Union[AbstractSetIntStr, MappingIntStrAny]] = None, by_alias: bool = False, skip_defaults: Optional[bool] = None, exclude_unset: bool = False, exclude_defaults: bool = False, exclude_none: bool = False) DictStrAny#
Generate a dictionary representation of the model, optionally specifying which fields to include or exclude.
- classmethod dict_from_file(fname: str, group_path: Optional[str] = None) dict#
Loads a dictionary containing the model from a .yaml, .json, .hdf5, or .hdf5.gz file.
- Parameters
fname (str) – Full path to the file to load the
Tidy3dBaseModelfrom.group_path (str, optional) – Path to a group inside the file to use as the base level.
- Returns
A dictionary containing the model.
- Return type
dict
Example
>>> simulation = Simulation.from_file(fname='folder/sim.json')
- classmethod dict_from_hdf5(fname: str, group_path: str = '', custom_decoders: Optional[List[Callable]] = None) dict#
Loads a dictionary containing the model contents from a .hdf5 file.
- Parameters
fname (str) – Full path to the .hdf5 file to load the
Tidy3dBaseModelfrom.group_path (str, optional) – Path to a group inside the file to selectively load a sub-element of the model only.
custom_decoders (List[Callable]) – List of functions accepting (fname: str, group_path: str, model_dict: dict, key: str, value: Any) that store the value in the model dict after a custom decoding.
- Returns
Dictionary containing the model.
- Return type
dict
Example
>>> sim_dict = Simulation.dict_from_hdf5(fname='folder/sim.hdf5')
- classmethod dict_from_hdf5_gz(fname: str, group_path: str = '', custom_decoders: Optional[List[Callable]] = None) dict#
Loads a dictionary containing the model contents from a .hdf5.gz file.
- Parameters
fname (str) – Full path to the .hdf5.gz file to load the
Tidy3dBaseModelfrom.group_path (str, optional) – Path to a group inside the file to selectively load a sub-element of the model only.
custom_decoders (List[Callable]) – List of functions accepting (fname: str, group_path: str, model_dict: dict, key: str, value: Any) that store the value in the model dict after a custom decoding.
- Returns
Dictionary containing the model.
- Return type
dict
Example
>>> sim_dict = Simulation.dict_from_hdf5(fname='folder/sim.hdf5.gz')
- classmethod dict_from_json(fname: str) dict#
Load dictionary of the model from a .json file.
- Parameters
fname (str) – Full path to the .json file to load the
Tidy3dBaseModelfrom.- Returns
A dictionary containing the model.
- Return type
dict
Example
>>> sim_dict = Simulation.dict_from_json(fname='folder/sim.json')
- classmethod dict_from_yaml(fname: str) dict#
Load dictionary of the model from a .yaml file.
- Parameters
fname (str) – Full path to the .yaml file to load the
Tidy3dBaseModelfrom.- Returns
A dictionary containing the model.
- Return type
dict
Example
>>> sim_dict = Simulation.dict_from_yaml(fname='folder/sim.yaml')
- download(path: str = 'simulation_data.hdf5') None#
Download results of simulation.
- Parameters
path (str = "./simulation_data.hdf5") – Path to download data as
.hdf5file (including filename).
Note
To load the data after download, use
Job.load().
- estimate_cost(verbose: bool = True) float#
Compute the maximum FlexCredit charge for a given
Job.- Parameters
verbose (bool = True) – Whether to log the cost and helpful messages.
- Returns
Estimated cost of the task in FlexCredits.
- Return type
float
Note
Cost is calculated assuming the simulation runs for the full
run_time. If early shut-off is triggered, the cost is adjusted proportionately.
- classmethod from_file(fname: str, group_path: Optional[str] = None, **parse_obj_kwargs) tidy3d.components.base.Tidy3dBaseModel#
Loads a
Tidy3dBaseModelfrom .yaml, .json, .hdf5, or .hdf5.gz file.- Parameters
fname (str) – Full path to the file to load the
Tidy3dBaseModelfrom.group_path (str, optional) – Path to a group inside the file to use as the base level. Only for hdf5 files. Starting / is optional.
**parse_obj_kwargs – Keyword arguments passed to either pydantic’s
parse_objfunction when loading model.
- Returns
An instance of the component class calling
load.- Return type
Tidy3dBaseModel
Example
>>> simulation = Simulation.from_file(fname='folder/sim.json')
- classmethod from_hdf5(fname: str, group_path: str = '', custom_decoders: Optional[List[Callable]] = None, **parse_obj_kwargs) tidy3d.components.base.Tidy3dBaseModel#
Loads
Tidy3dBaseModelinstance to .hdf5 file.- Parameters
fname (str) – Full path to the .hdf5 file to load the
Tidy3dBaseModelfrom.group_path (str, optional) – Path to a group inside the file to selectively load a sub-element of the model only. Starting / is optional.
custom_decoders (List[Callable]) – List of functions accepting (fname: str, group_path: str, model_dict: dict, key: str, value: Any) that store the value in the model dict after a custom decoding.
**parse_obj_kwargs – Keyword arguments passed to pydantic’s
parse_objmethod.
Example
>>> simulation = Simulation.from_hdf5(fname='folder/sim.hdf5')
- classmethod from_hdf5_gz(fname: str, group_path: str = '', custom_decoders: Optional[List[Callable]] = None, **parse_obj_kwargs) tidy3d.components.base.Tidy3dBaseModel#
Loads
Tidy3dBaseModelinstance to .hdf5.gz file.- Parameters
fname (str) – Full path to the .hdf5.gz file to load the
Tidy3dBaseModelfrom.group_path (str, optional) – Path to a group inside the file to selectively load a sub-element of the model only. Starting / is optional.
custom_decoders (List[Callable]) – List of functions accepting (fname: str, group_path: str, model_dict: dict, key: str, value: Any) that store the value in the model dict after a custom decoding.
**parse_obj_kwargs – Keyword arguments passed to pydantic’s
parse_objmethod.
Example
>>> simulation = Simulation.from_hdf5_gz(fname='folder/sim.hdf5.gz')
- classmethod from_json(fname: str, **parse_obj_kwargs) tidy3d.components.base.Tidy3dBaseModel#
Load a
Tidy3dBaseModelfrom .json file.- Parameters
fname (str) – Full path to the .json file to load the
Tidy3dBaseModelfrom.- Returns
Tidy3dBaseModel– An instance of the component class calling load.**parse_obj_kwargs – Keyword arguments passed to pydantic’s
parse_objmethod.
Example
>>> simulation = Simulation.from_json(fname='folder/sim.json')
- classmethod from_yaml(fname: str, **parse_obj_kwargs) tidy3d.components.base.Tidy3dBaseModel#
Loads
Tidy3dBaseModelfrom .yaml file.- Parameters
fname (str) – Full path to the .yaml file to load the
Tidy3dBaseModelfrom.**parse_obj_kwargs – Keyword arguments passed to pydantic’s
parse_objmethod.
- Returns
An instance of the component class calling from_yaml.
- Return type
Tidy3dBaseModel
Example
>>> simulation = Simulation.from_yaml(fname='folder/sim.yaml')
- classmethod generate_docstring() str#
Generates a docstring for a Tidy3D mode and saves it to the __doc__ of the class.
- get_info() tidy3d.web.core.task_info.TaskInfo#
Return information about a
Job.- Returns
TaskInfoobject containing info about status, size, credits of task and others.- Return type
TaskInfo
- get_run_info() tidy3d.web.core.task_info.RunInfo#
Return information about the running
Job.- Returns
Task run information.
- Return type
RunInfo
- classmethod get_sub_model(group_path: str, model_dict: dict | list) dict#
Get the sub model for a given group path.
- get_submodels_by_hash() Dict[int, List[Union[str, Tuple[str, int]]]]#
Return a dictionary of this object’s sub-models indexed by their hash values.
- static get_tuple_group_name(index: int) str#
Get the group name of a tuple element.
- static get_tuple_index(key_name: str) int#
Get the index into the tuple based on its group name.
- help(methods: bool = False) None#
Prints message describing the fields and methods of a
Tidy3dBaseModel.- Parameters
methods (bool = False) – Whether to also print out information about object’s methods.
Example
>>> simulation.help(methods=True)
- json(*, include: Optional[Union[AbstractSetIntStr, MappingIntStrAny]] = None, exclude: Optional[Union[AbstractSetIntStr, MappingIntStrAny]] = None, by_alias: bool = False, skip_defaults: Optional[bool] = None, exclude_unset: bool = False, exclude_defaults: bool = False, exclude_none: bool = False, encoder: Optional[Callable[[Any], Any]] = None, models_as_dict: bool = True, **dumps_kwargs: Any) str#
Generate a JSON representation of the model, include and exclude arguments as per dict().
encoder is an optional function to supply as default to json.dumps(), other arguments as per json.dumps().
- load(path: str = 'simulation_data.hdf5') Union[tidy3d.components.data.sim_data.SimulationData, tidy3d.components.heat.data.sim_data.HeatSimulationData]#
Download job results and load them into a data object.
- Parameters
path (str = "./simulation_data.hdf5") – Path to download data as
.hdf5file (including filename).- Returns
Object containing simulation results.
- Return type
Union[
SimulationData,HeatSimulationData]
- monitor() None#
Monitor progress of running
Job.Note
To load the output of completed simulation into
SimulationData`objets, call :meth:`Job.load.
- real_cost(verbose: bool = True) float#
Get the billed cost for the task associated with this job.
- Parameters
verbose (bool = True) – Whether to log the cost and helpful messages.
- Returns
Billed cost of the task in FlexCredits.
- Return type
float
- run(path: str = 'simulation_data.hdf5') Union[tidy3d.components.data.sim_data.SimulationData, tidy3d.components.heat.data.sim_data.HeatSimulationData]#
Run
Joball the way through and return data.- Parameters
path_dir (str = "./simulation_data.hdf5") – Base directory where data will be downloaded, by default current working directory.
- Returns
Object containing simulation results.
- Return type
Union[
SimulationData,HeatSimulationData]
- start() None#
Start running a
Job.Note
To monitor progress of the
Job, callJob.monitor()after started.
- to_file(fname: str) None#
Exports
Tidy3dBaseModelinstance to .yaml, .json, or .hdf5 file- Parameters
fname (str) – Full path to the .yaml or .json file to save the
Tidy3dBaseModelto.
Example
>>> simulation.to_file(fname='folder/sim.json')
- to_hdf5(fname: str, custom_encoders: Optional[List[Callable]] = None) None#
Exports
Tidy3dBaseModelinstance to .hdf5 file.- Parameters
fname (str) – Full path to the .hdf5 file to save the
Tidy3dBaseModelto.custom_encoders (List[Callable]) – List of functions accepting (fname: str, group_path: str, value: Any) that take the
valuesupplied and write it to the hdf5fnameatgroup_path.
Example
>>> simulation.to_hdf5(fname='folder/sim.hdf5')
- to_hdf5_gz(fname: str, custom_encoders: Optional[List[Callable]] = None) None#
Exports
Tidy3dBaseModelinstance to .hdf5.gz file.- Parameters
fname (str) – Full path to the .hdf5.gz file to save the
Tidy3dBaseModelto.custom_encoders (List[Callable]) – List of functions accepting (fname: str, group_path: str, value: Any) that take the
valuesupplied and write it to the hdf5fnameatgroup_path.
Example
>>> simulation.to_hdf5_gz(fname='folder/sim.hdf5.gz')
- to_json(fname: str) None#
Exports
Tidy3dBaseModelinstance to .json file- Parameters
fname (str) – Full path to the .json file to save the
Tidy3dBaseModelto.
Example
>>> simulation.to_json(fname='folder/sim.json')
- to_yaml(fname: str) None#
Exports
Tidy3dBaseModelinstance to .yaml file.- Parameters
fname (str) – Full path to the .yaml file to save the
Tidy3dBaseModelto.
Example
>>> simulation.to_yaml(fname='folder/sim.yaml')
- classmethod tuple_to_dict(tuple_values: tuple) dict#
How we generate a dictionary mapping new keys to tuple values for hdf5.
- classmethod update_forward_refs(**localns: Any) None#
Try to update ForwardRefs on fields based on this Model, globalns and localns.
- updated_copy(**kwargs) tidy3d.components.base.Tidy3dBaseModel#
Make copy of a component instance with
**kwargsindicating updated field values.