pytrnsys_process.process.process_batch.process_whole_result_set#

pytrnsys_process.process.process_batch.process_whole_result_set(results_folder: Path, processing_scenario: Callable[[Simulation], None] | Sequence[Callable[[Simulation], None]]) SimulationsData[source]#

Process all simulation folders in a results directory sequentially.

Processes each simulation folder found in the results directory one at a time, applying the provided processing step/scenario to each simulation.

Using the default settings your structure should look like this:

results_folder
├─ sim-1
├─ sim-2
├─ sim-3
├─ temp
├─ your-printer-files.prt
Parameters:
  • pathlib.Path (results_folder) – Path to the directory containing simulation folders. Each subfolder should contain a temp folder containing valid simulation data files.

  • processing_scenario (collections.abc.Callable or collections.abc.Sequence of collections.abc.Callable) – They should containd the processing logic for a simulation. Each callable should take a Simulation object as its only parameter and modify it in place.

Returns:

SimulationsData

  • monthly: Dict mapping simulation names to monthly DataFrame results

  • hourly: Dict mapping simulation names to hourly DataFrame results

  • scalar: DataFrame containing scalar/deck values from all simulations

Return type:

pytrnsys_process.api.SimulationsData

Raises:
  • ValueError – If results_folder doesn’t exist or is not a directory:

  • Exception – Individual simulation failures are logged but not re-raised:

Example

>>> import pathlib as _pl
>>> from pytrnsys_process import api
...
>>> def processing_step_1(sim):
...     # Process simulation data
...     pass
>>> def processing_step_2(sim):
...     # Process simulation data
...     pass
>>> results = api.process_whole_result_set(
...     _pl.Path("path/to/results"),
...     [processing_step_1, processing_step_2]
... )