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Type-safe Pydantic models for all EnergyPlus IDF objects

Project description

idfpy

PyPI Python 3.12+ License: MIT EnergyPlus 26.1 Autoupdate Ask DeepWiki

Type-safe Pydantic models for all EnergyPlus IDF object types, plus IDF file read/write and simulation execution, optimized for LLM tool calling and IDE auto-completion.

Auto-generated from Energy+.schema.epJSON version 26.1.0.

Features

  • 859 object types as Pydantic v2 models with full validation
  • 275 reference types with cross-object validation
  • Forward navigationsurface.zone resolves a reference field to the target object
  • Reverse navigationzone.referencing("Lights") finds all objects that reference a given object
  • Reference validationidf.validate() batch-checks all cross-object references for existence and type compatibility
  • Extension plugin systemsurface.area, .normal, .centroid via auto-discovered geometry mixins with full IDE support
  • Case-insensitive Literal field matching (EnergyPlus IDF is case-insensitive)
  • Extensible field support (vertices, schedule data, etc.)
  • IDF read/write with positional field ordering
  • epJSON read/write with auto-detection by file extension
  • to_dict() / from_dict() for in-memory dict conversion (ideal for LLM tool calls)
  • EnergyPlus simulation execution with ExpandObjects support
  • Accepts both snake_case and original EnergyPlus schema key names

Why idfpy over eppy?

idfpy eppy
No EnergyPlus IDD required at runtime
Type-safe field validation ✅ Pydantic v2
epJSON read/write
Cross-reference validation ✅ 275 ref groups
Forward/reverse navigation ✅ 2849 properties
Surface geometry (area/normal) ✅ ext plugin
to_dict() / from_dict() for LLM
Dependencies 4 (pydantic, jinja2, loguru, typer) 12+ (lxml, pyparsing...)

Installation

pip install idfpy

Quick Start

from pathlib import Path
from idfpy import IDF
from idfpy.models import Version, Building, Zone

# Create an IDF
idf = IDF()
idf.add(Version())
idf.add(Building(name='MyBuilding', north_axis=0.0))
idf.add(Zone(name='Zone1'))

# Save as IDF
idf.save(Path('output.idf'))

# Save as epJSON
idf.save(Path('output.epjson'), output_type='epjson')

# Load (auto-detects format by extension)
idf = IDF.load(Path('existing.idf'))      # IDF format
idf = IDF.load(Path('existing.epjson'))    # epJSON format

# Run simulation
from idfpy.sim import simulate

result = simulate(Path('output.idf'), weather=Path('weather.epw'), output_dir=Path('results/'))
print(result.success)  # True / False

In-memory dict conversion

from pathlib import Path
from idfpy import IDF

idf = IDF.load(Path('model.idf'))

# IDF → dict (epJSON structure)
data = idf.to_dict()
# {
#   "Building": {"MyBuilding": {"north_axis": 0.0, "terrain": "Suburbs"}},
#   "Zone": {"Zone1": {"direction_of_relative_north": 0.0}},
#   ...
# }

# dict → IDF
idf = IDF.from_dict(data)

Object navigation

Every reference field generates a @property for forward navigation. Reverse navigation is available via referencing(). All query methods (get / has / all_of_type / remove) accept either an EnergyPlus type string, a Python class name, or the model class itself — passing the class preserves precise typing in your IDE.

from pathlib import Path
from idfpy import IDF
from idfpy.models import BuildingSurfaceDetailed, Zone

idf = IDF.load(Path('model.idf'))

# Forward navigation — resolve reference to target object
surface = idf.get(BuildingSurfaceDetailed, 'Wall1')   # → BuildingSurfaceDetailed | None
surface.zone_name        # "Zone1" (raw string, always works)
surface.zone             # Zone object (resolved via IDF)
surface.construction     # Construction object

# Reverse navigation — find all objects referencing a given object
zone = idf.get(Zone, 'Zone1')
zone.referencing(BuildingSurfaceDetailed)       # → [Wall1, Wall2, ...]
zone.referencing('Lights')                       # → [OfficeLights, ...]

# Chained navigation
zone.referencing(BuildingSurfaceDetailed)[0].construction

Strict type-name validation (default)

Query methods raise UnknownObjectTypeError when the type name cannot be resolved — this surfaces typos immediately instead of returning an empty result. Pass strict=False for the legacy silent behavior.

from idfpy import UnknownObjectTypeError

try:
    idf.get('BuildingSurface:detailed', 'Wall1')   # note the lowercase 'd'
except UnknownObjectTypeError as e:
    print(e)   # → Unknown object type: 'BuildingSurface:detailed'. ...

# Opt-in legacy silent behavior
idf.get('BuildingSurface:detailed', 'Wall1', strict=False)  # → None

Reference validation

from idfpy import IDF, RefValidationError

idf = IDF.load(Path('model.idf'))

# Batch check all cross-object references
errors = idf.validate()
for e in errors:
    print(e)
# [missing] Lights/OffLights.schedule_name: "BadSched" not found in any of [ScheduleNames]

# Or raise on first broken reference set
try:
    idf.validate_or_raise()
except RefValidationError as exc:
    print(f"{len(exc.errors)} broken reference(s)")

Real-world Example

from pathlib import Path
from idfpy import IDF

# Load a DOE reference building
idf = IDF.load(Path("LargeOffice.idf"))

# Modify all exterior walls' insulation
for con_name, con in idf.all_of_type('Construction').items():
    layer = con.outside_layer_ref
    if layer and hasattr(layer, "conductivity"):
        print(f"{con.name}: k={layer.conductivity} W/m·K")

# Validate all references
errors = idf.validate()
print(f"{len(errors)} broken references")

Geometry extensions

Surface models include geometry properties via the built-in ext.geometry plugin — area, normal vector, and centroid are computed from vertices using Newell's method, with full IDE autocompletion.

from idfpy import IDF
from pathlib import Path

idf = IDF.load(Path('model.idf'))

surface = idf.get('BuildingSurface:Detailed', 'Wall1')
surface.area               # 30.0 (m²)
surface.normal             # (0.0, -1.0, 0.0) — outward unit normal
surface.centroid           # (5.0, 0.0, 1.5)
surface.vertices_as_tuples # [(0,0,3), (0,0,0), (10,0,0), (10,0,3)]

window = idf.get('FenestrationSurface:Detailed', 'Win1')
window.area                # 16.0 (m²)

Supported surface types: BuildingSurface:Detailed, FenestrationSurface:Detailed, Floor:Detailed, RoofCeiling:Detailed, Wall:Detailed, Shading:Building:Detailed, Shading:Site:Detailed, Shading:Zone:Detailed.

Creating custom plugins

Extensions live in idfpy/ext/ as sub-packages. Each plugin exposes a MIXIN_MAP that the code generator auto-discovers:

# idfpy/ext/thermal/__init__.py
from .mixins import ThermalPropertyMixin

MIXIN_MAP: dict[str, type] = {
    'BuildingSurfaceDetailed': ThermalPropertyMixin,
}
# idfpy/ext/thermal/mixins.py
class ThermalPropertyMixin:
    @property
    def u_value(self) -> float:
        """Compute U-value from construction layers."""
        ...

After adding a plugin, re-run idfpy codegen to regenerate models — the mixin is injected into the class hierarchy and IDE autocompletion works immediately.

Container mutation

from idfpy.models import Zone

idf.remove(Zone, 'Zone1')     # unbinds + unregisters references
idf.remove('Zone', 'Zone1')   # string form (EnergyPlus or Python class name)

License

MIT

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