core/field/state.py

50 lines
2 KiB
Python

"""
FieldState — the complete cognitive field at one moment.
Invariant: versor_condition(F) < 1e-6 always.
This is checked at injection and maintained structurally by versor_apply().
FieldState is immutable by design (frozen=True).
The np.ndarray F is copied and validated at construction — the copy() call
is the explicit contract boundary. Callers must not retain a mutable
reference to the array passed in and expect coherence.
"""
from __future__ import annotations
from dataclasses import dataclass
import numpy as np
_EXPECTED_COMPONENTS = 32
@dataclass(frozen=True)
class FieldState:
F: np.ndarray # shape (32,) float32 — Cl(4,1) multivector on the versor manifold
node: int = 0 # current node index in the vocabulary manifold
step: int = 0 # number of propagation steps taken
holonomy: np.ndarray | None = None
def __post_init__(self) -> None:
# Enforce copy + dtype + shape at the construction boundary.
# frozen=True prevents reassignment, but ndarray contents are still
# mutable via the array object; copy() here is the defence.
F = np.array(self.F, dtype=np.float32).copy()
if F.shape != (_EXPECTED_COMPONENTS,):
raise ValueError(
f"FieldState.F must have shape ({_EXPECTED_COMPONENTS},), "
f"got {F.shape}."
)
# Bypass frozen to store the validated copy.
object.__setattr__(self, "F", F)
if self.holonomy is not None:
H = np.array(self.holonomy, dtype=np.float32).copy()
if H.shape != (_EXPECTED_COMPONENTS,):
raise ValueError(
f"FieldState.holonomy must have shape ({_EXPECTED_COMPONENTS},), "
f"got {H.shape}."
)
object.__setattr__(self, "holonomy", H)
def advance(self, new_F: np.ndarray, new_node: int) -> FieldState:
"""Return a new FieldState after one propagation step."""
return FieldState(F=new_F, node=new_node, step=self.step + 1, holonomy=self.holonomy)