refactor: reorganize backend modules into sub-packages for models, data, visualization, wafer, and controllers

This commit is contained in:
jack
2026-06-11 12:15:00 -07:00
parent b9f8032203
commit 72334795da
47 changed files with 155 additions and 60 deletions
@@ -0,0 +1,42 @@
"""Classify sensor values into three bands around (target, margin)
Auto mode derives target=mean, margin=1
"""
from __future__ import annotations
import math
from dataclasses import dataclass
BAND_IN = "in_range"
BAND_HIGH = "high"
BAND_LOW = "low"
@dataclass(frozen=True)
class ThresholdConfig:
set_point: float = 149.0 # process target: used as band TARGET when auto=False
margin: float = 1.0 # used as band MARGIN when auto=False
auto: bool = True # auto=True: target=frame mean, margin=frame 1σ
def resolve_bounds(values: list[float], cfg: ThresholdConfig) -> tuple[float, float]:
if not cfg.auto:
return cfg.set_point, cfg.margin
clean = [v for v in values if not math.isnan(v)]
if not clean:
return cfg.set_point, cfg.margin
mean = sum(clean) / len(clean)
variance = sum((v - mean) ** 2 for v in clean) / len(clean)
return mean, math.sqrt(variance)
def classify(value: float, target: float, margin: float) -> str:
if math.isnan(value):
return BAND_IN
if value > target + margin:
return BAND_HIGH
if value < target - margin:
return BAND_LOW
return BAND_IN
def classify_all(values: list[float], cfg: ThresholdConfig) -> list[str]:
target, margin = resolve_bounds(values, cfg)
return [classify(v, target, margin)for v in values ]