C1-C4 Diagramme #101

Merged
Lars merged 3 commits from develop into main 2026-04-21 08:14:07 +02:00
5 changed files with 528 additions and 114 deletions

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@ -17,28 +17,29 @@ Phase 0c: Multi-Layer Architecture
Version: 1.0
"""
from typing import Dict, List, Optional, Tuple
from typing import Any, Dict, List, Optional, Tuple
from datetime import datetime, timedelta, date
from db import get_db, get_cursor, r2d
import statistics
from data_layer.nutrition_body_merge import build_merged_daily_nutrition_body_rows
from data_layer.nutrition_metrics import estimate_tdee_kcal_from_latest_weight
# Lag-Korrelation (Issue #53): gleiche TDEE-Logik wie nutrition_metrics / nutrition_viz
MIN_PAIRS_LAG_CORR = 15
LAG_CORR_LOOKBACK_DAYS = 120
def calculate_lag_correlation(profile_id: str, var1: str, var2: str, max_lag_days: int = 14) -> Optional[Dict]:
"""
Calculate lagged correlation between two variables
Pearson-Korrelation mit Lag-Sweep (Issue 53, Data-Layer).
Args:
var1: 'energy', 'protein', 'training_load'
var2: 'weight', 'lbm', 'hrv', 'rhr'
max_lag_days: Maximum lag to test
C1: Tagesbilanz (kcal TDEE wie ``estimate_tdee_kcal_from_latest_weight``) vs. ΔGewicht [tt+L], L1.
C2: Protein (g) vs. ΔMager [tt+L] aus ``build_merged_daily_nutrition_body_rows``, L1.
C3: Summe ``duration_min`` pro Tag vs. HRV oder Ruhepuls am Tag t+L (L0).
Returns:
{
'best_lag': X, # days
'correlation': 0.XX, # -1 to 1
'direction': 'positive'/'negative'/'none',
'confidence': 'high'/'medium'/'low',
'data_points': N
}
Rückgabe enthält u. a. ``best_lag`` / ``best_lag_days``, ``correlation``, ``interpretation``,
optional ``lag_details`` (r, n je Lag), mindestens ``MIN_PAIRS_LAG_CORR`` Paare am besten Lag.
"""
v1 = (var1 or "").strip().lower()
if v1 in ("energy", "energy_balance"):
@ -70,85 +71,349 @@ def _normalize_lag_payload(raw: Optional[Dict]) -> Optional[Dict]:
return out
def _iso_date_key(d: Any) -> str:
if d is None:
return ""
if hasattr(d, "isoformat"):
return str(d.isoformat())[:10]
s = str(d)
return s[:10] if len(s) >= 10 else s
def _parse_iso_to_date(ds: str) -> Optional[date]:
if not ds or len(ds) < 10:
return None
try:
return date.fromisoformat(ds[:10])
except ValueError:
return None
def _pearson_r(xs: List[float], ys: List[float]) -> Optional[float]:
"""Pearson-Korrelation; mindestens ``MIN_PAIRS_LAG_CORR`` Paare."""
n = len(xs)
if n < MIN_PAIRS_LAG_CORR or n != len(ys):
return None
mx = sum(xs) / n
my = sum(ys) / n
num = sum((xs[i] - mx) * (ys[i] - my) for i in range(n))
dx = sum((xs[i] - mx) ** 2 for i in range(n))
dy = sum((ys[i] - my) ** 2 for i in range(n))
if dx <= 1e-12 or dy <= 1e-12:
return None
r = num / ((dx**0.5) * (dy**0.5))
return float(max(-1.0, min(1.0, r)))
def _direction_from_r(r: float) -> str:
if r > 0.05:
return "positive"
if r < -0.05:
return "negative"
return "none"
def _lag_confidence(n_pairs: int, r: float) -> str:
return calculate_correlation_confidence(n_pairs, abs(r))
def _correlate_energy_weight(profile_id: str, max_lag: int) -> Optional[Dict]:
"""
Correlate energy balance with weight change
Test lags: 0, 3, 7, 10, 14 days
Pearson: Tagesbilanz (kcal TDEE wie nutrition_metrics) vs. Gewichtsdifferenz
vom Tag t zu Tag t+L (L = 0 max_lag). Bestes Lag nach maximalem |r|.
"""
tdee = estimate_tdee_kcal_from_latest_weight(profile_id)
if tdee is None or float(tdee) <= 0:
return {
"best_lag": None,
"correlation": None,
"direction": "none",
"confidence": "insufficient",
"data_points": 0,
"interpretation": "Keine TDEE-Schätzung möglich (Gewicht/Demografie).",
"reason": "no_tdee",
}
tdee_f = float(tdee)
cutoff = (datetime.now() - timedelta(days=LAG_CORR_LOOKBACK_DAYS)).strftime("%Y-%m-%d")
with get_db() as conn:
cur = get_cursor(conn)
cur.execute(
"""
SELECT date::date AS d, SUM(kcal)::float AS kcal
FROM nutrition_log
WHERE profile_id = %s AND date >= %s::date AND kcal IS NOT NULL
GROUP BY date
ORDER BY date
""",
(profile_id, cutoff),
)
kcal_rows = cur.fetchall()
cur.execute(
"""
SELECT date::date AS d, weight::float AS weight
FROM weight_log
WHERE profile_id = %s AND date >= %s::date AND weight IS NOT NULL
ORDER BY date
""",
(profile_id, cutoff),
)
w_rows = cur.fetchall()
# Get energy balance data (daily calories - estimated TDEE)
cur.execute("""
SELECT n.date, n.kcal, w.weight
FROM nutrition_log n
LEFT JOIN weight_log w ON w.profile_id = n.profile_id
AND w.date = n.date
WHERE n.profile_id = %s
AND n.date >= CURRENT_DATE - INTERVAL '90 days'
ORDER BY n.date
""", (profile_id,))
kcal_by: Dict[str, float] = {}
for r in kcal_rows:
kcal_by[_iso_date_key(r["d"])] = float(r["kcal"] or 0)
weight_by: Dict[str, float] = {}
for r in w_rows:
weight_by[_iso_date_key(r["d"])] = float(r["weight"])
data = cur.fetchall()
balance_by = {d: kcal_by[d] - tdee_f for d in kcal_by}
if len(data) < 30:
return {
'best_lag': None,
'correlation': None,
'direction': 'none',
'confidence': 'low',
'data_points': len(data),
'reason': 'Insufficient data (<30 days)'
}
best: Optional[Tuple[int, float, int]] = None
lag_details: List[Dict[str, Any]] = []
# Calculate 7d rolling energy balance
# (Simplified - actual implementation would need TDEE estimation)
max_l = max(0, min(int(max_lag), 28))
# Lag 0: ΔGewicht am selben Tag ist immer 0 → sinnvoll erst ab Tag 1
for lag in range(1, max_l + 1):
xs: List[float] = []
ys: List[float] = []
for ds in sorted(balance_by.keys()):
d0 = _parse_iso_to_date(ds)
if d0 is None:
continue
d1 = d0 + timedelta(days=lag)
ds1 = d1.isoformat()
w0 = weight_by.get(ds)
w1 = weight_by.get(ds1)
if w0 is None or w1 is None:
continue
xs.append(balance_by[ds])
ys.append(w1 - w0)
r = _pearson_r(xs, ys)
n_p = len(xs)
lag_details.append({"lag": lag, "n_pairs": n_p, "r": None if r is None else round(r, 4)})
if r is None:
continue
if best is None or abs(r) > abs(best[1]):
best = (lag, r, n_p)
if best is None:
return {
"best_lag": None,
"correlation": None,
"direction": "none",
"confidence": "insufficient",
"data_points": 0,
"interpretation": "Zu wenige gepaarte Tage mit Ernährung, Gewicht und gewähltem Lag.",
"reason": "insufficient_pairs",
"lag_details": lag_details,
"tdee_kcal_used": round(tdee_f, 0),
}
lag_b, r_b, n_b = best
direction = _direction_from_r(r_b)
conf = _lag_confidence(n_b, r_b)
interp = (
f"Tagesbilanz (kcal TDEE ~{tdee_f:.0f}) vs. Gewichtsänderung nach {lag_b} Tagen: "
f"r ≈ {r_b:.2f} ({direction}). "
f"Basierend auf {n_b} Kalendertagen mit vollständigen Paaren."
)
# For now, return placeholder
return {
'best_lag': 7,
'correlation': -0.45, # Placeholder
'direction': 'negative', # Higher deficit = lower weight (expected)
'confidence': 'medium',
'data_points': len(data)
"best_lag": lag_b,
"correlation": round(r_b, 4),
"direction": direction,
"confidence": conf,
"data_points": n_b,
"interpretation": interp,
"lag_details": lag_details,
"tdee_kcal_used": round(tdee_f, 0),
}
def _correlate_protein_lbm(profile_id: str, max_lag: int) -> Optional[Dict]:
"""Correlate protein intake with LBM trend"""
# TODO: Implement full correlation calculation
"""
Pearson: Protein (g/Tag) vs. Magermasse-Differenz (kg) vom Tag t zu t+L.
Datenbasis: nutrition_body_merge (Caliper-LBM forward-filled wie Ernährungs-Verlauf).
"""
merged = build_merged_daily_nutrition_body_rows(profile_id)
if not merged:
return {
"best_lag": None,
"correlation": None,
"direction": "none",
"confidence": "insufficient",
"data_points": 0,
"interpretation": "Keine zusammengeführten Ernährungs-/Körperdaten.",
"reason": "no_merged_rows",
}
protein_by: Dict[str, float] = {}
lbm_by: Dict[str, float] = {}
for row in merged:
ds = _iso_date_key(row.get("date"))
if not ds:
continue
pg = row.get("protein_g")
lm = row.get("lean_mass")
if pg is not None:
protein_by[ds] = float(pg)
if lm is not None:
lbm_by[ds] = float(lm)
best: Optional[Tuple[int, float, int]] = None
lag_details: List[Dict[str, Any]] = []
max_l = max(0, min(int(max_lag), 28))
for lag in range(1, max_l + 1):
xs: List[float] = []
ys: List[float] = []
for ds in sorted(protein_by.keys()):
if ds not in lbm_by:
continue
d0 = _parse_iso_to_date(ds)
if d0 is None:
continue
d1 = d0 + timedelta(days=lag)
ds1 = d1.isoformat()
if ds1 not in lbm_by:
continue
xs.append(protein_by[ds])
ys.append(lbm_by[ds1] - lbm_by[ds])
r = _pearson_r(xs, ys)
n_p = len(xs)
lag_details.append({"lag": lag, "n_pairs": n_p, "r": None if r is None else round(r, 4)})
if r is None:
continue
if best is None or abs(r) > abs(best[1]):
best = (lag, r, n_p)
if best is None:
return {
"best_lag": None,
"correlation": None,
"direction": "none",
"confidence": "insufficient",
"data_points": 0,
"interpretation": "Zu wenige Tage mit Protein und Magermasse (Caliper) für die gewählten Lags.",
"reason": "insufficient_pairs",
"lag_details": lag_details,
}
lag_b, r_b, n_b = best
direction = _direction_from_r(r_b)
conf = _lag_confidence(n_b, r_b)
interp = (
f"Protein (g/Tag) vs. Magermasse-Änderung nach {lag_b} Tagen: r ≈ {r_b:.2f} ({direction}). "
f"{n_b} gepaarte Tage."
)
return {
'best_lag': 0,
'correlation': 0.32, # Placeholder
'direction': 'positive',
'confidence': 'medium',
'data_points': 28
"best_lag": lag_b,
"correlation": round(r_b, 4),
"direction": direction,
"confidence": conf,
"data_points": n_b,
"interpretation": interp,
"lag_details": lag_details,
}
def _correlate_load_vitals(profile_id: str, vital: str, max_lag: int) -> Optional[Dict]:
"""
Correlate training load with HRV or RHR
Test lags: 1, 2, 3 days
Pearson: Tages-Trainingslast (Summe duration_min) vs. Vitals (HRV ms oder Ruhepuls)
am Kalendertag t+Lag (typisch: Belastung am Vortag, Vitalwert am Folgetag bei Lag 1).
"""
# TODO: Implement full correlation calculation
if vital == 'hrv':
col = "hrv" if vital == "hrv" else "resting_hr"
cutoff = (datetime.now() - timedelta(days=LAG_CORR_LOOKBACK_DAYS)).strftime("%Y-%m-%d")
with get_db() as conn:
cur = get_cursor(conn)
cur.execute(
"""
SELECT date::text AS d, COALESCE(SUM(duration_min), 0)::float AS minutes
FROM activity_log
WHERE profile_id = %s AND date >= %s::date
AND duration_min IS NOT NULL AND duration_min > 0
GROUP BY date
ORDER BY date
""",
(profile_id, cutoff),
)
load_rows = cur.fetchall()
cur.execute(
f"""
SELECT date::text AS d, {col}::float AS v
FROM vitals_baseline
WHERE profile_id = %s AND date >= %s::date AND {col} IS NOT NULL
ORDER BY date
""",
(profile_id, cutoff),
)
vit_rows = cur.fetchall()
load_by = {str(r["d"])[:10]: float(r["minutes"] or 0) for r in load_rows}
vital_by = {str(r["d"])[:10]: float(r["v"]) for r in vit_rows}
best: Optional[Tuple[int, float, int]] = None
lag_details: List[Dict[str, Any]] = []
max_l = max(0, min(int(max_lag), 28))
vlabel = "HRV (ms)" if vital == "hrv" else "Ruhepuls (bpm)"
for lag in range(0, max_l + 1):
xs: List[float] = []
ys: List[float] = []
for ds in sorted(load_by.keys()):
d0 = _parse_iso_to_date(ds)
if d0 is None:
continue
d1 = d0 + timedelta(days=lag)
ds1 = d1.isoformat()
if ds1 not in vital_by:
continue
xs.append(load_by[ds])
ys.append(vital_by[ds1])
r = _pearson_r(xs, ys)
n_p = len(xs)
lag_details.append({"lag": lag, "n_pairs": n_p, "r": None if r is None else round(r, 4)})
if r is None:
continue
if best is None or abs(r) > abs(best[1]):
best = (lag, r, n_p)
if best is None:
return {
'best_lag': 1,
'correlation': -0.38, # Negative = high load reduces HRV (expected)
'direction': 'negative',
'confidence': 'medium',
'data_points': 25
}
else: # rhr
return {
'best_lag': 1,
'correlation': 0.42, # Positive = high load increases RHR (expected)
'direction': 'positive',
'confidence': 'medium',
'data_points': 25
"best_lag": None,
"correlation": None,
"direction": "none",
"confidence": "insufficient",
"data_points": 0,
"interpretation": f"Zu wenige gepaarte Tage mit Training und {vlabel}.",
"reason": "insufficient_pairs",
"lag_details": lag_details,
"vital": vital,
}
lag_b, r_b, n_b = best
direction = _direction_from_r(r_b)
conf = _lag_confidence(n_b, r_b)
interp = (
f"Trainingsminuten/Tag vs. {vlabel} nach {lag_b} Tagen Lag: r ≈ {r_b:.2f} ({direction}). "
f"{n_b} Paare."
)
return {
"best_lag": lag_b,
"correlation": round(r_b, 4),
"direction": direction,
"confidence": conf,
"data_points": n_b,
"interpretation": interp,
"lag_details": lag_details,
"vital": vital,
}
# ============================================================================
# C4: Sleep vs. Recovery Correlation

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@ -13,6 +13,7 @@ from data_layer.correlations import calculate_lag_correlation, calculate_top_dri
from data_layer.fitness_viz import get_fitness_dashboard_viz_bundle
from data_layer.nutrition_viz import get_nutrition_history_viz_bundle
from data_layer.recovery_viz import get_recovery_dashboard_viz_bundle
from data_layer.utils import safe_float
def _take_kpis(tiles: Any, max_n: int = 4) -> List[Dict[str, Any]]:
@ -90,11 +91,9 @@ def get_history_overview_viz_bundle(profile_id: str, days: int) -> Dict[str, Any
c3_rhr = calculate_lag_correlation(profile_id, "load", "rhr", 14)
c3 = None
if c3_hrv and c3_rhr:
c3 = (
c3_hrv
if abs(float(c3_hrv.get("correlation") or 0)) >= abs(float(c3_rhr.get("correlation") or 0))
else c3_rhr
)
a1 = abs(safe_float(c3_hrv.get("correlation"), 0.0))
a2 = abs(safe_float(c3_rhr.get("correlation"), 0.0))
c3 = c3_hrv if a1 >= a2 else c3_rhr
if c3 is c3_hrv:
c3 = dict(c3)
c3["metric"] = "HRV"

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@ -9,7 +9,7 @@ from __future__ import annotations
from typing import Any, Dict, List, Optional
from db import get_db, get_cursor, r2d
from caliper_composition import compute_lean_fat_kg, nearest_weight_kg_from_map
from caliper_composition import as_date, compute_lean_fat_kg, nearest_weight_kg_from_map
def build_merged_daily_nutrition_body_rows(profile_id: str) -> List[Dict[str, Any]]:
@ -20,21 +20,42 @@ def build_merged_daily_nutrition_body_rows(profile_id: str) -> List[Dict[str, An
with get_db() as conn:
cur = get_cursor(conn)
cur.execute("SELECT * FROM nutrition_log WHERE profile_id=%s ORDER BY date", (profile_id,))
nutr = {r["date"]: r2d(r) for r in cur.fetchall()}
nutr: Dict[Any, Dict[str, Any]] = {}
for r in cur.fetchall():
rd = r2d(r)
dk = as_date(rd.get("date"))
if dk is not None:
nutr[dk] = rd
cur.execute("SELECT date, weight FROM weight_log WHERE profile_id=%s ORDER BY date", (profile_id,))
wlog = {r["date"]: r["weight"] for r in cur.fetchall()}
wlog: Dict[Any, Any] = {}
for r in cur.fetchall():
rd = r2d(r)
dk = as_date(rd.get("date"))
if dk is not None:
wlog[dk] = rd["weight"]
cur.execute(
"SELECT date, lean_mass, body_fat_pct FROM caliper_log WHERE profile_id=%s ORDER BY date",
(profile_id,),
)
cals = sorted([r2d(r) for r in cur.fetchall()], key=lambda x: x["date"])
cals = [r2d(r) for r in cur.fetchall()]
cals = sorted(
[c for c in cals if as_date(c.get("date")) is not None],
key=lambda x: as_date(x["date"]),
)
all_dates = sorted(set(list(nutr.keys()) + list(wlog.keys())))
# Alle Keys sind datetime.date — vermeidet TypeError bei Vergleichen (str vs date)
all_dates = sorted(set(nutr.keys()) | set(wlog.keys()))
mi = 0
last_cal: Dict[str, Any] = {}
cal_by_date: Dict[Any, Dict[str, Any]] = {}
for d in all_dates:
while mi < len(cals) and cals[mi]["date"] <= d:
while mi < len(cals):
cd = as_date(cals[mi].get("date"))
if cd is None:
mi += 1
continue
if cd > d:
break
last_cal = cals[mi]
mi += 1
if last_cal:

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@ -1115,6 +1115,9 @@ def get_weight_energy_correlation_chart(
corr_data = calculate_lag_correlation(profile_id, "energy_balance", "weight", max_lag)
if not corr_data or corr_data.get('correlation') is None:
msg = "Nicht genug Daten für Korrelationsanalyse"
if isinstance(corr_data, dict):
msg = str(corr_data.get("interpretation") or corr_data.get("reason") or msg)
return {
"chart_type": "scatter",
"data": {
@ -1123,14 +1126,15 @@ def get_weight_energy_correlation_chart(
},
"metadata": {
"confidence": "insufficient",
"data_points": 0,
"message": "Nicht genug Daten für Korrelationsanalyse"
"data_points": corr_data.get("data_points", 0) if isinstance(corr_data, dict) else 0,
"message": msg,
"lag_details": corr_data.get("lag_details") if isinstance(corr_data, dict) else None,
"tdee_kcal_used": corr_data.get("tdee_kcal_used") if isinstance(corr_data, dict) else None,
}
}
# Create lag vs correlation data for chart
# For simplicity, show best lag point as single data point
best_lag = corr_data.get('best_lag_days', 0)
# Ein Punkt: bestes Lag (max. |r|) — Berechnung in data_layer.correlations (Issue 53)
best_lag = corr_data.get('best_lag_days', corr_data.get('best_lag', 0))
correlation = corr_data.get('correlation', 0)
return {
@ -1150,10 +1154,13 @@ def get_weight_energy_correlation_chart(
},
"metadata": {
"confidence": corr_data.get('confidence', 'low'),
"correlation": round(correlation, 3),
"correlation": round(float(correlation), 3),
"best_lag_days": best_lag,
"interpretation": corr_data.get('interpretation', ''),
"data_points": corr_data.get('data_points', 0)
"data_points": corr_data.get('data_points', 0),
"lag_details": corr_data.get("lag_details"),
"tdee_kcal_used": corr_data.get("tdee_kcal_used"),
"layer_1": "correlations._correlate_energy_weight",
}
}
@ -1180,6 +1187,9 @@ def get_lbm_protein_correlation_chart(
corr_data = calculate_lag_correlation(profile_id, "protein", "lbm", max_lag)
if not corr_data or corr_data.get('correlation') is None:
msg = "Nicht genug Daten für LBM-Protein Korrelation"
if isinstance(corr_data, dict):
msg = str(corr_data.get("interpretation") or corr_data.get("reason") or msg)
return {
"chart_type": "scatter",
"data": {
@ -1188,12 +1198,13 @@ def get_lbm_protein_correlation_chart(
},
"metadata": {
"confidence": "insufficient",
"data_points": 0,
"message": "Nicht genug Daten für LBM-Protein Korrelation"
"data_points": corr_data.get("data_points", 0) if isinstance(corr_data, dict) else 0,
"message": msg,
"lag_details": corr_data.get("lag_details") if isinstance(corr_data, dict) else None,
}
}
best_lag = corr_data.get('best_lag_days', 0)
best_lag = corr_data.get('best_lag_days', corr_data.get('best_lag', 0))
correlation = corr_data.get('correlation', 0)
return {
@ -1213,10 +1224,12 @@ def get_lbm_protein_correlation_chart(
},
"metadata": {
"confidence": corr_data.get('confidence', 'low'),
"correlation": round(correlation, 3),
"correlation": round(float(correlation), 3),
"best_lag_days": best_lag,
"interpretation": corr_data.get('interpretation', ''),
"data_points": corr_data.get('data_points', 0)
"data_points": corr_data.get('data_points', 0),
"lag_details": corr_data.get("lag_details"),
"layer_1": "correlations._correlate_protein_lbm",
}
}
@ -1240,35 +1253,54 @@ def get_load_vitals_correlation_chart(
"""
profile_id = session['profile_id']
# Try HRV first
corr_hrv = calculate_lag_correlation(profile_id, "load", "hrv", max_lag)
corr_rhr = calculate_lag_correlation(profile_id, "load", "rhr", max_lag)
# Use whichever has stronger correlation
if corr_hrv and corr_rhr:
corr_data = corr_hrv if abs(corr_hrv.get('correlation', 0)) > abs(corr_rhr.get('correlation', 0)) else corr_rhr
metric_name = "HRV" if corr_data == corr_hrv else "RHR"
elif corr_hrv:
corr_data = corr_hrv
metric_name = "HRV"
elif corr_rhr:
corr_data = corr_rhr
metric_name = "RHR"
else:
def _abs_corr(c):
if not c or c.get("correlation") is None:
return -1.0
try:
return abs(float(c["correlation"]))
except (TypeError, ValueError):
return -1.0
if _abs_corr(corr_hrv) < 0 and _abs_corr(corr_rhr) < 0:
msg = "Nicht genug Daten für Load-Vitals Korrelation"
h_msg = corr_hrv.get("interpretation") if isinstance(corr_hrv, dict) else None
r_msg = corr_rhr.get("interpretation") if isinstance(corr_rhr, dict) else None
if h_msg or r_msg:
msg = f"HRV: {h_msg or ''} · RHR: {r_msg or ''}"
return {
"chart_type": "scatter",
"data": {
"labels": [],
"datasets": []
},
"data": {"labels": [], "datasets": []},
"metadata": {
"confidence": "insufficient",
"data_points": 0,
"message": "Nicht genug Daten für Load-Vitals Korrelation"
}
"message": msg,
"lag_details_hrv": corr_hrv.get("lag_details") if isinstance(corr_hrv, dict) else None,
"lag_details_rhr": corr_rhr.get("lag_details") if isinstance(corr_rhr, dict) else None,
},
}
best_lag = corr_data.get('best_lag_days', 0)
if _abs_corr(corr_hrv) >= _abs_corr(corr_rhr):
corr_data = corr_hrv
metric_name = "HRV"
else:
corr_data = corr_rhr
metric_name = "RHR"
if not corr_data or corr_data.get("correlation") is None:
return {
"chart_type": "scatter",
"data": {"labels": [], "datasets": []},
"metadata": {
"confidence": "insufficient",
"data_points": 0,
"message": str(corr_data.get("interpretation") or "Nicht genug Daten für Load-Vitals Korrelation"),
},
}
best_lag = corr_data.get('best_lag_days', corr_data.get('best_lag', 0))
correlation = corr_data.get('correlation', 0)
return {
@ -1288,11 +1320,13 @@ def get_load_vitals_correlation_chart(
},
"metadata": {
"confidence": corr_data.get('confidence', 'low'),
"correlation": round(correlation, 3),
"correlation": round(float(correlation), 3),
"best_lag_days": best_lag,
"metric": metric_name,
"interpretation": corr_data.get('interpretation', ''),
"data_points": corr_data.get('data_points', 0)
"data_points": corr_data.get('data_points', 0),
"lag_details": corr_data.get("lag_details"),
"layer_1": "correlations._correlate_load_vitals",
}
}

View File

@ -1205,6 +1205,34 @@ function chartJsScatterPoints(payload) {
return raw.map((p) => ({ x: Number(p.x), y: Number(p.y) }))
}
/** Backend metadata.lag_details: [{ lag, n_pairs, r }] — für Lag-Kurve L → r (C3: ggf. lag_details_hrv / lag_details_rhr) */
function lagDetailsToCurve(meta) {
let ld = meta?.lag_details
if (!Array.isArray(ld) || ld.length === 0) {
const m = String(meta?.metric || '').toUpperCase()
if (m === 'HRV' && Array.isArray(meta?.lag_details_hrv)) ld = meta.lag_details_hrv
else if (m === 'RHR' && Array.isArray(meta?.lag_details_rhr)) ld = meta.lag_details_rhr
else {
const h = meta?.lag_details_hrv
const r = meta?.lag_details_rhr
const hl = Array.isArray(h) ? h.length : 0
const rl = Array.isArray(r) ? r.length : 0
if (hl >= rl && hl > 0) ld = h
else if (rl > 0) ld = r
else ld = []
}
}
if (!Array.isArray(ld) || ld.length === 0) return []
return ld
.map((d) => ({
lag: Number(d?.lag),
r: d?.r == null || d?.r === '' ? null : Number(d.r),
n_pairs: d?.n_pairs != null ? Number(d.n_pairs) : null,
}))
.filter((d) => Number.isFinite(d.lag) && d.r != null && Number.isFinite(d.r))
.sort((a, b) => a.lag - b.lag)
}
function driverBarFromStatus(st) {
const s = String(st || '').toLowerCase()
if (s.includes('hinder')) return { v: -1, fill: 'var(--danger)' }
@ -1240,10 +1268,13 @@ function chartJsBarRows(payload, fallbackDrivers) {
function CorrelationScatterTile({ title, accent, payload }) {
const meta = payload?.metadata || {}
const pts = chartJsScatterPoints(payload)
const curve = lagDetailsToCurve(meta)
const hasChart = pts.length > 0 && meta.correlation != null
const r = Number(meta.correlation)
const strength =
!Number.isFinite(r) ? 'bad' : Math.abs(r) >= 0.35 ? 'good' : Math.abs(r) >= 0.15 ? 'warn' : 'bad'
const bestLag = meta.best_lag_days != null ? Number(meta.best_lag_days) : null
const maxLagAxis = curve.length ? Math.max(14, ...curve.map((d) => d.lag), bestLag || 0) : 28
return (
<div
@ -1257,12 +1288,76 @@ function CorrelationScatterTile({ title, accent, payload }) {
<div style={{ fontSize: 11, fontWeight: 700, color: 'var(--text1)', marginBottom: 4 }}>{title}</div>
<div style={{ fontSize: 10, color: 'var(--text3)', lineHeight: 1.35, marginBottom: 6 }}>
r = {meta.correlation != null ? Number(meta.correlation).toFixed(3) : '—'}
{meta.best_lag_days != null ? ` · Lag ${meta.best_lag_days} T` : ''}
{meta.best_lag_days != null ? ` · bestes Lag ${meta.best_lag_days} T` : ''}
{meta.metric ? ` · ${meta.metric}` : ''}
{meta.confidence ? ` · ${meta.confidence}` : ''}
</div>
{!hasChart ? (
<div style={{ fontSize: 11, color: 'var(--text3)' }}>{meta.message || 'Keine Daten für diese Korrelation.'}</div>
<>
<div style={{ fontSize: 11, color: 'var(--text3)', marginBottom: curve.length ? 8 : 0 }}>
{meta.message || 'Keine Daten für diese Korrelation.'}
</div>
{curve.length > 0 && (
<div style={{ fontSize: 10, color: 'var(--text3)', marginBottom: 6 }}>
Lag-Sweep (kein Lag mit 15 Paaren): r über Lags nur zur Einordnung.
</div>
)}
{curve.length > 0 && (
<ResponsiveContainer width="100%" height={120}>
<ComposedChart data={curve} margin={{ top: 4, right: 6, bottom: 4, left: -14 }}>
<CartesianGrid strokeDasharray="3 3" stroke="var(--border)" />
<XAxis dataKey="lag" type="number" domain={[0, maxLagAxis]} tick={{ fontSize: 9, fill: 'var(--text3)' }} label={{ value: 'Lag (T)', fontSize: 9, fill: 'var(--text3)', offset: -2 }} />
<YAxis dataKey="r" domain={[-1, 1]} tick={{ fontSize: 9, fill: 'var(--text3)' }} width={36} label={{ value: 'r', fontSize: 9, fill: 'var(--text3)', angle: -90 }} />
<ReferenceLine y={0} stroke="var(--text3)" strokeDasharray="4 4" />
<Tooltip
contentStyle={{ background: 'var(--surface)', border: '1px solid var(--border)', borderRadius: 8, fontSize: 10 }}
formatter={(v, _n, item) => [`r = ${Number(v).toFixed(3)}`, `Lag ${item?.payload?.lag} T · n = ${item?.payload?.n_pairs ?? '—'}`]}
/>
<Line type="monotone" dataKey="r" stroke={accent} strokeWidth={2} dot={{ r: 3, fill: accent }} isAnimationActive={false} />
</ComposedChart>
</ResponsiveContainer>
)}
</>
) : curve.length >= 1 ? (
<>
<div style={{ fontSize: 9, color: 'var(--text3)', marginBottom: 4 }}>
Kurve: Pearson-r je Lag (Tage); starker Punkt = gewähltes bestes Lag.
</div>
<ResponsiveContainer width="100%" height={132}>
<ComposedChart data={curve} margin={{ top: 4, right: 6, bottom: 4, left: -14 }}>
<CartesianGrid strokeDasharray="3 3" stroke="var(--border)" />
<XAxis dataKey="lag" type="number" domain={[0, maxLagAxis]} tick={{ fontSize: 9, fill: 'var(--text3)' }} />
<YAxis dataKey="r" domain={[-1, 1]} tick={{ fontSize: 9, fill: 'var(--text3)' }} width={36} />
<ReferenceLine y={0} stroke="var(--text3)" strokeDasharray="4 4" />
<Tooltip
contentStyle={{ background: 'var(--surface)', border: '1px solid var(--border)', borderRadius: 8, fontSize: 10 }}
formatter={(v, _n, item) => [`r = ${Number(v).toFixed(3)}`, `Lag ${item?.payload?.lag} T · n = ${item?.payload?.n_pairs ?? '—'}`]}
/>
<Line
type="monotone"
dataKey="r"
stroke={accent}
strokeWidth={2}
isAnimationActive={false}
dot={(props) => {
const { cx, cy, payload: pl } = props
if (cx == null || cy == null || !pl) return null
const isBest = bestLag != null && Number(pl.lag) === bestLag
return (
<circle
cx={cx}
cy={cy}
r={isBest ? 6 : 3.5}
fill={isBest ? 'var(--surface)' : accent}
stroke={isBest ? accent : 'none'}
strokeWidth={isBest ? 2.5 : 0}
/>
)
}}
/>
</ComposedChart>
</ResponsiveContainer>
</>
) : (
<ResponsiveContainer width="100%" height={118}>
<ScatterChart margin={{ top: 2, right: 4, bottom: 2, left: -18 }}>