mitai-jinkendo/backend/placeholder_registrations/activity_session_insights.py
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feat: Enhance nutrition and activity metrics with new data layers
- Added new functions for BMI and goal weight/body fat percentage retrieval in `body_metrics.py`.
- Introduced training frequency and inter-session gap calculations in `activity_metrics.py`.
- Updated placeholder registrations to include new metrics for nutrition and activity.
- Improved data handling in `placeholder_resolver.py` for better integration of new metrics.
- Enhanced documentation across modules to reflect the new functionalities.

These updates improve the accuracy and comprehensiveness of health and fitness assessments within the application.
2026-04-11 20:46:17 +02:00

185 lines
8.3 KiB
Python

"""
Registry: Trainings-Häufigkeit, Pausen zwischen Einheiten, wöchentliche Session-JSON (KI-Rohkontext).
"""
from placeholder_registry import (
PlaceholderMetadata,
MissingValuePolicy,
EvidenceType,
OutputType,
PlaceholderType,
register_placeholder,
)
def _ev(meta: PlaceholderMetadata, field: str, et: EvidenceType = EvidenceType.CODE_DERIVED):
meta.set_evidence(field, et)
def register_activity_session_insights():
md_freq = PlaceholderMetadata(
key="training_frequency_by_type_md",
category="Aktivität",
description=(
"Markdown-Tabelle: pro Trainingsart (activity_type) Sessions, Ø/Woche, "
"Dauer, kcal, HF, RPE, kcal/min (Intensitätsproxy)"
),
resolver_module="backend/placeholder_resolver.py",
resolver_function="get_training_frequency_by_type_md",
data_layer_module="backend/data_layer/activity_metrics.py",
data_layer_function="get_training_frequency_by_type_data",
source_tables=["activity_log"],
semantic_contract=(
"Aggregat über activity_log gruppiert nach activity_type (Roh-Label). "
"sessions_per_week = count / (days/7). avg_kcal_per_min = Summe kcal / Summe min."
),
business_meaning="KI: Häufigkeit & Belastung pro Sportart, Erholungs-/Überlastungs-Kontext",
unit="Markdown",
time_window="default 28 Tage",
output_type=OutputType.TEXT_SUMMARY,
placeholder_type=PlaceholderType.INTERPRETED,
format_hint="GitHub-Flavored Markdown-Tabelle",
example_output="| Art | n | Ø/Woche | … |",
minimum_data_requirements="Mindestens eine Session im Fenster",
quality_filter_policy=None,
confidence_logic="Wie calculate_confidence anhand Session-Anzahl",
missing_value_policy=MissingValuePolicy(
available=False,
value_raw=None,
missing_reason="no_data",
legacy_display="Keine Trainingsdaten",
),
known_limitations=(
"Gruppierung nach activity_type-String (Import-Namen), nicht nur training_type_id. "
"HF/RPE oft NULL je nach Quelle. Pausen-Analyse separater Platzhalter."
),
layer_1_decision="activity_metrics.get_training_frequency_by_type_data",
layer_2a_decision="get_training_frequency_by_type_md",
layer_2b_reuse_possible=True,
architecture_alignment="Phase 0c",
issue_53_alignment="Layer 1",
evidence={},
)
for f in (
"key", "category", "description", "resolver_module", "resolver_function",
"data_layer_module", "data_layer_function", "source_tables", "semantic_contract",
"unit", "time_window", "output_type", "placeholder_type", "format_hint",
"example_output", "minimum_data_requirements", "confidence_logic",
"missing_value_policy", "layer_1_decision", "layer_2a_decision",
"layer_2b_reuse_possible", "architecture_alignment", "issue_53_alignment",
):
_ev(md_freq, f)
_ev(md_freq, "business_meaning", EvidenceType.DRAFT_DERIVED)
_ev(md_freq, "known_limitations", EvidenceType.MIXED)
register_placeholder(md_freq)
md_gap = PlaceholderMetadata(
key="training_inter_session_gap_md",
category="Aktivität",
description="Median/Mittel/Min der Stunden zwischen aufeinanderfolgenden Trainingseinheiten",
resolver_module="backend/placeholder_resolver.py",
resolver_function="get_training_inter_session_gap_md",
data_layer_module="backend/data_layer/activity_metrics.py",
data_layer_function="get_training_inter_session_gap_data",
source_tables=["activity_log"],
semantic_contract=(
"Sessions chronologisch; Zeitstempel = date + start_time oder 12:00. "
"Lücken in Stunden zwischen aufeinanderfolgenden Starts."
),
business_meaning="KI: ausreichend Erholung zwischen Belastungen? Doppelbelastung?",
unit="Markdown",
time_window="default 28 Tage",
output_type=OutputType.TEXT_SUMMARY,
placeholder_type=PlaceholderType.INTERPRETED,
format_hint="Kurzer Markdown-Fließtext",
example_output="**Pause zwischen Trainings** …",
minimum_data_requirements="Mindestens 2 Sessions",
quality_filter_policy=None,
confidence_logic="calculate_confidence über Session-Anzahl",
missing_value_policy=MissingValuePolicy(
available=False,
value_raw=None,
missing_reason="insufficient_data",
legacy_display="Zu wenige Trainings",
),
known_limitations=(
"Kein Unterscheidung aktiv/passiv außerhalb activity_log. "
"Fehlende Uhrzeit verzerrt Reihenfolge am selben Tag nicht (nur ein künstlicher Mittag)."
),
layer_1_decision="activity_metrics.get_training_inter_session_gap_data",
layer_2a_decision="get_training_inter_session_gap_md",
layer_2b_reuse_possible=True,
architecture_alignment="Phase 0c",
issue_53_alignment="Layer 1",
evidence={},
)
for f in (
"key", "category", "description", "resolver_module", "resolver_function",
"data_layer_module", "data_layer_function", "source_tables", "semantic_contract",
"unit", "time_window", "output_type", "placeholder_type", "format_hint",
"example_output", "minimum_data_requirements", "confidence_logic",
"missing_value_policy", "layer_1_decision", "layer_2a_decision",
"layer_2b_reuse_possible", "architecture_alignment", "issue_53_alignment",
):
_ev(md_gap, f)
_ev(md_gap, "business_meaning", EvidenceType.DRAFT_DERIVED)
_ev(md_gap, "known_limitations", EvidenceType.MIXED)
register_placeholder(md_gap)
pj = PlaceholderMetadata(
key="training_sessions_recent_json",
category="Aktivität",
description=(
"JSON: letzte ISO-Kalenderwochen mit Einheiten (Datum, Art, Dauer, kcal, HF Ø/max, RPE, Kategorie)"
),
resolver_module="backend/placeholder_resolver.py",
resolver_function="_safe_json",
data_layer_module="backend/data_layer/activity_metrics.py",
data_layer_function="get_training_sessions_recent_weeks_data",
source_tables=["activity_log", "training_types"],
semantic_contract=(
"Struktur weeks[].week_iso, sessions[] mit Feldern für KI-Auswertung. "
"Default 4 ISO-Wochen zurück."
),
business_meaning="Rohkontext für wochenweise Auswertung (Erholung, Intensität) in der KI",
unit="JSON string",
time_window="4 ISO-Wochen (28 Tage Datenfenster)",
output_type=OutputType.JSON,
placeholder_type=PlaceholderType.RAW_DATA,
format_hint="JSON-Objekt als String",
example_output='{"weeks":[...],"meta":{...}}',
minimum_data_requirements="Optional Sessions; meta.confidence bei leer insufficient",
quality_filter_policy=None,
confidence_logic="meta.confidence aus Session-Anzahl",
missing_value_policy=MissingValuePolicy(
available=False,
value_raw=None,
missing_reason="no_data",
legacy_display="{}",
),
known_limitations=(
"Token-Länge bei vielen Sessions beachten. training_type_name nur bei gesetztem training_type_id."
),
layer_1_decision="activity_metrics.get_training_sessions_recent_weeks_data",
layer_2a_decision="_safe_json('training_sessions_recent_json')",
layer_2b_reuse_possible=True,
architecture_alignment="Phase 0c",
issue_53_alignment="Layer 1",
evidence={},
)
for f in (
"key", "category", "description", "resolver_module", "resolver_function",
"data_layer_module", "data_layer_function", "source_tables", "semantic_contract",
"unit", "time_window", "output_type", "placeholder_type", "format_hint",
"example_output", "minimum_data_requirements", "confidence_logic",
"missing_value_policy", "layer_1_decision", "layer_2a_decision",
"layer_2b_reuse_possible", "architecture_alignment", "issue_53_alignment",
):
_ev(pj, f)
_ev(pj, "business_meaning", EvidenceType.DRAFT_DERIVED)
_ev(pj, "known_limitations", EvidenceType.MIXED)
register_placeholder(pj)
register_activity_session_insights()