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1b9cd6d5e6 feat: Training Type Profiles - Phase 1.1 Foundation (#15)
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## Implemented

### DB-Schema (Migrations)
- Migration 013: training_parameters table (16 standard parameters)
- Migration 014: training_types.profile + activity_log.evaluation columns
- Performance metric calculations (avg_hr_percent, kcal_per_km)

### Backend - Rule Engine
- RuleEvaluator: Generic rule evaluation with 9 operators
  - gte, lte, gt, lt, eq, neq, between, in, not_in
  - Weighted scoring system
  - Pass strategies: all_must_pass, weighted_score, at_least_n

- IntensityZoneEvaluator: HR zone analysis
- TrainingEffectsEvaluator: Abilities development

### Backend - Master Evaluator
- TrainingProfileEvaluator: 7-dimensional evaluation
  1. Minimum Requirements (Quality Gates)
  2. Intensity Zones (HR zones)
  3. Training Effects (Abilities)
  4. Periodization (Frequency & Recovery)
  5. Performance Indicators (KPIs)
  6. Safety (Warnings)
  7. AI Context (simplified for MVP)

- evaluation_helper.py: Utilities for loading + saving
- routers/evaluation.py: API endpoints
  - POST /api/evaluation/activity/{id}
  - POST /api/evaluation/batch
  - GET /api/evaluation/parameters

### Integration
- main.py: Router registration

## TODO (Phase 1.2)
- Auto-evaluation on activity INSERT/UPDATE
- Admin-UI for profile editing
- User-UI for results display

## Testing
-  Syntax checks passed
- 🔲 Runtime testing pending (after auto-evaluation)

Part of Issue #15 - Training Type Profiles System
2026-03-23 10:49:26 +01:00