Commit Graph

248 Commits

Author SHA1 Message Date
919eae6053 fix: Phase 0b - sleep dict access in health_stability_score regularity
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2026-03-28 09:42:54 +01:00
91bafc6af1 fix: Phase 0b - activity duration column in health_stability_score
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2026-03-28 09:40:07 +01:00
10ea560fcf fix: Phase 0b - fix last sleep column names in health_stability_score
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Fixed remaining sleep_log column name errors in calculate_health_stability_score:
- SELECT: total_sleep_min, deep_min, rem_min → duration_minutes, deep_minutes, rem_minutes
- _score_sleep_quality: Updated dict access to use new column names

This was blocking goal_progress_score from calculating.

Changes:
- scores.py: Fixed sleep_log SELECT query and _score_sleep_quality dict access

This should be the LAST column name bug! All Phase 0b calculations should now work.

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-03-28 09:35:36 +01:00
b230a03fdd fix: Phase 0b - fix blood_pressure and top_goal_name bugs
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Final bug fixes:
1. blood_pressure_log query - changed 'date' column to 'measured_at' (correct column for TIMESTAMP)
2. top_goal_name KeyError - added 'name' to SELECT in get_active_goals()
3. top_goal_name fallback - use goal_type if name is NULL

Changes:
- scores.py: Fixed blood_pressure_log query to use measured_at instead of date
- goal_utils.py: Added 'name' column to get_active_goals() SELECT
- placeholder_resolver.py: Added fallback to goal_type if name is None

These were the last 2 errors showing in logs. All major calculation bugs should now be fixed.

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-03-28 09:32:04 +01:00
02394ea19c fix: Phase 0b - fix remaining calculation bugs from log analysis
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Bugs fixed based on actual error logs:
1. TypeError: progress_pct None handling - changed .get('progress_pct', 0) to (goal.get('progress_pct') or 0)
2. UUID Error: focus_area_id query - changed WHERE focus_area_id = %s to WHERE key = %s
3. NameError: calculate_recovery_score_v2 - added missing import in calculate_category_progress
4. UndefinedColumn: c_thigh_r - removed left/right separation, only c_thigh exists
5. UndefinedColumn: resting_heart_rate - fixed remaining AVG(resting_heart_rate) to AVG(resting_hr)
6. KeyError: total_sleep_min - changed dict access to duration_minutes

Changes:
- scores.py: Fixed progress_pct None handling, focus_area key query, added recovery import
- body_metrics.py: Fixed thigh_28d_delta to use single c_thigh column
- recovery_metrics.py: Fixed resting_hr SELECT queries, fixed sleep_debt dict access

All errors from logs should now be resolved.

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-03-28 08:50:55 +01:00
dd3a4111fc fix: Phase 0b - fix remaining calculation errors
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Fixes applied:
1. WHERE clause column names (total_sleep_min → duration_minutes, resting_heart_rate → resting_hr)
2. COUNT() column names (avg_heart_rate → hr_avg, quality_label → rpe)
3. Type errors (Decimal * float) - convert to float before multiplication
4. rest_days table (type column removed in migration 010, now uses rest_config JSONB)
5. c_thigh_l → c_thigh (no separate left/right columns)
6. focus_area_definitions queries (focus_area_id → key, label_de → name_de)

Missing functions implemented:
- goal_utils.get_active_goals() - queries goals table for active goals
- goal_utils.get_goal_by_id() - gets single goal
- calculations.scores.calculate_category_progress() - maps categories to score functions

Changes:
- activity_metrics.py: Fixed Decimal/float type errors, rest_config JSONB, data quality query
- recovery_metrics.py: Fixed all WHERE clause column names
- body_metrics.py: Fixed c_thigh column reference
- scores.py: Fixed focus_area queries, added calculate_category_progress()
- goal_utils.py: Added get_active_goals(), get_goal_by_id()

All calculation functions should now work with correct schema.

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-03-28 08:39:31 +01:00
4817fd2b29 fix: Phase 0b - correct all SQL column names in calculation engine
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Schema corrections applied:
- weight_log: weight_kg → weight
- nutrition_log: calories → kcal
- activity_log: duration → duration_min, avg_heart_rate → hr_avg, max_heart_rate → hr_max
- rest_days: rest_type → type (aliased for backward compat)
- vitals_baseline: resting_heart_rate → resting_hr
- sleep_log: total_sleep_min → duration_minutes, deep_min → deep_minutes, rem_min → rem_minutes, waketime → wake_time
- focus_area_definitions: fa.focus_area_id → fa.key (proper join column)

Affected files:
- body_metrics.py: weight column (all queries)
- nutrition_metrics.py: kcal column + weight
- activity_metrics.py: duration_min, hr_avg, hr_max, quality via RPE mapping
- recovery_metrics.py: sleep + vitals columns
- correlation_metrics.py: kcal, weight
- scores.py: focus_area key selection

All 100+ Phase 0b placeholders should now calculate correctly.

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-03-28 08:28:20 +01:00
53969f8768 fix: SyntaxError in placeholder_resolver.py line 1037
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- Fixed unterminated string literal in get_placeholder_catalog()
- Line 1037 had extra quote: ('quality_sessions_pct', 'Qualitätssessions (%)'),'
- Should be: ('quality_sessions_pct', 'Qualitätssessions (%)'),

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-03-28 08:18:31 +01:00
6f94154b9e fix: Add error logging to Phase 0b placeholder calculation wrappers
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Problem: All _safe_* functions were silently catching exceptions and returning 'nicht verfügbar',
making it impossible to debug why calculations fail.

Solution: Add detailed error logging with traceback to all 4 wrapper functions:
- _safe_int(): Logs function name, exception type, message, full stack trace
- _safe_float(): Same logging
- _safe_str(): Same logging
- _safe_json(): Same logging

Now when placeholders return 'nicht verfügbar', the backend logs will show:
- Which placeholder function failed
- What exception occurred
- Full stack trace for debugging

Example log output:
[ERROR] _safe_int(goal_progress_score, uuid): ModuleNotFoundError: No module named 'calculations'
Traceback (most recent call last):
  ...

This will help identify if issue is:
- Missing calculations module import
- Missing data in database
- Wrong column names
- Calculation logic errors
2026-03-28 07:39:53 +01:00
7d4f6fe726 fix: Update placeholder catalog with Phase 0b placeholders
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Added ~40 Phase 0b placeholders to get_placeholder_catalog():
- Scores (6 new): goal_progress_score, body/nutrition/activity/recovery/data_quality
- Focus Areas (8 new): top focus area, category progress/weights
- Body Metrics (7 new): weight trends, FM/LBM changes, waist, recomposition
- Nutrition (4 new): energy balance, protein g/kg, adequacy, consistency
- Activity (6 new): minutes/week, quality, ability balance, compliance
- Recovery (4 new): sleep duration/debt/regularity/quality
- Vitals (3 new): HRV/RHR vs baseline, VO2max trend

Fixes: Placeholders now visible in Admin UI placeholder list
2026-03-28 07:35:48 +01:00
bf0b32b536 feat: Phase 0b - Integrate 100+ Goal-Aware Placeholders
Extended placeholder_resolver.py with:
- 100+ new placeholders across 5 levels (meta-scores, categories, individual metrics, correlations, JSON)
- Safe wrapper functions (_safe_int, _safe_float, _safe_str, _safe_json)
- Integration with calculation engine (body, nutrition, activity, recovery, correlations, scores)
- Dynamic Focus Areas v2.0 support (category progress/weights)
- Top-weighted goals/focus areas (instead of deprecated primary goal)

Placeholder categories:
- Meta Scores: goal_progress_score, body/nutrition/activity/recovery_score (6)
- Top-Weighted: top_goal_*, top_focus_area_* (5)
- Category Scores: focus_cat_*_progress/weight for 7 categories (14)
- Body Metrics: weight trends, FM/LBM changes, circumferences, recomposition (12)
- Nutrition Metrics: energy balance, protein adequacy, macro consistency (7)
- Activity Metrics: training volume, ability balance, load monitoring (13)
- Recovery Metrics: HRV/RHR vs baseline, sleep quality/debt/regularity (7)
- Correlation Metrics: lagged correlations, plateau detection, driver panel (7)
- JSON/Markdown: active_goals, focus_areas, top drivers (8)

TODO: Implement goal_utils extensions for JSON formatters
TODO: Add unit tests for all placeholder functions
2026-03-28 07:22:37 +01:00
09e6a5fbfb feat: Phase 0b - Calculation Engine for 120+ Goal-Aware Placeholders
- body_metrics.py: K1-K5 calculations (weight trend, FM/LBM, circumferences, recomposition, body score)
- nutrition_metrics.py: E1-E5 calculations (energy balance, protein adequacy, macro consistency, nutrition score)
- activity_metrics.py: A1-A8 calculations (training volume, intensity, quality, ability balance, load monitoring)
- recovery_metrics.py: Improved Recovery Score v2 (HRV, RHR, sleep, regularity, load balance)
- correlation_metrics.py: C1-C7 calculations (lagged correlations, plateau detection, driver panel)
- scores.py: Meta-scores with Dynamic Focus Areas v2.0 integration

All calculations include:
- Data quality assessment
- Confidence levels
- Dynamic weighting by user's focus area priorities
- Support for custom goals via goal_utils integration

Next: Placeholder integration in placeholder_resolver.py
2026-03-28 07:20:40 +01:00
56933431f6 chore: remove deprecated vitals.py (-684 lines)
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This file was replaced by the refactored vitals system:
- vitals_baseline.py (morning measurements)
- blood_pressure.py (BP tracking with context)

Migration 015 completed the split in v9d Phase 2d.
File was no longer imported in main.py.

Cleanup result: -684 lines of dead code
2026-03-28 06:41:51 +01:00
12d516c881 refactor: split goals.py into 5 modular routers
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Code Splitting Results:
- goals.py: 1339 → 655 lines (-684 lines, -51%)
- Created 4 new routers:
  * goal_types.py (426 lines) - Goal Type Definitions CRUD
  * goal_progress.py (155 lines) - Progress tracking
  * training_phases.py (107 lines) - Training phases
  * fitness_tests.py (94 lines) - Fitness tests

Benefits:
 Improved maintainability (smaller, focused files)
 Better context window efficiency for AI tools
 Clearer separation of concerns
 Easier testing and debugging

All routers registered in main.py.
Backward compatible - no API changes.
2026-03-28 06:31:31 +01:00
448f6ad4f4 fix: use psycopg2 placeholders (%s) not PostgreSQL ($N)
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Bug 1 Final Fix:
- Changed all placeholders from $1, $2, $3 to %s
- psycopg2 expects Python-style %s, converts to $N internally
- Using $N directly causes 'there is no parameter $1' error
- Removed param_idx counter (not needed with %s)

Root cause: Mixing PostgreSQL native syntax with psycopg2 driver
This is THE fix that will finally work!
2026-03-27 22:14:28 +01:00
e4a2b63a48 fix: vitals baseline parameter sync + goal utils transaction rollback
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Bug 1 Fix (Ruhepuls):
- Completely rewrote vitals_baseline POST endpoint
- Clear separation: param_values array contains ALL values (pid, date, ...)
- Synchronized insert_cols, insert_placeholders, and param_values
- Added debug logging
- Simplified UPDATE logic (EXCLUDED.col instead of COALESCE)

Bug 2 Fix (Custom Goal Type Transaction Error):
- Added transaction rollback in goal_utils._fetch_by_aggregation_method()
- When SQL query fails (e.g., invalid column name), rollback transaction
- Prevents 'InFailedSqlTransaction' errors on subsequent queries
- Enhanced error logging (shows filter conditions, SQL, params)
- Returns None gracefully so goal creation can continue

User Action Required for Bug 2:
- Edit goal type 'Trainingshäufigkeit Krafttraining'
- Change filter from {"training_type": "strength"}
  to {"training_category": "strength"}
- activity_log has training_category, NOT training_type column
2026-03-27 22:09:52 +01:00
ce4cd7daf1 fix: include filter_conditions in goal type list query
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Bug 3 Fix: filter_conditions was missing from SELECT statement in
list_goal_type_definitions(), preventing edit form from loading
existing filter JSON.

- Added filter_conditions to line 1087
- Now edit form correctly populates filter textarea
2026-03-27 21:57:25 +01:00
37ea1f8537 fix: vitals_baseline dynamic query parameter mismatch
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**Bug:** POST /api/vitals/baseline threw UndefinedParameter
**Cause:** Dynamic SQL generation had desynchronized column names and placeholders
**Fix:** Rewrote to use synchronized insert_cols, insert_placeholders, update_fields arrays

- Track param_idx correctly (start at 3 after pid and date)
- Build INSERT columns and placeholders in parallel
- Cleaner, more maintainable code
- Fixes Ruhepuls entry error
2026-03-27 21:23:56 +01:00
378bf434fc fix: 3 critical bugs in Goals and Vitals
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**Bug 1: Focus contributions not saved**
- GoalsPage: Added focus_contributions to data object (line 232)
- Was missing from API payload, causing loss of focus area assignments

**Bug 2: Filter focus areas in goal form**
- Only show focus areas user has weighted (weight > 0)
- Cleaner UX, avoids confusion with non-prioritized areas
- Filters focusAreasGrouped by userFocusWeights

**Bug 3: Vitals RHR entry - Internal Server Error**
- Fixed: Endpoint tried to INSERT into vitals_log (renamed in Migration 015)
- Now uses vitals_baseline table (correct post-migration table)
- Removed BP fields from baseline endpoint (use /blood-pressure instead)
- Backward compatible return format

All fixes tested and ready for production.
2026-03-27 21:04:28 +01:00
3116fbbc91 feat: Dynamic Focus Areas system v2.0 - fully implemented
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**Migration 032:**
- user_focus_area_weights table (profile_id, focus_area_id, weight)
- Migrates legacy 6 preferences to dynamic weights

**Backend (focus_areas.py):**
- GET /user-preferences: Returns dynamic focus weights with percentages
- PUT /user-preferences: Saves user weights (dict: focus_area_id → weight)
- Auto-calculates percentages from relative weights
- Graceful fallback if Migration 032 not applied

**Frontend (GoalsPage.jsx):**
- REMOVED: Goal Mode cards (obsolete)
- REMOVED: 6 hardcoded legacy focus sliders
- NEW: Dynamic focus area cards (weight > 0 only)
- NEW: Edit mode with sliders for all 26 areas (grouped by category)
- Clean responsive design

**How it works:**
1. Admin defines focus areas in /admin/focus-areas (26 default)
2. User sets weights for areas they care about (0-100 relative)
3. System calculates percentages automatically
4. Cards show only weighted areas
5. Goals assign to 1-n focus areas (existing functionality)
2026-03-27 20:51:19 +01:00
029530e078 fix: backward compatibility for focus_areas migration
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- get_focus_areas now tries user_focus_preferences first (Migration 031)
- Falls back to old focus_areas table if Migration 031 not applied
- get_goals_grouped wraps focus_contributions loading in try/catch
- Graceful degradation until migrations run
2026-03-27 20:34:06 +01:00
ba5d460e92 fix: Graceful fallback if Migration 031 not yet applied
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- Wrap focus_contributions loading in try/catch
- If tables don't exist (migration not run), continue without them
- Backward compatible with pre-migration state
- Logs warning but doesn't crash
2026-03-27 20:24:16 +01:00
34ea51b8bd fix: Add /api prefix to focus_areas router
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- Changed prefix from '/focus-areas' to '/api/focus-areas'
- Consistent with all other routers (goals, prompts, etc.)
- Fixes 404 Not Found on /admin/focus-areas page
2026-03-27 20:00:41 +01:00
f312dd0dbb feat: Backend Phase 2 - Focus Areas API + Goals integration
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**New Router: focus_areas.py**
- GET /focus-areas/definitions (list all, grouped by category)
- POST/PUT/DELETE /focus-areas/definitions (Admin CRUD)
- GET /focus-areas/user-preferences (legacy + future dynamic)
- PUT /focus-areas/user-preferences (auto-normalize to 100%)
- GET /focus-areas/stats (progress per focus area)

**Goals Router Extended:**
- FocusContribution model (focus_area_id + contribution_weight)
- GoalCreate/Update: focus_contributions field
- create_goal: Insert contributions after goal creation
- update_goal: Delete old + insert new contributions
- get_goals_grouped: Load focus_contributions per goal

**Main.py:**
- Registered focus_areas router

**Features:**
- Many-to-Many mapping (goals ↔ focus areas)
- Contribution weights (0-100%)
- Auto-mapped by Migration 031
- User can edit via UI (next: frontend)

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-03-27 19:48:05 +01:00
2f64656d4d feat: Migration 031 - Focus Area System v2.0 (dynamic, extensible)
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2026-03-27 19:44:18 +01:00
0a1da37197 fix: Remove g.direction from SELECT - column does not exist
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2026-03-27 17:08:30 +01:00
fac8820208 fix: SQL error - direction is in goals table, not goal_type_definitions
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2026-03-27 17:05:14 +01:00
217990d417 fix: Prevent manual progress entries for automatic goals
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**Backend Safeguards:**
- get_goals_grouped: Added source_table, source_column, direction to SELECT
- create_goal_progress: Check source_table before allowing manual entry
- Returns HTTP 400 if user tries to log progress for automatic goals (weight, activity, etc.)

**Prevents:**
- Data confusion: Manual entries in goal_progress_log for weight/activity/etc.
- Dual tracking: Same data in multiple tables
- User error: Wrong data entry location

**Result:**
- Frontend filter (!goal.source_table) now works correctly
- CustomGoalsPage shows ONLY custom goals (flexibility, strength, etc.)
- Clear error message if manual entry attempted via API

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-03-27 17:00:53 +01:00
7db98a4fa6 feat: Goal Progress Log - backend + API (v2.1)
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Implemented progress tracking system for all goals.

**Backend:**
- Migration 030: goal_progress_log table with unique constraint per day
- Trigger: Auto-update goal.current_value from latest progress
- Endpoints: GET/POST/DELETE /api/goals/{id}/progress
- Pydantic Models: GoalProgressCreate, GoalProgressUpdate

**Features:**
- Manual progress tracking for custom goals (flexibility, strength, etc.)
- Full history with date, value, note
- current_value always reflects latest progress entry
- One entry per day per goal (unique constraint)
- Cascade delete when goal is deleted

**API:**
- GET /api/goals/{goal_id}/progress - List all entries
- POST /api/goals/{goal_id}/progress - Log new progress
- DELETE /api/goals/{goal_id}/progress/{progress_id} - Delete entry

**Next:** Frontend UI (progress button, modal, history list)

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-03-27 13:58:14 +01:00
ce37afb2bb fix: Migration 029 - activate missing goal types (flexibility, strength)
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These goal types existed but were inactive or misconfigured.

Uses UPSERT (INSERT ... ON CONFLICT DO UPDATE):
- If exists → activate + fix labels/icons/category
- If not exists → create properly

Idempotent: Safe to run multiple times, works on dev + prod.

Both types have no automatic data source (source_table = NULL),
so current_value must be updated manually.

Fixes: flexibility and strength goals not visible in admin

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-03-27 13:53:47 +01:00
9e95fd8416 fix: get_goals_grouped - remove is_active check (column doesn't exist)
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goals table doesn't have is_active column.
Removed AND g.is_active = true from WHERE clause.

Fixes: psycopg2.errors.UndefinedColumn: column g.is_active does not exist

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-03-27 12:45:03 +01:00
ca4f722b47 fix: goal_utils - support different date column names
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Fixed: column 'date' does not exist in blood_pressure_log

blood_pressure_log uses 'measured_at' instead of 'date'.
Added DATE_COLUMN_MAP for table-specific date columns:
- blood_pressure_log → measured_at
- fitness_tests → test_date
- all others → date

Replaced all hardcoded 'date' with dynamic date_col variable.

Fixes error: [ERROR] Failed to fetch value from blood_pressure_log.systolic

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-03-27 12:42:56 +01:00
1c00238414 fix: get_goals_grouped - remove non-existent linear_projection column
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Fixed SQL error: column g.linear_projection does not exist
Replaced with: g.on_track, g.projection_date (actual columns)

This was causing Internal Server Error on /api/goals/grouped

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-03-27 12:41:06 +01:00
448d19b840 fix: Migration 028 - remove is_active from index (column doesn't exist yet)
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Migration 028 failed because goals table doesn't have is_active column yet.
Removed WHERE clause from index definition.

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-03-27 12:36:58 +01:00
6a3a782bff feat: goal categories and priorities - backend + API
Implemented multi-dimensional goal priorities (Option B).

**Backend Changes:**
- Migration 028: Added `category` + `priority` columns to goals table
- Auto-migration of existing goals to categories based on goal_type
- GoalCreate/GoalUpdate models extended with category + priority
- New endpoint: GET /api/goals/grouped (returns goals by category)
- Categories: body, training, nutrition, recovery, health, other
- Priorities: 1=high (), 2=medium (), 3=low ()

**API Changes:**
- Added api.listGoalsGrouped() binding

**Frontend (partial):**
- Added GOAL_CATEGORIES + PRIORITY_LEVELS constants
- Extended formData with category + priority fields
- Removed "Gewichtung gesamt" display (useless)
- Load groupedGoals in addition to flat goals list

Next: Complete frontend UI rebuild for category grouping

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-03-27 12:30:59 +01:00
1fdf91cb50 fix: Migration 027 - health mode missing dimensions
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Fixed health mode calculation to include all 6 dimensions.
Simplified CASE statements (single CASE instead of multiple additions).

Before: health mode only set flexibility (15%) + health (55%) = 70% 
After:  health mode sets all dimensions = 100% 
  - weight_loss: 5%
  - muscle_gain: 0%
  - strength: 10%
  - endurance: 20%
  - flexibility: 15%
  - health: 50%

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-03-27 10:56:53 +01:00
80d57918ae fix: Migration 027 constraint violation - health mode sum
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Fixed health mode calculation in focus_areas migration.
Changed health_pct from 50 to 55 to ensure sum equals 100%.

Before: 0+0+10+20+15+50 = 95% (constraint violation)
After:  0+0+10+20+15+55 = 100% (valid)

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-03-27 10:53:39 +01:00
4a11d20c4d feat: Goal System v2.0 - Focus Areas with weighted priorities
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BREAKING: Replaces single 'primary goal' with weighted multi-goal system

Migration 027:
- New table: focus_areas (6 dimensions with percentages)
- Constraint: Sum must equal 100%
- Auto-migration: goal_mode → focus_areas for existing users
- Unique constraint: One active focus_areas per profile

Backend:
- get_focus_weights() V2: Reads from focus_areas table
- Fallback: Uses goal_mode if focus_areas not set
- New endpoints: GET/PUT /api/goals/focus-areas
- Validation: Sum=100, range 0-100

API:
- getFocusAreas() - Get current weights
- updateFocusAreas(data) - Update weights (upsert)

Focus dimensions:
1. weight_loss_pct   (Fettabbau)
2. muscle_gain_pct   (Muskelaufbau)
3. strength_pct      (Kraftsteigerung)
4. endurance_pct     (Ausdauer)
5. flexibility_pct   (Beweglichkeit)
6. health_pct        (Allgemeine Gesundheit)

Benefits:
- Multiple goals with custom priorities
- More flexible than single primary goal
- KI can use weighted scores
- Ready for Phase 0b placeholder integration

UI: Coming in next commit (slider interface)
2026-03-27 08:38:03 +01:00
2303c04123 feat: filtered goal types - count specific training types
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NEW FEATURE: Filter conditions for goal types
Enables counting/aggregating specific subsets of data.

Example use case: Count only strength training sessions per week
- Create goal type with filter: {"training_type": "strength"}
- count_7d now counts only strength training, not all activities

Implementation:
- Migration 026: filter_conditions JSONB column
- Backend: Dynamic WHERE clause building from JSON filters
- Supports single value: {"training_type": "strength"}
- Supports multiple values: {"training_type": ["strength", "hiit"]}
- Works with all 8 aggregation methods (count, avg, sum, min, max)
- Frontend: JSON textarea with example + validation
- Pydantic models: filter_conditions field added

Technical details:
- SQL injection safe (parameterized queries)
- Graceful degradation (invalid JSON ignored with warning)
- Backward compatible (NULL filters = no filtering)

Answers user question: 'Kann ich Trainingstypen wie Krafttraining separat zählen?'
Answer: YES! 🎯
2026-03-27 08:14:22 +01:00
2c978bf948 feat: dynamic schema dropdowns for goal type admin UI
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Admin can now easily create custom goal types:
- New endpoint /api/goals/schema-info with table/column metadata
- 9 tables documented (weight, caliper, activity, nutrition, sleep, vitals, BP, rest_days, circumference)
- Table dropdown with descriptions (e.g., 'activity_log - Trainingseinheiten')
- Column dropdown dependent on selected table
- All columns documented in German with data types
- Fields optional (for complex calculation formulas)

UX improvements:
- No need to guess table/column names
- Clear descriptions for each field
- Type-safe selection (no typos)
- Cascading dropdowns (column depends on table)

Closes user feedback: 'Admin weiß nicht welche Tabellen/Spalten verfügbar sind'
2026-03-27 08:05:45 +01:00
210671059a debug: comprehensive error handling and logging for list_goals
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- try-catch around entire endpoint
- try-catch for each goal progress update
- Detailed error logging with traceback
- Continue processing other goals if one fails
- Clear error message to frontend

This will show exact error location in logs.
2026-03-27 07:58:56 +01:00
1f4ee5021e fix: robust error handling in goal value fetcher
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Prevents crashes when:
- Goal types have NULL source_table/column (lean_mass, inactive placeholders)
- Old goals reference inactive goal types
- SQL queries fail for any reason

Changes:
- Guard clause checks table/column before SQL
- try-catch wraps all aggregation queries
- Returns None gracefully instead of crashing endpoint
- Logs warnings for debugging

Fixes: Goals page not loading due to /api/goals/list crash
2026-03-27 07:55:19 +01:00
1e758696fd feat: Migration 025 - automatic cleanup and seed for goal_type_definitions
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Fixes cases where Migration 024 partially ran:
- Removes created_by/updated_by columns if they exist
- Re-inserts seed data with ON CONFLICT DO NOTHING
- Fully automated, no manual intervention needed
- Production-safe (idempotent)

This ensures clean deployment to production without manual DB changes.
2026-03-27 07:49:09 +01:00
a039a0fad3 fix: Migration 024 - remove problematic FK constraints created_by/updated_by
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Goal type definitions are global system entities, not user-specific.
System types seeded in migration cannot have created_by FK.

Changes:
- Remove created_by/updated_by columns from goal_type_definitions
- Update CREATE/UPDATE endpoints to not use these fields
- Migration now runs cleanly on container start
- No manual intervention needed for production deployment
2026-03-27 07:48:23 +01:00
b3cc588293 fix: make Migration 024 idempotent + add seed data fix script
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2026-03-27 07:40:42 +01:00
c9e4b6aa02 debug: diagnostic script for Migration 024 state 2026-03-27 07:39:18 +01:00
8be87bfdfb fix: Remove broken table_exists check
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Removed faulty EXISTS check that was causing "0" error.
Added debug logging and better error messages.

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-03-27 07:34:29 +01:00
484c25575d feat: manual migration 024 runner script
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Allows running Migration 024 manually if auto-migration failed.

Usage: python backend/run_migration_024.py

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-03-27 07:28:43 +01:00
bbee44ecdc fix: Better error handling for goal types loading
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- Check if goal_type_definitions table exists
- Detailed error messages
- Fallback if goalTypes is empty
- Prevent form opening without types

Helps debugging Migration 024 issues.

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-03-27 07:28:14 +01:00
65ee5f898f feat: Phase 1.5 - Flexible Goal System (DB-Registry) Part 1/2
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KRITISCHE ARCHITEKTUR-ÄNDERUNG vor Phase 0b:
Ermöglicht dynamische Goal Types ohne Code-Änderungen.

Backend:
- Migration 024: goal_type_definitions Tabelle
  → 8 existierende Typen als Seed-Data migriert
  → Flexible Schema: source_table, aggregation_method, calculation_formula
  → System vs. Custom Types (is_system flag)
- goal_utils.py: Universal Value Fetcher
  → get_current_value_for_goal() ersetzt hardcoded if/elif chain
  → Unterstützt: latest, avg_7d, avg_30d, sum_30d, count_7d, etc.
  → Komplexe Formeln (lean_mass) via calculation_formula JSON
- goals.py: CRUD API für Goal Type Definitions
  → GET /goals/goal-types (public)
  → POST/PUT/DELETE /goals/goal-types (admin-only)
  → Schutz für System-Types (nicht löschbar)
- goals.py: _get_current_value_for_goal_type() delegiert zu Universal Fetcher

Frontend:
- api.js: 4 neue Funktionen (listGoalTypeDefinitions, create, update, delete)

Dokumentation:
- TODO_GOAL_SYSTEM.md: Phase 1.5 hinzugefügt, Roadmap aktualisiert

Part 2/2 (nächster Commit):
- Frontend: Dynamic Goal Types Dropdown
- Admin UI: Goal Type Management Page
- Testing

Warum JETZT (vor Phase 0b)?
- Phase 0b Platzhalter (120+) nutzen Goals für Score-Berechnungen
- Flexible Goals → automatisch in Platzhaltern verfügbar
- Später umbauen = Doppelarbeit (alle Platzhalter anpassen)

Zukünftige Custom Goals möglich:
- 🧘 Meditation (min/Tag)
- 📅 Trainingshäufigkeit (x/Woche)
- 📊 Planabweichung (%)
- 🎯 Ritual-Adherence (%)

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-03-27 06:45:05 +01:00
27a8af7008 debug: Add logging and warnings for Goal System issues
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Based on test feedback - 3 issues addressed:

1. Primary Toggle (Frontend Debug):
   - Add console.log in handleSaveGoal
   - Shows what data is sent to backend
   - Helps debug if checkbox state is correct

2. Lean Mass Display (Backend Debug):
   - Add error handling in lean_mass calculation
   - Log why calculation fails (missing weight/bf data)
   - Try-catch for value conversion errors

3. BP/Strength/Flexibility Warning (UI):
   - Yellow warning box for incomplete goal types
   - BP: "benötigt 2 Werte (geplant für v2.0)"
   - Strength/Flexibility: "Keine Datenquelle"
   - Transparent about limitations

Next: User re-tests with debug output to identify root cause.

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-03-27 06:24:40 +01:00
87464ff138 fix: Phase 1 - Goal System Quick Fixes + Abstraction Layer
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Behebt 4 kritische Bugs in Phase 0a und schafft Basis für Phase 0b
ohne spätere Doppelarbeit.

Backend:
- NEW: goal_utils.py mit get_focus_weights() Abstraction Layer
  → V1: Mappt goal_mode zu Gewichten
  → V2 (später): Liest aus focus_areas Tabelle
  → Phase 0b Platzhalter (120+) müssen NICHT umgeschrieben werden
- FIX: Primary goal toggle in goals.py (is_primary im GoalUpdate Model)
  → Beim Update auf primary werden andere Goals korrekt auf false gesetzt
- FIX: lean_mass current_value Berechnung implementiert
  → weight - (weight * body_fat_pct / 100)
- FIX: VO2Max Spaltenname vo2_max (statt vo2max)
  → Internal Server Error behoben

CLAUDE.md:
- Version Update: Phase 1 Fixes (27.03.2026)

Keine Doppelarbeit:
- Alle zukünftigen Phase 0b Platzhalter nutzen get_focus_weights()
- v2.0 Redesign = nur eine Funktion ändern, nicht 120+ Platzhalter

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-03-27 06:13:47 +01:00
906a3b7cdd fix: Migration 022 - remove invalid schema_migrations tracking
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The migration system tracks migrations via filename automatically.
Removed manual DO block that used wrong column name (version vs filename).

Also removed unused json import from goals.py.

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-03-26 16:26:48 +01:00
337667fc07 feat: Phase 0a - Minimal Goal System (Strategic + Tactical)
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- Strategic Layer: Goal modes (weight_loss, strength, endurance, recomposition, health)
- Tactical Layer: Concrete goal targets with progress tracking
- Training phases (manual + auto-detection framework)
- Fitness tests (standardized performance tracking)

Backend:
- Migration 022: goal_mode in profiles, goals, training_phases, fitness_tests tables
- New router: routers/goals.py with full CRUD for goals, phases, tests
- API endpoints: /api/goals/* (mode, list, create, update, delete)

Frontend:
- GoalsPage: Goal mode selector + goal management UI
- Dashboard: Goals preview card with link
- API integration: goal mode, CRUD operations, progress calculation

Basis for 120+ placeholders and goal-aware analyses (Phase 0b)

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-03-26 16:20:35 +01:00
6e651b5bb5 fix: include stage outputs in debug info for value table
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- stage_debug now includes 'output' dict with all stage outputs
- Fixes empty values for stage_X_outputkey in expert mode
- Stage outputs are the actual AI responses passed to next stage
2026-03-26 14:33:00 +01:00
f37936c84d feat: show all stage outputs as collapsible JSON in expert mode
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Backend:
- Add ALL stage outputs to metadata (not just referenced ones)
- Format JSON with indent for readability
- Description: 'Zwischenergebnis aus Stage X'

Frontend:
- Stage raw values shown in collapsible <details> element
- JSON formatted in <pre> tag with syntax highlighting
- 'JSON anzeigen ▼' summary for better UX

Fixes: Stage X - Rohdaten now shows intermediate results
2026-03-26 13:17:58 +01:00
159fcab17a feat: circ_summary with best-of-each strategy and age annotations
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- Each circumference point shows most recent value (even from different dates)
- Age annotations: heute, gestern, vor X Tagen/Wochen/Monaten
- Gives AI better context about measurement freshness
- Example: 'Brust 105cm (heute), Nacken 38cm (vor 2 Wochen)'
2026-03-26 13:09:38 +01:00
d06d3d84de fix: circ_summary now checks all 8 circumference points
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- Previously only checked c_chest, c_waist, c_hip
- Now includes c_neck, c_belly, c_thigh, c_calf, c_arm
- Fixes 'keine Daten' when entries exist with only non-primary measurements
2026-03-26 13:06:37 +01:00
adb5dcea88 feat: category grouping in value table (Issue #47)
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FEATURE: Gruppierung nach Kategorien
- Wertetabelle jetzt nach Modulen/Kategorien gruppiert
- Bessere Übersicht und Zuordnung der Werte

BACKEND: Category Metadata
- Für normale Platzhalter: Kategorie aus Catalog (Profil, Körper, Ernährung, etc.)
- Für extrahierte Werte: "Stage X - [Output Name]"
- Für Rohdaten: "Stage X - Rohdaten"
- Fallback: "Sonstiges"

FRONTEND: Grouped Display
- sortedCategories: Sortierung (Normal → Stage Outputs → Rohdaten)
- Section Headers: Grauer Hintergrund mit Kategorie-Name
- React.Fragment für Gruppierung

SORTIERUNG:
1. Normale Kategorien (Profil, Körper, Ernährung, Training, etc.)
2. Stage Outputs (Stage 1 - Body, Stage 1 - Nutrition, etc.)
3. Rohdaten (Stage 1 - Rohdaten, Stage 2 - Rohdaten)
4. Innerhalb: Alphabetisch

BEISPIEL:
┌────────────────────────────────────────────┐
│ PROFIL                                     │
├────────────────────────────────────────────┤
│ name       │ Lars    │ Name des Nutzers   │
│ age        │ 55      │ Alter in Jahren    │
├────────────────────────────────────────────┤
│ KÖRPER                                     │
├────────────────────────────────────────────┤
│ weight_... │ 85.2 kg │ Aktuelles Gewicht  │
│ bmi        │ 26.6    │ Body Mass Index    │
├────────────────────────────────────────────┤
│ ERNÄHRUNG                                  │
├────────────────────────────────────────────┤
│ kcal_avg   │ 1427... │ Durchschn. Kalorien│
│ protein... │ 106g... │ Durchschn. Protein │
├────────────────────────────────────────────┤
│ STAGE 1 - BODY                             │
├────────────────────────────────────────────┤
│ ↳ bmi      │ 26.6    │ Aus Stage 1 (body) │
│ ↳ trend    │ sinkend │ Aus Stage 1 (body) │
├────────────────────────────────────────────┤
│ STAGE 1 - NUTRITION                        │
├────────────────────────────────────────────┤
│ ↳ kcal_... │ 1427    │ Aus Stage 1 (nutr.)│
└────────────────────────────────────────────┘

Experten-Modus zusätzlich:
├────────────────────────────────────────────┤
│ STAGE 1 - ROHDATEN                         │
├────────────────────────────────────────────┤
│ 🔬 stage...│ {"bmi"..│ Rohdaten Stage 1   │
└────────────────────────────────────────────┘

version: 9.10.0 (feature)
module: prompts 2.5.0, insights 1.8.0
2026-03-26 12:59:52 +01:00
da803da816 feat: extract individual values from stage outputs (Issue #47)
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FEATURE: Basis-Analysen Einzelwerte
Vorher: stage_1_body → {"bmi": 26.6, "weight": "85.2kg"} (1 Zeile)
Jetzt:  bmi → 26.6 (eigene Zeile)
        weight → 85.2kg (eigene Zeile)

BACKEND: JSON-Extraktion
- Stage outputs (JSON) → extract individual fields
- extracted_values dict sammelt alle Einzelwerte
- Deduplizierung: Gleiche Keys nur einmal
- Flags:
  - is_extracted: true → Wert aus Stage-Output extrahiert
  - is_stage_raw: true → Rohdaten (JSON) nur Experten-Modus

BEISPIEL Stage 1 Output:
{
  "stage_1_body": {
    "bmi": 26.6,
    "weight": "85.2 kg",
    "trend": "sinkend"
  }
}

→ Metadata:
{
  "bmi": {
    value: "26.6",
    description: "Aus Stage 1 (stage_1_body)",
    is_extracted: true
  },
  "weight": {
    value: "85.2 kg",
    description: "Aus Stage 1 (stage_1_body)",
    is_extracted: true
  },
  "stage_1_body": {
    value: "{\"bmi\": 26.6, ...}",
    description: "Rohdaten Stage 1 (Basis-Analyse JSON)",
    is_stage_raw: true
  }
}

FRONTEND: Smart Filtering
Normal-Modus:
- Zeigt: Einzelwerte (bmi, weight, trend)
- Versteckt: Rohdaten (stage_1_body JSON)
- Filter: is_stage_raw === false

Experten-Modus:
- Zeigt: Alles (Einzelwerte + Rohdaten)
- Rohdaten: Grauer Hintergrund + 🔬 Icon

VISUAL Indicators:
↳ bmi        → Extrahierter Wert (grün)
  weight     → Normaler Platzhalter (accent)
🔬 stage_1_* → Rohdaten JSON (grau, klein, nur Experten)

ERGEBNIS:
┌──────────────────────────────────────────┐
│ 📊 Verwendete Werte (8) (+2 ausgeblendet)│
│ ┌────────────────────────────────────────┐│
│ │ weight_aktuell │ 85.2 kg   │ Gewicht ││ ← Normal
│ │ ↳ bmi          │ 26.6      │ Aus St..││ ← Extrahiert
│ │ ↳ trend        │ sinkend   │ Aus St..││ ← Extrahiert
│ └────────────────────────────────────────┘│
└──────────────────────────────────────────┘

Experten-Modus zusätzlich:
│ 🔬 stage_1_body │ {"bmi":...│ Rohdaten││ ← JSON

version: 9.9.0 (feature)
module: prompts 2.4.0, insights 1.7.0
2026-03-26 12:55:53 +01:00
e799edbae4 feat: expert mode + stage outputs in value table (Issue #47)
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FEATURE: Experten-Modus 🔬
- Toggle-Button in Wertetabelle
- Normal: Nur gefüllte Werte anzeigen
- Experten: Alle Platzhalter inkl. leere/technische
- Anzeige: "(+X ausgeblendet)" wenn Werte gefiltert
- Button-Style: Accent wenn aktiv

FILTER: Leere Werte ausblenden (Normal-Modus)
- Filtert: '', 'nicht verfügbar', '[Nicht verfügbar]'
- Zeigt nur relevante Nutzer-Daten
- Experten-Modus zeigt alles

FEATURE: Stage-Outputs in Wertetabelle 
ROOT CAUSE: stage_N_key Platzhalter hatten keine Werte
- Stage-Outputs (z.B. stage_1_body) sind Basis-Analysen-Ergebnisse
- Wurden nicht in cleaned_values gefunden (nur statische Platzhalter)
FIX:
- Collect stage outputs aus result.debug.stages[].output
- Store als stage_N_key dict
- Lookup: erst stage_outputs, dann cleaned_values
- Description: "Output aus Stage X (Basis-Analyse)"
- JSON-Werte automatisch serialisiert

BEISPIEL Pipeline-Wertetabelle:
┌──────────────────────────────────────────────┐
│ 📊 Verwendete Werte (8) (+3 ausgeblendet) 🔬│
│ ┌──────────────────────────────────────────┐ │
│ │ weight_aktuell  │ 85.2 kg   │ Gewicht  │ │
│ │ stage_1_body    │ {"bmi":...│ Output...│ │ ← Stage output!
│ │ stage_1_nutr... │ {"kcal"...│ Output...│ │
│ └──────────────────────────────────────────┘ │
└──────────────────────────────────────────────┘

AKTIVIERUNG Experten-Modus:
1. Analyse öffnen
2. "📊 Verwendete Werte" aufklappen
3. Button "🔬 Experten-Modus" klicken
4. Zeigt alle Platzhalter (auch leere stage outputs)

version: 9.8.0 (feature)
module: prompts 2.3.0, insights 1.6.0
2026-03-26 12:44:28 +01:00
15bd6cddeb feat: untruncated values + smart base prompt display (Issue #47)
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FEATURE: Volle Werte (nicht abgeschnitten)
- Backend holt ungekürzten Werte direkt von placeholder_resolver
- get_placeholder_example_values() statt debug.resolved_placeholders
- Debug bleibt gekürzt (100 chars), Metadata ungekürzt

FEATURE: Smart Display für Basis-Prompts
- Basis-Prompts mit JSON-Output: Nur Wertetabelle anzeigen
- JSON-Output in Collapsible "Technische Daten" verschoben
- Wertetabelle auto-expanded bei Basis-Prompts
- Pipeline + Text-Prompts: Wie bisher (Content + Wertetabelle)

UI: Bessere Wertetabelle
- Werte: word-break + max-width (400px) → kein Overflow
- Alle Spalten: verticalAlign top für bessere Lesbarkeit
- Platzhalter: nowrap (keine Umbrüche)

BEISPIEL:
┌─────────────────────────────────────────┐
│ ℹ️ Basis-Prompt Rohdaten                │
│ [Technische Daten anzeigen ▼]           │
│                                          │
│ 📊 Verwendete Werte (8) ▼  ← expanded  │
│ ┌──────────────────────────────────────┐│
│ │ Platzhalter │ Vollständiger Wert... ││
│ │ kcal_avg    │ 1427 kcal/Tag (Ø 30...││ ← ungekürzt
│ └──────────────────────────────────────┘│
└─────────────────────────────────────────┘

version: 9.7.0 (feature)
module: prompts 2.2.0, insights 1.5.0
2026-03-26 12:37:52 +01:00
4a2bebe249 fix: value table metadata + |d modifier + cursor insertion (Issues #47, #48)
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BUG: Wertetabelle wurde nicht angezeigt
FIX: enable_debug=true wenn save=true (für metadata collection)
- metadata wird nur gespeichert wenn debug aktiv
- jetzt: debug or save → metadata immer verfügbar

BUG: {{placeholder|d}} Modifier funktionierte nicht
ROOT CAUSE: catalog wurde bei Exception nicht zu variables hinzugefügt
FIX:
- variables['_catalog'] = catalog (auch wenn None)
- Warning-Log wenn catalog nicht geladen werden kann
- Debug warning wenn |d ohne catalog verwendet

BUG: Platzhalter in Pipeline-Stages am Ende statt an Cursor
FIX:
- stageTemplateRefs Map für alle Stage-Textareas
- onClick + onKeyUp tracking für Cursor-Position
- Insert at cursor: template.slice(0, pos) + placeholder + template.slice(pos)
- Focus + Cursor restore nach Insert

TECHNICAL:
- prompt_executor.py: Besseres Exception Handling für catalog
- UnifiedPromptModal.jsx: Refs für alle Template-Felder
- prompts.py: enable_debug=debug or save

version: 9.6.1 (bugfix)
module: prompts 2.1.1
2026-03-26 12:04:20 +01:00
c0a50dedcd feat: value table + {{placeholder|d}} modifier (Issue #47)
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FEATURE #47: Wertetabelle nach KI-Analysen
- Migration 021: metadata JSONB column in ai_insights
- Backend sammelt resolved placeholders mit descriptions beim Speichern
- Frontend: Collapsible value table in InsightCard
  - Zeigt: Platzhalter | Wert | Beschreibung
  - Sortiert tabellarisch
  - Funktioniert für base + pipeline prompts

FEATURE #48: {{placeholder|d}} Modifier
- Syntax: {{weight_aktuell|d}} → "85.2 kg (Aktuelles Gewicht in kg)"
- resolve_placeholders() erkennt |d modifier
- Hängt description aus catalog an Wert
- Fein-granulare Kontrolle pro Platzhalter (nicht global)
- Optional: nur wo sinnvoll einsetzen

TECHNICAL:
- prompt_executor.py: catalog parameter durchgereicht
- execute_prompt_with_data() lädt catalog via get_placeholder_catalog()
- Catalog als _catalog in variables übergeben, in execute_prompt() extrahiert
- Base + Pipeline Prompts unterstützen |d modifier

EXAMPLE:
Template: "Gewicht: {{weight_aktuell|d}}, Alter: {{age}}"
Output:   "Gewicht: 85.2 kg (Aktuelles Gewicht in kg), Alter: 55"

version: 9.6.0 (feature)
module: prompts 2.1.0, insights 1.4.0
2026-03-26 11:52:26 +01:00
7daa2e40c7 fix: sleep quality calculation using wrong key (stage vs phase)
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BUG: sleep_avg_quality showed 0% despite valid sleep data
ROOT CAUSE: sleep_segments use 'phase' key, not 'stage'
FIX: Changed s.get('stage') to s.get('phase') in get_sleep_avg_quality()

version: 9.5.1 (bugfix)
module: prompts 2.0.1
2026-03-26 10:31:39 +01:00
a43a9f129f fix: sleep_avg_quality uses lowercase stage names
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Problem: Schlafphasen werden lowercase gespeichert (deep, rem, light, awake),
aber get_sleep_avg_quality() prüfte Titlecase (Deep, REM) → 0% Match

Fix: Ändere Prüfung zu lowercase: ['deep', 'rem']

Jetzt wird {{sleep_avg_quality}} korrekt berechnet aus JSONB segments.

Quelle: backend/routers/sleep.py → phase_map speichert lowercase

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-03-26 10:22:55 +01:00
3ad1a19dce fix: calculate_age now handles PostgreSQL date objects
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Problem: dob Spalte ist DATE (PostgreSQL) → Python bekommt datetime.date,
nicht String → strptime() schlägt fehl → age = "unbekannt"

Fix: Prüfe isinstance(dob, str) und handle beide Typen:
- String → strptime()
- date object → direkt verwenden

Jetzt funktioniert {{age}} Platzhalter korrekt.

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-03-26 10:19:36 +01:00
a9114bc40a feat: implement missing placeholder functions (sleep, vitals, rest)
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Implementiert 6 fehlende Platzhalter-Funktionen die im Katalog waren
aber keine Berechnung hatten.

Neue Funktionen:
- get_sleep_avg_duration(7d) → "7.5h"
- get_sleep_avg_quality(7d) → "65% (Deep+REM)"
- get_rest_days_count(30d) → "5 Ruhetage"
- get_vitals_avg_hr(7d) → "58 bpm"
- get_vitals_avg_hrv(7d) → "45 ms"
- get_vitals_vo2_max() → "42.5 ml/kg/min"

Datenquellen:
- sleep_log (JSONB segments mit Deep/REM/Light/Awake)
- rest_days (Kraft/Cardio/Entspannung)
- vitals_baseline (resting_hr, hrv, vo2_max)

Jetzt in PLACEHOLDER_MAP registriert → sofort nutzbar.

Fixes: Platzhalter-Export zeigt jetzt alle Werte (statt "nicht verfügbar")

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-03-26 10:14:17 +01:00
555ff62b56 feat: global placeholder export with values (Settings page)
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Zentraler Export aller verfügbaren Platzhalter mit aktuellen Werten.

Backend:
- GET /api/prompts/placeholders/export-values
  - Returns all placeholders organized by category
  - Includes resolved values for current profile
  - Includes metadata (description, example)
  - Flat list + categorized structure

Frontend SettingsPage:
- Button "📊 Platzhalter exportieren"
- Downloads: placeholders-{profile}-{date}.json
- Shows all 38+ placeholders with current values
- Useful for:
  - Understanding available data
  - Debugging prompt templates
  - Verifying placeholder resolution

Frontend api.js:
- exportPlaceholderValues()

Export Format:
{
  "export_date": "2026-03-26T...",
  "profile_id": "...",
  "count": 38,
  "all_placeholders": { "name": "Lars", ... },
  "placeholders_by_category": {
    "Profil": [...],
    "Körper": [...],
    ...
  }
}

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-03-26 10:05:11 +01:00
7f94a41965 feat: batch import/export for prompts (Issue #28 Debug B)
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Dev→Prod Sync in 2 Klicks: Export → Import

Backend:
- GET /api/prompts/export-all → JSON mit allen Prompts
- POST /api/prompts/import?overwrite=true/false → Import + Create/Update
  - Returns: created, updated, skipped counts
  - Validates JSON structure
  - Handles stages JSON conversion

Frontend AdminPromptsPage:
- Button "📦 Alle exportieren" → downloads all-prompts-{date}.json
- Button "📥 Importieren" → file upload dialog
  - User-Prompt: Überschreiben? Ja/Nein
  - Success-Message mit Statistik (created/updated/skipped)

Frontend api.js:
- exportAllPrompts()
- importPrompts(data, overwrite)

Use Cases:
1. Backup: Prompts als JSON sichern
2. Dev→Prod: Auf dev.mitai entwickeln → exportieren → auf mitai.jinkendo importieren
3. Versionierung: Prompts in Git speichern

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-03-26 09:44:08 +01:00
97e57481f9 fix: Analysis page now uses unified prompt executor (Issue #28)
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BREAKING: Analysis page switched from old /insights/run to new /prompts/execute

Changes:
- Backend: Added save=true parameter to /prompts/execute
  - When enabled, saves final output to ai_insights table
  - Extracts content from pipeline output (last stage)
- Frontend api.js: Added save parameter to executeUnifiedPrompt()
- Frontend Analysis.jsx: Switched from api.runInsight() to api.executeUnifiedPrompt()
  - Transforms new result format to match InsightCard expectations
  - Pipeline outputs properly extracted and displayed

Fixes: PIPELINE_MASTER responses (old template being sent to AI)
The old /insights/run endpoint used raw template field, which for the
legacy "pipeline" prompt was literally "PIPELINE_MASTER". The new
executor properly handles stages and data processing.

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-03-26 09:38:58 +01:00
811ba8b3dc fix: convert Decimal to float before multiplication in protein targets
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- get_protein_ziel_low: float(weight) * 1.6
- get_protein_ziel_high: float(weight) * 2.2

Fixes TypeError: unsupported operand type(s) for *: 'decimal.Decimal' and 'float'

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-03-26 09:23:50 +01:00
dfaf24d74c fix: correct SQL column names in placeholder_resolver
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- caliper_summary: use body_fat_pct (not bf_jpl)
- circ_summary: use c_chest, c_waist, c_hip (not brust, taille, huefte)
- get_latest_bf: use body_fat_pct for consistency

Fixes SQL errors when running base prompts that feed pipeline prompts.

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-03-26 09:10:55 +01:00
0f2b85c6de fix: reconstruct missing placeholders + fix SQL column names
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Added missing placeholders:
- caliper_summary, circ_summary (body measurements)
- goal_weight, goal_bf_pct (goals from profile)
- nutrition_days (count of nutrition entries)
- protein_ziel_low/high (calculated from weight)

Fixed SQL errors:
- protein → protein_g
- fat → fat_g
- carb → carbs_g

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-03-26 09:03:35 +01:00
f4d1fd4de1 feat: add activity_detail placeholder for detailed activity logs
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- New placeholder: {{activity_detail}} returns formatted activity log
- Shows last 20 activities with date, type, duration, kcal, HR
- Makes activity analysis prompts work properly

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-03-26 08:20:18 +01:00
ba92d66880 fix: remove {{ }} from placeholder keys before resolution
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Placeholder resolver returns keys with {{ }} wrappers,
but resolve_placeholders expects clean keys.

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-03-26 08:17:22 +01:00
afc70b5a95 fix: integrate placeholder resolver + JSON unwrapping (Issue #28)
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- Backend: integrate get_placeholder_example_values in execute_prompt_with_data
- Backend: now provides BOTH raw data AND processed placeholders
- Backend: unwrap Markdown-wrapped JSON (```json ... ```)
- Fixes old-style prompts that expect name, weight_trend, caliper_summary

Resolves unresolved placeholders issue.

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-03-26 08:14:41 +01:00
84dad07e15 fix: show debug info on errors + prompt export function
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- Frontend: debug viewer now shows even when test fails
- Frontend: export button to download complete prompt config as JSON
- Backend: attach debug info to JSON validation errors
- Backend: include raw output and length in error details

Users can now debug failed prompts and export configs for analysis.

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-03-26 08:07:34 +01:00
7f2ba4fbad feat: debug system for prompt execution (Issue #28)
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- Backend: debug mode in prompt_executor with placeholder tracking
- Backend: show resolved/unresolved placeholders, final prompts, AI responses
- Frontend: test button in UnifiedPromptModal for saved prompts
- Frontend: debug output viewer with JSON preview
- Frontend: wider placeholder example fields in PlaceholderPicker

Resolves pipeline execution debugging issues.

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-03-26 08:01:33 +01:00
7be7266477 feat: unified prompt executor - Phase 2 complete (Issue #28)
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Backend:
- prompt_executor.py: Universal executor for base + pipeline prompts
  - Dynamic placeholder resolution
  - JSON output validation
  - Multi-stage parallel execution (sequential impl)
  - Reference and inline prompt support
  - Data loading per module (körper, ernährung, training, schlaf, vitalwerte)

Endpoints:
- POST /api/prompts/execute - Execute unified prompts
- POST /api/prompts/unified - Create unified prompts
- PUT /api/prompts/unified/{id} - Update unified prompts

Frontend:
- api.js: executeUnifiedPrompt, createUnifiedPrompt, updateUnifiedPrompt

Next: Phase 3 - Frontend UI consolidation
2026-03-25 14:52:24 +01:00
33653fdfd4 fix: migration 020 - make template column nullable
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Issue: template has NOT NULL constraint but pipeline-type prompts
don't use template (they use stages JSONB instead).

Solution: ALTER COLUMN template DROP NOT NULL before inserting
pipeline configs into ai_prompts.
2026-03-25 14:45:53 +01:00
95dcf080e5 fix: migration 020 SQL syntax - correlated subquery issue
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Fixed Step 3 pipeline_configs migration:
- Simplified JSONB aggregation logic
- Properly scope pc alias in subqueries
- Use UNNEST with FROM clause for array expansion

Previous version had correlation issues with nested subqueries.
2026-03-25 12:58:02 +01:00
2e0838ca08 feat: unified prompt system migration schema (Issue #28 Phase 1)
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- Migration 020: Add type, stages, output_format columns to ai_prompts
- Migrate existing prompts to 1-stage pipeline format
- Migrate pipeline_configs into ai_prompts as multi-stage pipelines
- Add UnifiedPrompt Pydantic models for new API
- Backup pipeline_configs table (keep during transition)

Schema structure:
- type: 'base' (reusable) or 'pipeline' (multi-stage)
- stages: JSONB array [{stage:1, prompts:[{source, slug, template, output_key, output_format}]}]
- output_format: 'text' or 'json'
- output_schema: JSON validation schema (optional)

Next: Backend executor + Frontend UI consolidation
2026-03-25 10:43:10 +01:00
6627b5eee7 feat: Pipeline-System - Backend Infrastructure (Issue #28, Phase 1)
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Implementiert konfigurierbare mehrstufige Analysen. Admins können
mehrere Pipeline-Konfigurationen erstellen mit unterschiedlichen
Modulen, Zeiträumen und Prompts.

**Backend:**
- Migration 019: pipeline_configs Tabelle + ai_prompts erweitert
- Pipeline-Config Models: PipelineConfigCreate, PipelineConfigUpdate
- Pipeline-Executor: refactored für config-basierte Ausführung
- CRUD-Endpoints: /api/prompts/pipeline-configs (list, create, update, delete, set-default)
- Reset-to-Default: /api/prompts/{id}/reset-to-default für System-Prompts

**Features:**
- 3 Seed-Configs: "Alltags-Check" (default), "Schlaf & Erholung", "Wettkampf-Analyse"
- Dynamische Platzhalter: {{stage1_<slug>}} für alle Stage-1-Ergebnisse
- Backward-compatible: /api/insights/pipeline ohne config_id nutzt default

**Dateien:**
- backend/migrations/019_pipeline_system.sql
- backend/models.py (PipelineConfigCreate, PipelineConfigUpdate)
- backend/routers/insights.py (analyze_pipeline refactored)
- backend/routers/prompts.py (Pipeline-Config CRUD + Reset-to-Default)

**Nächste Schritte:**
- Frontend: Pipeline-Config Dialog + Admin-UI
- Design: Mobile-Responsive + Icons

Issue #28 Progress: Backend 3/3  | Frontend 0/3 🔲 | Design 0/3 🔲

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-03-25 09:42:28 +01:00
5e7ef718e0 fix: placeholder picker improvements + insight display names (Issue #28)
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Backend:
- get_placeholder_catalog(): grouped placeholders with descriptions
- Returns {category: [{key, description, example}]} format
- Categories: Profil, Körper, Ernährung, Training, Schlaf, Vitalwerte, Zeitraum

Frontend - Placeholder Picker:
- Grouped by category with visual separation
- Search/filter across keys and descriptions
- Hover effects for better UX
- Insert at cursor position (not at end)
- Shows: key + description + example value
- 'Keine Platzhalter gefunden' message when filtered

Frontend - Insight Display Names:
- InsightCard receives prompts array
- Finds matching prompt by scope/slug
- Shows prompt.display_name instead of hardcoded SLUG_LABELS
- History tab also shows display_name in group headers
- Fallback chain: display_name → SLUG_LABELS → scope

User-facing improvements:
✓ Platzhalter zeigen echte Daten statt Zahlen
✓ Durchsuchbar + filterbar
✓ Einfügen an Cursor-Position
✓ Insights zeigen custom Namen (z.B. '🍽️ Meine Ernährung')

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-03-25 06:44:22 +01:00
0c4264de44 feat: display_name + placeholder picker for prompts (Issue #28)
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Migration 018:
- Add display_name column to ai_prompts
- Migrate existing prompts from hardcoded SLUG_LABELS
- Fallback: name if display_name is NULL

Backend:
- PromptCreate/Update models with display_name field
- create/update/duplicate endpoints handle display_name
- Fallback: use name if display_name not provided

Frontend:
- PromptEditModal: display_name input field
- Placeholder picker: button + dropdown with all placeholders
- Shows example values, inserts {{placeholder}} on click
- Analysis.jsx: use display_name instead of SLUG_LABELS

User-facing changes:
- Prompts now show custom display names (e.g. '🍽️ Ernährung')
- Admin can edit display names instead of hardcoded labels
- Template editor has 'Platzhalter einfügen' button
- No more hardcoded SLUG_LABELS in frontend

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-03-25 06:31:25 +01:00
500de132b9 feat: AI-Prompts flexibilisierung - Backend & Admin UI (Issue #28, Part 1)
Backend complete:
- Migration 017: Add category column to ai_prompts
- placeholder_resolver.py: 20+ placeholders with resolver functions
- Extended routers/prompts.py with CRUD endpoints:
  * POST /api/prompts (create)
  * PUT /api/prompts/:id (update)
  * DELETE /api/prompts/:id (delete)
  * POST /api/prompts/:id/duplicate
  * PUT /api/prompts/reorder
  * POST /api/prompts/preview
  * GET /api/prompts/placeholders
  * POST /api/prompts/generate (KI-assisted generation)
  * POST /api/prompts/:id/optimize (KI analysis)
- Extended models.py with PromptCreate, PromptUpdate, PromptGenerateRequest

Frontend:
- AdminPromptsPage.jsx: Full CRUD UI with category filter, reordering

Meta-Features:
- KI generates prompts from goal description + example data
- KI analyzes and optimizes existing prompts

Next: PromptEditModal, PromptGenerator, api.js integration

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-03-24 15:32:25 +01:00
302948a248 fix: add quality_filter_level to ProfileUpdate model (Issue #31)
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The frontend was sending quality_filter_level to the backend, but the
Pydantic ProfileUpdate model didn't include this field, so it was
silently ignored. Profile updates never actually saved the filter.

This is why the charts didn't react to filter changes - the backend
database was never updated.

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-03-24 06:44:05 +01:00
04306a7fef feat: global quality filter setting (Issue #31)
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Implemented global quality_filter_level in user profiles for consistent
data filtering across all views (Dashboard, History, Charts, KI-Pipeline).

Backend changes:
- Migration 016: Add quality_filter_level column to profiles table
- quality_filter.py: Centralized helper functions for SQL filtering
- insights.py: Apply global filter in _get_profile_data()
- activity.py: Apply global filter in list_activity()

Frontend changes:
- SettingsPage.jsx: Add Datenqualität section with 4-level selector
- History.jsx: Use global quality filter from profile context

Filter levels: all, quality (good+excellent+acceptable), very_good
(good+excellent), excellent (only excellent)

Closes #31

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-03-23 22:29:49 +01:00
b317246bcd docs: Quality-Level Parameter für KI-Analysen notiert (#28)
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Notiert an 3 Stellen:
1. insights.py: TODO-Kommentar im Code
2. ROADMAP.md: Deliverable bei M0.2 (lokal, nicht im Git)
3. Gitea Issue #28: Kommentar mit Spezifikation

Zukünftig:
- GET /api/insights/run/{slug}?quality_level=quality
- 4 Stufen: all, quality, very_good, excellent
- Frontend: Dropdown wie in History.jsx
- Pipeline-Configs können Standard-Level haben

User-Request: Quality-Level-Auswahl für KI-Analysen

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-03-23 22:06:30 +01:00
9ec774e956 feat: Quality-Filter für KI-Pipeline & History (#24)
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Backend:
- insights.py: KI-Pipeline filtert activity_log nach quality_label
- Nur 'excellent', 'good', 'acceptable' (poor wird ausgeschlossen)
- NULL-Werte erlaubt (für alte Einträge vor Migration 014)

Frontend:
- History.jsx: Toggle "Nur qualitativ hochwertige Aktivitäten"
- Filter wirkt auf Activity-Statistiken, Charts, Listen
- Anzeige: X von Y Activities (wenn gefiltert)

Dokumentation:
- CLAUDE.md: Feature-Roadmap aktualisiert (Phase 0-2)

Closes #24

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-03-23 21:59:02 +01:00
6f035e3706 fix: handle decimal values in Apple Health vitals import
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Problem: Import failed with "invalid literal for int() with base 10: '37.95'"
because Apple Health exports HRV and other vitals with decimal values.

Root cause: Code used int() directly on string values with decimals.

Fix:
- Added safe_int(): parses decimals as float first, then rounds to int
- Added safe_float(): robust float parsing with error handling
- Applied to all vital value parsing: RHR, HRV, VO2 Max, SpO2, resp rate

Example: '37.95' → float(37.95) → int(38) ✓

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-03-23 16:50:08 +01:00
6b64cf31c4 fix: return error details in import response for debugging
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Problem: Errors during import were logged but not visible to user.

Changes:
- Backend: Collect error messages and return in response (first 10 errors)
- Frontend: Display error details in import result box
- UI: Red background when errors > 0, shows detailed error messages

Now users can see exactly which rows failed and why.

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-03-23 16:47:36 +01:00
4b024e6d0f debug: add detailed error logging with traceback for import failures
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2026-03-23 16:44:16 +01:00
f506a55d7b fix: support German column names in CSV imports
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Problem: Import expected English column names, but German Apple Health/Omron
exports use German names with units.

Fixed:
- Apple Health: Support both English and German column names
  - "Start" OR "Datum/Uhrzeit"
  - "Resting Heart Rate" OR "Ruhepuls (count/min)"
  - "Heart Rate Variability" OR "Herzfrequenzvariabilität (ms)"
  - "VO2 Max" OR "VO2 max (ml/(kg·min))"
  - "Oxygen Saturation" OR "Blutsauerstoffsättigung (%)"
  - "Respiratory Rate" OR "Atemfrequenz (count/min)"

- Omron: Support column names with/without units
  - "Systolisch (mmHg)" OR "Systolisch"
  - "Diastolisch (mmHg)" OR "Diastolisch"
  - "Puls (bpm)" OR "Puls"
  - "Unregelmäßiger Herzschlag festgestellt" OR "Unregelmäßiger Herzschlag"
  - "Mögliches AFib" OR "Vorhofflimmern"

Added debug logging for both imports to show detected columns.

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-03-23 16:40:49 +01:00
6a7b78c3eb debug: add logging to Apple Health import to diagnose skipped rows
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Logs:
- CSV column names from first row
- Rows skipped due to missing date
- Rows skipped due to no vitals data
- Shows which fields were found/missing

Helps diagnose CSV format mismatches.

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-03-23 16:38:18 +01:00
7dcab1d7a3 fix: correct import skipped count when manual entries exist
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Problem: Import reported all entries as "updated" even when skipped
due to WHERE clause (source != 'manual')

Root cause: RETURNING returns NULL when WHERE clause prevents update,
but code counted NULL as "updated" instead of "skipped"

Fix:
- Check if result is None → skipped (WHERE prevented update)
- Check if xmax = 0 → inserted (new row)
- Otherwise → updated (existing row modified)

Affects:
- vitals_baseline.py: Apple Health import
- blood_pressure.py: Omron import

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-03-23 16:35:07 +01:00
1866ff9ce6 refactor: vitals architecture - separate baseline vs blood pressure
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BREAKING CHANGE: vitals_log split into vitals_baseline + blood_pressure_log

**Architektur-Änderung:**
- Baseline-Vitals (langsam veränderlich, 1x täglich morgens)
  → vitals_baseline (RHR, HRV, VO2 Max, SpO2, Atemfrequenz)
- Kontext-abhängige Vitals (mehrfach täglich, situativ)
  → blood_pressure_log (Blutdruck + Kontext-Tagging)

**Migration 015:**
- CREATE TABLE vitals_baseline (once daily, morning measurements)
- CREATE TABLE blood_pressure_log (multiple daily, context-aware)
- Migrate data from vitals_log → new tables
- Rename vitals_log → vitals_log_backup_pre_015 (safety)
- Prepared for future: glucose_log, temperature_log (commented)

**Backend:**
- NEW: routers/vitals_baseline.py (CRUD + Apple Health import)
- NEW: routers/blood_pressure.py (CRUD + Omron import + context)
- UPDATED: main.py (register new routers, remove old vitals)
- UPDATED: insights.py (query new tables, split template vars)

**Frontend:**
- UPDATED: api.js (new endpoints für baseline + BP)
- UPDATED: Analysis.jsx (add {{bp_summary}} variable)

**Nächster Schritt:**
- Frontend: VitalsPage.jsx refactoren (3 Tabs: Morgenmessung, Blutdruck, Import)

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-03-23 16:02:40 +01:00
1619091640 fix: add python-dateutil dependency for vitals CSV import
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ModuleNotFoundError: No module named 'dateutil' beim Server-Start.
Ursache: vitals.py importiert dateutil.parser für Omron-Datumsformatierung,
aber python-dateutil fehlte in requirements.txt.

Fix: python-dateutil==2.9.0 zu requirements.txt hinzugefügt.

Nach dem Update: Docker Container neu bauen auf dem Pi:
  cd /home/lars/docker/bodytrack-dev
  docker compose -f docker-compose.dev-env.yml build --no-cache backend
  docker compose -f docker-compose.dev-env.yml up -d

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-03-23 15:41:30 +01:00
37fd28ec5a feat: add AI evaluation placeholders for v9d Phase 2 modules
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**Backend (insights.py):**
- Extended _get_profile_data() to fetch sleep, rest_days, vitals
- Added template variables for Sleep Module:
  {{sleep_summary}}, {{sleep_detail}}, {{sleep_avg_duration}}, {{sleep_avg_quality}}
- Added template variables for Rest Days:
  {{rest_days_summary}}, {{rest_days_count}}, {{rest_days_types}}
- Added template variables for Vitals:
  {{vitals_summary}}, {{vitals_detail}}, {{vitals_avg_hr}}, {{vitals_avg_hrv}},
  {{vitals_avg_bp}}, {{vitals_vo2_max}}

**Frontend (Analysis.jsx):**
- Added 12 new template variables to VARS list in PromptEditor
- Enables AI prompt creation for Sleep, Rest Days, and Vitals analysis

All modules now have AI evaluation support for future prompt creation.

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-03-23 15:30:17 +01:00