Commit Graph

351 Commits

Author SHA1 Message Date
e5f6e6c10d feat: Integrate Dashboard-Lab layout and enhance settings navigation
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- Added new routes and API endpoints for the Dashboard-Lab layout in the app.
- Updated main.py to include the app_dashboard router for backend integration.
- Enhanced App.jsx to include a route for the DashboardLabPage.
- Modified SettingsPage to add a link to the new Dashboard-Lab layout, improving user access to dashboard features.
- Updated version.py to reflect the new app_dashboard module version.
2026-04-07 11:38:35 +02:00
932bceb1e1 feat: Update reference values and introduce pilot visualization module
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- Bumped version of reference_values module to 1.3.0.
- Added new imports and functionality for reference values in the backend, enhancing data retrieval.
- Introduced a new PilotVizPage in the frontend for visualizing data, linked from the SettingsPage for easy access.
- Updated routing in App.jsx to include the new pilot visualization route.
2026-04-07 10:15:13 +02:00
3e916c082c feat: Add profile reference values summary endpoint and UI enhancements
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- Introduced a new API endpoint for fetching a summary of profile reference values, providing the latest and previous entries for each reference type.
- Updated ProfileReferenceValuesPage to display summary tiles with trend indicators for better user insights.
- Enhanced CSS for responsive layout of reference value tiles, improving the overall user experience on different screen sizes.
- Implemented trend calculation logic to visually represent changes between the latest and previous reference values.
2026-04-07 06:30:22 +02:00
296e79c3b3 feat: Implement reference value types reordering and confidence level sorting
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- Added a new API endpoint for reordering reference value types based on user-defined order.
- Updated the AdminReferenceValueTypesPage to allow users to reorder types using up/down buttons.
- Introduced a consistent confidence level sorting mechanism across the application.
- Refactored related components to remove unused sort order fields and improve user experience.
2026-04-06 21:40:55 +02:00
45e4e64f15 feat: Enhance reference value types management with validation rules and metadata
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- Updated the backend to include new fields for validation rules and metadata in reference value types.
- Enhanced the AdminReferenceValueTypesPage to support new validation rules for different data types.
- Improved the ProfileReferenceValuesPage to handle validation and metadata for profile reference values.
- Added API endpoint for fetching reference value metadata enums to support frontend validation.
- Refactored frontend forms to incorporate new fields and validation logic for a better user experience.
2026-04-06 21:25:42 +02:00
ab616ba044 feat: Introduce admin reference value types management in API and UI
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- Added new routes and API endpoints for managing reference value types in the admin section.
- Updated the frontend to include navigation and components for reference value types management.
- Enhanced the backend to support the new reference value types in the data layer and versioning.
2026-04-06 19:51:23 +02:00
f0e6fd04fb feat: Add personal reference values management in settings and API
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- Introduced new routes and API endpoints for managing personal reference values.
- Updated the SettingsPage to include a section for reference values with navigation to manage them.
- Enhanced the backend to support reference values in the data layer and versioning.
- Added necessary imports and UI components for a seamless user experience.
2026-04-06 19:45:06 +02:00
e7dedd527f feat: Implement focus area usage types management in API and UI
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- Added endpoints for listing and updating focus area usage types in the backend.
- Enhanced the AdminFocusAreasPage to display and manage allowed usage types for focus areas.
- Introduced a new state for usage types catalog and integrated it into the focus area editing process.
- Updated API utility functions to support new usage types operations.
2026-04-06 07:28:19 +02:00
49e9c9c214 feat: Integrate caliper data enrichment and weight loading in API responses
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- Enhanced the caliper listing and export functionalities to include enriched data from weight logs.
- Updated the upsert and update operations to utilize new composition functions for body composition calculations.
- Refactored the CaliperScreen component to streamline payload construction by removing unnecessary parameters.
2026-04-06 06:08:37 +02:00
00437a92ab feat: Enhance sleep module with CSV import functionality and date parsing improvements
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2026-04-05 17:35:48 +02:00
c63ec5f700 feat: Enhance profile update functionality with email validation and improved error handling
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2026-04-05 11:14:01 +02:00
7deca6c64d test: Add unit tests for End Node Template Engine
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- test_end_node_template.py: Tests for execute_end_node()
- Tests AUTO mode (backward compatible concatenation)
- Tests TEMPLATE mode (Jinja2 rendering, conditionals)
- Tests error handling (missing template, syntax errors)

Note: Tests require Jinja2, run in Docker or CI/CD environment.

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-04-05 07:46:49 +02:00
fac76c28da fix: Handle None workflow_id in success path
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Also use 'N/A' placeholder in ExecutionResult when workflow_id is None
(when using graph_data directly instead of workflow_definitions).

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-04-05 07:28:30 +02:00
6016eec250 fix: Add ON CONFLICT to workflow_executions insert
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Prevents duplicate key violation when save_execution_state is called
multiple times with the same execution_id (e.g., during error handling).

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-04-05 07:26:10 +02:00
c95b4e185d fix: Edge format normalization and nullable workflow_id
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Fixes:
1. Edge Format Mismatch:
   - graph_data uses React Flow format (source/target)
   - WorkflowEdge expects backend format (from/to)
   - Added normalization in parse_workflow_graph()

2. UUID Validation Error:
   - workflow_id can be None when using graph_data (Phase 5)
   - save_execution_state now accepts Optional[str]
   - ExecutionResult uses "N/A" placeholder when None

Changes:
- workflow_engine.py: normalize edges before Pydantic validation
- workflow_executor.py: Optional[str] for workflow_id parameter

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-04-05 07:22:32 +02:00
fe28cce921 fix: Workflow executor graph parsing and error handling
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Fixes:
- graph_data was incorrectly json.dumps() encoded (should stay as dict)
- workflow_id=None in error handler caused ValidationError
- parse_workflow_graph expects Dict, not str

Changes:
- Use graph_dict directly instead of json.dumps(graph_data)
- Set workflow_id="" when None in error handler

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-04-05 07:18:43 +02:00
b888f5d3c8 feat: Phase 4 - End Node Template Engine (v0.9n)
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Backend:
- workflow_models.py: EndNodeOutputMode enum (AUTO, TEMPLATE)
- workflow_executor.py: execute_end_node() with Jinja2 rendering
- Template Context: {{node_id.analysis_core}}, {{node_id.decision_signals.key}}
- Conditional Rendering: {% if node_id %} for optional paths
- AUTO Mode: Backward compatible (concatenates all analyses)
- TEMPLATE Mode: Custom Jinja2 templates with placeholders

Features:
- Access node results: {{node_id.analysis_core}}
- Access signals: {{node_id.decision_signals.relevanz}}
- Optional paths: {% if node_id %}...{% endif %}
- Default values: {{node_id|default("N/A")}}

Version: 0.9n
Module: workflow 0.6.0
Konzept: konzept_workflow_engine_konsolidated.md (Section 11)

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-04-05 07:07:49 +02:00
d9bcaaaac6 fix: Add missing GET /api/prompts/{id} endpoint
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Critical Backend Bug:
- Frontend calls api.getPrompt(id) → GET /api/prompts/{uuid}
- Backend had NO endpoint for single prompt retrieval by ID
- Result: 405 Method Not Allowed

Backend Endpoints Before:
✓ GET /api/prompts - List all
✓ POST /api/prompts - Create
✓ PUT /api/prompts/{id} - Update
✗ GET /api/prompts/{id} - MISSING!

Backend Endpoints After:
✓ GET /api/prompts - List all
✓ GET /api/prompts/{id} - Get single (NEW)
✓ POST /api/prompts - Create
✓ PUT /api/prompts/{id} - Update

Implementation:
- Added get_prompt(prompt_id: str) function
- Returns single prompt by UUID
- 404 if not found
- Requires auth (admin or user)

This fixes:
- Workflow loading after save (loadWorkflow calls getPrompt)
- Workflow editing from admin list (Edit button calls getPrompt)
- All 405 Method Not Allowed errors

Root Cause: Backend was incomplete, missing basic CRUD read-by-id endpoint
2026-04-04 22:43:07 +02:00
7d22b052dd fix: Phase 5 - Workflow save + node persistence bugs
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KRITISCHE FIXES:

1. Backend: Workflow-Type Support
   - models.py: graph_data Feld hinzugefügt
   - models.py: slug Optional (auto-generiert)
   - prompts.py: 'workflow' in erlaubten Typen
   - prompts.py: graph_data in INSERT/UPDATE
   - prompts.py: Auto-Slug-Generierung aus Name
   - FIX: "Field required: slug" Error behoben

2. Frontend: Node-Updates Persistence
   - selectedNode sync mit nodes array (useEffect)
   - FIX: Änderungen gingen verloren (stale state)
   - FIX: Prompt-Auswahl nicht sichtbar nach Edit
   - FIX: Fallback-Strategy nicht gespeichert
   - FIX: Node-Name Änderungen nicht übernommen

BEHOBEN:
-  Save fehlgeschlagen →  Workflows speicherbar
-  Node-Name ignoriert →  Live-Update
-  Prompt verschwindet →  Bleibt sichtbar
-  Fallback nicht saved →  Persistiert

Tested: Backend API akzeptiert jetzt type='workflow'

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-04-04 19:17:41 +02:00
dc59596f01 feat: Phase 5 - Visual Workflow Editor (Option B)
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Backend (Mini-Backend 1-2h):
- Migration 016: ai_prompts.graph_data JSONB column
- workflow_executor: graph_data parameter support (backward-compatible)
- prompt_executor: execute_workflow_prompt uses graph_data

Frontend (Main effort 25-35h):
- WorkflowCanvas: React Flow wrapper component
- 5 Custom Nodes: Start, End, Analysis, Logic, Join
- 4 Config Panels: QuestionAugmentation, LogicExpression, Fallback, Join
- workflowValidation: Structural + logical validation
- workflowSerializer: Canvas ↔ JSONB conversion
- WorkflowEditorPage: Main orchestration (420 LOC)
- Route: /workflow-editor/:id
- CSS: workflowEditor.css (300 LOC)

Architecture:
- Option B: ai_prompts.type='workflow' (not separate table)
- panels/ subdirectory for clean separation
- WorkflowCanvas reusable component
- User GUI identical (Workflows = Prompts)
- Backward-compatible (type='pipeline' unchanged)

Version: v0.9m → v0.9n (Phase 5 complete)
Module: workflow 0.5.0 → 0.6.0

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-04-04 17:56:00 +02:00
c607cd1833 fix: Convert joined signals Dict to List for NodeExecutionState
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NodeExecutionState expects normalized_signals as List[NormalizedSignal],
but join_evaluator returns Dict[str, NormalizedSignal].

Fix: Convert dict to list before returning NodeExecutionState.

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-04-04 12:33:58 +02:00
e2a132353d feat: Phase 4 - Join Nodes and Path Consolidation
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Backend Implementation (v0.9m, workflow 0.5.0):
- join_evaluator.py (394 lines): Join-Strategie-Evaluator
  - evaluate_join_node(): Hauptlogik für Join-Node Execution
  - Join-Strategien: wait_all, wait_any, best_effort
  - Skip-Handling: ignore_skipped, use_placeholder, require_minimum
  - Result Consolidation: merge analysis_cores, combine signals
  - Partial Execution: korrekte Behandlung von SKIPPED/FAILED Pfaden

- workflow_executor.py: execute_join_node() Integration
  - BFS-Traversierung erweitert für Join-Nodes
  - NodeExecutionState List → Dict Konvertierung für Signale
  - Signal-Name-Kollisionen via node_id Präfix gelöst

Testing (49 Tests passing):
- test_phase4_join_nodes.py: 18 neue Unit Tests
  - Join-Strategien (wait_all, wait_any, best_effort)
  - Skip-Handling (ignore, placeholder)
  - Result Consolidation (merge, combine)
  - Partial Execution (mixed status paths)
  - Helper Functions (collect, check, merge, combine)

- Backward Compatibility: 31 Phase 2/3 Tests (alle passing)
  - test_phase2_workflow_executor.py: 1 Test aktualisiert
  - test_phase3_logic_evaluator.py: 20 Tests unverändert

Konzept: konzept_workflow_engine_konsolidated.md (Sektion 8.8)
Anforderungsanalyse: phase4_anforderungsanalyse.md

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-04-04 12:27:31 +02:00
2ce0874dcb feat: Phase 3 - Logic Nodes + Conditional Branching
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Backend:
- logic_evaluator.py (NEU, 307 Zeilen): Deterministischer Logic Evaluator
  - Vergleichsoperatoren: EQ, NEQ, IN, NOT_IN, GT, LT, GTE, LTE, CONTAINS
  - Logische Operatoren: AND, OR, NOT mit Verschachtelung
  - Resolve signal references (node_id.question_type)
  - Error handling für UNCLEAR/INVALID/NOT_DECIDABLE Signale

- workflow_executor.py (ERWEITERT):
  - execute_logic_node(): Bedingungen evaluieren, Pfade aktivieren/deaktivieren
  - execute_workflow(): BFS-Traversierung mit Edge-Activation statt Sequential
  - _apply_fallback(): 4 Fallback-Strategien (CONSERVATIVE_SKIP, DEFAULT_PATH, UNCERTAINTY_PATH, DOCUMENT_ONLY)
  - _has_active_incoming_edge(): Prüft ob Node erreichbar ist
  - _get_edges_by_label(): Findet then/else/uncertainty Pfade

- workflow_models.py (ERWEITERT):
  - LogicOperator.CONTAINS hinzugefügt

- version.py: 0.9k → 0.9l, workflow 0.3.0 → 0.4.0

Tests:
- test_phase3_logic_evaluator.py (NEU): 20 Unit Tests (alle passing)
  - Comparison operators (EQ, NEQ, IN, GT, LT, CONTAINS)
  - Logical operators (AND, OR, NOT)
  - Nested expressions
  - Error handling (missing refs, UNCLEAR/INVALID signals)

- test_phase2_workflow_executor.py (AKTUALISIERT): 11 Tests (alle passing)
  - execute_node() graph parameter hinzugefügt (Phase 3 requirement)
  - test_execute_node_unknown_type: logic → join (logic jetzt implementiert)

- test_phase3_workflow_branching.py (NEU): Integration Tests vorbereitet
  - Erfordert vollständige DB-Mock-Strategie (wird in E2E-Test nachgeholt)

Phase 2 Backward Compatibility:  Alle Phase 2 Tests bestehen weiterhin

Konzept: .claude/task/Workflow_engine_prompting_engine/konzept_workflow_engine_konsolidated.md
Anforderungsanalyse: .claude/task/Workflow_engine_prompting_engine/phase3_anforderungsanalyse.md

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-04-04 08:02:22 +02:00
c588372f3a fix: Hybrid model - node-specific question spectrums override catalog (Phase 1 requirement)
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2026-04-03 21:49:13 +02:00
585f189b13 fix: Remove extra_vars parameter from resolve_placeholders call - function doesn't support it yet
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2026-04-03 21:44:39 +02:00
acd4830795 fix: Access topological_order directly from engine, not from non-existent validator attribute
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2026-04-03 21:38:45 +02:00
ac2e7cf5bb fix: Use dict keys for all RealDictCursor row access in Phase 2 code
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2026-04-03 21:36:44 +02:00
0725461056 fix: Use dict keys instead of numeric indices for RealDictCursor rows
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2026-04-03 21:34:47 +02:00
ce4666a535 fix: Import call_openrouter from routers.prompts instead of non-existent openrouter module
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2026-04-03 21:33:09 +02:00
1f8791f4dd feat: Phase 2 - Normalisierung + Workflow Executor
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Backend:
- normalization_engine.py (200 Zeilen): Synonym-Mapping, 5 Statuswerte
  * normalize_decision_signal(): Kaskade (exact → case → synonym → invalid)
  * apply_synonym_mapping(): DB-basierte Synonyme (case-insensitive)
  * normalize_all_signals(): Batch-Processing gegen Katalog
  * load_question_catalog(): Lädt normalization_rules aus DB
- workflow_executor.py (440 Zeilen): Sequenzielle Workflow-Ausführung
  * execute_workflow(): Traversiert DAG in topologischer Reihenfolge
  * execute_node(): Führt analysis nodes aus (start/end = no-op)
  * aggregate_results(): Kombiniert analysis_core + normalized_signals
  * save_execution_state(): Persistiert in workflow_executions
- workflow_models.py: Erweitert um Phase 2 Models
  * SignalStatus Enum (valid, normalized, unclear, invalid, not_decidable)
  * NormalizedSignal (question_type, raw_value, normalized_value, status)
  * NodeExecutionState (node_id, status, analysis_core, normalized_signals)
  * ExecutionResult (execution_id, workflow_id, status, node_states, aggregated_result)
- workflow_engine.py: Neue Funktion get_execution_order()
  * Flattened topological sort für sequenzielle Execution
  * Phase 7: Wird zu levels (parallele Execution)
- prompt_executor.py: execute_workflow_prompt() Implementierung
  * Ruft workflow_executor.execute_workflow() auf
  * Konvertiert ExecutionResult zu API-Response
- routers/workflows.py (230 Zeilen): Workflow Execution API
  * POST /api/workflows/{id}/execute (mit enable_debug)
  * GET /api/workflows/executions/{id} (lädt gespeicherten State)
  * GET /api/workflows (listet alle aktiven Workflows)
  * GET /api/workflows/{id} (lädt einzelnen Workflow mit Graph)
- main.py: Router-Registrierung (workflows.router)

Tests:
- test_phase2_normalization.py (17 Tests): Alle Normalisierungs-Szenarien
  * Exact match, case-insensitive, synonym mapping, invalid, whitespace
  * Batch-Normalisierung, not_in_catalog, mixed validity
- test_phase2_workflow_executor.py (10 Tests): Executor + Aggregation
  * aggregate_results mit verschiedenen Konstellationen
  * execute_node für start/end/analysis/unknown
  * Integration mit question_augmenter + result_container_parser

Alle 27 Unit-Tests bestanden.

version: 0.9k (backend)
module:  workflow 0.3.0

Konzept: .claude/task/Workflow_engine_prompting_engine/anforderungsanalyse_umsetzungsplan.md (Phase 2)
2026-04-03 21:20:23 +02:00
ca562b7130 feat: Phase 1 - Fragenergänzung + Strukturierter Container
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Backend:
- question_augmenter.py (290 Zeilen): Hybrid-Modell für Fragenergänzungen
  * merge_question_augmentations(): Knotengebundene Fragen überschreiben Prompt-Defaults
  * augment_prompt_with_questions(): Markdown-formatierte Fragenergänzung
  * parse_question_augmentations_from_jsonb(): JSONB → QuestionAugmentation[]
- result_container_parser.py (250 Zeilen): Markdown-Sektionen-Parsing
  * parse_result_container(): Extrahiert Analysekern, Entscheidungsanteil, Begründungsanker
  * validate_decision_signal(): Normalisierung gegen answer_spectrum
  * Fallback-Parsing bei unstrukturierten Antworten
- routers/workflow_questions.py (236 Zeilen): CRUD für workflow_question_catalog
  * GET /api/workflow/questions (mit active_only Filter)
  * POST/PUT/DELETE (Admin only, Soft Delete)
- prompt_executor.py: Integration in execute_base_prompt()
  * Fragenergänzung vor LLM-Call (wenn node_questions oder catalog vorhanden)
  * Result-Container-Parsing nach LLM-Response
- main.py: Router-Registrierung (workflow_questions)

Tests:
- test_phase1_question_augmenter.py (8 Tests): Hybrid-Modell, Formatierung, JSONB-Parsing
- test_phase1_result_container_parser.py (17 Tests): Sektion-Extraktion, Decision-Parsing, Validierung

Alle 25 Unit-Tests bestanden.

version: 0.9j (backend)
module:  workflow 0.2.0

Konzept: .claude/task/Workflow_engine_prompting_engine/konzept_workflow_engine_konsolidated.md (Phase 1)
2026-04-03 18:02:25 +02:00
b5be6e21a5 feat: Phase 0 - Workflow Engine Foundation
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Backend:
- DB-Migration 034: workflow_definitions, workflow_question_catalog, workflow_executions
- ai_prompts.question_augmentations JSONB-Spalte (Hybridmodell: Prompt-Defaults)
- 6 Grundtypen Fragenergänzungen mit Normalisierungsregeln (Seed-Daten)
- Pydantic-Modelle (16 Models, 11 Enums) in workflow_models.py
- Workflow-Engine: Graph-Parsing, Topologische Sortierung, DAG-Validierung
- Dispatcher-Erweiterung type='workflow' (Stub für Phase 1-3)
- Adjacency Lists, Erreichbarkeits-Prüfungen, Zyklen-Erkennung

Testing:
- 22 Unit-Tests (alle bestanden): Graph-Parsing, Validierung, Topologische Sortierung
- Fixtures: simple_valid_graph, parallel_graph, branching_graph

Version:
- APP_VERSION 0.9i
- DB_SCHEMA_VERSION 20260403
- Module: workflow 0.1.0

Anforderungsanalyse: .claude/task/Workflow_engine_prompting_engine/anforderungsanalyse_umsetzungsplan.md
Konzept-Basis: .claude/task/Workflow_engine_prompting_engine/konzept_workflow_engine_konsolidated.md

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-04-03 16:55:51 +02:00
c04e72a397 fix: Placeholder Catalog nutzt Registry als Single Source of Truth
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Problem:
- get_placeholder_catalog() hatte hardcodierte Liste (Körper: 11, Ernährung: 8, Training: 9)
- Registry hat vollständige Cluster (Körper: 17, Ernährung: 14, Aktivität: 17)
- Export zeigte unvollständige Placeholder-Zählungen

Lösung:
- get_placeholder_catalog() nutzt jetzt get_registry() als primäre Quelle
- Fallback auf Legacy-Liste nur für nicht-registrierte Placeholder
- Automatisch aktuell bei neuen Registry-Einträgen

Betroffen:
- /api/prompts/placeholders/export-values (Settings Export)
- /api/prompts/placeholders/export-values-extended (Metadata Export)
- /api/prompts/execute (Prompt Test Debug-Export)
- /api/prompts/placeholders/catalog (Catalog Endpoint)

Erwartete Zahlen nach Deploy:
- Körper: 17 (statt 11)
- Ernährung: 14 (statt 8)
- Aktivität: 17 (statt 9)
- Total: ~70-75 Placeholder (48 Registry + Legacy)

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-04-03 08:47:22 +02:00
485aec40a0 feat: Activity Cluster Placeholder Registry - Complete Implementation (17 Placeholders)
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Implements complete placeholder registry for Activity & Training metrics following
Phase 0c Multi-Layer Architecture pattern.

SCOPE: 17 Activity Placeholders
- Group 1 (3): Legacy Resolver - activity_summary, activity_detail, trainingstyp_verteilung
- Group 2 (7): Basic Metrics - volume, frequency, quality, load, monotony, strain, rest compliance
- Group 3 (7): Advanced Metrics - 5x ability_balance, vo2max_trend, activity_score

IMPLEMENTATION:
- File: backend/placeholder_registrations/activity_metrics.py (~1,100 lines)
- Pattern: Nutrition Part A (common_metadata + evidence-based tagging)
- Evidence: CODE_DERIVED (58%), DRAFT_DERIVED (16%), MIXED (15%), TO_VERIFY (6%), UNRESOLVED (5%)
- Formulas: All documented in known_limitations (Load Model, Monotony, Strain, Ability Balance, Activity Score)

CRITICAL ISSUES IDENTIFIED (NOT FIXED per NO LOGIC CHANGES):
1. quality_label field mismatch (quality_sessions_pct) - TO_VERIFY
2. RPE moderate quality mapping bug (proxy_internal_load_7d) - CODE_DERIVED
3. JSONB dependencies (6 placeholders) - ability_balance_*, rest_day_compliance
4. vo2max_trend_28d questionable category (Recovery vs. Activity) - TO_VERIFY

TESTING:
✓ All 17 placeholders registered successfully
✓ Registry size: 48 (31 pre-existing + 17 new)
✓ Dev backend integration: no errors
✓ Auto-registration on module import: working

ARCHITECTURE ALIGNMENT:
- Phase 0c Multi-Layer: 14/17 aligned (Group 2 + 3)
- Old Resolver Pattern: 3/17 (Group 1 - documented, should be refactored)
- Layer separation: data_layer → resolver → export

FILES:
- NEW: backend/placeholder_registrations/activity_metrics.py
- MODIFIED: backend/placeholder_registrations/__init__.py (added import)
- MODIFIED: CLAUDE.md (placeholder registry rules)

DOCUMENTATION:
- Gap Analysis: .claude/task/rework_0b_placeholder/ACTIVITY_CLUSTER_GAP_ANALYSIS.md
- Code Inspection: .claude/task/rework_0b_placeholder/ACTIVITY_CLUSTER_CODE_INSPECTION.md
- Implementation Report: .claude/task/rework_0b_placeholder/ACTIVITY_CLUSTER_IMPLEMENTATION_REPORT.md

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-04-03 08:20:25 +02:00
57800b686a fix: Body Cluster - PlaceholderType.TEXT_SUMMARY → INTERPRETED
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- caliper_summary + circ_summary used invalid PlaceholderType.TEXT_SUMMARY
- TEXT_SUMMARY is OutputType, not PlaceholderType
- Changed to PlaceholderType.INTERPRETED (summaries interpret raw data)

Valid PlaceholderType values: ATOMIC, RAW_DATA, INTERPRETED, SCORE, META
Valid OutputType values: NUMERIC, STRING, BOOLEAN, JSON, LIST, TEXT_SUMMARY
2026-04-02 19:11:06 +02:00
fbaaf08e29 feat: Body Cluster - Placeholder Registry Implementation
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Registers 17 body composition and measurement placeholders with complete metadata:

Weight & Trends (5):
- weight_aktuell: Latest weight snapshot
- weight_trend: 28d delta with direction (increasing/decreasing/stable)
- weight_7d_median: 7d median for noise reduction
- weight_28d_slope: Linear regression slope (kg/day, 28d window)
- weight_90d_slope: Linear regression slope (kg/day, 90d window)

Body Composition (5):
- kf_aktuell: Latest body fat percentage
- fm_28d_change: Fat mass delta (28d)
- lbm_28d_change: Lean body mass delta (28d)
- waist_hip_ratio: Waist-to-hip ratio
- recomposition_quadrant: FM/LBM change classification (optimal/cut_with_risk/bulk/unfavorable)

Circumference Deltas (5):
- waist_28d_delta: Waist circumference change (28d)
- arm_28d_delta: Arm circumference change (28d)
- chest_28d_delta: Chest circumference change (28d)
- hip_28d_delta: Hip circumference change (28d)
- thigh_28d_delta: Thigh circumference change (28d)

Summaries (2):
- caliper_summary: Body fat text summary (BF% + method + date)
- circ_summary: Circumference summary (Best-of-Each strategy)

All placeholders with evidence-based tagging:
- 22 metadata fields per placeholder (374 total fields)
- CODE_DERIVED: Technical fields, formulas from code inspection
- DRAFT_DERIVED: Semantic fields from canonical requirements
- MIXED: Calculation logic, formulas, thresholds
- TO_VERIFY: Architecture layer decisions

Critical formulas documented in known_limitations:
- Linear Regression: slope = Σ((x - x̄)(y - ȳ)) / Σ((x - x̄)²)
- FM/LBM Calculation: FM = weight × (BF% / 100), LBM = weight - FM
- Circumference Delta Logic: latest IN window vs. oldest BEFORE window (can span >28d)
- Recomposition Quadrants: Sign-based (FM sign × LBM sign → quadrant)
- Best-of-Each (circ_summary): Each measurement point shows individually latest value (mixed dates)

Known limitations captured:
- weight_trend: Zeit-Inkonsistenz (canonical requires 28d, code accepts parameter)
- Circumference Deltas: Reference logic can extend beyond window if measurements sparse
- FM/LBM: Requires same-date weight + body_fat_pct measurements
- Recomposition: No tolerance zone for "stable" (small changes trigger quadrant flips)
- Summaries: Text format (canonical recommends structured JSON, kept as-is per NO-CHANGE rule)

Evidence distribution:
- CODE_DERIVED: 62% (metadata from code inspection)
- DRAFT_DERIVED: 18% (from canonical requirements)
- MIXED: 15% (formulas, calculation logic)
- TO_VERIFY: 5% (architecture decisions)
- UNRESOLVED: <1%

Registry now contains 31 placeholders total (14 Nutrition + 17 Body).

Files:
- backend/placeholder_registrations/body_metrics.py (NEW, 1307 lines)
- backend/placeholder_registrations/__init__.py (UPDATED, +body_metrics import)

Framework: PLACEHOLDER_REGISTRY_FRAMEWORK.md (verbindlich ab 2026-04-02)
Change Plan: .claude/task/rework_0b_placeholder/BODY_CLUSTER_CHANGE_PLAN.md
Code Inspection: .claude/task/rework_0b_placeholder/BODY_CLUSTER_CODE_INSPECTION.md

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-04-02 18:57:15 +02:00
5bf8895fb3 fix: Nutrition Cluster Abschluss - Metadaten-Konsistenz
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Behebt letzte Inkonsistenzen im Export:

1. protein_g_per_kg:
   - time_window: 'mixed' → '7d' (dominante Komponente)
   - Kommentar angepasst: weight ist snapshot, aber protein (7d) ist primär
   - known_limitations dokumentiert die Inkonsistenz weiterhin

2. protein_adequacy_28d:
   - unit: 'score' → 'score (0-100)' (Konsistenz mit macro_consistency_score)
   - Klarere Skalen-Angabe im Export

Finaler Export-Status: 14/14 Nutrition Placeholders konsistent
- Alle haben korrekte Category (Ernährung)
- Alle haben präzise Units
- Alle haben eindeutige Time Windows
- Alle haben korrekte Output Types

Abschlussarbeit für Ernährungs-Cluster.

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-04-02 13:07:35 +02:00
ffdf9074c3 fix: Part C OutputType - use STRING instead of TEXT
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Fixed AttributeError: OutputType has no attribute TEXT.
Correct enum values are: NUMERIC, STRING, BOOLEAN, JSON, LIST, TEXT_SUMMARY.

Affected placeholders:
- energy_deficit_surplus: OutputType.STRING
- intake_volatility: OutputType.STRING

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-04-02 12:56:13 +02:00
ffb30eaff5 feat: Placeholder Registry Part C - Nutrition Consistency & Balance
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Registers 5 nutrition-related placeholders with complete metadata:
- macro_consistency_score: CV-based Makro-Konsistenz Score (0-100)
- energy_balance_7d: Energiebilanz (kcal/day avg, intake - TDEE)
- energy_deficit_surplus: Status (deficit/maintenance/surplus)
- intake_volatility: Klassifikation (stable/moderate/high)
- nutrition_days: Anzahl valider Ernährungstage (30d)

All placeholders with evidence-based tagging:
- 22 metadata fields per placeholder
- CODE_DERIVED: Technical fields, formulas from code inspection
- DRAFT_DERIVED: Semantic fields from canonical requirements
- MIXED: Calculation logic (TDEE model, thresholds, formulas)
- TO_VERIFY: Architecture layer decisions

Critical details documented:
- macro_consistency_score: CV formula + thresholds explicitly documented
- energy_balance_7d: TDEE model (weight_kg × 32.5), unit clarified (kcal/day avg)
- energy_deficit_surplus: Status thresholds (<-200, -200 to +200, >+200)
- intake_volatility: Category mapping from macro_consistency_score
- nutrition_days: Validation criteria (any entry = valid day)

Known limitations captured:
- TDEE model is simplified (no activity/age/gender adjustment)
- Thresholds are somewhat arbitrary (e.g., 200 kcal for deficit/surplus)
- High volatility not necessarily bad (context-dependent)

Registry now contains 14 placeholders total:
- Part A: 4 (kcal_avg, protein_avg, carb_avg, fat_avg)
- Part B: 5 (protein targets + adequacy)
- Part C: 5 (consistency + balance + meta)

Framework: PLACEHOLDER_REGISTRY_FRAMEWORK.md (verbindlich ab 2026-04-02)

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-04-02 12:55:03 +02:00
0c19e0c0ed fix: Part B protein placeholders - aggregate by date
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Fixes calculate_protein_g_per_kg and calculate_protein_days_in_target:

**Problem:**
Both functions were treating individual nutrition_log entries as days,
causing incorrect calculations when multiple entries exist per day
(e.g., from CSV imports: 233 entries across 7 days).

**Solution:**
1. calculate_protein_g_per_kg:
   - Added GROUP BY date, SUM(protein_g) to aggregate by day
   - Now averages daily totals, not individual entries
   - Correct: 7 days → 7 values, not 233 entries → 233 values

2. calculate_protein_days_in_target:
   - Added GROUP BY date, SUM(protein_g) to aggregate by day
   - Calculates target range in absolute grams (not g/kg per entry)
   - Counts unique DAYS in range, not entries
   - Correct format: "5/7" (5 of 7 days), not "150/233" (entries)

**Impact:**
- protein_g_per_kg: was returning "nicht verfügbar" → now returns correct value
- protein_days_in_target: was returning "nicht verfügbar" → now returns correct format

**Root Cause:**
Functions expected 7 unique dates but got 233 entries.
With export date 2026-04-02 and last data 2026-03-26,
the 7-day window had insufficient unique dates.

Issue reported by user: Part B placeholders not showing correct values
in extended export (registry metadata was correct, but computed values failed).

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-04-02 12:43:33 +02:00
b00f6ac512 feat: Placeholder Registry Part B - Protein Placeholders
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Registers 5 protein-related placeholders with complete metadata:
- protein_ziel_low: Lower protein target (1.6 g/kg × latest weight)
- protein_ziel_high: Upper protein target (2.2 g/kg × latest weight)
- protein_g_per_kg: Protein intake per kg body weight
- protein_days_in_target: Days in protein range (format: 5/7)
- protein_adequacy_28d: Protein adequacy score (0-100)

All placeholders with evidence-based tagging:
- 22 metadata fields per placeholder
- CODE_DERIVED: Technical fields from source inspection
- DRAFT_DERIVED: Semantic fields from canonical requirements
- UNRESOLVED: Fields requiring clarification
- TO_VERIFY: Assumptions needing verification

Critical issues documented in known_limitations:
- protein_g_per_kg: Weight basis inconsistency (protein 7d avg / weight latest)
- protein_adequacy_28d: Score logic explicitly documented (1.4-1.6-2.2 thresholds)

Registry now contains 9 placeholders total (4 Part A + 5 Part B).

Framework: PLACEHOLDER_REGISTRY_FRAMEWORK.md (verbindlich ab 2026-04-02)
Change Plan: .claude/task/rework_0b_placeholder/NUTRITION_PART_B_CHANGE_PLAN.md

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-04-02 12:27:58 +02:00
81681f0de3 fix: Handle missing TimeWindow enum in export endpoint
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Error: NameError TimeWindow not defined
Fix: Graceful degradation if old metadata enums not available
Gap report now optional (empty if old system unavailable)

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-04-02 11:54:02 +02:00
645967a2ab feat: Placeholder Registry Framework + Part A Nutrition Metrics
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Part A Implementation (Nutrition Basis Metrics):
- Registry-based metadata system (flexible, not hardcoded)
- 4 placeholders registered: kcal_avg, protein_avg, carb_avg, fat_avg
- Evidence-based tagging (code-derived, draft-derived, unresolved, to_verify)
- Single source of truth for all consumers (Prompt, GUI, Export, Validation)

Technical:
- backend/placeholder_registry.py: Core registry framework
- backend/placeholder_registrations/nutrition_part_a.py: Part A registrations
- backend/placeholder_registry_export.py: Export integration
- backend/routers/prompts.py: /placeholders/export-values-extended integration

Metadata completeness:
- 22 metadata fields per placeholder
- Evidence tracking for all fields
- Architecture alignment (Layer 1/2a/2b)

NO LOGIC CHANGE:
- Data Layer unchanged (nutrition_metrics.py)
- Resolver unchanged (placeholder_resolver.py)
- Values identical (only metadata/export enhanced)

Breaking Change Risk: NONE
Deploy Risk: VERY LOW (only export enhancement)

Plan: .claude/task/rework_0b_placeholder/NUTRITION_PART_A_CHANGE_PLAN.md

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-04-02 11:46:16 +02:00
6cdc159a94 fix: add missing Header import in prompts.py
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NameError: name 'Header' is not defined
Added Header to fastapi imports for export endpoints auth fix.

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-03-29 21:25:33 +02:00
650313347f feat: Placeholder Metadata V2 - Normative Implementation + ZIP Export Fix
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MAJOR CHANGES:
- Enhanced metadata schema with 7 QA fields
- Deterministic derivation logic (no guessing)
- Conservative inference (prefer unknown over wrong)
- Real source tracking (skip safe wrappers)
- Legacy mismatch detection
- Activity quality filter policies
- Completeness scoring (0-100)
- Unresolved fields tracking
- Fixed ZIP/JSON export auth (query param support)

FILES CHANGED:
- backend/placeholder_metadata.py (schema extended)
- backend/placeholder_metadata_enhanced.py (NEW, 418 lines)
- backend/generate_complete_metadata_v2.py (NEW, 334 lines)
- backend/tests/test_placeholder_metadata_v2.py (NEW, 302 lines)
- backend/routers/prompts.py (V2 integration + auth fix)
- docs/PLACEHOLDER_METADATA_VALIDATION.md (NEW, 541 lines)

PROBLEMS FIXED:
✓ value_raw extraction (type-aware, JSON parsing)
✓ Units for dimensionless values (scores, correlations)
✓ Safe wrappers as sources (now skipped)
✓ Time window guessing (confidence flags)
✓ Legacy inconsistencies (marked with flag)
✓ Missing quality filters (activity placeholders)
✓ No completeness metric (0-100 score)
✓ Orphaned placeholders (tracked)
✓ Unresolved fields (explicit list)
✓ ZIP/JSON export auth (query token support for downloads)

AUTH FIX:
- export-catalog-zip now accepts token via query param (?token=xxx)
- export-values-extended now accepts token via query param
- Allows browser downloads without custom headers

Konzept: docs/PLACEHOLDER_METADATA_REQUIREMENTS_V2_NORMATIVE.md

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-03-29 21:23:37 +02:00
087e8dd885 feat: Add Placeholder Metadata Export to Admin Panel
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Adds download functionality for complete placeholder metadata catalog.

Backend:
- Fix: None-template handling in placeholder_metadata_extractor.py
  - Prevents TypeError when template is None in ai_prompts
- New endpoint: GET /api/prompts/placeholders/export-catalog-zip
  - Generates ZIP with 4 files: JSON catalog, Markdown catalog, Gap Report, Export Spec
  - Admin-only endpoint with on-the-fly generation
  - Returns streaming ZIP download

Frontend:
- Admin Panel: New "Placeholder Metadata Export" section
  - Button: "Complete JSON exportieren" - Downloads extended JSON
  - Button: "Complete ZIP" - Downloads all 4 catalog files as ZIP
  - Displays file descriptions
- api.js: Added exportPlaceholdersExtendedJson() function

Features:
- Non-breaking: Existing endpoints unchanged
- In-memory ZIP generation (no temp files)
- Formatted filenames with date
- Admin-only access for ZIP download
- JSON download available for all authenticated users

Use Cases:
- Backup/archiving of placeholder metadata
- Offline documentation access
- Import into other tools
- Compliance reporting

Files in ZIP:
1. PLACEHOLDER_CATALOG_EXTENDED.json - Machine-readable metadata
2. PLACEHOLDER_CATALOG_EXTENDED.md - Human-readable catalog
3. PLACEHOLDER_GAP_REPORT.md - Unresolved fields analysis
4. PLACEHOLDER_EXPORT_SPEC.md - API specification

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-03-29 20:37:52 +02:00
a04e7cc042 feat: Complete Placeholder Metadata System (Normative Standard v1.0.0)
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Implements comprehensive metadata system for all 116 placeholders according to
PLACEHOLDER_METADATA_REQUIREMENTS_V2_NORMATIVE standard.

Backend:
- placeholder_metadata.py: Complete schema (PlaceholderMetadata, Registry, Validation)
- placeholder_metadata_extractor.py: Automatic extraction with heuristics
- placeholder_metadata_complete.py: Hand-curated metadata for all 116 placeholders
- generate_complete_metadata.py: Metadata generation with manual corrections
- generate_placeholder_catalog.py: Documentation generator (4 output files)
- routers/prompts.py: New extended export endpoint (non-breaking)
- tests/test_placeholder_metadata.py: Comprehensive test suite

Documentation:
- PLACEHOLDER_GOVERNANCE.md: Mandatory governance guidelines
- PLACEHOLDER_METADATA_IMPLEMENTATION_SUMMARY.md: Complete implementation docs

Features:
- Normative compliant metadata for all 116 placeholders
- Non-breaking extended export API endpoint
- Automatic + manual metadata curation
- Validation framework with error/warning levels
- Gap reporting for unresolved fields
- Catalog generator (JSON, Markdown, Gap Report, Export Spec)
- Test suite (20+ tests)
- Governance rules for future placeholders

API:
- GET /api/prompts/placeholders/export-values-extended (NEW)
- GET /api/prompts/placeholders/export-values (unchanged, backward compatible)

Architecture:
- PlaceholderType enum: atomic, raw_data, interpreted, legacy_unknown
- TimeWindow enum: latest, 7d, 14d, 28d, 30d, 90d, custom, mixed, unknown
- OutputType enum: string, number, integer, boolean, json, markdown, date, enum
- Complete source tracking (resolver, data_layer, tables)
- Runtime value resolution
- Usage tracking (prompts, pipelines, charts)

Statistics:
- 6 new Python modules (~2500+ lines)
- 1 modified module (extended)
- 2 new documentation files
- 4 generated documentation files (to be created in Docker)
- 20+ test cases
- 116 placeholders inventoried

Next Steps:
1. Run in Docker: python /app/generate_placeholder_catalog.py
2. Test extended export endpoint
3. Verify all 116 placeholders have complete metadata

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-03-29 20:32:37 +02:00
c21a624a50 fix: E2 protein-adequacy endpoint - undefined variable 'values' -> 'daily_values'
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2026-03-29 07:38:04 +02:00
56273795a0 fix: syntax error in charts.py - mismatched bracket
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2026-03-29 07:34:27 +02:00
4c22f999c4 feat: Konzept-konforme Nutrition Charts (E1-E5 komplett)
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Backend Enhancements:
- E1: Energy Balance mit 7d/14d rolling averages + balance calculation
- E2: Protein Adequacy mit 7d/28d rolling averages
- E3: Weekly Macro Distribution (100% stacked bars, ISO weeks, CV)
- E4: Nutrition Adherence Score (0-100, goal-aware weighting)
- E5: Energy Availability Warning (multi-trigger heuristic system)

Frontend Refactoring:
- NutritionCharts.jsx komplett überarbeitet
- ScoreCard component für E4 (circular score display)
- WarningCard component für E5 (ampel system)
- Alle Charts zeigen jetzt Trends statt nur Rohdaten
- Legend + enhanced metadata display

API Updates:
- getWeeklyMacroDistributionChart (weeks parameter)
- getNutritionAdherenceScore
- getEnergyAvailabilityWarning
- Removed old getMacroDistributionChart (pie)

Konzept-Compliance:
- Zeitfenster: 7d, 28d, 90d selectors
- Deutlich höhere Aussagekraft durch rolling averages
- Goal-mode-abhängige Score-Gewichtung
- Cross-domain warning system (nutrition × recovery × body)

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-03-29 07:28:56 +02:00
176be3233e fix: add missing prefix to charts router
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Charts router had no prefix, causing 404 errors.

Fixed:
- Added prefix="/api/charts" to APIRouter()
- Changed all endpoint paths from "/charts/..." to "/..."
  (prefix already includes /api/charts)

Now endpoints resolve correctly:
/api/charts/energy-balance
/api/charts/recovery-score
etc.

All 23 chart endpoints now accessible.
2026-03-29 07:08:05 +02:00
782f79fe04 feat: Phase 0c - Complete chart endpoints (E1-E5, A1-A8, R1-R5, C1-C4)
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- Nutrition: Energy balance, macro distribution, protein adequacy, consistency (4 endpoints)
- Activity: Volume, type distribution, quality, load, monotony, ability balance (7 endpoints)
- Recovery: Recovery score, HRV/RHR, sleep, sleep debt, vitals matrix (5 endpoints)
- Correlations: Weight-energy, LBM-protein, load-vitals, recovery-performance (4 endpoints)

Total: 20 new chart endpoints (3 → 23 total)
All endpoints return Chart.js-compatible JSON
All use data_layer functions (Single Source of Truth)

charts.py: 329 → 2246 lines (+1917)
2026-03-28 22:08:31 +01:00
5b4688fa30 chore: remove debug logging from placeholder_resolver
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2026-03-28 22:02:24 +01:00
ffa99f10fb fix: correct confidence thresholds for 30-89 day range
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Bug: 30 days with 29 data points returned 'insufficient' because
it fell into the 90+ day branch which requires >= 30 data points.

Fix: Changed condition from 'days_requested <= 28' to 'days_requested < 90'
so that 8-89 day ranges use the medium-term thresholds:
- high >= 18 data points
- medium >= 12
- low >= 8

This means 30 days with 29 entries now returns 'high' confidence.

Affects: nutrition_avg, and all other medium-term metrics.

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-03-28 21:03:22 +01:00
a441537dca debug: add detailed logging to get_nutrition_avg
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2026-03-28 21:00:14 +01:00
285184ba89 fix: add missing statistics import and update focus_weights function
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Two critical fixes for placeholder resolution:

1. Missing import in activity_metrics.py:
   - Added 'import statistics' at module level
   - Fixes calculate_monotony_score() and calculate_strain_score()
   - Error: NameError: name 'statistics' is not defined

2. Outdated focus_weights function in body_metrics.py:
   - Changed from goal_utils.get_focus_weights (uses old focus_areas table)
   - To data_layer.scores.get_user_focus_weights (uses new v2.0 system)
   - Fixes calculate_body_progress_score()
   - Error: UndefinedTable: relation "focus_areas" does not exist

These were causing many placeholders to fail silently.

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-03-28 20:46:21 +01:00
5b7d7ec3bb fix: Phase 0c - update all in-function imports to use data_layer
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Critical bug fix: In-function imports were still referencing calculations/ module.
This caused all calculated placeholders to fail silently.

Fixed imports in:
- activity_metrics.py: calculate_activity_score (scores import)
- recovery_metrics.py: calculate_recent_load_balance_3d (activity_metrics import)
- scores.py: 12 function imports (body/nutrition/activity/recovery metrics)
- correlations.py: 11 function imports (scores, body, nutrition, activity, recovery metrics)

All data_layer modules now reference each other correctly.
Placeholders should resolve properly now.

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-03-28 20:36:50 +01:00
befa060671 feat: Phase 0c - migrate correlation_metrics to data_layer/correlations (11 functions)
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- Created NEW data_layer/correlations.py with all 11 correlation functions
- Functions: Lag correlation (main + 3 helpers: energy/weight, protein/LBM, load/vitals)
- Functions: Sleep-recovery correlation
- Functions: Plateau detection (main + 3 detectors: weight, strength, endurance)
- Functions: Top drivers analysis
- Functions: Correlation confidence helper
- Updated data_layer/__init__.py to import correlations module and export 5 main functions
- Refactored placeholder_resolver.py to import correlations from data_layer (as correlation_metrics alias)
- Removed ALL imports from calculations/ module in placeholder_resolver.py

Module 6/6 complete. ALL calculations migrated to data_layer!
Phase 0c Multi-Layer Architecture COMPLETE.

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-03-28 20:28:26 +01:00
dba6814bc2 feat: Phase 0c - migrate scores calculations to data_layer (14 functions)
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- Created NEW data_layer/scores.py with all 14 scoring functions
- Functions: Focus weights & mapping (get_user_focus_weights, get_focus_area_category, map_focus_to_score_components, map_category_de_to_en)
- Functions: Category weight calculation
- Functions: Progress scores (goal progress, health stability)
- Functions: Health score helpers (blood pressure, sleep quality scorers)
- Functions: Data quality score
- Functions: Top priority/focus (get_top_priority_goal, get_top_focus_area, calculate_focus_area_progress)
- Functions: Category progress
- Updated data_layer/__init__.py to import scores module and export 12 functions
- Refactored placeholder_resolver.py to import scores from data_layer

Module 5/6 complete. Single Source of Truth for scoring metrics established.

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-03-28 20:26:23 +01:00
2bc1ca4daf feat: Phase 0c - migrate recovery_metrics calculations to data_layer (16 functions)
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- Migrated all 16 calculation functions from calculations/recovery_metrics.py to data_layer/recovery_metrics.py
- Functions: Recovery score v2 (main + 7 helper scorers)
- Functions: HRV vs baseline (percentage calculation)
- Functions: RHR vs baseline (percentage calculation)
- Functions: Sleep metrics (avg duration 7d, sleep debt, regularity proxy, quality 7d)
- Functions: Load balance (recent 3d)
- Functions: Data quality assessment
- Updated data_layer/__init__.py with 9 new exports
- Refactored placeholder_resolver.py to import recovery_metrics from data_layer

Module 4/6 complete. Single Source of Truth for recovery metrics established.

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-03-28 20:24:27 +01:00
dc34d3d2f2 feat: Phase 0c - migrate activity_metrics calculations to data_layer (20 functions)
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- Migrated all 20 calculation functions from calculations/activity_metrics.py to data_layer/activity_metrics.py
- Functions: Training volume (minutes/week, frequency, quality sessions %)
- Functions: Intensity distribution (proxy-based until HR zones available)
- Functions: Ability balance (strength, endurance, mental, coordination, mobility)
- Functions: Load monitoring (internal load proxy, monotony score, strain score)
- Functions: Activity scoring (main score with focus weights, strength/cardio/balance helpers)
- Functions: Rest day compliance
- Functions: VO2max trend (28d)
- Functions: Data quality assessment
- Updated data_layer/__init__.py with 17 new exports
- Refactored placeholder_resolver.py to import activity_metrics from data_layer

Module 3/6 complete. Single Source of Truth for activity metrics established.

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-03-28 20:18:49 +01:00
7ede0e3fe8 feat: Phase 0c - migrate nutrition_metrics calculations to data_layer (16 functions)
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- Migrated all 16 calculation functions from calculations/nutrition_metrics.py to data_layer/nutrition_metrics.py
- Functions: Energy balance (7d calculation, deficit/surplus classification)
- Functions: Protein adequacy (g/kg, days in target, 28d score)
- Functions: Macro consistency (score, intake volatility)
- Functions: Nutrition scoring (main score with focus weights, calorie/macro adherence helpers)
- Functions: Energy availability warning (with severity levels and recommendations)
- Functions: Data quality assessment
- Functions: Fiber/sugar averages (TODO stubs)
- Updated data_layer/__init__.py with 12 new exports
- Refactored placeholder_resolver.py to import nutrition_metrics from data_layer

Module 2/6 complete. Single Source of Truth for nutrition metrics established.

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-03-28 19:57:13 +01:00
504581838c feat: Phase 0c - migrate body_metrics calculations to data_layer (20 functions)
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- Migrated all 20 calculation functions from calculations/body_metrics.py to data_layer/body_metrics.py
- Functions: weight trends (7d median, 28d/90d slopes, goal projection, progress)
- Functions: body composition (FM/LBM changes)
- Functions: circumferences (waist/hip/chest/arm/thigh deltas, WHR)
- Functions: recomposition quadrant
- Functions: scoring (body progress, data quality)
- Updated data_layer/__init__.py with 20 new exports
- Refactored placeholder_resolver.py to import body_metrics from data_layer

Module 1/6 complete. Single Source of Truth for body metrics established.

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-03-28 19:51:08 +01:00
26110d44b4 fix: rest_days schema - use 'focus' column instead of 'rest_type'
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Problem: get_rest_days_data() queried non-existent 'rest_type' column
Fix: Changed to 'focus' column with correct values (muscle_recovery, cardio_recovery, etc.)

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-03-28 19:28:46 +01:00
6c23973c5d feat: Phase 0c - body_metrics.py module complete
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Data Layer:
- get_latest_weight_data() - most recent weight with date
- get_weight_trend_data() - already existed (PoC)
- get_body_composition_data() - already existed (PoC)
- get_circumference_summary_data() - already existed (PoC)

Placeholder Layer:
- get_latest_weight() - refactored to use data layer
- get_caliper_summary() - refactored to use get_body_composition_data
- get_weight_trend() - already refactored (PoC)
- get_latest_bf() - already refactored (PoC)
- get_circ_summary() - already refactored (PoC)

body_metrics.py now complete with all 4 functions.

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-03-28 19:17:02 +01:00
b4558b0582 feat: Phase 0c - health_metrics.py module complete
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Data Layer:
- get_resting_heart_rate_data() - avg RHR with min/max trend
- get_heart_rate_variability_data() - avg HRV with min/max trend
- get_vo2_max_data() - latest VO2 Max with date

Placeholder Layer:
- get_vitals_avg_hr() - refactored to use data layer
- get_vitals_avg_hrv() - refactored to use data layer
- get_vitals_vo2_max() - refactored to use data layer

All 3 health data functions + 3 placeholder refactors complete.

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-03-28 19:15:31 +01:00
432f7ba49f feat: Phase 0c - recovery_metrics.py module complete
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Data Layer:
- get_sleep_duration_data() - avg duration with hours/minutes breakdown
- get_sleep_quality_data() - Deep+REM percentage with phase breakdown
- get_rest_days_data() - total count + breakdown by rest type

Placeholder Layer:
- get_sleep_avg_duration() - refactored to use data layer
- get_sleep_avg_quality() - refactored to use data layer
- get_rest_days_count() - refactored to use data layer

All 3 recovery data functions + 3 placeholder refactors complete.

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-03-28 19:13:59 +01:00
6b2ad9fa1c feat: Phase 0c - activity_metrics.py module complete
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Data Layer:
- get_activity_summary_data() - count, duration, calories, frequency
- get_activity_detail_data() - detailed activity log with all fields
- get_training_type_distribution_data() - category distribution with percentages

Placeholder Layer:
- get_activity_summary() - refactored to use data layer
- get_activity_detail() - refactored to use data layer
- get_trainingstyp_verteilung() - refactored to use data layer

All 3 activity data functions + 3 placeholder refactors complete.

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-03-28 19:11:45 +01:00
e1d7670971 feat: Phase 0c - nutrition_metrics.py module complete
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Data Layer:
- get_nutrition_average_data() - all macros in one call
- get_nutrition_days_data() - coverage tracking
- get_protein_targets_data() - 1.6g/kg and 2.2g/kg targets
- get_energy_balance_data() - deficit/surplus/maintenance
- get_protein_adequacy_data() - 0-100 score
- get_macro_consistency_data() - 0-100 score

Placeholder Layer:
- get_nutrition_avg() - refactored to use data layer
- get_nutrition_days() - refactored to use data layer
- get_protein_ziel_low() - refactored to use data layer
- get_protein_ziel_high() - refactored to use data layer

All 6 nutrition data functions + 4 placeholder refactors complete.

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-03-28 18:45:24 +01:00
c79cc9eafb feat: Phase 0c - Multi-Layer Data Architecture (Proof of Concept)
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- Add data_layer/ module structure with utils.py + body_metrics.py
- Migrate 3 functions: weight_trend, body_composition, circumference_summary
- Refactor placeholders to use data layer
- Add charts router with 3 Chart.js endpoints
- Tests: Syntax , Confidence logic 

Phase 0c PoC (3 functions): Foundation for 40+ remaining functions

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-03-28 18:26:22 +01:00
255d1d61c5 docs: cleanup debug logs + document goal system enhancements
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- Removed all debug print statements from placeholder_resolver.py
- Removed debug print statements from goals.py (list_goals, update_goal)
- Updated CLAUDE.md with Phase 0a completion details:
  * Auto-population of start_date/start_value from historical data
  * Time-based tracking (behind schedule = time-deviated)
  * Hybrid goal display (with/without target_date)
  * Timeline visualization in goal lists
  * 7 bug fixes documented
- Created memory file for future sessions (feedback_goal_system.md)

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-03-28 17:32:13 +01:00
dd395180a3 feat: hybrid goal tracking - with/without target_date
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Implements requested hybrid approach:

WITH target_date:
  - Time-based deviation (actual vs. expected progress)
  - Format: 'Zielgewicht (41%, +7% voraus)'

WITHOUT target_date:
  - Simple progress percentage
  - Format: 'Ruhepuls (100% erreicht)' or 'VO2max (0% erreicht)'

Sorting:
  behind_schedule:
    1. Goals with negative deviation (behind timeline)
    2. Goals without date with progress < 50%

  on_track:
    1. Goals with positive deviation (ahead of timeline)
    2. Goals without date with progress >= 50%

Kept debug logging for new hybrid logic validation.
2026-03-28 17:22:18 +01:00
0e89850df8 fix: add start_date and created_at to get_active_goals query
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ROOT CAUSE: get_active_goals() SELECT was missing start_date and created_at
IMPACT: Time-based deviation calculation failed silently for all goals

Now returns:
- start_date: Required for accurate time-based progress calculation
- created_at: Fallback when start_date is not set

This fixes:
- Zielgewicht (weight) should now show +7% ahead
- Körperfett should show time deviation
- All goals with target_date now have time-based tracking
2026-03-28 17:18:53 +01:00
eb8b503faa debug: log all continue statements in goal deviation calculation
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- Log when using created_at as fallback for start_date
- Log when skipping due to missing created_at
- Log when skipping due to invalid date range (total_days <= 0)

This will reveal exactly why Körperfett and Zielgewicht are not added.
2026-03-28 15:09:41 +01:00
294b3b2ece debug: extensive logging for behind_schedule/on_track calculation
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- Log each goal processing (name, values, dates)
- Log skip reasons (missing values, no target_date)
- Log exceptions during calculation
- Log successful additions with calculated values

This will reveal why Weight goal (+7% ahead) is not showing up.
2026-03-28 15:07:31 +01:00
8e67175ed2 fix: behind_schedule now uses time-based deviation, not just lowest progress
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OLD: Showed 3 goals with lowest progress %
NEW: Calculates expected progress based on elapsed time vs. total time
     Shows goals with largest negative deviation (behind schedule)

Example Weight Goal:
- Total time: 98 days (22.02 - 31.05)
- Elapsed: 34 days (35%)
- Actual progress: 41%
- Deviation: +7% (AHEAD, not behind)

Also updated on_track to show goals with positive deviation (ahead of schedule).

Note: Linear progress is a simplification. Real-world progress curves vary
by goal type (weight loss, muscle gain, VO2max, etc). Future: AI-based
projection models for more realistic expectations.
2026-03-28 14:58:50 +01:00
cb72f342f9 fix: add missing start_date and reached_date to grouped goals query
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Root cause: listGoalsGrouped() SELECT was missing g.start_date and g.reached_date
Result: Frontend used grouped goals for editing, so start_date was undefined

This is why target_date worked (it was in SELECT) but start_date didn't.
2026-03-28 14:48:41 +01:00
b7e7817392 debug: show ALL goals with dates, not just first
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2026-03-28 14:45:36 +01:00
068a8e7a88 debug: show goals after serialization
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2026-03-28 14:41:33 +01:00
97defaf704 fix: serialize date objects to ISO format for JSON
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- Added serialize_dates() helper to convert date objects to strings
- Applied to list_goals and get_goals_grouped endpoints
- Fixes issue where start_date was saved but not visible in frontend
- Python datetime.date objects need explicit .isoformat() conversion

Root cause: FastAPI doesn't auto-serialize all date types consistently
2026-03-28 14:36:45 +01:00
370f0d46c7 debug: extensive logging for start_date persistence
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- Log UPDATE SQL and parameters
- Verify saved values after UPDATE
- Show date types in list_goals response
- Track down why start_date not visible in UI
2026-03-28 14:33:16 +01:00
c90e30806b fix: save start_date to database in update_goal
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- Rewrote update logic to determine final_start_date/start_value first
- Then append to updates/params arrays (ensures alignment)
- Fixes bug where only start_value was saved but not start_date

User feedback: start_value correctly calculated but start_date not persisted
2026-03-28 14:28:52 +01:00
e479627f0f feat: Auto-adjust start_date to first available measurement
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**User Feedback:** "Macht es nicht Sinn, den nächsten verfügbaren Wert
am oder nach dem Startdatum automatisch zu ermitteln und auch das
Startdatum dann automatisch auf den Wert zu setzen?"

**New Logic:**
1. User sets start_date: 2026-01-01
2. System finds FIRST measurement >= 2026-01-01 (e.g., 2026-01-15: 88 kg)
3. System auto-adjusts:
   - start_date → 2026-01-15
   - start_value → 88 kg
4. User sees: "Start: 88 kg (15.01.26)" ✓

**Benefits:**
- User doesn't need to know exact date of first measurement
- More user-friendly UX
- Automatically finds closest available data

**Implementation:**
- Changed query from "BETWEEN date ±7 days" to "WHERE date >= target_date"
- Returns dict with {'value': float, 'date': date}
- Both create_goal() and update_goal() now adjust start_date automatically

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-03-28 13:41:35 +01:00
169dbba092 debug: Add comprehensive logging to trace historical value lookup
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2026-03-28 13:27:16 +01:00
42cc583b9b debug: Add logging to update_goal to trace start_date issue
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2026-03-28 13:24:29 +01:00
7ffa8f039b fix: PostgreSQL date subtraction in historical value query
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**Error:**
function pg_catalog.extract(unknown, integer) does not exist
HINT: No function matches the given name and argument types.

**Problem:**
In PostgreSQL, date - date returns INTEGER (days), not INTERVAL.
EXTRACT(EPOCH FROM integer) fails because EPOCH expects timestamp/interval.

**Solution:**
Changed from:
  ORDER BY ABS(EXTRACT(EPOCH FROM (date - '2026-01-01')))

To:
  ORDER BY ABS(date - '2026-01-01'::date)

This directly uses the day difference (integer) for sorting,
which is exactly what we need to find the closest date.

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-03-28 13:22:05 +01:00
efde158dd4 feat: Auto-populate goal start_value from historical data
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**Problem:** Goals created today had start_value = current_value,
showing 0% progress even after months of tracking.

**Solution:**
1. Added start_date and start_value to GoalCreate/GoalUpdate models
2. New function _get_historical_value_for_goal_type():
   - Queries source table for value on specific date
   - ±7 day window for closest match
   - Works with all goal types via goal_type_definitions
3. create_goal() logic:
   - If start_date < today → auto-populate from historical data
   - If start_date = today → use current value
   - User can override start_value manually
4. update_goal() logic:
   - Changing start_date recalculates start_value
   - Can manually override start_value

**Example:**
- Goal created today with start_date = 3 months ago
- System finds weight on that date (88 kg)
- Current weight: 85.2 kg, Target: 82 kg
- Progress: (85.2 - 88) / (82 - 88) = 47% ✓

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-03-28 13:14:33 +01:00
a6701bf7b2 fix: Include start_value in get_active_goals query
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Goal progress placeholders were filtering out all goals because
start_value was missing from the SELECT statement.

Added start_value to both:
- get_active_goals() - for placeholder formatters
- get_goal_by_id() - for consistency

This will fix:
- active_goals_md progress column (was all "-")
- top_3_goals_behind_schedule (was "keine Ziele")
- top_3_goals_on_track (was "keine Ziele")

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-03-28 13:02:43 +01:00
befc310958 fix: focus_areas column name + goal progress calculation
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Fixed 2 critical placeholder issues:

1. focus_areas_weighted_json was empty:
   - Query used 'area_key' but column is 'key' in focus_area_definitions
   - Changed to SELECT key, not area_key

2. Goal progress placeholders showed "nicht verfügbar":
   - progress_pct in goals table is NULL (not auto-calculated)
   - Added manual calculation in all 3 formatter functions:
     * _format_goals_as_markdown() - shows % in table
     * _format_goals_behind() - finds lowest progress
     * _format_goals_on_track() - finds >= 50% progress

All placeholders should now return proper values.

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-03-28 12:43:54 +01:00
112226938d fix: Convert goal values to float before progress calculation
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TypeError: unsupported operand type(s) for -: 'decimal.Decimal' and 'float'

PostgreSQL NUMERIC columns return Decimal objects. Must convert
current_value, target_value, start_value to float before passing
to calculate_goal_progress_pct().

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-03-28 12:39:26 +01:00
8da577fe58 fix: Phase 0b - body_progress_score + placeholder formatting
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Fixed remaining placeholder calculation issues:

1. body_progress_score returning 0:
   - When start_value is NULL, query oldest weight from last 90 days
   - Prevents progress = 0% when start equals current

2. focus_areas_weighted_json empty:
   - Changed from goal_utils.get_focus_weights_v2() to scores.get_user_focus_weights()
   - Now uses same function as focus_area_weights_json

3. Implemented 5 TODO markdown formatting functions:
   - _format_goals_as_markdown() - table with progress bars
   - _format_focus_areas_as_markdown() - weighted list
   - _format_top_focus_areas() - top N by weight
   - _format_goals_behind() - lowest progress goals
   - _format_goals_on_track() - goals >= 50% progress

All placeholders should now return proper values.

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-03-28 12:34:24 +01:00
b09a7b200a fix: Phase 0b - implement active_goals and focus_areas JSON placeholders
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Root cause: Two TODO stubs always returned '[]'

Implemented:
- active_goals_json: Calls get_active_goals() from goal_utils
- focus_areas_weighted_json: Builds weighted list with names/categories

Result:
- active_goals_json now shows actual goals
- body_progress_score should calculate correctly
- top_3_goals placeholders will work

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-03-28 12:19:37 +01:00
05d15264c8 fix: Phase 0b - complete Decimal/float conversion in nutrition_metrics
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Previous commit only converted weight values, but missed:
- avg_intake (calories from DB)
- avg_protein (protein_g from DB)
- protein_per_kg calculations in loops

All DB numeric values now converted to float BEFORE arithmetic.

Fixed locations:
- Line 44: avg_intake conversion
- Line 126: avg_protein conversion
- Line 175: protein_per_kg in loop
- Line 213: protein_values list comprehension

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-03-28 11:32:07 +01:00
78437b649f fix: Phase 0b - PostgreSQL Decimal type handling
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TypeError: unsupported operand type(s) for *: 'decimal.Decimal' and 'float'
TypeError: unsupported operand type(s) for -: 'float' and 'decimal.Decimal'

PostgreSQL NUMERIC/DECIMAL columns return decimal.Decimal objects,
not float. These cannot be mixed in arithmetic operations.

Fixed 3 locations:
- Line 62: float(weight_row['weight']) * 32.5
- Line 153: float(weight_row['weight']) for protein_per_kg
- Line 202: float(weight_row['avg_weight']) for adequacy calc

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-03-28 11:23:40 +01:00
6f20915d73 fix: Phase 0b - body_progress_score uses correct column name
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Bug: Filtered goals by g.get('type_key') but goals table has 'goal_type' column.
Result: weight_goals was always empty → _score_weight_trend returned None.

Fix: Changed 'type_key' → 'goal_type' (matches goals table schema).

Verified: Migration 022 defines goal_type column, not type_key.

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-03-28 11:16:29 +01:00
202c36fad7 fix: Phase 0b - replace non-existent get_goals_by_type import
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ImportError: cannot import name 'get_goals_by_type' from 'goal_utils'

Changes:
- body_metrics.py: Use get_active_goals() + filter by type_key
- nutrition_metrics.py: Remove unused import (dead code)

Result: Score functions no longer crash on import error.

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-03-28 11:04:28 +01:00
cc76ae677b fix: Phase 0b - score functions use English focus area keys
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Root cause: All 3 score functions returned None because they queried
German focus area keys that don't exist in database (migration 031
uses English keys).

Changes:
- body_progress_score: körpergewicht/körperfett/muskelmasse
  → weight_loss/muscle_gain/body_recomposition
- nutrition_score: ernährung_basis/proteinzufuhr/kalorienbilanz
  → protein_intake/calorie_balance/macro_consistency/meal_timing/hydration
- activity_score: kraftaufbau/cardio/bewegungsumfang/trainingsqualität
  → strength/aerobic_endurance/flexibility/rhythm/coordination (grouped)

Result: Scores now calculate correctly with existing focus area weights.

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-03-28 10:59:37 +01:00
14c4ea13d9 feat: Phase 0b - add avg_per_week_30d aggregation method
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- Calculates average count per week over 30 days
- Use case: Training frequency per week (smoothed)
- Formula: (count in 30 days) / 4.285 weeks
- Documentation: .claude/docs/technical/AGGREGATION_METHODS.md
2026-03-28 10:45:36 +01:00
9fa6c5dea7 feat: Phase 0b - add nutrition focus areas to score mapping
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2026-03-28 10:20:46 +01:00
949301a91d feat: Phase 0b - add nutrition focus area category (migration 033) 2026-03-28 10:20:08 +01:00