Commit Graph

3 Commits

Author SHA1 Message Date
7ac9752c3d feat: enhance nutrition data processing and visualization with new correlation insights
All checks were successful
Deploy Development / deploy (push) Successful in 50s
Build Test / pytest-backend (push) Successful in 4s
Build Test / lint-backend (push) Successful in 0s
Build Test / build-frontend (push) Successful in 16s
- Refactored the `calculate_lag_correlation` function to normalize lag payloads and improve correlation calculations for various nutrition metrics.
- Introduced a new function `build_nutrition_correlation_heuristic_items` to generate heuristic insights based on merged nutrition data, enhancing user understanding of dietary impacts on weight and body composition.
- Updated the `get_nutrition_history_viz_bundle` function to include daily calorie balance and protein vs. lean mass data, providing a comprehensive view of nutrition trends.
- Enhanced the frontend to visualize calorie balance and protein vs. lean mass insights, improving the user experience with clear graphical representations of dietary correlations.
2026-04-20 13:45:28 +02:00
d7304c1a44 feat: implement energy availability warning and enhance nutrition visualization
All checks were successful
Deploy Development / deploy (push) Successful in 55s
Build Test / pytest-backend (push) Successful in 9s
Build Test / lint-backend (push) Successful in 0s
Build Test / build-frontend (push) Successful in 16s
- Added `get_energy_availability_warning_payload` function to assess energy availability and provide contextual warnings based on multiple health indicators.
- Integrated energy availability KPI tile into the nutrition history visualization, enhancing user insights on energy balance.
- Updated frontend components to conditionally display the energy availability warning, improving user experience and data interpretation.
- Refactored existing logic in `charts.py` to utilize the new energy availability functionality, streamlining data handling.
2026-04-19 17:43:29 +02:00
b96b1931db feat: implement nutrition history visualization bundle and related API endpoint
All checks were successful
Deploy Development / deploy (push) Successful in 57s
Build Test / pytest-backend (push) Successful in 4s
Build Test / lint-backend (push) Successful in 0s
Build Test / build-frontend (push) Successful in 16s
- Added a new `nutrition_interpretation.py` file to handle KPI tile generation for nutrition history.
- Introduced `nutrition_viz.py` to create a visualization bundle for nutrition data, integrating metrics and historical analysis.
- Implemented `get_nutrition_history_viz` endpoint in `charts.py` to serve the new visualization data.
- Updated frontend components to fetch and display nutrition history data, enhancing user experience with detailed insights.
- Refactored existing logic to streamline data handling and improve overall performance.
2026-04-19 17:20:24 +02:00