- Enhanced the ACCESS_LAYER_AND_GOVERNANCE_PLAN.md with new specifications for capability documentation and community features.
- Added references to new documents detailing capability IDs and club membership features.
- Updated MULTI_TENANCY_RBAC_ARCHITECTURE.md to include links to the new specifications.
- Marked certain features as deprecated in backend/auth.py, indicating migration paths for club feature access.
- Incremented DB_SCHEMA_VERSION to 20260606078 in version.py to reflect recent changes.
- Introduced a new admin user content management endpoint for superadmins, allowing for moderation of user-generated content.
- Updated the backend to include new API functions for retrieving, patching, and deleting user content items.
- Enhanced the frontend with a new Admin User Content page and navigation link for easy access to user content management.
- Updated access layer documentation to reflect the new endpoint and its exempt status.
- Incremented version to 0.8.191 and updated changelog to document these additions in admin functionality.
- Updated the AI gap filling logic to include structured offers for unfilled gaps, improving the user experience in the Exercise Progression Path Builder.
- Introduced new functions for detecting off-topic steps and parsing LLM-suggested exercises, enhancing the contextual relevance of exercise suggestions.
- Enhanced the frontend components to support new AI proposal features, including quick creation modals for newly suggested exercises.
- Incremented version to 0.8.190 and updated changelog to reflect these improvements in planning AI functionality.
- Replaced the manual path selection logic with a new `pick_best_path_hit` function to streamline the process of selecting the best exercise based on semantic scores and gating criteria.
- Updated the semantic gating logic to apply a soft penalty for off-topic exercises, improving the flexibility of exercise selection.
- Enhanced the handling of title, summary, and goal parameters in semantic checks to ensure more accurate relevance assessments.
- Incremented version to 0.8.189 and updated changelog to reflect these improvements in planning AI functionality.
- Updated the path selection logic to incorporate semantic gating, ensuring only relevant exercises are considered based on semantic scores.
- Introduced new functions for building path target profiles and resolving semantic skill weights, enhancing the contextual understanding of exercise suggestions.
- Improved the retrieval process by applying dynamic retrieval weights based on semantic strength, refining the accuracy of exercise recommendations.
- Incremented version to 0.8.188 and updated changelog to document these enhancements in planning AI functionality.
- Introduced path reordering functionality using LLM with `ordered_step_indices`, allowing for dynamic adjustment of exercise progression paths.
- Added AI gap filling capabilities, enabling the system to propose new exercises when unbridgeable gaps are detected.
- Updated the backend to support new request parameters for path reordering and AI gap filling.
- Enhanced frontend components to reflect these new features, including alerts for AI proposals and adjustments in exercise display.
- Incremented version to 0.8.187 and updated changelog to document these significant enhancements in planning AI functionality.
- Introduced new functions to load exercise goals and variant names in chunks, improving data retrieval efficiency.
- Integrated semantic scoring into the ranking logic, allowing for more nuanced exercise suggestions based on semantic relevance.
- Updated the planning exercise suggestion process to include semantic brief handling, enriching the context for exercise recommendations.
- Adjusted the retrieval phase to incorporate dynamic retrieval weights based on semantic strength, enhancing the overall suggestion accuracy.
- Incremented version to 0.8.186 and updated changelog to reflect these significant enhancements in planning AI functionality.
- Incremented version to 0.8.185, reflecting the implementation of Phase C3 features.
- Introduced the `POST /api/planning/progression-path-suggest` endpoint for generating exercise progression paths.
- Enhanced the ExerciseProgressionGraphPanel with a new ExerciseProgressionPathBuilder for reviewing and saving paths.
- Updated changelog to document the new capabilities in planning AI functionality.
- Incremented version to 0.8.184, reflecting the implementation of Phase C2 features.
- Added support for displaying variant lists and suggested variant names in exercise suggestions.
- Enhanced the ExercisePickerModal to allow selection of exercise variants and improved handling of variant IDs.
- Updated backend logic to enrich planning hits with variant metadata, ensuring accurate exercise variant selection.
- Documented changes in the changelog to highlight the new capabilities in planning AI functionality.
- Incremented version to 0.8.183, reflecting the implementation of Phase C1 enhancements.
- Added support for progression graph auto-matching and variant-aware successors in exercise suggestions.
- Updated request and response structures to include `anchor_exercise_variant_id`, `progression_graph_name`, and `suggested_variant_id`.
- Enhanced frontend components to integrate planning AI search capabilities, including a new modal for exercise creation and improved context display in the exercise list.
- Updated changelog to document these significant improvements in planning AI functionality.
- Introduced a new function `hybrid_ranking_ambiguous` to determine when to rerank candidates based on score proximity, improving the decision-making process for exercise suggestions.
- Updated `should_run_llm_rank_pipeline` to incorporate the new ranking logic and handle scenarios with ambiguous rankings more effectively.
- Adjusted the frontend to always include LLM ranking in requests, ensuring consistent behavior across different query lengths.
- Incremented version to 0.8.182 and updated changelog to reflect these enhancements in planning AI capabilities.
- Added support for section guidance notes and titles in the planning target profile, enabling richer context for exercise suggestions.
- Introduced deterministic text-to-catalog signal mapping, allowing for improved integration of planning text signals into the exercise retrieval process.
- Implemented a partner-related filter in exercise retrieval, enhancing the relevance of suggested exercises based on user intent.
- Updated the retrieval phase to account for text signals, improving the accuracy of exercise recommendations.
- Incremented version to 0.8.181 and updated changelog to reflect these significant enhancements in planning AI capabilities.
- Implemented a maximum of 3 exercises per preview request to prevent Gateway-504 errors, improving the stability of the exercise enrichment process.
- Adjusted batch sizes for applying exercises and previewing to optimize performance and resource management.
- Updated the frontend to reflect changes in preview handling, including user notifications about chunk sizes and potential timeouts.
- Incremented version to 0.8.180 and updated changelog to document these enhancements and fixes.
- Introduced the `exercise_enrichment_admin` API for batch exercise enrichment, allowing superadmins to filter candidates, preview, and apply skills.
- Updated the access layer documentation to include the new endpoint and its exempt status.
- Enhanced the frontend with a new admin page for exercise enrichment and updated navigation to include this feature.
- Incremented version to 0.8.179 and updated changelog to reflect these additions and improvements.
- Updated the planning exercise retrieval process to implement a multistage approach, ranking the entire visible library deterministically against the expectation profile.
- Removed the previous profile OR pool mechanism, simplifying the retrieval logic and ensuring full-text search is only used as a scoring signal.
- Adjusted the `compose_retrieval_phase` function to accommodate the new full library ranking strategy.
- Incremented version to 0.8.177 and updated changelog to reflect these changes in planning exercise capabilities.
- Added support for the new planning exercise expectation profile slug in the AI prompt runtime.
- Refactored SQL parameter handling in the planning exercise retrieval process to ensure correct binding for full-text search.
- Updated the planning exercise suggestion logic to incorporate LLM expectation handling, improving the accuracy of exercise recommendations.
- Introduced new functions to determine when to run the LLM expectation pipeline, enhancing the decision-making process for exercise suggestions.
- Incremented version to 0.8.176 and updated changelog to reflect these enhancements in planning AI capabilities.
- Introduced new functions to generate skill profiles from exercise IDs, improving the ability to summarize skills for both units and sections.
- Updated the planning target profile to incorporate section-specific exercise IDs, allowing for more granular skill tracking and context.
- Enhanced the ExercisePickerModal and related pages to support section context, including titles, guidance notes, and exercise counts.
- Implemented expectation mode handling in the planning target pipeline to differentiate between planning references and query-only scenarios.
- Incremented version to 0.8.174 and updated changelog to reflect these enhancements in planning AI capabilities.
- Replaced the previous exercise matching logic with a new multistage planning retrieval process, improving the accuracy of exercise suggestions.
- Introduced LLM gates to limit LLM calls based on query length and intent application, optimizing performance and resource usage.
- Updated the `compose_retrieval_phase` function to include profile preselection, enhancing the retrieval process.
- Incremented version to 0.5.0 and updated changelog to reflect these significant enhancements in planning AI capabilities.
- Made `unit_id` and `group_id` optional in `PlanningExerciseSuggestRequest` to support client context without a saved unit.
- Refactored `_load_group_recent_exercise_ids` to handle cases where `exclude_unit_id` is optional.
- Introduced `build_client_planning_context_pack` for improved context handling in client-free searches.
- Updated `suggest_planning_exercises` to utilize the new client context pack when `unit_id` is not provided.
- Incremented version to 0.8.172 and updated changelog to reflect these enhancements in the planning AI capabilities.
- Introduced the Scenario Pipeline for planning exercises, allowing for more nuanced query handling and exercise suggestions based on user intent.
- Enhanced the `suggestPlanningExercises` API to include `include_llm_intent`, `scenario_kind`, and `query_intent_summary`, improving the context provided to the frontend.
- Updated the `ExercisePickerModal` to display new information related to query intent and scenario classification, enhancing user experience during exercise selection.
- Incremented application version to 0.8.171 and updated changelog to document the new features and improvements in the planning AI capabilities.
- Implemented optional LLM-Rerank functionality in the planning exercise suggestion process, allowing for improved exercise ranking based on user-defined criteria.
- Updated the `suggestPlanningExercises` API to accept `planned_exercise_ids` for client-side overrides, enhancing flexibility in exercise selection.
- Enhanced the `ExercisePickerModal` to reflect LLM ranking status and support new planning context features.
- Incremented application version to 0.8.170 and updated changelog to document the new features and improvements in the planning AI capabilities.
- Implemented Phase 1.1 of the planning exercise suggestion functionality, integrating `ExerciseMatchProfile` and `PlanningTargetProfile` for improved exercise scoring based on profile dimensions.
- Updated the `suggestPlanningExercises` API to include a new `retrieval_phase` and `target_profile_summary`, enhancing the context provided to the frontend.
- Enhanced the `ExercisePickerModal` to display additional information from the planning target profile, including focus areas and top skills, improving user experience during exercise selection.
- Incremented application version to 0.8.169 and updated changelog to reflect the new features and improvements in the planning AI capabilities.
- Added new planning AI functionality with the introduction of the `suggestPlanningExercises` API endpoint for context-based exercise suggestions.
- Enhanced `ExercisePickerModal` to utilize planning context, allowing for a more tailored exercise selection experience.
- Updated `TrainingUnitEditPage` to pass planning context to the exercise picker, improving integration with the new planning features.
- Incremented application version to 0.8.167 and updated changelog to reflect the new planning AI capabilities and related enhancements.
- Updated APP_VERSION to 0.8.166 and modified BUILD_DATE to reflect recent changes.
- Enhanced AI exercise creation process with a new quick create feature, allowing users to generate exercises based on search input.
- Introduced a rich text editor for editing AI-generated drafts, improving user experience in exercise creation.
- Updated ExercisePickerModal and related components to support the new quick create functionality, including error handling and input validation.
- Added new utility functions for parsing search queries and building exercise payloads from drafts.
- Updated the quick create process to include a preview feature for AI-generated exercises, allowing users to review goals, execution, preparation, and trainer notes.
- Introduced new constants for instruction fields and refactored the payload building function to utilize the preview data.
- Improved error handling to ensure at least one of the goal or execution fields is populated.
- Deprecated the previous payload building function in favor of the new preview-based approach, streamlining the exercise creation workflow.
- Updated APP_VERSION to 0.8.164 and added changelog entry for the new version.
- Enhanced ExercisePickerModal to support quick exercise creation using AI, including fields for sketch and focus area.
- Implemented error handling for AI suggestions and improved user prompts for input validation.
- Updated UI elements to reflect changes in exercise creation workflow.
- Added `exercise_instruction_rewrite` functionality to enhance AI-generated instructions, incorporating fields for goal, execution, preparation, and trainer notes.
- Updated `ExerciseFormAiPromptContext` to include new fields and methods for instruction handling.
- Enhanced the `run_exercise_form_ai_suggestion` function to support instruction rewriting and validation.
- Modified API endpoints and frontend components to integrate instruction features, including a new button for AI instruction revision.
- Incremented application version to 0.8.163 and updated changelog to reflect these changes, including migration details and new functionality.
- Introduced `ExerciseFormAiPromptContext` for unified handling of prompt-related data, enhancing the admin preview and exercise API.
- Added `run_exercise_form_ai_suggestion` function to streamline AI suggestion processing, integrating with the OpenRouter.
- Updated various modules to utilize the new context model, improving code clarity and reducing redundancy.
- Incremented application version to 0.8.162 and updated changelog to reflect these changes, including migration details and new functionality.
- Added `openrouter_model` field to the `ai_prompts` table, allowing for optional model overrides per prompt.
- Updated the `exercise_ai` module to utilize the effective OpenRouter model based on prompt-specific settings, enhancing flexibility in AI interactions.
- Enhanced the admin interface to support OpenRouter model configuration for prompts, improving usability for Superadmins.
- Incremented application version to 0.8.161 and updated changelog to reflect these changes, including migration details and new functionality.
- Introduced `load_and_render_ai_prompt` and `render_ai_prompt_template_for_row` in `ai_prompt_runtime` to streamline prompt loading and rendering processes.
- Added `AiPromptUnavailableError` for better error handling when prompts are inactive or missing.
- Created `ai_prompt_job` module with `ExerciseFormAiPromptContext` and `resolve_exercise_form_variables` to support admin preview functionality.
- Updated documentation and target architecture to reflect changes in the AI prompt system.
- Incremented application version to 0.8.160 and updated changelog accordingly.
- Added the `matrix_editor` endpoint to the ACCESS_LAYER_ENDPOINT_AUDIT.md, specifying its access requirements and exempt status for superadmins.
- Updated comments in the `matrix_editor.py` file to clarify its role as a superadmin tool and its access restrictions.
- Included the `matrix_editor.py` in the EXEMPT_ROUTERS list in the access layer hints script, ensuring proper access control documentation.
- Added new functionality for exporting and importing matrix editor data in JSON and CSV formats within the MaturityMatrixToolsAdmin component.
- Updated the API utility functions to support matrix editor exports and imports, enhancing the backend communication for Superadmin tasks.
- Refactored the client API to streamline request handling and improve code clarity.
- Included new UI elements for file upload and download actions, improving user experience in managing matrix data.
- Added a new target architecture document for the AI Prompt System, detailing context types, composition, and planning phases.
- Refactored the backend to utilize a shared function for loading AI prompt rows, reducing SQL duplication in the `exercise_ai` module.
- Incremented the application version to 0.8.159 and updated the changelog to reflect these changes, including enhancements to the AI prompt management and documentation links.
- Incremented version to 1.1 and updated the status to reflect the implementation of core features including `ai_prompts`, `prompt_resolver`, and the Superadmin HTTP API.
- Documented the current API endpoints for managing AI prompts, including CRUD operations and preview functionality.
- Introduced a new placeholder catalog and preview capabilities for the Superadmin interface.
- Enhanced the backend with new functions for handling AI prompt templates and integrated them into the API.
- Updated frontend components to include navigation and routing for the new Admin AI Prompts page.
- Incremented application version to 0.8.158 and updated changelog to reflect these changes.
- Introduced detailed logging for AI operations in the `exercise_ai` and `openrouter_chat` modules, activated by the `SHINKAN_AI_DEBUG` environment variable, to aid in debugging and performance monitoring.
- Updated the `run_exercise_ai_suggestion` function to log prompt lengths, response sizes, and JSON parsing errors, enhancing transparency in AI interactions.
- Improved the `_flatten_message_content` function to handle nested content structures more effectively, ensuring compatibility with various AI response formats.
- Incremented the application version to 0.8.157 and updated the changelog to reflect these enhancements, including new logging features and content handling improvements.
- Added a new function `_first_balanced_json_array` to extract the first complete top-level JSON array from arbitrary text, enhancing robustness in parsing.
- Updated the `run_exercise_ai_suggestion` function to raise clear HTTP exceptions for empty responses from the OpenRouter, ensuring better error handling.
- Introduced `_flatten_message_content` in the `openrouter_chat` module to handle structured message content from OpenAI, improving compatibility with various content formats.
- Incremented the application version to 0.8.156 and updated the changelog to reflect these enhancements, including improved error messages and JSON parsing capabilities.
- Introduced a new constant `_MAX_SANITIZE_SKILL_INPUT_ROWS` to limit the number of skill entries processed, improving performance and preventing issues with excessively long skill arrays.
- Updated the `_extract_json_array` and `_sanitize_skill_entries` functions to enforce this limit, ensuring that only a maximum of 250 skill entries are handled and that processing stops after 5 valid entries.
- Incremented the application version to 0.8.155 and updated the changelog to reflect these changes, including a note on the improvements made to the AI endpoint for skill arrays.
- Added documentation for the new Superadmin CRUD endpoints for managing AI Skill Retrieval Profiles (`/api/admin/ai-skill-retrieval-profiles*`).
- Updated the ACCESS_LAYER_ENDPOINT_AUDIT.md to include the new Superadmin API and its exempt status.
- Registered the ai_skill_retrieval_admin router in the backend and updated versioning to reflect the changes.
- Enhanced the frontend with a new Admin page for AI Skill Retrieval, including navigation and API integration for profile management.
- Introduced migration 068 for `ai_skill_retrieval_profiles`, enabling configurable weights and quotes for skill catalog prioritization in exercise AI suggestions.
- Updated the `POST /api/exercises/ai/suggest` endpoint to include an optional `focus_areas_context` field, allowing for enhanced context in AI-generated suggestions.
- Enhanced the `exercise_ai` module to utilize context-based skill selection, incorporating scoring, category caps, and keyword patches for improved AI responses.
- Updated the ExerciseFormPageRoot component to pass focus area context to the AI suggestion API, streamlining user interaction with AI-generated content.
- Incremented version numbers in `backend/version.py` to reflect the latest changes and ensure accurate tracking in the changelog.
- Incremented the version number from 0.2 to 0.3 in the AI Training Planning document to reflect the latest changes.
- Added a new reference to the `working/AI_PLANNING_KI_MULTISTAGE_FORECAST.md` document, outlining the architecture preview for the planning AI.
- Updated the changelog in `backend/version.py` to include the latest version entry, ensuring accurate tracking of changes.
- Updated the exercise form to include a tabbed navigation structure, improving user experience with sections for Stammdaten, Anleitung, Einordnung, Varianten, and Medien & Mehr.
- Introduced the concept of **Freigabelevel** (visibility level) in the UI, replacing previous terminology for clarity and consistency across components.
- Implemented new AI endpoints for exercise suggestions and regeneration, allowing for dynamic content generation without direct database writes.
- Removed the legacy `is_primary` flag from exercise skills in the UI, ensuring that intensity levels (`niedrig`, `mittel`, `hoch`) are the primary focus for skill management.
- Enhanced the variant management process with improved saving mechanisms and UI updates to reflect changes more intuitively.
- Added capabilities for weighted skill profiles, allowing trainers to compare training modules, frameworks, and regression paths based on skill contributions.
- Updated the skill scoring specification to include peer context separation and list filtering, ensuring accurate comparisons among visible artifacts of the same type.
- Enhanced the API to support batch summaries for skill profiles and discovery suggestions, improving data retrieval efficiency.
- Refactored frontend components to display skill metrics, including scores and peer percentages, with improved filtering options for better user experience.
- Updated documentation to reflect the latest changes and enhancements in the skill scoring system.
- Introduced new helper functions for managing artifact type corpus, improving code organization and readability.
- Updated the `compute_club_corpus_reference` function to utilize the new corpus handling methods, enhancing clarity and maintainability.
- Refactored skill profile functions to leverage the new corpus structure, ensuring consistent data retrieval across different artifact types.
- Improved the handling of visibility clauses for library content, streamlining database queries for skill profiles.
- Enhanced the batch skill profile summary function to aggregate reference data by artifact type, improving performance and accuracy.
- Modified the `compact_profile_summary` function to allow for dynamic skill and category limits, enhancing flexibility in profile data retrieval.
- Updated frontend components to display skill weights and scores more effectively, improving user interaction with skill metrics.
- Adjusted CSS styles for skill KPI tiles to better differentiate between score and percentage displays, ensuring a clearer visual representation.
- Refactored utility functions to streamline skill summary handling, enhancing overall code maintainability and performance.
- Introduced a new function to calculate club-specific skill percentages, ensuring values are capped at 100%.
- Updated skill profile calculations to include indicators for the best club performance per skill.
- Enhanced frontend components to display club best indicators and improved layout for skill profiles.
- Refactored CSS styles for skill profile components, ensuring a more cohesive and user-friendly interface.
- Updated tests to validate new functionality and ensure accurate representation of skill metrics.
- Updated the skill scoring specification to include club-specific metrics and improved aggregation methods for skill profiles.
- Introduced new API endpoints for batch skill profile summaries, allowing for efficient retrieval of compact skill data.
- Enhanced frontend components to display skill profiles with club comparisons, improving user interaction and visibility of skill strengths.
- Added filtering options for skills in the framework programs, enabling users to refine selections based on training weight relative to club maximums.
- Improved CSS styles for skill profile displays, ensuring a cohesive and user-friendly interface across the application.
- Enhanced the skill scoring system with category grouping and a universal scale for improved comparability across programs.
- Introduced new calculations for artifact share percentage and universal percent, allowing for a more nuanced understanding of skill contributions.
- Updated the API to reflect changes in the skill profile structure, including main category and top skill details.
- Improved frontend components to display skills by main category, enhancing user experience in skill discovery and profile visualization.
- Adjusted tests to validate the new scoring logic and ensure accurate representation of skills and their weights.
- Enhanced the skill scoring formula to incorporate intensity and level range factors, improving the accuracy of skill contributions.
- Removed the use of `is_primary` and `development_contribution` from calculations, streamlining the scoring process.
- Updated documentation to reflect changes in the scoring logic and versioning.
- Adjusted frontend components to align with the new scoring criteria, ensuring consistent user experience across the application.
- Updated the framework program documentation to reflect the completion of Phase 3 v1.0, including new skill scoring and API enhancements.
- Added new API endpoints for skill profile retrieval and suggestions, improving the ability to aggregate and display skills based on training data.
- Introduced new UI components for skill profiles and discovery in the frontend, enhancing user interaction with training frameworks and skills.
- Updated version information to 0.8.151, reflecting the addition of skill profiles and related features.
- Added SQL aggregations for session duration (min/max) and goal titles in the training framework programs query.
- Updated the TrainingPlanningFrameworkImportModal component to include filtering options for focus areas, training types, and target groups.
- Implemented session duration display in the TrainingFrameworkProgramsListPage, improving user visibility of program details.
- Introduced utility functions for formatting session duration ranges, enhancing the overall user experience in training planning.
- Bumped application version to 0.8.150 and updated build date and database schema version.
- Introduced new SQL migration for planned duration fields in training units and sections.
- Added functions to handle focus areas and style directions in training framework programs.
- Enhanced training planning components to support planned duration input and display.
- Updated frontend components to manage and display planned duration for training units and sections.
- Updated the `list_exercises` function to include counts for exercise variants and media, improving data retrieval for exercise details.
- Added new CSS styles for the exercise card footer to display variant and media statistics in a visually appealing manner.
- Implemented `ExerciseCardContentStats` component to conditionally render variant and media counts, enhancing the user interface of exercise cards.
- Added Vitest as a testing framework and included test scripts in package.json for improved testing capabilities.
- Refactored TrainingPlanningPageRoot component by removing unused state variables and imports, streamlining the code for better readability and performance.
- Introduced new utility functions for planning routes to enhance navigation within the training planning interface.
- Incremented app version to 0.8.148 and updated changelog to reflect new features.
- Improved the training plan template structure by adding a preview of sections, including support for split sessions.
- Introduced a new editing page for training plan templates, allowing users to modify templates directly.
- Enhanced the TrainingPlanningPageRoot to include a description field when saving templates, improving user guidance.
- Updated permissions to allow editing of training plan templates based on user roles.
- Incremented app version to 0.8.146 and updated changelog to include the new version details.
- Documented the addition of the publish-to-framework feature for training units, enhancing the training planning capabilities.
- Incremented app version to 0.8.147 and updated changelog to reflect the new version.
- Introduced a new modal for saving exercises as training modules within the training planning interface.
- Enhanced the TrainingPlanningPageRoot component to manage the new save module functionality, including state management for the modal.
- Updated the TrainingPlanningUnitFormModal to include an option for saving exercises as a module, improving user experience in training planning.
- Incremented app version to 0.8.146 and updated build date to 2026-05-19.
- Added new API endpoint to publish training units as session blueprints to framework programs.
- Introduced frontend functionality to support publishing training units, including a modal for user interaction.
- Updated changelog to reflect the new feature and its associated changes.
- Introduced `_normalize_mw_category` function to clean category names for API calls, ensuring consistent handling of category prefixes.
- Updated `SmwClient` methods to utilize normalized category names, improving data retrieval accuracy.
- Added `_wiki_category_or_default` function to provide default categories based on import type, enhancing user experience during imports.
- Integrated new fields `karate_relevance` and `relevance_level` into various admin components, allowing for better skill management.
- Incremented app version to 0.8.145 and updated changelog to reflect these changes.
- Added `karate_relevance` and `relevance_level` fields to the SkillCreate and SkillResponse models, allowing for more detailed skill attributes.
- Updated the SMW property mapping to include these new fields, facilitating their integration during data import.
- Implemented parsing logic for relevance levels from Wiki data, ensuring proper handling of values between 1 and 3.
- Modified the upsert and create skill functions to support the new fields, ensuring they are correctly stored and updated in the database.
- Incremented app version to 0.8.143 and updated changelog to reflect these changes.
- Introduced new functions for managing edit, delete, and governance transition permissions for library content, aligning with role-based access control (RBAC) principles.
- Updated existing routers to utilize these new functions, ensuring consistent permission checks across training frameworks, modules, and progression graphs.
- Enhanced visibility and governance handling for training plan templates and library content, improving overall content management and user experience.
- Incremented app version to 0.8.142 and updated changelog to reflect these changes.
- Incremented app version to 0.8.141 and updated build date to 2026-05-14.
- Modified the planning module version to 0.12.0, improving template section handling with phase metadata.
- Introduced new functions for normalizing and inserting training plan template sections, ensuring accurate phase representation during saves.
- Updated frontend components to utilize new utility functions for managing training plan templates, enhancing user experience and data integrity.
- Enhanced phase handling in training unit hydration and insertion processes, ensuring better data integrity.
- Updated frontend components to support phase representation in training framework slots.
- Improved user interface controls for managing parallel phases, optimizing user experience during training program edits.
- Refactored payload building functions to accommodate phase adjustments, enhancing save functionality for training plans.
- Updated backend logic to include phases in training unit hydration and insertion processes, improving data integrity.
- Modified frontend components to support phases in training framework slots, ensuring consistent data representation.
- Refactored payload building functions to accommodate phases, enhancing the save functionality for training plans.
- Improved user interface to enable controls for parallel phases, optimizing the user experience during training program edits.
- Updated the backend logic to ensure strict ordering of phase indices, preventing UNIQUE constraint violations when phases are duplicated.
- Enhanced the TrainingUnitSectionsEditor component with new state management for editing phase titles and stream names, improving user interaction.
- Implemented conditional rendering for input fields to facilitate inline editing of phase titles and stream names, streamlining the editing process.
- Bumped APP_VERSION to 0.8.140 and updated the changelog to reflect recent changes.
- Enhanced the Training Planning Module with new controls for managing whole group and parallel phases, including the ability to add streams to existing parallel phases.
- Introduced utility functions for handling phase and stream configurations, improving the overall structure and usability of the training unit sections editor.
- Updated the TrainingPlanningUnitFormModal to support the new phase controls, ensuring seamless integration with the frontend components.
- Bumped APP_VERSION to 0.8.139 and updated the changelog to reflect recent changes.
- Enhanced the Training Planning Module to support new phase handling, including improved labeling for sections in the editor.
- Updated the API payload structure to accommodate parallel streams and phases, ensuring better integration with the frontend components.
- Refactored utility functions for improved clarity and maintainability in handling training unit sections and phases.
- Bumped APP_VERSION to 0.8.138 and updated the changelog to reflect recent changes.
- Enhanced training unit planning with support for POST/PUT requests including phases and parallel streams.
- Fixed role assignment validation for stream co-trainers and added integration tests for phase handling.
- Updated the training planning API to improve data structure and retrieval for nested phases and sections.
- Enhanced the pytest workflow in `.gitea/workflows/test.yml` to include `TRAINING_PLANNING_INTEGRATION` for improved testing against the PostgreSQL database.
- Updated `pytest.ini` to clarify integration marker usage, specifying both `ACCESS_LAYER_INTEGRATION` and `TRAINING_PLANNING_INTEGRATION`.
- Revised documentation in `test_training_planning_sections_integration.py` to provide clearer activation instructions for local and CI environments.
- Bumped APP_VERSION to 0.8.137 and updated the changelog to reflect recent changes.
- Introduced Migration 063 for training unit phases and parallel streams, enhancing the structure of training units.
- Updated the training planning API to support nested phases and sections, improving data retrieval for UI components.
- Enhanced section handling to accommodate new phase and stream structures, ensuring compatibility with existing workflows.
- Updated the backend to improve the fetching and insertion of training unit sections, including a new function for handling section items.
- Added documentation notes regarding the unique constraint on `training_unit_sections` and the implications for parallel training streams.
- Updated frontend components and utility functions to reflect changes in the training planning API and to prepare for future enhancements related to parallel streams.
- Bumped APP_VERSION to 0.8.136 and updated the changelog to reflect recent changes.
- Fixed the Mandanten-Header handling in `api/exercises.js` for improved API requests.
- Continued Frontend Phase 4 with the addition of the `exercises.js` module, enhancing the API structure.
- Updated architecture documentation to include details on the new `exercises.js` API and its integration with the existing client structure.
- Enhanced `utils/api.js` to re-export the new exercises module, streamlining API access.
- Bumped APP_VERSION to 0.8.134 and updated the changelog to reflect recent changes.
- Continued Frontend Phase 4 with the introduction of the `frontend/src/api/planning.js` module for training planning.
- Updated architecture documentation to include details on the new `planning.js` API and its integration with the existing client structure.
- Enhanced `utils/api.js` to re-export the new planning module, streamlining API access.
- Bumped APP_VERSION to 0.8.133 and updated the changelog to reflect recent changes.
- Initiated Frontend Phase 4 Welle 1, introducing a centralized HTTP client in `frontend/src/api/client.js` while maintaining `utils/api.js` as a facade.
- Documented the changes in the architecture roadmap and README for clarity on the new API structure.
- Bumped APP_VERSION to 0.8.132 and updated the changelog to reflect recent changes.
- Removed unused imports and refactored the ExerciseFormPage, ExercisesListPage, and TrainingPlanningPage for improved code clarity and maintainability.
- Enhanced the overall structure of the components by eliminating redundant code and optimizing imports.
- Bumped APP_VERSION to 0.8.131 and updated the changelog to reflect recent changes.
- Added the TrainingPlanningUnitFormModal component to the TrainingPlanningPage for enhanced training unit management.
- Refactored frameworkLineageText utility function for better code organization and reusability in the training planning context.
- Updated BASELINE_SNAPSHOT documentation to include new metrics and logging details for k6 health checks.
- Bumped APP_VERSION to 0.8.130 and updated the changelog to reflect recent changes.
- Fixed PUT/POST for training_units to handle assistant_trainer_profile_ids as JSONB using psycopg2.extras.Json, resolving a ProgrammingError during co-assignment.
- Bumped APP_VERSION to 0.8.129 and updated the changelog to reflect recent changes.
- Added the TrainingPlanningTrainerAssignModal component to the TrainingPlanningPage for enhanced trainer assignment functionality.
- Implemented new callback functions for managing lead trainer and assistant assignments in the training planning process.
- Bumped APP_VERSION to 0.8.128 and updated the changelog to reflect recent changes.
- Added the TrainingPlanningModuleApplyModal component to the TrainingPlanningPage for enhanced training module application functionality.
- Implemented a new callback function onModuleApplySectionIndexChange to manage module application section index changes.
- Bumped APP_VERSION to 0.8.126 and updated the changelog to reflect recent changes.
- Added the TrainingPlanningFrameworkImportModal component to the TrainingPlanningPage for improved training session management.
- Implemented a new Playwright test to verify the functionality of the framework import dialog in the training planning page.
- Bumped APP_VERSION to 0.8.125 and updated the changelog to reflect recent changes.
- Added new tests for the dashboard API to ensure proper HTTP 200 responses when inner lists are mocked.
- Enhanced the ExerciseListBulkToolbar component with a data-testid for improved testing capabilities.
- Refactored the TrainingPlanningPage by extracting utility functions to trainingPlanningPageHelpers for better code organization.
- Bumped APP_VERSION to 0.8.124 and updated the changelog to reflect recent changes.
- Introduced the ExerciseListBulkToolbar component in ExercisesListPage for improved bulk action handling.
- Enhanced the user interface for selecting and managing exercises in bulk.
- Bumped APP_VERSION to 0.8.123 and updated the changelog to reflect recent changes.
- Fixed internal calls in GET /api/dashboard/kpis to use unwrap_query_default, preventing 500 errors due to FastAPI query defaults.
- Enhanced list_exercises and list_training_units functions to utilize unwrap_query_default for improved query handling.
- Added unit tests for unwrap_query_default to ensure correct behavior in various scenarios.
- Bumped APP_VERSION to 0.8.122 and updated the changelog to reflect new features.
- Integrated useExerciseListCatalogsAndQuery hook in ExercisesListPage for improved exercise list management and data fetching.
- Enhanced documentation to include new concepts for parallel training streams and their technical specifications.
- Updated DOMAIN_MODEL and related technical specs to clarify the structure and functionality of training streams within units.
- Bumped APP_VERSION to 0.8.121 and updated the changelog to reflect new features.
- Introduced the ExerciseListFilterModal and ExerciseListBulkModal components, enhancing the exercise list functionality.
- Modularized the ExerciseListPage to improve code organization and maintainability.
- Added Playwright tests for the filter dialog functionality, ensuring proper user interaction and visibility.
- Bumped APP_VERSION to 0.8.119 and updated the changelog to reflect new features.
- Introduced the ExerciseListCard component and implemented lazy loading for the Progression Tab using React's Suspense.
- Enhanced the ExercisePickerModal with virtualization for improved performance using @tanstack/react-virtual.
- Updated documentation to reflect the new app version and its corresponding changes.
- Bumped APP_VERSION to 0.8.118 and updated DB_SCHEMA_VERSION to 20260514062.
- Enhanced the dashboard API with a new endpoint that consolidates training home data, allowing for a single request to retrieve upcoming training sessions, planned sessions with notes, and review pending items.
- Updated the frontend Dashboard component to utilize the new API structure, improving data loading efficiency and user experience.
- Added migration details and changelog entries to reflect the latest changes and improvements.
- Bumped APP_VERSION to 0.8.117 and updated DB_SCHEMA_VERSION to 20260514061.
- Enhanced the training units API with optional keyset pagination, allowing for more efficient data retrieval.
- Updated the changelog to reflect the new features and improvements, including changes to the frontend API integration for training units.
- Adjusted documentation to align with the new app version and its corresponding changes.
- Bumped APP_VERSION to 0.8.116 and updated the changelog to reflect changes, including the implementation of a new loading strategy for the Org-Inbox that utilizes requestIdleCallback to optimize API calls during dashboard initialization.
- Updated documentation to reflect the new app version and its corresponding changes.
- Bumped APP_VERSION to 0.8.115 and updated the changelog to reflect changes, including the introduction of keyset pagination for the GET /api/exercises endpoint.
- Enhanced the exercises router to support cursor-based pagination using cursor_updated_at and cursor_id, improving performance and user experience.
- Updated frontend components to utilize the new pagination method, removing offset-based loading logic.
- Bumped APP_VERSION to 0.8.114 and updated DB_SCHEMA_VERSION to 20260514060.
- Added changelog entry for version 0.8.114, detailing migration 060 for exercise scaling and indexing improvements.
- Bumped APP_VERSION to 0.8.113 and updated DB_SCHEMA_VERSION to 20260514059.
- Added changelog entry for version 0.8.113, detailing migration 059 for training unit sorting without framework_slot_id.
- Bumped APP_VERSION to 0.8.112 and updated DB_SCHEMA_VERSION to 20260514058.
- Added changelog entry for version 0.8.112, detailing migration 058 for exercise sorting indices.
- Implemented a new API endpoint for retrieving dashboard KPIs, providing a consolidated overview of drafts, personal exercises, and year-to-date completed units.
- Updated the Dashboard component to utilize the new endpoint, enhancing data retrieval efficiency and user experience.
- Added a helper function in the exercises router for programmatic access to exercise listings.
- Updated versioning and changelog to reflect the addition of the dashboard feature.
- Integrated PsycopgJson for improved handling of planning method profiles in the backend.
- Updated CombinationPlanBracket to display primary load labels for better clarity in the UI.
- Enhanced TrainingUnitSectionsEditor and utility functions to ensure proper serialization of planning profiles, preventing potential errors during API interactions.
- Improved CSS for combo plan brackets to enhance visual alignment and presentation.
Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
- Updated app version to 0.8.110, reflecting recent improvements in combination exercise handling.
- Introduced `load_combination_slots_for_exercise` function to streamline fetching combination slots for exercises.
- Enhanced `TrainingPlanningPage` and `ExercisePeekModal` to utilize the new combination slots functionality, improving user experience.
- Updated changelog to document the latest changes and feature enhancements.
Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
- Updated app version to 0.8.109, reflecting recent improvements in combination exercise handling.
- Introduced `rep_series_count` for slot profiles, allowing for multiple series in `rep` and `manual` modes, enhancing flexibility in exercise configurations.
- Updated the CombinationMethodProfileEditor and CombinationCoachSlots components to support and display the new series count feature.
- Enhanced ExerciseFormPage to manage series count and intra-series pauses effectively, improving user experience.
- Documented changes in the changelog for better tracking of feature enhancements.
Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
- Updated app version to 0.8.106, reflecting recent improvements in combination exercise handling.
- Introduced `advance_mode` for slot profiles, allowing for flexible timing options (timed, repetitions, manual) in the CombinationMethodProfileEditor.
- Enhanced the CombinationCoachSlots component to display timing summaries based on the selected advance mode.
- Updated ExerciseFormPage to manage combination slots with new validation and user feedback for exercise selection.
- Documented changes in the changelog for better tracking of feature enhancements.
Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
- Updated app version to 0.8.105, reflecting recent improvements in combination exercise handling.
- Added support for per-slot timing options in the CombinationMethodProfileEditor, allowing for more flexible exercise configurations.
- Enhanced the ExerciseFormPage to manage combination slots more effectively, including new functions for reordering and merging exercises.
- Updated changelog to document the latest changes and improvements.
Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
- Updated app version to 0.8.104, reflecting recent improvements in combination exercise handling.
- Enhanced the CombinationMethodProfileEditor to support structured slot timing profiles without requiring JSON input from trainers.
- Introduced quick ratio presets for circuit and interval training methods, improving user experience in setting up training profiles.
- Updated documentation and changelog to reflect new features and integration details.
Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
- Updated app version to 0.8.103, reflecting recent enhancements in training planning.
- Incremented database schema version to 20260512057, ensuring compatibility with new features.
- Introduced optional `planning_method_profile` for combination exercises, allowing for detailed planning and coaching support.
- Enhanced frontend components to manage and display planning method profiles effectively in the Training Unit Sections Editor and ExerciseFullContent.
Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>