Updated terminal_client/CLAUDE.md to use UV commands.
## Changes
- Updated REPL start command: uv run python -m terminal_client
- Updated standalone commands to use uv run prefix
- Added alternative manual activation option
- Consistent with all other project documentation
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Co-Authored-By: Claude <noreply@anthropic.com>
Complete manual outcome workflow for SBA and PD manual mode gameplay:
**WebSocket Event Handlers** (app/websocket/handlers.py):
- roll_dice: Server rolls dice, stores in state, broadcasts to players
- submit_manual_outcome: Validates and processes player submissions
- Events: dice_rolled, outcome_accepted, outcome_rejected, play_resolved
**Game Engine Integration** (app/core/game_engine.py):
- resolve_manual_play(): Processes manual outcomes with server dice
- Uses ab_roll for audit trail, player outcome for resolution
- Same orchestration as resolve_play() (save, update, advance inning)
**Data Model** (app/models/game_models.py):
- pending_manual_roll: Stores server dice between roll and submission
**Terminal Client** (terminal_client/):
- roll_dice command: Roll dice and display results
- manual_outcome command: Submit outcomes from physical cards
- Both integrated into REPL for testing
**Tests** (tests/unit/websocket/test_manual_outcome_handlers.py):
- 12 comprehensive tests covering all validation paths
- All tests passing (roll_dice: 4, submit_manual_outcome: 8)
**Key Decisions**:
- Server rolls dice for fairness (not players!)
- One-time roll usage (cleared after submission)
- Early validation (check pending roll before accepting)
- Field-level error messages for clear feedback
**Impact**:
- Complete manual mode workflow ready
- Frontend WebSocket integration supported
- Terminal testing commands available
- Audit trail with server-rolled dice maintained
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Co-Authored-By: Claude <noreply@anthropic.com>
Add ability to roll back the last N plays, useful for correcting mistakes
or recovering from corrupted plays. Deletes plays from database and
reconstructs game state by replaying remaining plays.
Database Operations (app/database/operations.py):
- delete_plays_after(): Delete plays with play_number > target
- delete_substitutions_after(): Delete lineup entries with after_play >= target
- delete_rolls_after(): Delete dice rolls (kept for reference, not used)
Game Engine (app/core/game_engine.py):
- rollback_plays(): Main rollback orchestration
- Validates: num_plays > 0, enough plays exist, game not completed
- Deletes plays and substitutions from database
- Clears in-memory roll tracking
- Calls state_manager.recover_game() to rebuild state
- Returns updated GameState
Terminal Client (terminal_client/commands.py, terminal_client/repl.py):
- rollback_plays(): Command wrapper with user-friendly output
- do_rollback(): REPL command with argument parsing
Usage:
⚾ > rollback 3
Validations:
- Cannot roll back more plays than exist
- Cannot roll back completed games
- Rolling back across innings is allowed
- Substitutions after rolled-back plays are undone
Testing:
- ✅ Successfully rolls back 2 plays from 5-play game
- ✅ Correctly validates rollback of 10 plays when only 2 exist
- ✅ Game state properly reconstructed via replay
Note: Dice rolls kept in database for auditing (don't affect state).
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Co-Authored-By: Claude <noreply@anthropic.com>
Add ability to force specific play outcomes instead of random dice rolls,
enabling targeted testing of specific game scenarios.
Changes:
- play_resolver.resolve_play(): Add forced_outcome parameter, bypass dice
rolls when provided, create dummy AbRoll with placeholder values
- game_engine.resolve_play(): Accept and pass through forced_outcome param
- terminal_client/commands.py: Pass forced_outcome to game engine
Testing:
- Verified TRIPLE, HOMERUN, and STRIKEOUT outcomes work correctly
- Dummy AbRoll properly constructed with all required fields
- Game state updates correctly with forced outcomes
Example usage in REPL:
resolve_with triple
resolve_with homerun
Fixes terminal client testing workflow to allow controlled scenarios.
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Co-Authored-By: Claude <noreply@anthropic.com>
Remove unused PlayResult creation code that had incorrect import path
and missing required fields. The forced outcome feature is experimental
and not yet implemented - the code was just showing warnings anyway.
Fixes ImportError when running 'resolve_with <outcome>' command.
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Co-Authored-By: Claude <noreply@anthropic.com>
New Commands:
- manual_outcome <outcome> [location] - Validates ManualOutcomeSubmission
- Tests outcome and location validation
- Shows which outcomes require hit location
- Displays clear validation errors
- test_location <outcome> [handedness] [count] - Tests hit location distribution
- Generates sample hit locations for an outcome
- Shows distribution table with percentages
- Validates pull rates (45% pull, 35% center, 20% opposite)
- Supports both LHB and RHB
Implementation:
- Added validate_manual_outcome() to GameCommands class
- Added test_hit_location() to GameCommands class
- Added do_manual_outcome() to REPL
- Added do_test_location() to REPL
- Uses ManualOutcomeSubmission model from Task 3
- Uses calculate_hit_location() helper from Task 3
Testing:
- Tested manual_outcome with valid outcomes (groundball_c SS, strikeout)
- Tested manual_outcome with invalid outcome (proper error display)
- Tested test_location with groundball_c for RHB (shows distribution)
- All validation and display working correctly
Note: Full play resolution integration deferred to Week 7 Task 6 (WebSocket handlers).
These commands validate and test the new models but don't resolve plays yet.
Files Modified:
- terminal_client/commands.py (+117 lines)
- terminal_client/repl.py (+65 lines)
Terminal Client Enhancements:
- Added list_outcomes command to display all PlayOutcome values
- Added resolve_with <outcome> command for testing specific scenarios
- TAB completion for all outcome names
- Full help documentation and examples
- Infrastructure ready for Week 7 integration
Files Modified:
- terminal_client/commands.py - list_outcomes() and forced outcome support
- terminal_client/repl.py - do_list_outcomes() and do_resolve_with() commands
- terminal_client/completions.py - VALID_OUTCOMES and complete_resolve_with()
- terminal_client/help_text.py - Help entries for new commands
Phase 3 Planning:
- Created comprehensive Week 7 implementation plan (25 pages)
- 6 major tasks covering strategic decisions and result charts
- Updated 00-index.md to mark Week 6 as 100% complete
- Documented manual outcome testing feature
Week 6: 100% Complete ✅
Phase 3 Week 7: Ready to begin
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Co-Authored-By: Claude <noreply@anthropic.com>
This commit includes cleanup from model refactoring and terminal client
modularization for better code organization and maintainability.
## Game Models Refactor
**Removed RunnerState class:**
- Eliminated separate RunnerState model (was redundant)
- Replaced runners: List[RunnerState] with direct base references:
- on_first: Optional[LineupPlayerState]
- on_second: Optional[LineupPlayerState]
- on_third: Optional[LineupPlayerState]
- Updated helper methods:
- get_runner_at_base() now returns LineupPlayerState directly
- get_all_runners() returns List[Tuple[int, LineupPlayerState]]
- is_runner_on_X() simplified to direct None checks
**Benefits:**
- Matches database structure (plays table has on_first_id, etc.)
- Simpler state management (direct references vs list management)
- Better type safety (LineupPlayerState vs generic runner)
- Easier to work with in game engine logic
**Updated files:**
- app/models/game_models.py - Removed RunnerState, updated GameState
- app/core/play_resolver.py - Use get_all_runners() instead of state.runners
- app/core/validators.py - Updated runner access patterns
- tests/unit/models/test_game_models.py - Updated test assertions
- tests/unit/core/test_play_resolver.py - Updated test data
- tests/unit/core/test_validators.py - Updated test data
## Terminal Client Refactor
**Modularization (DRY principle):**
Created separate modules for better code organization:
1. **terminal_client/commands.py** (10,243 bytes)
- Shared command functions for game operations
- Used by both CLI (main.py) and REPL (repl.py)
- Functions: submit_defensive_decision, submit_offensive_decision,
resolve_play, quick_play_sequence
- Single source of truth for command logic
2. **terminal_client/arg_parser.py** (7,280 bytes)
- Centralized argument parsing and validation
- Handles defensive/offensive decision arguments
- Validates formats (alignment, depths, hold runners, steal attempts)
3. **terminal_client/completions.py** (10,357 bytes)
- TAB completion support for REPL mode
- Command completions, option completions, dynamic completions
- Game ID completions, defensive/offensive option suggestions
4. **terminal_client/help_text.py** (10,839 bytes)
- Centralized help text and command documentation
- Detailed command descriptions
- Usage examples for all commands
**Updated main modules:**
- terminal_client/main.py - Simplified by using shared commands module
- terminal_client/repl.py - Cleaner with shared functions and completions
**Benefits:**
- DRY: Behavior consistent between CLI and REPL modes
- Maintainability: Changes in one place affect both interfaces
- Testability: Can test commands module independently
- Organization: Clear separation of concerns
## Documentation
**New files:**
- app/models/visual_model_relationships.md
- Visual documentation of model relationships
- Helps understand data flow between models
- terminal_client/update_docs/ (6 phase documentation files)
- Phased documentation for terminal client evolution
- Historical context for implementation decisions
## Tests
**New test files:**
- tests/unit/terminal_client/__init__.py
- tests/unit/terminal_client/test_arg_parser.py
- tests/unit/terminal_client/test_commands.py
- tests/unit/terminal_client/test_completions.py
- tests/unit/terminal_client/test_help_text.py
**Updated tests:**
- Integration tests updated for new runner model
- Unit tests updated for model changes
- All tests passing with new structure
## Summary
- ✅ Simplified game state model (removed RunnerState)
- ✅ Better alignment with database structure
- ✅ Modularized terminal client (DRY principle)
- ✅ Shared command logic between CLI and REPL
- ✅ Comprehensive test coverage
- ✅ Improved documentation
Total changes: 26 files modified/created
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Co-Authored-By: Claude <noreply@anthropic.com>
This commit includes Week 6 player models implementation and critical
performance optimizations discovered during testing.
## Player Models (Week 6 - 50% Complete)
**New Files:**
- app/models/player_models.py (516 lines)
- BasePlayer abstract class with polymorphic interface
- SbaPlayer with API parsing factory method
- PdPlayer with batting/pitching scouting data support
- Supporting models: PdCardset, PdRarity, PdBattingCard, PdPitchingCard
- tests/unit/models/test_player_models.py (692 lines)
- 32 comprehensive unit tests, all passing
- Tests for BasePlayer, SbaPlayer, PdPlayer, polymorphism
**Architecture:**
- Simplified single-layer approach vs planned two-layer
- Factory methods handle API → Game transformation directly
- SbaPlayer.from_api_response(data) - parses SBA API inline
- PdPlayer.from_api_response(player_data, batting_data, pitching_data)
- Full Pydantic validation, type safety, and polymorphism
## Performance Optimizations
**Database Query Reduction (60% fewer queries per play):**
- Before: 5 queries per play (INSERT play, SELECT play with JOINs,
SELECT games, 2x SELECT lineups)
- After: 2 queries per play (INSERT play, UPDATE games conditionally)
Changes:
1. Lineup caching (game_engine.py:384-425)
- Check state_manager.get_lineup() cache before DB fetch
- Eliminates 2 SELECT queries per play
2. Remove unnecessary refresh (operations.py:281-302)
- Removed session.refresh(play) after INSERT
- Eliminates 1 SELECT with 3 expensive LEFT JOINs
3. Direct UPDATE statement (operations.py:109-165)
- Changed update_game_state() to use direct UPDATE
- No longer does SELECT + modify + commit
4. Conditional game state updates (game_engine.py:200-217)
- Only UPDATE games table when score/inning/status changes
- Captures state before/after and compares
- ~40-60% fewer updates (many plays don't score)
## Bug Fixes
1. Fixed outs_before tracking (game_engine.py:551)
- Was incorrectly calculating: state.outs - result.outs_recorded
- Now correctly captures: state.outs (before applying result)
- All play records now have accurate out counts
2. Fixed game recovery (state_manager.py:312-314)
- AttributeError when recovering: 'GameState' has no attribute 'runners'
- Changed to use state.get_all_runners() method
- Games can now be properly recovered from database
## Enhanced Terminal Client
**Status Display Improvements (terminal_client/display.py:75-97):**
- Added "⚠️ WAITING FOR ACTION" section when play is pending
- Shows specific guidance:
- "The defense needs to submit their decision" → Run defensive [OPTIONS]
- "The offense needs to submit their decision" → Run offensive [OPTIONS]
- "Ready to resolve play" → Run resolve
- Color-coded command hints for better UX
## Documentation Updates
**backend/CLAUDE.md:**
- Added comprehensive Player Models section (204 lines)
- Updated Current Phase status to Week 6 (~50% complete)
- Documented all optimizations and bug fixes
- Added integration examples and usage patterns
**New Files:**
- .claude/implementation/week6-status-assessment.md
- Comprehensive Week 6 progress review
- Architecture decision rationale (single-layer vs two-layer)
- Completion status and next priorities
- Updated roadmap for remaining Week 6 work
## Test Results
- Player models: 32/32 tests passing
- All existing tests continue to pass
- Performance improvements verified with terminal client
## Next Steps (Week 6 Remaining)
1. Configuration system (BaseConfig, SbaConfig, PdConfig)
2. Result charts & PD play resolution with ratings
3. API client for live roster data (deferred)
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Co-Authored-By: Claude <noreply@anthropic.com>
Fixed critical bugs in game recovery and play persistence:
1. Terminal REPL Auto-Recovery:
- Added _ensure_game_loaded() helper to auto-recover games from database
- Calls state_manager.recover_game() when game not in memory
- Calls _prepare_next_play() after recovery to populate snapshot fields
- Enables seamless continuation of games across REPL sessions
2. Play Validation:
- Added verification in _save_play_to_db() for required fields
- Ensures batter_id, pitcher_id, catcher_id are never NULL
- Raises ValueError with clear error message if fields missing
- Prevents database constraint violations
3. Updated Commands:
- All REPL commands now call _ensure_game_loaded()
- Commands: defensive, offensive, resolve, status, quick_play, box_score
- Fixes "Game state not found" errors on recovered games
Root Cause:
- state_manager.recover_game() rebuilds GameState from database
- But didn't populate snapshot fields (current_batter_lineup_id, etc.)
- _save_play_to_db() requires these fields to save plays
- Solution: Call _prepare_next_play() after recovery
Files Modified:
- app/core/game_engine.py - Added verification in _save_play_to_db()
- terminal_client/repl.py - Added _ensure_game_loaded() and integrated
Testing: Successfully recovered game, submitted decisions, and resolved plays
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Co-Authored-By: Claude <noreply@anthropic.com>