BREAKING CHANGE: Module paths have been reorganized for better maintainability. Backwards compatibility aliases with deprecation warnings are provided. New Structure: - core/ - Optimization runners (runner, intelligent_optimizer, etc.) - processors/ - Data processing - surrogates/ - Neural network surrogates - nx/ - NX/Nastran integration (solver, updater, session_manager) - study/ - Study management (creator, wizard, state, reset) - reporting/ - Reports and analysis (visualizer, report_generator) - config/ - Configuration management (manager, builder) - utils/ - Utilities (logger, auto_doc, etc.) - future/ - Research/experimental code Migration: - ~200 import changes across 125 files - All __init__.py files use lazy loading to avoid circular imports - Backwards compatibility layer supports old import paths with warnings - All existing functionality preserved To migrate existing code: OLD: from optimization_engine.nx_solver import NXSolver NEW: from optimization_engine.nx.solver import NXSolver OLD: from optimization_engine.runner import OptimizationRunner NEW: from optimization_engine.core.runner import OptimizationRunner 🤖 Generated with [Claude Code](https://claude.com/claude-code) Co-Authored-By: Claude Opus 4.5 <noreply@anthropic.com>
140 lines
5.2 KiB
Python
140 lines
5.2 KiB
Python
"""
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Test Phase 2.5 with Complex Multi-Objective Optimization Request
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This tests the intelligent gap detection with a challenging real-world request
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involving multi-objective optimization with constraints.
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"""
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import sys
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from pathlib import Path
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project_root = Path(__file__).parent.parent
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sys.path.insert(0, str(project_root))
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from optimization_engine.utils.codebase_analyzer import CodebaseCapabilityAnalyzer
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from optimization_engine.future.workflow_decomposer import WorkflowDecomposer
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from optimization_engine.config.capability_matcher import CapabilityMatcher
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from optimization_engine.future.targeted_research_planner import TargetedResearchPlanner
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def main():
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user_request = """update a geometry (.prt) with all expressions that have a _opt suffix to make the mass minimized. But the mass is not directly the total mass used, its the value under the part expression mass_of_only_this_part which is the calculation of 1of the body mass of my part, the one that I want to minimize.
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the objective is to minimize mass but maintain stress of the solution 1 subcase 3 under 100Mpa. And also, as a second objective in my objective function, I want to minimize nodal reaction force in y of the same subcase."""
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print('=' * 80)
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print('PHASE 2.5 TEST: Complex Multi-Objective Optimization')
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print('=' * 80)
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print()
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print('User Request:')
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print(user_request)
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print()
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print('=' * 80)
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print()
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# Initialize
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analyzer = CodebaseCapabilityAnalyzer()
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decomposer = WorkflowDecomposer()
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matcher = CapabilityMatcher(analyzer)
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planner = TargetedResearchPlanner()
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# Step 1: Decompose
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print('[1] Decomposing Workflow')
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print('-' * 80)
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steps = decomposer.decompose(user_request)
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print(f'Identified {len(steps)} workflow steps:')
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print()
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for i, step in enumerate(steps, 1):
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print(f' {i}. {step.action.replace("_", " ").title()}')
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print(f' Domain: {step.domain}')
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if step.params:
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print(f' Params: {step.params}')
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print()
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# Step 2: Match to capabilities
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print()
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print('[2] Matching to Existing Capabilities')
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print('-' * 80)
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match = matcher.match(steps)
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print(f'Coverage: {match.coverage:.0%} ({len(match.known_steps)}/{len(steps)} steps)')
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print(f'Confidence: {match.overall_confidence:.0%}')
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print()
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print('KNOWN Steps (Already Implemented):')
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for i, known in enumerate(match.known_steps, 1):
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print(f' {i}. {known.step.action.replace("_", " ").title()} ({known.step.domain})')
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if known.implementation != 'unknown':
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impl_name = Path(known.implementation).name if '\\' in known.implementation or '/' in known.implementation else known.implementation
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print(f' File: {impl_name}')
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print()
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print('MISSING Steps (Need Research):')
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if match.unknown_steps:
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for i, unknown in enumerate(match.unknown_steps, 1):
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print(f' {i}. {unknown.step.action.replace("_", " ").title()} ({unknown.step.domain})')
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print(f' Required: {unknown.step.params}')
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if unknown.similar_capabilities:
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similar_str = ', '.join(unknown.similar_capabilities)
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print(f' Similar to: {similar_str}')
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print(f' Confidence: {unknown.confidence:.0%} (can adapt)')
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else:
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print(f' Confidence: {unknown.confidence:.0%} (needs research)')
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print()
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else:
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print(' None - all capabilities are known!')
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print()
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# Step 3: Create research plan
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print()
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print('[3] Creating Targeted Research Plan')
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print('-' * 80)
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plan = planner.plan(match)
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print(f'Research steps needed: {len(plan)}')
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print()
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if plan:
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for i, step in enumerate(plan, 1):
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print(f'Step {i}: {step["description"]}')
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print(f' Action: {step["action"]}')
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details = step.get('details', {})
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if 'capability' in details:
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print(f' Study: {details["capability"]}')
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if 'query' in details:
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print(f' Query: "{details["query"]}"')
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print(f' Expected confidence: {step["expected_confidence"]:.0%}')
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print()
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else:
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print('No research needed - all capabilities exist!')
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print()
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print()
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print('=' * 80)
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print('ANALYSIS SUMMARY')
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print('=' * 80)
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print()
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print('Request Complexity:')
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print(' - Multi-objective optimization (mass + reaction force)')
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print(' - Constraint: stress < 100 MPa')
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print(' - Custom mass expression (not total mass)')
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print(' - Specific subcase targeting (solution 1, subcase 3)')
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print(' - Parameters with _opt suffix filter')
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print()
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print(f'System Analysis:')
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print(f' Known capabilities: {len(match.known_steps)}/{len(steps)} ({match.coverage:.0%})')
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print(f' Missing capabilities: {len(match.unknown_steps)}/{len(steps)}')
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print(f' Overall confidence: {match.overall_confidence:.0%}')
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print()
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if match.unknown_steps:
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print('What needs research:')
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for unknown in match.unknown_steps:
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print(f' - {unknown.step.action} ({unknown.step.domain})')
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else:
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print('All capabilities already exist in Atomizer!')
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print()
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if __name__ == '__main__':
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main()
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