2025-11-16 13:35:41 -05:00
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"""
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Test Knowledge Base Search and Retrieval
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This test demonstrates the Research Agent's ability to:
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1. Search through past research sessions
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2. Find relevant knowledge based on keywords
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3. Retrieve session information with confidence scores
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4. Avoid re-learning what it already knows
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Author: Atomizer Development Team
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Version: 0.1.0 (Phase 2 Week 2)
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Last Updated: 2025-01-16
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"""
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import sys
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from pathlib import Path
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# Set UTF-8 encoding for Windows console
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if sys.platform == 'win32':
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import codecs
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sys.stdout = codecs.getwriter('utf-8')(sys.stdout.buffer, errors='replace')
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sys.stderr = codecs.getwriter('utf-8')(sys.stderr.buffer, errors='replace')
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# Add project root to 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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refactor: Major reorganization of optimization_engine module structure
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>
2025-12-29 12:30:59 -05:00
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from optimization_engine.future.research_agent import (
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2025-11-16 13:35:41 -05:00
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ResearchAgent,
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ResearchFindings,
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KnowledgeGap,
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CONFIDENCE_LEVELS
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)
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def test_knowledge_base_search():
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"""Test that the agent can find and retrieve past research sessions."""
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print("\n" + "="*70)
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print("KNOWLEDGE BASE SEARCH TEST")
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print("="*70)
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agent = ResearchAgent()
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# Step 1: Create a research session (if not exists)
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print("\n" + "-"*70)
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print("[Step 1] Creating Test Research Session")
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print("-"*70)
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gap = KnowledgeGap(
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missing_features=['material_xml_generator'],
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missing_knowledge=['NX material XML format'],
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user_request="Create NX material XML for titanium Ti-6Al-4V",
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confidence=0.2
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)
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# Simulate findings from user example
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example_xml = """<?xml version="1.0" encoding="UTF-8"?>
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<PhysicalMaterial name="Steel_AISI_1020" version="1.0">
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<Density units="kg/m3">7850</Density>
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<YoungModulus units="GPa">200</YoungModulus>
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<PoissonRatio>0.29</PoissonRatio>
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</PhysicalMaterial>"""
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findings = ResearchFindings(
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sources={'user_example': 'steel_material.xml'},
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raw_data={'user_example': example_xml},
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confidence_scores={'user_example': CONFIDENCE_LEVELS['user_validated']}
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)
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knowledge = agent.synthesize_knowledge(findings)
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# Document session
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session_path = agent.document_session(
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topic='nx_materials_search_test',
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knowledge_gap=gap,
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findings=findings,
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knowledge=knowledge,
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generated_files=[]
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)
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print(f"\n Session created: {session_path.name}")
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print(f" Confidence: {knowledge.confidence:.2f}")
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# Step 2: Search for material-related knowledge
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print("\n" + "-"*70)
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print("[Step 2] Searching for 'material XML' Knowledge")
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print("-"*70)
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result = agent.search_knowledge_base("material XML")
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if result:
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print(f"\n ✓ Found relevant session!")
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print(f" Session ID: {result['session_id']}")
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print(f" Relevance score: {result['relevance_score']:.2f}")
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print(f" Confidence: {result['confidence']:.2f}")
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print(f" Has schema: {result.get('has_schema', False)}")
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assert result['relevance_score'] > 0.5, "Should have good relevance score"
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assert result['confidence'] > 0.7, "Should have high confidence"
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else:
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print("\n ✗ No matching session found")
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assert False, "Should find the material XML session"
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# Step 3: Search for similar query
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print("\n" + "-"*70)
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print("[Step 3] Searching for 'NX materials' Knowledge")
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print("-"*70)
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result2 = agent.search_knowledge_base("NX materials")
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if result2:
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print(f"\n ✓ Found relevant session!")
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print(f" Session ID: {result2['session_id']}")
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print(f" Relevance score: {result2['relevance_score']:.2f}")
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print(f" Confidence: {result2['confidence']:.2f}")
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assert result2['session_id'] == result['session_id'], "Should find same session"
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else:
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print("\n ✗ No matching session found")
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assert False, "Should find the materials session"
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# Step 4: Search for non-existent knowledge
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print("\n" + "-"*70)
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print("[Step 4] Searching for 'thermal analysis' Knowledge")
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print("-"*70)
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result3 = agent.search_knowledge_base("thermal analysis buckling")
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if result3:
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print(f"\n Found session (unexpected): {result3['session_id']}")
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print(f" Relevance score: {result3['relevance_score']:.2f}")
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print(" (This might be OK if relevance is low)")
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else:
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print("\n ✓ No matching session found (as expected)")
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print(" Agent correctly identified this as new knowledge")
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# Step 5: Demonstrate how this prevents re-learning
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print("\n" + "-"*70)
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print("[Step 5] Demonstrating Knowledge Reuse")
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print("-"*70)
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# Simulate user asking for another material
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new_request = "Create aluminum alloy 6061-T6 material XML"
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print(f"\n User request: '{new_request}'")
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# First, identify knowledge gap
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gap2 = agent.identify_knowledge_gap(new_request)
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print(f"\n Knowledge gap detected:")
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print(f" Missing features: {gap2.missing_features}")
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print(f" Missing knowledge: {gap2.missing_knowledge}")
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print(f" Confidence: {gap2.confidence:.2f}")
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# Then search knowledge base
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existing = agent.search_knowledge_base("material XML")
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if existing and existing['confidence'] > 0.8:
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print(f"\n ✓ Found existing knowledge! No need to ask user again")
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print(f" Can reuse learned schema from: {existing['session_id']}")
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print(f" Confidence: {existing['confidence']:.2f}")
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print("\n Workflow:")
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print(" 1. Retrieve learned XML schema from session")
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print(" 2. Apply aluminum 6061-T6 properties")
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print(" 3. Generate XML using template")
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print(" 4. Return result instantly (no user interaction needed!)")
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else:
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print(f"\n ✗ No reliable existing knowledge, would ask user for example")
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# Summary
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print("\n" + "="*70)
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print("TEST SUMMARY")
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print("="*70)
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print("\n Knowledge Base Search Performance:")
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print(" ✓ Created research session and documented knowledge")
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print(" ✓ Successfully searched and found relevant sessions")
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print(" ✓ Correctly matched similar queries to same session")
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print(" ✓ Returned confidence scores for decision-making")
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print(" ✓ Demonstrated knowledge reuse (avoid re-learning)")
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print("\n Benefits:")
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print(" - Second material request doesn't ask user for example")
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print(" - Instant generation using learned template")
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print(" - Knowledge accumulates over time")
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print(" - Agent becomes smarter with each research session")
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print("\n" + "="*70)
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print("Knowledge Base Search: WORKING! ✓")
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print("="*70 + "\n")
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return True
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if __name__ == '__main__':
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try:
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success = test_knowledge_base_search()
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sys.exit(0 if success else 1)
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except Exception as e:
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print(f"\n[ERROR] {e}")
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import traceback
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traceback.print_exc()
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sys.exit(1)
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