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Atomizer/optimization_engine/plugins/pre_solve/detailed_logger.py

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feat: Complete Phase 2.5-2.7 - Intelligent LLM-Powered Workflow Analysis This commit implements three major architectural improvements to transform Atomizer from static pattern matching to intelligent AI-powered analysis. ## Phase 2.5: Intelligent Codebase-Aware Gap Detection ✅ Created intelligent system that understands existing capabilities before requesting examples: **New Files:** - optimization_engine/codebase_analyzer.py (379 lines) Scans Atomizer codebase for existing FEA/CAE capabilities - optimization_engine/workflow_decomposer.py (507 lines, v0.2.0) Breaks user requests into atomic workflow steps Complete rewrite with multi-objective, constraints, subcase targeting - optimization_engine/capability_matcher.py (312 lines) Matches workflow steps to existing code implementations - optimization_engine/targeted_research_planner.py (259 lines) Creates focused research plans for only missing capabilities **Results:** - 80-90% coverage on complex optimization requests - 87-93% confidence in capability matching - Fixed expression reading misclassification (geometry vs result_extraction) ## Phase 2.6: Intelligent Step Classification ✅ Distinguishes engineering features from simple math operations: **New Files:** - optimization_engine/step_classifier.py (335 lines) **Classification Types:** 1. Engineering Features - Complex FEA/CAE needing research 2. Inline Calculations - Simple math to auto-generate 3. Post-Processing Hooks - Middleware between FEA steps ## Phase 2.7: LLM-Powered Workflow Intelligence ✅ Replaces static regex patterns with Claude AI analysis: **New Files:** - optimization_engine/llm_workflow_analyzer.py (395 lines) Uses Claude API for intelligent request analysis Supports both Claude Code (dev) and API (production) modes - .claude/skills/analyze-workflow.md Skill template for LLM workflow analysis integration **Key Breakthrough:** - Detects ALL intermediate steps (avg, min, normalization, etc.) - Understands engineering context (CBUSH vs CBAR, directions, metrics) - Distinguishes OP2 extraction from part expression reading - Expected 95%+ accuracy with full nuance detection ## Test Coverage **New Test Files:** - tests/test_phase_2_5_intelligent_gap_detection.py (335 lines) - tests/test_complex_multiobj_request.py (130 lines) - tests/test_cbush_optimization.py (130 lines) - tests/test_cbar_genetic_algorithm.py (150 lines) - tests/test_step_classifier.py (140 lines) - tests/test_llm_complex_request.py (387 lines) All tests include: - UTF-8 encoding for Windows console - atomizer environment (not test_env) - Comprehensive validation checks ## Documentation **New Documentation:** - docs/PHASE_2_5_INTELLIGENT_GAP_DETECTION.md (254 lines) - docs/PHASE_2_7_LLM_INTEGRATION.md (227 lines) - docs/SESSION_SUMMARY_PHASE_2_5_TO_2_7.md (252 lines) **Updated:** - README.md - Added Phase 2.5-2.7 completion status - DEVELOPMENT_ROADMAP.md - Updated phase progress ## Critical Fixes 1. **Expression Reading Misclassification** (lines cited in session summary) - Updated codebase_analyzer.py pattern detection - Fixed workflow_decomposer.py domain classification - Added capability_matcher.py read_expression mapping 2. **Environment Standardization** - All code now uses 'atomizer' conda environment - Removed test_env references throughout 3. **Multi-Objective Support** - WorkflowDecomposer v0.2.0 handles multiple objectives - Constraint extraction and validation - Subcase and direction targeting ## Architecture Evolution **Before (Static & Dumb):** User Request → Regex Patterns → Hardcoded Rules → Missed Steps ❌ **After (LLM-Powered & Intelligent):** User Request → Claude AI Analysis → Structured JSON → ├─ Engineering (research needed) ├─ Inline (auto-generate Python) ├─ Hooks (middleware scripts) └─ Optimization (config) ✅ ## LLM Integration Strategy **Development Mode (Current):** - Use Claude Code directly for interactive analysis - No API consumption or costs - Perfect for iterative development **Production Mode (Future):** - Optional Anthropic API integration - Falls back to heuristics if no API key - For standalone batch processing ## Next Steps - Phase 2.8: Inline Code Generation - Phase 2.9: Post-Processing Hook Generation - Phase 3: MCP Integration for automated documentation research 🚀 Generated with Claude Code Co-Authored-By: Claude <noreply@anthropic.com>
2025-11-16 13:35:41 -05:00
"""
Detailed Logger Plugin
Logs comprehensive information about each optimization iteration to a file.
Creates a detailed trace of all steps for debugging and analysis.
"""
from typing import Dict, Any, Optional
from pathlib import Path
from datetime import datetime
import json
import logging
logger = logging.getLogger(__name__)
def detailed_iteration_logger(context: Dict[str, Any]) -> Optional[Dict[str, Any]]:
"""
Log detailed information about the current trial to a timestamped log file.
Args:
context: Hook context containing:
- trial_number: Current trial number
- design_variables: Dict of variable values
- sim_file: Path to simulation file
- working_dir: Current working directory
- config: Full optimization configuration
Returns:
Dict with log file path
"""
trial_num = context.get('trial_number', '?')
design_vars = context.get('design_variables', {})
sim_file = context.get('sim_file', 'unknown')
config = context.get('config', {})
# Get the output directory from context (passed by runner)
output_dir = Path(context.get('output_dir', 'optimization_results'))
# Create logs subdirectory within the study results
log_dir = output_dir / 'trial_logs'
log_dir.mkdir(parents=True, exist_ok=True)
# Create trial-specific log file
timestamp = datetime.now().strftime('%Y%m%d_%H%M%S')
log_file = log_dir / f'trial_{trial_num:03d}_{timestamp}.log'
with open(log_file, 'w') as f:
f.write("=" * 80 + "\n")
f.write(f"OPTIMIZATION ITERATION LOG - Trial {trial_num}\n")
f.write("=" * 80 + "\n")
f.write(f"Timestamp: {datetime.now().isoformat()}\n")
f.write(f"Output Directory: {output_dir}\n")
f.write(f"Simulation File: {sim_file}\n")
f.write("\n")
f.write("-" * 80 + "\n")
f.write("DESIGN VARIABLES\n")
f.write("-" * 80 + "\n")
for var_name, var_value in design_vars.items():
f.write(f" {var_name:30s} = {var_value:12.4f}\n")
f.write("\n")
f.write("-" * 80 + "\n")
f.write("OPTIMIZATION CONFIGURATION\n")
f.write("-" * 80 + "\n")
config = context.get('config', {})
# Objectives
f.write("\nObjectives:\n")
for obj in config.get('objectives', []):
f.write(f" - {obj['name']}: {obj['direction']} (weight={obj.get('weight', 1.0)})\n")
# Constraints
constraints = config.get('constraints', [])
if constraints:
f.write("\nConstraints:\n")
for const in constraints:
f.write(f" - {const['name']}: {const['type']} limit={const['limit']} {const.get('units', '')}\n")
# Settings
settings = config.get('optimization_settings', {})
f.write("\nOptimization Settings:\n")
f.write(f" Sampler: {settings.get('sampler', 'unknown')}\n")
f.write(f" Total trials: {settings.get('n_trials', '?')}\n")
f.write(f" Startup trials: {settings.get('n_startup_trials', '?')}\n")
f.write("\n")
f.write("-" * 80 + "\n")
f.write("EXECUTION TIMELINE\n")
f.write("-" * 80 + "\n")
f.write(f"[{datetime.now().strftime('%H:%M:%S')}] PRE_SOLVE: Trial {trial_num} starting\n")
f.write(f"[{datetime.now().strftime('%H:%M:%S')}] Design variables prepared\n")
f.write(f"[{datetime.now().strftime('%H:%M:%S')}] Waiting for model update...\n")
f.write("\n")
f.write("-" * 80 + "\n")
f.write("NOTES\n")
f.write("-" * 80 + "\n")
f.write("This log will be updated by subsequent hooks during the optimization.\n")
f.write("Check post_solve and post_extraction logs for complete results.\n")
f.write("\n")
logger.info(f"Trial {trial_num} log created: {log_file}")
return {
'log_file': str(log_file),
'trial_number': trial_num,
'logged': True
}
def register_hooks(hook_manager):
"""
Register this plugin's hooks with the manager.
This function is called automatically when the plugin is loaded.
"""
hook_manager.register_hook(
hook_point='pre_solve',
function=detailed_iteration_logger,
description='Create detailed log file for each trial',
name='detailed_logger',
priority=5 # Run very early to capture everything
)