Files
Atomizer/optimization_engine/templates/run_nn_optimization_template.py
Anto01 eabcc4c3ca 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

43 lines
1.2 KiB
Python

#!/usr/bin/env python
"""
{STUDY_NAME} - Neural Network Acceleration Script (Simplified)
================================================================
This script uses ConfigDrivenSurrogate for config-driven NN optimization.
The ~600 lines of boilerplate code is now handled automatically.
Workflow:
---------
1. First run FEA: python run_optimization.py --run --trials 50
2. Then run NN: python run_nn_optimization.py --turbo --nn-trials 5000
Or combine:
python run_nn_optimization.py --all
Generated by Atomizer StudyWizard
"""
from pathlib import Path
import sys
# Add project root to path
project_root = Path(__file__).resolve().parents[2]
sys.path.insert(0, str(project_root))
from optimization_engine.processors.surrogates.generic_surrogate import ConfigDrivenSurrogate
def main():
"""Run neural acceleration using config-driven surrogate."""
# Create surrogate - all config read from optimization_config.json
surrogate = ConfigDrivenSurrogate(__file__)
# Element type: 'auto' detects from DAT file
# Override if needed: surrogate.element_type = 'cquad4' (shell) or 'ctetra' (solid)
return surrogate.run()
if __name__ == "__main__":
exit(main())