Major additions: - Training data export system for AtomizerField neural network training - Bracket stiffness optimization study with 50+ training samples - Intelligent NX model discovery (auto-detect solutions, expressions, mesh) - Result extractors module for displacement, stress, frequency, mass - User-generated NX journals for advanced workflows - Archive structure for legacy scripts and test outputs - Protocol documentation and dashboard launcher 🤖 Generated with [Claude Code](https://claude.com/claude-code) Co-Authored-By: Claude <noreply@anthropic.com>
522 lines
24 KiB
Markdown
522 lines
24 KiB
Markdown
# Atomizer
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> Advanced LLM-native optimization platform for Siemens NX Simcenter with Neural Network Acceleration
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[](https://www.python.org/downloads/)
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[](LICENSE)
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[](https://github.com)
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[](docs/NEURAL_FEATURES_COMPLETE.md)
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## Overview
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Atomizer is an **LLM-native optimization framework** for Siemens NX Simcenter that transforms how engineers interact with optimization workflows. It combines AI-assisted natural language interfaces with **Graph Neural Network (GNN) surrogates** that achieve **600x-500,000x speedup** over traditional FEA simulations.
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### Core Philosophy
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Atomizer enables engineers to:
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- **Describe optimizations in natural language** instead of writing configuration files
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- **Accelerate optimization 1000x** using trained neural network surrogates
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- **Generate custom analysis functions on-the-fly** (RSS metrics, weighted objectives, constraints)
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- **Get intelligent recommendations** based on optimization results and surrogate models
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- **Generate comprehensive reports** with AI-written insights and visualizations
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- **Extend the framework autonomously** through LLM-driven code generation
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### Key Features
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- **Neural Network Acceleration**: Graph Neural Networks predict FEA results in 4.5ms vs 10-30min for traditional solvers
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- **LLM-Driven Workflow**: Natural language study creation, configuration, and analysis
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- **Advanced Optimization**: Optuna-powered TPE, Gaussian Process surrogates, multi-objective Pareto fronts
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- **Dynamic Code Generation**: AI writes custom Python functions and NX journal scripts during optimization
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- **Intelligent Decision Support**: Surrogate quality assessment, sensitivity analysis, engineering recommendations
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- **Real-Time Monitoring**: Interactive web dashboard with live progress tracking
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- **Extensible Architecture**: Plugin system with hooks for pre/post mesh, solve, and extraction phases
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- **Hybrid FEA/NN Optimization**: Intelligent switching between physics simulation and neural predictions
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- **Self-Improving**: Continuous learning from optimization runs to improve neural surrogates
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---
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## Documentation
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📚 **[Complete Documentation Index](docs/00_INDEX.md)** - Start here for all documentation
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### Quick Links
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- **[Neural Features Guide](docs/NEURAL_FEATURES_COMPLETE.md)** - Complete guide to GNN surrogates, training, and integration
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- **[Neural Workflow Tutorial](docs/NEURAL_WORKFLOW_TUTORIAL.md)** - Step-by-step: data collection → training → optimization
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- **[Visual Architecture Diagrams](docs/09_DIAGRAMS/)** - Comprehensive Mermaid diagrams showing system architecture and workflows
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- **[Protocol Specifications](docs/PROTOCOLS.md)** - All active protocols (10, 11, 13) consolidated
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- **[Development Guide](DEVELOPMENT.md)** - Development workflow, testing, contributing
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- **[Dashboard Guide](docs/DASHBOARD.md)** - Comprehensive React dashboard with multi-objective visualization
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- **[NX Multi-Solution Protocol](docs/NX_MULTI_SOLUTION_PROTOCOL.md)** - Critical fix for multi-solution workflows
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- **[Getting Started](docs/HOW_TO_EXTEND_OPTIMIZATION.md)** - Create your first optimization study
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### By Topic
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- **Neural Acceleration**: [NEURAL_FEATURES_COMPLETE.md](docs/NEURAL_FEATURES_COMPLETE.md), [NEURAL_WORKFLOW_TUTORIAL.md](docs/NEURAL_WORKFLOW_TUTORIAL.md), [GNN_ARCHITECTURE.md](docs/GNN_ARCHITECTURE.md)
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- **Protocols**: [PROTOCOLS.md](docs/PROTOCOLS.md) - Protocol 10 (Intelligent Optimization), 11 (Multi-Objective), 13 (Dashboard)
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- **Architecture**: [HOOK_ARCHITECTURE.md](docs/HOOK_ARCHITECTURE.md), [NX_SESSION_MANAGEMENT.md](docs/NX_SESSION_MANAGEMENT.md)
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- **Dashboard**: [DASHBOARD_MASTER_PLAN.md](docs/DASHBOARD_MASTER_PLAN.md), [DASHBOARD_REACT_IMPLEMENTATION.md](docs/DASHBOARD_REACT_IMPLEMENTATION.md)
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- **Advanced**: [HYBRID_MODE_GUIDE.md](docs/HYBRID_MODE_GUIDE.md) - LLM-assisted workflows
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---
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## Architecture
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```
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┌─────────────────────────────────────────────────────────┐
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│ LLM Interface Layer │
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│ Claude Skill + Natural Language Parser + Workflow Mgr │
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└─────────────────────────────────────────────────────────┘
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↕
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┌─────────────────────────────────────────────────────────┐
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│ Optimization Engine Core │
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│ Plugin System + Feature Registry + Code Generator │
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└─────────────────────────────────────────────────────────┘
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↕
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┌───────────────────────────┬─────────────────────────────┐
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│ Traditional Path │ Neural Path (New!) │
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├───────────────────────────┼─────────────────────────────┤
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│ NX Solver (via Journals) │ AtomizerField GNN │
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│ ~10-30 min per eval │ ~4.5 ms per eval │
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│ Full physics fidelity │ Physics-informed learning │
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└───────────────────────────┴─────────────────────────────┘
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↕
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┌─────────────────────────────────────────────────────────┐
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│ Hybrid Decision Engine │
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│ Confidence-based switching • Uncertainty quantification│
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│ Automatic FEA validation • Online learning │
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└─────────────────────────────────────────────────────────┘
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↕
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┌─────────────────────────────────────────────────────────┐
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│ Analysis & Reporting │
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│ Surrogate Quality + Sensitivity + Report Generator │
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└─────────────────────────────────────────────────────────┘
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```
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### Neural Network Components (AtomizerField)
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```
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┌─────────────────────────────────────────────────────────┐
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│ AtomizerField System │
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├─────────────────────────────────────────────────────────┤
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│ │
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│ ┌─────────────┐ ┌─────────────┐ ┌─────────────┐ │
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│ │ BDF/OP2 │ │ GNN │ │ Inference │ │
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│ │ Parser │──>│ Training │──>│ Engine │ │
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│ │ (Phase 1) │ │ (Phase 2) │ │ (Phase 2) │ │
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│ └─────────────┘ └─────────────┘ └─────────────┘ │
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│ │ │ │ │
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│ ▼ ▼ ▼ │
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│ ┌─────────────────────────────────────────────────┐ │
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│ │ Neural Model Types │ │
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│ ├─────────────────────────────────────────────────┤ │
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│ │ • Field Predictor GNN (displacement + stress) │ │
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│ │ • Parametric GNN (all 4 objectives directly) │ │
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│ │ • Ensemble models for uncertainty │ │
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│ └─────────────────────────────────────────────────┘ │
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│ │
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└─────────────────────────────────────────────────────────┘
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```
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## Quick Start
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### Prerequisites
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- **Siemens NX 2412** with NX Nastran solver
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- **Python 3.10+** (recommend Anaconda)
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- **Git** for version control
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### Installation
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1. **Clone the repository**:
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```bash
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git clone https://github.com/yourusername/Atomizer.git
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cd Atomizer
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```
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2. **Create Python environment**:
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```bash
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conda create -n atomizer python=3.10
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conda activate atomizer
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```
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3. **Install dependencies**:
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```bash
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pip install -r requirements.txt
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```
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4. **Configure NX path** (edit if needed):
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- Default NX path: `C:\Program Files\Siemens\NX2412\NXBIN\run_journal.exe`
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- Update in `optimization_engine/nx_solver.py` if different
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### Basic Usage
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#### Example 1: Natural Language Optimization (LLM Mode - Available Now!)
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**New in Phase 3.2**: Describe your optimization in natural language - no JSON config needed!
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```bash
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python optimization_engine/run_optimization.py \
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--llm "Minimize displacement and mass while keeping stress below 200 MPa. \
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Design variables: beam_half_core_thickness (15-30 mm), \
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beam_face_thickness (15-30 mm). Run 10 trials using TPE." \
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--prt studies/simple_beam_optimization/1_setup/model/Beam.prt \
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--sim studies/simple_beam_optimization/1_setup/model/Beam_sim1.sim \
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--trials 10
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```
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**What happens automatically:**
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- ✅ LLM parses your natural language request
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- ✅ Auto-generates result extractors (displacement, stress, mass)
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- ✅ Auto-generates inline calculations (safety factor, RSS objectives)
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- ✅ Auto-generates post-processing hooks (plotting, reporting)
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- ✅ Runs optimization with Optuna
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- ✅ Saves results, plots, and best design
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**Example**: See [examples/llm_mode_simple_example.py](examples/llm_mode_simple_example.py) for a complete walkthrough.
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**Requirements**: Claude Code integration (no API key needed) or provide `--api-key` for Anthropic API.
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#### Example 2: Current JSON Configuration
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Create `studies/my_study/config.json`:
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```json
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{
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"sim_file": "studies/bracket_stress_minimization/model/Bracket_sim1.sim",
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"design_variables": [
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{
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"name": "wall_thickness",
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"expression_name": "wall_thickness",
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"min": 3.0,
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"max": 8.0,
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"units": "mm"
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}
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],
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"objectives": [
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{
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"name": "max_stress",
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"extractor": "stress_extractor",
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"metric": "max_von_mises",
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"direction": "minimize",
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"weight": 1.0,
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"units": "MPa"
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}
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],
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"optimization_settings": {
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"n_trials": 50,
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"sampler": "TPE",
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"n_startup_trials": 20
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}
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}
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```
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Run optimization:
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```bash
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python tests/test_journal_optimization.py
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# Or use the quick 5-trial test:
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python run_5trial_test.py
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```
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## Features
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### Neural Network Acceleration (AtomizerField)
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- **Graph Neural Networks (GNN)**: Physics-aware architecture that respects FEA mesh topology
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- **Parametric Surrogate**: Design-conditioned GNN predicts all 4 objectives (mass, frequency, displacement, stress)
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- **Ultra-Fast Inference**: 4.5ms per prediction vs 10-30 minutes for FEA (2,000-500,000x speedup)
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- **Physics-Informed Loss**: Custom loss functions enforce equilibrium, constitutive laws, and boundary conditions
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- **Uncertainty Quantification**: Ensemble-based confidence scores with automatic FEA validation triggers
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- **Hybrid Optimization**: Smart switching between FEA and NN based on confidence thresholds
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- **Training Data Export**: Automatic export of FEA results in neural training format (BDF/OP2 → HDF5+JSON)
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- **Pre-trained Models**: Ready-to-use models for UAV arm optimization with documented training pipelines
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### Core Optimization
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- **Intelligent Multi-Objective Optimization**: NSGA-II algorithm for Pareto-optimal solutions
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- **Advanced Dashboard**: React-based real-time monitoring with parallel coordinates visualization
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- **NX Integration**: Seamless journal-based control of Siemens NX Simcenter
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- **Multi-Solution Support**: Automatic handling of combined analysis types (static + modal, thermal + structural)
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- **Smart Logging**: Detailed per-trial logs + high-level optimization progress tracking
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- **Plugin System**: Extensible hooks at pre-solve, post-solve, and post-extraction points
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- **Study Management**: Isolated study folders with automatic result organization
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- **Substudy System**: NX-like hierarchical studies with shared models and independent configurations
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- **Live History Tracking**: Real-time incremental JSON updates for monitoring progress
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- **Resume Capability**: Interrupt and resume optimizations without data loss
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- **Pareto Front Analysis**: Automatic extraction and visualization of non-dominated solutions
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- **Parallel Coordinates Plot**: Research-grade multi-dimensional visualization with interactive selection
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## Current Status
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**Development Phase**: Beta - 95% Complete
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### Core Optimization
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- ✅ **Phase 1 (Plugin System)**: 100% Complete & Production Ready
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- ✅ **Phases 2.5-3.1 (LLM Intelligence)**: 100% Complete - Components built and tested
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- ✅ **Phase 3.2 (LLM Mode)**: Complete - Natural language optimization available
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- ✅ **Protocol 10 (IMSO)**: Complete - Intelligent Multi-Strategy Optimization
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- ✅ **Protocol 11 (Multi-Objective)**: Complete - Pareto optimization
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- ✅ **Protocol 13 (Dashboard)**: Complete - Real-time React dashboard
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### Neural Network Acceleration (AtomizerField)
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- ✅ **Phase 1 (Data Parser)**: Complete - BDF/OP2 → HDF5+JSON conversion
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- ✅ **Phase 2 (Neural Architecture)**: Complete - GNN models with physics-informed loss
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- ✅ **Phase 2.1 (Parametric GNN)**: Complete - Design-conditioned predictions
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- ✅ **Phase 2.2 (Integration Layer)**: Complete - Neural surrogate + hybrid optimizer
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- ✅ **Phase 3 (Testing)**: Complete - 18 comprehensive tests
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- ✅ **Pre-trained Models**: Available for UAV arm optimization
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**What's Working**:
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- ✅ Complete optimization engine with Optuna + NX Simcenter
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- ✅ **Neural acceleration**: 4.5ms predictions (2000x speedup over FEA)
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- ✅ **Hybrid optimization**: Smart FEA/NN switching with confidence thresholds
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- ✅ **Parametric surrogate**: Predicts all 4 objectives from design parameters
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- ✅ **Training pipeline**: Export data → Train GNN → Deploy → Optimize
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- ✅ Real-time dashboard with Pareto front visualization
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- ✅ Multi-objective optimization with NSGA-II
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- ✅ LLM-assisted natural language workflows
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**Production Ready**: Core optimization + neural acceleration fully functional.
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See [DEVELOPMENT_GUIDANCE.md](DEVELOPMENT_GUIDANCE.md) for comprehensive status and priorities.
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## Project Structure
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```
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Atomizer/
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├── optimization_engine/ # Core optimization logic
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│ ├── runner.py # Main optimization runner
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│ ├── runner_with_neural.py # Neural-enhanced runner (NEW)
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│ ├── neural_surrogate.py # GNN integration layer (NEW)
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│ ├── training_data_exporter.py # Export FEA→neural format (NEW)
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│ ├── nx_solver.py # NX journal execution
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│ ├── nx_updater.py # NX model parameter updates
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│ ├── result_extractors/ # OP2/F06 parsers
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│ └── plugins/ # Plugin system
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│
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├── atomizer-field/ # Neural Network System (NEW)
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│ ├── neural_field_parser.py # BDF/OP2 → neural format
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│ ├── validate_parsed_data.py # Physics validation
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│ ├── batch_parser.py # Batch processing
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│ ├── neural_models/ # GNN architectures
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│ │ ├── field_predictor.py # Field prediction GNN
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│ │ ├── parametric_predictor.py # Parametric GNN (4 objectives)
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│ │ └── physics_losses.py # Physics-informed loss functions
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│ ├── train.py # Training pipeline
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│ ├── train_parametric.py # Parametric model training
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│ ├── predict.py # Inference engine
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│ ├── runs/ # Pre-trained models
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│ │ └── parametric_uav_arm_v2/ # UAV arm model (ready to use)
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│ └── tests/ # 18 comprehensive tests
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│
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├── atomizer-dashboard/ # React Dashboard (NEW)
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│ ├── backend/ # FastAPI + WebSocket
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│ └── frontend/ # React + Tailwind + Recharts
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│
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├── studies/ # Optimization studies
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│ ├── uav_arm_optimization/ # Example with neural integration
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│ └── [other studies]/ # Traditional optimization examples
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│
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├── atomizer_field_training_data/ # Training data storage
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│ └── [study_name]/ # Exported training cases
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│
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├── docs/ # Documentation
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│ ├── NEURAL_FEATURES_COMPLETE.md # Complete neural guide
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│ ├── NEURAL_WORKFLOW_TUTORIAL.md # Step-by-step tutorial
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│ ├── GNN_ARCHITECTURE.md # Architecture deep-dive
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│ └── [other docs]/
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│
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├── tests/ # Integration tests
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└── README.md # This file
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```
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## Example: Neural-Accelerated UAV Arm Optimization
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A complete working example with neural acceleration in `studies/uav_arm_optimization/`:
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```bash
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# Step 1: Run initial FEA optimization (collect training data)
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cd studies/uav_arm_optimization
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python run_optimization.py --trials 50 --export-training-data
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# Step 2: Train neural network on collected data
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cd ../../atomizer-field
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python train_parametric.py \
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--train_dir ../atomizer_field_training_data/uav_arm \
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--epochs 200
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# Step 3: Run neural-accelerated optimization (1000x faster!)
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cd ../studies/uav_arm_optimization
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python run_optimization.py --trials 5000 --use-neural
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```
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**What happens**:
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1. Initial 50 FEA trials collect training data (~8 hours)
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2. GNN trains on the data (~30 minutes)
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3. Neural-accelerated trials run 5000 designs (~4 minutes total!)
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**Design Variables**:
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- `beam_half_core_thickness`: 5-15 mm
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- `beam_face_thickness`: 1-5 mm
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- `holes_diameter`: 20-50 mm
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- `hole_count`: 5-15
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**Objectives**:
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- Minimize mass
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- Maximize frequency
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- Minimize max displacement
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- Minimize max stress
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**Performance**:
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- FEA time: ~10 seconds/trial
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- Neural time: ~4.5 ms/trial
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- Speedup: **2,200x**
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## Example: Traditional Bracket Optimization
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For traditional FEA-only optimization, see `studies/bracket_displacement_maximizing/`:
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```bash
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cd studies/bracket_displacement_maximizing
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python run_optimization.py --trials 50
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```
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## Dashboard Usage
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Start the dashboard:
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```bash
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python dashboard/start_dashboard.py
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```
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Features:
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- **Create studies** with folder structure (sim/, results/, config.json)
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- **Drop .sim/.prt files** into study folders
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- **Explore .sim files** to extract expressions via NX
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- **Configure optimization** with 5-step wizard:
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1. Simulation files
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2. Design variables
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3. Objectives
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4. Constraints
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5. Optimization settings
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- **Monitor progress** with real-time charts
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- **View results** with trial history and best parameters
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## Vision: LLM-Native Engineering Assistant
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Atomizer is evolving into a comprehensive AI-powered engineering platform. See [DEVELOPMENT_ROADMAP.md](DEVELOPMENT_ROADMAP.md) for details on:
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- **Phase 1-7 development plan** with timelines and deliverables
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- **Example use cases** demonstrating natural language workflows
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- **Architecture diagrams** showing plugin system and LLM integration
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- **Success metrics** for each phase
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### Future Capabilities
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```
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User: "Add RSS function combining stress and displacement"
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→ LLM: Writes Python function, validates, registers as custom objective
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User: "Use surrogate to predict these 10 parameter sets"
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→ LLM: Checks surrogate R² > 0.9, runs predictions with confidence intervals
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User: "Make an optimization report"
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→ LLM: Generates HTML with plots, insights, recommendations (30 seconds)
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User: "Why did trial #34 perform best?"
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→ LLM: "Trial #34 had optimal stress distribution due to thickness 4.2mm
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creating uniform load paths. Fillet radius 3.1mm reduced stress
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concentration by 18%. This combination is Pareto-optimal."
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```
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## Development Status
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### Completed Phases
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- [x] **Phase 1**: Core optimization engine & Plugin system ✅
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- NX journal integration
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- Web dashboard
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- Lifecycle hooks (pre-solve, post-solve, post-extraction)
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- [x] **Phase 2.5**: Intelligent Codebase-Aware Gap Detection ✅
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- Scans existing capabilities before requesting examples
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- Matches workflow steps to implemented features
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- 80-90% accuracy on complex optimization requests
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- [x] **Phase 2.6**: Intelligent Step Classification ✅
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- Distinguishes engineering features from inline calculations
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- Identifies post-processing hooks vs FEA operations
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- Foundation for smart code generation
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- [x] **Phase 2.7**: LLM-Powered Workflow Intelligence ✅
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- Replaces static regex with Claude AI analysis
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- Detects ALL intermediate calculation steps
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- Understands engineering context (PCOMP, CBAR, element forces, etc.)
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- 95%+ expected accuracy with full nuance detection
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- [x] **Phase 2.8**: Inline Code Generation ✅
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- LLM-generates Python code for simple math operations
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- Handles avg/min/max, normalization, percentage calculations
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- Direct integration with Phase 2.7 LLM output
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- Optional automated code generation for calculations
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- [x] **Phase 2.9**: Post-Processing Hook Generation ✅
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- LLM-generates standalone Python middleware scripts
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- Integrated with Phase 1 lifecycle hook system
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- Handles weighted objectives, custom formulas, constraints, comparisons
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- Complete JSON-based I/O for optimization loops
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- Optional automated scripting for post-processing operations
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- [x] **Phase 3**: pyNastran Documentation Integration ✅
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- LLM-enhanced OP2 extraction code generation
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- Documentation research via WebFetch
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- 3 core extraction patterns (displacement, stress, force)
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- Knowledge base for learned patterns
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- Successfully tested on real OP2 files
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- Optional automated code generation for result extraction!
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- [x] **Phase 3.1**: LLM-Enhanced Automation Pipeline ✅
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- Extractor orchestrator integrates Phase 2.7 + Phase 3.0
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- Optional automatic extractor generation from LLM output
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- Dynamic loading and execution on real OP2 files
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- End-to-end test passed: Request → Code → Execution → Objective
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- LLM-enhanced workflow with user flexibility achieved!
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### Next Priorities
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- [ ] **Phase 3.2**: Optimization runner integration with orchestrator
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- [ ] **Phase 3.5**: NXOpen introspection & pattern curation
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- [ ] **Phase 4**: Code generation for complex FEA features
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- [ ] **Phase 5**: Analysis & decision support
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- [ ] **Phase 6**: Automated reporting
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**For Developers**:
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- [DEVELOPMENT.md](DEVELOPMENT.md) - Current status, todos, and active development
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- [DEVELOPMENT_ROADMAP.md](DEVELOPMENT_ROADMAP.md) - Strategic vision and long-term plan
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- [CHANGELOG.md](CHANGELOG.md) - Version history and changes
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## License
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Proprietary - Atomaste © 2025
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## Support
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- **Documentation**: [docs/](docs/)
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- **Studies**: [studies/](studies/) - Optimization study templates and examples
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- **Development Roadmap**: [DEVELOPMENT_ROADMAP.md](DEVELOPMENT_ROADMAP.md)
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- **Email**: antoine@atomaste.com
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## Resources
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### NXOpen References
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- **Official API Docs**: [Siemens NXOpen Documentation](https://docs.sw.siemens.com/en-US/doc/209349590/)
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- **NXOpenTSE**: [The Scripting Engineer's Guide](https://nxopentsedocumentation.thescriptingengineer.com/)
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- **Our Guide**: [NXOpen Resources](docs/NXOPEN_RESOURCES.md)
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### Optimization
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- **Optuna Documentation**: [optuna.readthedocs.io](https://optuna.readthedocs.io/)
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- **pyNastran**: [github.com/SteveDoyle2/pyNastran](https://github.com/SteveDoyle2/pyNastran)
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---
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**Built with ❤️ by Atomaste** | Powered by Optuna, NXOpen, and Claude
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