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feat: Implement Option A - MCP Model Discovery tool This commit implements the first phase of the MCP server as outlined in PROJECT_SUMMARY.md Option A: Model Discovery. New Features: - Complete .sim file parser (XML-based) - Expression extraction from .sim and .prt files - Solution, FEM, materials, loads, constraints extraction - Structured JSON output for LLM consumption - Markdown formatting for human-readable output Implementation Details: - mcp_server/tools/model_discovery.py: Core parser and discovery logic - SimFileParser class: Handles XML parsing of .sim files - discover_fea_model(): Main MCP tool function - format_discovery_result_for_llm(): Markdown formatter - mcp_server/tools/__init__.py: Updated to export new functions - mcp_server/tools/README.md: Complete documentation for MCP tools Testing & Examples: - examples/test_bracket.sim: Sample .sim file for testing - tests/mcp_server/tools/test_model_discovery.py: Comprehensive unit tests - Manual testing verified: Successfully extracts 4 expressions, solution info, mesh data, materials, loads, and constraints Validation: - Command-line tool works: python mcp_server/tools/model_discovery.py examples/test_bracket.sim - Output includes both Markdown and JSON formats - Error handling for missing files and invalid formats Next Steps (Phase 2): - Port optimization engine from P04 Atomizer - Implement build_optimization_config tool - Create pluggable result extractor system References: - PROJECT_SUMMARY.md: Option A (lines 339-350) - mcp_server/prompts/system_prompt.md: Model Discovery workflow
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# MCP Tools Documentation
This directory contains the MCP (Model Context Protocol) tools that enable LLM-driven optimization configuration for Atomizer.
## Available Tools
### 1. Model Discovery (`model_discovery.py`) ✅ IMPLEMENTED
**Purpose**: Parse Siemens NX .sim files to extract FEA model information.
**Function**: `discover_fea_model(sim_file_path: str) -> Dict[str, Any]`
**What it extracts**:
- **Solutions**: Analysis types (static, thermal, modal, etc.)
- **Expressions**: Parametric variables that can be optimized
- **FEM Info**: Mesh, materials, loads, constraints
- **Linked Files**: Associated .prt files and result files
**Usage Example**:
```python
from mcp_server.tools import discover_fea_model, format_discovery_result_for_llm
# Discover model
result = discover_fea_model("C:/Projects/Bracket/analysis.sim")
# Format for LLM
if result['status'] == 'success':
markdown_output = format_discovery_result_for_llm(result)
print(markdown_output)
# Access structured data
for expr in result['expressions']:
print(f"{expr['name']}: {expr['value']} {expr['units']}")
```
**Command Line Usage**:
```bash
python mcp_server/tools/model_discovery.py examples/test_bracket.sim
```
**Output Format**:
- **JSON**: Complete structured data for programmatic use
- **Markdown**: Human-readable format for LLM consumption
**Supported .sim File Versions**:
- NX 2412 (tested)
- Should work with NX 12.0+ (XML-based .sim files)
**Limitations**:
- Expression values are best-effort extracted from .sim XML
- For accurate values, the associated .prt file is parsed (binary parsing)
- Binary .prt parsing is heuristic-based and may miss some expressions
---
### 2. Build Optimization Config (`optimization_config.py`) ✅ IMPLEMENTED
feat: Implement Option A - MCP Model Discovery tool This commit implements the first phase of the MCP server as outlined in PROJECT_SUMMARY.md Option A: Model Discovery. New Features: - Complete .sim file parser (XML-based) - Expression extraction from .sim and .prt files - Solution, FEM, materials, loads, constraints extraction - Structured JSON output for LLM consumption - Markdown formatting for human-readable output Implementation Details: - mcp_server/tools/model_discovery.py: Core parser and discovery logic - SimFileParser class: Handles XML parsing of .sim files - discover_fea_model(): Main MCP tool function - format_discovery_result_for_llm(): Markdown formatter - mcp_server/tools/__init__.py: Updated to export new functions - mcp_server/tools/README.md: Complete documentation for MCP tools Testing & Examples: - examples/test_bracket.sim: Sample .sim file for testing - tests/mcp_server/tools/test_model_discovery.py: Comprehensive unit tests - Manual testing verified: Successfully extracts 4 expressions, solution info, mesh data, materials, loads, and constraints Validation: - Command-line tool works: python mcp_server/tools/model_discovery.py examples/test_bracket.sim - Output includes both Markdown and JSON formats - Error handling for missing files and invalid formats Next Steps (Phase 2): - Port optimization engine from P04 Atomizer - Implement build_optimization_config tool - Create pluggable result extractor system References: - PROJECT_SUMMARY.md: Option A (lines 339-350) - mcp_server/prompts/system_prompt.md: Model Discovery workflow
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**Purpose**: Generate `optimization_config.json` from user selections of objectives, constraints, and design variables.
feat: Implement Option A - MCP Model Discovery tool This commit implements the first phase of the MCP server as outlined in PROJECT_SUMMARY.md Option A: Model Discovery. New Features: - Complete .sim file parser (XML-based) - Expression extraction from .sim and .prt files - Solution, FEM, materials, loads, constraints extraction - Structured JSON output for LLM consumption - Markdown formatting for human-readable output Implementation Details: - mcp_server/tools/model_discovery.py: Core parser and discovery logic - SimFileParser class: Handles XML parsing of .sim files - discover_fea_model(): Main MCP tool function - format_discovery_result_for_llm(): Markdown formatter - mcp_server/tools/__init__.py: Updated to export new functions - mcp_server/tools/README.md: Complete documentation for MCP tools Testing & Examples: - examples/test_bracket.sim: Sample .sim file for testing - tests/mcp_server/tools/test_model_discovery.py: Comprehensive unit tests - Manual testing verified: Successfully extracts 4 expressions, solution info, mesh data, materials, loads, and constraints Validation: - Command-line tool works: python mcp_server/tools/model_discovery.py examples/test_bracket.sim - Output includes both Markdown and JSON formats - Error handling for missing files and invalid formats Next Steps (Phase 2): - Port optimization engine from P04 Atomizer - Implement build_optimization_config tool - Create pluggable result extractor system References: - PROJECT_SUMMARY.md: Option A (lines 339-350) - mcp_server/prompts/system_prompt.md: Model Discovery workflow
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**Functions**:
- `build_optimization_config(...)` - Create complete optimization configuration
- `list_optimization_options(sim_file_path)` - List all available options for a model
- `format_optimization_options_for_llm(options)` - Format options as Markdown
feat: Implement Option A - MCP Model Discovery tool This commit implements the first phase of the MCP server as outlined in PROJECT_SUMMARY.md Option A: Model Discovery. New Features: - Complete .sim file parser (XML-based) - Expression extraction from .sim and .prt files - Solution, FEM, materials, loads, constraints extraction - Structured JSON output for LLM consumption - Markdown formatting for human-readable output Implementation Details: - mcp_server/tools/model_discovery.py: Core parser and discovery logic - SimFileParser class: Handles XML parsing of .sim files - discover_fea_model(): Main MCP tool function - format_discovery_result_for_llm(): Markdown formatter - mcp_server/tools/__init__.py: Updated to export new functions - mcp_server/tools/README.md: Complete documentation for MCP tools Testing & Examples: - examples/test_bracket.sim: Sample .sim file for testing - tests/mcp_server/tools/test_model_discovery.py: Comprehensive unit tests - Manual testing verified: Successfully extracts 4 expressions, solution info, mesh data, materials, loads, and constraints Validation: - Command-line tool works: python mcp_server/tools/model_discovery.py examples/test_bracket.sim - Output includes both Markdown and JSON formats - Error handling for missing files and invalid formats Next Steps (Phase 2): - Port optimization engine from P04 Atomizer - Implement build_optimization_config tool - Create pluggable result extractor system References: - PROJECT_SUMMARY.md: Option A (lines 339-350) - mcp_server/prompts/system_prompt.md: Model Discovery workflow
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**What it does**:
- Discovers available design variables from the FEA model
- Lists available objectives (minimize mass, stress, displacement, volume)
- Lists available constraints (max stress, max displacement, mass limits)
- Builds a complete `optimization_config.json` based on user selections
- Validates that all selections are valid for the model
**Usage Example**:
```python
from mcp_server.tools import build_optimization_config, list_optimization_options
# Step 1: List available options
options = list_optimization_options("examples/bracket/Bracket_sim1.sim")
print(f"Available design variables: {len(options['available_design_variables'])}")
# Step 2: Build configuration
result = build_optimization_config(
sim_file_path="examples/bracket/Bracket_sim1.sim",
design_variables=[
{'name': 'tip_thickness', 'lower_bound': 15.0, 'upper_bound': 25.0},
{'name': 'support_angle', 'lower_bound': 20.0, 'upper_bound': 40.0}
],
objectives=[
{'objective_key': 'minimize_mass', 'weight': 5.0},
{'objective_key': 'minimize_max_stress', 'weight': 10.0}
],
constraints=[
{'constraint_key': 'max_displacement_limit', 'limit_value': 1.0},
{'constraint_key': 'max_stress_limit', 'limit_value': 200.0}
],
optimization_settings={
'n_trials': 150,
'sampler': 'TPE'
}
)
if result['status'] == 'success':
print(f"Config saved to: {result['config_file']}")
```
**Command Line Usage**:
```bash
python mcp_server/tools/optimization_config.py examples/bracket/Bracket_sim1.sim
```
**Available Objectives**:
- `minimize_mass`: Minimize total mass (weight reduction)
- `minimize_max_stress`: Minimize maximum von Mises stress
- `minimize_max_displacement`: Minimize maximum displacement (increase stiffness)
- `minimize_volume`: Minimize total volume (material usage)
**Available Constraints**:
- `max_stress_limit`: Maximum allowable von Mises stress
- `max_displacement_limit`: Maximum allowable displacement
- `min_mass_limit`: Minimum required mass (structural integrity)
- `max_mass_limit`: Maximum allowable mass (weight budget)
**Output**: Creates `optimization_config.json` with:
- Design variable definitions with bounds
- Multi-objective configuration with weights
- Constraint definitions with limits
- Optimization algorithm settings (trials, sampler)
feat: Implement Option A - MCP Model Discovery tool This commit implements the first phase of the MCP server as outlined in PROJECT_SUMMARY.md Option A: Model Discovery. New Features: - Complete .sim file parser (XML-based) - Expression extraction from .sim and .prt files - Solution, FEM, materials, loads, constraints extraction - Structured JSON output for LLM consumption - Markdown formatting for human-readable output Implementation Details: - mcp_server/tools/model_discovery.py: Core parser and discovery logic - SimFileParser class: Handles XML parsing of .sim files - discover_fea_model(): Main MCP tool function - format_discovery_result_for_llm(): Markdown formatter - mcp_server/tools/__init__.py: Updated to export new functions - mcp_server/tools/README.md: Complete documentation for MCP tools Testing & Examples: - examples/test_bracket.sim: Sample .sim file for testing - tests/mcp_server/tools/test_model_discovery.py: Comprehensive unit tests - Manual testing verified: Successfully extracts 4 expressions, solution info, mesh data, materials, loads, and constraints Validation: - Command-line tool works: python mcp_server/tools/model_discovery.py examples/test_bracket.sim - Output includes both Markdown and JSON formats - Error handling for missing files and invalid formats Next Steps (Phase 2): - Port optimization engine from P04 Atomizer - Implement build_optimization_config tool - Create pluggable result extractor system References: - PROJECT_SUMMARY.md: Option A (lines 339-350) - mcp_server/prompts/system_prompt.md: Model Discovery workflow
2025-11-15 13:23:05 +00:00
---
### 3. Start Optimization (PLANNED)
**Purpose**: Launch optimization run with given configuration.
**Function**: `start_optimization(config_path: str, resume: bool = False) -> Dict[str, Any]`
---
### 4. Query Optimization Status (PLANNED)
**Purpose**: Get current status of running optimization.
**Function**: `query_optimization_status(session_id: str) -> Dict[str, Any]`
---
### 5. Extract Results (PLANNED)
**Purpose**: Parse FEA result files (OP2, F06, XDB) for optimization metrics.
**Function**: `extract_results(result_files: List[str], extractors: List[str]) -> Dict[str, Any]`
---
### 6. Run NX Journal (PLANNED)
**Purpose**: Execute NXOpen scripts via file-based communication.
**Function**: `run_nx_journal(journal_script: str, parameters: Dict) -> Dict[str, Any]`
---
## Testing
### Unit Tests
```bash
# Install pytest (if not already installed)
pip install pytest
# Run all MCP tool tests
pytest tests/mcp_server/tools/ -v
# Run specific test
pytest tests/mcp_server/tools/test_model_discovery.py -v
```
### Example Files
Example .sim files for testing are located in `examples/`:
- `test_bracket.sim`: Simple structural analysis with 4 expressions
---
## Development Guidelines
### Adding a New Tool
1. **Create module**: `mcp_server/tools/your_tool.py`
2. **Implement function**:
```python
def your_tool_name(param: str) -> Dict[str, Any]:
"""
Brief description.
Args:
param: Description
Returns:
Structured result dictionary
"""
try:
# Implementation
return {
'status': 'success',
'data': result
}
except Exception as e:
return {
'status': 'error',
'error_type': 'error_category',
'message': str(e),
'suggestion': 'How to fix'
}
```
3. **Add to `__init__.py`**:
```python
from .your_tool import your_tool_name
__all__ = [
# ... existing tools
"your_tool_name",
]
```
4. **Create tests**: `tests/mcp_server/tools/test_your_tool.py`
5. **Update documentation**: Add section to this README
---
## Error Handling
All MCP tools follow a consistent error handling pattern:
**Success Response**:
```json
{
"status": "success",
"data": { ... }
}
```
**Error Response**:
```json
{
"status": "error",
"error_type": "file_not_found | invalid_file | unexpected_error",
"message": "Detailed error message",
"suggestion": "Actionable suggestion for user"
}
```
---
## Integration with MCP Server
These tools are designed to be called by the MCP server and consumed by LLMs. The workflow is:
1. **LLM Request**: "Analyze my FEA model at C:/Projects/model.sim"
2. **MCP Server**: Calls `discover_fea_model()`
3. **Tool Returns**: Structured JSON result
4. **MCP Server**: Formats with `format_discovery_result_for_llm()`
5. **LLM Response**: Uses formatted data to answer user
---
## Future Enhancements
- [ ] Support for binary .sim file formats (older NX versions)
- [ ] Direct NXOpen integration for accurate expression extraction
- [ ] Support for additional analysis types (thermal, modal, etc.)
- [ ] Caching of parsed results for performance
- [ ] Validation of .sim file integrity
- [ ] Extraction of solver convergence settings
---
**Last Updated**: 2025-11-15
**Status**: Phase 1 (Model Discovery) ✅ COMPLETE | Phase 2 (Optimization Config Builder) ✅ COMPLETE