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Atomizer/atomizer-dashboard/backend/api/routes/optimization.py

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feat: Implement Protocol 13 - Real-Time Dashboard Tracking Complete implementation of Protocol 13 featuring real-time web dashboard for monitoring multi-objective optimization studies. ## New Features ### Backend (Python) - Real-time tracking system with per-trial JSON writes - New API endpoints for metadata, optimizer state, and Pareto fronts - Unit inference from objective descriptions - Multi-objective support using Optuna's best_trials API ### Frontend (React + TypeScript) - OptimizerPanel: Real-time optimizer state (phase, strategy, progress) - ParetoPlot: Pareto front visualization with normalization toggle - 3 modes: Raw, Min-Max [0-1], Z-Score standardization - Pareto front line connecting optimal points - ParallelCoordinatesPlot: High-dimensional interactive visualization - Objectives + design variables on parallel axes - Click-to-select, hover-to-highlight - Color-coded feasibility - Dynamic units throughout all visualizations ### Documentation - Comprehensive Protocol 13 guide with architecture, data flow, usage ## Files Added - `docs/PROTOCOL_13_DASHBOARD.md` - `atomizer-dashboard/frontend/src/components/OptimizerPanel.tsx` - `atomizer-dashboard/frontend/src/components/ParetoPlot.tsx` - `atomizer-dashboard/frontend/src/components/ParallelCoordinatesPlot.tsx` - `optimization_engine/realtime_tracking.py` ## Files Modified - `atomizer-dashboard/frontend/src/pages/Dashboard.tsx` - `atomizer-dashboard/backend/api/routes/optimization.py` - `optimization_engine/intelligent_optimizer.py` ## Testing - Tested with bracket_stiffness_optimization_V2 (30 trials, 20 Pareto solutions) - Dashboard running on localhost:3001 - All P1 and P2 features verified working 🤖 Generated with [Claude Code](https://claude.com/claude-code) Co-Authored-By: Claude <noreply@anthropic.com>
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"""
Optimization API endpoints
Handles study status, history retrieval, and control operations
"""
from fastapi import APIRouter, HTTPException, UploadFile, File, Form
from fastapi.responses import JSONResponse, FileResponse
from pydantic import BaseModel
feat: Implement Protocol 13 - Real-Time Dashboard Tracking Complete implementation of Protocol 13 featuring real-time web dashboard for monitoring multi-objective optimization studies. ## New Features ### Backend (Python) - Real-time tracking system with per-trial JSON writes - New API endpoints for metadata, optimizer state, and Pareto fronts - Unit inference from objective descriptions - Multi-objective support using Optuna's best_trials API ### Frontend (React + TypeScript) - OptimizerPanel: Real-time optimizer state (phase, strategy, progress) - ParetoPlot: Pareto front visualization with normalization toggle - 3 modes: Raw, Min-Max [0-1], Z-Score standardization - Pareto front line connecting optimal points - ParallelCoordinatesPlot: High-dimensional interactive visualization - Objectives + design variables on parallel axes - Click-to-select, hover-to-highlight - Color-coded feasibility - Dynamic units throughout all visualizations ### Documentation - Comprehensive Protocol 13 guide with architecture, data flow, usage ## Files Added - `docs/PROTOCOL_13_DASHBOARD.md` - `atomizer-dashboard/frontend/src/components/OptimizerPanel.tsx` - `atomizer-dashboard/frontend/src/components/ParetoPlot.tsx` - `atomizer-dashboard/frontend/src/components/ParallelCoordinatesPlot.tsx` - `optimization_engine/realtime_tracking.py` ## Files Modified - `atomizer-dashboard/frontend/src/pages/Dashboard.tsx` - `atomizer-dashboard/backend/api/routes/optimization.py` - `optimization_engine/intelligent_optimizer.py` ## Testing - Tested with bracket_stiffness_optimization_V2 (30 trials, 20 Pareto solutions) - Dashboard running on localhost:3001 - All P1 and P2 features verified working 🤖 Generated with [Claude Code](https://claude.com/claude-code) Co-Authored-By: Claude <noreply@anthropic.com>
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from pathlib import Path
from typing import List, Dict, Optional
import json
import sys
import sqlite3
import shutil
import subprocess
import psutil
import signal
from datetime import datetime
feat: Implement Protocol 13 - Real-Time Dashboard Tracking Complete implementation of Protocol 13 featuring real-time web dashboard for monitoring multi-objective optimization studies. ## New Features ### Backend (Python) - Real-time tracking system with per-trial JSON writes - New API endpoints for metadata, optimizer state, and Pareto fronts - Unit inference from objective descriptions - Multi-objective support using Optuna's best_trials API ### Frontend (React + TypeScript) - OptimizerPanel: Real-time optimizer state (phase, strategy, progress) - ParetoPlot: Pareto front visualization with normalization toggle - 3 modes: Raw, Min-Max [0-1], Z-Score standardization - Pareto front line connecting optimal points - ParallelCoordinatesPlot: High-dimensional interactive visualization - Objectives + design variables on parallel axes - Click-to-select, hover-to-highlight - Color-coded feasibility - Dynamic units throughout all visualizations ### Documentation - Comprehensive Protocol 13 guide with architecture, data flow, usage ## Files Added - `docs/PROTOCOL_13_DASHBOARD.md` - `atomizer-dashboard/frontend/src/components/OptimizerPanel.tsx` - `atomizer-dashboard/frontend/src/components/ParetoPlot.tsx` - `atomizer-dashboard/frontend/src/components/ParallelCoordinatesPlot.tsx` - `optimization_engine/realtime_tracking.py` ## Files Modified - `atomizer-dashboard/frontend/src/pages/Dashboard.tsx` - `atomizer-dashboard/backend/api/routes/optimization.py` - `optimization_engine/intelligent_optimizer.py` ## Testing - Tested with bracket_stiffness_optimization_V2 (30 trials, 20 Pareto solutions) - Dashboard running on localhost:3001 - All P1 and P2 features verified working 🤖 Generated with [Claude Code](https://claude.com/claude-code) Co-Authored-By: Claude <noreply@anthropic.com>
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# Add project root to path
sys.path.append(str(Path(__file__).parent.parent.parent.parent.parent))
router = APIRouter()
# Base studies directory
STUDIES_DIR = Path(__file__).parent.parent.parent.parent.parent / "studies"
def get_results_dir(study_dir: Path) -> Path:
"""Get the results directory for a study, supporting both 2_results and 3_results."""
results_dir = study_dir / "2_results"
if not results_dir.exists():
results_dir = study_dir / "3_results"
return results_dir
def is_optimization_running(study_id: str) -> bool:
"""Check if an optimization process is currently running for a study.
Looks for Python processes running run_optimization.py with the study_id in the command line.
"""
study_dir = STUDIES_DIR / study_id
for proc in psutil.process_iter(['pid', 'name', 'cmdline', 'cwd']):
try:
cmdline = proc.info.get('cmdline') or []
cmdline_str = ' '.join(cmdline) if cmdline else ''
# Check if this is a Python process running run_optimization.py for this study
if 'python' in cmdline_str.lower() and 'run_optimization' in cmdline_str:
if study_id in cmdline_str or str(study_dir) in cmdline_str:
return True
except (psutil.NoSuchProcess, psutil.AccessDenied):
continue
return False
def get_accurate_study_status(study_id: str, trial_count: int, total_trials: int, has_db: bool) -> str:
"""Determine accurate study status based on multiple factors.
Status can be:
- not_started: No database or 0 trials
- running: Active process found
- paused: Has trials but no active process and not completed
- completed: Reached trial target
- failed: Has error indicators (future enhancement)
Args:
study_id: The study identifier
trial_count: Number of completed trials
total_trials: Target number of trials from config
has_db: Whether the study database exists
Returns:
Status string: "not_started", "running", "paused", or "completed"
"""
# No database or no trials = not started
if not has_db or trial_count == 0:
return "not_started"
# Check if we've reached the target
if trial_count >= total_trials:
return "completed"
# Check if process is actively running
if is_optimization_running(study_id):
return "running"
# Has trials but not running and not complete = paused
return "paused"
feat: Implement Protocol 13 - Real-Time Dashboard Tracking Complete implementation of Protocol 13 featuring real-time web dashboard for monitoring multi-objective optimization studies. ## New Features ### Backend (Python) - Real-time tracking system with per-trial JSON writes - New API endpoints for metadata, optimizer state, and Pareto fronts - Unit inference from objective descriptions - Multi-objective support using Optuna's best_trials API ### Frontend (React + TypeScript) - OptimizerPanel: Real-time optimizer state (phase, strategy, progress) - ParetoPlot: Pareto front visualization with normalization toggle - 3 modes: Raw, Min-Max [0-1], Z-Score standardization - Pareto front line connecting optimal points - ParallelCoordinatesPlot: High-dimensional interactive visualization - Objectives + design variables on parallel axes - Click-to-select, hover-to-highlight - Color-coded feasibility - Dynamic units throughout all visualizations ### Documentation - Comprehensive Protocol 13 guide with architecture, data flow, usage ## Files Added - `docs/PROTOCOL_13_DASHBOARD.md` - `atomizer-dashboard/frontend/src/components/OptimizerPanel.tsx` - `atomizer-dashboard/frontend/src/components/ParetoPlot.tsx` - `atomizer-dashboard/frontend/src/components/ParallelCoordinatesPlot.tsx` - `optimization_engine/realtime_tracking.py` ## Files Modified - `atomizer-dashboard/frontend/src/pages/Dashboard.tsx` - `atomizer-dashboard/backend/api/routes/optimization.py` - `optimization_engine/intelligent_optimizer.py` ## Testing - Tested with bracket_stiffness_optimization_V2 (30 trials, 20 Pareto solutions) - Dashboard running on localhost:3001 - All P1 and P2 features verified working 🤖 Generated with [Claude Code](https://claude.com/claude-code) Co-Authored-By: Claude <noreply@anthropic.com>
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@router.get("/studies")
async def list_studies():
"""List all available optimization studies"""
try:
studies = []
if not STUDIES_DIR.exists():
return {"studies": []}
for study_dir in STUDIES_DIR.iterdir():
if not study_dir.is_dir():
continue
# Look for optimization config (check multiple locations)
config_file = study_dir / "optimization_config.json"
if not config_file.exists():
config_file = study_dir / "1_setup" / "optimization_config.json"
if not config_file.exists():
continue
# Load config
with open(config_file) as f:
config = json.load(f)
# Check if results directory exists (support both 2_results and 3_results)
feat: Implement Protocol 13 - Real-Time Dashboard Tracking Complete implementation of Protocol 13 featuring real-time web dashboard for monitoring multi-objective optimization studies. ## New Features ### Backend (Python) - Real-time tracking system with per-trial JSON writes - New API endpoints for metadata, optimizer state, and Pareto fronts - Unit inference from objective descriptions - Multi-objective support using Optuna's best_trials API ### Frontend (React + TypeScript) - OptimizerPanel: Real-time optimizer state (phase, strategy, progress) - ParetoPlot: Pareto front visualization with normalization toggle - 3 modes: Raw, Min-Max [0-1], Z-Score standardization - Pareto front line connecting optimal points - ParallelCoordinatesPlot: High-dimensional interactive visualization - Objectives + design variables on parallel axes - Click-to-select, hover-to-highlight - Color-coded feasibility - Dynamic units throughout all visualizations ### Documentation - Comprehensive Protocol 13 guide with architecture, data flow, usage ## Files Added - `docs/PROTOCOL_13_DASHBOARD.md` - `atomizer-dashboard/frontend/src/components/OptimizerPanel.tsx` - `atomizer-dashboard/frontend/src/components/ParetoPlot.tsx` - `atomizer-dashboard/frontend/src/components/ParallelCoordinatesPlot.tsx` - `optimization_engine/realtime_tracking.py` ## Files Modified - `atomizer-dashboard/frontend/src/pages/Dashboard.tsx` - `atomizer-dashboard/backend/api/routes/optimization.py` - `optimization_engine/intelligent_optimizer.py` ## Testing - Tested with bracket_stiffness_optimization_V2 (30 trials, 20 Pareto solutions) - Dashboard running on localhost:3001 - All P1 and P2 features verified working 🤖 Generated with [Claude Code](https://claude.com/claude-code) Co-Authored-By: Claude <noreply@anthropic.com>
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results_dir = study_dir / "2_results"
if not results_dir.exists():
results_dir = study_dir / "3_results"
feat: Implement Protocol 13 - Real-Time Dashboard Tracking Complete implementation of Protocol 13 featuring real-time web dashboard for monitoring multi-objective optimization studies. ## New Features ### Backend (Python) - Real-time tracking system with per-trial JSON writes - New API endpoints for metadata, optimizer state, and Pareto fronts - Unit inference from objective descriptions - Multi-objective support using Optuna's best_trials API ### Frontend (React + TypeScript) - OptimizerPanel: Real-time optimizer state (phase, strategy, progress) - ParetoPlot: Pareto front visualization with normalization toggle - 3 modes: Raw, Min-Max [0-1], Z-Score standardization - Pareto front line connecting optimal points - ParallelCoordinatesPlot: High-dimensional interactive visualization - Objectives + design variables on parallel axes - Click-to-select, hover-to-highlight - Color-coded feasibility - Dynamic units throughout all visualizations ### Documentation - Comprehensive Protocol 13 guide with architecture, data flow, usage ## Files Added - `docs/PROTOCOL_13_DASHBOARD.md` - `atomizer-dashboard/frontend/src/components/OptimizerPanel.tsx` - `atomizer-dashboard/frontend/src/components/ParetoPlot.tsx` - `atomizer-dashboard/frontend/src/components/ParallelCoordinatesPlot.tsx` - `optimization_engine/realtime_tracking.py` ## Files Modified - `atomizer-dashboard/frontend/src/pages/Dashboard.tsx` - `atomizer-dashboard/backend/api/routes/optimization.py` - `optimization_engine/intelligent_optimizer.py` ## Testing - Tested with bracket_stiffness_optimization_V2 (30 trials, 20 Pareto solutions) - Dashboard running on localhost:3001 - All P1 and P2 features verified working 🤖 Generated with [Claude Code](https://claude.com/claude-code) Co-Authored-By: Claude <noreply@anthropic.com>
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# Check for Optuna database (Protocol 10) or JSON history (other protocols)
study_db = results_dir / "study.db"
history_file = results_dir / "optimization_history_incremental.json"
trial_count = 0
best_value = None
has_db = False
feat: Implement Protocol 13 - Real-Time Dashboard Tracking Complete implementation of Protocol 13 featuring real-time web dashboard for monitoring multi-objective optimization studies. ## New Features ### Backend (Python) - Real-time tracking system with per-trial JSON writes - New API endpoints for metadata, optimizer state, and Pareto fronts - Unit inference from objective descriptions - Multi-objective support using Optuna's best_trials API ### Frontend (React + TypeScript) - OptimizerPanel: Real-time optimizer state (phase, strategy, progress) - ParetoPlot: Pareto front visualization with normalization toggle - 3 modes: Raw, Min-Max [0-1], Z-Score standardization - Pareto front line connecting optimal points - ParallelCoordinatesPlot: High-dimensional interactive visualization - Objectives + design variables on parallel axes - Click-to-select, hover-to-highlight - Color-coded feasibility - Dynamic units throughout all visualizations ### Documentation - Comprehensive Protocol 13 guide with architecture, data flow, usage ## Files Added - `docs/PROTOCOL_13_DASHBOARD.md` - `atomizer-dashboard/frontend/src/components/OptimizerPanel.tsx` - `atomizer-dashboard/frontend/src/components/ParetoPlot.tsx` - `atomizer-dashboard/frontend/src/components/ParallelCoordinatesPlot.tsx` - `optimization_engine/realtime_tracking.py` ## Files Modified - `atomizer-dashboard/frontend/src/pages/Dashboard.tsx` - `atomizer-dashboard/backend/api/routes/optimization.py` - `optimization_engine/intelligent_optimizer.py` ## Testing - Tested with bracket_stiffness_optimization_V2 (30 trials, 20 Pareto solutions) - Dashboard running on localhost:3001 - All P1 and P2 features verified working 🤖 Generated with [Claude Code](https://claude.com/claude-code) Co-Authored-By: Claude <noreply@anthropic.com>
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# Protocol 10: Read from Optuna SQLite database
if study_db.exists():
has_db = True
feat: Implement Protocol 13 - Real-Time Dashboard Tracking Complete implementation of Protocol 13 featuring real-time web dashboard for monitoring multi-objective optimization studies. ## New Features ### Backend (Python) - Real-time tracking system with per-trial JSON writes - New API endpoints for metadata, optimizer state, and Pareto fronts - Unit inference from objective descriptions - Multi-objective support using Optuna's best_trials API ### Frontend (React + TypeScript) - OptimizerPanel: Real-time optimizer state (phase, strategy, progress) - ParetoPlot: Pareto front visualization with normalization toggle - 3 modes: Raw, Min-Max [0-1], Z-Score standardization - Pareto front line connecting optimal points - ParallelCoordinatesPlot: High-dimensional interactive visualization - Objectives + design variables on parallel axes - Click-to-select, hover-to-highlight - Color-coded feasibility - Dynamic units throughout all visualizations ### Documentation - Comprehensive Protocol 13 guide with architecture, data flow, usage ## Files Added - `docs/PROTOCOL_13_DASHBOARD.md` - `atomizer-dashboard/frontend/src/components/OptimizerPanel.tsx` - `atomizer-dashboard/frontend/src/components/ParetoPlot.tsx` - `atomizer-dashboard/frontend/src/components/ParallelCoordinatesPlot.tsx` - `optimization_engine/realtime_tracking.py` ## Files Modified - `atomizer-dashboard/frontend/src/pages/Dashboard.tsx` - `atomizer-dashboard/backend/api/routes/optimization.py` - `optimization_engine/intelligent_optimizer.py` ## Testing - Tested with bracket_stiffness_optimization_V2 (30 trials, 20 Pareto solutions) - Dashboard running on localhost:3001 - All P1 and P2 features verified working 🤖 Generated with [Claude Code](https://claude.com/claude-code) Co-Authored-By: Claude <noreply@anthropic.com>
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try:
# Use timeout to avoid blocking on locked databases
conn = sqlite3.connect(str(study_db), timeout=2.0)
feat: Implement Protocol 13 - Real-Time Dashboard Tracking Complete implementation of Protocol 13 featuring real-time web dashboard for monitoring multi-objective optimization studies. ## New Features ### Backend (Python) - Real-time tracking system with per-trial JSON writes - New API endpoints for metadata, optimizer state, and Pareto fronts - Unit inference from objective descriptions - Multi-objective support using Optuna's best_trials API ### Frontend (React + TypeScript) - OptimizerPanel: Real-time optimizer state (phase, strategy, progress) - ParetoPlot: Pareto front visualization with normalization toggle - 3 modes: Raw, Min-Max [0-1], Z-Score standardization - Pareto front line connecting optimal points - ParallelCoordinatesPlot: High-dimensional interactive visualization - Objectives + design variables on parallel axes - Click-to-select, hover-to-highlight - Color-coded feasibility - Dynamic units throughout all visualizations ### Documentation - Comprehensive Protocol 13 guide with architecture, data flow, usage ## Files Added - `docs/PROTOCOL_13_DASHBOARD.md` - `atomizer-dashboard/frontend/src/components/OptimizerPanel.tsx` - `atomizer-dashboard/frontend/src/components/ParetoPlot.tsx` - `atomizer-dashboard/frontend/src/components/ParallelCoordinatesPlot.tsx` - `optimization_engine/realtime_tracking.py` ## Files Modified - `atomizer-dashboard/frontend/src/pages/Dashboard.tsx` - `atomizer-dashboard/backend/api/routes/optimization.py` - `optimization_engine/intelligent_optimizer.py` ## Testing - Tested with bracket_stiffness_optimization_V2 (30 trials, 20 Pareto solutions) - Dashboard running on localhost:3001 - All P1 and P2 features verified working 🤖 Generated with [Claude Code](https://claude.com/claude-code) Co-Authored-By: Claude <noreply@anthropic.com>
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cursor = conn.cursor()
# Get trial count and status
cursor.execute("SELECT COUNT(*) FROM trials WHERE state = 'COMPLETE'")
trial_count = cursor.fetchone()[0]
# Get best trial (for single-objective, or first objective for multi-objective)
if trial_count > 0:
cursor.execute("""
SELECT value FROM trial_values
WHERE trial_id IN (
SELECT trial_id FROM trials WHERE state = 'COMPLETE'
)
ORDER BY value ASC
LIMIT 1
""")
result = cursor.fetchone()
if result:
best_value = result[0]
conn.close()
except Exception as e:
print(f"Warning: Failed to read Optuna database for {study_dir.name}: {e}")
# Legacy: Read from JSON history
elif history_file.exists():
has_db = True
feat: Implement Protocol 13 - Real-Time Dashboard Tracking Complete implementation of Protocol 13 featuring real-time web dashboard for monitoring multi-objective optimization studies. ## New Features ### Backend (Python) - Real-time tracking system with per-trial JSON writes - New API endpoints for metadata, optimizer state, and Pareto fronts - Unit inference from objective descriptions - Multi-objective support using Optuna's best_trials API ### Frontend (React + TypeScript) - OptimizerPanel: Real-time optimizer state (phase, strategy, progress) - ParetoPlot: Pareto front visualization with normalization toggle - 3 modes: Raw, Min-Max [0-1], Z-Score standardization - Pareto front line connecting optimal points - ParallelCoordinatesPlot: High-dimensional interactive visualization - Objectives + design variables on parallel axes - Click-to-select, hover-to-highlight - Color-coded feasibility - Dynamic units throughout all visualizations ### Documentation - Comprehensive Protocol 13 guide with architecture, data flow, usage ## Files Added - `docs/PROTOCOL_13_DASHBOARD.md` - `atomizer-dashboard/frontend/src/components/OptimizerPanel.tsx` - `atomizer-dashboard/frontend/src/components/ParetoPlot.tsx` - `atomizer-dashboard/frontend/src/components/ParallelCoordinatesPlot.tsx` - `optimization_engine/realtime_tracking.py` ## Files Modified - `atomizer-dashboard/frontend/src/pages/Dashboard.tsx` - `atomizer-dashboard/backend/api/routes/optimization.py` - `optimization_engine/intelligent_optimizer.py` ## Testing - Tested with bracket_stiffness_optimization_V2 (30 trials, 20 Pareto solutions) - Dashboard running on localhost:3001 - All P1 and P2 features verified working 🤖 Generated with [Claude Code](https://claude.com/claude-code) Co-Authored-By: Claude <noreply@anthropic.com>
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with open(history_file) as f:
history = json.load(f)
trial_count = len(history)
if history:
# Find best trial
best_trial = min(history, key=lambda x: x['objective'])
best_value = best_trial['objective']
# Get total trials from config (supports both formats)
total_trials = (
config.get('optimization_settings', {}).get('n_trials') or
config.get('trials', {}).get('n_trials', 50)
)
# Get accurate status using process detection
status = get_accurate_study_status(study_dir.name, trial_count, total_trials, has_db)
# Get creation date from directory or config modification time
created_at = None
try:
# First try to get from database (most accurate)
if study_db.exists():
created_at = datetime.fromtimestamp(study_db.stat().st_mtime).isoformat()
elif config_file.exists():
created_at = datetime.fromtimestamp(config_file.stat().st_mtime).isoformat()
else:
created_at = datetime.fromtimestamp(study_dir.stat().st_ctime).isoformat()
except:
created_at = None
# Get last modified time
last_modified = None
try:
if study_db.exists():
last_modified = datetime.fromtimestamp(study_db.stat().st_mtime).isoformat()
elif history_file.exists():
last_modified = datetime.fromtimestamp(history_file.stat().st_mtime).isoformat()
except:
last_modified = None
feat: Implement Protocol 13 - Real-Time Dashboard Tracking Complete implementation of Protocol 13 featuring real-time web dashboard for monitoring multi-objective optimization studies. ## New Features ### Backend (Python) - Real-time tracking system with per-trial JSON writes - New API endpoints for metadata, optimizer state, and Pareto fronts - Unit inference from objective descriptions - Multi-objective support using Optuna's best_trials API ### Frontend (React + TypeScript) - OptimizerPanel: Real-time optimizer state (phase, strategy, progress) - ParetoPlot: Pareto front visualization with normalization toggle - 3 modes: Raw, Min-Max [0-1], Z-Score standardization - Pareto front line connecting optimal points - ParallelCoordinatesPlot: High-dimensional interactive visualization - Objectives + design variables on parallel axes - Click-to-select, hover-to-highlight - Color-coded feasibility - Dynamic units throughout all visualizations ### Documentation - Comprehensive Protocol 13 guide with architecture, data flow, usage ## Files Added - `docs/PROTOCOL_13_DASHBOARD.md` - `atomizer-dashboard/frontend/src/components/OptimizerPanel.tsx` - `atomizer-dashboard/frontend/src/components/ParetoPlot.tsx` - `atomizer-dashboard/frontend/src/components/ParallelCoordinatesPlot.tsx` - `optimization_engine/realtime_tracking.py` ## Files Modified - `atomizer-dashboard/frontend/src/pages/Dashboard.tsx` - `atomizer-dashboard/backend/api/routes/optimization.py` - `optimization_engine/intelligent_optimizer.py` ## Testing - Tested with bracket_stiffness_optimization_V2 (30 trials, 20 Pareto solutions) - Dashboard running on localhost:3001 - All P1 and P2 features verified working 🤖 Generated with [Claude Code](https://claude.com/claude-code) Co-Authored-By: Claude <noreply@anthropic.com>
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studies.append({
"id": study_dir.name,
"name": study_dir.name.replace("_", " ").title(),
"status": status,
"progress": {
"current": trial_count,
"total": total_trials
},
"best_value": best_value,
"target": config.get('target', {}).get('value'),
"path": str(study_dir),
"created_at": created_at,
"last_modified": last_modified
feat: Implement Protocol 13 - Real-Time Dashboard Tracking Complete implementation of Protocol 13 featuring real-time web dashboard for monitoring multi-objective optimization studies. ## New Features ### Backend (Python) - Real-time tracking system with per-trial JSON writes - New API endpoints for metadata, optimizer state, and Pareto fronts - Unit inference from objective descriptions - Multi-objective support using Optuna's best_trials API ### Frontend (React + TypeScript) - OptimizerPanel: Real-time optimizer state (phase, strategy, progress) - ParetoPlot: Pareto front visualization with normalization toggle - 3 modes: Raw, Min-Max [0-1], Z-Score standardization - Pareto front line connecting optimal points - ParallelCoordinatesPlot: High-dimensional interactive visualization - Objectives + design variables on parallel axes - Click-to-select, hover-to-highlight - Color-coded feasibility - Dynamic units throughout all visualizations ### Documentation - Comprehensive Protocol 13 guide with architecture, data flow, usage ## Files Added - `docs/PROTOCOL_13_DASHBOARD.md` - `atomizer-dashboard/frontend/src/components/OptimizerPanel.tsx` - `atomizer-dashboard/frontend/src/components/ParetoPlot.tsx` - `atomizer-dashboard/frontend/src/components/ParallelCoordinatesPlot.tsx` - `optimization_engine/realtime_tracking.py` ## Files Modified - `atomizer-dashboard/frontend/src/pages/Dashboard.tsx` - `atomizer-dashboard/backend/api/routes/optimization.py` - `optimization_engine/intelligent_optimizer.py` ## Testing - Tested with bracket_stiffness_optimization_V2 (30 trials, 20 Pareto solutions) - Dashboard running on localhost:3001 - All P1 and P2 features verified working 🤖 Generated with [Claude Code](https://claude.com/claude-code) Co-Authored-By: Claude <noreply@anthropic.com>
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})
return {"studies": studies}
except Exception as e:
raise HTTPException(status_code=500, detail=f"Failed to list studies: {str(e)}")
@router.get("/studies/{study_id}/status")
async def get_study_status(study_id: str):
"""Get detailed status of a specific study"""
try:
study_dir = STUDIES_DIR / study_id
if not study_dir.exists():
raise HTTPException(status_code=404, detail=f"Study {study_id} not found")
# Load config (check multiple locations)
config_file = study_dir / "optimization_config.json"
if not config_file.exists():
config_file = study_dir / "1_setup" / "optimization_config.json"
with open(config_file) as f:
config = json.load(f)
# Check for results (support both 2_results and 3_results)
results_dir = get_results_dir(study_dir)
feat: Implement Protocol 13 - Real-Time Dashboard Tracking Complete implementation of Protocol 13 featuring real-time web dashboard for monitoring multi-objective optimization studies. ## New Features ### Backend (Python) - Real-time tracking system with per-trial JSON writes - New API endpoints for metadata, optimizer state, and Pareto fronts - Unit inference from objective descriptions - Multi-objective support using Optuna's best_trials API ### Frontend (React + TypeScript) - OptimizerPanel: Real-time optimizer state (phase, strategy, progress) - ParetoPlot: Pareto front visualization with normalization toggle - 3 modes: Raw, Min-Max [0-1], Z-Score standardization - Pareto front line connecting optimal points - ParallelCoordinatesPlot: High-dimensional interactive visualization - Objectives + design variables on parallel axes - Click-to-select, hover-to-highlight - Color-coded feasibility - Dynamic units throughout all visualizations ### Documentation - Comprehensive Protocol 13 guide with architecture, data flow, usage ## Files Added - `docs/PROTOCOL_13_DASHBOARD.md` - `atomizer-dashboard/frontend/src/components/OptimizerPanel.tsx` - `atomizer-dashboard/frontend/src/components/ParetoPlot.tsx` - `atomizer-dashboard/frontend/src/components/ParallelCoordinatesPlot.tsx` - `optimization_engine/realtime_tracking.py` ## Files Modified - `atomizer-dashboard/frontend/src/pages/Dashboard.tsx` - `atomizer-dashboard/backend/api/routes/optimization.py` - `optimization_engine/intelligent_optimizer.py` ## Testing - Tested with bracket_stiffness_optimization_V2 (30 trials, 20 Pareto solutions) - Dashboard running on localhost:3001 - All P1 and P2 features verified working 🤖 Generated with [Claude Code](https://claude.com/claude-code) Co-Authored-By: Claude <noreply@anthropic.com>
2025-11-21 15:58:00 -05:00
study_db = results_dir / "study.db"
history_file = results_dir / "optimization_history_incremental.json"
# Protocol 10: Read from Optuna database
if study_db.exists():
conn = sqlite3.connect(str(study_db))
cursor = conn.cursor()
# Get trial counts by state
cursor.execute("SELECT COUNT(*) FROM trials WHERE state = 'COMPLETE'")
trial_count = cursor.fetchone()[0]
cursor.execute("SELECT COUNT(*) FROM trials WHERE state = 'PRUNED'")
pruned_count = cursor.fetchone()[0]
# Get best trial (first objective for multi-objective)
best_trial = None
if trial_count > 0:
cursor.execute("""
SELECT t.trial_id, t.number, tv.value
FROM trials t
JOIN trial_values tv ON t.trial_id = tv.trial_id
WHERE t.state = 'COMPLETE'
ORDER BY tv.value ASC
LIMIT 1
""")
result = cursor.fetchone()
if result:
trial_id, trial_number, best_value = result
# Get parameters for this trial
cursor.execute("""
SELECT param_name, param_value
FROM trial_params
WHERE trial_id = ?
""", (trial_id,))
params = {row[0]: row[1] for row in cursor.fetchall()}
best_trial = {
"trial_number": trial_number,
"objective": best_value,
"design_variables": params,
"results": {"first_frequency": best_value}
}
conn.close()
total_trials = config.get('optimization_settings', {}).get('n_trials', 50)
status = get_accurate_study_status(study_id, trial_count, total_trials, True)
feat: Implement Protocol 13 - Real-Time Dashboard Tracking Complete implementation of Protocol 13 featuring real-time web dashboard for monitoring multi-objective optimization studies. ## New Features ### Backend (Python) - Real-time tracking system with per-trial JSON writes - New API endpoints for metadata, optimizer state, and Pareto fronts - Unit inference from objective descriptions - Multi-objective support using Optuna's best_trials API ### Frontend (React + TypeScript) - OptimizerPanel: Real-time optimizer state (phase, strategy, progress) - ParetoPlot: Pareto front visualization with normalization toggle - 3 modes: Raw, Min-Max [0-1], Z-Score standardization - Pareto front line connecting optimal points - ParallelCoordinatesPlot: High-dimensional interactive visualization - Objectives + design variables on parallel axes - Click-to-select, hover-to-highlight - Color-coded feasibility - Dynamic units throughout all visualizations ### Documentation - Comprehensive Protocol 13 guide with architecture, data flow, usage ## Files Added - `docs/PROTOCOL_13_DASHBOARD.md` - `atomizer-dashboard/frontend/src/components/OptimizerPanel.tsx` - `atomizer-dashboard/frontend/src/components/ParetoPlot.tsx` - `atomizer-dashboard/frontend/src/components/ParallelCoordinatesPlot.tsx` - `optimization_engine/realtime_tracking.py` ## Files Modified - `atomizer-dashboard/frontend/src/pages/Dashboard.tsx` - `atomizer-dashboard/backend/api/routes/optimization.py` - `optimization_engine/intelligent_optimizer.py` ## Testing - Tested with bracket_stiffness_optimization_V2 (30 trials, 20 Pareto solutions) - Dashboard running on localhost:3001 - All P1 and P2 features verified working 🤖 Generated with [Claude Code](https://claude.com/claude-code) Co-Authored-By: Claude <noreply@anthropic.com>
2025-11-21 15:58:00 -05:00
return {
"study_id": study_id,
"status": status,
"progress": {
"current": trial_count,
"total": total_trials,
"percentage": (trial_count / total_trials * 100) if total_trials > 0 else 0
},
"best_trial": best_trial,
"pruned_trials": pruned_count,
"config": config
}
# Legacy: Read from JSON history
if not history_file.exists():
return {
"study_id": study_id,
"status": "not_started",
"progress": {"current": 0, "total": config.get('trials', {}).get('n_trials', 50)},
"config": config
}
with open(history_file) as f:
history = json.load(f)
trial_count = len(history)
total_trials = config.get('trials', {}).get('n_trials', 50)
# Find best trial
best_trial = None
if history:
best_trial = min(history, key=lambda x: x['objective'])
# Check for pruning data
pruning_file = results_dir / "pruning_history.json"
pruned_count = 0
if pruning_file.exists():
with open(pruning_file) as f:
pruning_history = json.load(f)
pruned_count = len(pruning_history)
status = "completed" if trial_count >= total_trials else "running"
return {
"study_id": study_id,
"status": status,
"progress": {
"current": trial_count,
"total": total_trials,
"percentage": (trial_count / total_trials * 100) if total_trials > 0 else 0
},
"best_trial": best_trial,
"pruned_trials": pruned_count,
"config": config
}
except FileNotFoundError:
raise HTTPException(status_code=404, detail=f"Study {study_id} not found")
except Exception as e:
raise HTTPException(status_code=500, detail=f"Failed to get study status: {str(e)}")
@router.get("/studies/{study_id}/history")
async def get_optimization_history(study_id: str, limit: Optional[int] = None):
"""Get optimization history (all trials)"""
try:
study_dir = STUDIES_DIR / study_id
results_dir = get_results_dir(study_dir)
feat: Implement Protocol 13 - Real-Time Dashboard Tracking Complete implementation of Protocol 13 featuring real-time web dashboard for monitoring multi-objective optimization studies. ## New Features ### Backend (Python) - Real-time tracking system with per-trial JSON writes - New API endpoints for metadata, optimizer state, and Pareto fronts - Unit inference from objective descriptions - Multi-objective support using Optuna's best_trials API ### Frontend (React + TypeScript) - OptimizerPanel: Real-time optimizer state (phase, strategy, progress) - ParetoPlot: Pareto front visualization with normalization toggle - 3 modes: Raw, Min-Max [0-1], Z-Score standardization - Pareto front line connecting optimal points - ParallelCoordinatesPlot: High-dimensional interactive visualization - Objectives + design variables on parallel axes - Click-to-select, hover-to-highlight - Color-coded feasibility - Dynamic units throughout all visualizations ### Documentation - Comprehensive Protocol 13 guide with architecture, data flow, usage ## Files Added - `docs/PROTOCOL_13_DASHBOARD.md` - `atomizer-dashboard/frontend/src/components/OptimizerPanel.tsx` - `atomizer-dashboard/frontend/src/components/ParetoPlot.tsx` - `atomizer-dashboard/frontend/src/components/ParallelCoordinatesPlot.tsx` - `optimization_engine/realtime_tracking.py` ## Files Modified - `atomizer-dashboard/frontend/src/pages/Dashboard.tsx` - `atomizer-dashboard/backend/api/routes/optimization.py` - `optimization_engine/intelligent_optimizer.py` ## Testing - Tested with bracket_stiffness_optimization_V2 (30 trials, 20 Pareto solutions) - Dashboard running on localhost:3001 - All P1 and P2 features verified working 🤖 Generated with [Claude Code](https://claude.com/claude-code) Co-Authored-By: Claude <noreply@anthropic.com>
2025-11-21 15:58:00 -05:00
study_db = results_dir / "study.db"
history_file = results_dir / "optimization_history_incremental.json"
# Protocol 10: Read from Optuna database
if study_db.exists():
conn = sqlite3.connect(str(study_db))
cursor = conn.cursor()
# Get all completed trials FROM ALL STUDIES in the database
# This handles adaptive optimizations that create multiple Optuna studies
# (e.g., v11_fea for FEA trials, v11_iter1_nn for NN trials, etc.)
feat: Implement Protocol 13 - Real-Time Dashboard Tracking Complete implementation of Protocol 13 featuring real-time web dashboard for monitoring multi-objective optimization studies. ## New Features ### Backend (Python) - Real-time tracking system with per-trial JSON writes - New API endpoints for metadata, optimizer state, and Pareto fronts - Unit inference from objective descriptions - Multi-objective support using Optuna's best_trials API ### Frontend (React + TypeScript) - OptimizerPanel: Real-time optimizer state (phase, strategy, progress) - ParetoPlot: Pareto front visualization with normalization toggle - 3 modes: Raw, Min-Max [0-1], Z-Score standardization - Pareto front line connecting optimal points - ParallelCoordinatesPlot: High-dimensional interactive visualization - Objectives + design variables on parallel axes - Click-to-select, hover-to-highlight - Color-coded feasibility - Dynamic units throughout all visualizations ### Documentation - Comprehensive Protocol 13 guide with architecture, data flow, usage ## Files Added - `docs/PROTOCOL_13_DASHBOARD.md` - `atomizer-dashboard/frontend/src/components/OptimizerPanel.tsx` - `atomizer-dashboard/frontend/src/components/ParetoPlot.tsx` - `atomizer-dashboard/frontend/src/components/ParallelCoordinatesPlot.tsx` - `optimization_engine/realtime_tracking.py` ## Files Modified - `atomizer-dashboard/frontend/src/pages/Dashboard.tsx` - `atomizer-dashboard/backend/api/routes/optimization.py` - `optimization_engine/intelligent_optimizer.py` ## Testing - Tested with bracket_stiffness_optimization_V2 (30 trials, 20 Pareto solutions) - Dashboard running on localhost:3001 - All P1 and P2 features verified working 🤖 Generated with [Claude Code](https://claude.com/claude-code) Co-Authored-By: Claude <noreply@anthropic.com>
2025-11-21 15:58:00 -05:00
cursor.execute("""
SELECT t.trial_id, t.number, t.datetime_start, t.datetime_complete, s.study_name
FROM trials t
JOIN studies s ON t.study_id = s.study_id
WHERE t.state = 'COMPLETE'
ORDER BY t.datetime_start DESC
feat: Implement Protocol 13 - Real-Time Dashboard Tracking Complete implementation of Protocol 13 featuring real-time web dashboard for monitoring multi-objective optimization studies. ## New Features ### Backend (Python) - Real-time tracking system with per-trial JSON writes - New API endpoints for metadata, optimizer state, and Pareto fronts - Unit inference from objective descriptions - Multi-objective support using Optuna's best_trials API ### Frontend (React + TypeScript) - OptimizerPanel: Real-time optimizer state (phase, strategy, progress) - ParetoPlot: Pareto front visualization with normalization toggle - 3 modes: Raw, Min-Max [0-1], Z-Score standardization - Pareto front line connecting optimal points - ParallelCoordinatesPlot: High-dimensional interactive visualization - Objectives + design variables on parallel axes - Click-to-select, hover-to-highlight - Color-coded feasibility - Dynamic units throughout all visualizations ### Documentation - Comprehensive Protocol 13 guide with architecture, data flow, usage ## Files Added - `docs/PROTOCOL_13_DASHBOARD.md` - `atomizer-dashboard/frontend/src/components/OptimizerPanel.tsx` - `atomizer-dashboard/frontend/src/components/ParetoPlot.tsx` - `atomizer-dashboard/frontend/src/components/ParallelCoordinatesPlot.tsx` - `optimization_engine/realtime_tracking.py` ## Files Modified - `atomizer-dashboard/frontend/src/pages/Dashboard.tsx` - `atomizer-dashboard/backend/api/routes/optimization.py` - `optimization_engine/intelligent_optimizer.py` ## Testing - Tested with bracket_stiffness_optimization_V2 (30 trials, 20 Pareto solutions) - Dashboard running on localhost:3001 - All P1 and P2 features verified working 🤖 Generated with [Claude Code](https://claude.com/claude-code) Co-Authored-By: Claude <noreply@anthropic.com>
2025-11-21 15:58:00 -05:00
""" + (f" LIMIT {limit}" if limit else ""))
trial_rows = cursor.fetchall()
trials = []
for trial_id, trial_num, start_time, end_time, study_name in trial_rows:
feat: Implement Protocol 13 - Real-Time Dashboard Tracking Complete implementation of Protocol 13 featuring real-time web dashboard for monitoring multi-objective optimization studies. ## New Features ### Backend (Python) - Real-time tracking system with per-trial JSON writes - New API endpoints for metadata, optimizer state, and Pareto fronts - Unit inference from objective descriptions - Multi-objective support using Optuna's best_trials API ### Frontend (React + TypeScript) - OptimizerPanel: Real-time optimizer state (phase, strategy, progress) - ParetoPlot: Pareto front visualization with normalization toggle - 3 modes: Raw, Min-Max [0-1], Z-Score standardization - Pareto front line connecting optimal points - ParallelCoordinatesPlot: High-dimensional interactive visualization - Objectives + design variables on parallel axes - Click-to-select, hover-to-highlight - Color-coded feasibility - Dynamic units throughout all visualizations ### Documentation - Comprehensive Protocol 13 guide with architecture, data flow, usage ## Files Added - `docs/PROTOCOL_13_DASHBOARD.md` - `atomizer-dashboard/frontend/src/components/OptimizerPanel.tsx` - `atomizer-dashboard/frontend/src/components/ParetoPlot.tsx` - `atomizer-dashboard/frontend/src/components/ParallelCoordinatesPlot.tsx` - `optimization_engine/realtime_tracking.py` ## Files Modified - `atomizer-dashboard/frontend/src/pages/Dashboard.tsx` - `atomizer-dashboard/backend/api/routes/optimization.py` - `optimization_engine/intelligent_optimizer.py` ## Testing - Tested with bracket_stiffness_optimization_V2 (30 trials, 20 Pareto solutions) - Dashboard running on localhost:3001 - All P1 and P2 features verified working 🤖 Generated with [Claude Code](https://claude.com/claude-code) Co-Authored-By: Claude <noreply@anthropic.com>
2025-11-21 15:58:00 -05:00
# Get objectives for this trial
cursor.execute("""
SELECT value
FROM trial_values
WHERE trial_id = ?
ORDER BY objective
""", (trial_id,))
values = [row[0] for row in cursor.fetchall()]
# Get parameters for this trial
cursor.execute("""
SELECT param_name, param_value
FROM trial_params
WHERE trial_id = ?
""", (trial_id,))
params = {}
for param_name, param_value in cursor.fetchall():
try:
params[param_name] = float(param_value) if param_value is not None else None
except (ValueError, TypeError):
params[param_name] = param_value
# Get user attributes (extracted results: mass, frequency, stress, displacement, etc.)
cursor.execute("""
SELECT key, value_json
FROM trial_user_attributes
WHERE trial_id = ?
""", (trial_id,))
user_attrs = {}
for key, value_json in cursor.fetchall():
try:
user_attrs[key] = json.loads(value_json)
except (ValueError, TypeError):
user_attrs[key] = value_json
# Extract ALL numeric metrics from user_attrs for results
# This ensures multi-objective studies show all Zernike metrics, RMS values, etc.
results = {}
excluded_keys = {"design_vars", "constraint_satisfied", "constraint_violations"}
for key, val in user_attrs.items():
if key in excluded_keys:
continue
# Include numeric values and lists of numbers
if isinstance(val, (int, float)):
results[key] = val
elif isinstance(val, list) and len(val) > 0 and isinstance(val[0], (int, float)):
# For lists, store as-is (e.g., Zernike coefficients)
results[key] = val
elif key == "objectives" and isinstance(val, dict):
# Extract nested objectives dict (Zernike multi-objective studies)
for obj_key, obj_val in val.items():
if isinstance(obj_val, (int, float)):
results[obj_key] = obj_val
# Fallback to first frequency from objectives if available
if not results and len(values) > 0:
results["first_frequency"] = values[0]
# CRITICAL: Extract design_vars from user_attrs if stored there
# The optimization code does: trial.set_user_attr("design_vars", design_vars)
design_vars_from_attrs = user_attrs.get("design_vars", {})
# Merge with params (prefer user_attrs design_vars if available)
final_design_vars = {**params, **design_vars_from_attrs} if design_vars_from_attrs else params
# Extract source for FEA vs NN differentiation
source = user_attrs.get("source", "FEA") # Default to FEA for legacy studies
# Use trial_id as unique identifier when multiple Optuna studies exist
# This avoids trial number collisions between studies
unique_trial_num = trial_id if study_name else trial_num
feat: Implement Protocol 13 - Real-Time Dashboard Tracking Complete implementation of Protocol 13 featuring real-time web dashboard for monitoring multi-objective optimization studies. ## New Features ### Backend (Python) - Real-time tracking system with per-trial JSON writes - New API endpoints for metadata, optimizer state, and Pareto fronts - Unit inference from objective descriptions - Multi-objective support using Optuna's best_trials API ### Frontend (React + TypeScript) - OptimizerPanel: Real-time optimizer state (phase, strategy, progress) - ParetoPlot: Pareto front visualization with normalization toggle - 3 modes: Raw, Min-Max [0-1], Z-Score standardization - Pareto front line connecting optimal points - ParallelCoordinatesPlot: High-dimensional interactive visualization - Objectives + design variables on parallel axes - Click-to-select, hover-to-highlight - Color-coded feasibility - Dynamic units throughout all visualizations ### Documentation - Comprehensive Protocol 13 guide with architecture, data flow, usage ## Files Added - `docs/PROTOCOL_13_DASHBOARD.md` - `atomizer-dashboard/frontend/src/components/OptimizerPanel.tsx` - `atomizer-dashboard/frontend/src/components/ParetoPlot.tsx` - `atomizer-dashboard/frontend/src/components/ParallelCoordinatesPlot.tsx` - `optimization_engine/realtime_tracking.py` ## Files Modified - `atomizer-dashboard/frontend/src/pages/Dashboard.tsx` - `atomizer-dashboard/backend/api/routes/optimization.py` - `optimization_engine/intelligent_optimizer.py` ## Testing - Tested with bracket_stiffness_optimization_V2 (30 trials, 20 Pareto solutions) - Dashboard running on localhost:3001 - All P1 and P2 features verified working 🤖 Generated with [Claude Code](https://claude.com/claude-code) Co-Authored-By: Claude <noreply@anthropic.com>
2025-11-21 15:58:00 -05:00
trials.append({
"trial_number": unique_trial_num,
feat: Implement Protocol 13 - Real-Time Dashboard Tracking Complete implementation of Protocol 13 featuring real-time web dashboard for monitoring multi-objective optimization studies. ## New Features ### Backend (Python) - Real-time tracking system with per-trial JSON writes - New API endpoints for metadata, optimizer state, and Pareto fronts - Unit inference from objective descriptions - Multi-objective support using Optuna's best_trials API ### Frontend (React + TypeScript) - OptimizerPanel: Real-time optimizer state (phase, strategy, progress) - ParetoPlot: Pareto front visualization with normalization toggle - 3 modes: Raw, Min-Max [0-1], Z-Score standardization - Pareto front line connecting optimal points - ParallelCoordinatesPlot: High-dimensional interactive visualization - Objectives + design variables on parallel axes - Click-to-select, hover-to-highlight - Color-coded feasibility - Dynamic units throughout all visualizations ### Documentation - Comprehensive Protocol 13 guide with architecture, data flow, usage ## Files Added - `docs/PROTOCOL_13_DASHBOARD.md` - `atomizer-dashboard/frontend/src/components/OptimizerPanel.tsx` - `atomizer-dashboard/frontend/src/components/ParetoPlot.tsx` - `atomizer-dashboard/frontend/src/components/ParallelCoordinatesPlot.tsx` - `optimization_engine/realtime_tracking.py` ## Files Modified - `atomizer-dashboard/frontend/src/pages/Dashboard.tsx` - `atomizer-dashboard/backend/api/routes/optimization.py` - `optimization_engine/intelligent_optimizer.py` ## Testing - Tested with bracket_stiffness_optimization_V2 (30 trials, 20 Pareto solutions) - Dashboard running on localhost:3001 - All P1 and P2 features verified working 🤖 Generated with [Claude Code](https://claude.com/claude-code) Co-Authored-By: Claude <noreply@anthropic.com>
2025-11-21 15:58:00 -05:00
"objective": values[0] if len(values) > 0 else None, # Primary objective
"objectives": values if len(values) > 1 else None, # All objectives for multi-objective
"design_variables": final_design_vars, # Use merged design vars
"results": results,
"user_attrs": user_attrs, # Include all user attributes
"source": source, # FEA or NN
feat: Implement Protocol 13 - Real-Time Dashboard Tracking Complete implementation of Protocol 13 featuring real-time web dashboard for monitoring multi-objective optimization studies. ## New Features ### Backend (Python) - Real-time tracking system with per-trial JSON writes - New API endpoints for metadata, optimizer state, and Pareto fronts - Unit inference from objective descriptions - Multi-objective support using Optuna's best_trials API ### Frontend (React + TypeScript) - OptimizerPanel: Real-time optimizer state (phase, strategy, progress) - ParetoPlot: Pareto front visualization with normalization toggle - 3 modes: Raw, Min-Max [0-1], Z-Score standardization - Pareto front line connecting optimal points - ParallelCoordinatesPlot: High-dimensional interactive visualization - Objectives + design variables on parallel axes - Click-to-select, hover-to-highlight - Color-coded feasibility - Dynamic units throughout all visualizations ### Documentation - Comprehensive Protocol 13 guide with architecture, data flow, usage ## Files Added - `docs/PROTOCOL_13_DASHBOARD.md` - `atomizer-dashboard/frontend/src/components/OptimizerPanel.tsx` - `atomizer-dashboard/frontend/src/components/ParetoPlot.tsx` - `atomizer-dashboard/frontend/src/components/ParallelCoordinatesPlot.tsx` - `optimization_engine/realtime_tracking.py` ## Files Modified - `atomizer-dashboard/frontend/src/pages/Dashboard.tsx` - `atomizer-dashboard/backend/api/routes/optimization.py` - `optimization_engine/intelligent_optimizer.py` ## Testing - Tested with bracket_stiffness_optimization_V2 (30 trials, 20 Pareto solutions) - Dashboard running on localhost:3001 - All P1 and P2 features verified working 🤖 Generated with [Claude Code](https://claude.com/claude-code) Co-Authored-By: Claude <noreply@anthropic.com>
2025-11-21 15:58:00 -05:00
"start_time": start_time,
"end_time": end_time,
"study_name": study_name # Include for debugging
feat: Implement Protocol 13 - Real-Time Dashboard Tracking Complete implementation of Protocol 13 featuring real-time web dashboard for monitoring multi-objective optimization studies. ## New Features ### Backend (Python) - Real-time tracking system with per-trial JSON writes - New API endpoints for metadata, optimizer state, and Pareto fronts - Unit inference from objective descriptions - Multi-objective support using Optuna's best_trials API ### Frontend (React + TypeScript) - OptimizerPanel: Real-time optimizer state (phase, strategy, progress) - ParetoPlot: Pareto front visualization with normalization toggle - 3 modes: Raw, Min-Max [0-1], Z-Score standardization - Pareto front line connecting optimal points - ParallelCoordinatesPlot: High-dimensional interactive visualization - Objectives + design variables on parallel axes - Click-to-select, hover-to-highlight - Color-coded feasibility - Dynamic units throughout all visualizations ### Documentation - Comprehensive Protocol 13 guide with architecture, data flow, usage ## Files Added - `docs/PROTOCOL_13_DASHBOARD.md` - `atomizer-dashboard/frontend/src/components/OptimizerPanel.tsx` - `atomizer-dashboard/frontend/src/components/ParetoPlot.tsx` - `atomizer-dashboard/frontend/src/components/ParallelCoordinatesPlot.tsx` - `optimization_engine/realtime_tracking.py` ## Files Modified - `atomizer-dashboard/frontend/src/pages/Dashboard.tsx` - `atomizer-dashboard/backend/api/routes/optimization.py` - `optimization_engine/intelligent_optimizer.py` ## Testing - Tested with bracket_stiffness_optimization_V2 (30 trials, 20 Pareto solutions) - Dashboard running on localhost:3001 - All P1 and P2 features verified working 🤖 Generated with [Claude Code](https://claude.com/claude-code) Co-Authored-By: Claude <noreply@anthropic.com>
2025-11-21 15:58:00 -05:00
})
conn.close()
return {"trials": trials}
# Legacy: Read from JSON history
if not history_file.exists():
return {"trials": []}
with open(history_file) as f:
history = json.load(f)
# Apply limit if specified
if limit:
history = history[-limit:]
return {"trials": history}
except FileNotFoundError:
raise HTTPException(status_code=404, detail=f"Study {study_id} not found")
except Exception as e:
raise HTTPException(status_code=500, detail=f"Failed to get history: {str(e)}")
@router.get("/studies/{study_id}/pruning")
async def get_pruning_history(study_id: str):
"""Get pruning diagnostics from Optuna database or legacy JSON file"""
feat: Implement Protocol 13 - Real-Time Dashboard Tracking Complete implementation of Protocol 13 featuring real-time web dashboard for monitoring multi-objective optimization studies. ## New Features ### Backend (Python) - Real-time tracking system with per-trial JSON writes - New API endpoints for metadata, optimizer state, and Pareto fronts - Unit inference from objective descriptions - Multi-objective support using Optuna's best_trials API ### Frontend (React + TypeScript) - OptimizerPanel: Real-time optimizer state (phase, strategy, progress) - ParetoPlot: Pareto front visualization with normalization toggle - 3 modes: Raw, Min-Max [0-1], Z-Score standardization - Pareto front line connecting optimal points - ParallelCoordinatesPlot: High-dimensional interactive visualization - Objectives + design variables on parallel axes - Click-to-select, hover-to-highlight - Color-coded feasibility - Dynamic units throughout all visualizations ### Documentation - Comprehensive Protocol 13 guide with architecture, data flow, usage ## Files Added - `docs/PROTOCOL_13_DASHBOARD.md` - `atomizer-dashboard/frontend/src/components/OptimizerPanel.tsx` - `atomizer-dashboard/frontend/src/components/ParetoPlot.tsx` - `atomizer-dashboard/frontend/src/components/ParallelCoordinatesPlot.tsx` - `optimization_engine/realtime_tracking.py` ## Files Modified - `atomizer-dashboard/frontend/src/pages/Dashboard.tsx` - `atomizer-dashboard/backend/api/routes/optimization.py` - `optimization_engine/intelligent_optimizer.py` ## Testing - Tested with bracket_stiffness_optimization_V2 (30 trials, 20 Pareto solutions) - Dashboard running on localhost:3001 - All P1 and P2 features verified working 🤖 Generated with [Claude Code](https://claude.com/claude-code) Co-Authored-By: Claude <noreply@anthropic.com>
2025-11-21 15:58:00 -05:00
try:
study_dir = STUDIES_DIR / study_id
results_dir = get_results_dir(study_dir)
study_db = results_dir / "study.db"
pruning_file = results_dir / "pruning_history.json"
feat: Implement Protocol 13 - Real-Time Dashboard Tracking Complete implementation of Protocol 13 featuring real-time web dashboard for monitoring multi-objective optimization studies. ## New Features ### Backend (Python) - Real-time tracking system with per-trial JSON writes - New API endpoints for metadata, optimizer state, and Pareto fronts - Unit inference from objective descriptions - Multi-objective support using Optuna's best_trials API ### Frontend (React + TypeScript) - OptimizerPanel: Real-time optimizer state (phase, strategy, progress) - ParetoPlot: Pareto front visualization with normalization toggle - 3 modes: Raw, Min-Max [0-1], Z-Score standardization - Pareto front line connecting optimal points - ParallelCoordinatesPlot: High-dimensional interactive visualization - Objectives + design variables on parallel axes - Click-to-select, hover-to-highlight - Color-coded feasibility - Dynamic units throughout all visualizations ### Documentation - Comprehensive Protocol 13 guide with architecture, data flow, usage ## Files Added - `docs/PROTOCOL_13_DASHBOARD.md` - `atomizer-dashboard/frontend/src/components/OptimizerPanel.tsx` - `atomizer-dashboard/frontend/src/components/ParetoPlot.tsx` - `atomizer-dashboard/frontend/src/components/ParallelCoordinatesPlot.tsx` - `optimization_engine/realtime_tracking.py` ## Files Modified - `atomizer-dashboard/frontend/src/pages/Dashboard.tsx` - `atomizer-dashboard/backend/api/routes/optimization.py` - `optimization_engine/intelligent_optimizer.py` ## Testing - Tested with bracket_stiffness_optimization_V2 (30 trials, 20 Pareto solutions) - Dashboard running on localhost:3001 - All P1 and P2 features verified working 🤖 Generated with [Claude Code](https://claude.com/claude-code) Co-Authored-By: Claude <noreply@anthropic.com>
2025-11-21 15:58:00 -05:00
# Protocol 10+: Read from Optuna database
if study_db.exists():
conn = sqlite3.connect(str(study_db))
cursor = conn.cursor()
# Get all pruned trials from Optuna database
cursor.execute("""
SELECT t.trial_id, t.number, t.datetime_start, t.datetime_complete
FROM trials t
WHERE t.state = 'PRUNED'
ORDER BY t.number DESC
""")
pruned_rows = cursor.fetchall()
pruned_trials = []
for trial_id, trial_num, start_time, end_time in pruned_rows:
# Get parameters for this trial
cursor.execute("""
SELECT param_name, param_value
FROM trial_params
WHERE trial_id = ?
""", (trial_id,))
params = {row[0]: row[1] for row in cursor.fetchall()}
# Get user attributes (may contain pruning cause)
cursor.execute("""
SELECT key, value_json
FROM trial_user_attributes
WHERE trial_id = ?
""", (trial_id,))
user_attrs = {}
for key, value_json in cursor.fetchall():
try:
user_attrs[key] = json.loads(value_json)
except (ValueError, TypeError):
user_attrs[key] = value_json
pruned_trials.append({
"trial_number": trial_num,
"params": params,
"pruning_cause": user_attrs.get("pruning_cause", "Unknown"),
"start_time": start_time,
"end_time": end_time
})
conn.close()
return {"pruned_trials": pruned_trials, "count": len(pruned_trials)}
# Legacy: Read from JSON history
feat: Implement Protocol 13 - Real-Time Dashboard Tracking Complete implementation of Protocol 13 featuring real-time web dashboard for monitoring multi-objective optimization studies. ## New Features ### Backend (Python) - Real-time tracking system with per-trial JSON writes - New API endpoints for metadata, optimizer state, and Pareto fronts - Unit inference from objective descriptions - Multi-objective support using Optuna's best_trials API ### Frontend (React + TypeScript) - OptimizerPanel: Real-time optimizer state (phase, strategy, progress) - ParetoPlot: Pareto front visualization with normalization toggle - 3 modes: Raw, Min-Max [0-1], Z-Score standardization - Pareto front line connecting optimal points - ParallelCoordinatesPlot: High-dimensional interactive visualization - Objectives + design variables on parallel axes - Click-to-select, hover-to-highlight - Color-coded feasibility - Dynamic units throughout all visualizations ### Documentation - Comprehensive Protocol 13 guide with architecture, data flow, usage ## Files Added - `docs/PROTOCOL_13_DASHBOARD.md` - `atomizer-dashboard/frontend/src/components/OptimizerPanel.tsx` - `atomizer-dashboard/frontend/src/components/ParetoPlot.tsx` - `atomizer-dashboard/frontend/src/components/ParallelCoordinatesPlot.tsx` - `optimization_engine/realtime_tracking.py` ## Files Modified - `atomizer-dashboard/frontend/src/pages/Dashboard.tsx` - `atomizer-dashboard/backend/api/routes/optimization.py` - `optimization_engine/intelligent_optimizer.py` ## Testing - Tested with bracket_stiffness_optimization_V2 (30 trials, 20 Pareto solutions) - Dashboard running on localhost:3001 - All P1 and P2 features verified working 🤖 Generated with [Claude Code](https://claude.com/claude-code) Co-Authored-By: Claude <noreply@anthropic.com>
2025-11-21 15:58:00 -05:00
if not pruning_file.exists():
return {"pruned_trials": [], "count": 0}
feat: Implement Protocol 13 - Real-Time Dashboard Tracking Complete implementation of Protocol 13 featuring real-time web dashboard for monitoring multi-objective optimization studies. ## New Features ### Backend (Python) - Real-time tracking system with per-trial JSON writes - New API endpoints for metadata, optimizer state, and Pareto fronts - Unit inference from objective descriptions - Multi-objective support using Optuna's best_trials API ### Frontend (React + TypeScript) - OptimizerPanel: Real-time optimizer state (phase, strategy, progress) - ParetoPlot: Pareto front visualization with normalization toggle - 3 modes: Raw, Min-Max [0-1], Z-Score standardization - Pareto front line connecting optimal points - ParallelCoordinatesPlot: High-dimensional interactive visualization - Objectives + design variables on parallel axes - Click-to-select, hover-to-highlight - Color-coded feasibility - Dynamic units throughout all visualizations ### Documentation - Comprehensive Protocol 13 guide with architecture, data flow, usage ## Files Added - `docs/PROTOCOL_13_DASHBOARD.md` - `atomizer-dashboard/frontend/src/components/OptimizerPanel.tsx` - `atomizer-dashboard/frontend/src/components/ParetoPlot.tsx` - `atomizer-dashboard/frontend/src/components/ParallelCoordinatesPlot.tsx` - `optimization_engine/realtime_tracking.py` ## Files Modified - `atomizer-dashboard/frontend/src/pages/Dashboard.tsx` - `atomizer-dashboard/backend/api/routes/optimization.py` - `optimization_engine/intelligent_optimizer.py` ## Testing - Tested with bracket_stiffness_optimization_V2 (30 trials, 20 Pareto solutions) - Dashboard running on localhost:3001 - All P1 and P2 features verified working 🤖 Generated with [Claude Code](https://claude.com/claude-code) Co-Authored-By: Claude <noreply@anthropic.com>
2025-11-21 15:58:00 -05:00
with open(pruning_file) as f:
pruning_history = json.load(f)
return {"pruned_trials": pruning_history, "count": len(pruning_history)}
feat: Implement Protocol 13 - Real-Time Dashboard Tracking Complete implementation of Protocol 13 featuring real-time web dashboard for monitoring multi-objective optimization studies. ## New Features ### Backend (Python) - Real-time tracking system with per-trial JSON writes - New API endpoints for metadata, optimizer state, and Pareto fronts - Unit inference from objective descriptions - Multi-objective support using Optuna's best_trials API ### Frontend (React + TypeScript) - OptimizerPanel: Real-time optimizer state (phase, strategy, progress) - ParetoPlot: Pareto front visualization with normalization toggle - 3 modes: Raw, Min-Max [0-1], Z-Score standardization - Pareto front line connecting optimal points - ParallelCoordinatesPlot: High-dimensional interactive visualization - Objectives + design variables on parallel axes - Click-to-select, hover-to-highlight - Color-coded feasibility - Dynamic units throughout all visualizations ### Documentation - Comprehensive Protocol 13 guide with architecture, data flow, usage ## Files Added - `docs/PROTOCOL_13_DASHBOARD.md` - `atomizer-dashboard/frontend/src/components/OptimizerPanel.tsx` - `atomizer-dashboard/frontend/src/components/ParetoPlot.tsx` - `atomizer-dashboard/frontend/src/components/ParallelCoordinatesPlot.tsx` - `optimization_engine/realtime_tracking.py` ## Files Modified - `atomizer-dashboard/frontend/src/pages/Dashboard.tsx` - `atomizer-dashboard/backend/api/routes/optimization.py` - `optimization_engine/intelligent_optimizer.py` ## Testing - Tested with bracket_stiffness_optimization_V2 (30 trials, 20 Pareto solutions) - Dashboard running on localhost:3001 - All P1 and P2 features verified working 🤖 Generated with [Claude Code](https://claude.com/claude-code) Co-Authored-By: Claude <noreply@anthropic.com>
2025-11-21 15:58:00 -05:00
except FileNotFoundError:
raise HTTPException(status_code=404, detail=f"Study {study_id} not found")
except Exception as e:
raise HTTPException(status_code=500, detail=f"Failed to get pruning history: {str(e)}")
def _infer_objective_unit(objective: Dict) -> str:
"""Infer unit from objective name and description"""
name = objective.get("name", "").lower()
desc = objective.get("description", "").lower()
# Common unit patterns
if "frequency" in name or "hz" in desc:
return "Hz"
elif "stiffness" in name or "n/mm" in desc:
return "N/mm"
elif "mass" in name or "kg" in desc:
return "kg"
elif "stress" in name or "mpa" in desc or "pa" in desc:
return "MPa"
elif "displacement" in name or "mm" in desc:
return "mm"
elif "force" in name or "newton" in desc:
return "N"
elif "%" in desc or "percent" in desc:
return "%"
# Check if unit is explicitly mentioned in description (e.g., "(N/mm)")
import re
unit_match = re.search(r'\(([^)]+)\)', desc)
if unit_match:
return unit_match.group(1)
return "" # No unit found
@router.get("/studies/{study_id}/metadata")
async def get_study_metadata(study_id: str):
"""Read optimization_config.json for objectives, design vars, units (Protocol 13)"""
try:
study_dir = STUDIES_DIR / study_id
if not study_dir.exists():
raise HTTPException(status_code=404, detail=f"Study {study_id} not found")
# Load config (check multiple locations)
config_file = study_dir / "optimization_config.json"
if not config_file.exists():
config_file = study_dir / "1_setup" / "optimization_config.json"
if not config_file.exists():
raise HTTPException(status_code=404, detail=f"Config file not found for study {study_id}")
with open(config_file) as f:
config = json.load(f)
# Enhance objectives with inferred units if not present
objectives = config.get("objectives", [])
for obj in objectives:
if "unit" not in obj or not obj["unit"]:
obj["unit"] = _infer_objective_unit(obj)
return {
"objectives": objectives,
"design_variables": config.get("design_variables", []),
"constraints": config.get("constraints", []),
"study_name": config.get("study_name", study_id),
"description": config.get("description", "")
}
except FileNotFoundError:
raise HTTPException(status_code=404, detail=f"Study {study_id} not found")
except Exception as e:
raise HTTPException(status_code=500, detail=f"Failed to get study metadata: {str(e)}")
@router.get("/studies/{study_id}/optimizer-state")
async def get_optimizer_state(study_id: str):
"""Read realtime optimizer state from intelligent_optimizer/ (Protocol 13)"""
try:
study_dir = STUDIES_DIR / study_id
results_dir = get_results_dir(study_dir)
feat: Implement Protocol 13 - Real-Time Dashboard Tracking Complete implementation of Protocol 13 featuring real-time web dashboard for monitoring multi-objective optimization studies. ## New Features ### Backend (Python) - Real-time tracking system with per-trial JSON writes - New API endpoints for metadata, optimizer state, and Pareto fronts - Unit inference from objective descriptions - Multi-objective support using Optuna's best_trials API ### Frontend (React + TypeScript) - OptimizerPanel: Real-time optimizer state (phase, strategy, progress) - ParetoPlot: Pareto front visualization with normalization toggle - 3 modes: Raw, Min-Max [0-1], Z-Score standardization - Pareto front line connecting optimal points - ParallelCoordinatesPlot: High-dimensional interactive visualization - Objectives + design variables on parallel axes - Click-to-select, hover-to-highlight - Color-coded feasibility - Dynamic units throughout all visualizations ### Documentation - Comprehensive Protocol 13 guide with architecture, data flow, usage ## Files Added - `docs/PROTOCOL_13_DASHBOARD.md` - `atomizer-dashboard/frontend/src/components/OptimizerPanel.tsx` - `atomizer-dashboard/frontend/src/components/ParetoPlot.tsx` - `atomizer-dashboard/frontend/src/components/ParallelCoordinatesPlot.tsx` - `optimization_engine/realtime_tracking.py` ## Files Modified - `atomizer-dashboard/frontend/src/pages/Dashboard.tsx` - `atomizer-dashboard/backend/api/routes/optimization.py` - `optimization_engine/intelligent_optimizer.py` ## Testing - Tested with bracket_stiffness_optimization_V2 (30 trials, 20 Pareto solutions) - Dashboard running on localhost:3001 - All P1 and P2 features verified working 🤖 Generated with [Claude Code](https://claude.com/claude-code) Co-Authored-By: Claude <noreply@anthropic.com>
2025-11-21 15:58:00 -05:00
state_file = results_dir / "intelligent_optimizer" / "optimizer_state.json"
if not state_file.exists():
return {"available": False}
with open(state_file) as f:
state = json.load(f)
return {"available": True, **state}
except FileNotFoundError:
raise HTTPException(status_code=404, detail=f"Study {study_id} not found")
except Exception as e:
raise HTTPException(status_code=500, detail=f"Failed to get optimizer state: {str(e)}")
@router.get("/studies/{study_id}/pareto-front")
async def get_pareto_front(study_id: str):
"""Get Pareto-optimal solutions for multi-objective studies (Protocol 13)"""
try:
study_dir = STUDIES_DIR / study_id
results_dir = get_results_dir(study_dir)
feat: Implement Protocol 13 - Real-Time Dashboard Tracking Complete implementation of Protocol 13 featuring real-time web dashboard for monitoring multi-objective optimization studies. ## New Features ### Backend (Python) - Real-time tracking system with per-trial JSON writes - New API endpoints for metadata, optimizer state, and Pareto fronts - Unit inference from objective descriptions - Multi-objective support using Optuna's best_trials API ### Frontend (React + TypeScript) - OptimizerPanel: Real-time optimizer state (phase, strategy, progress) - ParetoPlot: Pareto front visualization with normalization toggle - 3 modes: Raw, Min-Max [0-1], Z-Score standardization - Pareto front line connecting optimal points - ParallelCoordinatesPlot: High-dimensional interactive visualization - Objectives + design variables on parallel axes - Click-to-select, hover-to-highlight - Color-coded feasibility - Dynamic units throughout all visualizations ### Documentation - Comprehensive Protocol 13 guide with architecture, data flow, usage ## Files Added - `docs/PROTOCOL_13_DASHBOARD.md` - `atomizer-dashboard/frontend/src/components/OptimizerPanel.tsx` - `atomizer-dashboard/frontend/src/components/ParetoPlot.tsx` - `atomizer-dashboard/frontend/src/components/ParallelCoordinatesPlot.tsx` - `optimization_engine/realtime_tracking.py` ## Files Modified - `atomizer-dashboard/frontend/src/pages/Dashboard.tsx` - `atomizer-dashboard/backend/api/routes/optimization.py` - `optimization_engine/intelligent_optimizer.py` ## Testing - Tested with bracket_stiffness_optimization_V2 (30 trials, 20 Pareto solutions) - Dashboard running on localhost:3001 - All P1 and P2 features verified working 🤖 Generated with [Claude Code](https://claude.com/claude-code) Co-Authored-By: Claude <noreply@anthropic.com>
2025-11-21 15:58:00 -05:00
study_db = results_dir / "study.db"
if not study_db.exists():
return {"is_multi_objective": False, "pareto_front": []}
# Import optuna here to avoid loading it for all endpoints
import optuna
storage = optuna.storages.RDBStorage(f"sqlite:///{study_db}")
study = optuna.load_study(study_name=study_id, storage=storage)
# Check if multi-objective
if len(study.directions) == 1:
return {"is_multi_objective": False, "pareto_front": []}
# Get Pareto front
pareto_trials = study.best_trials
return {
"is_multi_objective": True,
"pareto_front": [
{
"trial_number": t.number,
"values": t.values,
"params": t.params,
"user_attrs": dict(t.user_attrs),
"constraint_satisfied": t.user_attrs.get("constraint_satisfied", True)
}
for t in pareto_trials
]
}
except FileNotFoundError:
raise HTTPException(status_code=404, detail=f"Study {study_id} not found")
except Exception as e:
raise HTTPException(status_code=500, detail=f"Failed to get Pareto front: {str(e)}")
@router.get("/studies/{study_id}/nn-pareto-front")
async def get_nn_pareto_front(study_id: str):
"""Get NN surrogate Pareto front from nn_pareto_front.json"""
try:
study_dir = STUDIES_DIR / study_id
results_dir = get_results_dir(study_dir)
nn_pareto_file = results_dir / "nn_pareto_front.json"
if not nn_pareto_file.exists():
return {"has_nn_results": False, "pareto_front": []}
with open(nn_pareto_file) as f:
nn_pareto = json.load(f)
# Transform to match Trial interface format
transformed = []
for trial in nn_pareto:
transformed.append({
"trial_number": trial.get("trial_number"),
"values": [trial.get("mass"), trial.get("frequency")],
"params": trial.get("params", {}),
"user_attrs": {
"source": "NN",
"feasible": trial.get("feasible", False),
"predicted_stress": trial.get("predicted_stress"),
"predicted_displacement": trial.get("predicted_displacement"),
"mass": trial.get("mass"),
"frequency": trial.get("frequency")
},
"constraint_satisfied": trial.get("feasible", False),
"source": "NN"
})
return {
"has_nn_results": True,
"pareto_front": transformed,
"count": len(transformed)
}
except FileNotFoundError:
raise HTTPException(status_code=404, detail=f"Study {study_id} not found")
except Exception as e:
raise HTTPException(status_code=500, detail=f"Failed to get NN Pareto front: {str(e)}")
@router.get("/studies/{study_id}/nn-state")
async def get_nn_optimization_state(study_id: str):
"""Get NN optimization state/summary from nn_optimization_state.json"""
try:
study_dir = STUDIES_DIR / study_id
results_dir = get_results_dir(study_dir)
nn_state_file = results_dir / "nn_optimization_state.json"
if not nn_state_file.exists():
return {"has_nn_state": False}
with open(nn_state_file) as f:
state = json.load(f)
return {
"has_nn_state": True,
"total_fea_count": state.get("total_fea_count", 0),
"total_nn_count": state.get("total_nn_count", 0),
"pareto_front_size": state.get("pareto_front_size", 0),
"best_mass": state.get("best_mass"),
"best_frequency": state.get("best_frequency"),
"timestamp": state.get("timestamp")
}
except FileNotFoundError:
raise HTTPException(status_code=404, detail=f"Study {study_id} not found")
except Exception as e:
raise HTTPException(status_code=500, detail=f"Failed to get NN state: {str(e)}")
@router.post("/studies")
async def create_study(
config: str = Form(...),
prt_file: Optional[UploadFile] = File(None),
sim_file: Optional[UploadFile] = File(None),
fem_file: Optional[UploadFile] = File(None)
):
"""
Create a new optimization study
Accepts:
- config: JSON string with study configuration
- prt_file: NX part file (optional if using existing study)
- sim_file: NX simulation file (optional)
- fem_file: NX FEM file (optional)
"""
try:
# Parse config
config_data = json.loads(config)
study_name = config_data.get("name") # Changed from study_name to name to match frontend
if not study_name:
raise HTTPException(status_code=400, detail="name is required in config")
# Create study directory structure
study_dir = STUDIES_DIR / study_name
if study_dir.exists():
raise HTTPException(status_code=400, detail=f"Study {study_name} already exists")
setup_dir = study_dir / "1_setup"
model_dir = setup_dir / "model"
results_dir = study_dir / "2_results"
setup_dir.mkdir(parents=True, exist_ok=True)
model_dir.mkdir(parents=True, exist_ok=True)
results_dir.mkdir(parents=True, exist_ok=True)
# Save config file
config_file = setup_dir / "optimization_config.json"
with open(config_file, 'w') as f:
json.dump(config_data, f, indent=2)
# Save uploaded files
files_saved = {}
if prt_file:
prt_path = model_dir / prt_file.filename
with open(prt_path, 'wb') as f:
content = await prt_file.read()
f.write(content)
files_saved['prt_file'] = str(prt_path)
if sim_file:
sim_path = model_dir / sim_file.filename
with open(sim_path, 'wb') as f:
content = await sim_file.read()
f.write(content)
files_saved['sim_file'] = str(sim_path)
if fem_file:
fem_path = model_dir / fem_file.filename
with open(fem_path, 'wb') as f:
content = await fem_file.read()
f.write(content)
files_saved['fem_file'] = str(fem_path)
return JSONResponse(
status_code=201,
content={
"status": "created",
"study_id": study_name,
"study_path": str(study_dir),
"config_path": str(config_file),
"files_saved": files_saved,
"message": f"Study {study_name} created successfully. Ready to run optimization."
}
)
except json.JSONDecodeError as e:
raise HTTPException(status_code=400, detail=f"Invalid JSON in config: {str(e)}")
except Exception as e:
# Clean up on error
if 'study_dir' in locals() and study_dir.exists():
shutil.rmtree(study_dir)
raise HTTPException(status_code=500, detail=f"Failed to create study: {str(e)}")
@router.post("/studies/{study_id}/convert-mesh")
async def convert_study_mesh(study_id: str):
"""
Convert study mesh to GLTF for 3D visualization
Creates a web-viewable 3D model with FEA results as vertex colors
"""
try:
study_dir = STUDIES_DIR / study_id
if not study_dir.exists():
raise HTTPException(status_code=404, detail=f"Study {study_id} not found")
# Import mesh converter
sys.path.append(str(Path(__file__).parent.parent.parent.parent.parent))
from optimization_engine.mesh_converter import convert_study_mesh
# Convert mesh
output_path = convert_study_mesh(study_dir)
if output_path and output_path.exists():
return {
"status": "success",
"gltf_path": str(output_path),
"gltf_url": f"/api/optimization/studies/{study_id}/mesh/model.gltf",
"metadata_url": f"/api/optimization/studies/{study_id}/mesh/model.json",
"message": "Mesh converted successfully"
}
else:
raise HTTPException(status_code=500, detail="Mesh conversion failed")
except FileNotFoundError:
raise HTTPException(status_code=404, detail=f"Study {study_id} not found")
except Exception as e:
raise HTTPException(status_code=500, detail=f"Failed to convert mesh: {str(e)}")
@router.get("/studies/{study_id}/mesh/{filename}")
async def get_mesh_file(study_id: str, filename: str):
"""
Serve GLTF mesh files and metadata
Supports .gltf, .bin, and .json files
"""
try:
# Validate filename to prevent directory traversal
if '..' in filename or '/' in filename or '\\' in filename:
raise HTTPException(status_code=400, detail="Invalid filename")
study_dir = STUDIES_DIR / study_id
visualization_dir = study_dir / "3_visualization"
file_path = visualization_dir / filename
if not file_path.exists():
raise HTTPException(status_code=404, detail=f"File {filename} not found")
# Determine content type
suffix = file_path.suffix.lower()
content_types = {
'.gltf': 'model/gltf+json',
'.bin': 'application/octet-stream',
'.json': 'application/json',
'.glb': 'model/gltf-binary'
}
content_type = content_types.get(suffix, 'application/octet-stream')
return FileResponse(
path=str(file_path),
media_type=content_type,
filename=filename
)
except FileNotFoundError:
raise HTTPException(status_code=404, detail=f"File not found")
except Exception as e:
raise HTTPException(status_code=500, detail=f"Failed to serve mesh file: {str(e)}")
@router.get("/studies/{study_id}/optuna-url")
async def get_optuna_dashboard_url(study_id: str):
"""
Get the Optuna dashboard URL for a specific study.
Returns the URL to access the study in Optuna dashboard.
The Optuna dashboard should be started with a relative path from the Atomizer root:
sqlite:///studies/{study_id}/2_results/study.db
"""
try:
study_dir = STUDIES_DIR / study_id
if not study_dir.exists():
raise HTTPException(status_code=404, detail=f"Study {study_id} not found")
results_dir = get_results_dir(study_dir)
study_db = results_dir / "study.db"
if not study_db.exists():
raise HTTPException(status_code=404, detail=f"No Optuna database found for study {study_id}")
# Get the study name from the database (may differ from folder name)
import optuna
storage = optuna.storages.RDBStorage(f"sqlite:///{study_db}")
studies = storage.get_all_studies()
if not studies:
raise HTTPException(status_code=404, detail=f"No Optuna study found in database for {study_id}")
# Use the actual study name from the database
optuna_study_name = studies[0].study_name
# Return URL info for the frontend
# The dashboard should be running on port 8081 with the correct database
return {
"study_id": study_id,
"optuna_study_name": optuna_study_name,
"database_path": f"studies/{study_id}/2_results/study.db",
"dashboard_url": f"http://localhost:8081/dashboard/studies/{studies[0]._study_id}",
"dashboard_base": "http://localhost:8081",
"note": "Optuna dashboard must be started with: sqlite:///studies/{study_id}/2_results/study.db"
}
except FileNotFoundError:
raise HTTPException(status_code=404, detail=f"Study {study_id} not found")
except Exception as e:
raise HTTPException(status_code=500, detail=f"Failed to get Optuna URL: {str(e)}")
@router.post("/studies/{study_id}/generate-report")
async def generate_report(
study_id: str,
format: str = "markdown",
include_llm_summary: bool = False
):
"""
Generate an optimization report in the specified format
Args:
study_id: Study identifier
format: Report format ('markdown', 'html', or 'pdf')
include_llm_summary: Whether to include LLM-generated executive summary
Returns:
Information about the generated report including download URL
"""
try:
study_dir = STUDIES_DIR / study_id
if not study_dir.exists():
raise HTTPException(status_code=404, detail=f"Study {study_id} not found")
# Validate format
valid_formats = ['markdown', 'md', 'html', 'pdf']
if format.lower() not in valid_formats:
raise HTTPException(status_code=400, detail=f"Invalid format. Must be one of: {', '.join(valid_formats)}")
# Import report generator
sys.path.append(str(Path(__file__).parent.parent.parent.parent.parent))
from optimization_engine.report_generator import generate_study_report
# Generate report
output_path = generate_study_report(
study_dir=study_dir,
output_format=format.lower(),
include_llm_summary=include_llm_summary
)
if output_path and output_path.exists():
# Get relative path for URL
rel_path = output_path.relative_to(study_dir)
return {
"status": "success",
"format": format,
"file_path": str(output_path),
"download_url": f"/api/optimization/studies/{study_id}/reports/{output_path.name}",
"file_size": output_path.stat().st_size,
"message": f"Report generated successfully in {format} format"
}
else:
raise HTTPException(status_code=500, detail="Report generation failed")
except FileNotFoundError:
raise HTTPException(status_code=404, detail=f"Study {study_id} not found")
except Exception as e:
raise HTTPException(status_code=500, detail=f"Failed to generate report: {str(e)}")
@router.get("/studies/{study_id}/reports/{filename}")
async def download_report(study_id: str, filename: str):
"""
Download a generated report file
Args:
study_id: Study identifier
filename: Report filename
Returns:
Report file for download
"""
try:
# Validate filename to prevent directory traversal
if '..' in filename or '/' in filename or '\\' in filename:
raise HTTPException(status_code=400, detail="Invalid filename")
study_dir = STUDIES_DIR / study_id
results_dir = get_results_dir(study_dir)
file_path = results_dir / filename
if not file_path.exists():
raise HTTPException(status_code=404, detail=f"Report file {filename} not found")
# Determine content type
suffix = file_path.suffix.lower()
content_types = {
'.md': 'text/markdown',
'.html': 'text/html',
'.pdf': 'application/pdf',
'.json': 'application/json'
}
content_type = content_types.get(suffix, 'application/octet-stream')
return FileResponse(
path=str(file_path),
media_type=content_type,
filename=filename,
headers={"Content-Disposition": f"attachment; filename={filename}"}
)
except FileNotFoundError:
raise HTTPException(status_code=404, detail=f"Report file not found")
except Exception as e:
raise HTTPException(status_code=500, detail=f"Failed to download report: {str(e)}")
@router.get("/studies/{study_id}/console")
async def get_console_output(study_id: str, lines: int = 200):
"""
Get the latest console output/logs from the optimization run
Args:
study_id: Study identifier
lines: Number of lines to return (default: 200)
Returns:
JSON with console output lines
"""
try:
study_dir = STUDIES_DIR / study_id
if not study_dir.exists():
raise HTTPException(status_code=404, detail=f"Study {study_id} not found")
# Look for log files in various locations
log_paths = [
study_dir / "optimization.log",
study_dir / "2_results" / "optimization.log",
study_dir / "3_results" / "optimization.log",
study_dir / "run.log",
]
log_content = None
log_path_used = None
for log_path in log_paths:
if log_path.exists():
log_path_used = log_path
break
if log_path_used is None:
return {
"lines": [],
"total_lines": 0,
"log_file": None,
"message": "No log file found. Optimization may not have started yet."
}
# Read the last N lines efficiently
with open(log_path_used, 'r', encoding='utf-8', errors='replace') as f:
all_lines = f.readlines()
# Get last N lines
last_lines = all_lines[-lines:] if len(all_lines) > lines else all_lines
# Clean up lines (remove trailing newlines)
last_lines = [line.rstrip('\n\r') for line in last_lines]
return {
"lines": last_lines,
"total_lines": len(all_lines),
"displayed_lines": len(last_lines),
"log_file": str(log_path_used),
"timestamp": datetime.now().isoformat()
}
except HTTPException:
raise
except Exception as e:
raise HTTPException(status_code=500, detail=f"Failed to read console output: {str(e)}")
@router.get("/studies/{study_id}/report")
async def get_study_report(study_id: str):
"""
Get the STUDY_REPORT.md file content for a study
Args:
study_id: Study identifier
Returns:
JSON with the markdown content
"""
try:
study_dir = STUDIES_DIR / study_id
if not study_dir.exists():
raise HTTPException(status_code=404, detail=f"Study {study_id} not found")
# Look for STUDY_REPORT.md in the study root
report_path = study_dir / "STUDY_REPORT.md"
if not report_path.exists():
raise HTTPException(status_code=404, detail="No STUDY_REPORT.md found for this study")
with open(report_path, 'r', encoding='utf-8') as f:
content = f.read()
return {
"content": content,
"path": str(report_path),
"study_id": study_id
}
except HTTPException:
raise
except Exception as e:
raise HTTPException(status_code=500, detail=f"Failed to read study report: {str(e)}")
# ============================================================================
# Study README and Config Endpoints
# ============================================================================
@router.get("/studies/{study_id}/readme")
async def get_study_readme(study_id: str):
"""
Get the README.md file content for a study (from 1_setup folder)
Args:
study_id: Study identifier
Returns:
JSON with the markdown content
"""
try:
study_dir = STUDIES_DIR / study_id
if not study_dir.exists():
raise HTTPException(status_code=404, detail=f"Study {study_id} not found")
# Look for README.md in various locations
readme_paths = [
study_dir / "README.md",
study_dir / "1_setup" / "README.md",
study_dir / "readme.md",
]
readme_content = None
readme_path = None
for path in readme_paths:
if path.exists():
readme_path = path
with open(path, 'r', encoding='utf-8') as f:
readme_content = f.read()
break
if readme_content is None:
# Generate a basic README from config if none exists
config_file = study_dir / "1_setup" / "optimization_config.json"
if not config_file.exists():
config_file = study_dir / "optimization_config.json"
if config_file.exists():
with open(config_file) as f:
config = json.load(f)
readme_content = f"""# {config.get('study_name', study_id)}
{config.get('description', 'No description available.')}
## Design Variables
{chr(10).join([f"- **{dv['name']}**: {dv.get('min', '?')} - {dv.get('max', '?')} {dv.get('units', '')}" for dv in config.get('design_variables', [])])}
## Objectives
{chr(10).join([f"- **{obj['name']}**: {obj.get('description', '')} ({obj.get('direction', 'minimize')})" for obj in config.get('objectives', [])])}
"""
else:
readme_content = f"# {study_id}\n\nNo README or configuration found for this study."
return {
"content": readme_content,
"path": str(readme_path) if readme_path else None,
"study_id": study_id
}
except HTTPException:
raise
except Exception as e:
raise HTTPException(status_code=500, detail=f"Failed to read README: {str(e)}")
@router.get("/studies/{study_id}/config")
async def get_study_config(study_id: str):
"""
Get the full optimization_config.json for a study
Args:
study_id: Study identifier
Returns:
JSON with the complete configuration
"""
try:
study_dir = STUDIES_DIR / study_id
if not study_dir.exists():
raise HTTPException(status_code=404, detail=f"Study {study_id} not found")
# Look for config in various locations
config_file = study_dir / "1_setup" / "optimization_config.json"
if not config_file.exists():
config_file = study_dir / "optimization_config.json"
if not config_file.exists():
raise HTTPException(status_code=404, detail=f"Config file not found for study {study_id}")
with open(config_file) as f:
config = json.load(f)
return {
"config": config,
"path": str(config_file),
"study_id": study_id
}
except HTTPException:
raise
except Exception as e:
raise HTTPException(status_code=500, detail=f"Failed to read config: {str(e)}")
# ============================================================================
# Process Control Endpoints
# ============================================================================
# Track running processes by study_id
_running_processes: Dict[str, int] = {}
def _find_optimization_process(study_id: str) -> Optional[psutil.Process]:
"""Find a running optimization process for a given study"""
study_dir = STUDIES_DIR / study_id
for proc in psutil.process_iter(['pid', 'name', 'cmdline', 'cwd']):
try:
cmdline = proc.info.get('cmdline') or []
cmdline_str = ' '.join(cmdline) if cmdline else ''
# Check if this is a Python process running run_optimization.py for this study
if 'python' in cmdline_str.lower() and 'run_optimization' in cmdline_str:
if study_id in cmdline_str or str(study_dir) in cmdline_str:
return proc
except (psutil.NoSuchProcess, psutil.AccessDenied):
continue
return None
@router.get("/studies/{study_id}/process")
async def get_process_status(study_id: str):
"""
Get the process status for a study's optimization run
Args:
study_id: Study identifier
Returns:
JSON with process status (is_running, pid, iteration counts)
"""
try:
study_dir = STUDIES_DIR / study_id
if not study_dir.exists():
raise HTTPException(status_code=404, detail=f"Study {study_id} not found")
# Check if process is running
proc = _find_optimization_process(study_id)
is_running = proc is not None
pid = proc.pid if proc else None
# Get iteration counts from database
results_dir = get_results_dir(study_dir)
study_db = results_dir / "study.db"
fea_count = 0
nn_count = 0
iteration = None
if study_db.exists():
try:
conn = sqlite3.connect(str(study_db))
cursor = conn.cursor()
# Count FEA trials (from main study or studies with "_fea" suffix)
cursor.execute("""
SELECT COUNT(*) FROM trials t
JOIN studies s ON t.study_id = s.study_id
WHERE t.state = 'COMPLETE'
AND (s.study_name LIKE '%_fea' OR s.study_name NOT LIKE '%_nn%')
""")
fea_count = cursor.fetchone()[0]
# Count NN trials
cursor.execute("""
SELECT COUNT(*) FROM trials t
JOIN studies s ON t.study_id = s.study_id
WHERE t.state = 'COMPLETE'
AND s.study_name LIKE '%_nn%'
""")
nn_count = cursor.fetchone()[0]
# Try to get current iteration from study names
cursor.execute("""
SELECT study_name FROM studies
WHERE study_name LIKE '%_iter%'
ORDER BY study_name DESC LIMIT 1
""")
result = cursor.fetchone()
if result:
import re
match = re.search(r'iter(\d+)', result[0])
if match:
iteration = int(match.group(1))
conn.close()
except Exception as e:
print(f"Warning: Failed to read database for process status: {e}")
return {
"is_running": is_running,
"pid": pid,
"iteration": iteration,
"fea_count": fea_count,
"nn_count": nn_count,
"study_id": study_id
}
except HTTPException:
raise
except Exception as e:
raise HTTPException(status_code=500, detail=f"Failed to get process status: {str(e)}")
class StartOptimizationRequest(BaseModel):
freshStart: bool = False
maxIterations: int = 100
feaBatchSize: int = 5
tuneTrials: int = 30
ensembleSize: int = 3
patience: int = 5
@router.post("/studies/{study_id}/start")
async def start_optimization(study_id: str, request: StartOptimizationRequest = None):
"""
Start the optimization process for a study
Args:
study_id: Study identifier
request: Optional start options
Returns:
JSON with process info
"""
try:
study_dir = STUDIES_DIR / study_id
if not study_dir.exists():
raise HTTPException(status_code=404, detail=f"Study {study_id} not found")
# Check if already running
existing_proc = _find_optimization_process(study_id)
if existing_proc:
return {
"success": False,
"message": f"Optimization already running (PID: {existing_proc.pid})",
"pid": existing_proc.pid
}
# Find run_optimization.py
run_script = study_dir / "run_optimization.py"
if not run_script.exists():
raise HTTPException(status_code=404, detail=f"run_optimization.py not found for study {study_id}")
# Build command with arguments
python_exe = sys.executable
cmd = [python_exe, str(run_script), "--start"]
if request:
if request.freshStart:
cmd.append("--fresh")
cmd.extend(["--fea-batch", str(request.feaBatchSize)])
cmd.extend(["--tune-trials", str(request.tuneTrials)])
cmd.extend(["--ensemble-size", str(request.ensembleSize)])
cmd.extend(["--patience", str(request.patience)])
# Start process in background
proc = subprocess.Popen(
cmd,
cwd=str(study_dir),
stdout=subprocess.PIPE,
stderr=subprocess.PIPE,
start_new_session=True
)
_running_processes[study_id] = proc.pid
return {
"success": True,
"message": f"Optimization started successfully",
"pid": proc.pid,
"command": ' '.join(cmd)
}
except HTTPException:
raise
except Exception as e:
raise HTTPException(status_code=500, detail=f"Failed to start optimization: {str(e)}")
class StopRequest(BaseModel):
force: bool = True # Default to force kill
@router.post("/studies/{study_id}/stop")
async def stop_optimization(study_id: str, request: StopRequest = None):
"""
Stop the optimization process for a study (hard kill by default)
Args:
study_id: Study identifier
request.force: If True (default), immediately kill. If False, try graceful first.
Returns:
JSON with result
"""
if request is None:
request = StopRequest()
try:
study_dir = STUDIES_DIR / study_id
if not study_dir.exists():
raise HTTPException(status_code=404, detail=f"Study {study_id} not found")
# Find running process
proc = _find_optimization_process(study_id)
if not proc:
return {
"success": False,
"message": "No running optimization process found"
}
pid = proc.pid
killed_pids = []
try:
# FIRST: Get all children BEFORE killing parent
children = []
try:
children = proc.children(recursive=True)
except (psutil.NoSuchProcess, psutil.AccessDenied):
pass
if request.force:
# Hard kill: immediately kill parent and all children
# Kill children first (bottom-up)
for child in reversed(children):
try:
child.kill() # SIGKILL on Unix, TerminateProcess on Windows
killed_pids.append(child.pid)
except (psutil.NoSuchProcess, psutil.AccessDenied):
pass
# Then kill parent
try:
proc.kill()
killed_pids.append(pid)
except psutil.NoSuchProcess:
pass
else:
# Graceful: try SIGTERM first, then force
try:
proc.terminate()
proc.wait(timeout=5)
except psutil.TimeoutExpired:
# Didn't stop gracefully, force kill
for child in reversed(children):
try:
child.kill()
killed_pids.append(child.pid)
except (psutil.NoSuchProcess, psutil.AccessDenied):
pass
proc.kill()
killed_pids.append(pid)
except psutil.NoSuchProcess:
pass
# Clean up tracking
if study_id in _running_processes:
del _running_processes[study_id]
return {
"success": True,
"message": f"Optimization killed (PID: {pid}, +{len(children)} children)",
"pid": pid,
"killed_pids": killed_pids
}
except psutil.NoSuchProcess:
if study_id in _running_processes:
del _running_processes[study_id]
return {
"success": True,
"message": "Process already terminated"
}
except HTTPException:
raise
except Exception as e:
raise HTTPException(status_code=500, detail=f"Failed to stop optimization: {str(e)}")
class ValidateRequest(BaseModel):
topN: int = 5
@router.post("/studies/{study_id}/validate")
async def validate_optimization(study_id: str, request: ValidateRequest = None):
"""
Run final FEA validation on top NN predictions
Args:
study_id: Study identifier
request: Validation options (topN)
Returns:
JSON with process info
"""
try:
study_dir = STUDIES_DIR / study_id
if not study_dir.exists():
raise HTTPException(status_code=404, detail=f"Study {study_id} not found")
# Check if optimization is still running
existing_proc = _find_optimization_process(study_id)
if existing_proc:
return {
"success": False,
"message": "Cannot validate while optimization is running. Stop optimization first."
}
# Look for final_validation.py script
validation_script = study_dir / "final_validation.py"
if not validation_script.exists():
# Fall back to run_optimization.py with --validate flag if script doesn't exist
run_script = study_dir / "run_optimization.py"
if not run_script.exists():
raise HTTPException(status_code=404, detail="No validation script found")
python_exe = sys.executable
top_n = request.topN if request else 5
cmd = [python_exe, str(run_script), "--validate", "--top", str(top_n)]
else:
python_exe = sys.executable
top_n = request.topN if request else 5
cmd = [python_exe, str(validation_script), "--top", str(top_n)]
# Start validation process
proc = subprocess.Popen(
cmd,
cwd=str(study_dir),
stdout=subprocess.PIPE,
stderr=subprocess.PIPE,
start_new_session=True
)
return {
"success": True,
"message": f"Validation started for top {top_n} NN predictions",
"pid": proc.pid,
"command": ' '.join(cmd)
}
except HTTPException:
raise
except Exception as e:
raise HTTPException(status_code=500, detail=f"Failed to start validation: {str(e)}")
# ============================================================================
# Optuna Dashboard Launch
# ============================================================================
_optuna_processes: Dict[str, subprocess.Popen] = {}
@router.post("/studies/{study_id}/optuna-dashboard")
async def launch_optuna_dashboard(study_id: str):
"""
Launch Optuna dashboard for a specific study
Args:
study_id: Study identifier
Returns:
JSON with dashboard URL and process info
"""
import time
import socket
def is_port_in_use(port: int) -> bool:
"""Check if a port is already in use"""
with socket.socket(socket.AF_INET, socket.SOCK_STREAM) as s:
return s.connect_ex(('localhost', port)) == 0
try:
study_dir = STUDIES_DIR / study_id
if not study_dir.exists():
raise HTTPException(status_code=404, detail=f"Study {study_id} not found")
results_dir = get_results_dir(study_dir)
study_db = results_dir / "study.db"
if not study_db.exists():
raise HTTPException(status_code=404, detail=f"No Optuna database found for study {study_id}")
port = 8081
# Check if dashboard is already running on this port
if is_port_in_use(port):
# Check if it's our process
if study_id in _optuna_processes:
proc = _optuna_processes[study_id]
if proc.poll() is None: # Still running
return {
"success": True,
"url": f"http://localhost:{port}",
"pid": proc.pid,
"message": "Optuna dashboard already running"
}
# Port in use but not by us - still return success since dashboard is available
return {
"success": True,
"url": f"http://localhost:{port}",
"pid": None,
"message": "Optuna dashboard already running on port 8081"
}
# Launch optuna-dashboard using Python script
python_exe = sys.executable
# Use absolute path with POSIX format for SQLite URL
abs_db_path = study_db.absolute().as_posix()
storage_url = f"sqlite:///{abs_db_path}"
# Create a small Python script to run optuna-dashboard
launch_script = f'''
from optuna_dashboard import run_server
run_server("{storage_url}", host="0.0.0.0", port={port})
'''
cmd = [python_exe, "-c", launch_script]
# On Windows, use CREATE_NEW_PROCESS_GROUP and DETACHED_PROCESS flags
import platform
if platform.system() == 'Windows':
# Windows-specific: create detached process
DETACHED_PROCESS = 0x00000008
CREATE_NEW_PROCESS_GROUP = 0x00000200
proc = subprocess.Popen(
cmd,
stdout=subprocess.PIPE,
stderr=subprocess.PIPE,
creationflags=DETACHED_PROCESS | CREATE_NEW_PROCESS_GROUP
)
else:
proc = subprocess.Popen(
cmd,
stdout=subprocess.PIPE,
stderr=subprocess.PIPE,
start_new_session=True
)
_optuna_processes[study_id] = proc
# Wait for dashboard to start (check port repeatedly)
max_wait = 5 # seconds
start_time = time.time()
while time.time() - start_time < max_wait:
if is_port_in_use(port):
return {
"success": True,
"url": f"http://localhost:{port}",
"pid": proc.pid,
"message": "Optuna dashboard launched successfully"
}
# Check if process died
if proc.poll() is not None:
stderr = ""
try:
stderr = proc.stderr.read().decode() if proc.stderr else ""
except:
pass
return {
"success": False,
"message": f"Failed to start Optuna dashboard: {stderr}"
}
time.sleep(0.5)
# Timeout - process might still be starting
if proc.poll() is None:
return {
"success": True,
"url": f"http://localhost:{port}",
"pid": proc.pid,
"message": "Optuna dashboard starting (may take a moment)"
}
else:
stderr = ""
try:
stderr = proc.stderr.read().decode() if proc.stderr else ""
except:
pass
return {
"success": False,
"message": f"Failed to start Optuna dashboard: {stderr}"
}
except HTTPException:
raise
except Exception as e:
raise HTTPException(status_code=500, detail=f"Failed to launch Optuna dashboard: {str(e)}")
2025-12-05 19:57:20 -05:00
# ============================================================================
# Model Files Endpoint
# ============================================================================
@router.get("/studies/{study_id}/model-files")
async def get_model_files(study_id: str):
"""
Get list of NX model files (.prt, .sim, .fem, .bdf, .dat, .op2) for a study
Args:
study_id: Study identifier
Returns:
JSON with list of model files and their paths
"""
try:
study_dir = STUDIES_DIR / study_id
if not study_dir.exists():
raise HTTPException(status_code=404, detail=f"Study {study_id} not found")
# Look for model directory (check multiple locations)
model_dirs = [
study_dir / "1_setup" / "model",
study_dir / "model",
study_dir / "1_setup",
study_dir
]
model_files = []
model_dir_path = None
# NX and FEA file extensions to look for
nx_extensions = {'.prt', '.sim', '.fem', '.bdf', '.dat', '.op2', '.f06', '.inp'}
for model_dir in model_dirs:
if model_dir.exists() and model_dir.is_dir():
for file_path in model_dir.iterdir():
if file_path.is_file() and file_path.suffix.lower() in nx_extensions:
model_files.append({
"name": file_path.name,
"path": str(file_path),
"extension": file_path.suffix.lower(),
"size_bytes": file_path.stat().st_size,
"size_display": _format_file_size(file_path.stat().st_size),
"modified": datetime.fromtimestamp(file_path.stat().st_mtime).isoformat()
})
if model_dir_path is None:
model_dir_path = str(model_dir)
# Sort by extension for better display (prt first, then sim, fem, etc.)
extension_order = {'.prt': 0, '.sim': 1, '.fem': 2, '.bdf': 3, '.dat': 4, '.op2': 5, '.f06': 6, '.inp': 7}
model_files.sort(key=lambda x: (extension_order.get(x['extension'], 99), x['name']))
return {
"study_id": study_id,
"model_dir": model_dir_path or str(study_dir / "1_setup" / "model"),
"files": model_files,
"count": len(model_files)
}
except HTTPException:
raise
except Exception as e:
raise HTTPException(status_code=500, detail=f"Failed to get model files: {str(e)}")
def _format_file_size(size_bytes: int) -> str:
"""Format file size in human-readable form"""
if size_bytes < 1024:
return f"{size_bytes} B"
elif size_bytes < 1024 * 1024:
return f"{size_bytes / 1024:.1f} KB"
elif size_bytes < 1024 * 1024 * 1024:
return f"{size_bytes / (1024 * 1024):.1f} MB"
else:
return f"{size_bytes / (1024 * 1024 * 1024):.2f} GB"
@router.post("/studies/{study_id}/open-folder")
async def open_model_folder(study_id: str, folder_type: str = "model"):
"""
Open the model folder in system file explorer
Args:
study_id: Study identifier
folder_type: Type of folder to open (model, results, setup)
Returns:
JSON with success status
"""
import os
import platform
try:
study_dir = STUDIES_DIR / study_id
if not study_dir.exists():
raise HTTPException(status_code=404, detail=f"Study {study_id} not found")
# Determine which folder to open
if folder_type == "model":
target_dir = study_dir / "1_setup" / "model"
if not target_dir.exists():
target_dir = study_dir / "1_setup"
elif folder_type == "results":
target_dir = get_results_dir(study_dir)
elif folder_type == "setup":
target_dir = study_dir / "1_setup"
else:
target_dir = study_dir
if not target_dir.exists():
target_dir = study_dir
# Open in file explorer based on platform
system = platform.system()
try:
if system == "Windows":
os.startfile(str(target_dir))
elif system == "Darwin": # macOS
subprocess.Popen(["open", str(target_dir)])
else: # Linux
subprocess.Popen(["xdg-open", str(target_dir)])
return {
"success": True,
"message": f"Opened {target_dir}",
"path": str(target_dir)
}
except Exception as e:
return {
"success": False,
"message": f"Failed to open folder: {str(e)}",
"path": str(target_dir)
}
except HTTPException:
raise
except Exception as e:
raise HTTPException(status_code=500, detail=f"Failed to open folder: {str(e)}")
@router.get("/studies/{study_id}/best-solution")
async def get_best_solution(study_id: str):
"""Get the best trial(s) for a study with improvement metrics"""
try:
study_dir = STUDIES_DIR / study_id
if not study_dir.exists():
raise HTTPException(status_code=404, detail=f"Study '{study_id}' not found")
results_dir = get_results_dir(study_dir)
db_path = results_dir / "study.db"
if not db_path.exists():
return {
"study_id": study_id,
"best_trial": None,
"first_trial": None,
"improvements": {},
"total_trials": 0
}
conn = sqlite3.connect(str(db_path))
conn.row_factory = sqlite3.Row
cursor = conn.cursor()
# Get best trial (single objective - minimize by default)
cursor.execute("""
SELECT t.trial_id, t.number, tv.value as objective,
datetime(tv.value_id, 'unixepoch') as timestamp
FROM trials t
JOIN trial_values tv ON t.trial_id = tv.trial_id
WHERE t.state = 'COMPLETE'
ORDER BY tv.value ASC
LIMIT 1
""")
best_row = cursor.fetchone()
# Get first completed trial for comparison
cursor.execute("""
SELECT t.trial_id, t.number, tv.value as objective
FROM trials t
JOIN trial_values tv ON t.trial_id = tv.trial_id
WHERE t.state = 'COMPLETE'
ORDER BY t.number ASC
LIMIT 1
""")
first_row = cursor.fetchone()
# Get total trial count
cursor.execute("SELECT COUNT(*) FROM trials WHERE state = 'COMPLETE'")
total_trials = cursor.fetchone()[0]
best_trial = None
first_trial = None
improvements = {}
if best_row:
best_trial_id = best_row['trial_id']
# Get design variables
cursor.execute("""
SELECT param_name, param_value
FROM trial_params
WHERE trial_id = ?
""", (best_trial_id,))
params = {row['param_name']: row['param_value'] for row in cursor.fetchall()}
# Get user attributes (including results)
cursor.execute("""
SELECT key, value_json
FROM trial_user_attributes
WHERE trial_id = ?
""", (best_trial_id,))
user_attrs = {}
for row in cursor.fetchall():
try:
user_attrs[row['key']] = json.loads(row['value_json'])
except:
user_attrs[row['key']] = row['value_json']
best_trial = {
"trial_number": best_row['number'],
"objective": best_row['objective'],
"design_variables": params,
"user_attrs": user_attrs,
"timestamp": best_row['timestamp']
}
if first_row:
first_trial_id = first_row['trial_id']
cursor.execute("""
SELECT param_name, param_value
FROM trial_params
WHERE trial_id = ?
""", (first_trial_id,))
first_params = {row['param_name']: row['param_value'] for row in cursor.fetchall()}
first_trial = {
"trial_number": first_row['number'],
"objective": first_row['objective'],
"design_variables": first_params
}
# Calculate improvement
if best_row and first_row['objective'] != 0:
improvement_pct = ((first_row['objective'] - best_row['objective']) / abs(first_row['objective'])) * 100
improvements["objective"] = {
"initial": first_row['objective'],
"final": best_row['objective'],
"improvement_pct": round(improvement_pct, 2),
"absolute_change": round(first_row['objective'] - best_row['objective'], 6)
}
conn.close()
return {
"study_id": study_id,
"best_trial": best_trial,
"first_trial": first_trial,
"improvements": improvements,
"total_trials": total_trials
}
except HTTPException:
raise
except Exception as e:
raise HTTPException(status_code=500, detail=f"Failed to get best solution: {str(e)}")
@router.get("/studies/{study_id}/runs")
async def get_study_runs(study_id: str):
"""
Get all optimization runs/studies in the database for comparison.
Many studies have multiple Optuna studies (e.g., v11_fea, v11_iter1_nn, v11_iter2_nn).
This endpoint returns metrics for each sub-study.
"""
try:
study_dir = STUDIES_DIR / study_id
if not study_dir.exists():
raise HTTPException(status_code=404, detail=f"Study '{study_id}' not found")
results_dir = get_results_dir(study_dir)
db_path = results_dir / "study.db"
if not db_path.exists():
return {"runs": [], "total_runs": 0}
conn = sqlite3.connect(str(db_path))
conn.row_factory = sqlite3.Row
cursor = conn.cursor()
# Get all Optuna studies in this database
cursor.execute("""
SELECT study_id, study_name
FROM studies
ORDER BY study_id
""")
studies = cursor.fetchall()
runs = []
for study_row in studies:
optuna_study_id = study_row['study_id']
study_name = study_row['study_name']
# Get trial count
cursor.execute("""
SELECT COUNT(*) FROM trials
WHERE study_id = ? AND state = 'COMPLETE'
""", (optuna_study_id,))
trial_count = cursor.fetchone()[0]
if trial_count == 0:
continue
# Get best value (first objective)
cursor.execute("""
SELECT MIN(tv.value) as best_value
FROM trial_values tv
JOIN trials t ON tv.trial_id = t.trial_id
WHERE t.study_id = ? AND t.state = 'COMPLETE' AND tv.objective = 0
""", (optuna_study_id,))
best_result = cursor.fetchone()
best_value = best_result['best_value'] if best_result else None
# Get average value
cursor.execute("""
SELECT AVG(tv.value) as avg_value
FROM trial_values tv
JOIN trials t ON tv.trial_id = t.trial_id
WHERE t.study_id = ? AND t.state = 'COMPLETE' AND tv.objective = 0
""", (optuna_study_id,))
avg_result = cursor.fetchone()
avg_value = avg_result['avg_value'] if avg_result else None
# Get time range
cursor.execute("""
SELECT MIN(datetime_start) as first_trial, MAX(datetime_complete) as last_trial
FROM trials
WHERE study_id = ? AND state = 'COMPLETE'
""", (optuna_study_id,))
time_result = cursor.fetchone()
# Determine source type (FEA or NN)
source = "NN" if "_nn" in study_name.lower() else "FEA"
runs.append({
"run_id": optuna_study_id,
"name": study_name,
"source": source,
"trial_count": trial_count,
"best_value": best_value,
"avg_value": avg_value,
"first_trial": time_result['first_trial'] if time_result else None,
"last_trial": time_result['last_trial'] if time_result else None
})
conn.close()
return {
"runs": runs,
"total_runs": len(runs),
"study_id": study_id
}
except HTTPException:
raise
except Exception as e:
raise HTTPException(status_code=500, detail=f"Failed to get runs: {str(e)}")
class UpdateConfigRequest(BaseModel):
config: dict
@router.put("/studies/{study_id}/config")
async def update_study_config(study_id: str, request: UpdateConfigRequest):
"""
Update the optimization_config.json for a study
Args:
study_id: Study identifier
request: New configuration data
Returns:
JSON with success status
"""
try:
study_dir = STUDIES_DIR / study_id
if not study_dir.exists():
raise HTTPException(status_code=404, detail=f"Study {study_id} not found")
# Check if optimization is running - don't allow config changes while running
if is_optimization_running(study_id):
raise HTTPException(
status_code=409,
detail="Cannot modify config while optimization is running. Stop the optimization first."
)
# Find config file location
config_file = study_dir / "1_setup" / "optimization_config.json"
if not config_file.exists():
config_file = study_dir / "optimization_config.json"
if not config_file.exists():
raise HTTPException(status_code=404, detail=f"Config file not found for study {study_id}")
# Backup existing config
backup_file = config_file.with_suffix('.json.backup')
shutil.copy(config_file, backup_file)
# Write new config
with open(config_file, 'w') as f:
json.dump(request.config, f, indent=2)
return {
"success": True,
"message": "Configuration updated successfully",
"path": str(config_file),
"backup_path": str(backup_file)
}
except HTTPException:
raise
except Exception as e:
raise HTTPException(status_code=500, detail=f"Failed to update config: {str(e)}")
@router.get("/studies/{study_id}/export/{format}")
async def export_study_data(study_id: str, format: str):
"""Export study data in various formats: csv, json, excel"""
try:
study_dir = STUDIES_DIR / study_id
if not study_dir.exists():
raise HTTPException(status_code=404, detail=f"Study '{study_id}' not found")
results_dir = get_results_dir(study_dir)
db_path = results_dir / "study.db"
if not db_path.exists():
raise HTTPException(status_code=404, detail="No study data available")
conn = sqlite3.connect(str(db_path))
conn.row_factory = sqlite3.Row
cursor = conn.cursor()
# Get all completed trials with their params and values
cursor.execute("""
SELECT t.trial_id, t.number, tv.value as objective
FROM trials t
JOIN trial_values tv ON t.trial_id = tv.trial_id
WHERE t.state = 'COMPLETE'
ORDER BY t.number
""")
trials_data = []
for row in cursor.fetchall():
trial_id = row['trial_id']
# Get params
cursor.execute("""
SELECT param_name, param_value
FROM trial_params
WHERE trial_id = ?
""", (trial_id,))
params = {r['param_name']: r['param_value'] for r in cursor.fetchall()}
# Get user attrs
cursor.execute("""
SELECT key, value_json
FROM trial_user_attributes
WHERE trial_id = ?
""", (trial_id,))
user_attrs = {}
for r in cursor.fetchall():
try:
user_attrs[r['key']] = json.loads(r['value_json'])
except:
user_attrs[r['key']] = r['value_json']
trials_data.append({
"trial_number": row['number'],
"objective": row['objective'],
"params": params,
"user_attrs": user_attrs
})
conn.close()
if format.lower() == "json":
return JSONResponse(content={
"study_id": study_id,
"total_trials": len(trials_data),
"trials": trials_data
})
elif format.lower() == "csv":
import io
import csv
if not trials_data:
return JSONResponse(content={"error": "No data to export"})
# Build CSV
output = io.StringIO()
# Get all param names
param_names = sorted(set(
key for trial in trials_data
for key in trial['params'].keys()
))
fieldnames = ['trial_number', 'objective'] + param_names
writer = csv.DictWriter(output, fieldnames=fieldnames)
writer.writeheader()
for trial in trials_data:
row_data = {
'trial_number': trial['trial_number'],
'objective': trial['objective']
}
row_data.update(trial['params'])
writer.writerow(row_data)
csv_content = output.getvalue()
return JSONResponse(content={
"filename": f"{study_id}_data.csv",
"content": csv_content,
"content_type": "text/csv"
})
elif format.lower() == "config":
# Export optimization config
setup_dir = study_dir / "1_setup"
config_path = setup_dir / "optimization_config.json"
if config_path.exists():
with open(config_path, 'r') as f:
config = json.load(f)
return JSONResponse(content={
"filename": f"{study_id}_config.json",
"content": json.dumps(config, indent=2),
"content_type": "application/json"
})
else:
raise HTTPException(status_code=404, detail="Config file not found")
else:
raise HTTPException(status_code=400, detail=f"Unsupported format: {format}")
except HTTPException:
raise
except Exception as e:
raise HTTPException(status_code=500, detail=f"Failed to export data: {str(e)}")