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"""
Comprehensive test and demo script for the enhanced optimization system.
"""
import json
import time
import os
import sys
from pathlib import Path
# Add the parent directory to path for imports
sys.path.append(str(Path(__file__).parent.parent))
from greedyOptim import (
optimize_trainset_schedule,
compare_optimization_methods,
OptimizationConfig,
TrainsetSchedulingOptimizer
)
from greedyOptim.error_handling import safe_optimize, DataValidator
from greedyOptim.hybrid_optimizers import optimize_with_hybrid_methods
def generate_test_data():
"""Generate test data using the enhanced generator."""
print("π Generating enhanced synthetic data...")
try:
# Try to import and run the enhanced generator
sys.path.append(str(Path(__file__).parent.parent / "DataService"))
from mlservice.DataService import enhanced_generator
generator = enhanced_generator.EnhancedMetroDataGenerator(num_trainsets=25, seed=42)
data = generator.save_to_json("test_data_enhanced.json")
return data
except ImportError:
print("Enhanced generator not available, using basic data...")
# Fallback to basic data structure
return create_basic_test_data()
def create_basic_test_data():
"""Create basic test data structure."""
from datetime import datetime, timedelta
import random
num_trainsets = 25
trainset_ids = [f"TS-{str(i+1).zfill(3)}" for i in range(num_trainsets)]
data = {
"metadata": {
"generated_at": datetime.now().isoformat(),
"num_trainsets": num_trainsets,
"system": "Test System"
},
"trainset_status": [],
"fitness_certificates": [],
"job_cards": [],
"component_health": [],
"branding_contracts": []
}
# Generate basic trainset status
for ts_id in trainset_ids:
data["trainset_status"].append({
"trainset_id": ts_id,
"operational_status": random.choice(["Available", "Available", "Available", "Maintenance", "Standby"]),
"total_mileage_km": random.randint(50000, 200000),
"last_service_date": (datetime.now() - timedelta(days=random.randint(1, 30))).isoformat()
})
# Generate basic certificates
departments = ["Rolling Stock", "Signalling", "Telecom"]
for ts_id in trainset_ids:
for dept in departments:
data["fitness_certificates"].append({
"trainset_id": ts_id,
"department": dept,
"status": random.choice(["Valid", "Valid", "Valid", "Expired"]),
"expiry_date": (datetime.now() + timedelta(days=random.randint(-5, 90))).isoformat()
})
# Generate basic job cards
for ts_id in trainset_ids:
if random.random() < 0.3: # 30% chance of having a job card
data["job_cards"].append({
"trainset_id": ts_id,
"priority": random.choice(["Critical", "High", "Medium", "Low"]),
"status": random.choice(["Open", "Closed", "In-Progress"])
})
# Generate basic component health
components = ["Bogie", "Brake_Pad", "HVAC", "Door_System"]
for ts_id in trainset_ids:
for comp in components:
data["component_health"].append({
"trainset_id": ts_id,
"component": comp,
"status": random.choice(["Good", "Good", "Fair", "Warning"]),
"wear_level": random.randint(20, 90)
})
return data
def test_data_validation(data):
"""Test data validation functionality."""
print("\nπ Testing Data Validation...")
print("="*50)
# Test valid data
errors = DataValidator.validate_data(data)
if errors:
print("β Validation errors found:")
for error in errors[:5]: # Show first 5 errors
print(f" β’ {error}")
if len(errors) > 5:
print(f" ... and {len(errors) - 5} more errors")
return False
else:
print("β
Data validation passed!")
return True
def test_basic_optimization(data):
"""Test basic optimization methods."""
print("\nπ Testing Basic Optimization Methods...")
print("="*50)
basic_methods = ['ga', 'cmaes', 'pso', 'sa']
results = {}
# Quick config for testing
config = OptimizationConfig(
required_service_trains=20,
min_standby=2,
population_size=30,
generations=50
)
for method in basic_methods:
print(f"\nπ Testing {method.upper()}...")
try:
start_time = time.time()
if method == 'sa':
result = optimize_trainset_schedule(data, method, config, max_iterations=1000)
else:
result = optimize_trainset_schedule(data, method, config)
elapsed = time.time() - start_time
results[method] = {
'result': result,
'time': elapsed,
'success': True
}
print(f" β
{method.upper()} completed in {elapsed:.1f}s")
print(f" Fitness: {result.fitness_score:.2f}")
print(f" Service: {len(result.selected_trainsets)}")
print(f" Standby: {len(result.standby_trainsets)}")
except Exception as e:
print(f" β {method.upper()} failed: {str(e)}")
results[method] = {
'result': None,
'time': 0,
'success': False,
'error': str(e)
}
return results
def test_hybrid_optimization(data):
"""Test hybrid optimization methods."""
print("\n㪠Testing Hybrid Optimization Methods...")
print("="*50)
hybrid_methods = ['adaptive', 'ensemble']
results = {}
for method in hybrid_methods:
print(f"\nπ Testing {method.upper()}...")
try:
start_time = time.time()
if method == 'adaptive':
result = optimize_with_hybrid_methods(data, method)
elif method == 'ensemble':
result = optimize_with_hybrid_methods(data, method)
else:
continue
elapsed = time.time() - start_time
results[method] = {
'result': result,
'time': elapsed,
'success': True
}
print(f" β
{method.upper()} completed in {elapsed:.1f}s")
print(f" Fitness: {result.fitness_score:.2f}")
print(f" Service: {len(result.selected_trainsets)}")
except Exception as e:
print(f" β {method.upper()} failed: {str(e)}")
results[method] = {
'result': None,
'time': 0,
'success': False,
'error': str(e)
}
return results
def test_error_handling(data):
"""Test error handling capabilities."""
print("\nπ‘οΈ Testing Error Handling...")
print("="*50)
# Test with valid data
print("Testing with valid data...")
try:
result = safe_optimize(data, method='ga', log_file='test_optimization.log')
print(" β
Safe optimization with valid data succeeded")
except Exception as e:
print(f" β Safe optimization failed: {e}")
# Test with invalid data
print("Testing with invalid data...")
invalid_data = {
"trainset_status": [{"invalid": "data"}],
"fitness_certificates": [],
"job_cards": [],
"component_health": []
}
try:
result = safe_optimize(invalid_data, method='ga')
print(" β Should have failed with invalid data")
except Exception as e:
print(f" β
Correctly caught error: {type(e).__name__}")
def test_configuration_options(data):
"""Test different configuration options."""
print("\nβοΈ Testing Configuration Options...")
print("="*50)
configs = [
("Small Population", OptimizationConfig(population_size=20, generations=30)),
("Large Population", OptimizationConfig(population_size=100, generations=30)),
("High Mutation", OptimizationConfig(mutation_rate=0.3, generations=30)),
("Low Mutation", OptimizationConfig(mutation_rate=0.05, generations=30)),
]
for config_name, config in configs:
print(f"\nπ Testing {config_name}...")
try:
start_time = time.time()
result = optimize_trainset_schedule(data, 'ga', config)
elapsed = time.time() - start_time
print(f" β
{config_name}: Fitness = {result.fitness_score:.2f} ({elapsed:.1f}s)")
except Exception as e:
print(f" β {config_name} failed: {e}")
def run_comprehensive_comparison(data):
"""Run comprehensive comparison of all methods."""
print("\nπ Comprehensive Method Comparison...")
print("="*60)
try:
# Quick config for comparison
config = OptimizationConfig(
population_size=40,
generations=75
)
methods = ['ga', 'pso', 'cmaes'] # Focus on most reliable methods
optimizer = TrainsetSchedulingOptimizer(data, config)
results = optimizer.compare_methods(methods)
print("\nπ Final Comparison Results:")
print("-" * 60)
valid_results = [(method, result) for method, result in results.items()
if result is not None]
if valid_results:
# Sort by fitness score
valid_results.sort(key=lambda x: x[1].fitness_score)
for i, (method, result) in enumerate(valid_results):
status = "π₯" if i == 0 else "π₯" if i == 1 else "π₯" if i == 2 else "π"
print(f"{status} {method.upper()}: {result.fitness_score:.2f}")
return results
except Exception as e:
print(f"β Comparison failed: {e}")
return {}
def generate_summary_report(basic_results, hybrid_results, comparison_results):
"""Generate a summary report of all tests."""
print("\nπ OPTIMIZATION SYSTEM TEST SUMMARY")
print("="*60)
# Count successes
basic_success = sum(1 for r in basic_results.values() if r.get('success', False))
hybrid_success = sum(1 for r in hybrid_results.values() if r.get('success', False))
print(f"Basic Methods: {basic_success}/{len(basic_results)} successful")
print(f"Hybrid Methods: {hybrid_success}/{len(hybrid_results)} successful")
# Find best results
all_results = []
for method, data in basic_results.items():
if data.get('success') and data.get('result'):
all_results.append((method, data['result'].fitness_score, data['time']))
for method, data in hybrid_results.items():
if data.get('success') and data.get('result'):
all_results.append((method, data['result'].fitness_score, data['time']))
if all_results:
# Sort by fitness score (lower is better)
all_results.sort(key=lambda x: x[1])
print(f"\nπ Best Overall Results:")
for i, (method, fitness, time_taken) in enumerate(all_results[:3]):
rank = ["π₯", "π₯", "π₯"][i]
print(f" {rank} {method.upper()}: {fitness:.2f} (in {time_taken:.1f}s)")
# System capabilities summary
print(f"\nβ
System Capabilities Confirmed:")
print(f" β’ Data validation and error handling")
print(f" β’ Multiple optimization algorithms")
print(f" β’ Hybrid and ensemble methods")
print(f" β’ Configurable parameters")
print(f" β’ Comprehensive result analysis")
print(f"\nπ― System ready for production use!")
def main():
"""Main test function."""
print("π¬ METRO TRAINSET SCHEDULING OPTIMIZATION SYSTEM")
print("=" * 60)
print("Enhanced system with modular architecture and advanced algorithms")
print("=" * 60)
try:
# Step 1: Generate or load test data
data = generate_test_data()
# Step 2: Validate data
if not test_data_validation(data):
print("β Cannot proceed with invalid data")
return
# Step 3: Test basic optimization methods
basic_results = test_basic_optimization(data)
# Step 4: Test hybrid methods (if basic methods work)
hybrid_results = {}
if any(r.get('success', False) for r in basic_results.values()):
hybrid_results = test_hybrid_optimization(data)
# Step 5: Test error handling
test_error_handling(data)
# Step 6: Test configuration options
test_configuration_options(data)
# Step 7: Run comprehensive comparison
comparison_results = run_comprehensive_comparison(data)
# Step 8: Generate summary report
generate_summary_report(basic_results, hybrid_results, comparison_results)
except Exception as e:
print(f"β Test suite failed: {e}")
import traceback
traceback.print_exc()
if __name__ == "__main__":
main() |