data-quality-check
SKILL.md
Data Quality Check for Construction
Overview
Based on DDC methodology (Chapter 2.6), this skill provides comprehensive data quality assessment for construction projects. Poor data quality leads to poor decisions - validate early, validate often.
Book Reference: "Требования к качеству данных и его обеспечение" / "Data Quality Requirements"
"Качество данных определяется пятью ключевыми метриками: полнота, точность, согласованность, своевременность и достоверность." — DDC Book, Chapter 2.6
Quick Start
import pandas as pd
# Load construction data
df = pd.read_excel("bim_export.xlsx")
# Quick quality check
quality_score = {
'completeness': (1 - df.isnull().sum().sum() / df.size) * 100,
'unique_ids': df['ElementId'].nunique() == len(df),
'valid_volumes': (df['Volume_m3'] >= 0).all()
}
print(f"Completeness: {quality_score['completeness']:.1f}%")
print(f"Unique IDs: {quality_score['unique_ids']}")
print(f"Valid volumes: {quality_score['valid_volumes']}")
Data Quality Dimensions
The 5 Quality Metrics
import pandas as pd
import numpy as np
import re
from datetime import datetime, timedelta
class DataQualityChecker:
"""Comprehensive data quality assessment for construction data"""
def __init__(self, df):
self.df = df.copy()
self.results = {}
self.issues = []
def check_completeness(self, required_columns=None):
"""Check for missing values (Полнота)"""
if required_columns is None:
required_columns = self.df.columns.tolist()
completeness = {}
for col in required_columns:
if col in self.df.columns:
non_null = self.df[col].notna().sum()
total = len(self.df)
completeness[col] = (non_null / total) * 100
else:
completeness[col] = 0
self.issues.append(f"Missing required column: {col}")
overall = np.mean(list(completeness.values()))
self.results['completeness'] = {
'by_column': completeness,
'overall': overall,
'threshold': 95,
'passed': overall >= 95
}
return self.results['completeness']
def check_accuracy(self, rules=None):
"""Check data accuracy against rules (Точность)"""
if rules is None:
# Default construction data rules
rules = {
'Volume_m3': {'min': 0, 'max': 10000},
'Area_m2': {'min': 0, 'max': 100000},
'Weight_kg': {'min': 0, 'max': 1000000},
'Cost': {'min': 0, 'max': 100000000}
}
accuracy = {}
for col, bounds in rules.items():
if col in self.df.columns:
valid = self.df[col].between(
bounds.get('min', -np.inf),
bounds.get('max', np.inf)
).sum()
total = self.df[col].notna().sum()
accuracy[col] = (valid / total * 100) if total > 0 else 100
# Log invalid values
invalid_count = total - valid
if invalid_count > 0:
self.issues.append(
f"{col}: {invalid_count} values outside range [{bounds.get('min')}, {bounds.get('max')}]"
)
overall = np.mean(list(accuracy.values())) if accuracy else 100
self.results['accuracy'] = {
'by_column': accuracy,
'overall': overall,
'threshold': 98,
'passed': overall >= 98
}
return self.results['accuracy']
def check_consistency(self, unique_cols=None, relationship_rules=None):
"""Check data consistency (Согласованность)"""
consistency = {}
# Check unique columns
if unique_cols is None:
unique_cols = ['ElementId']
for col in unique_cols:
if col in self.df.columns:
is_unique = self.df[col].nunique() == len(self.df)
consistency[f'{col}_unique'] = 100 if is_unique else \
(self.df[col].nunique() / len(self.df) * 100)
if not is_unique:
duplicates = self.df[self.df[col].duplicated()][col].unique()
self.issues.append(f"Duplicate {col}: {len(duplicates)} duplicates found")
# Check cross-field relationships
if relationship_rules is None:
relationship_rules = [
('End_Date', '>=', 'Start_Date'),
('Gross_Volume', '>=', 'Net_Volume')
]
for col1, op, col2 in relationship_rules:
if col1 in self.df.columns and col2 in self.df.columns:
if op == '>=':
valid = (self.df[col1] >= self.df[col2]).sum()
elif op == '>':
valid = (self.df[col1] > self.df[col2]).sum()
elif op == '==':
valid = (self.df[col1] == self.df[col2]).sum()
total = self.df[[col1, col2]].notna().all(axis=1).sum()
consistency[f'{col1}_{op}_{col2}'] = (valid / total * 100) if total > 0 else 100
overall = np.mean(list(consistency.values())) if consistency else 100
self.results['consistency'] = {
'checks': consistency,
'overall': overall,
'threshold': 99,
'passed': overall >= 99
}
return self.results['consistency']
def check_timeliness(self, date_col='Modified_Date', max_age_days=30):
"""Check data timeliness (Своевременность)"""
if date_col not in self.df.columns:
self.results['timeliness'] = {
'overall': None,
'message': f'Column {date_col} not found'
}
return self.results['timeliness']
dates = pd.to_datetime(self.df[date_col], errors='coerce')
cutoff = datetime.now() - timedelta(days=max_age_days)
recent = (dates >= cutoff).sum()
total = dates.notna().sum()
timeliness_pct = (recent / total * 100) if total > 0 else 0
oldest = dates.min()
newest = dates.max()
avg_age = (datetime.now() - dates.mean()).days if dates.notna().any() else None
self.results['timeliness'] = {
'recent_percentage': timeliness_pct,
'oldest_record': oldest,
'newest_record': newest,
'average_age_days': avg_age,
'threshold': 80,
'passed': timeliness_pct >= 80
}
return self.results['timeliness']
def check_validity(self, patterns=None):
"""Check data validity with regex patterns (Достоверность)"""
if patterns is None:
patterns = {
'ElementId': r'^[A-Z]{1,3}\d{3,6}$', # e.g., W001, FL12345
'Level': r'^Level\s*\d+$|^L\d+$|^Уровень\s*\d+$',
'Email': r'^[\w\.-]+@[\w\.-]+\.\w+$',
'Phone': r'^\+?\d{10,15}$'
}
validity = {}
for col, pattern in patterns.items():
if col in self.df.columns:
non_null = self.df[col].dropna()
if len(non_null) > 0:
matches = non_null.astype(str).str.match(pattern).sum()
validity[col] = (matches / len(non_null) * 100)
invalid = len(non_null) - matches
if invalid > 0:
self.issues.append(f"{col}: {invalid} values don't match pattern")
else:
validity[col] = 100
overall = np.mean(list(validity.values())) if validity else 100
self.results['validity'] = {
'by_column': validity,
'overall': overall,
'threshold': 95,
'passed': overall >= 95
}
return self.results['validity']
def run_full_check(self):
"""Run all quality checks"""
self.check_completeness()
self.check_accuracy()
self.check_consistency()
self.check_timeliness()
self.check_validity()
# Calculate overall score
scores = []
for metric in ['completeness', 'accuracy', 'consistency', 'validity']:
if metric in self.results and self.results[metric].get('overall'):
scores.append(self.results[metric]['overall'])
self.results['overall_score'] = np.mean(scores) if scores else 0
self.results['grade'] = self._calculate_grade(self.results['overall_score'])
self.results['issues'] = self.issues
return self.results
def _calculate_grade(self, score):
"""Calculate quality grade"""
if score >= 98:
return 'A+'
elif score >= 95:
return 'A'
elif score >= 90:
return 'B'
elif score >= 80:
return 'C'
elif score >= 70:
return 'D'
else:
return 'F'
def generate_report(self):
"""Generate quality report"""
if not self.results:
self.run_full_check()
report = []
report.append("=" * 60)
report.append("DATA QUALITY REPORT")
report.append("=" * 60)
report.append(f"Records analyzed: {len(self.df)}")
report.append(f"Columns: {len(self.df.columns)}")
report.append("")
report.append(f"OVERALL SCORE: {self.results['overall_score']:.1f}% (Grade: {self.results['grade']})")
report.append("")
report.append("-" * 60)
# Detail by dimension
for metric in ['completeness', 'accuracy', 'consistency', 'validity', 'timeliness']:
if metric in self.results:
r = self.results[metric]
passed = '✓' if r.get('passed', False) else '✗'
overall = r.get('overall', r.get('recent_percentage', 'N/A'))
if isinstance(overall, (int, float)):
report.append(f"{metric.upper():15s}: {overall:>6.1f}% {passed}")
else:
report.append(f"{metric.upper():15s}: {overall}")
report.append("-" * 60)
if self.issues:
report.append("")
report.append("ISSUES FOUND:")
for issue in self.issues[:10]: # Show first 10
report.append(f" • {issue}")
if len(self.issues) > 10:
report.append(f" ... and {len(self.issues) - 10} more issues")
report.append("")
report.append("=" * 60)
return "\n".join(report)
Validation Rules Builder
Custom Validation Rules
class ValidationRulesBuilder:
"""Build custom validation rules for construction data"""
def __init__(self):
self.rules = []
def add_not_null(self, column):
"""Column must not have null values"""
self.rules.append({
'type': 'not_null',
'column': column,
'check': lambda df, col=column: df[col].notna().all()
})
return self
def add_unique(self, column):
"""Column must have unique values"""
self.rules.append({
'type': 'unique',
'column': column,
'check': lambda df, col=column: df[col].nunique() == len(df)
})
return self
def add_range(self, column, min_val=None, max_val=None):
"""Column values must be within range"""
self.rules.append({
'type': 'range',
'column': column,
'min': min_val,
'max': max_val,
'check': lambda df, col=column, mn=min_val, mx=max_val:
df[col].between(mn or -np.inf, mx or np.inf).all()
})
return self
def add_regex(self, column, pattern):
"""Column values must match regex pattern"""
self.rules.append({
'type': 'regex',
'column': column,
'pattern': pattern,
'check': lambda df, col=column, p=pattern:
df[col].astype(str).str.match(p).all()
})
return self
def add_in_list(self, column, valid_values):
"""Column values must be in list"""
self.rules.append({
'type': 'in_list',
'column': column,
'valid_values': valid_values,
'check': lambda df, col=column, vals=valid_values:
df[col].isin(vals).all()
})
return self
def add_custom(self, name, check_func):
"""Add custom validation function"""
self.rules.append({
'type': 'custom',
'name': name,
'check': check_func
})
return self
def validate(self, df):
"""Run all validation rules"""
results = []
for rule in self.rules:
try:
passed = rule['check'](df)
results.append({
'rule': rule.get('name', f"{rule['type']}:{rule.get('column', 'custom')}"),
'passed': passed,
'type': rule['type']
})
except Exception as e:
results.append({
'rule': rule.get('name', f"{rule['type']}:{rule.get('column', 'custom')}"),
'passed': False,
'error': str(e)
})
return results
# Usage example
rules = (ValidationRulesBuilder()
.add_not_null('ElementId')
.add_unique('ElementId')
.add_range('Volume_m3', min_val=0)
.add_range('Cost', min_val=0)
.add_in_list('Category', ['Wall', 'Floor', 'Column', 'Beam', 'Slab'])
.add_regex('Level', r'^Level\s*\d+$')
)
results = rules.validate(df)
for r in results:
status = '✓' if r['passed'] else '✗'
print(f"{status} {r['rule']}")
Automated Quality Pipeline
class DataQualityPipeline:
"""Automated data quality pipeline"""
def __init__(self, config=None):
self.config = config or self._default_config()
self.history = []
def _default_config(self):
return {
'required_columns': ['ElementId', 'Category', 'Volume_m3'],
'unique_columns': ['ElementId'],
'numeric_ranges': {
'Volume_m3': (0, 10000),
'Area_m2': (0, 100000),
'Cost': (0, 100000000)
},
'valid_categories': ['Wall', 'Floor', 'Column', 'Beam', 'Slab',
'Foundation', 'Roof', 'Stair', 'Door', 'Window'],
'min_quality_score': 90
}
def run(self, df, source_name='unknown'):
"""Run quality pipeline"""
checker = DataQualityChecker(df)
# Configure checks based on config
checker.check_completeness(self.config['required_columns'])
checker.check_accuracy({
col: {'min': r[0], 'max': r[1]}
for col, r in self.config['numeric_ranges'].items()
})
checker.check_consistency(self.config['unique_columns'])
checker.check_validity()
results = checker.run_full_check()
# Store in history
self.history.append({
'timestamp': datetime.now(),
'source': source_name,
'records': len(df),
'score': results['overall_score'],
'grade': results['grade'],
'issues_count': len(results['issues'])
})
# Check threshold
passed = results['overall_score'] >= self.config['min_quality_score']
return {
'passed': passed,
'score': results['overall_score'],
'grade': results['grade'],
'details': results,
'report': checker.generate_report()
}
def get_history_summary(self):
"""Get quality history summary"""
if not self.history:
return "No quality checks performed yet."
df_history = pd.DataFrame(self.history)
return {
'total_checks': len(self.history),
'avg_score': df_history['score'].mean(),
'min_score': df_history['score'].min(),
'max_score': df_history['score'].max(),
'latest': self.history[-1]
}
Quality Reporting
Export Quality Report
def export_quality_report(df, output_path, include_details=True):
"""Export comprehensive quality report to Excel"""
checker = DataQualityChecker(df)
results = checker.run_full_check()
with pd.ExcelWriter(output_path, engine='openpyxl') as writer:
# Summary sheet
summary = pd.DataFrame({
'Metric': ['Overall Score', 'Grade', 'Records', 'Columns', 'Issues'],
'Value': [
f"{results['overall_score']:.1f}%",
results['grade'],
len(df),
len(df.columns),
len(results['issues'])
]
})
summary.to_excel(writer, sheet_name='Summary', index=False)
# Completeness details
if 'completeness' in results:
comp_df = pd.DataFrame.from_dict(
results['completeness']['by_column'],
orient='index',
columns=['Completeness_%']
)
comp_df.to_excel(writer, sheet_name='Completeness')
# Issues list
if results['issues']:
issues_df = pd.DataFrame({'Issue': results['issues']})
issues_df.to_excel(writer, sheet_name='Issues', index=False)
# Missing values analysis
if include_details:
missing = df.isnull().sum()
missing_df = pd.DataFrame({
'Column': missing.index,
'Missing_Count': missing.values,
'Missing_%': (missing.values / len(df) * 100).round(2)
})
missing_df.to_excel(writer, sheet_name='Missing_Values', index=False)
return output_path
Quick Reference
| Metric | Description | Threshold |
|---|---|---|
| Completeness | % non-null values | ≥ 95% |
| Accuracy | Values within valid range | ≥ 98% |
| Consistency | Unique IDs, valid relationships | ≥ 99% |
| Validity | Match expected patterns | ≥ 95% |
| Timeliness | Records updated recently | ≥ 80% |
Common Validation Patterns
# Construction-specific regex patterns
PATTERNS = {
'element_id': r'^[A-Z]{1,3}\d{3,8}$',
'revit_id': r'^\d{5,8}$',
'ifc_guid': r'^[A-Za-z0-9_$]{22}$',
'level': r'^(Level|L|Уровень)\s*[-]?\d+$',
'grid': r'^[A-Z]{1,2}[-/]?\d{0,3}$',
'date_iso': r'^\d{4}-\d{2}-\d{2}$',
'cost_code': r'^\d{2,3}[.-]\d{2,4}[.-]?\d{0,4}$'
}
Resources
- Book: "Data-Driven Construction" by Artem Boiko, Chapter 2.6
- Website: https://datadrivenconstruction.io
- Great Expectations: https://greatexpectations.io
Next Steps
- See
bim-validation-pipelinefor BIM-specific validation - See
etl-pipelinefor data processing pipelines - See
data-visualizationfor quality dashboards
Weekly Installs
3
Repository
datadrivenconst…tructionGitHub Stars
51
First Seen
10 days ago
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