cwicr-data-validator
CWICR Data Validator
Business Case
Problem Statement
Data quality issues cause:
- Incorrect estimates
- Budget overruns
- Delayed projects
- Rework costs
Solution
Systematic validation of CWICR data and estimate inputs to catch errors, outliers, and inconsistencies before they impact projects.
Business Value
- Error prevention - Catch issues early
- Data quality - Ensure reliable estimates
- Consistency - Standard validation rules
- Audit trail - Document data issues
More from datadrivenconstruction/ddc_skills_for_ai_agents_in_construction
cad-to-data
Convert CAD/BIM files to structured data. Extract element data from Revit, IFC, DWG, DGN files.
155dwg-to-excel
Convert AutoCAD DWG files (1983-2026) to Excel databases using DwgExporter CLI. Extract layers, blocks, attributes, and geometry data without Autodesk licenses.
126drawing-analyzer
Analyze construction drawings to extract dimensions, annotations, symbols, and metadata. Support quantity takeoff and design review automation.
85cost-estimation-resource
Calculate construction costs using resource-based method. Estimate project costs from work items, physical resource norms, and current prices.
63pandas-construction-analysis
Comprehensive Pandas toolkit for construction data analysis. Filter, group, aggregate BIM elements, calculate quantities, merge datasets, and generate reports from structured construction data.
45bim-consistency-checker
Check BIM model consistency: naming conventions, parameter completeness, spatial relationships, and data integrity across model elements.
43