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cwicr-historical-cost

@datadrivenconstruction · 收录于 1 周前

Track and analyze historical cost data using CWICR. Compare actual vs estimated costs, build project cost database, and improve future estimates.

适合你,如果你需要管理项目成本并改进未来估算

/ 下载安装
cwicr-historical-cost.skill双击,或拖进 Claude 桌面版 / Cowork,即完成安装↓ .skill↓ .zip
用别的 agent?下载 .zip 解压,把文件夹放进它的技能目录
Claude Code~/.claude/skills/(项目级 .claude/skills/)
Codex CLI~/.codex/skills/
Cursor自动读取上面两处目录
其他工具见其文档的「skills」目录;两个下载是同一份文件,只是名字不同
/ 通过 npx 安装 校验哈希
npx oh-my-skill add datadrivenconstruction/ddc_skills_for_ai_agents_in_construction/cwicr-historical-cost
/ 通过 bash 安装
curl -fsSL https://oh-my-skill.com/install.sh | bash -s -- datadrivenconstruction/ddc_skills_for_ai_agents_in_construction/cwicr-historical-cost
/ 已经装过?验证本机副本,不用重装
npx oh-my-skill verify datadrivenconstruction/ddc_skills_for_ai_agents_in_construction/cwicr-historical-cost
安装目标可用 --agent / --scope 或 --to 明确指定;省略时只会在唯一已存在的 agent 目录上自动选择,零命中或多命中会停止并提示。content_hash 缺失或不一致均拒装。
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怎么用

技能原文 SKILL.md作者撰写 · MIT · 34e0d78

CWICR Historical Cost Tracker

Business Case
Problem Statement

Improving estimates requires:

  • Actual cost feedback
  • Historical comparisons
  • Trend analysis
  • Lessons learned
Solution

Track actual costs against CWICR estimates, build historical database, and use data to improve future estimating accuracy.

Business Value
  • Accuracy improvement - Learn from actuals
  • Benchmarking - Project comparisons
  • Trend analysis - Cost movement patterns
  • Organizational knowledge - Cost database
Technical Implementation
import pandas as pd
import numpy as np
from typing import Dict, Any, List, Optional
from dataclasses import dataclass, field
from datetime import datetime, date
from enum import Enum
import json


class ProjectStatus(Enum):
    """Project status."""
    ESTIMATED = "estimated"
    IN_PROGRESS = "in_progress"
    COMPLETED = "completed"
    CANCELLED = "cancelled"


@dataclass
class CostRecord:
    """Historical cost record."""
    project_id: str
    project_name: str
    work_item_code: str
    quantity: float
    estimated_cost: float
    actual_cost: float
    variance: float
    variance_percent: float
    completion_date: date
    notes: str = ""


@dataclass
class ProjectCostSummary:
    """Project cost summary."""
    project_id: str
    project_name: str
    project_type: str
    location: str
    status: ProjectStatus
    estimated_total: float
    actual_total: float
    variance: float
    variance_percent: float
    start_date: date
    completion_date: Optional[date]
    item_count: int


class CWICRHistoricalCost:
    """Track historical costs using CWICR data."""

    def __init__(self, cwicr_data: pd.DataFrame = None):
        self.cwicr = cwicr_data
        self._projects: Dict[str, ProjectCostSummary] = {}
        self._records: List[CostRecord] = []

        if cwicr_data is not None:
            self._index_cwicr()

    def _index_cwicr(self):
        """Index CWICR data."""
        if 'work_item_code' in self.cwicr.columns:
            self._cwicr_index = self.cwicr.set_index('work_item_code')
        else:
            self._cwicr_index = None

    def add_project(self,
                    project_id: str,
                    project_name: str,
                    project_type: str,
                    location: str,
                    estimated_total: float,
                    start_date: date) -> str:
        """Add new project to historical database."""

        summary = ProjectCostSummary(
            project_id=project_id,
            project_name=project_name,
            project_type=project_type,
            location=location,
            status=ProjectStatus.ESTIMATED,
            estimated_total=estimated_total,
            actual_total=0,
            variance=0,
            variance_percent=0,
            start_date=start_date,
            completion_date=None,
            item_count=0
        )

        self._projects[project_id] = summary
        return project_id

    def record_actual_cost(self,
                           project_id: str,
                           work_item_code: str,
                           quantity: float,
                           actual_cost: float,
                           completion_date: date = None,
                           notes: str = "") -> CostRecord:
        """Record actual cost for work item."""

        # Get estimated cost from CWICR
        estimated_unit_cost = 0
        if self._cwicr_index is not None and work_item_code in self._cwicr_index.index:
            item = self._cwicr_index.loc[work_item_code]
            labor = float(item.get('labor_cost', 0) or 0)
            material = float(item.get('material_cost', 0) or 0)
            equipment = float(item.get('equipment_cost', 0) or 0)
            estimated_unit_cost = labor + material + equipment

        estimated_cost = estimated_unit_cost * quantity
        variance = actual_cost - estimated_cost
        variance_pct = (variance / estimated_cost * 100) if estimated_cost > 0 else 0

        record = CostRecord(
            project_id=project_id,
            project_name=self._projects.get(project_id, {}).project_name if project_id in self._projects else "",
            work_item_code=work_item_code,
            quantity=quantity,
            estimated_cost=round(estimated_cost, 2),
            actual_cost=round(actual_cost, 2),
            variance=round(variance, 2),
            variance_percent=round(variance_pct, 1),
            completion_date=completion_date or date.today(),
            notes=notes
        )

        self._records.append(record)

        # Update project summary
        if project_id in self._projects:
            proj = self._projects[project_id]
            proj.actual_total += actual_cost
            proj.variance = proj.actual_total - proj.estimated_total
            proj.variance_percent = (proj.variance / proj.estimated_total * 100) if proj.estimated_total > 0 else 0
            proj.item_count += 1
            proj.status = ProjectStatus.IN_PROGRESS

        return record

    def complete_project(self, project_id: str, completion_date: date = None):
        """Mark project as completed."""
        if project_id in self._projects:
            self._projects[project_id].status = ProjectStatus.COMPLETED
            self._projects[project_id].completion_date = completion_date or date.today()

    def get_work_item_history(self, work_item_code: str) -> Dict[str, Any]:
        """Get historical data for specific work item."""

        records = [r for r in self._records if r.work_item_code == work_item_code]

        if not records:
            return {'work_item_code': work_item_code, 'records': 0}

        variances = [r.variance_percent for r in records]
        actual_costs = [r.actual_cost / r.quantity if r.quantity > 0 else 0 for r in records]

        return {
            'work_item_code': work_item_code,
            'records': len(records),
            'average_variance_pct': round(np.mean(variances), 1),
            'variance_std': round(np.std(variances), 1),
            'average_actual_unit_cost': round(np.mean(actual_costs), 2),
            'min_actual_unit_cost': round(min(actual_costs), 2),
            'max_actual_unit_cost': round(max(actual_costs), 2),
            'projects': list(set(r.project_id for r in records)),
            'trend': 'increasing' if len(records) > 2 and actual_costs[-1] > actual_costs[0] else 'stable'
        }

    def get_accuracy_metrics(self) -> Dict[str, Any]:
        """Calculate overall estimating accuracy metrics."""

        if not self._records:
            return {}

        variances = [r.variance_percent for r in self._records]

        # Accuracy by category
        by_category = {}
        for record in self._records:
            category = record.work_item_code.split('-')[0] if '-' in record.work_item_code else 'Other'
            if category not in by_category:
                by_category[category] = []
            by_category[category].append(record.variance_percent)

        category_accuracy = {
            cat: {
                'average_variance': round(np.mean(vals), 1),
                'count': len(vals)
            }
            for cat, vals in by_category.items()
        }

        return {
            'total_records': len(self._records),
            'average_variance_pct': round(np.mean(variances), 1),
            'variance_std': round(np.std(variances), 1),
            'within_5pct': sum(1 for v in variances if abs(v) <= 5) / len(variances) * 100,
            'within_10pct': sum(1 for v in variances if abs(v) <= 10) / len(variances) * 100,
            'overestimated_pct': sum(1 for v in variances if v < 0) / len(variances) * 100,
            'underestimated_pct': sum(1 for v in variances if v > 0) / len(variances) * 100,
            'by_category': category_accuracy
        }

    def suggest_adjustment_factors(self) -> Dict[str, float]:
        """Suggest adjustment factors based on historical variance."""

        factors = {}

        for record in self._records:
            category = record.work_item_code.split('-')[0] if '-' in record.work_item_code else 'Other'
            if category not in factors:
                factors[category] = []

            if record.estimated_cost > 0:
                actual_factor = record.actual_cost / record.estimated_cost
                factors[category].append(actual_factor)

        return {
            cat: round(np.mean(vals), 3)
            for cat, vals in factors.items()
            if len(vals) >= 3  # Require minimum data points
        }

    def compare_projects(self,
                          project_ids: List[str] = None) -> pd.DataFrame:
        """Compare multiple projects."""

        if project_ids:
            projects = [self._projects[pid] for pid in project_ids if pid in self._projects]
        else:
            projects = list(self._projects.values())

        if not projects:
            return pd.DataFrame()

        return pd.DataFrame([
            {
                'Project ID': p.project_id,
                'Project Name': p.project_name,
                'Type': p.project_type,
                'Location': p.location,
                'Status': p.status.value,
                'Estimated': p.estimated_total,
                'Actual': p.actual_total,
                'Variance': p.variance,
                'Variance %': p.variance_percent,
                'Items': p.item_count
            }
            for p in projects
        ])

    def get_benchmarks_by_type(self, project_type: str) -> Dict[str, Any]:
        """Get cost benchmarks for project type."""

        projects = [p for p in self._projects.values() if p.project_type == project_type]

        if not projects:
            return {}

        actuals = [p.actual_total for p in projects if p.status == ProjectStatus.COMPLETED]

        return {
            'project_type': project_type,
            'completed_projects': len(actuals),
            'average_cost': round(np.mean(actuals), 2) if actuals else 0,
            'min_cost': round(min(actuals), 2) if actuals else 0,
            'max_cost': round(max(actuals), 2) if actuals else 0,
            'average_variance': round(np.mean([p.variance_percent for p in projects]), 1)
        }

    def export_historical_data(self, output_path: str) -> str:
        """Export historical data to Excel."""

        with pd.ExcelWriter(output_path, engine='openpyxl') as writer:
            # Projects
            if self._projects:
                projects_df = self.compare_projects()
                projects_df.to_excel(writer, sheet_name='Projects', index=False)

            # Records
            if self._records:
                records_df = pd.DataFrame([
                    {
                        'Project': r.project_id,
                        'Work Item': r.work_item_code,
                        'Quantity': r.quantity,
                        'Estimated': r.estimated_cost,
                        'Actual': r.actual_cost,
                        'Variance': r.variance,
                        'Variance %': r.variance_percent,
                        'Date': r.completion_date,
                        'Notes': r.notes
                    }
                    for r in self._records
                ])
                records_df.to_excel(writer, sheet_name='Records', index=False)

            # Accuracy metrics
            metrics = self.get_accuracy_metrics()
            if metrics:
                metrics_df = pd.DataFrame([{
                    'Total Records': metrics.get('total_records', 0),
                    'Avg Variance %': metrics.get('average_variance_pct', 0),
                    'Within 5%': f"{metrics.get('within_5pct', 0):.1f}%",
                    'Within 10%': f"{metrics.get('within_10pct', 0):.1f}%"
                }])
                metrics_df.to_excel(writer, sheet_name='Accuracy', index=False)

        return output_path

    def save_database(self, filepath: str):
        """Save historical database to JSON."""
        data = {
            'projects': {
                pid: {
                    'project_id': p.project_id,
                    'project_name': p.project_name,
                    'project_type': p.project_type,
                    'location': p.location,
                    'status': p.status.value,
                    'estimated_total': p.estimated_total,
                    'actual_total': p.actual_total,
                    'start_date': p.start_date.isoformat(),
                    'completion_date': p.completion_date.isoformat() if p.completion_date else None
                }
                for pid, p in self._projects.items()
            },
            'records': [
                {
                    'project_id': r.project_id,
                    'work_item_code': r.work_item_code,
                    'quantity': r.quantity,
                    'estimated_cost': r.estimated_cost,
                    'actual_cost': r.actual_cost,
                    'completion_date': r.completion_date.isoformat(),
                    'notes': r.notes
                }
                for r in self._records
            ]
        }

        with open(filepath, 'w') as f:
            json.dump(data, f, indent=2)
Quick Start
from datetime import date

# Load CWICR data
cwicr = pd.read_parquet("ddc_cwicr_en.parquet")

# Initialize tracker
tracker = CWICRHistoricalCost(cwicr)

# Add project
tracker.add_project(
    project_id="PROJ-001",
    project_name="Office Building A",
    project_type="commercial",
    location="New York",
    estimated_total=5000000,
    start_date=date(2024, 1, 1)
)

# Record actual costs
tracker.record_actual_cost(
    project_id="PROJ-001",
    work_item_code="CONC-001",
    quantity=200,
    actual_cost=32000,
    notes="Slightly over due to overtime"
)
Common Use Cases
1. Accuracy Analysis
metrics = tracker.get_accuracy_metrics()
print(f"Within 10%: {metrics['within_10pct']:.1f}%")
2. Adjustment Factors
factors = tracker.suggest_adjustment_factors()
for cat, factor in factors.items():
    print(f"{cat}: {factor:.2f}x")
3. Work Item History
history = tracker.get_work_item_history("CONC-001")
print(f"Average variance: {history['average_variance_pct']}%")
Resources
按 MIT 许可原样转载,未经改动 · 在 GitHub 查看 →

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