‹ 首页

cwicr-subcontractor

@datadrivenconstruction · 收录于 1 周前

Analyze and compare subcontractor bids against CWICR benchmarks. Evaluate pricing, identify outliers, and support negotiation.

适合你,如果常需审核分包商报价并判断合理性

/ 下载安装
cwicr-subcontractor.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-subcontractor
/ 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-subcontractor
/ 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-subcontractor
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。
235GitHub stars
~2K最小装载
~2K含声明引用
~2.4K文本包总量
镜像托管

怎么用

技能原文 SKILL.md作者撰写 · MIT · 34e0d78

CWICR Subcontractor Analyzer

Business Case
Problem Statement

Evaluating subcontractor bids requires:

  • Fair price benchmarks
  • Bid comparison
  • Outlier identification
  • Negotiation support
Solution

Compare subcontractor bids against CWICR cost data to identify fair pricing, outliers, and negotiation opportunities.

Business Value
  • Fair evaluation - Objective benchmarks
  • Cost savings - Identify overpriced bids
  • Risk detection - Flag unrealistic low bids
  • Negotiation support - Data-driven discussions
Technical Implementation
import pandas as pd
import numpy as np
from typing import Dict, Any, List, Optional
from dataclasses import dataclass
from enum import Enum
from statistics import mean, stdev


class BidStatus(Enum):
    """Bid evaluation status."""
    COMPETITIVE = "competitive"
    HIGH = "high"
    LOW = "low"
    OUTLIER_HIGH = "outlier_high"
    OUTLIER_LOW = "outlier_low"


@dataclass
class SubcontractorBid:
    """Subcontractor bid."""
    subcontractor_name: str
    trade: str
    bid_amount: float
    scope_items: List[Dict[str, Any]]
    includes_material: bool
    includes_labor: bool
    includes_equipment: bool
    duration_days: int
    notes: str = ""


@dataclass
class BidEvaluation:
    """Bid evaluation result."""
    subcontractor_name: str
    bid_amount: float
    benchmark_cost: float
    variance: float
    variance_percent: float
    status: BidStatus
    line_item_analysis: List[Dict[str, Any]]
    recommendation: str


class CWICRSubcontractor:
    """Analyze subcontractor bids using CWICR data."""

    OUTLIER_THRESHOLD = 0.30  # 30% from benchmark
    HIGH_THRESHOLD = 0.15    # 15% above benchmark
    LOW_THRESHOLD = -0.10    # 10% below benchmark

    def __init__(self,
                 cwicr_data: pd.DataFrame,
                 overhead_rate: float = 0.12,
                 profit_rate: float = 0.10):
        self.cost_data = cwicr_data
        self.overhead_rate = overhead_rate
        self.profit_rate = profit_rate
        self._index_data()

    def _index_data(self):
        """Index cost data."""
        if 'work_item_code' in self.cost_data.columns:
            self._code_index = self.cost_data.set_index('work_item_code')
        else:
            self._code_index = None

    def calculate_benchmark(self,
                            scope_items: List[Dict[str, Any]],
                            include_overhead: bool = True,
                            include_profit: bool = True) -> Dict[str, Any]:
        """Calculate benchmark cost for scope."""

        labor = 0
        material = 0
        equipment = 0

        line_items = []

        for item in scope_items:
            code = item.get('work_item_code', item.get('code'))
            qty = item.get('quantity', 0)

            if self._code_index is not None and code in self._code_index.index:
                wi = self._code_index.loc[code]
                item_labor = float(wi.get('labor_cost', 0) or 0) * qty
                item_material = float(wi.get('material_cost', 0) or 0) * qty
                item_equipment = float(wi.get('equipment_cost', 0) or 0) * qty

                labor += item_labor
                material += item_material
                equipment += item_equipment

                line_items.append({
                    'code': code,
                    'quantity': qty,
                    'labor': round(item_labor, 2),
                    'material': round(item_material, 2),
                    'equipment': round(item_equipment, 2),
                    'total': round(item_labor + item_material + item_equipment, 2)
                })

        direct_cost = labor + material + equipment

        overhead = direct_cost * self.overhead_rate if include_overhead else 0
        profit = (direct_cost + overhead) * self.profit_rate if include_profit else 0

        return {
            'labor': round(labor, 2),
            'material': round(material, 2),
            'equipment': round(equipment, 2),
            'direct_cost': round(direct_cost, 2),
            'overhead': round(overhead, 2),
            'profit': round(profit, 2),
            'total': round(direct_cost + overhead + profit, 2),
            'line_items': line_items
        }

    def evaluate_bid(self, bid: SubcontractorBid) -> BidEvaluation:
        """Evaluate single subcontractor bid."""

        benchmark = self.calculate_benchmark(bid.scope_items)
        benchmark_cost = benchmark['total']

        variance = bid.bid_amount - benchmark_cost
        variance_pct = (variance / benchmark_cost * 100) if benchmark_cost > 0 else 0

        # Determine status
        if variance_pct > self.OUTLIER_THRESHOLD * 100:
            status = BidStatus.OUTLIER_HIGH
            recommendation = "Bid significantly above benchmark. Request detailed breakdown or reject."
        elif variance_pct < -self.OUTLIER_THRESHOLD * 100:
            status = BidStatus.OUTLIER_LOW
            recommendation = "Bid significantly below benchmark. Verify scope understanding and capacity."
        elif variance_pct > self.HIGH_THRESHOLD * 100:
            status = BidStatus.HIGH
            recommendation = "Bid above benchmark. Consider negotiation or alternative bidders."
        elif variance_pct < self.LOW_THRESHOLD * 100:
            status = BidStatus.LOW
            recommendation = "Bid below benchmark. Verify completeness and quality approach."
        else:
            status = BidStatus.COMPETITIVE
            recommendation = "Bid within acceptable range. Proceed with standard evaluation."

        # Line item analysis
        line_analysis = []
        for i, item in enumerate(bid.scope_items):
            if i < len(benchmark['line_items']):
                bench_item = benchmark['line_items'][i]
                # Assume proportional pricing
                expected = bench_item['total'] / benchmark['direct_cost'] * bid.bid_amount if benchmark['direct_cost'] > 0 else 0
                line_analysis.append({
                    'code': item.get('work_item_code', item.get('code')),
                    'benchmark': bench_item['total'],
                    'expected_in_bid': round(expected, 2)
                })

        return BidEvaluation(
            subcontractor_name=bid.subcontractor_name,
            bid_amount=bid.bid_amount,
            benchmark_cost=benchmark_cost,
            variance=round(variance, 2),
            variance_percent=round(variance_pct, 1),
            status=status,
            line_item_analysis=line_analysis,
            recommendation=recommendation
        )

    def compare_bids(self,
                      bids: List[SubcontractorBid]) -> Dict[str, Any]:
        """Compare multiple bids."""

        if not bids:
            return {}

        evaluations = [self.evaluate_bid(bid) for bid in bids]

        # Statistics
        amounts = [e.bid_amount for e in evaluations]
        avg_bid = mean(amounts)
        std_bid = stdev(amounts) if len(amounts) > 1 else 0

        # Rank by variance from benchmark
        ranked = sorted(evaluations, key=lambda x: abs(x.variance_percent))

        # Find best value
        competitive = [e for e in evaluations if e.status == BidStatus.COMPETITIVE]
        if competitive:
            best_value = min(competitive, key=lambda x: x.bid_amount)
        else:
            best_value = ranked[0]

        # Identify outliers
        outliers = [e for e in evaluations if e.status in [BidStatus.OUTLIER_HIGH, BidStatus.OUTLIER_LOW]]

        return {
            'bid_count': len(bids),
            'average_bid': round(avg_bid, 2),
            'std_deviation': round(std_bid, 2),
            'spread': round(max(amounts) - min(amounts), 2),
            'spread_percent': round((max(amounts) - min(amounts)) / avg_bid * 100, 1) if avg_bid > 0 else 0,
            'benchmark': evaluations[0].benchmark_cost,
            'best_value': {
                'name': best_value.subcontractor_name,
                'amount': best_value.bid_amount,
                'variance_from_benchmark': best_value.variance_percent
            },
            'lowest_bid': {
                'name': min(evaluations, key=lambda x: x.bid_amount).subcontractor_name,
                'amount': min(amounts)
            },
            'outliers': [
                {'name': e.subcontractor_name, 'status': e.status.value, 'variance': e.variance_percent}
                for e in outliers
            ],
            'evaluations': evaluations
        }

    def generate_negotiation_points(self,
                                     evaluation: BidEvaluation) -> List[Dict[str, Any]]:
        """Generate negotiation points based on evaluation."""

        points = []

        if evaluation.status in [BidStatus.HIGH, BidStatus.OUTLIER_HIGH]:
            points.append({
                'topic': 'Overall Price',
                'benchmark': evaluation.benchmark_cost,
                'bid': evaluation.bid_amount,
                'target': round(evaluation.benchmark_cost * 1.05, 2),  # 5% above benchmark
                'potential_savings': round(evaluation.bid_amount - evaluation.benchmark_cost * 1.05, 2)
            })

            # Suggest line item discussions
            for item in evaluation.line_item_analysis:
                points.append({
                    'topic': f"Line Item: {item['code']}",
                    'benchmark': item['benchmark'],
                    'suggestion': 'Request detailed breakdown'
                })

        return points

    def export_bid_comparison(self,
                               comparison: Dict[str, Any],
                               output_path: str) -> str:
        """Export bid comparison to Excel."""

        with pd.ExcelWriter(output_path, engine='openpyxl') as writer:
            # Summary
            summary_df = pd.DataFrame([{
                'Number of Bids': comparison['bid_count'],
                'Average Bid': comparison['average_bid'],
                'Spread': comparison['spread'],
                'Spread %': comparison['spread_percent'],
                'Benchmark': comparison['benchmark'],
                'Best Value Bidder': comparison['best_value']['name'],
                'Lowest Bidder': comparison['lowest_bid']['name']
            }])
            summary_df.to_excel(writer, sheet_name='Summary', index=False)

            # All evaluations
            eval_df = pd.DataFrame([
                {
                    'Subcontractor': e.subcontractor_name,
                    'Bid Amount': e.bid_amount,
                    'Benchmark': e.benchmark_cost,
                    'Variance': e.variance,
                    'Variance %': e.variance_percent,
                    'Status': e.status.value,
                    'Recommendation': e.recommendation
                }
                for e in comparison['evaluations']
            ])
            eval_df.to_excel(writer, sheet_name='Evaluations', index=False)

        return output_path
Quick Start
# Load CWICR data
cwicr = pd.read_parquet("ddc_cwicr_en.parquet")

# Initialize analyzer
analyzer = CWICRSubcontractor(cwicr)

# Define scope
scope = [
    {'work_item_code': 'ELEC-001', 'quantity': 100},
    {'work_item_code': 'ELEC-002', 'quantity': 50}
]

# Create bid
bid = SubcontractorBid(
    subcontractor_name="ABC Electric",
    trade="Electrical",
    bid_amount=75000,
    scope_items=scope,
    includes_material=True,
    includes_labor=True,
    includes_equipment=True,
    duration_days=30
)

# Evaluate
evaluation = analyzer.evaluate_bid(bid)
print(f"Status: {evaluation.status.value}")
print(f"Variance: {evaluation.variance_percent}%")
print(f"Recommendation: {evaluation.recommendation}")
Common Use Cases
1. Compare Multiple Bids
bids = [
    SubcontractorBid("ABC Electric", "Electrical", 75000, scope, True, True, True, 30),
    SubcontractorBid("XYZ Power", "Electrical", 68000, scope, True, True, True, 35),
    SubcontractorBid("Quick Elec", "Electrical", 82000, scope, True, True, True, 25)
]

comparison = analyzer.compare_bids(bids)
print(f"Best Value: {comparison['best_value']['name']}")
2. Negotiation Support
points = analyzer.generate_negotiation_points(evaluation)
for point in points:
    print(f"{point['topic']}: Target ${point.get('target', 'N/A')}")
3. Export Report
analyzer.export_bid_comparison(comparison, "bid_comparison.xlsx")
Resources
按 MIT 许可原样转载,未经改动 · 在 GitHub 查看 →

评论

登录即可评论;带「已验证安装」的,是发布者名下有本店的安装或持有记录。