🎁 Get the FREE AI Skills Starter Guide β€” Subscribe β†’
BytesAgainBytesAgain
πŸ¦€ ClawHub

Unit Price Database Manager

by @datadrivenconstruction

Manage construction unit price databases: update prices, track vendors, apply location factors, maintain historical records. Essential for accurate estimating.

Versionv2.0.0
Downloads1,843
Installs2
TERMINAL
clawhub install unit-price-database-manager

πŸ“– About This Skill


name: "unit-price-database-manager" description: "Manage construction unit price databases: update prices, track vendors, apply location factors, maintain historical records. Essential for accurate estimating."

Unit Price Database Manager for Construction

Overview

Manage and maintain construction unit price databases. Update prices from vendors, apply location and time adjustments, track price history, and ensure estimating accuracy.

Business Case

Accurate unit prices are critical for:

  • Competitive Bids: Win work with accurate pricing
  • Cost Control: Avoid budget surprises
  • Vendor Management: Track supplier pricing
  • Historical Analysis: Understand price trends
  • Technical Implementation

    from dataclasses import dataclass, field
    from typing import List, Dict, Any, Optional
    from datetime import datetime, date
    from decimal import Decimal
    import pandas as pd
    import json

    @dataclass class UnitPrice: code: str description: str unit: str base_price: Decimal labor_cost: Decimal material_cost: Decimal equipment_cost: Decimal effective_date: date expiration_date: Optional[date] = None source: str = "" vendor: str = "" location: str = "National Average" notes: str = "" tags: List[str] = field(default_factory=list)

    @dataclass class PriceUpdate: code: str old_price: Decimal new_price: Decimal change_pct: float updated_at: datetime updated_by: str reason: str

    @dataclass class VendorQuote: vendor_name: str item_code: str quoted_price: Decimal quote_date: date valid_until: date quantity_break: Optional[int] = None notes: str = ""

    class UnitPriceDatabaseManager: """Manage construction unit price databases."""

    # Location adjustment factors LOCATION_FACTORS = { 'New York': 1.32, 'San Francisco': 1.28, 'Los Angeles': 1.15, 'Chicago': 1.12, 'Boston': 1.18, 'Seattle': 1.08, 'Denver': 1.02, 'National Average': 1.00, 'Houston': 0.92, 'Dallas': 0.89, 'Phoenix': 0.93, 'Atlanta': 0.91, 'Miami': 0.95 }

    def __init__(self, db_path: str = None): self.prices: Dict[str, UnitPrice] = {} self.price_history: Dict[str, List[UnitPrice]] = {} self.vendor_quotes: Dict[str, List[VendorQuote]] = {} self.updates: List[PriceUpdate] = [] self.db_path = db_path

    def add_price(self, price: UnitPrice) -> str: """Add or update a unit price.""" code = price.code

    # Track history if code in self.prices: if code not in self.price_history: self.price_history[code] = [] self.price_history[code].append(self.prices[code])

    # Record update old_price = self.prices[code].base_price if old_price != price.base_price: change_pct = float((price.base_price - old_price) / old_price * 100) self.updates.append(PriceUpdate( code=code, old_price=old_price, new_price=price.base_price, change_pct=change_pct, updated_at=datetime.now(), updated_by="system", reason="Price update" ))

    self.prices[code] = price return code

    def get_price(self, code: str, location: str = None, as_of_date: date = None) -> Optional[UnitPrice]: """Get unit price with optional location adjustment.""" if code not in self.prices: return None

    price = self.prices[code]

    # Check date validity if as_of_date: if price.effective_date > as_of_date: # Look in history if code in self.price_history: for hist_price in reversed(self.price_history[code]): if hist_price.effective_date <= as_of_date: if hist_price.expiration_date is None or hist_price.expiration_date >= as_of_date: price = hist_price break

    if price.expiration_date and price.expiration_date < as_of_date: return None

    # Apply location factor if location and location != price.location: adjusted = UnitPrice( code=price.code, description=price.description, unit=price.unit, base_price=self._apply_location_factor(price.base_price, price.location, location), labor_cost=self._apply_location_factor(price.labor_cost, price.location, location), material_cost=price.material_cost, # Materials less location-sensitive equipment_cost=self._apply_location_factor(price.equipment_cost, price.location, location), effective_date=price.effective_date, expiration_date=price.expiration_date, source=price.source, vendor=price.vendor, location=location, notes=f"Adjusted from {price.location}", tags=price.tags ) return adjusted

    return price

    def _apply_location_factor(self, amount: Decimal, from_loc: str, to_loc: str) -> Decimal: """Apply location adjustment factor.""" from_factor = self.LOCATION_FACTORS.get(from_loc, 1.0) to_factor = self.LOCATION_FACTORS.get(to_loc, 1.0) return Decimal(str(float(amount) * to_factor / from_factor))

    def apply_escalation(self, percentage: float, categories: List[str] = None, effective_date: date = None) -> int: """Apply escalation to prices.""" if effective_date is None: effective_date = date.today()

    count = 0 factor = Decimal(str(1 + percentage / 100))

    for code, price in self.prices.items(): if categories and not any(tag in price.tags for tag in categories): continue

    old_price = price.base_price new_price = UnitPrice( code=price.code, description=price.description, unit=price.unit, base_price=price.base_price * factor, labor_cost=price.labor_cost * factor, material_cost=price.material_cost * factor, equipment_cost=price.equipment_cost * factor, effective_date=effective_date, source=f"Escalated {percentage}% from {price.source}", vendor=price.vendor, location=price.location, tags=price.tags )

    self.add_price(new_price) count += 1

    return count

    def add_vendor_quote(self, quote: VendorQuote): """Add a vendor quote.""" code = quote.item_code if code not in self.vendor_quotes: self.vendor_quotes[code] = [] self.vendor_quotes[code].append(quote)

    def get_best_price(self, code: str, quantity: int = 1) -> Optional[Dict]: """Get best available price from vendors.""" if code not in self.vendor_quotes: return None

    valid_quotes = [] today = date.today()

    for quote in self.vendor_quotes[code]: if quote.valid_until >= today: if quote.quantity_break is None or quantity >= quote.quantity_break: valid_quotes.append(quote)

    if not valid_quotes: return None

    best = min(valid_quotes, key=lambda q: q.quoted_price)

    return { 'vendor': best.vendor_name, 'price': best.quoted_price, 'valid_until': best.valid_until, 'all_quotes': [ {'vendor': q.vendor_name, 'price': q.quoted_price} for q in sorted(valid_quotes, key=lambda x: x.quoted_price) ] }

    def search_prices(self, query: str = None, category: str = None, min_price: float = None, max_price: float = None) -> List[UnitPrice]: """Search prices by various criteria.""" results = []

    for code, price in self.prices.items(): # Text search if query: query_lower = query.lower() if (query_lower not in code.lower() and query_lower not in price.description.lower()): continue

    # Category filter if category and category not in price.tags: continue

    # Price range if min_price and float(price.base_price) < min_price: continue if max_price and float(price.base_price) > max_price: continue

    results.append(price)

    return results

    def get_price_history(self, code: str) -> List[Dict]: """Get price history for an item.""" history = []

    if code in self.price_history: for price in self.price_history[code]: history.append({ 'date': price.effective_date, 'price': float(price.base_price), 'source': price.source })

    if code in self.prices: history.append({ 'date': self.prices[code].effective_date, 'price': float(self.prices[code].base_price), 'source': self.prices[code].source })

    return sorted(history, key=lambda x: x['date'])

    def analyze_price_trends(self, code: str) -> Dict: """Analyze price trends for an item.""" history = self.get_price_history(code)

    if len(history) < 2: return {'trend': 'insufficient_data'}

    prices = [h['price'] for h in history] dates = [h['date'] for h in history]

    # Calculate changes first_price = prices[0] last_price = prices[-1] total_change = (last_price - first_price) / first_price * 100

    # Calculate annualized rate days = (dates[-1] - dates[0]).days years = days / 365.25 if years > 0: annual_rate = ((last_price / first_price) ** (1 / years) - 1) * 100 else: annual_rate = 0

    return { 'code': code, 'first_price': first_price, 'last_price': last_price, 'total_change_pct': total_change, 'annual_rate_pct': annual_rate, 'data_points': len(history), 'period_years': years, 'trend': 'increasing' if total_change > 5 else 'decreasing' if total_change < -5 else 'stable' }

    def import_from_csv(self, file_path: str) -> int: """Import prices from CSV file.""" df = pd.read_csv(file_path) count = 0

    for _, row in df.iterrows(): price = UnitPrice( code=row['code'], description=row['description'], unit=row['unit'], base_price=Decimal(str(row['base_price'])), labor_cost=Decimal(str(row.get('labor_cost', 0))), material_cost=Decimal(str(row.get('material_cost', 0))), equipment_cost=Decimal(str(row.get('equipment_cost', 0))), effective_date=date.today() if 'effective_date' not in row else pd.to_datetime(row['effective_date']).date(), source=row.get('source', 'CSV Import'), tags=row.get('tags', '').split(',') if 'tags' in row else [] ) self.add_price(price) count += 1

    return count

    def export_to_csv(self, file_path: str, location: str = None) -> int: """Export prices to CSV file.""" data = []

    for code, price in self.prices.items(): if location: price = self.get_price(code, location)

    data.append({ 'code': price.code, 'description': price.description, 'unit': price.unit, 'base_price': float(price.base_price), 'labor_cost': float(price.labor_cost), 'material_cost': float(price.material_cost), 'equipment_cost': float(price.equipment_cost), 'location': price.location, 'effective_date': price.effective_date.isoformat(), 'source': price.source, 'tags': ','.join(price.tags) })

    df = pd.DataFrame(data) df.to_csv(file_path, index=False) return len(data)

    def validate_prices(self) -> List[Dict]: """Validate prices for issues.""" issues = []

    for code, price in self.prices.items(): # Check for expired prices if price.expiration_date and price.expiration_date < date.today(): issues.append({ 'code': code, 'issue': 'expired', 'message': f"Price expired on {price.expiration_date}" })

    # Check for old prices age_days = (date.today() - price.effective_date).days if age_days > 365: issues.append({ 'code': code, 'issue': 'stale', 'message': f"Price is {age_days} days old" })

    # Check for zero prices if price.base_price <= 0: issues.append({ 'code': code, 'issue': 'invalid', 'message': "Zero or negative price" })

    # Check component breakdown total_components = price.labor_cost + price.material_cost + price.equipment_cost if total_components > 0 and abs(float(price.base_price - total_components)) > 0.01: issues.append({ 'code': code, 'issue': 'mismatch', 'message': f"Component costs don't match total: {total_components} vs {price.base_price}" })

    return issues

    def generate_report(self) -> str: """Generate database status report.""" lines = ["# Unit Price Database Report", ""] lines.append(f"Generated: {datetime.now().strftime('%Y-%m-%d %H:%M')}") lines.append(f"Total Items: {len(self.prices):,}") lines.append("")

    # Category breakdown categories = {} for price in self.prices.values(): for tag in price.tags: categories[tag] = categories.get(tag, 0) + 1

    if categories: lines.append("## Items by Category") for cat, count in sorted(categories.items(), key=lambda x: -x[1]): lines.append(f"- {cat}: {count}") lines.append("")

    # Recent updates recent_updates = sorted(self.updates, key=lambda x: x.updated_at, reverse=True)[:10] if recent_updates: lines.append("## Recent Updates") for update in recent_updates: lines.append(f"- {update.code}: {update.change_pct:+.1f}% on {update.updated_at.strftime('%Y-%m-%d')}") lines.append("")

    # Validation issues issues = self.validate_prices() if issues: lines.append("## Validation Issues") lines.append(f"Total issues: {len(issues)}") for issue in issues[:10]: lines.append(f"- {issue['code']}: {issue['message']}")

    return "\n".join(lines)

    Quick Start

    from decimal import Decimal
    from datetime import date

    Initialize manager

    manager = UnitPriceDatabaseManager()

    Add unit prices

    manager.add_price(UnitPrice( code="033000.10", description="Cast-in-place concrete, 4000 PSI", unit="CY", base_price=Decimal("450.00"), labor_cost=Decimal("150.00"), material_cost=Decimal("250.00"), equipment_cost=Decimal("50.00"), effective_date=date(2026, 1, 1), source="RSMeans 2026", tags=["concrete", "structural"] ))

    Get price with location adjustment

    price = manager.get_price("033000.10", location="New York") print(f"NYC price: ${price.base_price}/CY")

    Add vendor quote

    manager.add_vendor_quote(VendorQuote( vendor_name="ABC Concrete", item_code="033000.10", quoted_price=Decimal("420.00"), quote_date=date.today(), valid_until=date(2026, 3, 31) ))

    Get best price

    best = manager.get_best_price("033000.10") print(f"Best price: ${best['price']} from {best['vendor']}")

    Apply escalation

    count = manager.apply_escalation(3.5, categories=["concrete"]) print(f"Escalated {count} items by 3.5%")

    Generate report

    print(manager.generate_report())

    Dependencies

    pip install pandas
    

    πŸ’‘ Examples

    from decimal import Decimal
    from datetime import date

    Initialize manager

    manager = UnitPriceDatabaseManager()

    Add unit prices

    manager.add_price(UnitPrice( code="033000.10", description="Cast-in-place concrete, 4000 PSI", unit="CY", base_price=Decimal("450.00"), labor_cost=Decimal("150.00"), material_cost=Decimal("250.00"), equipment_cost=Decimal("50.00"), effective_date=date(2026, 1, 1), source="RSMeans 2026", tags=["concrete", "structural"] ))

    Get price with location adjustment

    price = manager.get_price("033000.10", location="New York") print(f"NYC price: ${price.base_price}/CY")

    Add vendor quote

    manager.add_vendor_quote(VendorQuote( vendor_name="ABC Concrete", item_code="033000.10", quoted_price=Decimal("420.00"), quote_date=date.today(), valid_until=date(2026, 3, 31) ))

    Get best price

    best = manager.get_best_price("033000.10") print(f"Best price: ${best['price']} from {best['vendor']}")

    Apply escalation

    count = manager.apply_escalation(3.5, categories=["concrete"]) print(f"Escalated {count} items by 3.5%")

    Generate report

    print(manager.generate_report())