技能详情(站内镜像,无评论)
许可证:MIT-0
MIT-0 ·免费使用、修改和重新分发。无需归因。
版本:v2.1.0
统计:⭐ 0 · 990 · 1 current installs · 1 all-time installs
⭐ 0
安装量(当前) 1
🛡 VirusTotal :良性 · OpenClaw :良性
Package:datadrivenconstruction/price-api
安全扫描(ClawHub)
- VirusTotal :良性
- OpenClaw :良性
OpenClaw 评估
The skill's requirements and instructions are consistent with a construction material price-fetching helper; nothing in the provided files indicates hidden endpoints or unrelated credential requests, though a few minor mismatches (undeclared Python dependencies and unspecified database update mechanism) deserve attention.
目的
Name/description (fetch construction material prices, track trends) aligns with requested binaries (python3) and the SKILL.md which shows code calling public price APIs (FRED). The declared permissions (network, filesystem) in claw.json are reasonable for fetching remote data and reading/writing imports/exports.
说明范围
SKILL.md and instructions focus on fetching price data, computing trends, and exporting results. One minor scope ambiguity: the docs mention 'update cost databases' but do not specify how (no DB endpoints/credentials or config paths are declared). The skill also references reading user-provided files and exporting results, which matches filesystem permission.
安装机制
Instruction-only skill (no install spec) — low installation risk. However, the included Python example imports requests and pandas but the skill only declares python3 as a required binary and does not declare Python package dependencies or an install step, which could cause runtime issues or require the agent to install packages dynamically.
证书
The skill requests no environment variables or credentials. That matches the stated public-data use (FRED/public APIs). If you intend to have it 'update cost databases' or call paid APIs, you'll likely need to supply credentials manually — the skill does not request or store any by default.
持久
always is false and model invocation is allowed (default). The skill does request filesystem and network permissions (declared in claw.json) which are proportionate for reading user files, exporting results, and calling public APIs. It does not request persistent or elevated platform privileges.
综合结论
This skill appears to do what it says: fetch public price data and compute trends. Before installing: 1) Confirm you are comfortable granting filesystem and network access (needed to read uploads, export results, and call public APIs). 2) Expect the agent to call public endpoints such as api.stlouisfed.org; review the SKILL.md to confirm there are no other remote endpoints you don't expect. 3) The Python example uses requests and pandas but th…
安装(复制给龙虾 AI)
将下方整段复制到龙虾中文库对话中,由龙虾按 SKILL.md 完成安装。
请把本段交给龙虾中文库(龙虾 AI)执行:为本机安装 OpenClaw 技能「Price Api」。简介:Fetch construction material prices from open APIs. Track price trends, regional…。
请 fetch 以下地址读取 SKILL.md 并按文档完成安装:https://raw.githubusercontent.com/openclaw/skills/refs/heads/main/skills/datadrivenconstruction/price-api/SKILL.md
(来源:yingzhi8.cn 技能库)
SKILL.md
---
name: "price-api"
description: "Fetch construction material prices from open APIs. Track price trends, regional variations, and update cost databases."
homepage: "https://datadrivenconstruction.io"
metadata: {"openclaw": {"emoji": "🌐", "os": ["darwin", "linux", "win32"], "homepage": "https://datadrivenconstruction.io", "requires": {"bins": ["python3"]}}}
---
# Price API for Construction Materials
## Overview
Material prices fluctuate constantly. This skill fetches prices from open sources, tracks trends, and updates cost databases with current market data.
## Python Implementation
```python
import requests
import pandas as pd
from typing import Dict, Any, List, Optional
from dataclasses import dataclass, field
from datetime import datetime, timedelta
from enum import Enum
import json
class MaterialCategory(Enum):
"""Construction material categories."""
CONCRETE = "concrete"
STEEL = "steel"
LUMBER = "lumber"
COPPER = "copper"
ALUMINUM = "aluminum"
CEMENT = "cement"
AGGREGATES = "aggregates"
ASPHALT = "asphalt"
@dataclass
class MaterialPrice:
"""Material price point."""
material: str
price: float
unit: str
currency: str
source: str
date: datetime
region: str = ""
@dataclass
class PriceTrend:
"""Price trend analysis."""
material: str
current_price: float
week_change: float
month_change: float
year_change: float
trend_direction: str # 'up', 'down', 'stable'
class OpenPriceAPI:
"""Client for open material price APIs."""
# Commodity price sources
FRED_BASE = "https://api.stlouisfed.org/fred/series/observations"
# FRED Series IDs for construction commodities
FRED_SERIES = {
'steel': 'WPU101',
'lumber': 'WPS0811',
'concrete': 'WPU133',
'copper': 'PCOPPUSDM',
'aluminum': 'PALUMUSDM'
}
def __init__(self, fred_api_key: Optional[str] = None):
self.fred_api_key = fred_api_key
def get_fred_prices(self, material: str,
start_date: str = None,
end_date: str = None) -> List[MaterialPrice]:
"""Get prices from FRED API."""
if material.lower() not in self.FRED_SERIES:
return []
series_id = self.FRED_SERIES[material.lower()]
if start_date is None:
start_date = (datetime.now() - timedelta(days=365)).strftime('%Y-%m-%d')
if end_date is None:
end_date = datetime.now().strftime('%Y-%m-%d')
params = {
'series_id': series_id,
'observation_start': start_date,
'observation_end': end_date,
'file_type': 'json'
}
if self.fred_api_key:
params['api_key'] = self.fred_api_key
try:
response = requests.get(self.FRED_BASE, params=params)
if response.status_code != 200:
return []
data = response.json()
observations = data.get('observations', [])
prices = []
for obs in observations:
try:
price = float(obs['value'])
prices.append(MaterialPrice(
material=material,
price=price,
unit='index',
currency='USD',
source='FRED',
date=datetime.strptime(obs['date'], '%Y-%m-%d'),
region='US'
))
except (ValueError, KeyError):
continue
return prices
except Exception as e:
print(f"Error fetching FRED data: {e}")
return []
def to_dataframe(self, prices: List[MaterialPrice]) -> pd.DataFrame:
"""Convert prices to DataFrame."""
data = [{
'material': p.material,
'price': p.price,
'unit': p.unit,
'currency': p.currency,
'source': p.source,
'date': p.date,
'region': p.region
} for p in prices]
return pd.DataFrame(data)
class ConstructionPriceTracker:
"""Track and analyze construction material prices."""
# Default regional factors
REGIONAL_FACTORS = {
'US_National': 1.0,
'US_Northeast': 1.15,
'US_Southeast': 0.95,
'US_Midwest': 0.92,
'US_West': 1.10,
'Germany': 1.25,
'UK': 1.20,
'France': 1.18
}
def __init__(self):
self.price_cache: Dict[str, pd.DataFrame] = {}
def calculate_trend(self, prices: pd.DataFrame) -> PriceTrend:
"""Calculate price trend from historical data."""
if prices.empty or 'price' not in prices.columns:
return None
prices = prices.sort_values('date')
current = prices['price'].iloc[-1]
# Calculate changes
week_ago_idx = len(prices) - 7 if len(prices) >= 7 else 0
month_ago_idx = len(prices) - 30 if len(prices) >= 30 else 0
year_ago_idx = len(prices) - 365 if len(prices) >= 365 else 0
week_price = prices['price'].iloc[week_ago_idx]
month_price = prices['price'].iloc[month_ago_idx]
year_price = prices['price'].iloc[year_ago_idx]
week_change = ((current - week_price) / week_price * 100) if week_price else 0
month_change = ((current - month_price) / month_price * 100) if month_price else 0
year_change = ((current - year_price) / year_price * 100) if year_price else 0
# Determine trend
if month_change > 5:
trend = 'up'
elif month_change < -5:
trend = 'down'
else:
trend = 'stable'
return PriceTrend(
material=prices['material'].iloc[0],
current_price=current,
week_change=round(week_change, 2),
month_change=round(month_change, 2),
year_change=round(year_change, 2),
trend_direction=trend
)
def apply_regional_factor(self, base_price: float,
region: str) -> float:
"""Apply regional price factor."""
factor = self.REGIONAL_FACTORS.get(region, 1.0)
return base_price * factor
def update_cost_database(self, cost_df: pd.DataFrame,
price_updates: Dict[str, float],
date_column: str = 'last_updated') -> pd.DataFrame:
"""Update cost database with new prices."""
updated = cost_df.copy()
for material, price in price_updates.items():
# Find rows with this material
mask = updated['material'].str.lower() == material.lower()
if mask.any():
# Calculate adjustment factor
old_price = updated.loc[mask, 'unit_price'].mean()
factor = price / old_price if old_price > 0 else 1
# Update prices
updated.loc[mask, 'unit_price'] *= factor
updated.loc[mask, date_column] = datetime.now()
return updated
class MaterialPriceEstimator:
"""Estimate material prices when API data unavailable."""
# Reference prices (USD per unit, as of 2024)
REFERENCE_PRICES = {
'concrete_m3': 120,
'rebar_ton': 800,
'structural_steel_ton': 1200,
'lumber_mbf': 450,
'copper_wire_kg': 12,
'brick_1000': 550,
'cement_ton': 130,
'sand_m3': 35,
'gravel_m3': 40,
'drywall_m2': 8,
'insulation_m2': 25
}
def estimate_price(self, material: str,
region: str = 'US_National',
inflation_adjustment: float = 0) -> float:
"""Estimate current price for material."""
base_price = self.REFERENCE_PRICES.get(material, 0)
if base_price == 0:
return 0
# Apply inflation
adjusted = base_price * (1 + inflation_adjustment)
# Apply regional factor
tracker = ConstructionPriceTracker()
return tracker.apply_regional_factor(adjusted, region)
def bulk_estimate(self, materials: List[str],
region: str = 'US_National') -> pd.DataFrame:
"""Estimate prices for multiple materials."""
estimates = []
for material in materials:
price = self.estimate_price(material, region)
estimates.append({
'material': material,
'estimated_price': price,
'region': region,
'source': 'estimate',
'date': datetime.now()
})
return pd.DataFrame(estimates)
```
## Quick Start
```python
# Initialize price API
api = OpenPriceAPI(fred_api_key="your_key")
# Get steel prices
steel_prices = api.get_fred_prices('steel')
df = api.to_dataframe(steel_prices)
print(df.tail())
# Analyze trend
tracker = ConstructionPriceTracker()
trend = tracker.calculate_trend(df)
print(f"Steel trend: {trend.trend_direction}, YoY: {trend.year_change}%")
```
## Common Use Cases
### 1. Update Cost Database
```python
tracker = ConstructionPriceTracker()
# New prices from market
updates = {'steel': 1250, 'concrete': 135, 'lumber': 480}
# Update database
updated_db = tracker.update_cost_database(cost_df, updates)
```
### 2. Regional Pricing
```python
base_price = 120 # concrete USD/m3
berlin_price = tracker.apply_regional_factor(base_price, 'Germany')
print(f"Berlin price: ${berlin_price}/m3")
```
### 3. Bulk Estimation
```python
estimator = MaterialPriceEstimator()
materials = ['concrete_m3', 'rebar_ton', 'lumber_mbf']
estimates = estimator.bulk_estimate(materials, region='US_West')
print(estimates)
```
## Resources
- **DDC Book**: Chapter 2.2 - Open Data Sources
- **FRED API**: https://fred.stlouisfed.org/docs/api/