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

Weather Api 1

by @phucanh08

Fetch weather data for construction scheduling. Historical data, forecasts, and risk assessment for outdoor work.

Versionv1.0.1
Downloads1,409
Installs4
TERMINAL
clawhub install weather-api-1

πŸ“– About This Skill


slug: "weather-api" display_name: "Weather API" description: "Fetch weather data for construction scheduling. Historical data, forecasts, and risk assessment for outdoor work."

Weather API for Construction

Overview

Weather impacts 50% of construction activities. This skill fetches weather data for scheduling, risk assessment, and productivity adjustments.

Python Implementation

import requests
import pandas as pd
from typing import Dict, Any, List, Optional
from dataclasses import dataclass
from datetime import datetime, timedelta
from enum import Enum

class WeatherRisk(Enum): """Weather risk levels for construction.""" LOW = "low" MODERATE = "moderate" HIGH = "high" CRITICAL = "critical"

@dataclass class WeatherCondition: """Weather condition at a point in time.""" timestamp: datetime temperature: float # Celsius humidity: float # Percent wind_speed: float # m/s precipitation: float # mm conditions: str

@dataclass class WorkabilityAssessment: """Assessment of weather workability.""" date: datetime risk_level: WeatherRisk workable_hours: int affected_activities: List[str] recommendations: List[str]

class WeatherAPIClient: """Client for weather APIs."""

# Free tier endpoints OPEN_METEO_BASE = "https://api.open-meteo.com/v1"

def __init__(self, api_key: Optional[str] = None): self.api_key = api_key

def get_forecast(self, latitude: float, longitude: float, days: int = 7) -> List[WeatherCondition]: """Get weather forecast.""" url = f"{self.OPEN_METEO_BASE}/forecast" params = { 'latitude': latitude, 'longitude': longitude, 'hourly': 'temperature_2m,relative_humidity_2m,wind_speed_10m,precipitation', 'forecast_days': days }

response = requests.get(url, params=params) if response.status_code != 200: raise Exception(f"API error: {response.status_code}")

data = response.json() return self._parse_forecast(data)

def get_historical(self, latitude: float, longitude: float, start_date: str, end_date: str) -> List[WeatherCondition]: """Get historical weather data.""" url = f"{self.OPEN_METEO_BASE}/archive" params = { 'latitude': latitude, 'longitude': longitude, 'start_date': start_date, 'end_date': end_date, 'hourly': 'temperature_2m,relative_humidity_2m,wind_speed_10m,precipitation' }

response = requests.get(url, params=params) if response.status_code != 200: raise Exception(f"API error: {response.status_code}")

data = response.json() return self._parse_forecast(data)

def _parse_forecast(self, data: Dict) -> List[WeatherCondition]: """Parse API response to WeatherCondition list.""" conditions = [] hourly = data.get('hourly', {})

times = hourly.get('time', []) temps = hourly.get('temperature_2m', []) humidity = hourly.get('relative_humidity_2m', []) wind = hourly.get('wind_speed_10m', []) precip = hourly.get('precipitation', [])

for i in range(len(times)): conditions.append(WeatherCondition( timestamp=datetime.fromisoformat(times[i]), temperature=temps[i] if i < len(temps) else 0, humidity=humidity[i] if i < len(humidity) else 0, wind_speed=wind[i] if i < len(wind) else 0, precipitation=precip[i] if i < len(precip) else 0, conditions=self._describe_conditions( temps[i] if i < len(temps) else 0, precip[i] if i < len(precip) else 0, wind[i] if i < len(wind) else 0 ) ))

return conditions

def _describe_conditions(self, temp: float, precip: float, wind: float) -> str: """Generate weather description.""" conditions = []

if temp < 0: conditions.append("Freezing") elif temp > 35: conditions.append("Extreme heat") elif temp > 30: conditions.append("Hot") elif temp < 10: conditions.append("Cold")

if precip > 10: conditions.append("Heavy rain") elif precip > 2: conditions.append("Rain") elif precip > 0: conditions.append("Light rain")

if wind > 15: conditions.append("Strong winds") elif wind > 10: conditions.append("Windy")

return ", ".join(conditions) if conditions else "Clear"

def to_dataframe(self, conditions: List[WeatherCondition]) -> pd.DataFrame: """Convert conditions to DataFrame.""" data = [{ 'timestamp': c.timestamp, 'temperature': c.temperature, 'humidity': c.humidity, 'wind_speed': c.wind_speed, 'precipitation': c.precipitation, 'conditions': c.conditions } for c in conditions] return pd.DataFrame(data)

class ConstructionWeatherRisk: """Assess weather risk for construction activities."""

# Activity-specific thresholds THRESHOLDS = { 'concrete_pour': { 'min_temp': 5, 'max_temp': 35, 'max_wind': 12, 'max_precip': 0.5 }, 'crane_work': { 'min_temp': -10, 'max_temp': 40, 'max_wind': 10, 'max_precip': 5 }, 'exterior_paint': { 'min_temp': 10, 'max_temp': 35, 'max_wind': 8, 'max_precip': 0 }, 'roofing': { 'min_temp': 5, 'max_temp': 38, 'max_wind': 12, 'max_precip': 0 }, 'earthwork': { 'min_temp': -5, 'max_temp': 40, 'max_wind': 20, 'max_precip': 10 } }

def assess_workability(self, condition: WeatherCondition, activities: List[str] = None) -> WorkabilityAssessment: """Assess workability for given conditions."""

if activities is None: activities = list(self.THRESHOLDS.keys())

affected = [] recommendations = []

for activity in activities: if activity in self.THRESHOLDS: thresh = self.THRESHOLDS[activity]

reasons = [] if condition.temperature < thresh['min_temp']: reasons.append(f"Too cold ({condition.temperature}Β°C)") if condition.temperature > thresh['max_temp']: reasons.append(f"Too hot ({condition.temperature}Β°C)") if condition.wind_speed > thresh['max_wind']: reasons.append(f"High wind ({condition.wind_speed} m/s)") if condition.precipitation > thresh['max_precip']: reasons.append(f"Precipitation ({condition.precipitation} mm)")

if reasons: affected.append(activity) recommendations.append(f"{activity}: " + ", ".join(reasons))

# Determine overall risk level if len(affected) >= len(activities) * 0.8: risk = WeatherRisk.CRITICAL workable = 0 elif len(affected) >= len(activities) * 0.5: risk = WeatherRisk.HIGH workable = 4 elif len(affected) > 0: risk = WeatherRisk.MODERATE workable = 6 else: risk = WeatherRisk.LOW workable = 8

return WorkabilityAssessment( date=condition.timestamp, risk_level=risk, workable_hours=workable, affected_activities=affected, recommendations=recommendations )

def weekly_forecast_risk(self, conditions: List[WeatherCondition], activities: List[str] = None) -> pd.DataFrame: """Assess risk for week of weather data."""

# Group by date daily_conditions = {} for c in conditions: date = c.timestamp.date() if date not in daily_conditions: daily_conditions[date] = [] daily_conditions[date].append(c)

assessments = [] for date, day_conditions in daily_conditions.items(): # Use midday condition as representative midday = [c for c in day_conditions if 10 <= c.timestamp.hour <= 16] representative = midday[len(midday)//2] if midday else day_conditions[0]

assessment = self.assess_workability(representative, activities) assessments.append({ 'date': date, 'risk_level': assessment.risk_level.value, 'workable_hours': assessment.workable_hours, 'affected_count': len(assessment.affected_activities) })

return pd.DataFrame(assessments)

Quick Start

# Initialize client
weather = WeatherAPIClient()

Get forecast for site

conditions = weather.get_forecast(latitude=52.52, longitude=13.41, days=7) df = weather.to_dataframe(conditions) print(df.head())

Assess construction risk

risk = ConstructionWeatherRisk() weekly_risk = risk.weekly_forecast_risk(conditions) print(weekly_risk)

Common Use Cases

1. Schedule Planning

conditions = weather.get_forecast(52.52, 13.41, days=14)
risk = ConstructionWeatherRisk()

Check concrete pour window

for c in conditions: assessment = risk.assess_workability(c, ['concrete_pour']) if assessment.risk_level == WeatherRisk.LOW: print(f"Good for concrete: {c.timestamp}")

2. Historical Analysis

historical = weather.get_historical(52.52, 13.41, '2024-01-01', '2024-03-31')
df = weather.to_dataframe(historical)

Count rain days

rain_days = df[df['precipitation'] > 2]['timestamp'].dt.date.nunique() print(f"Rain days in Q1: {rain_days}")

Resources

  • DDC Book: Chapter 2.2 - Open Data Integration
  • Open-Meteo API: https://open-meteo.com/
  • πŸ’‘ Examples

    # Initialize client
    weather = WeatherAPIClient()

    Get forecast for site

    conditions = weather.get_forecast(latitude=52.52, longitude=13.41, days=7) df = weather.to_dataframe(conditions) print(df.head())

    Assess construction risk

    risk = ConstructionWeatherRisk() weekly_risk = risk.weekly_forecast_risk(conditions) print(weekly_risk)