Claude-skill-registry airflow-dag
Create Apache Airflow DAGs for construction data pipelines. Orchestrate ETL, validation, and reporting workflows.
install
source · Clone the upstream repo
git clone https://github.com/majiayu000/claude-skill-registry
Claude Code · Install into ~/.claude/skills/
T=$(mktemp -d) && git clone --depth=1 https://github.com/majiayu000/claude-skill-registry "$T" && mkdir -p ~/.claude/skills && cp -r "$T/skills/data/airflow-dag" ~/.claude/skills/majiayu000-claude-skill-registry-airflow-dag && rm -rf "$T"
manifest:
skills/data/airflow-dag/SKILL.mdsource content
Apache Airflow DAG for Construction
Overview
Apache Airflow orchestrates complex data pipelines. This skill creates DAGs for construction ETL processes - from BIM extraction to cost reports.
Python Implementation
from datetime import datetime, timedelta from typing import Dict, Any, List, Optional, Callable from dataclasses import dataclass from enum import Enum import json class TaskStatus(Enum): """Task execution status.""" PENDING = "pending" RUNNING = "running" SUCCESS = "success" FAILED = "failed" SKIPPED = "skipped" @dataclass class DAGTask: """Single task in DAG.""" task_id: str operator: str params: Dict[str, Any] upstream: List[str] downstream: List[str] @dataclass class DAGConfig: """DAG configuration.""" dag_id: str schedule: str start_date: datetime catchup: bool default_args: Dict[str, Any] tags: List[str] class ConstructionDAGBuilder: """Build Airflow DAGs for construction pipelines.""" # Default DAG arguments DEFAULT_ARGS = { 'owner': 'ddc', 'depends_on_past': False, 'email_on_failure': True, 'email_on_retry': False, 'retries': 2, 'retry_delay': timedelta(minutes=5), 'execution_timeout': timedelta(hours=2) } def __init__(self, dag_id: str, schedule: str = '@daily', tags: List[str] = None): self.dag_id = dag_id self.schedule = schedule self.tags = tags or ['construction', 'ddc'] self.tasks: Dict[str, DAGTask] = {} def add_bash_task(self, task_id: str, command: str, upstream: List[str] = None) -> str: """Add bash command task.""" self.tasks[task_id] = DAGTask( task_id=task_id, operator='BashOperator', params={'bash_command': command}, upstream=upstream or [], downstream=[] ) self._update_downstream(task_id, upstream) return task_id def add_python_task(self, task_id: str, python_callable: str, op_kwargs: Dict = None, upstream: List[str] = None) -> str: """Add Python callable task.""" self.tasks[task_id] = DAGTask( task_id=task_id, operator='PythonOperator', params={ 'python_callable': python_callable, 'op_kwargs': op_kwargs or {} }, upstream=upstream or [], downstream=[] ) self._update_downstream(task_id, upstream) return task_id def add_sensor_task(self, task_id: str, filepath: str, upstream: List[str] = None) -> str: """Add file sensor task.""" self.tasks[task_id] = DAGTask( task_id=task_id, operator='FileSensor', params={ 'filepath': filepath, 'poke_interval': 300, 'timeout': 3600 }, upstream=upstream or [], downstream=[] ) self._update_downstream(task_id, upstream) return task_id def add_branch_task(self, task_id: str, python_callable: str, upstream: List[str] = None) -> str: """Add branching task.""" self.tasks[task_id] = DAGTask( task_id=task_id, operator='BranchPythonOperator', params={'python_callable': python_callable}, upstream=upstream or [], downstream=[] ) self._update_downstream(task_id, upstream) return task_id def _update_downstream(self, task_id: str, upstream: List[str]): """Update downstream references.""" if upstream: for up_task in upstream: if up_task in self.tasks: self.tasks[up_task].downstream.append(task_id) def generate_dag_code(self) -> str: """Generate Airflow DAG Python code.""" code = ''' from airflow import DAG from airflow.operators.bash import BashOperator from airflow.operators.python import PythonOperator, BranchPythonOperator from airflow.sensors.filesystem import FileSensor from datetime import datetime, timedelta default_args = { 'owner': 'ddc', 'depends_on_past': False, 'email_on_failure': True, 'retries': 2, 'retry_delay': timedelta(minutes=5), } ''' code += f''' with DAG( dag_id='{self.dag_id}', default_args=default_args, schedule_interval='{self.schedule}', start_date=datetime(2024, 1, 1), catchup=False, tags={self.tags} ) as dag: ''' # Generate task definitions for task_id, task in self.tasks.items(): code += self._generate_task_code(task) code += '\n' # Generate dependencies code += '\n # Task dependencies\n' for task_id, task in self.tasks.items(): if task.upstream: for upstream in task.upstream: code += f" {upstream} >> {task_id}\n" return code def _generate_task_code(self, task: DAGTask) -> str: """Generate code for single task.""" if task.operator == 'BashOperator': return f''' {task.task_id} = BashOperator( task_id='{task.task_id}', bash_command="{task.params['bash_command']}" )''' elif task.operator == 'PythonOperator': kwargs = json.dumps(task.params.get('op_kwargs', {})) return f''' {task.task_id} = PythonOperator( task_id='{task.task_id}', python_callable={task.params['python_callable']}, op_kwargs={kwargs} )''' elif task.operator == 'FileSensor': return f''' {task.task_id} = FileSensor( task_id='{task.task_id}', filepath='{task.params["filepath"]}', poke_interval={task.params['poke_interval']}, timeout={task.params['timeout']} )''' elif task.operator == 'BranchPythonOperator': return f''' {task.task_id} = BranchPythonOperator( task_id='{task.task_id}', python_callable={task.params['python_callable']} )''' return '' def save_dag(self, output_path: str): """Save DAG to file.""" code = self.generate_dag_code() with open(output_path, 'w') as f: f.write(code) return output_path class ConstructionPipelineTemplates: """Pre-built construction pipeline templates.""" @staticmethod def bim_validation_pipeline(dag_id: str = 'bim_validation') -> ConstructionDAGBuilder: """Create BIM validation pipeline.""" builder = ConstructionDAGBuilder(dag_id, schedule='@daily', tags=['bim', 'validation']) # Wait for file builder.add_sensor_task('wait_for_model', '/data/input/*.ifc') # Convert to Excel builder.add_bash_task( 'convert_ifc', 'IfcExporter.exe /data/input/*.ifc bbox', upstream=['wait_for_model'] ) # Validate data builder.add_python_task( 'validate_data', 'validate_bim_data', {'rules_file': '/config/validation_rules.xlsx'}, upstream=['convert_ifc'] ) # Branch based on validation builder.add_branch_task( 'check_validation', 'check_validation_result', upstream=['validate_data'] ) # Success path builder.add_python_task( 'generate_report', 'generate_validation_report', upstream=['check_validation'] ) # Failure path builder.add_python_task( 'send_alert', 'send_validation_alert', upstream=['check_validation'] ) return builder @staticmethod def cost_estimation_pipeline(dag_id: str = 'cost_estimation') -> ConstructionDAGBuilder: """Create cost estimation pipeline.""" builder = ConstructionDAGBuilder(dag_id, schedule='@weekly', tags=['cost', 'estimation']) # Extract BIM data builder.add_bash_task('extract_bim', 'RvtExporter.exe /data/model.rvt complete bbox') # Generate QTO builder.add_python_task( 'generate_qto', 'generate_quantity_takeoff', upstream=['extract_bim'] ) # Match with cost database builder.add_python_task( 'match_costs', 'match_cwicr_costs', upstream=['generate_qto'] ) # Calculate estimate builder.add_python_task( 'calculate_estimate', 'calculate_project_estimate', upstream=['match_costs'] ) # Generate report builder.add_python_task( 'create_report', 'create_cost_report', upstream=['calculate_estimate'] ) return builder @staticmethod def batch_conversion_pipeline(dag_id: str = 'batch_convert') -> ConstructionDAGBuilder: """Create batch CAD conversion pipeline.""" builder = ConstructionDAGBuilder(dag_id, schedule='0 2 * * *', # 2 AM daily tags=['conversion', 'batch']) # Scan for new files builder.add_python_task('scan_files', 'scan_input_folder') # Convert Revit files builder.add_bash_task( 'convert_rvt', 'for %%f in (/data/input/*.rvt) do RvtExporter.exe "%%f" standard', upstream=['scan_files'] ) # Convert IFC files builder.add_bash_task( 'convert_ifc', 'for %%f in (/data/input/*.ifc) do IfcExporter.exe "%%f"', upstream=['scan_files'] ) # Convert DWG files builder.add_bash_task( 'convert_dwg', 'for %%f in (/data/input/*.dwg) do DwgExporter.exe "%%f"', upstream=['scan_files'] ) # Consolidate results builder.add_python_task( 'consolidate', 'consolidate_conversion_results', upstream=['convert_rvt', 'convert_ifc', 'convert_dwg'] ) # Archive input files builder.add_python_task( 'archive', 'archive_processed_files', upstream=['consolidate'] ) return builder
Quick Start
# Create custom pipeline builder = ConstructionDAGBuilder('my_pipeline', schedule='@daily') # Add tasks builder.add_bash_task('convert', 'RvtExporter.exe model.rvt') builder.add_python_task('analyze', 'analyze_data', upstream=['convert']) builder.add_python_task('report', 'create_report', upstream=['analyze']) # Generate DAG code code = builder.generate_dag_code() print(code) # Save to file builder.save_dag('/airflow/dags/my_pipeline.py')
Pipeline Templates
1. BIM Validation
templates = ConstructionPipelineTemplates() validation_dag = templates.bim_validation_pipeline() validation_dag.save_dag('/airflow/dags/bim_validation.py')
2. Cost Estimation
cost_dag = templates.cost_estimation_pipeline() cost_dag.save_dag('/airflow/dags/cost_estimation.py')
3. Batch Conversion
batch_dag = templates.batch_conversion_pipeline() batch_dag.save_dag('/airflow/dags/batch_convert.py')
Resources
- DDC Book: Chapter 4.2 - Apache Airflow Orchestration
- Airflow Docs: https://airflow.apache.org/docs/