Perfil de habilidad

Apache Airflow

DAGs, operators, sensors, XComs, dynamic task mapping, KubernetesPodOperator

Data Engineering Data Orchestration

Roles

4

donde aparece esta habilidad

Niveles

5

ruta de crecimiento estructurada

Requisitos obligatorios

20

los otros 0 opcionales

Dominio

Data Engineering

skills.group

Data Orchestration

Última actualización

17/3/2026

Cómo usar

Selecciona tu nivel actual y compara las expectativas.

Qué se espera en cada nivel

La tabla muestra cómo crece la profundidad desde Junior hasta Principal.

Rol Obligatorio Descripción
Analytics Engineer Obligatorio Understands basic Airflow concepts: DAGs, operators, and task dependencies. Follows established DAG templates to build simple transformation pipelines. Uses dbt + Airflow integration patterns defined by the team.
BI Analyst Obligatorio Understands basic Airflow DAG structure and scheduling concepts. Monitors scheduled report refresh pipelines and identifies failures. Follows team guidelines for triggering dashboard data updates through Airflow UI.
Data Analyst Obligatorio Understands basic Airflow concepts and DAG scheduling. Monitors data pipeline runs that feed analytical datasets. Follows team documentation to trigger ad-hoc DAG runs for data refresh and extraction tasks.
Data Engineer Obligatorio Creates Airflow DAGs: PythonOperator, BashOperator, task dependencies. Understands execution date, catchup, schedule interval. Monitors runs in Airflow UI. Debugs failed tasks through logs.
Rol Obligatorio Descripción
Analytics Engineer Obligatorio Independently builds Airflow DAGs for ELT pipelines with dbt operators and data quality checks. Configures retry policies, SLAs, and alerting for transformation jobs. Optimizes task parallelism and resource pools.
BI Analyst Obligatorio Independently configures Airflow DAGs for scheduled report generation and dashboard data refresh. Implements data quality sensors to validate source data before BI layer updates. Troubleshoots pipeline failures affecting reporting.
Data Analyst Obligatorio Independently builds Airflow DAGs for automated data extraction and cohort preparation pipelines. Implements data validation tasks with Great Expectations integration. Configures scheduling for recurring analytical data refreshes.
Data Engineer Obligatorio Designs Airflow DAGs: dynamic task generation, XCom for data passing, TaskGroups for organization. Uses sensors, hooks for external system integration. Configures connections and variables.
Rol Obligatorio Descripción
Analytics Engineer Obligatorio Architects data systems with Apache Airflow. Optimizes for big data. Implements data governance and quality frameworks.
BI Analyst Obligatorio Designs Airflow-based data pipeline architecture for enterprise BI platform. Implements complex dependency graphs across multiple data sources with SLA monitoring. Mentors team on DAG design patterns for reporting workflows.
Data Analyst Obligatorio Designs Airflow pipeline architecture for complex analytical workflows with cross-dataset dependencies. Implements data lineage tracking and audit logging. Optimizes DAG performance for large-scale analytical data processing.
Data Engineer Obligatorio Designs Airflow architecture: KubernetesExecutor for dynamic scaling, custom operators/hooks, DAG factory pattern for generation. Optimizes performance: pool management, priority weight, concurrency.
Rol Obligatorio Descripción
Analytics Engineer Obligatorio Defines orchestration strategy for the analytics pipeline: Airflow for coordinating dbt runs, sensors for upstream data dependencies. Implements DAG design standards: idempotency, retry policies, SLA monitoring for analytical models.
BI Analyst Obligatorio Defines BI data pipeline strategy and Airflow platform standards. Establishes DAG development guidelines, code review practices, and deployment workflows for reporting team. Coordinates data freshness SLAs with stakeholders.
Data Analyst Obligatorio Defines analytical data pipeline strategy and Airflow governance standards. Establishes DAG naming conventions, testing requirements, and monitoring practices. Drives adoption of self-service pipeline creation among analyst teams.
Data Engineer Obligatorio Defines Airflow standards: DAG structure, naming conventions, testing requirements, deployment workflow. Chooses between Airflow and alternatives (Dagster, Prefect) by scenario.
Rol Obligatorio Descripción
Analytics Engineer Obligatorio Architects enterprise analytics platform orchestration: Airflow/Dagster for multi-project dbt, event-driven triggers, cross-team dependency management. Defines migration strategy to managed orchestration (dbt Cloud, Dagster Cloud).
BI Analyst Obligatorio Defines enterprise data orchestration strategy spanning Airflow, dbt, and BI tools. Evaluates orchestration platforms and migration paths. Shapes organizational data delivery standards and cross-team pipeline governance.
Data Analyst Obligatorio Defines enterprise analytical data orchestration strategy. Shapes organizational standards for pipeline reliability and data delivery guarantees. Evaluates next-gen orchestration tools and drives platform evolution decisions.
Data Engineer Obligatorio Designs orchestration strategy: Airflow for batch, event-driven for real-time, hybrid patterns. Defines multi-team governance, shared infrastructure, cost allocation.

Comunidad

👁 Seguir ✏️ Sugerir cambio Inicia sesión para sugerir cambios
📋 Propuestas
Aún no hay propuestas para Apache Airflow
Cargando comentarios...