Rearc
Lead Data Engineer (Databricks)
Rol remoto de Data Engineering con fit claro de ubicación del candidato.
Publicado20 jun 2026
Países elegibles1 país aceptado
Señal de senioritySenior
Modelo de trabajoRemoto
Ubicaciones aceptadas para candidatos
Estados Unidos
Resumen del rol
Lead Data Engineer (Databricks)
Requisitos y responsabilidades
Contenido del rol extraído en secciones para revisar más rápido.
Details
- 8+ years of hands-on data engineering experience, designing and delivering production-grade data platforms
- Expert-level in Apache Spark, including runtime internals, performance tuning, and optimisation, you understand what's happening under the hood and use that knowledge to build pipelines that perform at scale.
- You write clean, production-quality code in Python, with Scala experience a strong plus for deeper Spark and performance-critical work.
- You've built and productionalized solutions on the platform, including Delta Lake architectures, Unity Catalog governance, and Databricks Workflows. Databricks certification is a strong plus.
- You have real, working experience across at least two major cloud platforms (AWS, Azure, GCP) with genuine depth in at least one, including cloud-native services such as AWS Redshift/Glue/S3, Azure Synapse/Data Factory/ADLS, or Google BigQuery/Dataflow/GCS.
- You've led data engineering projects end-to-end in a client-facing or consulting context, managing technical scope, navigating stakeholder expectations, and delivering against timelines without cutting corners.
- You bring a DataOps mindset: CI/CD for data pipelines, automated testing, observability, and infrastructure-as-code are standard practice for you, not afterthoughts.
- Your experience spans ETL/ELT design, data warehousing, lakehouse architecture, and data modelling, and you know when to apply each approach.
- Your communication skills allow you to engage technical and non-technical stakeholders equally well, from a client's CTO to a junior engineer on your team.
- Lead Client Data Engagements: Serve as the senior technical lead on client projects. Own the architecture, guide the build, manage delivery risk, and ensure the solution shipped matches what was promised.
- Build and Productionize Data Solutions: Design and implement scalable, reliable data pipelines and lakehouse architectures on Databricks and cloud platforms. You're hands-on keyboard, you write code, review code, and set the engineering standard for the engagement.
- Architect for Scale and Reliability: Translate complex client requirements into robust technical designs, reference architectures, and data models built to last in production.
- Drive Technical Delivery: Manage technical scope and timelines, identify blockers early, and partner with project managers and client stakeholders to keep engagements on track.
- Mentor Data Engineers: Coach junior and mid-level engineers through hands-on pairing, code review, and direct feedback, raising the floor for everyone around you.
- Promote Knowledge Sharing: Contribute technical blogs, reference architectures, and internal guides that reflect hard-won lessons from real client work.
- Champion DataOps Practices: Establish and enforce modern data engineering standards across engagements, automated testing, pipeline observability, version control, CI/CD, and documentation.
Roles similares
Mantén una lista de respaldo.
Stack
Usa estas tags para comparar roles remotos similares.
Elegibilidad de ubicación
Candidatos deberían aplicar solo cuando el país del perfil aparece aquí.
Tu perfilPaís no definidoInicia sesión para comparar tu país con este rol.
Flujo de contratación
WithMira muestra el rol y luego envía candidatos a la aplicación de la empresa.
1Revisa fit del rol, stack y elegibilidad de ubicación en WithMira.
2Abre la página de aplicación de la empresa desde el link rastreado.
3Guarda el rol o suscríbete a oportunidades similares antes de salir.