Data Engineer - Industrial Digital PlatformOur Industrial Digital Platform team is looking for a Data Engineer to build and scale the data backbone that powers decision-making across engineering, operations, and leadership.We are developing a modern data platform focused on transforming industrial and operational data into a reliable, high-quality asset.
\n
This role sits at the intersection of industrial systems and cloud data technologies, with a strong emphasis on data quality, governance, and scalability.This is a hands-on role for someone who takes ownership, cares deeply about data integrity, and is comfortable working across the full data stack.ConditionsPermanent contractHybrid model: 1 day of remote work per weekWorking hours: 9:30 am to 6:30 pm (Fridays until 14:30)Location: Gta.
\n
Mar Caribe 1, Hortaleza | *, Madrid | SpainMission of the roleDesign, build, and maintain a robust, scalable, and validation-first data infrastructure that ensures high-quality, reliable data across the industrial digital platform.You will act as a key contributor to data architecture and governance, ensuring that data is accurate, accessible, and trusted across all business functions.Key responsibilitiesData Quality & Governance:
\n
• Define and enforce validation standards across all data systems• Ensure data accuracy, consistency, and integrity from ingestion to consumption• Design and maintain data contracts, lineage tracking, and cataloguing practicesPipeline Engineering:
\n
• Design, build, and maintain scalable data pipelines with validation embedded at every stageETL/ELT Development:
\n
• Build and evolve ETL/ELT processes with automated quality checks• Ensure issues are detected and resolved before reaching downstream usersCross-functional collaboration:
\n
• Translate complex requirements from engineers, analysts, and scientists into robust solutions• Work closely with multiple teams to deliver production-grade data systemsDatabase & Storage Optimisation:
\n
• Optimise database performance and storage architecture• Ensure continuous reliability and efficiency of data systemsMonitoring & Incident Response:
\n
• Monitor pipeline health and proactively detect issues• Diagnose failures quickly and ensure continuous data availabilityInnovation:
\n
• Stay up to date with data engineering trends and tools• Introduce improvements that add real value to the platformProfile• 6+ years of experience in data engineering, ideally in industrial or operational environments• Strong SQL skills and hands-on ETL/ELT experience with a focus on data quality• Proficiency in Python, Java, or Scala• Solid understanding of data modelling, data warehousing, and big data technologies (Spark, Hadoop)• Proven experience with Azure and Databricks• Experience in data governance (cataloguing, lineage, metadata, access control)• Familiarity with data quality tools (Great Expectations, dbt tests, Soda)• Degree in Computer Science, Engineering, or a related field• Strong problem-solving skills and attention to detail• Excellent communication skills across technical and non-technical teamsNice to Have• Experience building and optimising data lakes and warehouses in Azure• Real-time and streaming data processing (Event Hubs, Stream Analytics)• Experience with data mesh or data fabric architectures• Knowledge of regulatory frameworks (ISO, GDPR)• Experience with containerisation and orchestration (Docker, Kubernetes, ADF)Languages• English — Fluent (required)• Spanish — Highly valued• Italian — Highly valuedWhat we offer• Strategic role with real impact on data-driven decision making• Dynamic and fast-growing environment• Opportunity to build and scale a modern industrial data platformIf you're interested, feel free to apply.