
Data Engineer
Posted Jun 24

Posted Jun 24
This is a fully remote position, open to applicants in Romania.
• Design, construct, and maintain robust data pipelines (ETL/ELT) for both structured and unstructured data.
• Develop and manage data solutions within the Microsoft Azure ecosystem, utilizing Databricks and/or Microsoft Fabric.
• Employ Python and SQL, along with frameworks such as PySpark, for data processing, transformation, and automation tasks.
• Contribute to data integration, modeling, quality assurance, and provisioning across various projects.
• Engage with modern data architecture concepts like Lakehouse and Medallion architectures.
• Collaborate with team members and clients to interpret requirements into clean, maintainable technical solutions.
• Approximately 2–4 years of relevant experience in data engineering or a related discipline.
• Proficient in Python (including libraries such as pandas, NumPy, PySpark, Spark, Delta Lake, or similar frameworks) with hands-on experience in the Microsoft Azure data ecosystem.
• Strong SQL proficiency.
• Familiarity with Databricks and/or Microsoft Fabric.
• Experience in designing and managing data pipelines (ETL/ELT).
• Knowledge of modern data architecture concepts such as Lakehouse, Data Mesh, Medallion Architecture, Data Governance, or semantic data models.
• Excellent communication skills, with a preference for direct customer interaction and the ability to translate business challenges into effective technical solutions.
• Proficient in English; German is a plus.
• Opportunity to work remotely (from Romania).
• Provision of all necessary equipment.
• Budget allocated for professional development (courses, conferences, books, etc.).
• Budget for a multi-benefit platform (meal vouchers, private medical insurance, private pension, etc.).
• Premium private medical subscription with nationwide coverage.
• Budget for improving proficiency in English and German languages.
Applied Research Solutions
Persona
Get handpicked remote jobs straight to your inbox weekly.