Data Engineer
Location
Spain
Posted
7 days ago
Salary
€35K - €47K / year
Seniority
Mid Level
Job Description
Data Engineer
IT Partner
Role Description ¡Buscamos 3 Data Engineers! 100% Remoto Tienes experiencia con Snowflake, dbt y Azure Data Factory? Esta puede ser tu próxima oportunidad. Salario: 35.000 € - 47.000 € brutos/año (flexible hasta 50.000 € para perfiles con mayor experiencia). Modalidad: 100% remoto. Sobre el proyecto: - Participarás en un importante programa corporativo de transformación y evolución de una plataforma de datos para una gran compañía del sector hotelero. - Formarás parte del desarrollo y evolución de una arquitectura moderna de datos basada en tecnologías Cloud. - Trabajarás en un entorno colaborativo utilizando tecnologías como Snowflake, dbt y Azure Data Factory. - Contribuirás a la construcción y mantenimiento de pipelines de datos, procesos de transformación y modelos analíticos que dan soporte a las necesidades del negocio. ¿Cuáles serán tus responsabilidades? - Diseñar, desarrollar y mantener pipelines de datos utilizando Azure Data Factory y dbt. - Implementar procesos de transformación y modelado de datos en Snowflake. - Garantizar la calidad, trazabilidad y fiabilidad de los datos. - Aplicar buenas prácticas de ingeniería de datos, testing y documentación. - Participar en la evolución y optimización continua de la plataforma de datos corporativa. - Colaborar con equipos de negocio, analítica y arquitectura de datos. - Contribuir a la automatización y monitorización de procesos de integración y transformación de datos. Qualifications - Entre 2 y 5 años de experiencia como Data Engineer. - Experiencia en diseño e implementación de pipelines ETL/ELT. - Experiencia demostrable con Snowflake, dbt y Azure Data Factory (ADF). - Se valorará experiencia en el uso de herramientas de IA durante el ciclo de desarrollo. Benefits - Salario flexible hasta 50.000 € para perfiles con mayor experiencia. - Modalidad 100% remoto.
Related Guides
Related Categories
Related Job Pages
More Data Engineer Jobs
Principal Technical Product Manager, Data Platform
SandboxAQFounded in 2002 and officially spun out from Alphabet in 2022, SandboxAQ is an enterprise SaaS company headquartered in Palo Alto, California, combining artific
• Define and own the Data Platform roadmap across ingestion, auto-detection, schema reconciliation, and lineage • Own the CRO and lab-partner ingestion-template product and the auto-matching UX, so partner data is usable the moment it lands • Drive dataset-level provenance, sensitivity tagging, and field-of-use governance • Design experiment-integration API schemas in partnership with the BioSim and ChemSim teams • Own the federated data-management product that enables IP-safe data sharing across partners • Define and track the metrics that matter including but not limited to time-to-usable per dataset, auto-match accuracy, and lineage completeness
• Lead a high-performing team responsible for delivering complex healthcare data migration and integration solutions • drive technical excellence, build scalable delivery capabilities, and help modernize imaging environments • Lead, mentor, and grow a team of Data Migration and Integration professionals • Establish and improve standardized delivery methodologies, governance, and best practices • Partner closely with Project Management, Engineering, Clinical Consulting, Customer Success, Technical Services, and implementation partners • Build and manage strategic relationships with third-party implementation partners • Drive continuous improvement through resource planning, capacity management, key performance indicators, technical leadership, and customer engagement
• Manage Projects & Technology • Lead and implement Data Receipt Agreements with vendors in collaboration with cross-functional teams • Program and establish import procedures for data ingestion using SAS or alternative technologies (e.g., Workbench) • Design and implement reconciliation checks to ensure accurate data transfer • Program offline listings and custom reports to provide valuable insights on external data • Aggregate data across all sources and manage data structures, missing values, and programming errors • Review data outputs and provide strategic insights to study teams and clients • Ensure first-time quality on all deliverables • Negotiate electronic data timelines and ensure adherence through active project management • Monitor project resourcing, identify scope changes, and resolve technical issues • Coordinate and lead programming teams to successful project completion within timelines and budget • Manage deployment of data management technology for offline listing creation • Act as SME and technology owner for data management offline listing platforms • Maintain comprehensive supporting documentation in accordance with SOPs, Guidelines, and Work Instructions • Ensure traceability and regulatory compliance across all study activities • Document deviations and communicate them to project teams • Support Initiatives & Continuous Improvement • Participate in creating standards through tools (SAS macros), libraries, and processes • Develop and implement project-specific tools and improvements • Lead or drive global initiatives related to processes and new technologies • Mentor staff and provide relevant training • Assist project teams in problem resolution and technical support • Maintain and expand regulatory knowledge within the clinical research industry • Serve as point of contact for clients and internal stakeholders on electronic data matters • Participate in bid defense meetings • Independently contribute ideas on technology and data engineering to support business development
• Explore legacy source systems to understand their structure, quality, and relationships. • Export source data across a range of access methods. • Transform exported data into gaiia's standard format. • Execute migrations end-to-end on the internal migration platform. • Build and reuse mappings, templates, and validation rules. • Contribute small engineering improvements to the migration tooling. • Diagnose and resolve data discrepancies during dry runs, UAT, and post-cutover. • Document mapping specs, transformation logic, and data anomalies.


