Data Engineer - Fintech
Madrid Office - Hybrid: 4 days in the office, 1 day working from home
Join Our Data Team at Ebury Madrid Office.
Ebury´s strategic growth plan would not be possible without our Data team and we are seeking a Data Engineer to join our Data Engineering team!
Our data mission is to develop and maintain Ebury´s Data Warehouse and serve it to the whole company, where Data Scientists, Data Engineers, Analytics Engineers and Data Analysts work collaboratively to:
- Build ETLs and data pipelines to serve data in our platform
- Provide clean, transformed data ready for analysis and used by our BI tool
- Develop department and project specific data models and serve these to teams across the company to drive decision making
- Automate end solutions so we can all spend time on high-value analysis rather than running data extracts
What we offer:
- Competitive salary and benefits package
- Discretionary bonus based on performance
- Continued personal development through training and certification
- We are Open Source friendly, following Open Source principles in our internal projects and encouraging contributions to external projects
Responsibilities:
- Be mentored by one of our outstanding performance team member along a 30/60/90 plan designed only for you
- Participate in data modelling reviews and discussions to validate the model´s accuracy, completeness, and alignment with business objectives.
- Design, develop, deploy and maintain ELT/ETL data pipelines from a variety of data sources (transactional databases, REST APIs, file-based endpoints).
- Serve hands-on delivery of data models using solid software engineering practices (eg. version control, testing, CI/CD)
- Manage overall pipeline orchestration using Airflow (hosted in Cloud Composer), as well as execution using GCP hosted services such as Container Registry, Artifact Registry, Cloud Run, Cloud Functions, and GKE.
- Work on reducing technical debt by addressing code that is outdated, inefficient, or no longer aligned with best practices or business needs.
- Collaborate with team members to reinforce best practices across the platform, encouraging a shared commitment to quality.
- Help to implement data governance policies, including data quality standards, data access control, and data classification.
- Identify opportunities to optimise and refine existing processes.
About you:
- 3+ years of data/analytics engineering experience building, maintaining & optimising data pipelines & ETL processes on big data environments
- Proficiency in Python, SQL and Airflow
- Knowledge of software engineering practices in data (SDLC, RFC...)
- Stay informed about the latest developments and industry standards in Data
- Fluency in English
If you´re excited about this job opportunity but your background doesn´t match exactly the requirements in the job description, we strongly encourage you to apply anyway. You may be just the right candidate for this or other positions we have.
#LI-CG1
About Us
Ebury is a FinTech success story, positioned among the fastest-growing international companies in its sector.
Founded in 2009, we are headquartered in London and have more than 1700 staff with a presence in more than 25 countries worldwide. Cultural diversity is part of what makes Ebury a special place to be. From Sao Paulo to Dubai, Bucharest to Toronto, we enjoy sharing team experiences and celebrating success across the Ebury family.
Ver más
¡No te pierdas nada!
Únete a la comunidad de wijobs y recibe por email las mejores ofertas de empleo
Nunca compartiremos tu email con nadie y no te vamos a enviar spam
Suscríbete AhoraÚltimas ofertas de empleo de Ingeniero/a de Datos en Madrid
Ingeniero/a DevOps
NuevaSantander
Madrid, ES
Data Engineer
21 feb.BASF
Madrid, ES
Senior Azure Data Engineer
21 feb.Cognizant Technology Solutions
BECA Data Engineer
21 feb.BNP Paribas
Machine Learning Engineer
20 feb.Serem
Data Engineer - PySpark
20 feb.Arelance
Senior Machine-Learning Engineer
20 feb.BASF
Madrid, ES
Cloud Systems Engineer
20 feb.GMV
Senior DevOps Engineer
20 feb.BASF
Madrid, ES