Básico

Senior Data Engineer

Basel, Basel City, Switzerland Compañía: TN Switzerland Cliente / Empleador: Avacone
Publicado: 18.05.2026
Fecha de cierre: 02.07.2026
Referencia laboral: 9d650e49ed24a5cdd997ccd31e831eab

Información del puesto

Ubicación
Basel, Basel City, Switzerland
Compañía
TN Switzerland
Cliente / Empleador
Avacone
Referencia laboral
9d650e49ed24a5cdd997ccd31e831eab
Tipo de listado
Básico
Se requiere permiso de trabajo de la UE
No
Publicado
18.05.2026
Fecha de cierre
02.07.2026

Descripción del puesto

The Opportunity

We are supporting a major data platform transformation within a banking environment, moving from a legacy SQL Server and SSIS-based setup to a modern, scalable architecture built on dbt, Dagster, and OpenShift.

This role is not about maintaining existing systems. It is about rebuilding a critical data platform from the ground up, with direct impact on risk, trading PnL, and core financial data flows.

We are looking for a hands-on Senior Data Engineer who can take ownership of complex migration workstreams and deliver reliably in a regulated, high-stakes environment.  

What You Will Do

You will play a central role in the end-to-end migration and modernisation of the data platform.

Platform Transformation

  • Translate legacy ETL logic from SSIS and stored procedures into modern ELT pipelines using dbt
  • Implement Data Vault 2.0 structures including Raw Vault and Business Vault
  • Build datamarts and curated datasets for downstream analytics and reporting


Orchestration & Infrastructure

  • Design and operate workflows using Dagster, including scheduling, dependencies, and recovery mechanisms
  • Deploy and run data workloads on OpenShift / Kubernetes environments


Event-Driven Data Processing

  • Enable near real-time data processing using Kafka-triggered pipelines
  • Integrate with upstream data lake environments and external data providers


Data Quality & Validation

  • Establish robust data validation and reconciliation processes
  • Implement automated testing and monitoring using dbt


Operational Ownership

  • Support production pipelines and resolve incidents when required
  • Create clear documentation and ensure operational readiness
  • Continuously improve performance, reliability, and maintainability

What You Will Do

You will play a central role in the end-to-end migration and modernisation of the data platform.


Platform Transformation

  • Translate legacy ETL logic from SSIS and stored procedures into modern ELT pipelines using dbt
  • Implement Data Vault 2.0 structures including Raw Vault and Business Vault
  • Build datamarts and curated datasets for downstream analytics and reporting


Orchestration & Infrastructure

  • Design and operate workflows using Dagster, including scheduling, dependencies, and recovery mechanisms
  • Deploy and run data workloads on OpenShift / Kubernetes environments


Event-Driven Data Processing

  • Enable near real-time data processing using Kafka-triggered pipelines
  • Integrate with upstream data lake environments and external data providers


Data Quality & Validation

  • Establish robust data validation and reconciliation processes
  • Implement automated testing and monitoring using dbt


Operational Ownership

  • Support production pipelines and resolve incidents when required
  • Create clear documentation and ensure operational readiness
  • Continuously improve performance, reliability, and maintainability

Requirements

What You Bring

Technical Expertise

  • Strong experience with SQL Server and T-SQL, including performance optimisation
  • Proven hands-on experience with dbt in production environments
  • Solid experience with workflow orchestration tools, ideally Dagster
  • Practical knowledge of Data Vault 2.0 modelling concepts
  • Experience working with container platforms such as OpenShift or Kubernetes
  • Familiarity with event-driven architectures and Kafka


Domain Experience

  • Experience working with financial data, ideally in banking or trading environments
  • Understanding of risk and PnL data structures is a strong advantage


Working Style

  • Strong ownership mindset with the ability to work independently
  • Structured, pragmatic, and delivery-focused
  • Comfortable operating in complex and regulated environments
  • Clear communicator across both technical and business stakeholders

What Success Looks Like

Within the first months, you will have:

  • Delivered initial Data Vault structures and migrated datasets into the new platform
  • Established stable, event-driven pipelines
  • Ensured data consistency and validation between legacy and new systems
  • Contributed to a production-ready, scalable data platform

Habilidades

Trabajos similares

Trabajos sugeridos

Eurojobs Support Assistant