Data Engineer Microsoft Platforms - Inside IR35 - Remote

Tenth Revolution Group
London
1 month ago
Applications closed

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Data Engineer Microsoft Platforms - Outside IR35 - RemoteAbout the Role

We are seeking a skilled and motivated Data Engineer to join our growing Data Engineering Team. You'll be an integral part of a high-performing team, working primarily with Microsoft technologies to design, build, and deliver complex, enterprise-grade data solutions.

In this role, you'll help empower our colleagues to make data-driven decisions every day and enable best-in-class experiences for our customers. You'll work closely with Architects, Senior Engineers, and business stakeholders to ensure solutions meet both technical and business requirements, while adhering to regulatory, governance, and quality standards.

Key Responsibilities

  • Design, develop, and deliver high-quality, enterprise-level data solutions on Microsoft platforms.

  • Build and maintain robust data pipelines and integrations (ETL/ELT).

  • Collaborate with Architects and Senior Engineers to deliver solutions aligned to technical designs and specifications.

  • Work closely with business stakeholders to understand requirements and ensure delivered solutions meet business needs.

  • Partner with Data Science, Digital, and Core Systems teams to deliver cross-functional projects, from initial delivery through to BAU change.

  • Contrib...

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