Principal Data Engineer

INOVERSE GROUPE
Bristol
5 days ago
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Scope & Responsibilities

We're seeking Principal Data Engineers to join a major data transformation programme. This is a greenfield role, building a brand‑new Microsoft Fabric platform from the ground up. You'll design and implement the core data models, pipelines, and architecture that will underpin analytics, reporting, and future business insights.


Responsibilities

  • Build data pipelines and models on Microsoft Fabric.
  • Create analytics‑ready data models for reporting and business insight teams.
  • Work collaboratively in a consultancy‑style delivery team.
  • Upskill internal engineers and establish best practices.
  • Contribute to the design and implementation of a modern enterprise data platform.

Qualifications

  • Hands‑on experience with Microsoft Fabric or modern Microsoft data platforms.
  • Strong in data engineering and data modelling.
  • Ability to design data models optimized for analytics.
  • Experience working on complex, real‑world data platforms.
  • Confidence in challenging technical designs and suggesting improvements.
  • Effective collaboration as part of a high‑performing team.

Contract Details

  • Location: Bristol (hybrid, occasional travel as needed)
  • Contract: Outside IR35
  • Duration: 6-month initial – potential to run until the end of the year
  • Rate: Negotiable, dependent on experience
  • Start date: February
  • Seniority level: Mid‑Senior level
  • Employment type: Contract
  • Job function: Information Technology
  • Industries: Data Infrastructure and Analytics

This role offers the chance to work on an exciting data platform, helping shape the architecture and best practices from the ground up while leaving a lasting impact on the organisation's data capabilities.


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