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Data Architect

Harnham
Manchester
6 days ago
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Overview

Data Architect

Up to £90,000 • Manchester (Hybrid)

This opportunity is ideal for a hands-on Data Architect who wants to shape a growing data function while remaining close to the technology. You\'ll play a key role in migrating from On-Prem to Azure and help define the future data architecture across the business.

Company

A leading digital consumer brand with millions of active users, heavily investing in their data strategy as part of a wider transformation programme. Data is at the heart of their five-year plan, building out a modern Azure-based data platform.

The Role

As the Data Architect, you will:

  • Lead the migration from On-Prem to Azure, delivering a new data warehouse.
  • Define architectural standards, patterns, and best practices across the data estate.
  • Work closely with BI and Data Engineers to deliver scalable solutions.
  • Remain hands-on with SQL and Azure technologies.
  • Support the design of new, greenfield data initiatives once the migration is complete.
  • Act as the first permanent architect hire - shaping the future direction of the data architecture function.
Your Skills and Experience

A successful Data Architect will have the following:

  • Strong SQL and Azure experience.
  • Background in Online, eCommerce, or Digital environments.
  • Confident working autonomously within a lean data team.
  • Exposure to On-Prem → Cloud migrations (advantageous).
Benefits

You will receive a competitive salary of up to £90,000, dependent on experience.

How to Apply

Please register your interest by sending your CV to Molly Bird via the apply link on this page.


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