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Enterprise Data Architect - Migration, Integration, Snowflake

Sanderson
London
3 days ago
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Enterprise Data Architect / Senior Data Enterprise Architect

This role is ideal for an experienced Enterprise Data Architect with a strong background in data-centric solutions, who's ready to take ownership of strategic decisions around architectural design within a dynamic and evolving business area. If you're passionate about shaping how data is used and managed, and enjoy collaborating across teams to deliver impactful solutions, this could be your next step.

This role suits someone with vast experience of large-scale data migrations as well as advancing the maturity of a data centric organisation. Responsible for creating design patterns, operating models and integrating data tools, you will work across several business areas ensuring a consistent design approach to meeting varying business needs.

You will outline, assess and recommend options to enable key design decisions, providing governance and support to a number of initiatives whilst steering the enterprise to achieve its data strategic goals. As well as facilitate cross functional solutions design discussions with business stakeholders, technology service owners, business analysts and developers

Responsible for creating strategic roadmaps, design patterns, operating models and integrating data tools, you will work across several business areas ensuring a consistent design approach to meeting varying business needs.

With responsi...

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