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BI Data Engineer

London
2 weeks ago
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BI Engineer

London - Hybrid

up to £48k + Benefits

Organisation: Global Food & Beverage (FTSE 250)

TRIA are supporting a global Food & Beverage client who are building our their BI engineering capability and are on a mission to transform how data is used across the business. This new role offers the chance to own and define BI standards, bridge the gap between BI and Data Engineering, and take ownership of Power BI licensing and governance.

What you'll be doing:

Champion BI best practices across the organisation
Act as the bridge between the BI team and Data Engineers
Own Power BI licensing, governance, and rollout
Build and optimise data pipelines
Develop insightful dashboards and reports using Power BI and DAX
Help shape a data-driven culture in a business where no one currently owns BI!What we're looking for:

Strong technical background in BI and data engineering concepts
Proven experience with Power BI and DAX
Understanding of data pipelines and how they support reporting
Ability to influence and educate stakeholders on BI best practicesIf your experience matches the above, please apply with an up to date CV.

Unfortunately we can not offer sponsorship for this role

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