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London Senior Data Engineer

Foster and Partners
City of London
2 weeks ago
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A Senior Data Engineer at Foster + Partners will need to have proficiency in various data warehousing (Lakehouse), relational databases, ETL, big data, cloud computing, programming languages, machine learning technologies and tools. You'll be passionate, pragmatic and ready for a new challenge.

At Foster + Partners, we are committed to fostering an inclusive and respectful workplace. We welcome applications from talented individuals of all walks of life-irrespective of age, gender identity or expression, disability, ethnic background, faith, sexual orientation, or any other protected characteristic.

Foster + Partners aims to have an inclusive environment for all staff by identifying and removing barriers across our practices.

Equal Opportunities

If you have any questions about our application process, or need support submitting your application, please contact us at .

If you require any adjustments for your interview, please let us know as early as possible.

How to Apply

To apply, please submit your CV and covering letter. Eligible candidates must be willing to work in the location of the role advertised.


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