Fabric Data Engineer

Eligo Recruitment Ltd
Leeds
3 weeks ago
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We are looking to recruit an experienced Data Engineer who has experience working on the implementation and development of Microsoft Fabric. In addition you will need a wealth of SQL Experience including in a Cloud environment, ideally Azure using ADF and / or Data Bricks.  

To be a success in this role you will be able to show a wealth of knowledge and experience as a SQL Data Engineer ideally on a Cloud data platform using ADF or a similar product. The real key is that you have experience working with MS Fabric. This will enable you to add real value to the team and organisation during the implementation and ongoing exploitation of the Fabric functionality. You will have the opportunity to play a key role in improving data quality and data standards in an environment were effective data management is core to delivering real value. 

Experience of migrating data from legacy SQL and Power BI environments to Fabric would be a distinct advantage. 

This is initially a 6 month FTC with a real opportunity of becoming permanent. The role is hybrid with 2 days per week in our clients Leeds office. 

This is an opportunity to join an organisation with an excellent reputation as an employer who invest in the training and development of their people and will promote internally whenever possible.

Eligo Recruitment is acting as an Employment Business in relation to this vacancy. Eligo is proud to be an equal opportunity employer dedicated to fostering diversity and creating an inclusive and equitable environment for employees and applicants. We actively celebrate and embrace differences, including but not limited to race, colour, religion, sex, sexual orientation, gender identity, national origin, veteran status, and disability. We encourage applications from individuals of all backgrounds and experiences and all will be considered for employment without discrimination. At Eligo Recruitment diversity, equity and inclusion is integral to achieving our mission to ensure every workplace reflects the richness of human diversity

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