Senior/Principal Data Consultant - Data Engineer MS Fabric

Intuita
London
4 days ago
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All our office locations considered: Newbury, Reading, London, Liverpool, Glasgow (UK); Šibenik, Croatia (considered)

We're on the hunt for builders

No, we've not ventured into construction in our quest to conquer the world, rather a designer and builder of systems for all things data related where we are conquering the Data World.

We can offer an interesting insight into projects spanning a variety of sectors, which may include industries such as telecoms, insurance, finance and mortgages.

First and foremost we seek strong Consultants; so if you are ready to explore our dynamic team where you can truly act as an expert in your field in support of our clients and their challenges in the world of data and technology, read on!

The Team

We're Intuita - a fast growing consultancy that's making waves in both the consultancy and technology space. With our ambitious goals for the year ahead and beyond, we are looking for talented individuals to complement the team of experts we already have working across our business, becoming a pivotal part of our journey, to not just meet, but continuously exceed our client expectations! Now as part of FSP Consulting we have an exciting and ambitious future!

The Role

We are seeking a skilled MS Fabric Data Engineer(s) to join our team, ideally initially on a contract basis, how...

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