Data Engineer

Luton
3 weeks ago
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Data Engineer
I am working with a data driven Microsoft partnered consultancy who are looking for a Databricks Data Engineer to join their growing team. You will have the opportunity to work with some of the latest Microsoft technologies with a focus on projects on Databricks implementations.

You will join a team at the centre of a number of data-driven projects where you will be responsible for the design, development and creation of data solutions. You will work on the full end-to-end product lifecycle from platform design to insights creation.

As part of this role, you will be responsible for some of the following areas

Design, develop and maintain data pipelines that are responsible for the ingestion and transformation of data between different sources
Create and develop data models
Development of cloud data platforms solutionsTo be successful in the role you will have

Solid experience designing and delivering data solutions focused on Databricks
Strong ETL experience with tools such as ADF or SSIS
Experience working with Azure technologies - Synapse, Fabric, Data Lake
Knowledge of data architecture principles and data modellingIn this role you will be required to attend the office on an ad-hoc basis in London, with the remaining time spent working remotely. Some of the benefits included with the role are listed below

Starting salary of up to £60,000
Performance related annual bonus
25 days annual leave (plus bank holidays)
Employer pension contribution scheme
Private health/medical care
Various retail discounts and more!This is just a brief overview of the role. For the full information, simply apply to the role with your CV, and I will call you to discuss further. My client is looking to begin the interview process ASAP, so don't miss out, APPLY now! To do so please email me at (url removed) or call me on (phone number removed)

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