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Data Engineer - Leeds - ADF - DWH - Up to £80k

Leeds
5 months ago
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Data Engineer

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Data Engineer

Data Engineer

Data Engineer - Leeds - ADF - DWH - Up to £80k

I'm working with a multinational, award winning organisation that are looking to scale out their entire IT team. Over the last decade or so, my client have been recognised as the leaders within their relative. As a result of their successes, they've grown exponentially and ventured into new countries where they've followed their blue print of success.
This has meant that the business has looked to modernise their Systems to allow for such growth and one of the key modernisation's comes within their Data Platform.

The vacancy is for a experienced Data Engineer who will be setting foot into a greenfield site where they will be using the latest and greatest technologies. This involves the use of the Azure Data stack as well as also, a data platform build which includes Snowflake.
You will be migrating old data processes into the cloud and helping to build the new platform from scratch which means that you'll be working very closely with an expert team of Data professionals, ultimately developing a first in class data platform.

This is a salaried position which ranges from between £60k-£80k. You can expect a great benefits package but also, an environment that boasts collaborative working as well as the opportunity to develop yourself. You will be given the opportunity to attend industry events, Training programmes but also, paid for, relevant certifications.

Requirements

Strong background in Data Engineering / Data Warehousing
Strong experience with the Azure Data Stack; ADF, Synapse
Strong Python / Spark

Strong SQL experience
Willingness to be in the office, ideally 4-5 days a week.
Additional experience of Snowflake is highly advantageous but not essential. Must show willingness to learnThis is a great opportunity to join outstanding organisation who pride themselves on being one of the best companies to work for. Interviews are already taking place so don't miss out and apply now!

If this is of an interest then get in touch ASAP. Send across your CV to (url removed) or alternatively, give me a call on (phone number removed).

Keywords: Data Engineering, Data Engineer, Snowflake, ETL, ELT, ADF, Data Factory, Synapse Analytics, SSIS, Migration, Pipeline, Python, Spark, DBT, Snowflake, Azure, SQL, Leeds

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