Senior Data Engineer - HUGE DATA LAKE! North Lincolnshire- £55K

Akkodis
Lincolnshire
2 days ago
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Senior Data Engineer (Python) - HUGE DATA LAKE!
North Lincolnshire/Hybrid
Groundbreaking data and AI projects

Are you Data Engineer looking to work across a complex Data lake on a truly enterprise-level scale, using modern Cloud tech? Trust me, this isn't your average Datalake in regards to both size and scale and as a techy One you will want to get your hand on!

My well-known client need you.

It's an exciting time for them and they're going through a massive digital transformation which will touch all areas of their business. Data is absolutely at the heart of what they do and this transformation will reshape their Data strategy, taking it to the very next level.

I'm looking for a battle-scarred Data Engineer who has worked on huge, complex data platforms with production environments to manage all aspects of their Data lake throughout its transformation processes.

Tech wise you will understand and be able to diligently use robust monitoring tools such as CloudWatch and Datadog and have exposure to modern Data lakes and ETL platforms - ideally Databricks but something similar would suit.

You will know Python extremely well and you'll be equipped to use it to make changes at an architectural level too. You will also have full ownership of their ETL/ELT pipelines ensuring a really smooth flow of data through its transformations. You'll ...

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