Senior Data Engineer

Artemis Talent
London
1 year ago
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Senior Data Engineer

Location: London - Hybrid

Salary: £50,000 - £80,000

Skills: Data Engineer, Python, APIs, ETL, ETL pipelines, SQL, Azure, AWS, Data Bricks, Data Factory

Artemis Talent have partnered exclusively with a Scaling UK fintech who have a bleeding edge financing solution to provide their client with financing facilities. We are looking for an experienced Snr Data Engineer with experience working in a similar position taking ownership of delivering data centric solutions. Ideally the successful Data Engineer will have a strong understanding of ETL Pipelines, APIs(Python) and Cloud(Azure or AWS). This innovative and rapidly growing organisation focuses on delivering outstanding customer experiences to clients who are looking to improve their financing options for their customers.

As a Snr Data Engineer you will be joining their software engineering function to contribute to the solution design and implementation, while sharing responsibility for performance, and scalability, in what is a very relaxed but innovative environment.

Skills/Experience:

API Integration Proficiency integrating Azure/AWS with 3rd party platforms Experience of ETL Pipeline / ELT processing / streaming pipelines Databricks / Data Factory MySQL / Azure SQL / SQLAlchemy / T-SQL Python  PowerBI Data Management, Data Lakes, Data Warehousing

You will get the opportunity to work on various different projects, integrating new systems and delivering intuitive platforms to a global audience.

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