Data Engineer

Fruition Group
London
1 month ago
Applications closed

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Data Engineer
Central London (1 day a month)
Up to £80,000 (depending on experience) + excellent benefits package
My client are a start-up created within and as part of a large wealth management firm, so you have all the benefits of a start-up environment without the instability and inconveniences!
It's an exciting environment where you'll be working with a cutting-edge tech stack creating data-driven fintech software for major financial firms.
What will you do in the role?
You'll be part of a high-quality Data Engineering team working with the latest tech to integrate my client's new, bespoke, in-house wealth management software with a queue of new clients while starting to plan for V2, alongside contributing your own ideas for future functions and improvements.
You'll have a specific focus on CI/CD pipelines and the deployment process, reviewing and improving how code and products go to production.
What are the key skills / experience you'll already have?
3+ years commercial experience in Data Engineering
SQL Server
Spark SQL
Strong Python coding skills
PySpark
Azure experience including Azure SQL, Data Factory and Functions
Experience collaborating with Software and Test Engineers
Creating, documenting and maintaining database schemas
To find out more and explore this opportunity further, please apply!
Please note - this is a UK based role and as such applicants based outside the UK can not be considered
We are an equal opportunities employer and welcome applications from all suitably qualified persons regardless of their race, sex, disability, religion/belief, sexual orientation or age

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