Data Engineer

South Bank
3 days ago
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Data Engineer

Start April initially until Dec 2026

Central London

Certain Advantage are seeking Engineers skilled in Python, PySpark and Azure infrastructure services to join a platform team supporting a major data and analytics initiative within a globally renowned Trading business in London.

You must be willing to work 3 days a week onsite in central London.

This Engineer position is critical to enhancing the team’s ability to deliver re-usable, high quality data pipelines, reduce bottlenecks, and accelerate insight availability for business stakeholders.

We need Engineers to have a solid architectural foundation to be able to solve problems independently at a fast pace. You’ll need to offer strong effective communication skills to be able to understand requirements and communicate with technical leaders asynchronously across 5 time zones.

Your initial work will involve abstracting code from our product teams into a shared, common python library leveraging PySpark/dataframes.

You’ll also be building microservices in the form of python-based Azure Functions.

After the initial pre-defined work, you’ll serve as an extension of the product teams building microservices and libraries to solve the common needs across the teams.

Required skills:

Python
PySpark
SQL
Azure infrastructure
Understanding of Containers, Microservices, and Functional design patterns
Experience with Agile processes
Experience with Terraform
Experience with Unit Testing
Preferably PyTestOptional, but recommended skills:

HTML/CSS
React
Typescript
FastAPI framework 
Does this sound like your next career move? Apply today!
 
Working with Certain Advantage

We go the extra mile to find the best people for the job. If you’re hunting for a role where you can make an impact and grow your career, we’ll work with you to find it.

We work with businesses across the UK to find the best people in Finance, Marketing, IT and Engineering.

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