Senior Data Engineer - Power markets trading

Saragossa
London
1 day ago
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Job Description

Would you be interested in joining a well-renowned commodities trading firm to help build a new power markets trading platform from scratch?


You’ll face off with the business, understanding what they need, discussing solutions with the Data Science team, then building out the best solution possible, whether it be with an off the shelf product, or building it completely from scratch using primarily Python and SQL.


This is a strong opportunity to take on a high-profile greenfield project with a Senior Software Engineer. You'll work closely with other strong Data Engineers, Software Engineers, and Data Scientists. They have their own projects to work on but they'll also step in to help as you will help with theirs from time to time.


The team are using more advanced technology as time goes on and you’ll be responsible for implementing various cutting-edge technologies. You'll work with AWS, Snowflake, Kubernetes, Docker etc.


In terms of your technical experience you’ll need to have worked in a commercial data engineering role for at least 4 years and you'll have some experience in commodities (ideally short-term power). Strong Python, and SQL experience will be required.


This is a global commodities firm with a strong history of performance and revenue. This will be a competitive salary plus a high perform...

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