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Data Engineering Lead - FinTech Unicorn - Up to £140k

Oliver Bernard
London
2 days ago
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Data Engineering Lead - Python, SQL, DBT, Airflow, BigQuery, AWS/GCP


OB are partnered with a UK FinTech Unicorn, undergoing huge growth within their Data function, and are therefore looking for a Lead Data Engineer to join their Data team.


This is a key role, where you'll be leading a team of up to 6 engineers, helping set the technical direction, collaborating with a variety of stakeholders across the business, working on several exciting greenfield projects and scaling their data systems.


Data Engineering Lead - Python, SQL, DBT, Airflow, BigQuery, AWS/GCP


Key skills and experience:


3+ years of experience in a Leadership role

Python/SQL

DBT, BigQuery, Airflow

AWS/GCP, Terraform

Data warehousing

ETL


Hybrid working with offices based in Central London


Base salary of £120k-£140k + Bonus up to 15% and stock options


Data Engineering Lead - Python, SQL, DBT, Airflow, BigQuery, AWS/GCP

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