Senior Data Engineer

Oliver Bernard
City of London, England
6 months ago
Applications closed

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Senior Data Engineer - FinTech Unicorn - Python, SQL, DBT, Airflow, AWS/GCP


OB have partnered with a UK FinTech Unicorn, who's Data function is undergoing rapid growth, and in-turn are looking to grow their Data team, with 2 highly skilled Data Engineers.


You'll be working on shaping the companies Data function, driving Data best practices, and collaborate with a variety of stakeholders to ensure the company are making Data driven decisions.


Senior Data Engineer - FinTech Unicorn - Python, SQL, DBT, Airflow, AWS/GCP


Tech Stack:


Python & SQL

DBT, AirFlow & BigQuery

AWS/GCP

ETL Pipelines


Base salary of £90k-£115k depending on skills and experience

Excellent overall package including a sizeable bonus and stock options


Hybrid working in Central London


You must be UK based, and sadly sponsorship is unavailable


Senior Data Engineer - FinTech Unicorn - Python, SQL, DBT, Airflow, AWS/GCP

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