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Data Engineer | MLOps & Pipelines | Flexible Hours

Wheely
City of London
1 week ago
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A dynamic ride-hailing platform is seeking a Data Engineer to join their Data Team. The successful candidate will focus on enhancing data architecture, supporting data integration pipelines, and resolving data quality issues. Ideal candidates will have over three years of relevant experience, along with proficiency in SQL and Python. The role is based in West London, offering competitive salary and a range of benefits including equity options and medical insurance.
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