VP, Data Engineering & Modelling for Security Services AI

JPMorgan Chase & Co.
Bournemouth
5 days ago
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A global financial services company is looking for a Data Engineer to join their Security Services Data Modelling and Engineering team. You will design and develop scalable data pipelines on Databricks and collaborate with Data Architects and Business Analysts. The ideal candidate has strong proficiency in Python and a solid understanding of ETL concepts. This role is essential for building the data foundation supporting business insights and operational excellence. The position offers an opportunity to work in a dynamic and innovative environment.
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