Energy Data Engineer - Greenfield Platform (Hybrid)

Data Freelance Hub
London
1 week ago
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A leading data consultancy in London is seeking a Data Engineer for an initial 6-month contract. The role is hybrid, requiring 2 days onsite each week, with an exciting opportunity to design and build a Greenfield Data Engineering platform in the Energy/Commodities trading sector. Candidates must have experience with Python, Spark, and either Azure or AWS. This opportunity offers competitive compensation of £600 per day, and it's an excellent chance to contribute to a well-established business.
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