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Energy Trading Data Engineer: Forecasting & Pipelines

Octopus Energy Group
City of London
5 days ago
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An innovative energy company based in London is seeking a Data Analyst to forecast power demand and optimise trading strategies using Python and market data. The ideal candidate will have experience with machine learning and a strong understanding of the German and European electricity market. Fluency in both German and English is required. This role offers transparency in salary and a unique culture focused on autonomy and learning.
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