Global energy trading platform automating trade workflows and risk management
Centrica Energy operates an energy trading business spanning eight global offices, with a tech stack anchored in Python, C#/.NET, and SQL—typical for quantitative finance but paired with Power BI and Dash for real-time reporting. Active hiring is concentrated in engineering (6 roles, mostly mid-to-senior) alongside ops and finance, reflecting a push to automate trade settlements, valuation modeling, and risk systems. The project list—trade finance automation, platform migration, credit risk systems, real-time reporting—signals a maturing engineering organization moving away from manual spreadsheet-driven workflows toward integrated trading infrastructure.
Centrica Energy is a global energy trading company headquartered in London, operating offices across all time zones to trade and move energy from source to end users. The business spans gas and power trading, corporate PPAs, renewables, and asset management, with a stated mission to support the green transition while stabilizing costs for suppliers and offtakers. The organization spans 501–1,000 employees and is structured around trading, finance, risk, and ops functions. Leadership emphasizes workplace culture—the Danish and UK entities hold Great Place to Work certification, and the Danish operation was recognized for gender equality and among Europe's best workplaces.
Python, Pandas, C#, .NET, SQL, Azure, Power BI, and Dash. Jira and Office tools (Word, PowerPoint) are also in use. No major technology replacements are underway.
Actively recruiting in Denmark, United Kingdom, and United States. Current open roles span engineering, operations, finance, risk, and support functions.
Automation of trade settlements and finance workflows, migration and optimization of trading platforms, real-time reporting systems, credit risk infrastructure, market data integration, and valuation modeling—all aimed at reducing manual processes and operational risk.
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