Energy Risk Analyst

Utility People
Milton Keynes
1 year ago
Applications closed

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Do you have experience working withinpricing/risk managementon behalf ofmajor I&C energy clients?A leading energy consultancy is expanding its Trading and Risk Management team. They are looking for a talented and analyticalRisk Analystwith a passion for energy markets. This role involves supporting trading operations, analysing energy risks in power and gas markets, and delivering key insights to both internal teams and clients. You MUST have experience working within the energy industry, skilled with risk management strategies and confident when to speaking with clients.– If this sounds like you, APPLY NOW!!

Key Responsibilities:

Conduct market reporting and analysis to highlight risks and opportunities. Identify short-, medium-, long-term market risks by analysing trends, historical patterns, and key drivers. Manage trade requests and support risk management processes. Provide data analysis and actionable insights for decision-making. Identify trends, and generate insights for client-facing and sales teams Manage bespoke risk-managed client portfolios.

Key Skills:

Strong written communication and analytical skills. Proficiency in Microsoft Excel. Strong background working within the energy sector. Degree in Finance, Economics, Data Science, or a related field. Experience or interest in energy markets. Experience with programming languages such as VBA and Python Background in trading or risk management and energy markets.

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