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Power Analysis Manager

Pangea
London
11 months ago
Applications closed

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About the Role:

Pangea is seeking an experienced European Power Analysis Manager to lead a statistical and fundamental modelling team in London. In this role, you will oversee the development of advanced power market models, driving critical insights that shape my client's energy trading strategies across Europe. Your leadership will ensure the delivery of accurate and actionable analysis while creating a collaborative team environment.


The client:

Global leader in the Natural Gas, LNG, and Power Markets. Due to an internal move, they are seeking to make a manager-grade hire.


Key Responsibilities:

- Led and managed a team of power market modellers.

- Develop and refine statistical and fundamental models for European power markets.

- Provide strategic insights to support trading decisions.

- Collaborate with cross-functional teams to integrate modeling outputs.


Qualifications:

- Proven experience in power market analysis or a related field.

- Strong leadership skills with a track record of managing analytical teams.

- Expertise in statistical modeling and data analysis.

- In-depth knowledge of European energy markets.


Please click the link and apply if this is of interest!

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