Pricing and Transaction Manager

Utility People
Milton Keynes
1 year ago
Applications closed

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Do you have experience inpricing and risk managementformajor I&C energy clients? Our client, a leading energy consultancy, is seeking ananalytical and skilled risk management professionalto join their team. In this role, you’llanalyse the UK energy market,assess key drivers, evaluate energy risks in the power and gas sectors and deliver valuable insights to both internal teams and clients. If you have a background inenergy consultancy, experience in pricing and risk management strategies and excel at client engagement - APPLY TODAY!

Key Responsibilities:

Provide and deliver market insights and lead client risk management meetings. Provide forward-buying recommendations and lead bi-weekly wholesale market webinars. Leading client risk management meetings and providing forward buying recommendations Liaison with suppliers and strategic client account management Ensure risk management activities are completed to a high standard Ensure client risk management meetings are conducted in a professional manner

Key Skills:

Pricing and risk management experience from an energy consultancyExpertise in energy risk management, supplier contract offerings and client management. Knowledge of supplier contract product offerings and operation of different supplier contracts Strong organisational and multitasking skills with the ability to manage a team (desirable). Strong written communication and analytical skills. Degree in Finance, Economics, Data Science, or a related field. Experience or interest in energy markets.

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