Senior Quantitative Analyst (Energy Trading)

Bonhill Partners
London
9 months ago
Applications closed

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We're currently supporting an Energy Trading Firm in their search for a Quantitative Analyst to join their Quant Analytics group. The successful candidate will be responsible for implementing pricing and risk models used across Power, Renewables & Gas.


Key Responsibilities:

  • Development, implementation, calibration & backtesting of pricing and risk models.
  • Development of pricing tools and applications for traders.
  • Advise traders and structures on methodologies.


Required Experience:

  • Quantitative Analyst working within an energy trading company, or on an energy trading desk.
  • Quant modelling experience - Pricing/Risk models.
  • Experience of energy trading - Power Purchase Agreements, Renewable Energy, Gas Trading, Spark Spread, Storages
  • Strong C++ / Python programming


Look forward to hearing from you!

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