Power Quantitative Analyst

Marlin Selection Recruitment
London
1 month ago
Create job alert

Our client, a commodities trading firm is looking for a Quantitative Analyst to join their trading team in London.

Your responsibilities will include:

  • Conducting the initial calibration of proprietary and off-the-shelf models
  • Reviewing the calibration of complex structured deals throughout their life cycle
  • Conducting and developing stress testing methodology
  • Supporting market risk in recognizing model output and back-testing for model calibration validation

You will need to have the following experience:

  • 2-5 years experience in an Power trading environment
  • 2+ years within the risk management function
  • Experience with Python

For more information, contact Sam at Marlin Selection and apply via the link provided.

Seniority level

  • Seniority levelMid-Senior level

Employment type

  • Employment typeFull-time

Job function

  • Job functionFinance and Analyst
  • IndustriesFinancial Services, Oil and Gas, and Renewable Energy Semiconductor Manufacturing

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