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JPMorgan Chase

Quantitative Research Equity Derivatives

JPMorgan Chase, New York, New York, us, 10261


DESCRIPTION:

Duties: Apply stochastic process, finite difference and Monte-Carlo methods, probability theory, and other quantitative methods to design, implement, and maintain quantitative models for the pricing, hedging, and risk management of equity derivatives products. Design efficient numerical algorithms and implement high performance computing solutions. Implement risk measurement and valuation models in trading software and systems. Analyze and interpret statistical data to identify driving factors, major risks, and trading opportunities in equity exotics market. Explain model behavior to traders and help them use quantitative tools. Identify major sources of risk in portfolios. Conduct scenario analyses and provide back test and analysis in trading strategies. Support equity exotics trading desk on day-to-day risk decomposition and P&L explanation. Resolve pricing failures and booking issues. Evaluate quantitative methodologies, such as identifying and monitoring model risk associated with quantitative models and assessing their appropriateness and limitations for valuation and risk management. Approve new financial products and maintain existing products in partnership with the Model Risk Governance and Review Group, the Valuation Control Group, and the Market Risk Group.

QUALIFICATIONS:

Minimum education and experience required: Master’s degree in Financial Engineering, Engineering, Mathematics, Statistics, Physics, or related field of study plus (1) One year of experience in the job offered or as Quantitative Research Equity Derivatives, Quant Strats Equity Derivatives, Quant Strats, or related occupation.

Skills Required:

Requires experience in the following: probability theory and statistics; stochastic process and stochastic calculus; numerical methods including Monte-Carlo, PDE and Tree engines, Euler and Milstein schemes, and random number generation; linear and non-linear optimization methods; application of data analytics and machine learning techniques to derivatives pricing; valuation and modeling of exotic derivative options; equity exotic products; delivering tools to trading and structuring teams that tailor products to clients’ needs; building models that facilitate the trading desks’ hedging practices; C++; Python; design patterns, data structures, and containers; and C++ based industrial quantitative libraries. Experience with these skills can be gained through graduate-level coursework.

Job Location:

383 Madison Avenue, New York, NY 10179. Telecommuting permitted up to 20% of the week.

Full-Time. Salary:

$200,000 - $285,000 per year.

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