IED, Equity Derivatives Strat - Corporate Derivative Modelling, Associate

Morgan Stanley
London
2 months ago
Applications closed

Company Profile:

Morgan Stanley is a leading global financial services firm providing a wide range of investment banking, securities, investment management and wealth management services. The Firm's employees serve clients worldwide including corporations, governments and individuals from more than 1,200 offices in 43 countries.

As a market leader, the talent and passion of our people is critical to our success. Together, we share a common set of values rooted in integrity, excellence and strong team ethic. Morgan Stanley can provide a superior foundation for building a professional career - a place for people to learn, to achieve and grow. A philosophy that balances personal lifestyles, perspectives and needs is an important part of our culture.

Morgan Stanley's Equities Derivatives division is looking for a strategist/quantitative analyst for its Corporate Derivative Strat team. Corporate Derivative Strategists are key participants, together with traders, in the revenue-generating and risk management activities of our Sales & Trading Division. Corporate Derivative Strategists are the primary modellers for new products for the Corporate Derivative desk, and team with the traders to deliver innovative ideas using models to analyse risks and opportunities in the corporate trading books.

What will you be doing?

  1. Implement new models and algorithms for the valuation of derivatives and support the existing analytics library.
  2. Conduct analysis of complex trades to assess the best pricing method.
  3. Analyse and manage the risk of the positions currently in the book.
  4. Create tools to assist decision making & increase efficiency in sales and trading.


What we're looking for?

  1. An advanced degree in a quantitative subject such as Engineering, Applied Mathematics, Physics, Software Engineering is mandatory.
  2. Very strong modelling skills, with knowledge of equity derivatives models a strong plus.
  3. Very strong programming skills in an object-oriented language applied within the library of a front office team.
  4. Good knowledge of Probability, Numerical Analysis, Stochastic Calculus, Approximation theory, Partial Differential Equation and an expertise in either of these subjects.
  5. Drive and desire to work in an intense team-oriented environment.
  6. Ability to communicate effectively in both written and verbal English.


Equal opportunities statement:
Morgan Stanley is an equal opportunities employer. We work to provide a supportive and inclusive environment where all individuals can maximize their full potential. Our skilled and creative workforce is comprised of individuals drawn from a broad cross section of the global communities in which we operate and who reflect a variety of backgrounds, talents, perspectives, and experiences. Our strong commitment to a culture of inclusion is evident through our constant focus on recruiting, developing, and advancing individuals based on their skills and talents.#J-18808-Ljbffr

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