New

Optimization Quantitative Researcher (Neutrality)

New York, New York, United States

Schonfeld Strategic Advisors LLC has an opening for an Optimization Quantitative Researcher (Neutrality) in New York, New York.

The position duties are as follows: Work closely with other researchers, and portfolio managers to optimize our intraday global equities strategies to increase overall returns. The optimizations will spend reduction in trade cost, risk and drawdown while increasing the positive returns of individual strategies and overall portfolio. Daily job duties include:

  • Design, develop, and backtest optimization algorithms and libraries that can be expanded and generalized for the usage of other teams at Schonfeld.
  • Take inputs from various quantitative models such as trade-cost model, barra risk models and others, and combine to apply to a wide range of global equities strategies in order to minimize cost and increase risk adjusted returns; and
  • Leverage Schonfeld’s top-notch databases, backtesting, and optimization infrastructure to develop models around alphas, execution, and risk management.
  • Design, build and backtest optimization-based alphas to diversify the current strategy library
  • Evaluate and experiment with other optimization tools to upscale Schonfeld’s optimization implementation.

The position requires a Master’s degree in Mathematics, Physics, Statistics, Operations Research, Financial Engineering, a related field, or foreign equivalent, plus 2 years of experience as a Quantitative Researcher focusing on any areas which can increase returns and reduce costs, including optimization to reduce intraday risk and transaction and reinforcing alpha signals within the financial services industry. Experience must include:

  1. 2 years of experience with Mosek optimization and Fusion API;
  2. 2 years of experience with at least 3 additional optimization tools & solvers such as: CVXPY, Gurobi, SciPy, CVXOPT, Bayesian Optimization
  3. 1 year of experience with KDB+/Q;
  4. 2 years of experience using Python and Pandas for processing large data sets.
  5. 2 years of professional or academic experience in conic and nonconvex optimization
  6. 2 years of professional or academic experience in reinforcement learning, specifically in resource allocation and experimental design
  7. 2 years of experience in global equities

Part time telecommuting permitted.

Wage Range: $215,000 - $257,100

Resumes to Dylan Katz [dkatz@schonfeld.com], Ref. LX25

Schonfeld Strategic Advisors LLC is an Equal Opportunity Employer

#LI-DNI

Apply for this job

*

indicates a required field

Resume/CV

Accepted file types: pdf, doc, docx, txt, rtf

Cover Letter

Accepted file types: pdf, doc, docx, txt, rtf