Quantitative Developer

Caxton Associates
London
6 days ago
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About Caxton

Caxton Associates, founded in 1983, is a global trading and investment firm with offices in London, New York, Monaco, Singapore and Dubai. Caxton Associates’s primary business is to manage client and proprietary capital through global macro hedge fund strategies. Assets are managed via a broad mandate to trade in a variety of global markets and instruments.


About the Role

Caxton seeks a Quantitative Developer to join the firm’s Quantitative Development & Data team (QDD).


QDD is responsible for architecture and development of libraries, web services, dashboards, and databases that facilitate Portfolio Managers' alpha generation, strategy deployment, and risk management.


The team has presence in both London and New York. They work closely with the Quantitative Analytics Group as well as Trading Staff.


Responsibilities

  • Build and maintain quant libraries in Python.
  • Build and maintain scalable web services for applications and front office users.
  • Promote best coding practices within the firm.
  • Build front end tools for market monitoring, trade screening and risk management. Front end tools can be either web dashboards or Excel tools backed by robust libraries or web services.
  • Design and build data solutions and ETLs (using SQL, no-SQL, C#, and Python) for market data, quant analytics and alpha generation.

Qualifications

  • 5+ years of relevant experience
  • Bachelor's degree, preferably in a quantitative degree
  • Excellent quantitative reasoning and software design
  • Demonstrated professional Python skills
  • Clear grasp of SQL and relational database fundamentals
  • Strong verbal and written communication skills
  • Operates with the highest degree of ethics and integrity

Nice to have

  • Knowledge of financial instruments & data: FX, Futures, Interest Rates derivatives, Options
  • Proficiency in another programming language such as C#, Java or C++
  • Web development skills
  • Experience with AWS


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