Global Banking & Markets - Quantitative Developer - VP - London (Basé à London)

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Holloway
4 weeks ago
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Global Banking & Markets - Quantitative Developer - VP - London

Join to apply for theGlobal Banking & Markets - Quantitative Developer - VP - Londonrole atGoldman Sachs.

Job Description

At Goldman Sachs, quantitative strategists are at the forefront of our business, solving real-world problems through various analytical methods. Working closely with traders and sales, strategists provide invaluable quantitative insights on complex financial and technical challenges that drive our business decisions.

We are a team dedicated to transforming the Equity business through quantitative trading and automation of key decisions. Our scope includes product types such as stocks, options, ETFs, and futures, with strategies like market making, automatic quoting, risk management, systematic trading, and algorithmic execution across global venues. We utilize statistical analysis and mathematical models to enhance business performance, collaborating with traders and sales on the trading floor to deliver value to clients and the firm.

Role Responsibilities

  • Lead our Quantitative Trading & Market Making desk by developing market making and quoting strategies across equity products, from cash to derivatives.
  • Implement automated hedging algorithms and develop platforms for centralized risk management across asset classes.
  • Build and enhance data pipelines for advanced statistical and AI models, handling large-scale time series data.
  • Drive the development of our market making platform using various technologies, working closely with Quant Researchers and engineering teams.
  • Take ownership of architectural decisions and the implementation of market making platforms, both strategically and operationally.

Basic Qualifications

  • Strong academic background in a quantitative field such as physics, mathematics, statistics, engineering, or computer science.
  • Proficiency in programming languages like C++, Java, or Python, with experience in object-oriented or functional paradigms.
  • Self-motivated with excellent self-management skills, capable of managing multiple priorities in a high-pressure environment.
  • Excellent written and verbal communication skills.

About Goldman Sachs

Goldman Sachs is committed to fostering diversity and inclusion, offering numerous opportunities for professional and personal growth through training, development programs, and benefits. Founded in 1869 and headquartered in New York, we operate globally to serve our clients, shareholders, and communities.

We are dedicated to providing reasonable accommodations for candidates with disabilities during our recruitment process. Learn more: Disability Statement.

The Goldman Sachs Group, Inc., 2023. All rights reserved. Goldman Sachs is an equal employment/affirmative action employer.

Additional Information

  • Seniority level: Mid-Senior level
  • Employment type: Full-time
  • Job function: Finance and Sales

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