Global Banking & Markets - Quantitative Engineering - Analyst / Associate - London

Goldman Sachs
City of London
1 month ago
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Global Banking & Markets – Quantitative Engineering – Analyst / Associate - London

Job Description


At Goldman Sachs, quantitative strategists are renowned for their expertise in building and developing quantitative
and technological solutions to tackle complex analytical challenges. As a Portfolio Analytics strategist, you will
collaborate closely with trading desks and the business to define, implement, and manage the analytics required to
enhance decision‑making and maintain a competitive edge. This includes real‑time pricing, risk analytics, large‑scale
analysis, and optimizations, while ensuring scalability and addressing technical challenges.


Your Impact


As a portfolio analytics strategist, you will work with trading desks and desk strategists to integrate pricing models into
state‑of‑the‑art risk management tools. You will be a key partner for the business on all risk management topics,
working across regions and analytical teams to develop scalable, cutting‑edge technology.


Responsibilities

  • Develop cutting‑edge risk management capabilities, providing fast and reliable tools for different desks and businesses.
  • Perform systematic and quantitative analysis of different markets and implement the most optimal risk calculations accordingly.
  • Work closely with trading and support risk management systems.
  • Be involved with all stages of the software development life cycle using a range of technologies and collaborate closely with engineering teams who support the underlying infrastructure and frameworks.

Qualifications

  • Excellent academic background in a quantitative field such as mathematics, physics, statistics, or computer science.
    A major in computer science with an interest in quantitative topics, or a quantitative background with a strong interest in implementation, is preferred.
  • Strong programming skills in an object‑oriented or functional paradigm such as C++, Java or Python.
  • Self‑starter with strong self‑management skills, ability to manage multiple priorities and work in a high‑paced environment.
  • Excellent written and verbal communication skills.
  • Experience up in finance or a cutting‑edge technology company is a plus.
  • Experience in building risk management systems (irrespective of asset class) is also a plus.
  • Previous quantitative or technical role working on or with a derivatives trading desk (irrespective of asset class) is also a plus.

About Goldman Sachs

At Goldman Sachs, we commit our people, capital and ideas to help our clients, shareholders and the communities we serve to grow. Founded in 1869, we are a leading global investment banking, securities and investment management firm, headquartered in New York, with offices around the world.


We believe who you are makes you better at what you do. We’re committed to fostering and advancing diversity and inclusion in our own workplace and beyond, ensuring that every individual within our firm has a number of opportunities to grow professionally and personally, from training and development opportunities to benefits, wellness and personal finance offerings and mindfulness programs.


We’re committed to finding reasonable accommodations for candidates with special needs or disabilities during our recruiting process.


© The Goldman Sachs Group, Inc., 2023. All rights reserved.


Goldman Sachs is an equal‑to‑opportunity employer and does not discriminate on the basis of race, colour, religion, sex, national origin, age, veterans status, disability, or any other characteristic protected by applicable law.


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