Global Banking & Markets - GSET - Quantitative Strategist - London - VP
Global Banking & Markets - GSET - Quantitative Strategist - London - VP

Global Banking & Markets - GSET - Quantitative Strategist - London - VP

Full-Time 80000 - 100000 ÂŁ / year (est.) No home office possible
Goldman Sachs

At a Glance

  • Tasks: Enhance execution algorithms and conduct quantitative research in a dynamic trading environment.
  • Company: Join Goldman Sachs, a leading global investment banking firm with a commitment to innovation.
  • Benefits: Enjoy competitive salary, professional development, and a diverse, inclusive workplace.
  • Why this job: Make a real impact on financial markets while collaborating with top experts in the field.
  • Qualifications: Advanced degree in a quantitative discipline and 5+ years of relevant experience required.
  • Other info: Access cutting-edge technology and one of the most comprehensive datasets in the industry.

The predicted salary is between 80000 - 100000 ÂŁ per year.

Goldman Sachs Electronic Trading (GSET) sits at the intersection of technology, quantitative research, and global markets. We design and operate the firm's suite of electronic execution algorithms that enable institutional clients to access liquidity and execute orders efficiently. Within GSET, the Algo R&D team is responsible for the research, design, and continuous improvement of our execution algorithm platform. We combine deep expertise in market microstructure, statistical modelling, and machine learning with world‑class engineering to build algorithms that optimise execution quality, minimise market impact, and adapt intelligently to real‑time market conditions. Our work spans the full lifecycle of algorithmic trading — from research into price formation and liquidity dynamics, through model development and back‑testing, to production deployment and live performance monitoring. We partner closely with traders, technologists, sales teams, and clients to ensure our algorithms remain at the forefront of the industry.

As a member of the London‑based Algo R&D team, you will join a collaborative, intellectually rigorous group that values innovation, scientific integrity, and real‑world impact. You will have access to one of the most comprehensive datasets in the industry, cutting‑edge infrastructure, and a global network of experts — all in service of solving some of the most challenging problems in modern financial markets.

Who We Look For

  • We seek individuals who combine intellectual curiosity with commercial pragmatism — people who are as excited about solving a hard research problem as they are about seeing their work drive measurable improvements in execution quality for our clients.
  • First‑principles thinkers — You don’t just apply off‑the-shelf models; you deeply understand the assumptions behind them and know when to challenge or adapt them to the realities of live markets.
  • Collaborative partners — You thrive in a team environment where ideas are debated openly. You enjoy working across disciplines — with technologists, traders, salespeople, and clients — and can tailor your communication to each audience.
  • Impact‑oriented — You measure success not just by the elegance of your models but by their impact on execution quality. You are motivated by outcomes that matter to the business and our clients.
  • Continuous learners — You stay at the frontier of quantitative research, whether that means reading the latest papers on optimal execution, experimenting with new ML techniques, or learning from post‑trade analytics.
  • Culture carriers — You contribute to an inclusive, high‑performance team culture. You are willing to mentor others, share knowledge, and uphold the highest ethical standards in everything you do.

Responsibilities

  • Enhance execution algorithms (e.g., VWAP, Participate, adaptive/liquidity‑seeking strategies) for cash equities.
  • Conduct rigorous quantitative research on market microstructure, order‑book dynamics, venue analysis, and transaction cost analysis (TCA).
  • Build and maintain statistical and machine learning models for short‑term price prediction, fill‑rate estimation, market‑impact modelling, and optimal order placement/scheduling.
  • Collaborate with technology teams to productionise research into low‑latency, high‑reliability trading systems.
  • Perform back‑testing, simulation, and live A/B testing of algorithm enhancements; define and track performance metrics.
  • Analyse large‑scale tick data to identify alpha opportunities and areas for algo improvement.
  • Partner with sales, trading, and client‑facing teams to translate client feedback and business requirements into research priorities.
  • Stay current with academic literature, regulatory changes (e.g., MiFID II best‑execution obligations), and competitive landscape in electronic trading.
  • Present research findings and strategic recommendations to senior stakeholders and cross‑functional partners.

Basic Qualifications

  • Advanced degree (Master's or PhD) in a quantitative discipline — Mathematics, Statistics, Physics, Computer Science, Financial Engineering, or a related field.
  • 5+ years of experience in quantitative research related to execution/trading algorithms at a sell‑side bank, buy‑side firm, or proprietary trading firm.
  • Deep understanding of market microstructure concepts: order types, venue fragmentation, latency, queue priority, and market‑impact models.
  • Proven experience with statistical modelling, time‑series analysis, and/or machine learning applied to financial data.
  • Proficiency in working with large datasets (tick data, order‑book snapshots).
  • Solid grasp of transaction cost analysis (TCA) methodologies and execution benchmarks.
  • Excellent communication skills — ability to convey complex quantitative concepts to both technical and non‑technical audiences.

Preferred Qualifications

  • Experience with equities execution algos in European or global markets.
  • Understanding of regulatory frameworks relevant to algorithmic trading (MiFID II).
  • Strong programming skills in Python.
  • Ability to query data in kdb+/q.
  • Familiarity with reinforcement learning or deep learning techniques applied to optimal execution problems.

Global Banking & Markets - GSET - Quantitative Strategist - London - VP employer: Goldman Sachs

Goldman Sachs is an exceptional employer, offering a dynamic work environment in London where innovation and collaboration thrive. Employees benefit from access to cutting-edge technology, extensive training opportunities, and a commitment to diversity and inclusion, ensuring personal and professional growth. The Algo R&D team fosters a culture of intellectual curiosity and impact-driven results, making it an ideal place for those passionate about quantitative research and algorithmic trading.
Goldman Sachs

Contact Detail:

Goldman Sachs Recruiting Team

StudySmarter Expert Advice 🤫

We think this is how you could land Global Banking & Markets - GSET - Quantitative Strategist - London - VP

✨Tip Number 1

Network like a pro! Reach out to folks in the industry, especially those at Goldman Sachs. Use LinkedIn to connect and engage with them. A friendly chat can sometimes lead to opportunities that aren’t even advertised!

✨Tip Number 2

Prepare for interviews by diving deep into quantitative research topics relevant to the role. Brush up on market microstructure and algorithmic trading concepts. We want you to show off your knowledge and passion during those interviews!

✨Tip Number 3

Don’t just wait for job postings; be proactive! Check our website regularly and apply directly through it. This shows initiative and gives you a better chance of being noticed by hiring managers.

✨Tip Number 4

Practice your communication skills! You’ll need to explain complex ideas clearly to both technical and non-technical audiences. Try explaining your research or projects to friends or family to get comfortable with it.

We think you need these skills to ace Global Banking & Markets - GSET - Quantitative Strategist - London - VP

Quantitative Research
Market Microstructure
Statistical Modelling
Machine Learning
Execution Algorithms
Transaction Cost Analysis (TCA)
Data Analysis
Programming in Python
Kdb+/q Querying
Back-Testing
Communication Skills
Collaboration
Problem-Solving
Adaptability
Continuous Learning

Some tips for your application 🫡

Tailor Your CV: Make sure your CV reflects the skills and experiences that align with the role of a Quantitative Strategist. Highlight your quantitative research experience, especially in algorithmic trading, and don’t forget to mention any relevant projects or achievements.

Craft a Compelling Cover Letter: Your cover letter is your chance to show us your personality and passion for the role. Explain why you’re excited about working at Goldman Sachs and how your background makes you a great fit for the GSET team. Be specific about your interest in market microstructure and execution algorithms.

Showcase Your Technical Skills: Since this role requires strong programming skills, make sure to highlight your proficiency in Python and any experience with statistical modelling or machine learning. If you've worked with large datasets or have knowledge of kdb+/q, definitely include that!

Apply Through Our Website: We encourage you to apply directly through our website. It’s the best way to ensure your application gets into the right hands. Plus, it shows us you’re serious about joining our team at Goldman Sachs!

How to prepare for a job interview at Goldman Sachs

✨Know Your Algorithms

Make sure you have a solid understanding of the execution algorithms mentioned in the job description, like VWAP and liquidity-seeking strategies. Be prepared to discuss how you would enhance these algorithms based on your quantitative research experience.

✨Showcase Your Collaboration Skills

Since this role involves working closely with traders, technologists, and clients, be ready to share examples of how you've successfully collaborated across disciplines. Highlight your ability to tailor communication for different audiences, as this will demonstrate your fit within the team.

✨Demonstrate Continuous Learning

Stay updated on the latest trends in quantitative research and algorithmic trading. Bring up recent papers or techniques you've explored, especially those related to market microstructure or machine learning, to show your commitment to continuous improvement.

✨Prepare for Technical Questions

Expect to face technical questions related to statistical modelling, time-series analysis, and transaction cost analysis. Brush up on your programming skills in Python and be ready to discuss how you've applied these skills to real-world financial data.

Global Banking & Markets - GSET - Quantitative Strategist - London - VP
Goldman Sachs

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