Execution Strategy Quant (Cash Equities), Director

Execution Strategy Quant (Cash Equities), Director

Full-Time 100000 - 150000 £ / year (est.) No working from home possible
Citibank (Switzerland) AG

At a Glance

  • Tasks: Design and develop cutting-edge algorithmic trading systems for real-time execution.
  • Company: Join Citi's innovative Electronic Execution & Algo Trading Quant team.
  • Benefits: Enjoy a competitive salary, hybrid work model, and opportunities for professional growth.
  • Other info: Collaborative culture with excellent career advancement opportunities.
  • Why this job: Make a tangible impact in live markets with your code and strategies.
  • Qualifications: 10+ years in algo quant roles; strong programming skills in Java or C++ required.

The predicted salary is between 100000 - 150000 £ per year.

Citi's Electronic Execution & Algo Trading Quant team is seeking an experienced execution strategist to research, design, develop, and maintain the algorithmic trading systems that define Citi's execution product. You will be at the heart of a world-class electronic trading franchise, building the next generation of execution strategies, owning the full lifecycle from idea generation and research through implementation and testing to production deployment and continuous improvement.

If you are the kind of person who wants to see your code running in live markets, your signals driving real execution decisions, and your models measurably improving outcomes for clients and the firm, this role was built for you.

Responsibilities
  • Execution Algorithm Design & Development
    • Design, implement, and maintain production execution algorithms from scheduling models to adaptive allocation strategies driven by real-time signals and analytics.
    • Build and enhance and optimize venue selection, queue priority modelling, and dark/lit routing across fragmented equity markets.
    • Develop and improve execution models that account for market impact, timing risk, and other key cost drivers.
    • Leverage AI and machine learning tools across the development lifecycle, from accelerating research and prototyping to enhancing model validation, code review, and continuous performance monitoring in production.
    • Develop and maintain client-specific algorithm customizations, respond to BAU and analytics requests, and lead investigations into order behaviour and execution performance queries raised by clients or internal stakeholders.
  • Quantitative Research & Signal Development
    • Understand and study equity market microstructure: order book dynamics, venue behaviour, queue mechanics, adverse selection, and execution impact.
    • Build and back-test models on tick-level and order-level data; translate findings into production components with measurable performance improvements.
    • Model internal and external liquidity sources to optimize algo interaction across the full liquidity landscape.
  • Production Engineering & Delivery
    • Write clean, efficient, production-quality code where latency, correctness, and resilience are non-negotiable.
    • Own the full development lifecycle: design, testing, deployment, monitoring, and iteration based on live performance data.
    • Build analytics and reporting tools to measure execution quality, identify performance gaps, and surface improvement opportunities.
    • Contribute to platform architecture and scalability as volumes, markets, and complexity grow.
  • Collaboration & Stakeholder Engagement
    • Partner with traders, electronic trading specialists, and technology teams to refine models and influence execution strategy in real time.
    • Collaborate with Sales and Client Coverage to translate client execution needs into algorithmic enhancements and bespoke solutions.
    • Work in close partnership with control functions such as Legal, Compliance, Market and Credit Risk, Audit, Finance to ensure appropriate governance and control infrastructure.
  • Culture, Risk & Compliance
    • Build a culture of responsible finance, good governance and supervision, expense discipline and ethics.
    • Be familiar with and adhere to Citi's Code of Conduct and the Plan of Supervision for Global Markets and Securities Services; and ensure that all team members understand the need to do the same.
    • Adhere to all policies and procedures as defined by your role which will be communicated to you.
    • Obtain and maintain all registrations/licenses which are required for your role, within the appropriate timeframe.
    • Appropriately assess risk when business decisions are made, demonstrating particular consideration for the firm's reputation and safeguarding Citigroup, its clients and assets, by driving compliance with applicable laws, rules and regulations, adhering to Policy, applying sound ethical judgment regarding personal behaviour, conduct and business practices, and escalating, managing and reporting control issues with transparency.
Qualifications
  • 10+ years of experience in a comparable Algo Quant, Quantitative Developer or Strategist role, ideally in Cash Equities or FX but candidates with analogous experience in other areas are considered too.
  • Strong technical and programming skills are essential, with proficiency in low latency and resilient Java or C++ required. Proficiency in Python and/or KDB+/q for tick data analytics and real-time signal computation is highly desirable. Exposure to market data and derived statistics and analytics is a plus.
  • Proven experience in software architecture design and engineering principles, with a demonstrable track record of building systems where low latency and high throughput are crucial. Candidates should be comfortable designing and reasoning about distributed architectures, lock-free concurrency, memory management, and the trade-offs inherent in real-time trading infrastructure.
  • Strong grounding in probability and statistics for quantitative inference, combined with a solid understanding of equity market microstructure, including the mechanics of limit order books, queue dynamics and priority, venue fragmentation across lit and dark pools, adverse selection, and market impact cost modelling.
  • Master's or PhD in Engineering, Computer Science, Finance, Mathematics, or a related field is preferred. Strong candidates with a Bachelor's degree and relevant experience are also welcome to apply.

Execution Strategy Quant (Cash Equities), Director employer: Citibank (Switzerland) AG

Citi is an exceptional employer for the Execution Strategy Quant role, offering a dynamic hybrid work environment in London that fosters innovation and collaboration. With a strong commitment to employee growth, Citi provides access to cutting-edge technology and resources, enabling you to develop and implement algorithmic trading strategies that have a real impact on market performance. The company promotes a culture of responsible finance and ethics, ensuring that employees thrive in a supportive atmosphere while contributing to the success of a world-class electronic trading franchise.

Citibank (Switzerland) AG

Contact Details:

Citibank (Switzerland) AG Recruitment Team

StudySmarter Expert Advice🤫

We think this is how you could land Execution Strategy Quant (Cash Equities), Director

Tip Number 1

Network like a pro! Reach out to folks in the industry on LinkedIn or at events. A friendly chat can open doors that a CV just can't.

Tip Number 2

Prepare for interviews by practising common questions and scenarios related to algorithmic trading. We recommend doing mock interviews with friends or using online platforms to get comfortable.

Tip Number 3

Showcase your skills! If you’ve got projects or code samples, share them during interviews. It’s a great way to demonstrate your expertise in Java, C++, or Python.

Tip Number 4

Don’t forget to apply through our website! It’s the best way to ensure your application gets seen by the right people. Plus, we love seeing candidates who are proactive!

We think you need these skills to ace Execution Strategy Quant (Cash Equities), Director

Algorithm Design
Production Code Development
Java
C++
Python
KDB+/q
Low Latency Systems

Some tips for your application 🫡

Tailor Your CV:Make sure your CV is tailored to the Execution Strategy Quant role. Highlight your experience in algorithmic trading, programming skills, and any relevant projects that showcase your ability to design and implement execution algorithms.

Craft a Compelling Cover Letter:Your cover letter should tell us why you're the perfect fit for this role. Share your passion for quantitative research and how your background aligns with our needs. Don't forget to mention specific experiences that demonstrate your expertise in cash equities or FX.

Showcase Your Technical Skills:Since we're looking for strong technical skills, make sure to highlight your proficiency in Java or C++, as well as any experience with Python or KDB+/q. Include examples of how you've used these languages in past projects to solve complex problems.

Apply Through Our Website:We encourage you to apply through our website for a smoother application process. This way, we can easily track your application and ensure it reaches the right team. Plus, it shows you're keen on joining us at StudySmarter!

How to prepare for a job interview at Citibank (Switzerland) AG

Know Your Algorithms

Make sure you brush up on your knowledge of algorithmic trading systems. Be prepared to discuss how you would design and implement execution algorithms, as well as your experience with adaptive allocation strategies and market impact modelling.

Showcase Your Coding Skills

Since strong programming skills in Java or C++ are essential, be ready to demonstrate your coding abilities. You might be asked to solve a problem on the spot, so practice writing clean, efficient code that meets low latency requirements.

Understand Market Microstructure

Familiarise yourself with equity market microstructure concepts like order book dynamics and queue mechanics. Be prepared to explain how these factors influence execution strategies and how you've applied this knowledge in past roles.

Engage with Stakeholders

Collaboration is key in this role, so think about examples where you've worked closely with traders or technology teams. Be ready to discuss how you translated client needs into algorithmic enhancements and how you handle feedback from various stakeholders.