Senior Quantitative Analyst

Quanteam UK
City of London
1 day ago
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Who we are looking for

We are seeking an experienced Senior Manager OR Director (SVP to Director Level) to join our Quantitative Finance advisory practice, focused on delivering quantitative solutions to clients. In this role, you will leverage your deep quantitative expertise to advise clients on derivatives modelling, risk and valuation methodologies, contributing directly to their strategic decision-making and business growth. As part of your responsibilities, you will:

  • Lead small and large multidisciplinary engagement and manage client relationship
  • Design and develop quantitative models and analytics tools (e.g. derivatives pricing, market data methodologies, XVA, capital models, market and counterparty credit risk modelling)
  • Provide thought leadership in quantitative methodologies, pricing techniques, risk and valuation frameworks and industry best practices
  • Lead project teams, mentor and supervise junior team members, ensure high-quality deliveries and adhere to model governance upmost standards
  • Support content generation and business development initiatives, including identifying new opportunities and developing proposals


Your competences

Technical:

  • Post-graduate degree in mathematical finance, science or maths from a top tier university
  • Minimum of 8-12 years of relevant experience in quantitative modelling and derivatives pricing across Front Office, Model validation or Risk functions within financial services
  • Solid background in stochastic calculus and data science including AI/ML techniques
  • Experience with flow and exotic products in one or more asset classes
  • Strong programming skills (e.g. C++, Rust, Python) and familiarity with software development processes and tooling


Behavioural:

  • Strong communication, team spirit and ability to collaborate with relevant stakeholders (e.g. Trading/Structuring/Technology/Risk/Finance)
  • Strong leadership and drive capabilities
  • Excellent problem-solving capabilities and analytical thinking


Benefits & Inclusion

We offer a competitive UK-aligned package, including:

  • Competitive salary and performance bonus
  • Private medical insurance, including mental health support
  • Pension
  • 25 days annual leave
  • Schemes: Cycle to work, Perks at work, Home and tech
  • Training and development opportunities


We are committed to a diverse and inclusive workplace where all individuals are respected and valued. We welcome applicants from every background and uphold equality across all characteristics. Diversity drives innovation and strengthens our ability to deliver exceptional results. Our aim is an environment where everyone can thrive and contribute to collective success.

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