Quantitative Researcher - XVA

Deutsche Bank
London
4 days ago
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Quantitative Strategist – Deutsche Bank, London


Group Strategic Analytics (GSA) is part of Group Chief Operation Office (COO) that bridges the Bank’s businesses and infrastructure functions to deliver efficiency, control, and transformation goals.


You will join the DBAnalytics (DBA) group, the front‑office quant team that maintains and improves the analytics library used across all divisions of Deutsche Bank. It is used for trading and risk management of cash and derivatives in all asset classes, including rates, credit, FX, commodities, inflation, corporate finance, money markets, mortgages, hybrids, emerging markets, and X‑value adjustment (XVA). DBA also supports many of Deutsche Bank’s regulatory and portfolio calculations.


What we’ll offer you

We are committed to an environment with development and wellbeing at its centre.



  • Hybrid working – eligibility to work remotely part of the time
  • Competitive salary and non‑contributory pension
  • 30 days’ holiday plus bank holidays, with option to purchase additional days
  • Life assurance and private healthcare for you and your family
  • Flexible benefits: retail discounts, Bike4Work scheme, gym benefits
  • CSR programme support + 2 days’ volunteering leave per year

Your key responsibilities

  • Improve existing models and implement new models for pricing and risk management of counterparty exposure and XVA.
  • Work in partnership with Trading, other Strats, Structuring, IT, Model Validation, Credit Risk Management and Finance teams to support them to achieve their goals and improve the modelling of XVA/Counterparty Credit Risk.
  • Document and test new and existing models.

Your skills and experience

  • Excellent quantitative, modelling, pricing and risk management skills, with experience within a financial services environment.
  • Strong computing and programming skills, experience with Python, Matlab, R, S‑Plus, C++, SQL and Oracle.
  • Expertise in counterparty risk and derivatives from professional experience or education is desirable.
  • Education: MSc / PhD in Finance, Maths, Physics, Computer Science, Econometrics, Statistics or Engineering.
  • Strong mathematics: probability, stochastic calculus and numerical methods (finite differences, Monte Carlo).
  • Excellent interpersonal skills; ability to collaborate, partner with various teams and communicate effectively.

How we’ll support you

  • Training and development to help you excel in your career.
  • A suite of flexible benefits that you can tailor to suit your needs.
  • We value diversity and, as an equal‑opportunity employer, make reasonable adjustments for those with a disability, including assistive equipment if required.

About us

Deutsche Bank is the leading German bank with strong European roots and a global network.


Deutsche Bank in the UK is proud to have been named The Times Top 50 Employers for Gender Equality 2025 for six consecutive years. Additionally, we have been awarded a Gold Award from Stonewall and named in their Top 100 Employers 2024 for our work supporting LGBTQ+ inclusion.


If you have a disability, health condition, or require any adjustments during the application process, we encourage you to contact our Adjustments Concierge at to discuss how we can best support you. Alternatively, you can share your phone number and a member of the team will be happy to call you to talk through your specific requirements.


We strive for a culture in which we are empowered to excel together every day. This includes acting responsibly, thinking commercially, taking initiative and working collaboratively.


We welcome applications from all people and promote a positive, fair and inclusive work environment.


Seniority Level
  • Associate

Employment type
  • Full‑time

Job function
  • Other

Industries
  • Financial Services, Banking, and Investment Banking


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