Foreign Exchange Quantitative Trader

Deutsche Bank AG
London
4 days ago
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Overview

Job Title: Foreign Exchange Quantitative Trader


Location: London


The Foreign Exchange (FX) Electronic Trading business operates at the frontier between the latest quantitative algorithmic trading techniques and the world’s largest, most liquid and competitive market. The business is recognized for innovation and client service, consistently ranking as a top FX Spot and Swap market-maker globally. By combining market expertise, cutting edge quant research and ultra-low latency technology we aim to provide best in class pricing and risk management for our clients. You will be responsible for innovative idea generation through to real-time disciplined management of trading strategies across electronic and voice execution channels. We partner with sales to serve our client franchise, and technologists to evolve our offering. We foster a culture that is friendly, open-minded, curious, collaborative, intellectually honest, pragmatic, respectful and data driven.


What we’ll offer you

A healthy, engaged and well-supported workforce is better equipped to do their best work and to enjoy life inside and outside the workplace. We are committed to providing an environment with your development and wellbeing at its centre. You can expect:



  • Competitive salary and non-contributory pension
  • 30 days' holiday plus bank holidays, with the option to purchase additional days
  • Life Assurance and Private Healthcare for you and your family
  • A range of flexible benefits including Retail Discounts, a Bike4Work scheme and Gym benefits
  • The opportunity to support a wide ranging CSR programme with 2 days' volunteering leave per year

Your key responsibilities

The focus of the role is innovation in quantitative trading, pushing the frontier of our trading sophistication and automation forward. This includes collaborative signal and model research, developing new electronic trading strategies, partnering with our technologists to get those into production, and working with the rest of the trading team to manage the optimisation and evolution of the system. There will also be opportunities to meet clients, partner with sales and work with them to optimise the liquidity we provide to our client franchise.


Qualifications and experience

  • A solid understanding and practical experience of Machine Learning (ML), including modern deep learning methods. Ideally you will have experience in Python ML and Reinforcement Learning libraries such as Tensorflow, Keras, Jax, PyTorch
  • Strong programming skills, preferably in Python, KDB, ideally also Java or C++
  • Experience in quantitative research, data analysis, econometrics
  • Educated to PhD, Master’s degree level or equivalent qualification in Mathematics, Physics, Statistics, Machine Learning, Econometrics, Computer Science or equivalent work experience
  • Able to articulate ideas in a clear and concise manner to enable effective communication across a diverse range of people and backgrounds

How we’ll support you

Training and development to help you excel in your career. Coaching and support from experts in your team. A culture of continuous learning to aid progression. A range of flexible benefits that you can tailor to suit your needs.


Equal opportunity and adjustments

We value diversity and as an equal opportunities’ employer, we make reasonable adjustments for those with a disability such as the provision of assistive equipment if required (e.g. screen readers, assistive hearing devices, adapted keyboards).


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 on to discuss how we can best support you. 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. Together we share and celebrate the successes of our people. We welcome applications from all people and promote a positive, fair and inclusive work environment.



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