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Analytics & Data Science Manager

0840 Deutsche Bank Aktiengesellschaft, Filiale London
London
1 week ago
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Job Title: Analytics & Data Science Manager

Location: London

Corporate Title: Director

Group Strategic Analytics (GSA) is part of the Group Chief Operating Office (COO), acting as a bridge between the Bank’s business and infrastructure functions to support efficiency, control, and transformation goals.

You will work within the Global Strategic Analytics Team, leading a global model strategy and deployment of Name List Screening (NLS) and Transaction Screening (TS). Success in this role requires familiarity with recent data science methodologies, a delivery-focused attitude, strong analytical skills, and a detail-oriented approach to complex matters. You will collaborate with a global team, focusing on people development and career growth.

What we offer:

  • Hybrid Working: a model allowing eligible employees to work remotely part of the time
  • Competitive salary and non-contributory pension
  • 30 days’ holiday plus bank holidays, with options to purchase additional days
  • Life Assurance and Private Healthcare for you and your family
  • Flexible benefits including Retail Discounts, Bike4Work scheme, and Gym benefits
  • Support for CSR programs and 2 days’ volunteering leave annually

Your key responsibilities:

  • Define and execute the regional model framework for transaction monitoring, ensuring alignment with global strategy
  • Manage a global team of 15-20 modelers and data scientists in model development, tuning, and optimization
  • Ensure monitoring systems adhere to governance standards, with transparent metrics and reporting
  • Identify and assess emerging technologies to enhance detection capabilities
  • Represent the function in regulatory discussions, audits, and internal committees; travel may be required

Your skills and experience:

  • Relevant experience in financial services, especially in model development or quantitative risk leadership
  • Hands-on experience with Machine Learning and Artificial Intelligence, preferably in a regulated environment
  • Deep expertise in screening processes (NLS and TS), with experience in platforms like Actimize or Fircosoft
  • Proficiency in model development languages such as Python, SQL, R
  • Knowledge of machine learning techniques for tuning or anomaly detection is a plus
  • Understanding of sanctions screening, AML risk, and financial crime regulations

Support provided:

  • Training and development opportunities
  • Culture of continuous learning
  • Flexible benefits tailored to individual needs
  • Inclusivity and reasonable adjustments for disabilities

About us:

Deutsche Bank is a leading German bank with a strong European presence and global network. We are committed to fostering an inclusive environment where everyone can excel. We welcome applications from all backgrounds and promote diversity and fairness in our workplace.


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