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Regulatory Control – Data Governance & Capital - eFinancialCareers

eFinancialCareers
Glasgow
6 days ago
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Key consulting role in a leading bank with hybrid working.

We currently have an exciting opportunity, with an immediate focus on data governance, BCBS239 & B3EG compliance. The successful candidate will drive forward multiple capital and data governance initiatives including understanding and documenting data lineage, controls, and gaps for prioritized data elements.

Given this broad remit, the team works closely with a wide range of clients and stakeholders globally, including the Credit Risk and Market Risk departments, Operations, Regulatory Policy, and various Business Units. This breadth of interaction provides an excellent opportunity to learn and interact with a range of businesses and products across the firm. The Regulatory Controller team in Glasgow is part of the Global Regulatory function.

Detailed responsibilities include (but are not limited to):

  • High focus on existing and upcoming Capital rules (e.g. B3EG), the accuracy and compliance of our capital

calculations, and our ongoing governance and assurance agendas.

  • Develop and maintain detailed project plans across B3EG working groups as required.
  • Perform regulatory rule based self-assessments and facilitate implementation challenge sessions.
  • Ensure all project documentation is complete, accurate and up-to-date.
  • Collaborating across divisions to catalogue and document key interpretation and implementation decisions.
  • Collaborate across divisions to catalogue key data elements from originating source through to external regulatory

calculations and reporting (e.g.: COREP, Focus II, PRA/ECB/Bundesbank specific reporting), understanding any

transformation of data throughout the process.

  • Work with regulatory calculation and reporting teams to embed data management principles within business-as-

usual processes.

  • Help to develop the systems and processes used in the data cataloguing processes.
  • Support internal and external queries, including from audit and regulators as required (e.g. ECB onsite inspection)
  • Act as a key advisor, working alongside cross-functional teams on the implementation of both internal and external

capital projects.

You have:

  • Experience of regulatory reporting, data management or BCBS239 compliance
  • Work experience within large financial services firms or other directly relevant experience
  • The ability to work effectively within a local and global team, as well as independently, building effective working

relationships with a variety of different stakeholders.

  • Self-motivated personality with high standards for quality of work and accuracy. The flexibility required to work in a

dynamic environment under tight deadlines.

  • Proficiency in MS Office (Excel, Teams, PowerPoint, and Word) and an ability to summarize data/themes in a

meaningful format.

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