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Insurance Data Governance- Senior Manager

PwC UK
Edinburgh
1 day ago
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Insurance Data Governance - Senior Manager

PwC UK, Edinburgh, Scotland, United Kingdom


About The Role

As an Insurance Data Senior Manager in our Financial Services Technology, Data & Analytics team, you will support our insurance clients in responding to a rapidly evolving regulatory and market landscape. Whether meeting Solvency II, IFRS 17 and ESG reporting requirements, or implementing AI and digital capabilities to improve operational practices, you will work side‑by‑side with clients to elevate their data maturity and resilience. We help insurers strengthen governance and enable transformation across both front and back office functions, from underwriting and pricing to finance, actuarial, and claims. Our mission is to help clients unlock value through smarter data practices, supported by leading technology and a deep understanding of the insurance sector.


Key Responsibilities

  • Data Strategy: Lead the development of enterprise-wide data strategies and operating models, embedding sustainable data management & AI practices and aligning to sector-specific regulatory and operational requirements.
  • Data Governance: Advise clients on improving data quality, lineage, and controls, helping to address regulatory gaps, strengthen internal oversight, and enable greater confidence in reporting and analytics.
  • Transformation: Support front and back office transformation initiatives through improved data architecture - enhancing pricing, claims automation, regulatory reporting, customer insights, and risk management. Lead delivery teams on complex change programmes; from solution design artifacts to managing onshore and offshore technical delivery teams.
  • AI: Leverage AI and automation to enhance the scalability and performance of data management and implementation activities, including data discovery, data quality monitoring, and policy enforcement.
  • Business Development: Collaborate across PwC and with clients to deliver real, sustained outcomes across the full data lifecycle—from assessment and design through to implementation and optimisation.
  • Stakeholder Management: Bring clarity and direction to senior stakeholders, articulating regulatory expectations and transformation roadmaps in a business-relevant and technically sound manner.
  • Client Relationships: Build long‑term client relationships, actively identifying new opportunities across risk, finance, operations, data, and technology domains.

Skills and Experience

  • Responsible for enabling clients to modernise and future‑proof their data capabilities, including the design of strategic operating models and the deployment of fit‑for‑purpose tools and platforms.
  • Knowledge in navigating the complexity of data in the insurance industry, shaped by regulatory scrutiny, evolving customer expectations, and legacy operating models.
  • An understanding of regulatory drivers such as Solvency II and IFRS 17, combined with data management frameworks like DAMA, will allow you to help insurers improve their data maturity, governance and reporting practices.
  • Experience in consulting or advisory within Insurance, ideally with a blend of client delivery and business development responsibility.
  • Knowledge of Insurance Markets and trends is preferred.

Seniority level

Mid‑Senior level


Employment type

Full‑time


Job function

Engineering and Information Technology


Industry

Accounting


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