Systems and Data Architect

Avencia Consulting
London
1 week ago
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About us

Our client is a specialty underwriting business operating as a managing general agent, focused on complex and niche risks. It partners with carriers to design tailored insurance solutions, emphasizes disciplined underwriting, data driven insight, and long term relationships, and operates globally with a lean, entrepreneurial culture prioritizing sustainable profitability and prudent growth strategies.

The role

This role offers an exciting opportunity in an ambitious business. The role's broad scope provides exposure to the business, design and development of systems and data architecture and exposure to and collaboration with other highly skilled professionals.

The primary purpose of the role is to support the design and ongoing development of the systems and data architecture that support business operations. The candidate must have extensive knowledge of good practice in data management, integration and system design as well as the ability to manage the solution design and implementation of changes. This is a hands on role with the successful candidate required to make an impact immediately.

The role is a combination of direct deliver and strategic design.

Key accountabilities

Systems architecture

  • Review the existing systems architecture, infrastructure, and data management approaches
  • Define the re...

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