Insurance Project Manager - Data Warehouse Implementation

Investigo
Greater London
6 months ago
Applications closed

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Job description






Insurance Project Manager
Data Warehouse Implementation

Investigo are partnering with an insurance business that is kicking off a major multi-year data warehouse implementation programme and they need a project manager to help drive it forward.

You will be an experienced project manager, have delivered multiple end to end data projects within the insurance industry. You'll be working closely with a variety of stakeholders including vendors / implementation partners, supporting the data programme manager in delivering the project.

This is a very data focused business with an extensive data road map so there will be plenty of opportunity for future projects and career progression.

What can they offer?

  • A successful, growing business with real scope for career progression
  • A significant data agenda and tech modernisation roadmap
  • Flexible hybrid working, circa 3 days in London but no fixed days
  • Comprehensive benefits package (non-con pension, bonus, etc)


What do you need?

  • You will have a strong track record of delivering multiple end to end data focused transformation projects
  • You'll have deep insurance industry experience, with a solid understanding of insurance processes and terminology

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