Lead Data Architect

TPXImpact Holdings Plc
London
2 months ago
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About The Role

Were looking for a Lead Data Architect to join our digital transformation consultancy.

This is a strategic role that leads data strategy for public sector clients. Lead Data Architects look at data holistically, supporting clients to define the vision for data in their organisation.

As a Data Architect, you will:

  • Guide and support clients to define data strategy in line with broader organisational strategy

  • Map where and how data is used and stored across a client organisation

  • Design data architecture

  • Set data standards, design governance, and define ways of working for data


You will bring a user-centered approach to data, ensuring that data meet the needs of users and stakeholders and helps the client to deliver effective services.

You'll operate as a trusted advisor, ...

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