Enterprise Data Architect

RSA
London
1 year ago
Applications closed

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Your role

will work with multiple projects at once, depending on the need, and in close collaboration with diverse stakeholders – from business data owners to data engineers.

The Individual

About You:

To be successful in this role you will have practical experience in enterprise data architecture and data management. As well as this, knowledge of data protection, software design and delivery are essential. A good understanding of data storage, transformation and analysis technologies will be important.

This is a role that bridges Business, Data and Technology so it requires good communication and collaboration skills with stakeholders of various seniority and from different functions. You will also need to have experience with data modelling tools like Erwin or ER Studio.

What we offer you:

At RSA we put our people first. We have adopted hybrid working as standard, to give you a better work/life balance and an excellent flexible working mindset. That is on top of a comprehensive range of benefits, including pension contributions of up to 11% looking after you now, and in the future.

We will give you countless opportunities to continuously develop, alongside a diverse and passionate community of experts, the best the industry has to offer. You will be empowered to be your best self, do your best work, and make a meaningful impact. Our employee promise allows you to shape the future, win as a team, and grow with us.

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