Data Architect

Lynx Recruitment
London, United Kingdom
Last month
Applications closed

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Lynx Recruitment are partnered with a global consultancy to help them find an accomplished Data Architect/Data Solution Architect with experience working in the financial sector.

This data Architect will have a minimum of 5 years' experience in a strategy focused role providing solutions into in the financial sector either via a consultancy or within a business.

Having a Business or Technology degree is an essential requirement for this opportunity.

Responsibilities:

- Working with clients to define data strategy, owning full life cycle data focused transformation projects

- Data Governance experience high desirable

- Have the ability to ensure client understand the value of Data Architecture and related best practices

- Work with a wide range of stakeholders to ensure change is aligned with the roadmap throughout the project

- Provide data expertise, attend client meetings and solution design and implementation

If this role sounds of interest, please apply to this advert.


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