Data Architect Cloud - Finance Consultancy

Client Server
Greater London
1 day ago
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Data Architect / Technical Lead London / WFH to £115k

Are you a skilled Data Architect with a strong knowledge of financial markets seeking an opportunity to progress your career?

You could be joining a global technology consultancy with a range of banking, financial services and insurance clients, in a senior, hands-on role.

What's in it for you:

  • Salary to £115k
  • Pension, Life Assurance, Income Protection
  • Private medical care for you and your family, including mental health
  • Travel Insurance
  • Charitable giving
  • Gym membership for you and your family
  • Flexible holiday scheme

Your role:

As a Data Architect you will help clients to solve a wide range of business problems, designing exceptional customer experiences and products, ensuring they get the most of out of technology solutions to enhance business capabilities with a focus on data architecture design and delivery.

You'll partner with technology leaders across financial services clients to prov...

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