Data Architect Cloud - Finance Consultancy

Client Server
London
22 hours 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 provide best practice guidance for data management, data architecture development and optimisation, supporting client's transitioning to cloud based services, enable efficient, transparent and high quality data management. You will also have opportunities to specialise and manage small project teams.
Location / WFH:
There's a hybrid work from home model with three days a week in the London, City office (or at client site in London) and flexibility to work from home twice a week.
About you:
You are a senior Data Engineer / Architect with experience of architecting and implementing data strategy, solutions and governance models
You have experience of aligning data architecture and strategy across multiple programmes, work streams and business units
You have strong experience of developing enterprise data platforms with cloud data technologies (AWS, Data Bricks, GCP, Azure)
You have a good knowledge of Contextual Data Modelling, Entity Relationship Modelling, Logical and Physical Data Modelling and Data Lake design
You have experience within a consultancy into financial services environment
You have advanced communication, client facing and stakeholder management skills

Apply now

to find out more about this Data Architect (Finance Consultancy) opportunity.
At Client Server we believe in a diverse workplace that allows people to play to their strengths and continually learn. We're an equal opportunities employer whose people come from all walks of life and will never discriminate based on race, colour, religion, sex, gender identity or expression, sexual orientation, national origin, genetics, disability, age, or veteran status. The clients we work with share our values.

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