Technical Data Architect

Eutopia Solutions ltd
London
3 days ago
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  • Proven experience as a Technical, System or Data Architect
  • Experience of relational databases, data flow, data mapping & data structures
  • A background that includes, trading, banking and/or financial services

Technical Data Architect – Data Flows, Data Mapping & Data Structures - Financial Services!Location: Central London (Hybrid)Salary: Great remuneration including bonusI’m hiring a Technical Data Architect to shape & lead the future of my client’s global enterprise data, database & application technology estate. A world leader in energy & commodity trading, they’re investing heavily in modern, scalable, secure systems that power their global operations. If you’re a Technical Data Architect with enterprise data, database & applications architecture knowledge who thrives on big-picture thinking, complex problem-solving and influencing senior stakeholders…..this could be your next career challenge.What you’ll lead as the Technical Data Architect: Working across multiple projects and collaborating closely with senior stakeholders, you will set enterprise data, database & applications architectural standards, shape multi-year roadmaps, identify and reduce technical debt, and define clear current-state and target-state architectures. You’ll guide system selection, champion innovation (including AI an...

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