Data Architect

GreenTree Advisory Services Pvt Ltd
London
1 week ago
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Are you passionate about building modern, scalable data platforms that power high-impact analytics and business decisions? We’re looking for an experienced Data Architect to drive data platform modernization, cloud migration, and advanced analytics initiatives in a global, collaborative environment.


What you’ll do

  • Design and implement modern, secure, and scalable data architectures
  • Lead data platform and migration initiatives (on-prem to cloud)
  • Partner with business and technology stakeholders to deliver high-value analytics solutions
  • Own analytics products end-to-end—from problem definition to deployment and legacy retirement
  • Translate complex data and analytics into clear, actionable insights
  • Guide cross-functional teams using Agile ways of working


What we’re looking for

  • 10–15 years of experience in data architecture and analytics leadership
  • Strong expertise in modern data platforms, data modeling, and data product development
  • Hands-on experience with Azure Data Services, Databricks, and cloud-based data ecosystems
  • Solid understanding of data governance, security, and compliance
  • Excellent stakeholder management, communication, and leadership skills


Why join

  • Work on large-scale, enterprise data platforms
  • Be part of a global organization that values innovation, collaboration, and growth
  • Opportunity to influence data strategy and deliver measurable business impact

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