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Data Engineer (Solutions Developer)

Luxoft
London
1 day ago
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Shape the Future of Data Governance at Scale At Luxoft , we partner with the worlds leading financial institutions to deliver next-generation data and technology solutions. Were looking for an exceptional Senior Data Catalog Solution Engineer / Architect to design, implement, and evolve an enterprise-wide data cataloging platform that empowers data-driven decision-making across the organization.
In this pivotal role, youll bridge advanced technical architecture with business enablement ensuring that enterprise data is discoverable, trustworthy, and governed at scale . Youll collaborate with a cross-functional team of developers, data scientists, analysts, and architects to bring data intelligence to life.

Architect & Implement Data Catalog Solutions Lead the deployment and configuration of an enterprise-grade catalog (including data.world ), aligned with robust data governance frameworks.
implement automated enrichment, sensitive data detection, and trust indicators.
Integration & Automation Build and maintain connectors across platforms like Snowflake, Databricks, Tableau, Power BI, and Salesforce . Data Governance Enablement Define RBAC, data ownership models, workflows, and certification for golden datasets.
Data Quality & Observability Integrate DQ/DO tools ( Monte Carlo, Anomalo, Soda ) to visualize trust metrics and compliance dashboards.
Collaboration & Adoption Mentor teams, document best practices, and drive adoption across engineering and business units.

Experience in Data Architecture, Engineering, or Metadata Management.
Enterprise-scale experience implementing data catalog platforms ( data.Hands-on expertise with data.Deep understanding of metadata modeling, lineage capture , and data governance frameworks (GDPR, CCPA, HIPAA).
Proficiency in APIs, RESTful services, automation , and cloud data ecosystems ( AWS, Azure, GCP ).
Bonus Points For
Familiarity with metadata-driven AI/ML enrichment .
Knowledge of financial mathematics or capital markets.
At Luxoft, youll collaborate with global experts in data and capital markets , delivering solutions that shape how investment institutions manage and trust their data. Challenging, high-impact projects with world-leading financial clients.
Opportunities to learn, grow, and lead in a data-first culture.
Ready to architect the data intelligence layer of tomorrows capital markets?
Apply now and join Luxofts elite team driving innovation in financial data governance.

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