Data Architect

s1jobs
Glasgow
4 days ago
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The Opportunity

Working within the Enterprise Architecture Team, the purpose of this role is to develop the firm's data architecture, data models, processes and standards, to enable the effective use of data to deliver value.

The role will work closely with business stakeholders, IT, data governance, compliance, security and third party teams to understand business needs and develop solutions in support of business objectives.

We are a global team of architects with enterprise, solutions and domain specific architects (cloud, integration, security, network, business etc).

We’re a maturing team where your voice can be heard, and you can make a difference with solutions that have enterprise-wide impact.

Key Responsibilities
  • Develop data architecture roadmaps in support of business objectives.
  • Develop conceptual, logical and physical data models across Ashurst.
  • Develop data standards, policies, processes, data structures and architectures for data modelling and design.
  • Simplify the existing data architecture, delivering reusable services and cost‑saving opportunities in line with Ashurst policies and standards.
  • Evaluate and advise on data collection, analysis and integration technologies.
  • Aid efforts to improve business performance through enterprise information solutions and capabilities, such as master data management, metadata management, analytics, content management and data integration.

This is a full‑time, permanent role based in our Glasgow office with hybrid working.

More information can be found in the job description attached to the role on our careers site.

About You
  • Prior experience as a Data Architect.
  • Hands‑on experience of conceptual, logical and physical data modelling.
  • Knowledge of Azure data services including Azure Databricks, Fabric and Purview for data governance.
  • Ability to communicate complex data concepts in an engaging manner to technical and non‑technical audiences.
  • Understanding of data management issues.
  • Knowledge of Enterprise Architecture frameworks, TOGAF or similar.
What makes Ashurst a great place to work?
  • Competitive remuneration with the flexibility migrant reward high performance.
  • Flexible working.
  • Corporate health plans 做
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