Data Architect

ADROIT PEOPLE LTD
Glasgow
1 week ago
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Overview

Role: Enterprise Data Architect

Location: Glasgow, UK

Contract: One-year FTC

Work pattern: Hybrid: 2/3 days per week

Responsibilities
  • Involved in and consulted on all non-functional, architectural and design-led discussion and decision-making. The Architect is responsible for:
  • Undertake a key technical role in the area of advanced data techniques, including data modelling, data access, data integration, data visualisation, text mining, data discovery, database design and implementation.
  • Responsible for the definition and implementation of the enterprise data roadmap, including data modelling, enterprise data warehousing and advanced data analytics systems.
  • Responsible for creating the information architecture and roadmaps to define the corporate data framework and explain the migration steps necessary to meet evolving business requirements.
  • Provide leadership in relation to the design, documentation and establishment of the storage and analytic environments required for structured, semi-structured and unstructured data.
  • Provide technical advice and support to Developers and other Architects in matters related to data architecture, to ensure that developments meet required standards.
  • Analyse new business requirements from a data architecture perspective to ensure solutions meet standards for reliability, scalability, and availability.
  • Be responsible for identifying the technical and business risks associated with relevant architectural decisions and technical roadmaps.


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