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Data Architect

CBSbutler Ltd.
Telford
3 weeks ago
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Overview

The Preventative Risking (PR) team within RIS is responsible for managing the risking and compliance referral processes for Self-Assessment (SA) registrations.

Data architect responsibilities
  • design, support and provide guidance for the upgrade, management, decommission and archive of data in compliance with data policy
  • provide input into data dictionaries
  • define and maintain the data technology architecture, including metadata, integration and business intelligence or data warehouse architecture
  • Communicating between the technical and non-technical Level: working
  • Working is the second of 4 ascending skill levels
You can
  • communicate effectively with technical and non-technical stakeholders
  • support and host discussions within a multidisciplinary team, with potentially difficult dynamics
  • be an advocate for the team externally, and can manage differing perspectives
Communicating data
  • Level: awareness
  • Awareness is the first of 4 ascending skill levels
  • You can: show an awareness that data needs to be aligned to the needs of the end user
  • You can: create basic visuals and presentations
Data analysis and synthesis
  • Level: working
  • You can: undertake data profiling and source system analysis
  • You can: present clear insights to colleagues to support the end use of the data
Data governance (data architect)
  • Level: working
  • You can: understand what data governance is required
  • You can: take responsibility for the assurance of data solutions and make recommendations to ensure compliance
Data innovation
  • Level: awareness
  • Awareness is the first of 4 ascending skill levels
  • You can: show an awareness of opportunities for innovation with new tools and uses of data
Data modelling
  • Level: working
  • You can: explain the concepts and principles of data modelling
  • You can: produce, maintain and update relevant data models for an organisation's specific needs
  • You can: reverse-engineer data models from a live system
Data standards (data architect)
  • Level: working
  • You can: develop data standards for a specific component
  • You can: analyse where data standards have been applied or breached, and undertake an impact analysis of that breach
Metadata management
  • Level: working
  • You can: work with metadata repositories to complete complex tasks such as data and systems integration impact analysis
  • You can: maintain a repository to ensure information remains accurate and up to date
Problem management
  • Level: working
  • You can: initiate and monitor actions to investigate patterns and trends to resolve problems
  • You can: effectively consult specialists where required
  • You can: determine the appropriate remedy and assist with its implementation
  • You can: determine preventative measures
Strategic thinking
  • Level: awareness
  • You can: explain the strategic context of your work and why it is important
  • You can: support strategic planning in an administrative capacity
Turning business problems into data design
  • Level: working
  • You can: design data architecture by dealing with specific business problems and aligning it to enterprise-wide standards and principles
  • You can: work within the context of well understood architecture, and identify appropriate patterns


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