SharePoint Data Architect

Morson Edge
Aberdeen
3 weeks ago
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Our client, a leading Oil and Gas operator are currently recruiting for a SharePoint Data Architect to join them on a contract basis initially for 6 months based in Aberdeen.

JOB OVERVIEW
SharePoint Data Architect supports the design, governance, and optimization of the digital content and data ecosystems of the company. This role is pivotal in ensuring that information, structured and unstructured, is accessible, secure, and strategically managed across the organization

ACCOUNTABILITIES AND RESPONSIBILITIES
• Administer and maintain SharePoint environments, including site collections, libraries, lists, workflows, and permissions
• Design and implement metadata models, taxonomies, and content types to support enterprise-wide classification and searchability
• Develop and enforce governance policies for SharePoint usage, content lifecycle, and user access
• Collaborate with business units to deliver tailored SharePoint solutions that enhance collaboration and knowledge sharing
• Provide training and support to users on SharePoint features, document management standards, and best practices
• Ensure data integrity, security, and accessibility across structured and unstructured repositories
• Manage data lifecycle processes including classification, retention, archiving, and disposal
• Conduct regular audits, backups, and recovery operations to maintain system reliability and compli...

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