Data Architect - MoD - SEO

Free-Work UK
Corsham
3 days ago
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Overview

Join to apply for the Data Architect - MoD - SEO role at Free-Work UK.

The actual pay will be based on your skills and experience — talk with your recruiter to learn more.

Base pay range

We are looking for an experienced Data Architect to join the Chief Data Office and oversee the International Data Standards Engineering. In the role you will be responsible for leading the development, implementation, and maintenance of NATO data standards to ensure alignment with MoD Strategies, goals, and regulatory requirements. You will act as the UK lead liaising between UK MoD cross-functional teams and the NATO Alliance to ensure consistency, accuracy, and compliance with the NATO Strategy across the alliance. You will manage, on behalf of the UK MoD, the development and maintenance of NATO Message Text Format (MTFs) related standards along with artifacts to satisfy the operational community\'s Information Exchange Requirements for UK implementation.

Responsibilities
  • Act as the UK point of contact and subject matter expert for the products of this Tactical Data Links “lot” with engagement between UK platforms and allied international standards development.
  • Provide the necessary standards, artefacts and support where needed to UK Platforms during in-service, upgrades, and new capabilities.
  • Provide information on the future development of relevant standards to meet new and evolving capabilities.
  • Stimulate cross COI (Communities of Interest) information sharing to enhance interoperability with the UK platforms and allied nations.
  • Act as the UK Head of Delegation representing the UK MOD at international meetings, i.e. NATO FYEVs and nations bi-lateral interface meetings.
  • Act as the Project Manager for LOT 2 (of the TDL technical support contract), including the management, tasking, deliverables, and finances for in year spending.
  • With respect to this LOT, aid the Tactical Data Link (TDL) Line Manager support to the Financial Team on budgetary impacts for Forecast of Out turn such as overspend and underspends impacts.
  • Under the TDL Technical Support contract manage Technical Support SMEs daily, with tasks to support the authority in their function and deliverables.
Candidate Profile
  • Leadership: Proven experience leading a team to complete tasks and providing thought leadership and direction.
  • Data Standards Expertise: Deep understanding of international tactical data standards and their application within complex technical environments. Strong knowledge of data governance principles and practices.
  • Technical Proficiency: Strong, demonstrable, technical background, including experience with relevant data modelling, data quality, and data integration. Familiarity with relevant technologies and tools.
  • Cross-Functional Collaboration: Excellent interpersonal and communication skills, with the ability to build strong relationships with stakeholders at all levels, both internally and externally.
  • Project Management: Proven project management skills, including planning, execution, and delivery of complex projects within tight deadlines and budgets.
  • Reporting and Analysis: Developing and maintaining dashboards and metrics to track the adoption and effectiveness of data standards.
  • Willingness for regular travel within the UK and overseas.

For more information on the Data Architect profession please see the Government Digital and Data Framework.

Application

When submitting your CV, please highlight your career history and experience relevant to this role. Additionally, refer to the "Things You Need to Know" section of the advert and provide a personal statement (max.1250 words) demonstrating the Essential Criteria listed below:

Essential Criteria
  • Demonstrated capability to design data architecture that addresses business problems within the context of well understood architecture
  • Proven ability to communicate effectively with both technical and non-technical stakeholders
  • Experience in data governance, including understanding compliance requirements and making recommendations for data solution assurance
  • Strong stakeholder engagement and collaboration skills across diverse communities
Behaviours
  • Communicating and Influencing
  • Changing and Improving
Technical skills
  • Community collaboration
  • Strategy design
  • Making architectural decisions
  • Architecture communication
Seniority level
  • Entry level
Employment type
  • Full-time
Job function
  • Engineering and Information Technology
Industries
  • Human Resources Services


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