Data Architect

UK Ministry of Defence
Corsham
1 month ago
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Join to apply for the Data Architect role at UK Ministry of Defence.


We are looking for an experienced Data Architect to join the Chief Data Office and oversee the International Data Standards Engineering.


Responsibilities

  • 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.

What we do for you

Alongside your salary of £46,040, the Ministry of Defence contributes £13,337 towards your membership in the Civil Service Defined Benefit Pension scheme.


This post is eligible for a Digital Skills Allowance of up to £11,400 per annum.


You will also have access to a host of benefits, including:



  • An environment with flexible working options
  • A culture encouraging inclusion and diversity
  • 25 days annual leave rising (1 day per year) to 30 days upon completion of 5 years’ service
  • In addition to 8 public holidays per year you will also receive leave for HM the King’s birthday
  • Minimum of 15 days special leave in a rolling 12‑month period for volunteer military or emergency service reserve commitments
  • Special paid leave for volunteering up to 6 days a year
  • Enhanced parental and adoption leave

For more information, hit APPLY, now.


Seniority level

Associate


Employment type

Full-time


Job function

Information Technology


Industries

Defense and Space Manufacturing


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