Data Architect

CACI Digital Experience (formerly Cyber-Duck)
Manchester
1 month ago
Applications closed

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About Us

We are the Information Intelligence Group (IIG) of CACI UK, a specialist technical consultancy providing bespoke solutions to solve complex operational problems. Due to some exciting growth within our Defence business, we are interested in speaking with an experienced Data Architect to join us.


Role Location

You can work from any of our 5 offices in the UK (including Bristol, Cheltenham & London) or from home – you decide. The role will require regular trips to London.


About The Role

The successful candidate will be focused on the delivery of high-priority projects where you will be supporting our customers across the full project lifecycle from initiation to conclusion. Working with a broad range of technical tools, you will be the SME to ensure compliance with data governance, standards and qualify frameworks.


Key Responsibilities

  • Architectural Leadership: Serving as the SME for data architecture, guiding strategic decisions and ensuring alignment with business objectives.
  • Assessment & Analysis: Conducting evaluations of existing data architecture, identifying gaps, risks, and opportunities for improvement.
  • Research & Recommendations: Keeping up to date with industry trends and best practices; provide informed recommendations for modernizing and optimizing data platforms.
  • Design & Implementation: Develop and maintaining data models, standards, and frameworks to support enterprise data initiatives.
  • Collaboration: Partner with engineering, analytics, and business teams to ensure data solutions meet performance, security, and compliance requirements.
  • Governance & Standards: Establish and enforce data architecture principles, policies, and documentation.
  • Documentation: Ensuring data architecture artefacts are documented and maintained in the enterprise architecture repository.
  • Future Technology: Guiding and influencing on both internal and customer-based technology use in areas such as AI and ML.

The Fit

The ideal candidate will have a background of working with industry best practices for data management, security, and scalability. Awareness of a wide range of established and emerging technologies, including data use for AI and ML, and data for enhancing automation and decision making. We are looking for someone who is passionate about technology, enjoys problem‑solving, and has a collaborative mindset.


Additional Skills

  • Proven experience as a Data Architect within complex environments
  • Expertise in data architecture principles, including relational, NoSQL, and cloud‑based solutions.
  • Proven ability to assess existing architectures and recommend improvements.
  • Awareness and evidence of Data Standards and Interoperability
  • Awareness and evidence of Data Analytics and Visualisation
  • Awareness and evidence of Data Governance and Ethics
  • Awareness and evidence of Data Sharing across security domains
  • Familiarity with modern data platforms (e.g., Azure, AWS, GCP), data modelling tools, and integration patterns.
  • Technical experience across modern data tooling and scripting

Security Clearance

Due to the industries we work in, we require the successful candidate to be able to obtain high level security clearance. To qualify for this, you must be a British citizen and have lived permanently in the UK for the last 5 years.


Benefits

  • Flexi‑time: 37.5 hour weeks to structure how you want.
  • Hybrid working: Work from one of our offices or from home – you choose.
  • L&D: Budget for conferences, training courses and other materials.
  • Social: Fantastic culture with monthly social events.
  • Future You: Matched pension and health care package.
  • We offer a great L&D package including 5 days external training, a career coach and guilds to share innovation and learning.
  • We also offer self‑directed career progression, that fosters opportunities for success for us and our business.

Equal Opportunities

CACI is proud to be an equal opportunities employer. Embracing the diversity of our people, we are on a journey to build a truly inclusive work environment where no one is treated less favourably due to ethnic origin, age, gender, veteran status, religion or belief, sexual orientation, marital status, and disability or health condition, actively working to prevent discrimination.


As a Disability Confident employer, we will:



  • Provide reasonable adjustments in the recruitment process where requested (contact a member of the recruitment team on to discuss individual requirements further).
  • Offer people with health conditions and disabilities, meeting the minimum criteria for a role, an interview.

Seniority Level

Mid‑Senior level


Employment Type

Full‑time


Job Function

Engineering and Information Technology


Industries

Technology, Information and Internet


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