Full-Stack Data Engineer (Security Cleared)

TechYard
City of London
1 day ago
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The Role


We are hiring Full-Stack Data Engineers across multiple levels (Junior through Senior Manager) to design, build, and deliver secure, scalable data solutions for complex client environments.

This is a hands-on engineering role where you will work across data ingestion, transformation, operational workflows, and decision-support systems. You’ll partner closely with client stakeholders to translate ambiguous problem statements into robust, production-ready solutions.


Engineers in this role combine strong software fundamentals with a consultative mindset, contributing both technically and strategically to long-term client outcomes.


Key Responsibilities

  • Solution Design: Analyse complex client challenges and architect secure, scalable data and workflow solutions.
  • Data Engineering: Build and maintain robust data pipelines, integrations, and transformation processes to support analytics and operational use cases.
  • Workflow Development: Design and implement operational workflows and decision-support tools that improve how organisations operate day-to-day.
  • Applied AI & Analytics: Collaborate with specialists to integrate machine learning and advanced analytics into real-world systems.
  • Engineering Excellence: Write high-quality, maintainable code and contribute to scalable system design across the stack.
  • Mentorship & Knowledge Sharing: Support junior engineers, promote best practices, and contribute to internal capability development.
  • Client Partnership: Work closely with client teams, building trusted relationships and acting as a technical advisor throughout delivery.

Required Skills & Experience

  • Strong experience in software and data engineering, with proficiency in:
  • Python
  • SQL
  • TypeScript (or similar modern frontend/backend languages)
  • Solid understanding of:
  • Data pipelines and ETL processes
  • Workflow orchestration and system integration
  • Designing solutions in complex, regulated environments
  • Experience working with large-scale data platforms or decision-support systems (vendor-specific tools not required).
  • Strong problem-solving skills and the ability to communicate clearly with both technical and non-technical stakeholders.
  • Interest in AI, machine learning, and emerging technologies, with practical application in production systems.


Security Clearance (Essential)

🚨 Active security clearance is a strict requirement for this role.

Candidates must:

  • Hold current, valid security clearance (level to be discussed during screening), or
  • Be eligible and willing to maintain clearance long-term.


Due to the nature of the work, applications without appropriate clearance or eligibility cannot be considered.

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