Security Cleared Data Architect

IO Associates
Newcastle upon Tyne
1 day ago
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Role: Data & ML Architect

  • Location: Newcastle Upon Tyne
  • 550-600 (Inside IR35)
  • Security Clearance: Must be eligible for BPSS and SC (requires 5+ years UK address history).
  • Hybrid: 3 days per week.
  • Start Date - ASAP



Role Overview

As a Data & ML Architect, you'll design and lead enterprise-scale data platforms and advanced ML/AI solutions. You'll define data and AI strategies, ensure alignment with business goals, and deliver secure, scalable architectures using modern cloud and AI technologies.



Key Responsibilities

  • Set vision for data & AI architecture; mentor junior team members.
  • Architect data platforms and ML/AI solutions for scalability and performance.
  • Implement governance, standards, and integration across Azure, AWS, GCP.
  • Lead advanced AI/ML initiatives (NLP, LLM, Agentic AI) and MLOps frameworks.
  • Collaborate on CI/CD, DevOps, and visualization tools (Power BI, Tableau).
  • Engage stakeholders, ensuring compliance and security.



Technical Expertise

  • Expert in Data Architecture, Modelling, Engineering, and Analysis at scale.
  • Strong in Python, SQL, Spark, Scala; CI/CD and MLOps (Azure DevOps, Kubeflow).
  • Infrastructure as Code (Terraform, Ansible); container orchestration (Kubernetes, Doc...

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