AI Data Architect

IO Associates
London
3 days ago
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Role: Data Architect
Location: Remote
Rate: £600/ Day (Outside IR35)
Start: ASAP
Clearance: Active SC Essential
We are seeking an experienced Data Architect to join our growing data and AI function. This role is ideal for someone who thrives in complex, secure environments and can lead the design of scalable, modern data platforms. You will shape enterprise data strategies, develop end-to-end architectures, and play a key role in embedding AI capabilities across the organisation.
Key Responsibilities
Design, implement, and maintain enterprise data architectures across cloud and hybrid environments.
Lead architecture for large-scale Snowflake deployments, including modelling, governance, security, and performance optimisation.
Define and deliver AI-driven data solutions, working closely with data science and engineering teams.
Provide architectural oversight across multiple programmes, ensuring alignment with standards and governance frameworks.
Produce architectural artefacts using industry-standard tools (Archimate, TOGAF, UML, Sparx Enterprise Architect, Lucid, etc.).
Ensure data architectures meet stringent security, compliance, and governance requirements - particularly within secure, regulated sectors.
Act as a technical authority and trusted advisor for senior stakeholders.
Essential Skills & Experience
Proven experience as a Data Architect within enterprise environments.
Hands-on expertise with Snowflake (architecture, modelling, security, governance).
Strong understanding of AI/ML platforms, data pipelines, MLOps, and integrating AI into data architectures.
Active Security Clearance (SC or DV).
Proficiency with architecture frameworks and tools (TOGAF, ArchiMate, UML, etc.).
Strong knowledge of cloud platforms (Azure, AWS, or GCP).
Excellent communication and stakeholder management skills.
Desirable Experience
Exposure to government, defence, or other highly regulated sectors.
Knowledge of Databricks, Python, dbt, or Kafka.
Experience designing real-time/streaming architectures.
Certification in Snowflake, cloud architecture, or TOGAF.
How to Apply
If you're an experienced Data Architect with a passion for AI, cloud platforms, and secure enterprise data solutions, we want to hear from you.
Apply now with your CV and clearance status.

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