Artificial Intelligence Architect

Experis UK
London
2 weeks ago
Applications closed

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Job Description

AI Architect (Microsoft Tech Stack) — Contract

Location: London (Hybrid)

Contract: 6–12 months (extendable)

Start: ASAP

IR35: TBD

Day Rate: Competitive / Market rate

About the Role

We’re seeking an experienced AI Architect to lead the design, delivery, and governance of AI solutions across enterprise workloads using the Microsoft ecosystem. You’ll define AI architecture patterns, oversee solution design, guide engineering teams, and ensure alignment with security, compliance, and responsible AI standards. The role spans GenAI, ML, data platforms, MLOps, prompt engineering, and application integration.

Key Responsibilities

  • Architecture & Design
  • Define end-to-end AI reference architectures across data, model lifecycle, APIs, and app integrations using Azure services (Azure OpenAI, Azure ML, Azure Databricks, Azure Data Lake, Synapse/Fabric, AKS/Container Apps, Event Hub/Service Bus).
  • Select and benchmark models (OpenAI, Azure AI Foundry, OSS LLMs) for task fit, cost, latency, and accuracy; design RAG and fine‑tuning strateg...

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