The order in which job vacancies are displayed is determined by a composite score based on the following factors:
Keyword Relevance: How well your search terms match the vacancy details. We prioritize matches found in the job title, followed by job requirements, location names, and educational levels. Matches within general employer information or the organization's name carry a lower weight.
Commercial Prioritization (Premium Jobs): Vacancies paid for by employers ('Premium' or 'Sponsored') receive a ranking boost and will appear higher in the search results.
Recency (Date Relevance): Newer vacancies are prioritized. The relevance score of a vacancy is reduced by half once the posting is older than 30 days.
Proximity (Distance Relevance): Vacancies located closer to your search location are ranked higher. For vacancies located more than 30 km from the search center, the relevance score is halved.
The final ranking is established by multiplying all these individual factors to calculate the total relevance score.
We're supporting a major consulting and technology organisation delivering enterprise AI and data transformation programmes across Financial Services
The focus is designing scalable AI architectures that move beyond proof of concept into secure, production-grade deployment across banking environments.
Hiring across multiple levels, from Solution Architects through to senior technical leadership.
What you'll be doing
• Designing AI and GenAI architecture strategies and roadmaps
• Building scalable AI/ML and Agentic AI platforms
• Working across LLMs, RAG, embeddings and semantic search
• Supporting AI deployment, governance and integration patterns
• Collaborating with engineering, data, DevOps and business teams
• Advising clients on AI platform capability and implementation strategy
Environment
Python
LLMs, prompt engineering, fine-tuning, RAG
LangChain, LangGraph, Agent frameworks
Vector databases and semantic search
MLOps and LLMOps
AWS, Azure, GCP, Databricks
Containerisation, Kubernetes and GPU infrastructure
Requirements
• Experience designing enterprise AI or ML architectures
• Strong understanding of cloud and modern data platforms
• Exposure to scalable AI deployment and integration patterns
• Financial Services or regulated industry experience essential
• Strong stakeholder engagement and communication skills
Open to candidates from Manager through to Associate Director level.
If you're open to a confidential conversation about the AI architecture market, please message me directly.