To use innovative data analytics and machine learning techniques to extract valuable insights from the bank's data reserves, leveraging these insights to inform strategic decision-making, improve operational efficiency, and drive innovation across the organisation.
All colleagues will be expected to demonstrate the Barclays Values of Respect, Integrity, Service, Excellence and Stewardship – our moral compass, helping us do what we believe is right. They will also be expected to demonstrate the Barclays Mindset – to Empower, Challenge and Drive – the operating manual for how we behave.
Join us an AI Engineer to join our Private Bank & Wealth Management (PBWM) GenAI team, where innovation is already delivering real impact. You’ll work on high‑profile, strategic initiatives, contributing to end‑to‑end GenAI solutions that are already delivering measurable value for our clients, while helping solve complex problems and drive tangible business outcomes.
Location of the role is Glasgow
You may be assessed on the key critical skills relevant for success in role, such as risk and controls, change and transformation, business acumen strategic thinking and digital and technology, as well as job-specific technical skills
To be successful as an AI Engineer, you should have experience with; * Expert Python & AI Engineering Frameworks- Deep proficiency in Python and modern AI frameworks (e.g., LangChain, LangGraph, HuggingFace), including vector‑retrieval tooling. * Agentic AI & Orchestrated Reasoning- Hands‑on experience designing and deploying agentic AI workflows, tool‑using agents, and multi‑step reasoning systems in production environments. * RAG Architecture & Implementation- Practical experience designing and implementing Retrieval‑Augmented Generation (RAG) solutions, including embeddings, chunking, retrieval optimisation, and safety/guardrails. * Production‑Grade AI Application Engineering- Proven ability to build and operate full‑stack AI applications (backend, APIs, modern front‑end frameworks such as React) with focus on reliability, scalability, security, and observability. * Cloud‑Native AI Deployment on AWS- Experience deploying AI solutions using AWS services such as Bedrock, SageMaker, Lambda, API Gateway, and vector‑enabled datastores (e.g., OpenSearch, pgvector).
Some other highly valued skills may include; * End‑to‑End MLOps / LLMOps- Experience with model lifecycle management, evaluation frameworks, monitoring, and CI/CD for AI workloads. * Model Fine‑Tuning Expertise- Understanding of fine‑tuning techniques and when to apply fine‑tuning vs. RAG vs. hybrid strategies. * Enterprise‑Grade Governance & Security- Experience designing AI systems within regulated or compliance‑heavy environments. * Cost‑Optimised AI Architecture- Ability to design scalable, efficient AI systems through model selection, inference optimisation, and resource‑efficient deployment.
