At a Glance
- Tasks: Lead AI transformation initiatives for insurance clients, designing and delivering innovative AI solutions.
- Company: Join a forward-thinking consulting firm focused on AI in the insurance sector.
- Benefits: Competitive salary, flexible working, travel opportunities, and professional growth.
- Why this job: Shape the future of insurance with cutting-edge AI technology and make a real impact.
- Qualifications: Experience in AI engineering, software development, and client-facing roles required.
- Other info: Dynamic role with opportunities to influence AI capabilities in a regulated environment.
The predicted salary is between 72000 - 108000 £ per year.
Occasional travel to client offices and two trips to London HQ per month.
Role Overview:
Lead the design and delivery of AI-native transformation initiatives for insurance clients, spanning agentic systems, retrieval architectures, semantic layers and decision intelligence. This is a senior, hands-on consulting role combining deep AI engineering expertise with strong client-facing presence, shaping both insurance-specific client outcomes and the firm’s long-term AI engineering capability.
As demand accelerates across claims automation, underwriting decision support, policy servicing, fraud detection, compliance and operational efficiency, the consulting practice is expanding its engineering capability across agentic systems, retrieval, ontologies and AI-enabled execution within regulated insurance environments.
The Consulting Engineer is a hands-on AI systems builder who combines engineering depth with commercial and product thinking to design, build and deploy LLM- and agent-driven solutions for insurers, brokers and value chain partners. You will work directly with senior insurance stakeholders (Claims, Underwriting, Operations, IT, Risk, Compliance, Actuarial) and alongside consulting and orchestration roles, translating complex insurance problems into safe, reliable and auditable AI solutions.
Key Accountabilities:
- Client-Facing AI Engineering & Agentic System Design (Insurance-Focused): You will design and deliver production-grade AI systems for insurance clients, including:
- LLM-powered applications for claims handling, underwriting support, policy servicing, document processing and customer operations.
- Multi-agent architectures for insurance workflows, including triage, decision support, escalation, delegation and human-in-the-loop controls.
- Retrieval and vector-based systems over policy wordings, endorsements, claims files, loss runs, underwriting guidelines and regulatory documentation.
- Semantic layers, ontologies and knowledge models aligned to insurance data structures, coverage logic and risk taxonomies.
- Integrations with core insurance platforms (claims systems, PAS, underwriting workbenches), data warehouses and third-party providers.
- Prompt engineering at scale with regulatory guardrails, explainability, traceability and auditability.
- Safety constraints for hallucination control, coverage interpretation accuracy and customer-facing use cases.
- Translate ambiguous insurance challenges into clear, feasible AI solutions.
- Assess client data maturity, policy document quality, legacy platforms and security constraints.
- Shape use cases across claims leakage reduction, underwriting efficiency, fraud detection and compliance automation.
- Work directly with insurance SMEs to surface edge cases, exceptions, regulatory nuances and operational realities.
- Produce clear, concise technical artefacts suitable for regulated, risk-aware client audiences.
- Implementing evaluation frameworks for accuracy, coverage interpretation, decision consistency and bias.
- Designing monitoring, logging and tracing suitable for regulated insurance environments.
- Applying governance, risk and compliance principles (e.g., audit trails, explainability, access controls).
- Supporting controlled releases and operational handover into insurer IT and operations teams.
- Ensuring reliability, reproducibility, performance and cost discipline at insurance scale.
- Build reusable insurance-specific accelerators, agent patterns and reference architectures.
- Contribute to internal playbooks covering claims, underwriting, policy servicing and compliance use cases.
- Share emerging research, frameworks and AI trends relevant to the insurance sector.
- Influence delivery methodology, technical standards and agentic design patterns for regulated industries.
Experience & Skills:
This is a hands-on consulting engineering role. Candidates should bring:
- Experience in software engineering, AI engineering or applied data engineering.
- Strong hands-on experience with LLMs, embeddings, RAG pipelines and vector databases.
- Experience designing or implementing multi-agent systems or tool-calling frameworks.
- Strong Python skills with experience building production-grade, regulated systems.
- Experience with at least one major cloud AI ecosystem (Azure/OpenAI, GCP/Vertex, AWS, Anthropic).
- Familiarity with semantic modelling, ontologies or knowledge graph concepts, ideally applied to complex domains.
- Proven ability to rapidly prototype and validate solutions with business stakeholders.
- Experience working directly with clients in consulting, professional services or regulated enterprise environments.
- Insurance domain experience (claims, underwriting, policy, risk, compliance or adjacent systems) strongly preferred.
LLM, RAG & Agentic AI Engineer – Insurance Sector in City of London employer: Staffworx
Contact Detail:
Staffworx Recruiting Team
StudySmarter Expert Advice 🤫
We think this is how you could land LLM, RAG & Agentic AI Engineer – Insurance Sector in City of London
✨Tip Number 1
Network like a pro! Get out there and connect with industry professionals on LinkedIn or at events. We all know that sometimes it’s not just what you know, but who you know that can help you land that dream job.
✨Tip Number 2
Prepare for interviews by researching the company and its projects. We should be ready to discuss how our skills in AI engineering can specifically benefit their insurance clients. Tailor your examples to show how you can solve their unique challenges.
✨Tip Number 3
Practice makes perfect! Conduct mock interviews with friends or mentors. We can refine our answers and get comfortable discussing our experience with LLMs and agentic systems, which is crucial for this role.
✨Tip Number 4
Don’t forget to follow up after interviews! A quick thank-you email can go a long way. We want to remind them of our enthusiasm for the role and our fit for their team. Plus, it shows we’re proactive!
We think you need these skills to ace LLM, RAG & Agentic AI Engineer – Insurance Sector in City of London
Some tips for your application 🫡
Tailor Your Application: Make sure to customise your CV and cover letter for the LLM, RAG & Agentic AI Engineer role. Highlight your experience with AI systems and insurance, and show us how your skills align with what we're looking for.
Showcase Your Technical Skills: We want to see your hands-on experience! Include specific examples of projects where you've worked with LLMs, multi-agent systems, or any relevant AI technologies. This is your chance to shine!
Be Clear and Concise: When writing your application, keep it straightforward. Use clear language and avoid jargon unless it's necessary. We appreciate a well-structured application that gets straight to the point.
Apply Through Our Website: Don't forget to submit your application through our website! It’s the best way for us to receive your details and ensures you’re considered for the role. We can’t wait to hear from you!
How to prepare for a job interview at Staffworx
✨Know Your AI Stuff
Make sure you brush up on your knowledge of LLMs, RAG pipelines, and multi-agent systems. Be ready to discuss how you've applied these technologies in real-world scenarios, especially in the insurance sector.
✨Understand the Insurance Landscape
Familiarise yourself with the key challenges in the insurance industry, such as claims automation and compliance. This will help you translate complex problems into feasible AI solutions during the interview.
✨Showcase Your Client-Facing Skills
Since this role involves working directly with senior insurance stakeholders, be prepared to demonstrate your experience in client interactions. Share examples of how you've successfully communicated technical concepts to non-technical audiences.
✨Prepare for Technical Questions
Expect to dive deep into technical discussions about system design and architecture. Brush up on your Python skills and be ready to explain how you've built production-grade systems, focusing on reliability and compliance in regulated environments.