Lead AI System Architect
Role details
Job location
Tech stack
Job description
The AI System Architect leads the architecture of EIS's agentic AI platform - the design of multi-agent systems that automate insurance workflows end-to-end across Policy, Billing, and Claims domains. The role owns the patterns, frameworks, and standards for agent orchestration, MCP-based tool ecosystems, agent memory, planning, evaluation, and safety. RAG and conversational features are table stakes; the forward agenda is autonomous and semi-autonomous agents that act on behalf of users - quote intake, claims triage, underwriting and pricing intelligence, billing troubleshooting, and beyond - across our platform and technology stacks., * Own the architecture of EIS's agentic platform: agent orchestration, MCP-native tool ecosystems, agent memory (short-term, long-term, semantic), planning, and tool/function calling patterns reusable across product domains.
- Enable and provide support for domain teams for vertical insurance agents and the horizontal capabilities (RAG, retrieval, instructional flows) they compose from.
- Define and enforce levels of autonomy - assistive, semi-autonomous, autonomous - with explicit human-in-the-loop checkpoints, escalation paths, and reversibility for high-stakes actions in regulated workflows.
- Drive the MCP strategy: which capabilities EIS exposes as MCP servers to internal and partner agents, how our agents consume external MCP tools, and the tool registry, schemas, and versioning that keep this scalable.
- Maintain the multiple stack approach as a first-class capability: Typescript, and Java. Help teams to pick the right stack per agent and keep all aligned through shared configuration artefacts, prompt management, and evaluation tooling.
- Lead Architecture Decision Records (ADRs) for agentic capabilities; partner with Platform, Security/InfoSec, and DevOps so agents are observable, testable, sandboxed, and compliant by default.
- Drive AI DevOps for agents: trace capture and replay, eval harnesses (task success, tool-use correctness, regression), prompt and model versioning, cost and latency budgets per agent, and progressive rollout strategies.
- Set safe-AI standards for agentic systems: prompt injection and tool-poisoning defenses, action allow-lists, blast-radius controls, PII handling, data residency, and bias mitigation. Treat agent safety as a first-class architectural concern.
- Translate insurance use cases into production agent designs with product strategists and domain architects; provide technical leadership and mentorship; communicate agentic trade-offs (autonomy, reliability, cost, safety) clearly to executives, customers, and engineers., * We are a global and modern software product company building world-class Enterprise InsurtTech Product powered by leading-edge technologies (microservices, reactive, cloud, continuous delivery)
- Flexible working hours and remote work
- Employee referral program
Requirements
- Proven track record designing and shipping agentic systems in production - not demos, not prototypes - with meaningful autonomy and multi-step tool use.
- Strong systems background: data-intensive, distributed, and latency-sensitive design in production environments.
- Deep, hands-on experience with agent patterns: orchestration, planning, ReAct-style and graph-based agents, agent memory, tool/function calling, MCP, structured outputs. Sharp instinct for when an agent is the right answer and when a deterministic workflow is. Tracks the frontier and translates what matters into the roadmap.
- Strong with the Java/Spring ecosystem.
- Strong with Typescript and Python for AI (LangChain, LangGraph, or equivalent agent framework) - production experience required. Equally comfortable in both stacks.
- Hands-on with vector databases including embedding models, hybrid search, re-ranking, and retrieval evaluation.
- Experience with agent evaluation and observability: traces, replays, eval harnesses, guardrails, and cost/latency telemetry. Familiar with AI configuration-as-code.
- Experience shipping AI services on cloud platforms (AWS, Azure, GCP) in regulated enterprise environments - security review, data residency, audit trails.
- Familiarity with insurance, financial services, or another regulated domain is a plus.
- Strong architectural judgment - pragmatic about build vs. buy, vendor vs. in-house, agent vs. deterministic workflow, model choice, and total cost of ownership.
- Excellent written and verbal communication; able to make agentic trade-offs accessible to non-AI audiences.
- Advanced degree in Computer Science, AI/ML, or a related field - or equivalent practical experience.
Benefits & conditions
- Pension on a Group Pension Scheme Basis
- Medical/Dental/Optical Health Insurance for you and your dependents
- Income Protection
- Death in Service
- Travel Insurance
[All pay components are based on objective, gender-neutral criteria within EIS's Compensation Policy.] About EIS EIS Group is the technology innovator for insurance.