Role:ย AI Architectโ Insurance (Mandatory) | Azure | API-First Microservices (.NET Program)
Duration: Long Term
Location: Remote/ ESTย
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Experience: 15+ years overall; 4+ years in AI/ML architecture/engineering
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Role Summary
We are building aย next-generation insurance platform, including a greenfieldย P&C Policy Administration System (PAS)ย with aย microservices-based, API-first architectureย onย Microsoft .NET.
As theย AI / ML Architect, you will lead the design and delivery ofย AI-powered capabilitiesย across underwriting, pricing, claims, fraud, and operations. You will define end-to-end AI architecture (data โ model โ MLOps โ serving), ensure secure and compliant AI, and partner closely with product, actuarial, underwriting SMEs, and engineering teams to move from prototypes toย production-scale AI.
Insurance domain experience is mandatoryย for this role.
Key Responsibilities
1) AI Architecture & Solution Design (End-to-End)
- Define the target-stateย AI/ML architectureย for insurance use cases: underwriting decision support, risk scoring, claims triage, fraud detection, pricing optimization, customer/agent assist, and personalization.
- Select and guide model approaches:ย predictive ML,ย LLMs/GenAI,ย NLPย (and vision models where applicable), with clear tradeoffs and success metrics.
- Designย API-first AI servicesย that integrate cleanly with microservices (REST/gRPC, event-driven triggers, idempotency, versioning).
- Define patterns for feature pipelines, model serving, and governance that work across multiple pods and environments.
2) Model Engineering, MLOps & Deployment (Production Focus)
- Lead model development lifecycle: training, evaluation, validation, release, monitoring, and periodic refresh.
- Implement MLOps pipelines: automated model testing, monitoring, drift detection, model registries, approval workflows, and rollback strategies.
- Define serving patterns (batch/real-time/streaming) and optimize for accuracy, latency, reliability, and cost.
3) Insurance Domain Alignment (Business + Actuarial + Underwriting)
- Partner with product owners and translate requirements into AI-enabled components and measurable outcomes.
- Ensure AI outputs comply with underwriting guidelines, rating practices, claims workflows, and internal governance.
- Designย human-in-the-loopย controls where needed for regulated decisioning and operational safety.
4) Responsible AI, Security, Compliance & Risk
- Establish responsible AI guardrails: explainability, fairness/bias mitigation, audit trails, traceability, and model documentation standards.
- Ensure data privacy/security controls across the pipeline: PII handling, access controls, encryption, secrets management, and environment separation.
- Collaborate with risk/compliance to meet insurance regulatory expectations for AI systems (governance, reproducibility, reviewability).
5) Platform Integration & Cross-Functional Leadership
- Work closely with theย Chief Architect, .NET architects, data architect, DevOps, and engineering pods to align AI services to platform standards.
- Mentor data scientists/ML engineers; enforce engineering rigor (testing, reliability, monitoring, secure coding).
- Drive POCs and technology evaluations, and productize successful capabilities into reusable platform services.
6) AI-Assisted Engineering Enablement (Claude Code, Cursor, MCP)
- Useย Claude Codeย andย Cursorย as first-class development accelerators (code generation, refactoring, test generation, documentation), with strong review and security guardrails.
- Standardize patterns for tool usage across teams, includingย MCP-based workflows/integrationsย (where applicable), ensuring traceability and quality gates.
- Define measurement for productivity and quality improvements (cycle time, rework, defect leakage, release stability).
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Must-Have Qualifications
Insurance Domain (Mandatory)
- Proven insurance industry experience is requiredย (P&C preferred): underwriting, rating/pricing, claims triage, fraud, policy servicing, or insurance data/analytics.
- Experience designing or integrating ML/AI solutions in insurance decisioning contexts (e.g., risk scoring, pricing, fraud, claims).
Technical (Azure-first)
- 4+ yearsย hands-on AI/ML engineering and/or architecture experience; overall experience typicallyย 12+ years.
- Strong experience withย Azure AI ecosystem, including one or more of:
- Azure Machine Learning (training, registries, endpoints)
- Azure OpenAI / LLM integration patterns
- Azure AI Services (language, vision, etc.)
- Strong MLOps experience: CI/CD for ML, model registries, monitoring, drift detection, evaluation, and controlled rollouts.
- Experience buildingย API-firstย services and deploying ML systems usingย Dockerย andย Kubernetesย (AKS preferred).
Engineering & Collaboration
- Strong communication skills: can explain model tradeoffs and risks to non-technical stakeholders and client executives.
- Proven ability to lead cross-functional teams in fast-paced environments and ship production outcomes.
- Strongย P&C insuranceย experience (Auto/Home/Commercial) and familiarity with PAS workflows.
- Experience with event streaming (Kafka/Event Hubs) and real-time inference/feature pipelines.
- Experience with responsible AI frameworks and interpretable ML methods in regulated environments.
- Azure certifications (Azure AI Engineer / Azure Solutions Architect).