JOB SUMMARY
We are seeking a skilled and motivated AI Engineer (Mid-Level) to design, build, and deploy AI-powered solutions supporting P&C insurance operations. This role focuses on Generative AI, MLOps, and Intelligent Agent development, requiring close collaboration with data engineering, analytics, and business teams to deliver LLM-powered applications, automated AI agents, and production-ready ML pipelines across claims, underwriting, and actuarial domains. This is a hands-on, delivery-focused position requiring comfort moving from architecture to working code. Hybrid work - local candidates only.
Key Responsibilities:
- Design, fine-tune, and deploy Large Language Models (LLMs) for insurance-specific use cases.
- Build Retrieval-Augmented Generation (RAG) pipelines using vector databases.
- Develop prompt engineering frameworks and systematic evaluation pipelines for LLM output quality and safety.
- Integrate LLM capabilities with internal data platforms via LangChain, LlamaIndex, or Semantic Kernel.
- Evaluate and benchmark foundational models against insurance-specific tasks.
- Architect and implement autonomous AI agents for workflows such as FNOL triage, claims routing, policy lookup, and compliance checks.
- Build agentic frameworks using patterns such as ReAct, Chain-of-Thought, and Tool-Augmented Agents.
- Design human-in-the-loop (HITL) checkpoints and escalation logic for AI agents.
- Integrate agents with internal APIs, data platforms, and enterprise systems using orchestration tools.
- Develop guardrails, monitoring, and audit logging for all deployed agents.
- Build and maintain end-to-end MLOps pipelines covering model training, versioning, validation, deployment, and monitoring.
- Implement CI/CD pipelines for ML models.
- Deploy models as REST APIs or batch inference services, ensuring scalability and low-latency response.
- Establish model monitoring frameworks to detect data drift, model degradation, and prediction anomalies in production.
- Manage the model registry and lineage tracking.
- Collaborate with data engineering teams to ensure feature pipelines are production-grade, versioned, and integrated with the Feature Store.
- Work closely with business analysts, actuaries, underwriters, and claims professionals to translate domain requirements into AI solution designs.
- Participate in Agile/Scrum ceremonies.
- Produce clear, well-structured technical documentation.
- Mentor junior engineers and contribute to internal AI engineering best practices and standards.
Required Qualifications:
- Bachelor's degree in Computer Science, Data Science, Machine Learning, Software Engineering, or a related quantitative field.
- 3-5 years of professional experience in AI/ML engineering, with demonstrated delivery of production-grade AI systems.
- Hands-on experience building and deploying LLM-powered applications using frameworks such as LangChain, LlamaIndex, or Semantic Kernel.
- Proven experience implementing MLOps pipelines in cloud environments (Azure preferred).
- Experience developing AI agents or automation workflows using agentic frameworks.
- Prior experience in financial services, insurance, or regulated industries is strongly preferred.
- Proficiency in
Generative AI & LLMs:
OpenAI / Azure OpenAI (GPT-4o, GPT-4 Turbo), Claude, Mistral, or open-source LLMs (Llama 3, Falcon), RAG architectures, vector search, embeddings (OpenAI, Cohere, SentenceTransformers), LangChain, LlamaIndex, Semantic Kernel, Prompt engineering, few-shot learning, instruction tuning, RLHF concepts
AI Agents & Automation:
Agentic frameworks: ReAct, Tool-Augmented Agents, LangGraph, AutoGen, CrewAI, Workflow orchestration: Apache Airflow, Databricks Workflows, Azure Logic Apps, API design and integration: REST, GraphQL, Webhooks
MLOps & Model Serving:
MLflow (experiment tracking, model registry, model serving), Azure Machine Learning, Databricks AutoML & Feature Store, Docker, Kubernetes (AKS),
Azure Container Apps, CI/CD:
Azure DevOps, GitHub Actions, Model monitoring: Evidently AI, Azure ML monitoring, or equivalent
Programming & Data Engineering:
Python (expert level): PyTorch, Hugging Face Transformers, scikit-learn, Pandas, NumPy, PySpark and Delta Lake for large-scale data processing, SQL (T-SQL / Spark SQL) for feature engineering and data validation, Git for version control and collaborative development
Cloud & Platform:
Microsoft Azure (Azure OpenAI, Azure AI Search, AKS, Azure Data Factory, Azure Key Vault), Databricks (Unity Catalog, Delta Live Tables, Workflows), Microsoft Fabric /
OneLake Preferred Qualifications:
- Experience with P&C insurance workflows such as FNOL processing, claims triage, underwriting decisioning, or actuarial modeling.
- Familiarity with insurance regulatory requirements including NAIC guidelines and data privacy standards (CCPA, GDPR).
- Experience implementing responsible AI principles — fairness, explainability, and bias mitigation — in regulated environments.
- Exposure to Data Mesh patterns and publishing AI model outputs as domain data products.
- Familiarity with Databricks Model Serving and Mosaic AI capabilities.
Certifications:
- Microsoft certifications: Azure AI Engineer Associate (AI-102) or Azure Data Scientist Associate (DP-100) preferred.