AI Engineer (Generative AI / MLOps / AI Agents) Contract
Department: Data Analytics & AI Location:Employment Type: Contract (6 12 months with potential for extension)
Position Overview
We are seeking a skilled and motivated AI Engineer (Mid-Level) to join MSIG USA on a contract basis. This role sits at the intersection of Generative AI MLOps and Intelligent Agent development - and is responsible for designing building and deploying AI-powered solutions that directly support our P&C insurance operations.
You will work closely with our 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 role for an engineer who is comfortable moving from architecture whiteboard to working code.
Key Responsibilities
Generative AI & LLM Engineering
Design fine-tune and deploy Large Language Models (LLMs) for insurance-specific use cases including document intelligence claims summarization policy interpretation and underwriting Q&A.
Build Retrieval-Augmented Generation (RAG) pipelines using vector databases (e.g. Azure AI Search Pinecone ChromaDB) to ground LLM outputs in enterprise knowledge bases.
Develop prompt engineering frameworks and systematic evaluation pipelines to ensure LLM output quality consistency and safety in regulated insurance contexts.
Integrate LLM capabilities with internal data platforms via LangChain LlamaIndex or Semantic Kernel.
Evaluate and benchmark foundational models (OpenAI GPT-4o Azure OpenAI Claude Mistral Llama) against insurance-specific tasks to guide platform selection.
AI Agents & Automation
Architect and implement autonomous AI agents capable of multi-step reasoning tool use and decision-making 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 to handle complex multi-turn insurance workflows.
Design human-in-the-loop (HITL) checkpoints and escalation logic to ensure AI agents operate within defined risk and compliance boundaries.
Integrate agents with internal APIs data platforms and enterprise systems using orchestration tools such as Azure Logic Apps Apache Airflow or Databricks Workflows.
Develop guardrails monitoring and audit logging for all deployed agents to meet regulatory and governance standards.
MLOps & Model Deployment
Build and maintain end-to-end MLOps pipelines covering model training versioning validation deployment and monitoring using MLflow Azure ML and Databricks.
Implement CI/CD pipelines for ML models using Azure DevOps or GitHub Actions enabling reliable repeatable model releases.
Deploy models as REST APIs or batch inference services on Azure Kubernetes Service (AKS) or Azure Container Apps 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 to maintain governance and auditability of all AI assets.
Collaborate with data engineering teams to ensure feature pipelines are production-grade versioned and integrated with the Feature Store on Databricks or Azure ML.
Collaboration & Delivery
Work closely with business analysts actuaries underwriters and claims professionals to translate domain requirements into AI solution designs.
Participate in Agile/Scrum ceremonies including sprint planning standups and retrospectives as an active delivery contributor.
Produce clear well-structured technical documentation including solution designs API specs model cards and deployment runbooks.
Mentor junior engineers and contribute to internal AI engineering best practices and standards.
Required Qualifications
Education
Bachelors degree in Computer Science Data Science Machine Learning Software Engineering or a related quantitative field. Masters degree is a plus.
Job Description AI Engineer (Generative AI / MLOps / AI Agents) Contract Department: Data Analytics & AI Location: Employment Type: Contract (6 12 months with potential for extension) Position Overview We are seeking a skilled and motivated AI Engineer (Mid-Level) to join MSIG USA on ...
Job Description
AI Engineer (Generative AI / MLOps / AI Agents) Contract
Department: Data Analytics & AI Location:Employment Type: Contract (6 12 months with potential for extension)
Position Overview
We are seeking a skilled and motivated AI Engineer (Mid-Level) to join MSIG USA on a contract basis. This role sits at the intersection of Generative AI MLOps and Intelligent Agent development - and is responsible for designing building and deploying AI-powered solutions that directly support our P&C insurance operations.
You will work closely with our 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 role for an engineer who is comfortable moving from architecture whiteboard to working code.
Key Responsibilities
Generative AI & LLM Engineering
Design fine-tune and deploy Large Language Models (LLMs) for insurance-specific use cases including document intelligence claims summarization policy interpretation and underwriting Q&A.
Build Retrieval-Augmented Generation (RAG) pipelines using vector databases (e.g. Azure AI Search Pinecone ChromaDB) to ground LLM outputs in enterprise knowledge bases.
Develop prompt engineering frameworks and systematic evaluation pipelines to ensure LLM output quality consistency and safety in regulated insurance contexts.
Integrate LLM capabilities with internal data platforms via LangChain LlamaIndex or Semantic Kernel.
Evaluate and benchmark foundational models (OpenAI GPT-4o Azure OpenAI Claude Mistral Llama) against insurance-specific tasks to guide platform selection.
AI Agents & Automation
Architect and implement autonomous AI agents capable of multi-step reasoning tool use and decision-making 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 to handle complex multi-turn insurance workflows.
Design human-in-the-loop (HITL) checkpoints and escalation logic to ensure AI agents operate within defined risk and compliance boundaries.
Integrate agents with internal APIs data platforms and enterprise systems using orchestration tools such as Azure Logic Apps Apache Airflow or Databricks Workflows.
Develop guardrails monitoring and audit logging for all deployed agents to meet regulatory and governance standards.
MLOps & Model Deployment
Build and maintain end-to-end MLOps pipelines covering model training versioning validation deployment and monitoring using MLflow Azure ML and Databricks.
Implement CI/CD pipelines for ML models using Azure DevOps or GitHub Actions enabling reliable repeatable model releases.
Deploy models as REST APIs or batch inference services on Azure Kubernetes Service (AKS) or Azure Container Apps 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 to maintain governance and auditability of all AI assets.
Collaborate with data engineering teams to ensure feature pipelines are production-grade versioned and integrated with the Feature Store on Databricks or Azure ML.
Collaboration & Delivery
Work closely with business analysts actuaries underwriters and claims professionals to translate domain requirements into AI solution designs.
Participate in Agile/Scrum ceremonies including sprint planning standups and retrospectives as an active delivery contributor.
Produce clear well-structured technical documentation including solution designs API specs model cards and deployment runbooks.
Mentor junior engineers and contribute to internal AI engineering best practices and standards.
Required Qualifications
Education
Bachelors degree in Computer Science Data Science Machine Learning Software Engineering or a related quantitative field. Masters degree is a plus.