직무 설명 및 자격 요건
Role Type | Hands-on AI/cloud engineering |
Primary Mission | Build, test, deploy, and improve AI-enabled applications that solve business problems. |
Typical Scope | Requirements support, prototyping, data pipeline development, LLM orchestration, CI/CD, cloud deployment, and operational support. |
Reporting / Team Context | AI Platforms / enterprise application delivery team |
Role Purpose
The AI Engineer works with business stakeholders, solution leads, architects, and engineering peers to transform business needs into working AI-enabled products. The role requires strong hands-on development capability, an agile delivery mindset, and the ability to communicate clearly with both technical and business audiences.
Key Responsibilities
- Support requirement clarification by asking practical questions, identifying assumptions, and helping break business needs into manageable technical tasks.
- Develop proof of concepts, prototypes, MVP components, and production-ready features for AI and agentic applications.
- Build and maintain Python services, APIs, data pipelines, LLM orchestration flows, prompt/context logic, and integration components.
- Use GitHub Enterprise or equivalent tooling for source control, pull requests, code review, branching, and release collaboration.
- Implement automated testing, CI/CD pipelines, containerized deployments, monitoring hooks, and environment configuration.
- Collaborate with cloud, security, architecture, data, and operations teams to meet enterprise delivery standards.
- Participate actively in agile ceremonies including daily standups, sprint planning, backlog refinement, demos, and retrospectives.
- Document technical designs, setup steps, known limitations, operational runbooks, and support notes clearly.
Required Technical Skills
- Cloud-based development experience on Azure, AWS, Google Cloud, or similar platforms; Azure experience preferred.
- Strong Python programming skills for backend development, data processing, automation, and AI application development.
- Data engineering fundamentals, including data pipelines, APIs, structured/unstructured data handling, validation, and transformation.
- Experience with LangChain, LangGraph, Semantic Kernel, AutoGen, or similar frameworks for LLM/agentic application development.
- Understanding of LLM concepts including prompt engineering, context engineering, retrieval patterns, evaluation, and error analysis.
- GitHub Enterprise, GitHub Actions, Azure DevOps, or equivalent source control and CI/CD tooling experience.
- Docker and Kubernetes fundamentals for packaging, deployment, configuration, and runtime troubleshooting.
- Testing and quality practices including unit tests, integration tests, regression checks, and secure coding basics.
- MVP definition and delivery planning: ability to identify the minimum viable product, define scope boundaries, prioritize features, validate assumptions, and create a practical roadmap from prototype to production delivery.
- Model Context Protocol (MCP) fundamentals and practical ability to implement or integrate MCP-based tools/resources for agentic applications.
Required Soft Skills
- Proactive communication: raises risks, blockers, assumptions, and progress clearly without waiting to be asked.
- Curiosity and problem-solving mindset: investigates business context and technical root causes, not only assigned tasks.
- Collaboration skills: works effectively with business users, senior engineers, architects, remote members, and vendors.
- Learning agility: can quickly pick up new frameworks, cloud services, LLM patterns, and enterprise delivery standards.
- Quality ownership: takes responsibility for maintainable code, clear documentation, testing, and operational readiness.
- Ability to explain technical work in simple business language when needed.
Area | Expected Capability |
Requirements Support | Help clarify assumptions, constraints, data needs, user flows, and acceptance criteria. |
Engineering Delivery | Build reliable Python/cloud/LLM components using modern software engineering practices. |
Agile Collaboration | Contribute to sprint execution, demos, backlog refinement, estimation, and continuous improvement. |
Operational Readiness | Support testing, deployment, monitoring, troubleshooting, documentation, and handover. |
Nice to Have
- Experience in insurance, financial services, customer service, call center, underwriting, claims, producer support, or policy administration projects.
- Experience working with remote and overseas teams.
- Japanese business communication ability is a plus for Japan-based stakeholder discussions.
- Experience with RAG pipelines, vector search, knowledge article ingestion, conversation analytics, or AI evaluation frameworks.
Success Measures
- Features are delivered with good quality, maintainability, and clear documentation.
- Business requirements are implemented accurately and validated through demos or acceptance criteria.
- CI/CD, testing, and deployment practices reduce manual work and delivery risk.
- The engineer contributes proactively to team learning, issue resolution, and continuous improvement.
Draft JD generated from business/AI platform requirements | July 2026
MetLife Japan offers a comprehensive benefits package that promotes work-life balance and employee wellbeing. Employees can take advantage of flex time policy and a generous time-off policy, national holidays, annual paid leave, special consecutive leave, and refreshment leave. We also provide full social insurance coverage, a commuting expense reimbursement, group insurance, and discounts on travel and English language lessons. To support work flexibility, employees also have hybrid work options, shortened working hours for parents with children in third grade or below, and a casual dress code.
MetLife Inc., through its subsidiaries and affiliates (MetLife), is one of the world’s leading financial services companies, providing insurance, annuities, employee benefits and asset management to help individual and institutional customers build a more confident future. Founded in 1868, MetLife has operations in more than 40 markets globally and holds leading positions in the United States, Asia, Latin America, Europe and the Middle East.
MetLife Japan began operations in February 1973 as Japan’s first foreign-owned life insurance company. Our purpose, “Always with you, building a more confident future,” encapsulates our strong commitment to leveraging our global network and best practices worldwide to stand with our customers and build trust with our communities.