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AI Architect(商業智能)
面試心得
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企業名
GARMIN 台灣國際航電股份有限公司
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工作地點
桃園市龜山區
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薪資
時薪280~320元
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工作內容
【Job Overview】
We are seeking an expert AI Platform & Agent Architect to lead the design, implementation, and operationalization of GPU-based LLM infrastructure, secure AI Gateway systems, and orchestrated multi-agent workflows. This role entails building AI Gateways to route and govern model/tool access, operating MCP servers, enabling multi-agent collaboration, designing RAG pipelines, and establishing robust LLMOps/MLOps practices.
【Responsibilities】
1. Design and manage GPU-powered LLM inference platforms (e.g. vLLM, Triton) on Kubernetes with CI/CD, monitoring, and resource optimization.
2. Architect and deploy a scalable AI Gateway layer for secure, efficient, fallback-capable model and tool access with observability and rate limiting.
3. Develop and maintain MCP servers, including defining tools/resources, implementing JSON‑RPC session flows and context negotiation per MCP specs.
4. Build multi‑agent orchestration frameworks using MCP, coordinating context exchange, tool usage, session management, and shared memory.
5. Design and implement RAG pipelines using vector databases ( e.g., FAISS, Qdrant, Chroma) to augment agent workflows.
6. Establish LLMOps & MLOps best practices: model versioning, GPU utilization tracking, CI/CD pipelines, and observability (leveraging OpenTelemetry for metrics, traces, and logs).
7. Integrate enterprise-grade authentication (SSO/OAuth) and enforce governance, context-level access control across Gateway and MCP layers.
【Basic Qualifications】
1. Proven experience building AI Gateways: secure routing, token management, failover, rate limit, and observability.
2. Hands-on with MCP server/client architecture: context specification, JSON-RPC session handling, tool negotiation.
3. Strong track record designing multi-agent systems with coordinated tool use and shared context delivery.
4. Expert knowledge in GPU-based LLM inference and orchestration (Kubernetes, CI/CD, inference engines).
5. Experience building Retrieval-Augmented Generation pipelines and integrating vector databases.
6. Solid LLMOps/MLOps background—model lifecycle management, observability, deployment automation.
7. Excellent collaboration and communication skills for cross-functional system architecture work.
【Preferred Qualifications】
1. Familiarity with security and governance for MCP/gateway layers: session scoping, prompt injection mitigation, permission modeling.
2. Proven skills in prompt engineering, model fine-tuning, and inference optimization.
3. Prior experience building internal AI platforms or model registries.
GARMIN 台灣國際航電股份有限公司-使用1111轉職專區
https://central1111.com.tw/turn/