Principal Machine Learning Engineer

Oracle Oracle · Enterprise · Seattle, WA +1

Principal AI Agent / ML Software Engineer at Oracle, responsible for defining, building, and operating next-generation AI systems on OCI. This role focuses on setting architecture and engineering direction for production-grade agentic AI platforms, autonomous workflows, scalable inference infrastructure, and enterprise AI applications. Requires deep distributed systems experience with practical AI-native engineering, including orchestration of LLMs, tools, APIs, memory, retrieval, evaluation, and guardrails.

What you'd actually do

  1. Serve as a senior technical owner for OCI AI platform capabilities, including agent execution, inference systems, model serving, AI workflow orchestration, evaluation, and observability.
  2. Design, architect, and deliver scalable agentic AI systems capable of reasoning, planning, tool use, workflow execution, multi-step task orchestration, and safe human-in-the-loop escalation.
  3. Build production-grade services for tool calling, agent memory, context management, Model Context Protocol (MCP) integration, vector retrieval, multi-agent coordination, policy enforcement, and evaluation.
  4. Lead architecture across distributed services optimized for low latency, high throughput, GPU efficiency, reliability, cost, operability, and secure multi-tenant operation.
  5. Define service boundaries, APIs, data models, state management, consistency tradeoffs, failure modes, SLIs/SLOs, rollout strategies, and operational readiness criteria for AI platform services.

Skills

Required

  • Python
  • Kubernetes
  • Docker
  • cloud-native infrastructure
  • service-to-service communication
  • scalability
  • fault tolerance
  • observability
  • performance analysis
  • SLIs/SLOs
  • incident response
  • monitoring
  • tracing
  • experiments
  • reliability programs
  • AI safety
  • governance
  • security
  • operational risks
  • data handling
  • access control
  • auditability
  • human accountability
  • written and verbal communication
  • technical direction
  • resolve ambiguity
  • influence senior stakeholders

Nice to have

  • optimizing large-scale GPU inference or training workloads
  • model serving
  • inference gateways
  • agent runtimes
  • workflow engines
  • developer platforms
  • internal AI productivity platforms
  • integrating AI systems with enterprise APIs
  • databases
  • cloud services
  • vector databases
  • embeddings
  • retrieval systems
  • identity systems
  • policy enforcement layers
  • LLM fine-tuning

What the JD emphasized

  • production-grade
  • scalable
  • low latency
  • high throughput
  • GPU efficiency
  • reliability
  • cost
  • operability
  • secure multi-tenant operation
  • production outcomes

Other signals

  • building and operating next-generation AI systems
  • production-grade agentic AI platforms
  • scalable inference infrastructure
  • enterprise AI applications
  • orchestration of LLMs, tools, APIs, memory, retrieval, evaluation, guardrails