Principal AI Agent / ML Software Engineer (oci)

Oracle Oracle · Enterprise · TORONTO, ON +1

Principal AI Agent / ML Software Engineer at Oracle (OCI) responsible for defining, building, and operating next-generation AI systems, focusing on production-grade agentic AI platforms, autonomous workflows, and scalable inference infrastructure. Requires deep distributed systems experience with practical AI-native engineering, including orchestration of LLMs, tools, APIs, memory, retrieval, evaluation, and guardrails. The role emphasizes shipping, scaling, and operating reliable, secure, observable, and cost-aware AI platform systems.

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

  • Bachelor's, Master's, or Ph.D. in Computer Science, AI/ML, Engineering, or a related field, or equivalent practical experience.
  • 6-10+ years of professional software engineering experience, including significant ownership of production systems; or equivalent experience demonstrating Senior Staff / Principal-level impact.
  • Proven track record as a Staff, Senior Staff, Principal, or equivalent technical leader influencing architecture and execution across multiple teams.
  • Deep experience designing, building, and operating high-scale distributed systems, cloud services, infrastructure platforms, or AI/ML platform services.
  • Hands-on experience with production AI systems, agentic AI applications, autonomous workflows, tool-using agents, multi-step orchestration, or multi-agent systems.
  • Practical experience with orchestration frameworks such as LangGraph, LangChain, CrewAI, AutoGen, LlamaIndex, or similar ecosystems.
  • Deep understanding of LLM application patterns, including prompt design, structured outputs, function/tool calling, context management, RAG, memory, tool safety, and evaluation.
  • Strong programming skills in Python and ability to contribute high-quality production code, reviews, tests, and debugging in complex distributed environments.
  • Strong expertise with Kubernetes, Docker, cloud-native infrastructure, service-to-service communication, scalability, fault tolerance, observability, and performance analysis.
  • Experience defining SLIs/SLOs, production readiness criteria, incident response practices, monitoring, tracing, experiments, and reliability programs for AI or distributed systems.
  • Strong understanding of AI safety, governance, security, and operational risks for autonomous or semi-autonomous systems, including data handling, access control, auditability, and human accountability.
  • Excellent written and verbal communication, with demonstrated ability to lead technical direction, resolve ambiguity, and influence senior stakeholders.

Nice to have

  • Experience optimizing large-scale GPU inference or training workloads for latency, throughput, utilization, availability, and cost.
  • Experience building or operating model serving, inference gateways, agent runtimes, workflow engines, developer platforms, or internal AI productivity platforms.
  • Experience integrating AI systems with enterprise APIs, databases, cloud services, vector databases, embeddings, retrieval systems, identity systems, and policy enforcement layers.
  • Experience with LLM fine-tuning, LoRA, PEFT, or other parameter-efficient fine-tuning techniques.

What the JD emphasized

  • production-grade agentic AI platforms
  • scalable inference infrastructure
  • deep distributed systems experience
  • practical AI-native engineering
  • orchestration of LLMs, tools, APIs, memory, retrieval, evaluation, guardrails
  • ship, scale, and operate reliable, secure, observable, and cost-aware AI platform systems
  • Senior Staff / Principal-level impact
  • high-scale distributed systems
  • production AI systems, agentic AI applications, autonomous workflows, tool-using agents, multi-step orchestration, or multi-agent systems
  • orchestration frameworks such as LangGraph, LangChain, CrewAI, AutoGen, LlamaIndex
  • LLM application patterns, including prompt design, structured outputs, function/tool calling, context management, RAG, memory, tool safety, and evaluation
  • production code, reviews, tests, and debugging
  • Kubernetes, Docker, cloud-native infrastructure, service-to-service communication, scalability, fault tolerance, observability, and performance analysis
  • SLIs/SLOs, production readiness criteria, incident response practices, monitoring, tracing, experiments, and reliability programs
  • AI safety, governance, security, and operational risks for autonomous or semi-autonomous systems

Other signals

  • Defining architecture and engineering direction for production-grade agentic AI platforms
  • Building production-grade services for tool calling, agent memory, context management, retrieval, evaluation, guardrails
  • Integrating AI agents securely and reliably with enterprise APIs, cloud services, databases, identity systems
  • Establishing AgentOps and LLMOps practices for tracing, monitoring, eval suites, regression testing, safety guardrails