AI Engineer

F5 F5 · Enterprise · Seattle, WA +1

AI Engineer role focused on designing, building, and operating ML/AI systems for customer success and support workflows. Responsibilities include defining technical architecture, leading model lifecycle and MLOps, implementing RAG/LLM systems, safety/governance controls, and full-stack development. The role emphasizes shipping production-grade solutions, mentoring engineers, and driving measurable improvements in customer satisfaction and agent productivity.

What you'd actually do

  1. Define technical architecture and roadmap for AI capabilities in support workflows: retrieval-augmented generation (RAG), LLM-based assistants, intent classification, summarization, knowledge generation/maintenance, and conversational systems.
  2. Lead end-to-end model lifecycle: data pipelines, training, evaluation, fine-tuning, validation, deployment and continuous monitoring (MLOps).
  3. Build and operate production-quality ML services and APIs (scalable inference, caching, batching, latency SLAs); write performant, well-tested code (primarily Python).
  4. Design and implement safety, privacy, and governance controls for generative systems: hallucination mitigation, provenance/explainability, access control, logging/audit, and data protection (including FedRAMP/GovCloud considerations where required).
  5. Integrate AI components with platform systems (Salesforce Service Cloud / Experience Cloud, myF5 portal, search engines like Coveo), and with Azure/AWS cloud services and data platforms.

Skills

Required

  • Python
  • Java
  • TypeScript
  • React.js
  • Next.js
  • Node.js
  • Go
  • AWS
  • Azure
  • CI/CD Tools
  • Infrastructure as Code
  • Containerization & Orchestration
  • MLOps
  • RAG
  • LLM systems
  • observability
  • safety, privacy, and governance controls for generative systems

Nice to have

  • Spring Boot
  • Hibernate
  • Postgres
  • DynamoDB
  • Cosmos DB
  • S3
  • Azure Blob
  • JUnit
  • TestNG
  • Mockito
  • Selenium
  • Cucumber
  • Solace
  • Kafka
  • AWS SNS/SQS
  • GitHub Actions
  • Azure DevOps
  • Jenkins
  • Terraform
  • ARM
  • Bicep
  • Docker
  • Kubernetes
  • AKS
  • EKS
  • Salesforce Service Cloud
  • Salesforce Experience Cloud
  • Coveo

What the JD emphasized

  • FedRAMP/GovCloud considerations where required

Other signals

  • design, build, and operate the core ML/AI systems
  • lead the technical vision and delivery for AI systems
  • own model lifecycle and MLOps
  • implement safe RAG/LLM systems and observability
  • ship production-grade solutions
  • hands-on engineer able to deliver production code
  • coach and mentor engineers and data scientists