AI/ML Platform Engineer
We are a dynamic centralized platform team dedicated to harnessing cutting-edge AI/ML technology, particularly in the realm of Generative AI and large language models, to empower HP and drive innovation. Collaborating closely with various business units, we provide strategic advice, prototype solutions, and develop and manage software applications tailored for internal use.
Days split roughly evenly between hands-on building and collaboration/enablement, driven by a mix of roadmap work and incoming requests. Expect to shift context often.
Building (largest share of the day)
Internal platform tools and services: self-service portals/workbenches, backend APIs (Python/FastAPI), automations and CI/CD tooling
MCP/gateway integrations and AI-enabled automations and flows
Focus is always on reducing friction for teams adopting the platform
Cloud infrastructure & troubleshooting (weekly)
Writing and maintaining Terraform; provisioning and configuring platform resources across AWS and Azure
Diagnosing deployment, networking, endpoint, and configuration issues
Enough depth to reason about deployments and partner with security/networking specialists
Collaboration & enablement (about half the day)
Standups, syncs, and planning/project meetings
Design and architecture reviews; regular PR and code review
Onboarding new teams; translating ambiguous requirements into practical plans and challenging weak designs
Model deployment support (recurring)
Helping teams productionize models—hosting options, inference patterns, scaling, cost, and operational readiness across SageMaker, Bedrock, Azure ML/AI Foundry, and Kubernetes
Docs & platform improvement (ongoing)
Documentation, onboarding guides, and reference examples
Ad-hoc process and platform improvements—spotting and fixing rough edges proactively
In short: a builder-first role with a strong collaborative and enablement component—someone who moves fluidly between writing code, reviewing work, troubleshooting infrastructure, and guiding architectural decisions.
Education & Experience Recommended
Four-year or Graduate Degree in Computer Science, Statistics, Mathematics, Data Science, or any other related discipline or commensurate work experience or demonstrated competence.
Typically has 7-10 years of work experience, preferably in computer programming languages, machine learning, algorithms, statistical methods, or a related field.