OpenAI· Model Deployment for Business· San Francisco
Platform Engineer, Forward Deployed Engineering (FDE) -SF
Comp$230K – $385K
Classified Tasks (13)
Automate 0%Augment 38%Human-Only 62%
Augment (5)
AI assists, human decides
Build new platform capabilities from scratch grounded in real customer deployments
technical
Translate cross-customer patterns and repeated signals into crisp hypotheses with clear success criteria, scope, and a validation plan that fits account constraints
analytical
Build lightweight developer tooling that makes good architecture, readability, and correctness the default across FDE
technical
Work in the trenches on architecture, product shaping, refactoring, hardening, and creating reusable abstractions
technical
Translate raw customer signal into shipped software, repeatable patterns, and durable products
analytical
Human-Only (8)
Requires human judgment
Embed with customer-tagged FDE teams to support generalization and contribute to architecture, product shaping, refactoring, and implementation
technical
Set org-wide quality norms through high-signal code review and pairing
leadership
Partner closely with B2B Product, customer-tagged FDEs, ops, and business partners to bring platform products and capabilities to market
communication
Lead complex platform capabilities end-to-end as DRI from requirements through implementation and make key tradeoffs explicit
leadership
Pull in customer pods early to keep platform work grounded in real deployments
operational
Align early with B2B Platform Team and long-term owners on what should generalize, what should remain customer-specific, and what constitutes “ready for handoff”
communication
Preserve pod ownership of customer understanding and day-to-day execution while contributing platform leverage
operational
Provide mentorship through pairing and code review to raise engineering quality across the organization
leadership
Job description
Platform Engineer, Forward Deployed Engineering (FDE) -SF | OpenAI Careers ## Platform Engineer, Forward Deployed Engineering (FDE) -SF Model Deployment for Business - San Francisco Apply now(opens in a new window) **About the team** OpenAI’s Forward Deployed Engineering (FDE) org sits at the intersection of product, engineering, research, and go-to-market. We take frontier platform capabilities into the real world with design partners, turning raw customer signal into shipped software, repeatable patterns, and durable products. The FDE Platform team is primarily a leverage function that scales the FDE org’s impact to OpenAI’s platform and products. We provide hands-on leverage by embedding with customer-tagged FDE pods to aid in architecting, product shaping, refactoring, and building. This team is perfect for highly collaborative software engineers who love innovating on cutting-edge products with other builders. **About the role** Platform Engineer is a role within Forward Deployed Engineering (FDE) for strong software and ML engineers who want to build new platform capabilities from scratch, grounded in real customer deployments. You will partner with customer-tagged FDEs who are driving delivery and customer outcomes, and embed where you can provide the highest leverage. In practice that means working in the trenches on architecture, product shaping, refactoring, hardening, and reusable abstractions, while preserving the pod’s ownership of customer understanding and day-to-day execution. You will also collaborate closely with our B2B Platform Team and other long-term owners to align early on what should generalize, what should remain customer-specific, and what “ready for handoff” looks like. **This role does not require travel.** It is based in San Francisco or New York. We use a hybrid work model of 3 days in the office per week. We offer relocation assistance. Travel is optional-by-project and typically <10%, with occasional spikes for key embeds or launches. **In this role you will** * **Provide hands-on leverage to customer pods:** embed with customer-tagged FDE teams to support generalization, contributing directly in architecture, product shaping, refactoring, and implementation. * **Turn repeated signals into platform bets:** translate cross-customer patterns into crisp hypotheses with clear success criteria, scope, and a validation plan that fits real account constraints. * **Raise the engineering bar through tooling and mentorship:** set org-wide quality norms through high-signal code review and pairing, and build lightweight developer tooling that makes good architecture, readability, and correctness the default across FDE. * **Collaborate as part of cross-functional platform teams:** partner closely with B2B Product, customer-tagged FDEs, ops, and business partners to bring the right products and platform capabilities to market. * **Lead complex platform capabilities end-to-end when needed:** for high-leverage primitives like our Context Platform, act as DRI from requirements through implementation, make key tradeoffs explicit, and pull in customer pods early to keep the work grounded in real deployments. **You might thrive in this role if you** * Bring **5+ years of software engineering or ML engineering experience** with a track record of **shipping 0→1 capabilities** that other engineers or customers depend on. Experience in high-ambiguity, fast-iteration environments (startups or product-centric teams) is a plus. * Have owned **customer-adjacent technical work** end-to-end, from scoping and hypothesis-setting through production adoption, and improved outcomes through structured iteration (instrumentation, evals, error analysis, and tightening success criteria over time). * Have built or operated systems where **reliability, security, and governance** materially shaped design (permissions/RBAC, auditability, data access boundaries, rollout safety, observabi