Salary: $$ 175000 - $$ 225000 per year
Location: San Mateo, California
Posted: June 23 2026
Minimum Degree:
Relocation Assistance: Available
Were partnering with a highgrowth, latestage AI infrastructure company to hire multiple AI Field Engineers (Enterprise) who can sit at the intersection of deep generative AI engineering and complex enterprise customer work. This is a customerfacing, handson role where youll turn ambitious GenAI ideas into production systems for some of the most sophisticated organizations in the world.
Why this role is compellingLatestage AI infra company with recent major funding and strong conviction from toptier investors; wellcapitalized and scaling quickly.
OTE in the ~220K280K range with meaningful equity in a ~200person business where ownership can still move the needle.
Remotefriendly across the US, with hubs on both coasts and regular travel to marquee enterprise customers.
Urgent hiring need with a highly engaged hiring team, targeting multiple hires in this function over the near term.
What youll be doingLead technical discovery with enterprise customers, scope POCs, and run load tests/evaluations to validate the right model architectures and deployment setups.
Build endtoend POCs and production integrations directly inside customer environments, working through infra, security, and compliance constraints to get systems live.
Advise customers on model selection and finetuning strategies (e.g., SFT, DPO, RFT) and design evaluation frameworks that get them from experimentation to production at scale.
Own the technical relationship across complex accounts identify champions, handle detractors, and align stakeholders to keep deals and deployments moving.
Feed recurring patterns and customer pain points back into the product and engineering org as a direct loop from field to roadmap.
3+ years in customer-facing AI/ML or infrastructure roles (Field Engineer, Applied AI Engineer, Solutions Architect, ML Engineer, or similar) with a track record of owning technical workstreams in enterprise accounts.
Shipped real AI/ML production code into customer environments not just slideware or advisory engagements.
Hands-on experience with LLM inference and/or training using open-model frameworks (for example, modern serving stacks and fine-tuning workflows such as SFT; exposure to more advanced approaches like DPO or RFT is a strong plus).
Strong Python, plus comfort with GPUs and cloud infrastructure (AWS, Azure, or GCP) and container/orchestration tools such as Kubernetes.
Demonstrated executive-level presence: you can dive deep with an engineer and explain trade-offs to senior leadership in the same day.
What theyre not looking forProfiles whose LLM experience is limited to closed-model APIs and wrapper libraries without real exposure to open-model inference or fine-tuning.
Purely advisory or research-only backgrounds without evidence of shipping production systems.
Pure Big Tech careers with little to no startup, field, or high-velocity customer-facing experience.
Location, travel, and structureUS-based, remote-friendly role with the option to work from coastal hubs if desired.
Regular domestic travel to enterprise customers for discovery, POCs, and production rollout support.
Visa support available for select categories, including common transfer paths for experienced engineers.
AI-Native technology
Salary Type : Annual Salary
Salary Min : $ 175000
Salary Max : $ 225000
Currency Type : USD