Physical Intelligence · 채용 중 25건
Member of Technical Staff - Product Engineering
Member of Technical Staff - Product Engineering
머신러닝 엔지니어정규직리드 · 경력 무관
Physical Intelligence에서 파트너사가 모델을 활용할 수 있도록 돕는 Product Engineering 팀의 리드급 엔지니어를 채용합니다. Python 기반의 탄탄한 백엔드 및 시스템 설계 역량이 필수이며, 파트너사와 직접 소통하며 모델 배포와 데이터 파이프라인을 구축하는 역할을 수행합니다. 로봇 공학이나 ML 연구 경험은 필수가 아니며, 실무 중심의 엔지니어링 역량과 오너십을 갖춘 분을 찾습니다.
Member of Technical Staff - Product Engineering
Build the platform that lets other companies use PI's models: give partners access to our models, fine-tuning, remote inference, and the services around them, so a robotics company can build on PI the way developers build on API-based LLMs. This spans data ingestion and APIs, a partner portal, and deployment integrations, all working end to end and self-serve.
Ingest partner data end to end: take a new data or robot partner from their first sample to featurized, validated data in our system, and to a checkpoint they can eval.
Deploy and serve partner models: stand up remote inference endpoints, validate them, and get partners running our policies at low latency in their own environment.
Be the engineer embedded in partner engagements: sit in the partner channel, debug their deployment across the full stack, unblock them, and translate what they need into what we build.
Write production-quality code that interfaces with PI's infrastructure.
Bridge research and partners: turn research advances into deployable systems, and surface real-world failure modes back to researchers and engineers.
This is a software and systems role first, so a robotics or ML research background is not required. We care more about what you can do than whether you fit a standard profile.
An exceptional generalist software engineer who ships fast and owns results end to end. You have strong backend and systems design instincts, you understand how to run inference with our models, and you do your best work directly with partners and researchers.
Strong engineering skills: clean Python, the ability to interface with infrastructure, and sharp debugging instincts.
Strong backend and systems design: you can design a scalable system (databases, caching, APIs, services) and defend it under scrutiny.
Enough ML to run inference: you understand how to deploy, serve, and debug our models, even if you do not train them.
A practical, ownership mindset: you are motivated by making things work end to end.
Clear communication with researchers, operators, and partners.
Comfort with ambiguity and with on-site, embedded partner work.
Founded or worked at an early-stage robotics, AV, or infrastructure startup.
Low-latency and real-time networking experience (inference transport, streaming, QUIC or websockets).
Experience with robot manipulation platforms, VLAs, or other ML models.
Familiarity with our stack: Python, Postgres, ClickHouse, GCP, Kubernetes, Modal, React and TypeScript.