Software Engineer (ai Productivity)

Physical Intelligence Physical Intelligence · AI Frontier · San Francisco, CA · Software Engineering

Software Engineer focused on AI productivity, building and rolling out tools to help AI agents, assistants, integrations, and automation be useful across the company. This role involves partnering with various teams to understand workflows, build suitable tools, and drive adoption, while also focusing on security, data access, and measuring impact.

What you'd actually do

  1. Own AI tooling adoption across π
  2. Build internal AI tooling and integrations
  3. Make AI agents ergonomic
  4. Build tools for engineering, research, and operational velocity
  5. Own best practices and enablement

Skills

Required

  • Strong software engineering fundamentals
  • ability to ship quickly
  • Deep excitement about AI tools
  • strong opinions about how they should be used
  • Hands-on fluency with AI coding workflows and modern LLM-based tools
  • Technical flexibility: ability to build backend services, internal tools, integrations, automation, and user interfaces
  • Strong product judgment and taste for developer experience and internal tooling
  • High empathy and excitement to work across engineering, research, operations, recruiting, and other teams
  • Ability to learn unfamiliar systems quickly and operate across many technical domains
  • Good judgment around security, permissions, data access, and safe tool rollout
  • Clear communication, documentation, and teaching ability
  • Comfort driving adoption, not just writing code

Nice to have

  • Experience building developer tools, agents, or automation platforms
  • Experience building internal tools specifically for research, robotics, or operationally-intensive problems
  • Experience with our specific stack: React, TypeScript, Python, Postgres, ClickHouse, GCP, and Kubernetes

What the JD emphasized

  • AI tooling adoption
  • internal AI tooling and integrations
  • Make AI agents ergonomic
  • Build tools for engineering, research, and operational velocity
  • Own best practices and enablement
  • Partner on security and data access
  • Evaluate build vs. buy
  • Measure impact
  • Hands-on fluency with AI coding workflows and modern LLM-based tools
  • Comfort driving adoption, not just writing code

Other signals

  • AI tooling adoption
  • internal AI tooling and integrations
  • Make AI agents ergonomic
  • tools for engineering, research, and operational velocity
  • best practices and enablement
  • security and data access
  • evaluate build vs. buy
  • measure impact