Who We Are
Physical Intelligence is bringing general-purpose AI into the physical world. We are a group of engineers, scientists, roboticists, and company builders developing foundation models and learning algorithms to power the robots of today and the physically-actuated devices of the future.
Achieving real-world performance requires extremely tight system latency, reliable sensor pipelines, and end-to-end engineering that makes perception and control loops work at real-time speeds.
As a Runtime Software Engineer, you’ll engineer the low-latency, high-throughput systems that underpin our physical intelligence model. You won’t be designing ML models - you’ll be the person who makes them run flawlessly in production, optimizing every layer from OS to camera pipeline to networking. You’ll collaborate closely with researchers, platform engineers, and robotics operators to identify bottlenecks and extract maximum performance from the entire system.
The Team
The Runtime team is responsible for building the core platform that Pi’s robots, sensors, and evaluation pipelines rely on. The team spans Linux systems engineering, camera and sensor pipelines, robot actuator controllers, networking, real-time IO, and performance tooling. They ensure our ML models and control systems operate under strict latency budgets and are robust under real-world conditions.
In This Role You Will
-Own Real-Time Pipelines: Engineer low-latency, high-reliability sensor and actuator pipelines across Linux, drivers, and middleware.
-Optimize System Performance: Profile and optimize across compute, I/O, memory, scheduling, networking, and storage to meet real-time constraints and increase throughput.
-Build OS-Level Capabilities: Extend or modify Linux components, drivers, and scheduling to achieve deterministic behavior under load.
-Streaming & Video Systems: Develop and optimize real-time video streaming systems where frame timing and packet scheduling matter.
-Reliability & Debugging: Build tooling for profiling, tracing, and debugging timing issues across distributed systems and hardware interfaces.
-Cross-Functional Collaboration: Work with researchers, hardware engineers, and operations teams to integrate optimized pipelines into production workflows.
What We Hope You’ll Bring
-Strong programming skills in C++, Rust, or Python, with experience building and optimizing production software.
-Experience with Linux systems programming (syscalls, drivers, kernel parameters, scheduling, memory/IO subsystems).
-Background in real-time or near–real-time systems, VR/AR, video pipelines, 3D engines, or streaming systems where latency budgets are strict.
-Ability to optimize across the entire stack - kernel scheduling, drivers, networking, GPU/CPU workloads, video frameworks, and distributed components.
-Experience with profiling tools (perf, tracing, eBPF, GPU profilers, network analyzers) and comfort diving into complex performance issues.
-A mindset oriented around determinism, throughput, frame budgets, jitter minimization, and real-time correctness.
-Ability to collaborate deeply with researchers and platform engineers to translate high-level model requirements into real-world system performance.
Bonus Points If You Have
-Experience with VR/AR platforms or low-latency 3D engines.
-Camera system expertise (synchronization, capture pipelines, codecs, GPU offload).
-Streaming/video conferencing stack experience (WebRTC, real-time transport optimizations).
-Background in robotics, autonomous systems, SLAM pipelines, or perception systems (implementation, not research).
-Expertise in kernel-level engineering, device drivers, or high-performance networking.
-Familiarity with distributed systems that process real-time data flows.
If an employer mentions a salary or salary range on their job, we display it as an "Employer Estimate". If a job has no salary data, Rise displays an estimate if available.
Design and ship operator-facing full-stack systems (React + Python) that power scheduling, alerting, metadata, and task workflows for a robotics-focused AI company in San Francisco.
Lead frontend architecture and implementation for data- and simulation-heavy web applications that power autonomy development at Shield AI.
Experienced Full Stack developer needed to help design and implement AI-powered chatbot and orchestration solutions using IBM WatsonX within a collaborative product and engineering team.
Lead the design, development, and operation of Kalshi’s production-grade Flutter mobile app to deliver high-quality trading and user experiences.
Build production-grade, browser-first AI video creation tools as a full-stack product engineer on Mirage’s in-person NYC team.
Alignerr is hiring a Senior C++ Full-Stack Engineer to develop and optimize high-performance tooling and backend services for AI data pipelines and evaluation workflows on a flexible contract basis.
CodeRabbit seeks a Senior Frontend Engineer to lead building intuitive, performant web interfaces for its next-generation AI-driven code review platform.
Senior Backend Engineer for the Client Portal Integrations team at EvenUp, building and owning APIs and integration architecture to improve legal-tech workflows and customer outcomes.
The Athletic seeks a senior engineering leader to define technical strategy and scale remote engineering teams for its consumer web and mobile sports product.
Participate in hands-on software development for SSD reliability testing at SanDisk, using C++ and Python to help validate and improve product quality.
SysLogic is hiring an experienced Security Engineer (Software Focus) to lead application security assessments, guide remediation, and work closely with development teams—primarily remotely within select U.S. states.
Docker is hiring a Principal Engineer to architect AI-powered developer tools and a self-service platform that accelerates AI adoption across the company and productizes proven internal tools.
Work with OCLC’s engineering team to write, debug, and test software while learning industry practices and integrating AI-driven features into library-focused solutions.
Lead the development and operation of production-grade simulation and digital twin pipelines at Stand to enable scalable, observable climate-risk modeling across perils like wildfire and hurricane.