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World Labs

Software Engineer (Developer Infrastructure)

Reposted 25 Days Ago
Be an Early Applicant
In-Office
San Francisco, CA, USA
200K-300K Annually
Expert/Leader
In-Office
San Francisco, CA, USA
200K-300K Annually
Expert/Leader
The Staff Platform Engineer will manage Developer Infrastructure, focusing on build systems, testing infrastructures, and release pipelines to enhance developer velocity and system reliability, primarily using Bazel in a large monorepo environment.
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About World Labs:

We build foundational world models that can perceive, generate, reason, and interact with the 3D world — unlocking AI's full potential through spatial intelligence by transforming seeing into doing, perceiving into reasoning, and imagining into creating. 

We believe spatial intelligence will unlock new forms of storytelling, creativity, design, simulation, and immersive experiences across both virtual and physical worlds.

We bring together a world-class team, united by a shared curiosity, passion, and deep backgrounds in technology — from AI research to systems engineering to product design — creating a tight feedback loop between our cutting-edge research and products that empower our users.


Role Overview

We are looking for a Platform Engineer to own Developer Infrastructure at World Labs.

This is a high impact systems role focused on build systems, testing infrastructure, and release and rollout pipelines, the critical path that determines how code moves from local development to production.

You will define and operate the systems that make our engineering organization fast, reliable, and scalable, in an environment where both the codebase and workloads are evolving quickly.

You will be responsible for the architecture and operation of the systems that power developer velocity and production safety, making foundational decisions around build performance, dependency structure, test execution, and release reliability.

This role is about turning complex, failure prone workflows into systems that are fast, correct, and reproducible, and setting the technical direction for how we build and ship software.

This is a hands on role. You will design, build, and operate these systems directly.

What You Will Do:
  • Own the design and evolution of the build, test, and release systems that power the platform.
  • Define architecture for a Bazel based monorepo, including performance, caching, and dependency graph scalability.
  • Improve build performance and correctness, including incremental builds, caching strategies, and graph optimization.
  • Design and operate test infrastructure, focusing on reliability, isolation, and signal quality.
  • Build and improve release and rollout systems, including deployment pipelines, canarying, and rollback.
  • Improve end to end developer velocity, from local iteration to production deployment.
  • Debug and resolve complex issues across the pipeline, including build failures, dependency issues, test flakiness, and release regressions.
  • Establish standards for reproducibility, observability, and operability across build and release systems.
  • Identify and eliminate systemic failure modes across the development lifecycle.
  • Contribute broadly across infrastructure and reliability work when needed.
  • Mentor engineers and raise the bar for system design and technical decision making.
Key Qualifications:
  • 5-10 years of experience building and operating production systems at scale, with ownership of critical infrastructure.
  • Strong experience with build systems and dependency graphs such as Bazel, Buck, Pants, or similar, or the ability to quickly ramp on Bazel in a large monorepo environment.
  • Experience designing and improving build, test, and release pipelines, with a focus on performance, correctness, and reproducibility.
  • Strong systems understanding of how code moves from source to build to test to production.
  • Hands on experience debugging complex system issues, including build failures, dependency issues, test flakiness, and release regressions.
  • Experience owning systems with strict reliability and performance requirements.
  • Strong proficiency in at least one of Python, Go, or Rust, with a strong preference for Python
  • Comfort working across languages in a polyglot codebase.
  • Proven ability to define architecture and drive technical decisions end to end.
  • Strong judgment in balancing developer velocity, system complexity, and reliability.
  • Ability to operate effectively in ambiguous, fast moving environments with high ownership.
  • You have worked on systems where build performance, correctness, and reproducibility were first order concerns, not afterthoughts.
Preferred Qualifications:
  • Deep experience with Bazel at scale, including remote caching, remote execution, and build graph optimization.
  • Experience designing hermetic and reproducible build systems.
  • Experience improving test infrastructure at scale, including eliminating flakiness and improving signal quality.
  • Experience building or operating release and rollout systems, including canarying, staged rollouts, and rollback mechanisms.
  • Experience instrumenting systems for observability and debugging of build, test, and release pipelines.
  • Experience in early stage or high growth environments.
Who You Are:
  • Fearless Innovator: We need people who thrive on challenges and aren't afraid to tackle the impossible.
  • Resilient Builder: Impacting Large World Models isn't a sprint; it's a marathon with hurdles. We're looking for builders who can weather the storms of groundbreaking research and come out stronger.
  • Mission-Driven Mindset: Everything we do is in service of creating the best spatially intelligent AI systems, and using them to empower people.
  • Collaborative Spirit: We're building something bigger than any one person. We need team players who can harness the power of collective intelligence.

We're hiring the brightest minds from around the globe to bring diverse perspectives to our cutting-edge work. If you're ready to work on technology that will reshape how machines perceive and interact with the world, World Labs is your launchpad.

Join us, and let's make history together.

Equal Opportunity & Pay Transparency

Equal Employment Opportunity

World Labs is an equal opportunity employer. We do not discriminate on the basis of race, color, religion, sex, sexual orientation, gender identity, national origin, age, disability, genetic information, veteran status, or any other characteristic protected under applicable law. We welcome all qualified applicants and are committed to providing reasonable accommodations throughout the hiring process upon request.

California Pay Transparency

In accordance with California law, we disclose the following:

Pay Range

$200-$300k base salary (good-faith estimate for San Francisco Bay Area upon hire; actual offer based on experience, skills, and qualifications)

Total Compensation

Base salary plus equity awards

Salary History

We do not request or consider prior compensation in making offers


Compliance: Cal. Lab. Code §432.3 (pay scale disclosure & salary history ban); Cal. Lab. Code §1197.5 (Equal Pay Act); Cal. Gov. Code §12940 (FEHA); 42 U.S.C. §2000e (Title VII); 29 U.S.C. §621 (ADEA); 42 U.S.C. §12101 (ADA)


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