Archer Aviation Inc.

Physical AI Engineer - SW

Archer Aviation Inc.$144K — $180K *
Aerospace & Defense
Less than 5 years of experience
Job Overview by Ladders

Qualifications

  • 5-7 years of programming experience with a focus on Python and version-controlled codebases.
  • Hands-on experience in training, evaluating, and debugging machine learning models.
  • Solid understanding of scientific machine learning concepts like physics-informed models and surrogate modeling.
  • Experience in generating synthetic data for training ML systems.
  • Ability to discern when foundation models are trustworthy, requiring verified computation or human oversight.
  • Strong analytical and verification mindset to validate model outputs with real data.
  • Bachelor's or Master's degree in a quantitative or engineering discipline.

Responsibilities

  • Build and validate machine-learning models to simulate physical behaviors.
  • Generate and curate large synthetic datasets for model training and stress-testing.
  • Create learned models to complement traditional engineering solvers for faster answers.
  • Integrate foundation models into engineering workflows for automated decision-making.
  • Develop reliable ML systems with outputs that can be traced and verified.
  • Transform research concepts into production-ready software in a structured codebase.
  • Collaborate with multi-disciplinary engineering teams to create dependable automated workflows.

Benefits

  • Work on pioneering technology in electric aviation with real-world implications.
  • Opportunity for impactful research that translates directly to product development.
  • Collaborative environment with diverse teams across disciplines.
  • Access to cutting-edge tools and technologies in machine learning and aerospace.
Full Job Description
About the Role

Archer is developing electric vertical-takeoff aircraft, and our SW team builds the advanced simulation, machine learning, and engineering tooling that supports how those aircraft are designed and analyzed. We are looking for a Physical AI Engineer who works at the intersection of scientific machine learning, software engineering, and aerospace - building learned models of physical systems and the AI-driven workflows that put them to work.

This is a hands-on research-and-build role. You will train models that approximate expensive physics, integrate foundation models into engineering tooling, and turn promising research into reliable, well-tested software that other engineers depend on.
What You'll Do
  • Build, train, and validate machine-learning models that approximate the behavior of physical systems - neural operators, physics-informed networks, and related surrogate models - to evaluate engineering questions far faster than traditional simulation, with calibrated, honest uncertainty.
  • Generate and curate large-scale synthetic datasets - parametric geometry paired with high-fidelity physics solves - to train and stress-test those models.
  • Build learned models that work alongside traditional CFD/FEA and optimization solvers, so engineers get fast answers without giving up trusted ones.
  • Integrate frontier foundation models (e.g., Claude) into agentic engineering workflows, where the model orchestrates, routes, and drafts - and verified computation plus human judgment govern the outcome.
  • Build ML systems whose outputs are reliable and traceable, so the results engineers act on can be trusted and checked.
  • Take research from paper or prototype to production: ship into a typed, tested Python monorepo with real reproducibility - not one-off notebooks.
  • Partner with aerodynamics, structures, propulsion, GN&C, and avionics engineers to turn their analyses into automated, dependable workflows.
  • Help connect simulation to reality - comparing model predictions against test-rig and flight data and improving the models from what you learn.
What You Need
  • Strong programming fundamentals and excellent Python, with a track record of building and scaling ML or data pipelines inside a real, version-controlled codebase - and the testing discipline and reproducibility that production systems require.
  • Hands-on machine learning experience: training, evaluating, and debugging models, and a demonstrated ability to take a research idea to a working, tested implementation.
  • Working knowledge of scientific machine learning - physics-informed models, neural operators, or surrogate modeling - or a strong applied-math, numerical-methods, or simulation background and the ability to ramp into it quickly.
  • Experience generating or working with synthetic data to train learned systems.
  • Sound judgment about foundation models: you have integrated them into software, and you understand where a model can be trusted and where it must be backed by verified computation or a human decision.
  • An evidence-first instinct - you treat a model's output as only as good as the data and verification behind it, and you build systems that make that explicit.
  • BSc, MSc, or equivalent experience in a quantitative or engineering discipline (computer science, applied math, mechanical/aerospace engineering, physics, or related).
  • Solid command of Git and modern software-development best practices.
  • Strong communication and the ability to collaborate across software, hardware, and engineering disciplines.
  • Genuine interest in aviation and in building learning systems that hold up under real-world scrutiny.
Nice to Haves
  • Background in aerospace, mechanical, or a physical-sciences domain; familiarity with CFD, FEA, or multidisciplinary design analysis and optimization (MDAO).
  • Experience with differentiable optimization, constrained learning, or enforcing physical constraints inside learned models.
  • Exposure to safety-critical or other regulated-systems environments - or a real appetite to learn how they work.
  • Sim-to-real techniques (domain randomization, system identification) and experience reconciling models against hardware or flight-test data.
  • Hands-on lab instrumentation (oscilloscopes, logic analyzers, protocol analyzers, HIL/SIL rigs) - valuable where the work meets real test hardware.
  • Fluency in the modern scientific-Python and ML-systems stack (PyTorch/JAX, async services, job queues, vector or time-series databases).
  • Understanding of model-scaling principles and their practical trade-offs.
Why This Role

You will do real research and apply it to a product: rigorous, tested, and trustworthy, because people will fly behind it.
At Archer we aim to attract, retain, and motivate talent that possess the skills and leadership necessary to grow our business. We drive a pay-for-performance culture and reward performance that supports the Company's business strategy. For this position we are targeting a base pay between $144,000 - $180,000. Actual compensation offered will be determined by factors such as job-related knowledge, skills, and experience.

About Archer Aviation Inc.

Archer Aviation is an American aerospace manufacturer that develops electric vertical takeoff and landing (eVTOL) aircraft for urban air mobility. The company was founded in 2018 by Brett Adcock and Adam Goldstein. Archer Aviation is developing an eVTOL aircraft that can travel up to 60 miles at speeds of up to 150 mph. The aircraft is designed to be quiet, safe, and efficient, with zero emissions. The company has partnerships with United Airlines and Stellantis, and plans to launch its first aircraft in 2024.
Learn more about Archer Aviation Inc.
Market Cap
$403.1 million
Industry
NASDAQ

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