ML Engineer, Surrogate Modeling (Vehicle Engineering)

SpaceX
Hawthorne, US
On-site

Who this role is best for

Best suited to mid-level ML engineers with expertise in surrogate modeling and physics-informed ML, working in aerospace or engineering simulation domains.

Best fit for

  • Engineers who enjoy applying ML to hard scientific problems with direct mission impact.
    — “love applying machine learning to hard scientific problems and want to make a direct impact
  • Candidates with production-grade ML experience in engineering simulation workflows.
    — “Demonstrated experience training, tuning, and deploying production-grade ML surrogate models
  • Those proficient in modern neural architectures for physics and engineering.
    — “Expert-level understanding of at least one modern architecture class

Things to consider

  • Extended hours and weekend work may be required.
    — “Ability to work extended hours and weekends as necessary
  • US citizenship or permanent residency is mandatory due to ITAR.
    — “applicant must be a (i) U.S. citizen or national

How to stand out

  • Highlight specific surrogate modeling architectures you've implemented.
    — “Fourier Neural Operators (FNO), neural operators, MeshGraphNet, Transolver
  • Showcase experience with uncertainty quantification in ML models.
    — “Experience with uncertainty quantification techniques for surrogate models
  • Demonstrate integration of traditional simulation methods with ML.
    — “Strong understanding of traditional simulation and numerical methods
Pace · Fast PacedCollaboration · HighAutonomy · MediumDecision Impact · TeamLevel · Mid

Derived from job-description analysis by Serendipath's career intelligence engine.

What success looks like

  • deploying production-grade ML models
  • accelerating engineering simulations
  • improving reliability and accuracy of AI systems
Typical background
1+ years of experience in machine learningbackground in computer science or engineering

Skills & requirements

Required

Machine LearningSurrogate ModelingNeural NetworksData Preprocessing

Preferred

Aerospace EngineeringPhysics-informed ML

Stack & domain

PythonMachine LearningNeural NetworksSurrogate ModelingCollaborationProblem-solvingAerospaceEngineeringVehicle

About the role

Original posting from SpaceX via Greenhouse

SpaceX was founded under the belief that a future where humanity is out exploring the stars is fundamentally more exciting than one where we are not. Today SpaceX is actively developing the technologies to make this possible, with the ultimate goal of enabling human life on Mars.

ML ENGINEER, SURROGATE MODELING (VEHICLE ENGINEERING)

Be a member of the AI for Vehicle Engineering team, focusing on developing high-performance surrogate models to solve complex phy sics and engineering problems for our launch vehicles and spacecraft.

Our team builds AI systems that accelerate engineering analysis, simulation, development, testing, avionics design, flight data review, logistics, and mission operations. Your work will directly support the world’s largest communication and AI satellite constellations, accelerate rapid reuse of the Falcon launch vehicle, and contribute to the development of the world’s largest rocket capable of sending humans to Mars.

In this role, you will develop, train, tune, and deploy AI surrogate models to dramatically accelerate engineering simulations, including but not limited to FEA, CFD, thermal, and structural analysis. You will work closely with hardware, simulation, and domain engineers to build these systems from the ground up. You will leverage state-of-the-art surrogate modeling techniques and create novel methodologies that push the frontier of what is possible in ML for physics while tackling real-world problems.

Aerospace experience is not required. We are looking for smart, motivated, collaborative engineers who love applying machine learning to hard scientific problems and want to make a direct impact on SpaceX’s mission.

RESPONSIBILITIES:

Develop, train, evaluate, and deploy production-grade AI surrogate models that accelerate critical engineering simulation workflows

Design and implement State-of-the-Art (SOTA) neural architectures and training strategies tailored to complex engineering problem domains

Build scalable data pipelines to preprocess, manage, and utilize tens of thousands of high-fidelity simulation results

Stay current with the latest research in neural operators, physics-informed ML, and surrogate modeling, implementing new techniques when needed

Collaborate with peers on architecture, design, and code reviews

Deep dive into engineering problems to identify where AI can deliver the highest leverage and most reliable solutions

Develop and apply techniques for uncertainty quantification, active learning, and inverse problems (e.g., geometry and shape optimization)

Ensure all AI systems are rigorously validated and vetted for accuracy, robustness, and reliability in engineering use

BASIC QUALIFICATIONS:

Bachelor’s degree in computer science, data science, engineering, math, physics, or a related technical discipline; OR 4+ years of professional experience building software in lieu of a degree

1+ years of software development experience in Python for machine learning, AI, or data science applications

PREFERRED SKILLS:

Master’s or PhD in computer science, machine learning, engineering, or a related field with a focus on surrogate modeling or AI for scientific/engineering simulation

Demonstrated experience training, tuning, and deploying production-grade ML surrogate models in real engineering workflows

Expert-level understanding of at least one modern architecture class such as Fourier Neural Operators (FNO), neural operators, MeshGraphNet, Transolver, graph neural networks, physics-informed neural networks, or other surrogate model architecture

Experience solving inverse problems such as geometry optimization or design under uncertainty

Strong understanding of traditional simulation and numerical methods (CFD, FEA, thermal analysis, etc) and how to integrate them with surrogate models

Experience with uncertainty quantification techniques for surrogate models

Hands-on experience building active learning or adaptive sampling pipelines

Proficiency with deep learning frameworks such as PyTorch, TensorFlow, or JAX

Experience with surrogate modeling libraries such as NVIDIA PhysicsNemo or similar 

Experience developing on Linux systems with GPU accelerators

Strong understanding of software engineering best practices including version control, testing, and continuous integration

Solid foundation in statistics, numerical methods, and core machine learning algorithms

ADDITIONAL REQUIREMENTS:

Ability to work extended hours and weekends as necessary

COMPENSATION AND BENEFITS:    

Pay Range:    

AI Software Engineer/Level I: $125,000.00 - $145,000.00/per year    

AI Software Engineer/Level II: $145,000.00 - $175,000.00/per year

    

Your actual level and base salary will be determined on a case-by-case basis and may vary based on the following considerations: job-related knowledge and skills, education, and experience.

Base salary is just one part of your total rewards package at SpaceX. You may also be eligible for long-term incentives, in the form of company stock, stock options, or long-term cash awards, as well as potential discretionary bonuses and the ability to purchase additional stock at a discount through an Employee Stock Purchase Plan. You will also receive access to comprehensive medical, vision, and dental coverage, access to a 401(k) retirement plan, short and long-term disability insurance, life insurance, paid parental leave, and various other discounts and perks. You may also accrue 3 weeks of paid vacation and will be eligible for 10 or more paid holidays per year. Employees accrue paid sick leave pursuant to Company policy which satisfies or exceeds the accrual, carryover, and use requirements of the law.   

ITAR REQUIREMENTS:

To conform to U.S. Government export regulations, applicant must be a (i) U.S. citizen or national, (ii) U.S. lawful, permanent resident (aka green card holder), (iii) Refugee under 8 U.S.C. § 1157, or (iv) Asylee under 8 U.S.C. § 1158, or be eligible to obtain the required authorizations from the U.S. Department of State. Learn more about the ITAR here.  

SpaceX is an Equal Opportunity Employer; employment with SpaceX is governed on the basis of merit, competence and qualifications and will not be influenced in any manner by race, color, religion, gender, national origin/ethnicity, veteran status, disability status, age, sexual orientation, gender identity, marital status, mental or physical disability or any other legally protected status.

Applicants wishing to view a copy of SpaceX’s Affirmative Action Plan for veterans and individuals with disabilities, or applicants requiring reasonable accommodation to the application/interview process should reach out to EEOCompliance@spacex.com. 

Source: SpaceX careers (Greenhouse)

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