Full-Time

Multiphysics Simulation Scientist

Semiconductors

Periodic Labs

Periodic Labs

51-200 employees

AI-driven materials discovery and design

Compensation Overview

$160k - $220k/yr

H1B Sponsorship Available

Menlo Park, CA, USA

In Person

On-site in Menlo Park, CA; local candidates in SF Bay Area preferred.

Category
Mechanical Engineering (2)
,
Required Skills
Python
Machine Learning
electromagnetics
Data Analysis
Requirements
  • A PhD, MS, or equivalent experience in mechanical engineering, chemical engineering, materials science, electrical engineering, applied physics, aerospace engineering, or a closely related discipline.
  • Significant hands-on experience with multiphysics modeling tools such as COMSOL, ANSYS, Abaqus, Fluent, OpenFOAM, Sentaurus, Lumerical, MOOSE, or other finite-element, finite-volume, particle, or continuum solvers.
  • Deep understanding of coupled physical processes relevant to semiconductor or advanced manufacturing systems, such as heat transfer, stress and deformation, capillary flow, diffusion, plasma dynamics, electromagnetics, surface reactions, phase change, deposition, or materials evolution.
  • Experience building simulations that influenced real engineering or scientific decisions.
  • Strong Python skills and the ability to connect simulation outputs to analysis workflows, data pipelines, ML training infrastructure, and downstream decision-making systems.
  • Comfort working across disciplines with process engineers, experimental scientists, ML researchers, automation engineers, and external technical stakeholders.
  • Good judgment about simulation fidelity.
  • Minimum education: bachelor's degree or an equivalent combination of education and training or experience.
  • Location: Menlo Park or San Francisco preferred but flexible based on role.
  • Visa sponsorship: Yes, we sponsor visas and will assist.
Responsibilities
  • Build and apply multiphysics models for semiconductor-relevant systems, including thermal, mechanical, fluid, electromagnetic, plasma, chemical reaction, and materials processes, often in coupled settings.
  • Model priority problems such as flip-chip underfill capillary flow and void formation, thermo-mechanical wafer stress and warpage, thin-film deposition, plasma chamber behavior, thermal budgets, process-induced deformation, magnetic or superconducting materials behavior, and other customer-driven physical systems.
  • Use high-fidelity simulation tools such as COMSOL, ANSYS, Abaqus, Fluent, Lumerical, Sentaurus, OpenFOAM, MOOSE, or comparable platforms where appropriate, while also helping decide when custom solvers, reduced-order models, or surrogate models are needed.
  • Validate models against experimental and process data. You will work with experimentalists and engineers to compare simulations against measurements, estimate uncertain parameters, understand failure modes, and decide when a model is ready to guide real decisions.
  • Generate physically meaningful simulated datasets for ML training. Your simulations will help train AI systems in regimes where experiments are expensive, slow, or difficult to run.
  • Integrate simulation workflows with Periodic Labs’ AI, data, and orchestration infrastructure. Your models should become callable tools for AI planning and experiment interpretation, not standalone reports.
  • Collaborate with process, automation, AI, facilities, and customer-facing teams to optimize R&D workflows and solve practical engineering problems.
  • Help define the long-term multiphysics modeling roadmap for Periodic Labs’ semiconductor and materials programs.
Desired Qualifications
  • Deep knowledge of semiconductor advanced packaging, including underfill, flip-chip assembly, thermal-mechanical reliability, warpage, void formation, interconnects, or packaging materials.
  • Hands-on modeling of thin-film deposition processes: PVD, PLD, CVD, ALD, sputtering, evaporation, epitaxy, or related surface and chamber dynamics.
  • Fluency in plasma physics, including sheath dynamics, charged species transport, reactive flows, or plasma-enhanced deposition and etching.
  • A track record with wafer-scale mechanics: stress, bow, warpage, thermal cycling, film stress, delamination, fracture, or reliability modeling.
  • Ability to build GPU-accelerated solvers, reduced-order models, surrogate models, physics-informed neural networks, neural operators, or ML-accelerated PDE solvers.
  • Comfort with the full quantitative toolkit: parameter estimation, design of experiments, model calibration, sensitivity analysis, or uncertainty quantification.
  • Skill bridging length scales, from DFT and MD through kinetic Monte Carlo, phase-field modeling, and continuum mechanics.
  • Familiarity with semiconductor process integration, metrology, failure analysis, process control, or customer-facing engineering workflows.
  • A record of recognized impact: high-citation publications, deployed engineering models, patents, major customer-facing technical contributions, or simulation tools others actually use.

Periodic Labs uses AI to model, predict, analyze, and design new materials. Its platform studies material properties and high-throughput data to propose viable compositions, structures, and processing methods that meet performance targets. By training models on large scientific datasets and running simulations, the company speeds up discovery and lowers costs compared with traditional lab work, drawing on founders’ experience from OpenAI and DeepMind. The goal is to accelerate the discovery of materials for clean energy, better semiconductors, and resilient manufacturing, differentiating itself through deep AI expertise applied specifically to materials science and potential collaboration with major AI groups.

Company Size

51-200

Company Stage

Seed

Total Funding

$300M

Headquarters

San Francisco, California

Founded

2025

Simplify Jobs

Simplify's Take

What believers are saying

  • Targets high-value materials breakthroughs in superconductors, semiconductors, and energy systems.
  • Already deploys with a semiconductor manufacturer on chip heat dissipation.
  • Huge investor backing supports long runway and aggressive talent acquisition.

What critics are saying

  • Autonomous labs fail if experiments produce noisy, non-reproducible data.
  • Superconductor discovery remains an extremely difficult decade-long scientific bottleneck.
  • Heavy competition for elite talent, lab partners, and customer mindshare.

What makes Periodic Labs unique

  • Founded by Liam Fedus and Ekin Dogus Cubuk from OpenAI and DeepMind.
  • Builds an AI scientist that runs experiments in autonomous robotic labs.
  • Combines models, simulations, and physical experiments for closed-loop discovery.

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People at Periodic Labs who can refer or advise you

Benefits

Professional Development Budget

Growth & Insights and Company News

Headcount

6 month growth

-1%

1 year growth

-9%

2 year growth

-9%
TechCrunch
Sep 30th, 2025
Former OpenAI and DeepMind researchers raise whopping $300M seed to automate science  | TechCrunch

Periodic Labs has raised from a tech industry who's who, including Andreessen Horowitz, Nvidia, Elad Gil, Jeff Dean, Eric Schmidt, and Jeff Bezos.

Bloomberg L.P.
Aug 8th, 2025
Ex-OpenAI, DeepMind Staffers Set for $1.5 Billion Value in Andreessen-Led Round

Venture firm Andreessen Horowitz has agreed to lead a $200 million investment in Periodic Labs, a new startup building artificial intelligence for material science, according to people familiar with the matter.