Forward Deployed Engineer, Physics & Simulation

Periodic LabsMenlo Park, CA
$180,000 - $250,000Hybrid

About The Position

Periodic Labs is deploying AI-driven simulation to solve some of the hardest physical process optimization problems in advanced manufacturing. As a Forward Deployed Engineer focused on physics and simulation, you will be the technical engine behind our most demanding customer engagements — spending significant time on-site, embedding directly with customer teams, and owning the end-to-end simulation workflow that makes our platform work in the real world. You will work alongside our internal modeling and ML teams to build, calibrate, and iterate on physics-based simulations, translate customer process knowledge into computational models, and drive iterative recipe optimization with direct feedback loops to production. This is a hands-on, high-ownership role at the frontier of AI for physical science. Willingness to travel to and spend extended time on-site in Taiwan is required.

Requirements

  • Strong foundations in numerical simulation of physical systems — whether fluid dynamics, heat transfer, structural mechanics, electromagnetics or related domains — gained through graduate research, industry, or both
  • Hands-on experience building or running simulations that solve partial differential equations, including comfort with mesh generation, solver tuning, and debugging numerical instabilities
  • Proficiency in Python for scripting, automation, and scientific computing (NumPy, SciPy, or equivalent)
  • A process engineering or physics mindset: you understand that simulations are tools for answering real process questions, and you care about getting physically meaningful results, not just running jobs
  • Strong communication skills and genuine comfort working directly with customer engineering teams — translating between computational models and manufacturing realities
  • Willingness to spend extended periods on-site with customers, including in Taiwan
  • A self-starter orientation: you can own a technical problem from problem definition through to a deployed result, with limited hand-holding

Nice To Haves

  • Background in computational fluid dynamics (CFD), including experience with tools such as OpenFOAM, ANSYS Fluent, Star-CCM+, or custom solvers
  • Graduate-level research experience building simulation software — from scratch or on top of existing frameworks — in domains such as mechanical or chemical engineering, weather modeling, astrophysics, materials processing, or similar
  • Experience in semiconductor or advanced packaging processes (underfill, flip-chip, wafer bonding, or related)
  • Familiarity with physics-informed ML, surrogate modeling, or neural operators applied to simulation acceleration
  • Experience integrating simulation tools into larger software platforms or automated optimization pipelines
  • Proficiency in Mandarin, which would be a meaningful advantage for on-site collaboration in Taiwan
  • Some background in a lab or experimental environment, with an appreciation for how simulations relate to physical process data

Responsibilities

  • Own the simulation workflow end-to-end for customer engagements — from model setup and calibration to iterative recipe optimization and results interpretation
  • Build, run, and debug physics-based simulations of complex physical processes, including multiphase flow, capillary dynamics, viscosity evolution, and curing behavior
  • Collaborate directly with customer engineering teams on-site to understand process constraints, interpret simulation outputs, and translate findings into actionable process improvements
  • Partner with Periodic’s internal ML and RL teams to couple simulation outputs with LLM-driven recipe generation, closing the loop between physics modeling and automated process optimization
  • Develop and extend simulation tooling in Python, including scripting for job submission, parameter sweeps, output parsing, and integration with our Onnes platform
  • Iterate rapidly on model fidelity, meshing strategies, and solver configurations to balance accuracy and computational cost for real-world deployment constraints
  • Surface domain insights back to the research and product teams, directly shaping the next generation of our simulation and AI platform
  • Contribute to documentation, runbooks, and process guides that help the team scale customer engagements over time

Benefits

  • Visa sponsorship
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