Contract

Research Associate

Thin Films

Periodic Labs

Periodic Labs

51-200 employees

AI-driven materials discovery and design

Compensation Overview

$100k - $140k/yr

H1B Sponsorship Available

Menlo Park, CA, USA

In Person

Prefers Menlo Park or San Francisco based on role; on-site work at partner facilities may be required.

Category
Lab & Research (2)
,
Requirements
  • Bachelor’s degree or an equivalent combination of education and training or experience
  • Currently pursuing or recently completed a PhD (or advanced graduate degree) in materials science, physics, chemistry, or a related field — or equivalent hands-on experience in research labs or process engineering
  • Strong background in nanofabrication or thin-film processing, developed in a university or research lab environment
  • Hands-on experience operating thin-film deposition equipment: sputtering, evaporation, PLD, ALD, or related techniques
  • Familiarity with practical realities of thin-film deposition systems—target conditioning, chamber qualification, substrate preparation, and recipe troubleshooting
  • Basic thin-film characterization experience: ability to read an X-ray diffraction pattern, interpret an ellipsometry fit, and recognize a scanning electron microscope image signaling a process problem
  • Strong documentation habits and attention to detail
  • Ability to ramp up quickly on new equipment and experimental workflows, and comfort operating independently in shared research facilities
Responsibilities
  • Execute thin-film deposition and related nanofabrication processes — including PVD (sputtering, evaporation), PLD, and where relevant ALD — initially at partner cleanroom facilities such as Stanford Nanofab, transitioning to Periodic’s in-house lab as tools are commissioned
  • Prepare substrates, manage process flows, and maintain detailed experimental records that meet the metadata and data quality standards required for AI training
  • Perform structural and functional thin-film characterization: XRD/XRR for structure and thickness, ellipsometry and profilometry for film properties, SEM/EDX for morphology and composition, and 4-point probe and basic transport measurements for electrical properties
  • Support in-situ metrology during deposition: monitor RHEED during PLD for epitaxial growth quality and ellipsometry during PVD for real-time thickness control
  • Collaborate with the AI and materials science teams to close the bulk-to-thin-film property gap — helping define which deposition parameters to vary, interpreting film characterization results in context of what the AI predicts, and flagging discrepancies that may indicate new physics or synthesis insights
  • Troubleshoot process issues and iterate quickly on recipes under guidance from senior team members. Escalate anomalies rather than working around them, and document both failures and fixes in a format that preserves institutional knowledge
  • Follow rigorous laboratory safety and facility protocols, including at external partner facilities with their own cleanroom safety requirements
Desired Qualifications
  • Experience working in university nanofabrication facilities or shared cleanroom environments — including completing facility-specific safety training, navigating tool reservation systems, and operating within shared-use norms
  • Exposure to functional materials in thin-film form: superconductors, magnetics, ferroelectrics, thermoelectrics, or multi-layer device stacks relevant to memory or semiconductor applications
  • Familiarity with LIMS or other lab information systems used to track samples, experiments, and characterization results — and the instinct to treat data logging as part of the experiment, not an afterthought
  • Experience with wafer-level metrology: film thickness mapping, stress/warpage measurement, or 4-point probe resistivity mapping at wafer scale rather than just coupon scale
  • Interest in working at the intersection of experimental science and AI-driven discovery — curiosity about what our models predict and what that means for how you design the next experiment

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

  • Raised $300M seed in September 2025 from a16z, Nvidia, Bezos, and others valuing at $1.5B.
  • Secured partnerships with semiconductor makers improving chip heat dissipation since October 2025.
  • In talks for hundreds of millions at $7B valuation as of early 2026.

What critics are saying

  • DeepMind's GNoME dataset from Cubuk's 2023 project blocks replication in 6-12 months.
  • Matlantis launches superior simulations in Q1 2026, undercutting chip partnerships.
  • Commerce export controls halt Nvidia AI chip supply in March 2026.

What makes Periodic Labs unique

  • Founders Liam Fedus and Ekin Dogus Cubuk combine OpenAI and DeepMind expertise in AI materials science.
  • Builds autonomous robotic labs running thousands of experiments daily with gigabytes of unique data.
  • Deploys AI agents with physical labs for semiconductors, space, defense, and nuclear fusion applications.

Help us improve and share your feedback! Did you find this helpful?

Your Connections

People at Periodic Labs who can refer or advise you

Benefits

Professional Development Budget

Growth & Insights and Company News

Headcount

6 month growth

0%

1 year growth

-8%

2 year growth

-8%
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.