Principal Plasma Data Scientist
Role details
Job location
Tech stack
Job description
Helion is hiring a Plasma Data Scientist specializing in physics-grounded machine learning to accelerate experimental FRC plasma modeling. This role will focus on developing and validating advanced ML frameworks-such as differentiable-physics models, PINNs, surrogate modeling, or hybrid physics+ML systems-while integrating these tools with simulation and diagnostics pipelines. You will support cross-disciplinary fusion research and contribute to high-impact modeling that informs experimental design and interpretation. This onsite position reports to the Experimental Science Manager at our Everett, WA office and plays a key role in advancing fusion electricity development. You Will: Develop and validate machine-learning frameworks for FRC plasma-dynamics, leveraging physics-grounded ML approaches (e.g., differentiable physics, PINNs, surrogate modeling, or hybrid physics+ML systems) Integrate ML models with existing simulation tools and experimental-diagnostic pipelines to enable hybrid physics + data-driven validation workflows Reproduce experimental plasma conditions within ML modeling workflows to support interpretation of magnetic diffusion, circuit response, and diagnostic measurements Generate analysis scripts for post-processing, parsing model outputs, and visualizing correlations between ML-based predictions and experimental results Collaborate with plasma-physics, pulsed-power, and transient-magnetics experts to expand the fidelity and fusion-relevance of ML-enabled modeling frameworks Communicate results with rigor and clarity through reports, presentations, and technical visualizations for research stakeholders
Requirements
PhD in Physics, Engineering, Applied Math, Computational Science, Machine Learning, or related field with emphasis on physics-grounded modeling 10+ years of industry or research-lab experience applying machine learning in experimental, simulation-driven, or scientific R&D environments Expertise with physics-informed or physics-constrained ML methods, such as differentiable physics, PINNs, scientific ML, surrogate modeling, or reduced-order models for complex physical systems Experience integrating ML models with scientific-computing workflows, simulation tools, or experimental diagnostics Proficiency scripting for data parsing, model analysis, and visualization (MATLAB, Python, or similar; Fortran or HPC exposure valuable) Familiarity with magnetic diffusion, circuit coupling, or plasma-dynamics modeling in pulsed-power or electromagnetics systems
Benefits & conditions
Our total compensation package includes benefits, including but not limited to:
- Medical, Dental, and Vision plans for employees and their families
- 31 Days of PTO (21 vacation days and 10 sick days)
- 10 Paid holidays, plus company-wide winter break
- Up to 5% employer 401(k) match
- Short term disability, long term disability, and life insurance
- Paid parental leave and support (up to 16 weeks)
- Annual wellness stipend