Machine Learning Engineer (Physics-AI)
Stand
Location
San Francisco
Employment Type
Full time
Location Type
On-site
Department
Science & Engineering
Compensation
- $160K – $210K • Offers Equity
About Stand
Stand is a new technology and insurance company revolutionizing how society assesses, mitigates, and adapts to climate risks. Our leadership team has extensive experience in insurance, technology, and climate science: building billions in market value at prior ventures. At Stand, we are rethinking how insurance enables proactive, science-driven resilience.
Existing insurance models often rely on broad exclusions, leaving homeowners without options. At Stand, we leverage advanced deterministic models and cutting-edge analytics to provide personalized risk assessments—helping homeowners secure coverage and take proactive steps toward resilience.
Background:
Homes respond differently to climate catastrophes like wildfire — but until now, we’ve lacked the tools to measure that risk at the individual level. At Stand, we combine deterministic physics models with cutting-edge AI to deeply understand a home’s unique risk environment. This enables broader insurance access, incentivizes proactive mitigation, and helps communities become more resilient.
The Role:
We are looking for a Physics-AI-oriented Machine Learning Engineer who can do some Computer Vision, rather than a Computer Vision-focused MLE that can do some Physics-AI.
On the Applied Science team, we build machine learning models that power Stand’s risk analytics and climate resilience platform. We combine AI, embedded physics, and spatial intelligence into scalable tools that directly influence underwriting, pricing, and customer decision-making.
As a Machine Learning Engineer, you’ll own projects end-to-end — designing, training, and deploying models that deliver both immediate and long-term business impact. You’ll thrive in a fast-moving startup environment, collaborating across Applied Science and the broader company to turn technical breakthroughs into production-ready solutions.
Your focus will be on creating multimodal, physics-aware models that accelerate physical modeling by orders of magnitude, adapt to diverse perils, and leverage the latest methods in the field. If you’re eager to push the boundaries of applied machine learning, contribute to scaling classical simulation methods by 1000x, and help provide insurance for homes in climate-stressed areas—all while creating immense value from the ground up—this position is for you!
You’ll partner with other MLEs and drive forward initiatives such as:
Developing flagship physics-informed deep learning models
Advancing multimodal modeling with data augmentation and sensor fusion
Applying 3D computer vision for digital twin annotation
Scaling spatial data analysis into production workflows
This Role Will
Design, train, and deploy ML models across physics-informed AI, computer vision, and multimodal learning
Own projects end-to-end, from prototyping through production, with emphasis on reliability and business-ready tooling
Fine-tune and extend state-of-the-art models to accelerate simulation and digital twin pipelines
Build scalable ML infrastructure: data pipelines, training methodologies, and evaluation frameworks for real-time risk analytics
Collaborate cross-functionally to integrate models into user-facing workflows
Continuously improve model performance through monitoring, retraining, and active learning
Core Skills (Must-Haves)
Strong foundation in ML: proven track record of taking models from research to production (training from scratch, fine-tuning advanced architectures, evaluation across diverse datasets)
Hands-on experience combining physics-based modeling (finite element, finite volume, finite difference) with machine learning to accelerate or enhance solvers
Expertise with computer vision and multimodal architectures (e.g., CNNs, ViTs, spatial attention, GNNs)
Familiarity with modern generative and 3D methods (e.g., diffusion, autoregressive, 3D reconstruction)
Proficiency in ML frameworks (PyTorch/TensorFlow) and production-grade practices (containers, CI/CD, automated testing, shared libraries)
Ability to stay current with emerging methods and proactively apply them to business problems
Strong cross-disciplinary collaborator who can connect knowledge silos and foster innovation
Nice to Have (Helpful, Not Required)
Familiarity with Agentic AI frameworks (e.g., LangChain) and their application
Experience in early-stage startups or high-growth environments requiring rapid iteration
Knowledge of geospatial/remote sensing ecosystems or multimodal Earth observation pipelines
Passion for applying ML to real-world resiliency challenges beyond purely digital contexts
Compensation:
The annual base salary range for full-time employees in this position is $160,000 to $210,000 with a meaningful Equity Grant.
Compensation decisions are dependent on several factors including, but not limited to, an individual’s qualifications, the location where the role is to be performed, internal equity, and alignment with market data.
Additional Benefits:
Comprehensive benefits including above-market Health, Dental, Vision
Weekly lunch stipend
Flexible time off
401k plan
Why Join Stand?
At Stand, you’ll be part of a mission-driven team redefining how insurance intersects with climate resilience. This is a unique opportunity to build something transformative—leveraging advanced technology, underwriting expertise, and data-driven insights to create a smarter, more adaptive insurance model.
Equal Opportunity Employment
Stand is an equal opportunity employer and does not discriminate on the basis of protected veteran status, disability, or other legally protected status. We believe that diversity enriches the workplace, and we are committed to growing our team with the most talented and passionate people from every community.
Stand Insurance is committed to providing an inclusive and accessible recruitment process. If you require any accommodations during the application or interview process, please let us know by contacting hiring@getstand.com. We will work with you to ensure you have the support you need to participate fully.
Pursuant to the San Francisco Fair Chance Ordinance, we will consider for employment qualified applicants with arrest and conviction records.
Compensation Range: $160K - $210K