About Augur
Engineering progress is constrained by the speed of simulation. In aerospace, energy, and other safety-critical industries, design cycles are still governed by solvers built for a different era, accurate, but slow and costly, and fundamentally incompatible with real-time decision-making. Augur AI exists to change that constraint.
Founded by Emmanuel and Matthieu, both former researchers at Inria working on AI powered simulation, Augur is building foundational AI models for physical simulation. By combining advances in large-scale model architectures with modern compute, we enable real-time iteration across fluid dynamics, structural mechanics, and electromagnetics, without sacrificing physical fidelity.
We want to push engineering towards real time feedback loops. We want Aircraft components to be optimized aerodynamically in real time. Wind farm layouts to be explored interactively to maximize energy yield. Thermal stress in nuclear infrastructure to be anticipated before it becomes a limiting factor. These will come as the natural consequence of the faster physics simulation we are building.
We are deeply embedded in the European research ecosystem, backed by engineers and founders from organizations including Mistral AI, Dataiku, and DeepMind. As we scale our technology into real-world industrial deployments, we are looking for engineers who want to work at the boundary between frontier AI and the most demanding physical systems on earth. We want to become the new technology layer of modern engineering. Our ambition is global, our first office is in Paris, France.
Your Mission
As an AI Scientist, you will be at the heart of our core technology development. Your work will be centered around advancing our model architectures and building the next generation of AI simulation models.
- Architect & Train: Build large-scale simulation models from the ground up, moving quickly from literature review to implementation and deployment.
- Data Strategy: Work in collaboration with our simulation engineers to define and execute our strategy for synthetic data generation, ensuring we build diverse and high-quality pre-training datasets.
- Stay at SOTA: Stay up-to-date with machine learning research. We encourage staying deeply connected to the research community and occasionally publishing our breakthroughs in the literature.
- Physics Integration: Work on bridging the gap between deep learning and physical laws, ensuring our models produce results that are both fast and physically accurate.
- Scaling & Performance: Work with our software engineering team to optimize training and inference workflows to handle massive datasets and ensure our models can be deployed in production environments.
Your Profile
- Education: You have a PhD or equivalent research experience and have spent significant time training large foundation models.
- Programming: Advanced proficiency in Python and deep learning frameworks, specifically PyTorch.
- Scientific Interest: A strong interest in physics or numerical simulation is a plus, even if your primary background is in pure AI.
- Mindset: You are a builder who enjoys moving from theoretical research to functional, industrial-scale products.
Why Join Us?
- Culture: Small team of committed top scientists and engineers in their field.
- High Impact: Join a founding team where your work directly shapes the product and its deployment with global leaders. Work on physical AI that delivers immediate, real-world value, making planes, windfarms, and nuclear plants more efficient and sustainable.
- Frontier AI: Work at the intersection of Generative AI, High-Performance Computing, and complex physics.
- Direct Influence: As one of our first Engineers, you will have a massive say in our roadmap and how our user interface evolves to meet engineering needs.
- Momentum: Join us at a key turning point as we scale from technical validation to major commercial expansion.