Using advanced artificial intelligence methods, a team of mathematicians has identified a host of previously unseen “glitches” in fluid-dynamics equations — including unstable singularity candidates that have long eluded discovery. The work, building on physics-informed neural networks (PINNs), revisits simplified fluid models and detects scenarios where solutions blow up in ways traditional methods couldn’t uncover, offering fresh momentum toward solving deep open problems tied to the Navier-Stokes equations and other foundational partial differential equations that govern fluid motion. Source coverage confirms this effort is part of a broader push where AI is not just speeding numeric simulations but acting as a discovery tool in mathematical physics.
Sources:
https://www.quantamagazine.org/using-ai-mathematicians-find-hidden-glitches-in-fluid-equations-20260109/
https://deepmind.google/blog/discovering-new-solutions-to-century-old-problems-in-fluid-dynamics/
https://www.businessinsider.com/google-deepmind-cracks-century-old-physics-mystery-ai-fluid-dynamics-2025-11
Key Takeaways
- AI frameworks trained on the structure of fluid equations — especially physics-informed neural networks — have detected new classes of unstable singularities in simplified fluid models that were previously undetected.
- These findings feed into major, century-old mathematical challenges, including the Navier-Stokes existence and smoothness problem, which carries a million-dollar prize and underpins much of turbulence research and engineering.
- The use of machine learning in fundamental mathematics signals a broader shift where AI acts not merely as a computational accelerator but as an active partner in uncovering complex structures in nonlinear systems.
In-Depth
For nearly two centuries, the equations that describe how fluids move — whether water in the ocean or air over a wing — have been cornerstones of physics and engineering. Central among them are the Navier-Stokes and related fluid equations, partial differential equations whose behavior in three dimensions remains only partially understood. In particular, mathematicians want to know whether smooth solutions always exist or if “singularities” — points where quantities like velocity become infinite — can form. Solving that question for Navier-Stokes is among the famous Millennium Prize Problems, with a one-million-dollar reward for a definitive answer.
Recent research has pushed this frontier further by leveraging artificial intelligence in a new way. Instead of merely simulating fluid flows, scientists have trained neural networks that are informed by the physics of the equations themselves to hunt for the subtle conditions that produce blowups — scenarios where the equations “glitch” and produce outputs that seem unphysical or undefined. These physics-informed neural networks have now identified a broader set of unstable singularity candidates in simplified fluid systems than traditional numerical methods could, illuminating patterns and solution families that defy earlier expectations.
Importantly, such discoveries don’t yet solve the full Navier-Stokes problem, but they reshape how researchers approach it: AI is no longer just crunching numbers faster, it’s revealing mathematical structures that guide human insight. This shift has implications beyond abstract theory — improving turbulence modeling, aerodynamic design, and weather prediction — because having a clearer picture of where and how the governing equations break down helps refine the tools scientists and engineers rely on every day.

