While Swiss bankers and regulators are wary of the systemic risk posed by powerful new AI models like Mythos, a separate Swiss study reveals that leading AI systems consistently fail to predict extreme weather events, showcasing the technology's current limitations.

"The uncontrolled and immediate availability of AI models like Mythos would be classified as a systemic risk."
"Physics does not change."
Switzerland stands at a critical crossroads as artificial intelligence simultaneously threatens to dismantle financial security and fails to predict the very environmental disasters it was promised to solve. While the nationâs banking giants grapple with the 'systemic risk' of frontier models like Anthropicâs Mythos, a landmark study from the University of Geneva reveals a staggering incompetence in AIâs ability to forecast extreme weather. This duality exposes a uncomfortable truth: the technology is powerful enough to break our systems, but not yet smart enough to protect our lives. The Swiss Financial Market Supervisory Authority (FINMA) has already sounded the alarm, noting that the uncontrolled release of such models could expose 'zero-day' vulnerabilities across virtually all existing software. This is not a distant future; it is a present-day crisis of confidence that demands immediate Swiss intervention.
A single AI model now possesses the power to paralyze the global financial heart. Mythos, a frontier model so potent that its creator, Anthropic, has restricted its release, is capable of hunting down IT bugs with unprecedented speed. For Swiss banks, this is a nightmare scenario. FINMA warns that if Mythos were released today, it would constitute a 'systemic risk,' allowing bad actors to exploit vulnerabilities that were previously unknown to even the best cybersecurity teams. While the US and UK have convened emergency meetings, Switzerland has remained characteristically stoic. The Swiss Bankers Association (SBA) confirms that no 'special crisis meetings' have occurred, opting instead to rely on existing cybersecurity frameworks. However, the SBA is urging banks to double down on IT defenses, warning that a 'wait-and-see' approach is no longer an option as adversaries weaponize AI to dismantle financial infrastructure.
AI is systematically failing when it matters most: during life-threatening extreme weather events. A rigorous study led by the University of Geneva, published in Science Advances, compared three top-tier AI modelsâGraphCast, Pangu-Weather, and Fuxiâagainst traditional physical models. The results are alarming. When faced with record-breaking heatwaves or cold spells, AI models consistently underestimated the intensity and frequency of these events. The reason is a fundamental flaw in machine learning: these models learn from the past, but extreme events, by definition, are unprecedented. 'Physics does not change,' researchers noted, highlighting that traditional models based on thermodynamics remain superior because they rely on immutable laws rather than historical patterns. In a world where climate change is making 'unprecedented' events the new normal, relying on AI for early warnings could lead to catastrophic delays in civil protection and public health responses.
The path forward for Switzerland lies not in total reliance on AI, but in a sophisticated 'hybrid' approach that marries machine speed with physical certainty. Experts like Roland Potthast of the DWD suggest that combining the statistical prowess of AI with the unwavering laws of physics is the only way to safeguard society. For the Swiss financial sector, this means using AI to hunt for bugs before hackers do, while maintaining human-led oversight. For meteorology, it means using AI for routine forecasts while trusting traditional physics for extreme alerts. As Switzerland navigates this digital minefield, the National Cybersecurity Centre (NCSC) remains cautious, suggesting that some of the 'dramatic portrayals' of AI power may be marketing hype. Nevertheless, the acceleration of existing threats is real. Switzerland must now decide if it will lead the development of responsible AI or remain vulnerable to its unpredictable evolution.