
This paper discusses TabPFN-2.5, a sophisticated tabular foundation model designed to handle diverse datasets with up to 50,000 samples and 2,000 features. This next-generation AI significantly outperforms traditional tree-based models and complex ensembles like AutoGluon in a fraction of the time. The researchers highlight its state-of-the-art performance across various industries, particularly in healthcare, finance, and manufacturing, where it excels even with limited data. To facilitate industrial deployment, the system includes a distillation engine that converts the model into faster, lightweight formats like MLPs or tree ensembles. Beyond simple classification and regression, the model serves as a versatile tool for causal inference and time series forecasting. This release establishes a new benchmark for tuning-free machine learning, offering robust predictive power and scalability for real-world applications.