TabPFN-3: Technical Report
L\'eo Grinsztajn, Klemens Fl\"oge, Oscar Key, Felix Birkel, Philipp Jund, Brendan Roof, Mihir Manium, Shi Bin (Liam) Hoo, Magnus B\"uhler, Anurag Garg, Dominik Safaric, Jake Robertson, Benjamin J\"ager, Simone Alessi, Adrian Hayler, Vladyslav Moroshan, Lennart Purucker

TL;DR
TabPFN-3 advances tabular data prediction by scaling to 1 million rows, reducing training and inference time, and achieving state-of-the-art results across diverse datasets without relying on large language models or internet data.
Contribution
It introduces TabPFN-3, a new foundation model that scales to larger datasets, improves speed, and enhances performance on tabular, relational, and tabular-text data.
Findings
Outperforms all models on TabArena benchmark.
Ranks first on datasets with many classes.
Beats 8-hour-tuned gradient-boosted trees on datasets up to 1 million rows.
Abstract
Tabular data underpins most high-value prediction problems in science and industry, and TabPFN has driven the foundation model revolution for this modality. Designed with feedback from our users, TabPFN-3 builds on this foundation to scale state-of-the-art performance to datasets with 1M training rows and substantially reduce training and inference time. Pretrained exclusively on synthetic data from our prior, TabPFN-3 dramatically pushes the frontier of tabular prediction and brings substantial gains on time series, relational, and tabular-text data. On the standard tabular benchmark TabArena, a forward pass of TabPFN-3 outperforms all other models, including tuned and ensembled baselines, by a significant margin, and pareto-dominates the speed/performance frontier. On more diverse datasets, TabPFN-3 ranks first on datasets with many classes, and beats 8-hour-tuned…
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