AI RESEARCH
OpenRFM: Dissecting Relational In-Context Learning
arXiv CS.AI
•
ArXi:2606.04320v1 Announce Type: cross Relational Foundation Models (RFMs) promise a single pre-trained predictor that, given any relational database, returns predictions in one forward pass via relational in-context learning (ICL). Yet a substantial gap separates open RFMs from their commercial counterparts, and the origin of this gap has not been systematically understood. We dissect a representative framework, the Relational Transformer (RT), from two perspectives.