Prior-Labs/tabpfn_2_6
### Model Overview TabPFN-2.6 is a transformer-based foundation model that uses in-context-learning to solve tabular prediction problems in a forward pass. Inference code can be found at https://github.com/PriorLabs/tabPFN.
README
license: other licensename: tabpfn-2.6-license-v1.0 licenselink: LICENSE extragatedfields: Organization: text Role: type: select options: Field practitioners Researcher Student Use-case: text May we contact you about future updates?: checkbox extragatedbuttoncontent: Agree to license terms and send request to access repo. extragateddescription: "Model weights released under\tabpfn-2.6-license-v1.0. This license is designed to be permissive for research and internal evaluation. It explicitly…
- HuggingFace
- https://huggingface.co/Prior-Labs/tabpfn_2_6
Source attribution
- HuggingFace — Prior-Labs/tabpfn_2_6
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