| license: other | |
| license_name: tabfm-non-commercial-v1.0 | |
| license_link: https://huggingface.co/google/tabfm-1.0.0-pytorch/blob/main/LICENSE | |
| library_name: tabfm | |
| pipeline_tag: tabular-classification | |
| tags: | |
| - tabular | |
| - tabular-regression | |
| - zero-shot | |
| - in-context-learning | |
| - pytorch | |
| - foundation-model | |
| # TabFM 1.0.0 (PyTorch) | |
| TabFM is a zero-shot tabular foundation model from Google Research. It supports | |
| classification and regression on structured/tabular data with mixed numerical and | |
| categorical columns, requiring no fine-tuning or hyperparameter search - training | |
| examples are passed as context and predictions are made in a single forward pass. | |
| This repository contains the **PyTorch** weights. For the JAX/Flax weights see | |
| [google/tabfm-1.0.0-jax](https://huggingface.co/google/tabfm-1.0.0-jax). | |
| ## Getting Started | |
| ```bash | |
| pip install tabfm[pytorch] | |
| ``` | |
| **Classification:** | |
| ```python | |
| from tabfm import TabFMClassifier, tabfm_v1_0_0_pytorch as tabfm_v1_0_0 | |
| model = tabfm_v1_0_0.load(model_type="classification") | |
| clf = TabFMClassifier(model=model) | |
| clf.fit(X_train, y_train) | |
| probs = clf.predict_proba(X_test) | |
| ``` | |
| **Regression:** | |
| ```python | |
| from tabfm import TabFMRegressor, tabfm_v1_0_0_pytorch as tabfm_v1_0_0 | |
| model = tabfm_v1_0_0.load(model_type="regression") | |
| reg = TabFMRegressor(model=model) | |
| reg.fit(X_train, y_train) | |
| preds = reg.predict(X_test) | |
| ``` | |
| You can also load directly using the HuggingFace Hub API: | |
| ```python | |
| from tabfm.src.pytorch.tabfm_v1_0_0 import TabFM_HF | |
| clf_model = TabFM_HF.from_pretrained("google/tabfm-1.0.0-pytorch", subfolder="classification") | |
| reg_model = TabFM_HF.from_pretrained("google/tabfm-1.0.0-pytorch", subfolder="regression") | |
| ``` | |
| ### Available Checkpoints | |
| | Subfolder | Task | `is_classifier` | | |
| |-----------|------|-----------------| | |
| | `classification/` | Classification (up to 10 classes) | `True` | | |
| | `regression/` | Regression | `False` | | |
| ## Developers and Affiliations | |
| Developed by the [Google Research](https://research.google) team. | |
| ## Intended Use | |
| - Tabular data with numerical and/or categorical columns | |
| - Binary and multiclass classification (up to 10 classes) | |
| - Regression on continuous targets | |
| - Zero-shot inference: no dataset-specific training or hyperparameter tuning | |
| - Works with DataFrames (pandas) or numpy arrays | |
| ## Not Intended For | |
| - Images, audio, video, or raw text | |
| - More than 10 output classes (hard model limit) | |
| - Tasks requiring task-specific fine-tuning | |
| - Non-tabular structured data (graphs, sequences) | |
| - Commercial use (see License below) | |
| ## Model Architecture | |
| TabFM uses alternating row and column attention to capture both feature interactions | |
| and row-level patterns: | |
| 1. **Column attention** (Set Transformer): embeds each cell using Fourier features and | |
| a per-group linear projection, then aggregates across rows via induced self-attention | |
| 2. **Row compression**: CLS tokens summarise each row into a dense vector via row-level | |
| attention with Rotary Position Embedding (RoPE) | |
| 3. **ICL Transformer**: a 24-block causal transformer operates over the compressed row | |
| vectors, treating training rows as context and outputting predictions for test rows | |
| Key hyperparameters: | |
| | Parameter | Value | | |
| |-----------|-------| | |
| | Embedding dim | 256 | | |
| | Column attention blocks | 3 (4 heads, 256 induced points) | | |
| | Row attention blocks | 3 (8 heads, 8 CLS tokens) | | |
| | ICL transformer blocks | 24 (8 heads) | | |
| | Feed-forward factor | 4 | | |
| | Max classes | 10 | | |
| | Activation | SwiGLU | | |
| | Fourier features | 32 frequencies | | |
| ## Training Data and Priors | |
| TabFM was trained on hundreds of millions of **synthetic** datasets generated | |
| dynamically using structural causal models (SCMs). Synthetic data was chosen due to | |
| the scarcity of diverse, high-quality open-source tabular datasets and to avoid | |
| privacy/licensing concerns with real-world industrial data. The SCM prior encodes | |
| inductive biases about causal structure and feature relationships typical in tabular | |
| tasks. | |
| ## Performance | |
| TabFM was evaluated on [TabArena](https://tabarena.ai) across 51 datasets | |
| (38 classification, 13 regression). In zero-shot mode - a single forward pass with no | |
| hyperparameter search - TabFM outperforms heavily-tuned supervised baselines including | |
| gradient-boosted trees. The `TabFMClassifier.ensemble()` preset (feature crosses, | |
| SVD features, NNLS blending) yields further improvements. | |
| See the [Google Research blog post](https://research.google/blog/introducing-tabfm-a-zero-shot-foundation-model-for-tabular-data/) for full benchmark details. | |
| ## Ethical Considerations | |
| TabFM was trained entirely on synthetic data. Performance on specific real-world | |
| domains, minority groups, or edge distributions is not fully characterised. Users | |
| should evaluate the model on held-out data representative of their use case before | |
| deploying in high-stakes settings. | |
| ## Limitations | |
| - **Max 10 classes** for classification (hard architectural limit) | |
| - Memory usage scales with the number of training rows (all rows are passed as context) | |
| - Optimised for tables up to 500 features; behaviour on very wide tables may degrade | |
| - Performance is not guaranteed to match task-specific, fine-tuned models on all datasets | |
| - Not an officially supported Google product | |
| ## License | |
| The model weights in this repository are released under the | |
| **TabFM Non-Commercial License v1.0** - see [LICENSE](https://huggingface.co/google/tabfm-1.0.0-pytorch/blob/main/LICENSE). The source code is | |
| Apache 2.0 licensed via [google-research/tabfm](https://github.com/google-research/tabfm). | |
| ## Version | |
| 1.0.0 | |
| ## Citation | |
| ```bibtex | |
| @article{tabfm2026, | |
| title = {TabFM: A Zero-Shot Foundation Model for Tabular Data}, | |
| author = {Google Research}, | |
| year = {2026}, | |
| url = {https://research.google/blog/introducing-tabfm-a-zero-shot-foundation-model-for-tabular-data/} | |
| } | |
| ``` | |
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