The dataset viewer is not available for this split.
Error code: FeaturesError
Exception: ArrowInvalid
Message: Schema at index 1 was different:
feature_17 of table_4: int64
feature_2 of table_8: int64
feature_35 of table_7: int64
feature_5 of table_9: int64
feature_7 of table_7: int64
feature_0 of table_10: int64
feature_4 of table_8: int64
feature_9 of table_6: int64
feature_3 of table_0: int64
feature_5 of table_7: int64
feature_28 of table_8: int64
feature_23 of table_3: int64
feature_20 of table_10: int64
feature_18 of table_5: int64
feature_15 of table_5: int64
date of table_10: int64
feature_11 of table_7: int64
feature_30 of table_10: int64
feature_16 of table_7: int64
feature_21 of table_8: int64
feature_8 of table_5: int64
row_idx of table_9: int64
feature_17 of table_10: int64
feature_9 of table_2: int64
feature_19 of table_8: int64
feature_13 of table_4: int64
feature_9 of table_7: int64
feature_20 of table_8: int64
feature_11 of table_4: int64
feature_8 of table_4: int64
feature_0 of table_0: int64
feature_24 of table_10: int64
feature_7 of table_10: int64
feature_28 of table_7: int64
feature_6 of table_5: int64
feature_6 of table_3: int64
feature_3 of table_6: int64
row_idx of table_5: int64
feature_23 of table_7: int64
feature_3 of table_7: int64
feature_25 of table_7: int64
feature_12 of table_7: int64
feature_3 of table_5: int64
feature_15 of table_10: int64
row_idx of table_8: int64
feature_10 of table_6: int64
feature_2 of table_5: int64
feature_21 of table_5: int64
row_idx of table_2: int64
feature_4 of table_9: int64
feature_8 of table_1: int64
feature_0 of table_3: int64
row_idx of table_6: int64
feature_8 of table_7: int64
feature_0 of table_4: int64
foreign_row_0 of table_9: int64
feature_1 of table_6: int64
feature_2 of table_10: int64
feature_18 of table_10: int64
feature_33 of table_10: int64
feature_5 of table_4: int64
feature_9 of table_3: int64
feature_8 of table_2: int64
row_idx of table_4: int64
feature_13 of table_7: int64
feature_8 of table_3: int64
feature_22 of table_10: int64
feature_14 of table_5: int64
feature_10 of table_10: int64
feature_23 of table_10: int64
feature_11 of table_8: int64
feature_2 of table_1: int64
feature_2 of table_3: int64
feature_8 of table_8: int64
feature_17 of table_7: int64
feature_2 of table_7: int64
feature_13 of table_6: int64
feature_10 of table_1: int64
feature_6 of table_8: int64
feature_4 of table_3: int64
feature_11 of table_2: int64
feature_27 of table_7: int64
row_idx of table_1: int64
feature_8 of table_10: int64
feature_6 of table_1: int64
feature_11 of table_10: int64
feature_35 of table_10: int64
feature_7 of table_8: int64
feature_10 of table_5: int64
feature_18 of table_6: int64
feature_33 of table_7: int64
row_idx of table_7: int64
feature_24 of table_7: int64
feature_13 of table_5: int64
foreign_row_2 of table_3: int64
feature_11 of table_3: int64
feature_1 of table_3: int64
feature_4 of table_6: int64
feature_1 of table_10: int64
foreign_row_0 of table_3: int64
feature_5 of table_6: int64
feature_4 of table_2: int64
feature_1 of table_2: int64
feature_11 of table_6: int64
feature_22 of table_3: int64
feature_1 of table_5: int64
feature_16 of table_6: int64
feature_7 of table_9: int64
feature_4 of table_7: int64
feature_0 of table_7: int64
foreign_row_2 of table_10: int64
feature_23 of table_5: int64
feature_3 of table_8: int64
feature_29 of table_8: int64
foreign_row_1 of table_3: int64
feature_26 of table_3: int64
feature_32 of table_7: int64
feature_9 of table_10: int64
feature_24 of table_8: int64
feature_0 of table_1: int64
feature_9 of table_1: int64
row_idx of table_10: int64
feature_3 of table_10: int64
foreign_row_0 of table_8: int64
feature_3 of table_3: int64
feature_29 of table_7: int64
feature_31 of table_7: int64
feature_26 of table_8: int64
feature_28 of table_10: int64
feature_6 of table_6: int64
feature_6 of table_2: int64
feature_19 of table_5: int64
feature_6 of table_10: int64
feature_25 of table_10: int64
feature_3 of table_9: int64
feature_5 of table_8: int64
feature_32 of table_10: int64
feature_7 of table_2: int64
feature_18 of table_3: int64
date of table_5: int64
feature_0 of table_9: int64
feature_10 of table_7: int64
feature_21 of table_7: int64
feature_15 of table_8: int64
feature_2 of table_6: int64
feature_7 of table_4: int64
feature_13 of table_2: int64
feature_21 of table_3: int64
feature_0 of table_5: int64
feature_25 of table_8: int64
feature_14 of table_10: int64
feature_9 of table_4: int64
feature_3 of table_1: int64
feature_12 of table_10: int64
feature_32 of table_8: int64
feature_1 of table_4: int64
feature_1 of table_1: int64
feature_21 of table_10: int64
feature_13 of table_10: int64
feature_10 of table_2: int64
feature_3 of table_4: int64
feature_5 of table_1: int64
feature_30 of table_8: int64
feature_14 of table_4: int64
feature_12 of table_3: int64
date of table_6: int64
feature_13 of table_8: int64
feature_16 of table_8: int64
row_idx of table_3: int64
feature_16 of table_5: int64
feature_0 of table_8: int64
feature_12 of table_5: int64
feature_8 of table_6: int64
feature_24 of table_3: int64
feature_22 of table_8: int64
feature_26 of table_7: int64
feature_9 of table_5: int64
feature_3 of table_2: int64
feature_5 of table_10: int64
feature_27 of table_8: int64
feature_7 of table_3: int64
feature_16 of table_3: int64
feature_11 of table_5: int64
feature_7 of table_1: int64
feature_19 of table_10: int64
feature_8 of table_9: int64
feature_13 of table_3: int64
feature_17 of table_5: int64
feature_5 of table_5: int64
foreign_row_0 of table_6: int64
feature_17 of table_8: int64
feature_14 of table_8: int64
feature_25 of table_3: int64
feature_18 of table_4: int64
foreign_row_3 of table_10: int64
feature_20 of table_3: int64
feature_14 of table_3: int64
feature_38 of table_10: int64
feature_5 of table_2: int64
feature_30 of table_7: int64
feature_37 of table_10: int64
feature_18 of table_8: int64
feature_5 of table_3: int64
feature_2 of table_4: int64
feature_10 of table_4: int64
feature_36 of table_10: int64
feature_31 of table_8: int64
feature_20 of table_5: int64
feature_22 of table_7: int64
row_idx of table_0: int64
feature_10 of table_3: int64
feature_4 of table_1: int64
feature_22 of table_5: int64
feature_0 of table_2: int64
feature_1 of table_7: int64
feature_7 of table_5: int64
feature_15 of table_3: int64
foreign_row_0 of table_10: int64
foreign_row_1 of table_10: int64
feature_23 of table_8: int64
feature_19 of table_3: int64
feature_6 of table_9: int64
feature_1 of table_9: int64
feature_26 of table_10: int64
feature_15 of table_4: int64
feature_0 of table_6: int64
feature_1 of table_8: int64
feature_9 of table_8: int64
feature_17 of table_6: int64
feature_31 of table_10: int64
feature_4 of table_5: int64
feature_18 of table_7: int64
feature_27 of table_10: int64
feature_17 of table_3: int64
feature_12 of table_8: int64
feature_24 of table_5: int64
feature_34 of table_10: int64
feature_6 of table_7: int64
feature_14 of table_7: int64
feature_7 of table_6: int64
feature_12 of table_6: int64
feature_4 of table_4: int64
feature_16 of table_10: int64
feature_29 of table_10: int64
feature_15 of table_6: int64
feature_1 of table_0: int64
feature_4 of table_0: int64
feature_14 of table_6: int64
feature_2 of table_9: int64
feature_6 of table_4: int64
feature_4 of table_10: int64
foreign_row_0 of table_5: int64
feature_2 of table_0: int64
feature_12 of table_4: int64
feature_34 of table_7: int64
feature_10 of table_8: int64
feature_19 of table_7: int64
feature_20 of table_7: int64
vs
table_3:Db: struct<node_idx_offset: int64, num_nodes: int64>
table_1:Db: struct<node_idx_offset: int64, num_nodes: int64>
table_5:Db: struct<node_idx_offset: int64, num_nodes: int64>
table_4:Db: struct<node_idx_offset: int64, num_nodes: int64>
table_0:Db: struct<node_idx_offset: int64, num_nodes: int64>
table_10:Db: struct<node_idx_offset: int64, num_nodes: int64>
table_2:Db: struct<node_idx_offset: int64, num_nodes: int64>
table_8:Db: struct<node_idx_offset: int64, num_nodes: int64>
table_6:Db: struct<node_idx_offset: int64, num_nodes: int64>
table_7:Db: struct<node_idx_offset: int64, num_nodes: int64>
table_9:Db: struct<node_idx_offset: int64, num_nodes: int64>
Traceback: Traceback (most recent call last):
File "/src/services/worker/src/worker/job_runners/split/first_rows.py", line 243, in compute_first_rows_from_streaming_response
iterable_dataset = iterable_dataset._resolve_features()
^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^
File "/usr/local/lib/python3.12/site-packages/datasets/iterable_dataset.py", line 3608, in _resolve_features
features = _infer_features_from_batch(self.with_format(None)._head())
^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^
File "/usr/local/lib/python3.12/site-packages/datasets/iterable_dataset.py", line 2368, in _head
return next(iter(self.iter(batch_size=n)))
^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^
File "/usr/local/lib/python3.12/site-packages/datasets/iterable_dataset.py", line 2573, in iter
for key, example in iterator:
^^^^^^^^
File "/usr/local/lib/python3.12/site-packages/datasets/iterable_dataset.py", line 2060, in __iter__
for key, pa_table in self._iter_arrow():
^^^^^^^^^^^^^^^^^^
File "/usr/local/lib/python3.12/site-packages/datasets/iterable_dataset.py", line 2082, in _iter_arrow
yield from self.ex_iterable._iter_arrow()
File "/usr/local/lib/python3.12/site-packages/datasets/iterable_dataset.py", line 588, in _iter_arrow
yield new_key, pa.Table.from_batches(chunks_buffer)
^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^
File "pyarrow/table.pxi", line 5039, in pyarrow.lib.Table.from_batches
File "pyarrow/error.pxi", line 155, in pyarrow.lib.pyarrow_internal_check_status
File "pyarrow/error.pxi", line 92, in pyarrow.lib.check_status
pyarrow.lib.ArrowInvalid: Schema at index 1 was different:
feature_17 of table_4: int64
feature_2 of table_8: int64
feature_35 of table_7: int64
feature_5 of table_9: int64
feature_7 of table_7: int64
feature_0 of table_10: int64
feature_4 of table_8: int64
feature_9 of table_6: int64
feature_3 of table_0: int64
feature_5 of table_7: int64
feature_28 of table_8: int64
feature_23 of table_3: int64
feature_20 of table_10: int64
feature_18 of table_5: int64
feature_15 of table_5: int64
date of table_10: int64
feature_11 of table_7: int64
feature_30 of table_10: int64
feature_16 of table_7: int64
feature_21 of table_8: int64
feature_8 of table_5: int64
row_idx of table_9: int64
feature_17 of table_10: int64
feature_9 of table_2: int64
feature_19 of table_8: int64
feature_13 of table_4: int64
feature_9 of table_7: int64
feature_20 of table_8: int64
feature_11 of table_4: int64
feature_8 of table_4: int64
feature_0 of table_0: int64
feature_24 of table_10: int64
feature_7 of table_10: int64
feature_28 of table_7: int64
feature_6 of table_5: int64
feature_6 of table_3: int64
feature_3 of table_6: int64
row_idx of table_5: int64
feature_23 of table_7: int64
feature_3 of table_7: int64
feature_25 of table_7: int64
feature_12 of table_7: int64
feature_3 of table_5: int64
feature_15 of table_10: int64
row_idx of table_8: int64
feature_10 of table_6: int64
feature_2 of table_5: int64
feature_21 of table_5: int64
row_idx of table_2: int64
feature_4 of table_9: int64
feature_8 of table_1: int64
feature_0 of table_3: int64
row_idx of table_6: int64
feature_8 of table_7: int64
feature_0 of table_4: int64
foreign_row_0 of table_9: int64
feature_1 of table_6: int64
feature_2 of table_10: int64
feature_18 of table_10: int64
feature_33 of table_10: int64
feature_5 of table_4: int64
feature_9 of table_3: int64
feature_8 of table_2: int64
row_idx of table_4: int64
feature_13 of table_7: int64
feature_8 of table_3: int64
feature_22 of table_10: int64
feature_14 of table_5: int64
feature_10 of table_10: int64
feature_23 of table_10: int64
feature_11 of table_8: int64
feature_2 of table_1: int64
feature_2 of table_3: int64
feature_8 of table_8: int64
feature_17 of table_7: int64
feature_2 of table_7: int64
feature_13 of table_6: int64
feature_10 of table_1: int64
feature_6 of table_8: int64
feature_4 of table_3: int64
feature_11 of table_2: int64
feature_27 of table_7: int64
row_idx of table_1: int64
feature_8 of table_10: int64
feature_6 of table_1: int64
feature_11 of table_10: int64
feature_35 of table_10: int64
feature_7 of table_8: int64
feature_10 of table_5: int64
feature_18 of table_6: int64
feature_33 of table_7: int64
row_idx of table_7: int64
feature_24 of table_7: int64
feature_13 of table_5: int64
foreign_row_2 of table_3: int64
feature_11 of table_3: int64
feature_1 of table_3: int64
feature_4 of table_6: int64
feature_1 of table_10: int64
foreign_row_0 of table_3: int64
feature_5 of table_6: int64
feature_4 of table_2: int64
feature_1 of table_2: int64
feature_11 of table_6: int64
feature_22 of table_3: int64
feature_1 of table_5: int64
feature_16 of table_6: int64
feature_7 of table_9: int64
feature_4 of table_7: int64
feature_0 of table_7: int64
foreign_row_2 of table_10: int64
feature_23 of table_5: int64
feature_3 of table_8: int64
feature_29 of table_8: int64
foreign_row_1 of table_3: int64
feature_26 of table_3: int64
feature_32 of table_7: int64
feature_9 of table_10: int64
feature_24 of table_8: int64
feature_0 of table_1: int64
feature_9 of table_1: int64
row_idx of table_10: int64
feature_3 of table_10: int64
foreign_row_0 of table_8: int64
feature_3 of table_3: int64
feature_29 of table_7: int64
feature_31 of table_7: int64
feature_26 of table_8: int64
feature_28 of table_10: int64
feature_6 of table_6: int64
feature_6 of table_2: int64
feature_19 of table_5: int64
feature_6 of table_10: int64
feature_25 of table_10: int64
feature_3 of table_9: int64
feature_5 of table_8: int64
feature_32 of table_10: int64
feature_7 of table_2: int64
feature_18 of table_3: int64
date of table_5: int64
feature_0 of table_9: int64
feature_10 of table_7: int64
feature_21 of table_7: int64
feature_15 of table_8: int64
feature_2 of table_6: int64
feature_7 of table_4: int64
feature_13 of table_2: int64
feature_21 of table_3: int64
feature_0 of table_5: int64
feature_25 of table_8: int64
feature_14 of table_10: int64
feature_9 of table_4: int64
feature_3 of table_1: int64
feature_12 of table_10: int64
feature_32 of table_8: int64
feature_1 of table_4: int64
feature_1 of table_1: int64
feature_21 of table_10: int64
feature_13 of table_10: int64
feature_10 of table_2: int64
feature_3 of table_4: int64
feature_5 of table_1: int64
feature_30 of table_8: int64
feature_14 of table_4: int64
feature_12 of table_3: int64
date of table_6: int64
feature_13 of table_8: int64
feature_16 of table_8: int64
row_idx of table_3: int64
feature_16 of table_5: int64
feature_0 of table_8: int64
feature_12 of table_5: int64
feature_8 of table_6: int64
feature_24 of table_3: int64
feature_22 of table_8: int64
feature_26 of table_7: int64
feature_9 of table_5: int64
feature_3 of table_2: int64
feature_5 of table_10: int64
feature_27 of table_8: int64
feature_7 of table_3: int64
feature_16 of table_3: int64
feature_11 of table_5: int64
feature_7 of table_1: int64
feature_19 of table_10: int64
feature_8 of table_9: int64
feature_13 of table_3: int64
feature_17 of table_5: int64
feature_5 of table_5: int64
foreign_row_0 of table_6: int64
feature_17 of table_8: int64
feature_14 of table_8: int64
feature_25 of table_3: int64
feature_18 of table_4: int64
foreign_row_3 of table_10: int64
feature_20 of table_3: int64
feature_14 of table_3: int64
feature_38 of table_10: int64
feature_5 of table_2: int64
feature_30 of table_7: int64
feature_37 of table_10: int64
feature_18 of table_8: int64
feature_5 of table_3: int64
feature_2 of table_4: int64
feature_10 of table_4: int64
feature_36 of table_10: int64
feature_31 of table_8: int64
feature_20 of table_5: int64
feature_22 of table_7: int64
row_idx of table_0: int64
feature_10 of table_3: int64
feature_4 of table_1: int64
feature_22 of table_5: int64
feature_0 of table_2: int64
feature_1 of table_7: int64
feature_7 of table_5: int64
feature_15 of table_3: int64
foreign_row_0 of table_10: int64
foreign_row_1 of table_10: int64
feature_23 of table_8: int64
feature_19 of table_3: int64
feature_6 of table_9: int64
feature_1 of table_9: int64
feature_26 of table_10: int64
feature_15 of table_4: int64
feature_0 of table_6: int64
feature_1 of table_8: int64
feature_9 of table_8: int64
feature_17 of table_6: int64
feature_31 of table_10: int64
feature_4 of table_5: int64
feature_18 of table_7: int64
feature_27 of table_10: int64
feature_17 of table_3: int64
feature_12 of table_8: int64
feature_24 of table_5: int64
feature_34 of table_10: int64
feature_6 of table_7: int64
feature_14 of table_7: int64
feature_7 of table_6: int64
feature_12 of table_6: int64
feature_4 of table_4: int64
feature_16 of table_10: int64
feature_29 of table_10: int64
feature_15 of table_6: int64
feature_1 of table_0: int64
feature_4 of table_0: int64
feature_14 of table_6: int64
feature_2 of table_9: int64
feature_6 of table_4: int64
feature_4 of table_10: int64
foreign_row_0 of table_5: int64
feature_2 of table_0: int64
feature_12 of table_4: int64
feature_34 of table_7: int64
feature_10 of table_8: int64
feature_19 of table_7: int64
feature_20 of table_7: int64
vs
table_3:Db: struct<node_idx_offset: int64, num_nodes: int64>
table_1:Db: struct<node_idx_offset: int64, num_nodes: int64>
table_5:Db: struct<node_idx_offset: int64, num_nodes: int64>
table_4:Db: struct<node_idx_offset: int64, num_nodes: int64>
table_0:Db: struct<node_idx_offset: int64, num_nodes: int64>
table_10:Db: struct<node_idx_offset: int64, num_nodes: int64>
table_2:Db: struct<node_idx_offset: int64, num_nodes: int64>
table_8:Db: struct<node_idx_offset: int64, num_nodes: int64>
table_6:Db: struct<node_idx_offset: int64, num_nodes: int64>
table_7:Db: struct<node_idx_offset: int64, num_nodes: int64>
table_9:Db: struct<node_idx_offset: int64, num_nodes: int64>Need help to make the dataset viewer work? Make sure to review how to configure the dataset viewer, and open a discussion for direct support.
PluRel Dataset
Synthetic Data unlocks Scaling Laws for Relational Foundation Models
Preprocessed synthetic relational databases for pretraining relational foundation models, as introduced in:
PluRel: Synthetic Data unlocks Scaling Laws for Relational Foundation Models Kothapalli, Ranjan, Hudovernik, Dwivedi, Hoffart, Guestrin, Leskovec — arXiv:2602.04029 (2026)
Data Structure
Each entry is a relbench-compatible Database consisting of multiple relational tables.
| Component | Description |
|---|---|
| Tables | 3–20 per database |
| Primary keys | row_idx (auto-generated) |
| Foreign keys | foreign_row_0, foreign_row_1, ... |
| Feature columns | feature_0, feature_1, ... (categorical or numerical) |
| Time column | date — on activity (leaf) tables only |
Schema topology is sampled from: BarabasiAlbert, ReverseRandomTree, or WattsStrogatz graphs.
Data generation uses Structural Causal Models (SCMs) — column dependencies are modeled as DAGs, with values propagated through randomly-initialized MLPs. Activity tables also include trend + cycle + noise time-series.
| Parameter | Range |
|---|---|
| Rows per entity table | 500–1,000 |
| Rows per activity table | 2,000–5,000 |
| Columns per table | 3–40 (power-law) |
| Missing values | 1–10% of numerical columns |
| Timestamp range | 1990–2025 |
| Train / Val / Test | 80% / 10% / 10% |
Download
huggingface-cli download kvignesh1420/plurel \
--repo-type dataset \
--local-dir ~/scratch/pre
Usage
Databases are named rel-synthetic-<seed> and are fully reproducible:
from plurel import SyntheticDataset, Config
dataset = SyntheticDataset(seed=42, config=Config())
db = dataset.make_db()
for name, table in db.tables.items():
print(f"{name}: {table.df.shape}")
See snap-stanford/plurel for installation, configuration, and training scripts.
Related
| Resource | Link |
|---|---|
| Pretrained checkpoints | kvignesh1420/relational-transformer-plurel |
| Real-world relbench data | hvag976/relational-transformer |
Citation
@article{kothapalli2026plurel,
title={{PluRel:} Synthetic Data unlocks Scaling Laws for Relational Foundation Models},
author={Kothapalli, Vignesh and Ranjan, Rishabh and Hudovernik, Valter and Dwivedi, Vijay Prakash and Hoffart, Johannes and Guestrin, Carlos and Leskovec, Jure},
journal={arXiv preprint arXiv:2602.04029},
year={2026}
}
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