--- pretty_name: SALT-KG license: cc-by-nc-sa-4.0 knowledge_graph: path: data/salt-kg/salt-kg.json format: json description: Canonical full Operational Business Knowledge Graph metadata file to use programmatically. viewer_derivatives: - path: data/salt-kg/salt-kg-summary.parquet purpose: Generated Hugging Face Dataset Viewer summary file only. Not the canonical metadata source. - path: data/salt-kg/salt-kg-fields.parquet purpose: Generated Hugging Face Dataset Viewer field-level display file only. Not the canonical metadata source. configs: - config_name: salt_kg_summary default: true data_files: - split: metadata path: data/salt-kg/salt-kg-summary.parquet - config_name: salt_kg_fields data_files: - split: metadata path: data/salt-kg/salt-kg-fields.parquet - config_name: sales_document data_files: - split: full path: data/salt/I_SalesDocument.parquet - split: train path: data/salt/I_SalesDocument_train.parquet - split: test path: data/salt/I_SalesDocument_test.parquet - config_name: sales_document_item data_files: - split: full path: data/salt/I_SalesDocumentItem.parquet - split: train path: data/salt/I_SalesDocumentItem_train.parquet - split: test path: data/salt/I_SalesDocumentItem_test.parquet - config_name: joined_tables data_files: - split: train path: data/salt/JoinedTables_train.parquet - split: test path: data/salt/JoinedTables_test.parquet - config_name: customer data_files: - split: full path: data/salt/I_Customer.parquet - config_name: address_org_name_postal_address data_files: - split: full path: data/salt/I_AddrOrgNamePostalAddress.parquet --- # SALT-KG: A Benchmark for Semantics-Aware Learning on Enterprise Tables [![Made with Python](https://img.shields.io/badge/Made%20with-Python-blue.svg)](https://www.python.org/) [![License](https://img.shields.io/badge/License-CC--BY--NC--SA--4.0-green)](licence) [![OpenReview](https://img.shields.io/badge/OpenReview-Paper-blue)](https://openreview.net/forum?id=9vVMSvilGX) [![REUSE status](https://api.reuse.software/badge/github.com/SAP-samples/salt-kg)](https://api.reuse.software/info/github.com/SAP-samples/salt-kg) ## Description This repository contains the dataset from our paper SALT-KG: A Benchmark for Semantics-Aware Learning on Enterprise Tables, presented at EurIPS'25 Table Representation Workshop. The canonical metadata file for SALT-KG is `data/salt-kg/salt-kg.json`. If you want to use the full Operational Business Knowledge Graph metadata, use this file directly. The files `data/salt-kg/salt-kg-summary.parquet` and `data/salt-kg/salt-kg-fields.parquet` are generated helper files for the Hugging Face Dataset Viewer only. They are provided to make the metadata browsable on Hugging Face and are not replacements for `data/salt-kg/salt-kg.json`. The parquet files under `data/salt/` contain the relational SALT tables that remain available in the Dataset Viewer as separate table configurations. ## Abstract Building upon the SALT benchmark for relational prediction, we introduce SALT-KG, a benchmark for semantics-aware learning on enterprise tables. SALT-KG extends SALT by linking its multi-table transactional data with a structured Operational Business Knowledge represented in a Metadata Knowledge Graph (OBKG) that captures field-level descriptions, relational dependencies, and business object-types. This extension enables evaluation of models that jointly reason over tabular evidence and contextual semantics—an increasingly critical capability for foundation models on structured data. Empirical analysis reveals that while metadata-derived features yield modest improvements in classical prediction metrics, these metadata features consistently highlight gaps in models’ ability to leverage semantics in relational context. By reframing tabular prediction as semantics-conditioned reasoning, SALT-KG establishes a benchmark to advance tabular FMs grounded in declarative knowledge, providing the first empirical step toward semantically linked tables in structured data at enterprise scale. ## Why SALT-KG ![Motivation for Semantics with Tabular Data](images/motivation.png) There is growing research on Tabular Foundation Models. TRL models are typically trained and evaluated on benchmarks that represent relational structure but lack explicit semantic grounding or declarative context. Knowledge graph (KG) and data integration communities have explored connecting tables to semantic graphs through systems such as JENTAB. We can bridge this gap by enriching enterprise relational data with an explicit semantic layer that links tables, fields, and business objects through declarative knowledge in KG ## How was SALT-KG Created ![Motivation for Semantics with Tabular Data](images/dataset-creation.png) For every relation (Table) in the underlying SALT dataset, we find a matching node in the KG (a View).. We extract triples related to the Views that include: Fields: data abstraction nodes with associated fields, labels, associations, data classes, reference fields, and other elements. ObjectNodeTypes: further semantic metadata through technical definitions, business object descriptions ## Dataset Overview ![Motivation for Semantics with Tabular Data](images/dataset-stats.png) The SALT-KG dataset consists of 4 tables from the SALT benchmark, enriched with semantic metadata from an Operational Business Knowledge Graph (OBKG). The dataset includes: - 4 relational tables with transactional data - Metadata Knowledge Graph (OBKG) with field-level descriptions, relational dependencies, and business object types - Canonical metadata JSON at `data/salt-kg/salt-kg.json` - Generated Hugging Face viewer helper files at `data/salt-kg/salt-kg-summary.parquet` and `data/salt-kg/salt-kg-fields.parquet` - Train and test splits for the benchmark tables where provided, plus full-table parquet files for direct browsing ## Requirements N/A ## Known Issues No known issues ## Authors - [Isaiah Onando Mulang'](https://www.linkedin.com/in/mulang-onando-phd-31a16ab1/) - [Felix Sasaki](https://www.linkedin.com/in/felixsasaki/) - [Tassilo Klein](https://tjklein.github.io/) - [Jonas Kolk](https://www.linkedin.com/in/jonas-kolk-b8a94b123/) - [Nikolay Grechanov](https://www.linkedin.com/in/grechanov/) - [Johannes Hoffart](https://www.linkedin.com/in/johanneshoffart/) ## Citations If you use this dataset in your research, please cite the following paper: ``` @inproceedings{mulang2025saltkg, title={SALT-KG: A Benchmark for Semantics-Aware Learning on Enterprise Tables}, author={Mulang', Isaiah Onando and Sasaki, Felix and Klein, Tassilo and Kolk, Jonas and Grechanov, Nikolay and Hoffart, Johannes}, booktitle={Proceedings of the AI for Tabular Data workshop at EurIPS 2025}, year={2025} } ``` ## How to obtain support [Create an issue](https://github.com/SAP-samples//issues) in this repository if you find a bug or have questions about the content. For additional support, [ask a question in SAP Community](https://answers.sap.com/questions/ask.html). ## Contributing If you wish to contribute code, offer fixes or improvements, please send a pull request. Due to legal reasons, contributors will be asked to accept a DCO when they create the first pull request to this project. This happens in an automated fashion during the submission process. SAP uses [the standard DCO text of the Linux Foundation](https://developercertificate.org/). ## License Copyright (c) 2025 SAP SE or an SAP affiliate company. All rights reserved. This project is licensed under the CC-BY-NC-SA-4.0 except as noted otherwise in the [LICENSE](LICENSE) file. SAP expressly reserves its rights against text and data mining for commercial purposes as described in [TDM_RESERVATION.txt](TDM_RESERVATION.txt).