Datasets:
Tasks:
Translation
Modalities:
Text
Formats:
parquet
Languages:
Portuguese
Size:
1K - 10K
DOI:
License:
| license: mit | |
| task_categories: | |
| - translation | |
| language: | |
| - pt | |
| tags: | |
| - Text2SQL | |
| - Text-to-SQL | |
| pretty_name: AtlasSQL-BR | |
| size_categories: | |
| - 1K<n<10K | |
| # AtlasSQL-BR | |
| AtlasSQL-BR is a novel geospatial Text-to-SQL dataset in Brazilian Portuguese, built upon real-world open-government data. Integrating school census data, public facility registries, and Brazil's official geographic boundary hierarchies, this dataset provides a robust benchmark for evaluating and training models on spatial queries. | |
| ## ๐ Dataset Architecture and Structure | |
| The database schema underlying AtlasSQL-BR is organized around thematic public facility tables and their associated geographic boundary layers. This multi-level structure requires models to reason about spatial containment across different administrative granularities within a single SQL statement. | |
| * **Thematic Tables (Point Geometries):** The core table is `microdados_ed_basica`, derived from the Brazilian School Census, containing hundreds of infrastructural and pedagogical attributes per school. The schema also includes georeferenced records for other public facilities: libraries, CRAS, CREAS, and Centros POP. | |
| * **Boundary Tables (Polygon Geometries):** The dataset incorporates all seven official geographic boundary levels from IBGE: country, macro-region, state, municipality, district, neighborhood, and street. | |
| * **Spatial Operators:** Spatial relationships between facility points and boundary polygons are resolved using PostGIS extensions. The dataset covers a vocabulary of 22 PostGIS spatial functions (e.g., `ST_Intersects`, `ST_Within`, `ST_Contains`, `ST_Distance`). | |
| ### Data Fields | |
| Based on the dataset structure, each record contains the following fields: | |
| * `question`: The natural language query in Brazilian Portuguese. | |
| * `sql_code`: The corresponding executable PostGIS/SQL query. | |
| * `territorial_division`: The administrative boundary level relevant to the query. | |
| * `level`: The structural complexity tier of the query. | |
| * `geospatial_functions`: The primary PostGIS functions required to solve the query. | |
| * `source`: Indicates the origin of the data. It can be `base_dataset` (the original 980 manually annotated questions) or partitions generated by data augmentation techniques (such as `delete`, `insert`, `swap`, `synonym`, `translate`). | |
| ## ๐ Complexity Tiers | |
| The dataset comprises manually annotated question-SQL pairs classified into four complexity tiers based on the structural properties of the SQL query (all criteria are AND-combined within each tier): | |
| | Tier | Structural Criteria | | |
| | :--- | :--- | | |
| | **Easy** | <1 JOIN; no aggregations; no subqueries; direct spatial filter. | | |
| | **Medium** | 2-3 JOINs; no aggregations; multiple spatial conditions. | | |
| | **Hard** | 3-4 JOINs; >1 aggregation (COUNT, SUM, AVG); multiple spatial functions. | | |
| | **Very Hard** | 4+ JOINs; multiple aggregations; subqueries and/or CTEs; window functions (ROW_NUMBER, RANK, DENSE_RANK); CASE WHEN; possible UNION. | | |
| ## ๐ Files and Reproducibility | |
| The dataset is divided into standard `train.parquet` and `validation.parquet` splits. | |
| **โ ๏ธ Important Note on Reproducibility:** | |
| The baseline experiments documented in the original paper were conducted **exclusively** on the original 980 question-SQL pairs. The dataset files available here also include additional data generated through data augmentation techniques. | |
| To exactly replicate the experiments and results from the original paper, you **must**: | |
| 1. Use the dataset version associated with the **`paper-released`** tag. | |
| 2. Filter the data to include **only** the records where the `source` column is exactly `base_dataset`. The other partitions (`delete`, `insert`, `swap`, `synonym`, `translate`) contain synthetic augmented data and should be excluded when reproducing the paper's base results. | |
| ### How to load the dataset for reproducibility (Python) | |
| You can easily download and filter the dataset using the Hugging Face `datasets` library to match the exact setup used in the paper: | |
| ```python | |
| from datasets import load_dataset | |
| # 1. Load the dataset using the specific tag for the paper's release | |
| dataset = load_dataset("datafromlopes/atlas-sql-br", revision="paper-released") | |
| # 2. Filter both train and validation splits to include only the original 980 questions | |
| base_train = dataset["train"].filter(lambda x: x["source"] == "base_dataset") | |
| base_validation = dataset["validation"].filter(lambda x: x["source"] == "base_dataset") | |
| print(f"Original Train size: {len(base_train)}") | |
| print(f"Original Validation size: {len(base_validation)}") | |
| ``` | |
| ## โ๏ธ Citation | |
| If you find this dataset useful for your research, please cite the original paper: |