The dataset viewer is not available because its heuristics could not detect any supported data files. You can try uploading some data files, or configuring the data files location manually.
BirdBench Dataset in DuckDB format
BirdBench is a benchmark for text-to-SQL capabilities, now available in DuckDB format for improved performance and usability.
About BirdBench
BirdBench is a comprehensive benchmark dataset for evaluating text-to-SQL capabilities of language models. It features a diverse collection of databases spanning various domains including:
- Business and finance
- Entertainment and media
- Sports and recreation
- Health and medicine
- Education
- Travel and geography
- And many more
Why DuckDB?
This repository contains the BirdBench dataset converted from SQLite to DuckDB format, which offers several advantages:
- Performance: DuckDB is significantly faster for analytical queries
- Integration: Better integration with Python data science tools
- Features: Support for vectorized operations and advanced analytical functions
- Compatibility: Works well in environments where SQLite might have limitations
Dataset Structure
The dataset maintains the original BirdBench structure, with both training and validation databases converted to DuckDB format:
/train
- Contains training databases/validation
- Contains validation databases
Each database preserves the original schema and data from the SQLite version.
Usage
Loading a database
import duckdb
# Connect to a database
conn = duckdb.connect('path/to/database.duckdb')
# List tables
tables = conn.execute('SELECT name FROM sqlite_master WHERE type="table"').fetchall()
print(tables)
# Run a query
result = conn.execute('SELECT * FROM your_table LIMIT 5').fetchall()
print(result)
- Downloads last month
- 195