--- license: cc-by-sa-4.0 --- # DS-CodeBridge A robust benchmark comprising **800** carefully curated bidirectionally translatable tasks across three important stages of data science workflows: **Data Querying**, **Data Manipulation**, and **Data Mining**. # Download the Dataset ```python from datasets import load_dataset # Load the dl200 split in streaming mode dl200_dataset = load_dataset( "xia01ongLi/DS-CodeBridge", split="dl200", streaming=True # Enable streaming mode ) # Get the first example first_example = next(iter(dl200_dataset)) print("First example:", first_example) ``` ```python from datasets import load_dataset # Load the dq300 split in streaming mode dq300_dataset = load_dataset( "xia01ongLi/DS-CodeBridge", split="dq300", streaming=True # Enable streaming mode ) # Get the first example first_example = next(iter(dq300_dataset)) print("First example:", first_example) ``` ```python from datasets import load_dataset # Load the ds300 split in streaming mode ds300_dataset = load_dataset( "xia01ongLi/DS-CodeBridge", split="ds300", streaming=True # Enable streaming mode ) # Get the first example first_example = next(iter(ds300_dataset)) print("First example:", first_example) ``` # DQ Database setup ## Postgresql Setup * Download and install the postgresql from the official website: https://www.postgresql.org/download/ * Download the pgAdmin4 from the official website: https://www.pgadmin.org/download/ (Recommended to monitor the database) * In pgADmin4/terminal create a new database you prefer * Construct the database by run the following command (You can find PostgreSQL version database in the data folder): ```bash psql -U USERNAME -d DB_NAME -f postgresql_db.sql ``` ## Pandas DB Setup * Donwload the Pandas version database from the data folder