Edit model card

SchemaPile Foreign Key Detection Model (T5-base)

Model Description

In this repository we are introducing t5-schemapile-fk. It's a language model, based on google-t5/t5-base fine-tuned for predicting foreign key relationships in relational database schemas.

Training Data

Forein key pairs extracted from SchemaPile-Perm, a large collection of relational database schemas.

Evaluation Data

We evaluate the foreign key detection accuracy of starcoder-schemapile-fk and t5-schemapile-fk on schemas from Spider, BIRD-SQL, and CTU PRLR.

eval

Training Procedure

The model was trained using the following hyperparamters:

  • batch_size = 16
  • learning_rate=4e-5,
  • weight_decay=0.01,
  • num_train_epochs=1

See Training Code.

How to Use

We recommend using the following prompt template:

Example Prompt:

You are given the following SQL database tables: 
staff(staff_id, staff_address_id, nickname, first_name, middle_name, last_name, date_of_birth, date_joined_staff, date_left_staff)
addresses(address_id, line_1_number_building, city, zip_postcode, state_province_county, country)
Output a json string with the following schema {table, column, referencedTable, referencedColumn} that contains the foreign key relationship between the two tables.

Example Output:

{'table': 'staff',
 'column': 'staff_address_id',
 'referencedTable': 'addresses',
 'referencedColumn': 'address_id'}

To run the model locally, we recommend using our end-to-end Example Notebook.

Downloads last month
9
Inference Examples
This model does not have enough activity to be deployed to Inference API (serverless) yet. Increase its social visibility and check back later, or deploy to Inference Endpoints (dedicated) instead.