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CaLM

Cardinality prediction language model

Usage

  1. Provide a config YAML file and run training script:
python3 train.py -c <your-config-file>

The training script will generate a snapshot directory (under the output director you configure in the YAML file) and will generate a test config YAML file under that snapshot directory.

  1. Run the test script:
python3 test.py -c <generated-test-config-file>

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