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MLGear

Some utility functions to make ML with Python / Pandas / sklearn even easier

Example Usage

from mlgear.cv import run_cv_model
from mlgear.models import runLGB
from mlgear.metrics import rmse

lgb_params = {'application': 'regression',
              'boosting': 'gbdt',
              'metric': 'rmse',
              'num_leaves': 15,
              'learning_rate': 0.01,
              'bagging_fraction': 0.9,
              'feature_fraction': 0.9,
              'verbosity': -1,
              'seed': 1,
              'lambda_l1': 1,
              'lambda_l2': 1,
              'early_stop': 20,
              'verbose_eval': 10,
              'num_rounds': 500,
              'num_threads': 3}

results = run_cv_model(train, test, target, runLGB, lgb_params, rmse)

Installation

pip install mlgear

For development:

# Install poetry if you don't have it
pip install poetry

# Install dependencies
poetry install

# Build the package
poetry build

# Publish to PyPI
poetry publish