automl_tools
Project description
Automl_tools: automl binary classification
Automl_tools is a Python library that implements Gradient Boosting
Installation
pip install automl-tools
Usage
Probabilistic binary example on the Boston housing dataset:
import pandas as pd
from automl_tools.main import automl_run
train = pd.read_csv("https://raw.githubusercontent.com/jonaqp/automl_tools/main/automl_tools/examples/train.csv?token=AAN2ZBGCYYR7PATAMC6NIKDABSDCQ", sep=";")
test = pd.read_csv("https://raw.githubusercontent.com/jonaqp/automl_tools/main/automl_tools/examples/test.csv?token=AAN2ZBBD63PDQLGJNUWVHOLABSC4O", sep=";")
automl_run(train=train,
test=test,
target_col="Survived",
imp_num="knn",
imp_cat="knn",
processing="binding",
mutual_information=False,
correlation_drop=False,
model_feature_selection=None,
model_run="LR",
augmentation=True,
Stratified=True)
License
New features v2.1
- multiclass
- regression
Reference
Jonathan Quiza binary automl.
Project details
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