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SkLearn2PMML Build Status

Python package for converting Scikit-Learn pipelines to PMML.

Features

This package is a thin Python wrapper around the JPMML-SkLearn library.

News and Updates

The current version is 0.112.1 (14 December, 2024):

pip install sklearn2pmml==0.112.1

See the NEWS.md file.

Prerequisites

  • Java 1.8 or newer. The Java executable must be available on system path.
  • Python 3.8 or newer.

Installation

Installing a release version from PyPI:

pip install sklearn2pmml

Alternatively, installing the latest snapshot version from GitHub:

pip install --upgrade git+https://github.com/jpmml/sklearn2pmml.git

Usage

Command-line application

The sklearn2pmml module is executable. The main application loads the estimator object from the Pickle file (-i or --input; supports joblib, pickle or dill variants), performs the conversion, and saves the result to a PMML file (-o or --output):

python -m sklearn2pmml --input pipeline.pkl --output pipeline.pmml

Getting help:

python -m sklearn2pmml --help

On some platforms, the Pip package installer additionally makes the main application available as a top-level command:

sklearn2pmml --input pipeline.pkl --output pipeline.pmml

Library

A typical workflow can be summarized as follows:

  1. Create a PMMLPipeline object, and populate it with pipeline steps as usual. The sklearn2pmml.pipeline.PMMLPipeline class extends the sklearn.pipeline.Pipeline class with the following functionality:
  • If the PMMLPipeline.fit(X, y) method is invoked with pandas.DataFrame or pandas.Series object as an X argument, then its column names are used as feature names. Otherwise, feature names default to "x1", "x2", .., "x{number_of_features}".
  • If the PMMLPipeline.fit(X, y) method is invoked with pandas.Series object as an y argument, then its name is used as the target name (for supervised models). Otherwise, the target name defaults to "y".
  1. Fit and validate the pipeline as usual.
  2. Optionally, compute and embed verification data into the PMMLPipeline object by invoking PMMLPipeline.verify(X) method with a small but representative subset of training data.
  3. Convert the PMMLPipeline object to a PMML file in local filesystem by invoking the sklearn2pmml.sklearn2pmml(estimator, pmml_path) utility method.

Developing a simple decision tree model for the classification of iris species:

import pandas

iris_df = pandas.read_csv("Iris.csv")

iris_X = iris_df[iris_df.columns.difference(["Species"])]
iris_y = iris_df["Species"]

from sklearn.tree import DecisionTreeClassifier
from sklearn2pmml.pipeline import PMMLPipeline

pipeline = PMMLPipeline([
	("classifier", DecisionTreeClassifier())
])
pipeline.fit(iris_X, iris_y)

from sklearn2pmml import sklearn2pmml

sklearn2pmml(pipeline, "DecisionTreeIris.pmml", with_repr = True)

Developing a more elaborate logistic regression model for the same:

import pandas

iris_df = pandas.read_csv("Iris.csv")

iris_X = iris_df[iris_df.columns.difference(["Species"])]
iris_y = iris_df["Species"]

from sklearn_pandas import DataFrameMapper
from sklearn.decomposition import PCA
from sklearn.feature_selection import SelectKBest
from sklearn.impute import SimpleImputer
from sklearn.linear_model import LogisticRegression
from sklearn2pmml.decoration import ContinuousDomain
from sklearn2pmml.pipeline import PMMLPipeline

pipeline = PMMLPipeline([
	("mapper", DataFrameMapper([
		(["Sepal.Length", "Sepal.Width", "Petal.Length", "Petal.Width"], [ContinuousDomain(), SimpleImputer()])
	])),
	("pca", PCA(n_components = 3)),
	("selector", SelectKBest(k = 2)),
	("classifier", LogisticRegression(multi_class = "ovr"))
])
pipeline.fit(iris_X, iris_y)
pipeline.verify(iris_X.sample(n = 15))

from sklearn2pmml import sklearn2pmml

sklearn2pmml(pipeline, "LogisticRegressionIris.pmml", with_repr = True)

Documentation

Integrations:

Extensions:

Miscellaneous:

Archived:

De-installation

Uninstalling:

pip uninstall sklearn2pmml

License

SkLearn2PMML is licensed under the terms and conditions of the GNU Affero General Public License, Version 3.0.

If you would like to use SkLearn2PMML in a proprietary software project, then it is possible to enter into a licensing agreement which makes SkLearn2PMML available under the terms and conditions of the BSD 3-Clause License instead.

Additional information

SkLearn2PMML is developed and maintained by Openscoring Ltd, Estonia.

Interested in using Java PMML API software in your company? Please contact [email protected]

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Python library for converting Scikit-Learn pipelines to PMML

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