How to use sklearn2pmml - 10 common examples

To help you get started, we’ve selected a few sklearn2pmml examples, based on popular ways it is used in public projects.

Secure your code as it's written. Use Snyk Code to scan source code in minutes - no build needed - and fix issues immediately.

github ankane / eps / test / support / python / lightgbm_regression.py View on Github external
text_features = ["model"]

mapper = DataFrameMapper(
  [(numeric_features, [ContinuousDomain()])] +
  [([f], [CategoricalDomain(), PMMLLabelEncoder()]) for f in categorical_features] +
  [(f, [CategoricalDomain(), CountVectorizer(tokenizer=Splitter(), max_features=5)]) for f in text_features]
)

pipeline = PMMLPipeline([
  ("mapper", mapper),
  ("model", LGBMRegressor(n_estimators=1000))
])
# use model__sample_weight for weight
pipeline.fit(data, data["hwy"], model__categorical_feature=[3, 4])

sklearn2pmml(pipeline, "test/support/python/lightgbm_regression.pmml")

print(pipeline.predict(data[:10]))
github iamDecode / sklearn-pmml-model / tests / tree / test_tree.py View on Github external
def test_sklearn2pmml(self):
    # Export to PMML
    pipeline = PMMLPipeline([
      ("classifier", self.ref)
    ])
    pipeline.fit(self.train[0], self.train[1])
    sklearn2pmml(pipeline, "tree_sklearn2pmml.pmml", with_repr = True)

    try:
      # Import PMML
      model = PMMLTreeClassifier(pmml='tree_sklearn2pmml.pmml')

      # Verify classification
      Xte, _ = self.test
      assert np.array_equal(
        self.ref.predict_proba(Xte),
        model.predict_proba(Xte)
      )

    finally:
      remove("tree_sklearn2pmml.pmml")
github iamDecode / sklearn-pmml-model / tests / ensemble / test_forest.py View on Github external
def test_sklearn2pmml(self):
    # Export to PMML
    pipeline = PMMLPipeline([
      ("classifier", self.ref)
    ])
    pipeline.fit(self.test[0], self.test[1])

    sklearn2pmml(pipeline, "forest_sklearn2pmml.pmml", with_repr = True)

    try:
      # Import PMML
      model = PMMLForestClassifier(pmml='forest_sklearn2pmml.pmml')

      # Verify classification
      Xte, _ = self.test
      assert np.array_equal(
        self.ref.predict_proba(Xte),
        model.predict_proba(Xte)
      )

    finally:
      remove("forest_sklearn2pmml.pmml")
github ankane / eps / test / support / python / lightgbm_classification.py View on Github external
text_features = []

mapper = DataFrameMapper(
  [(numeric_features, [ContinuousDomain()])] +
  [([f], [CategoricalDomain(), PMMLLabelEncoder()]) for f in categorical_features] +
  [(f, [CategoricalDomain(), CountVectorizer(tokenizer=Splitter())]) for f in text_features]
)

pipeline = PMMLPipeline([
  ("mapper", mapper),
  ("model", LGBMClassifier(n_estimators=1000))
])
pipeline.fit(data, data["drv"], model__categorical_feature=[3])

suffix = "binary" if binary else "multiclass"
sklearn2pmml(pipeline, "test/support/python/lightgbm_" + suffix + ".pmml")

print(list(pipeline.predict(data[:10])))
print(list(pipeline.predict_proba(data[0:1])[0]))
github ankane / eps / test / support / python / linear_regression.py View on Github external
categorical_features = ["drv", "class"]
text_features = ["model"]

mapper = DataFrameMapper(
  [(numeric_features, [ContinuousDomain()])] +
  [([f], [CategoricalDomain(), OneHotEncoder()]) for f in categorical_features] +
  [(f, [CategoricalDomain(), CountVectorizer(tokenizer=Splitter(), max_features=5)]) for f in text_features]
)

pipeline = PMMLPipeline([
  ("mapper", mapper),
  ("model", LinearRegression())
])
pipeline.fit(data, data["hwy"])

sklearn2pmml(pipeline, "test/support/python/linear_regression_text.pmml")

print(list(pipeline.predict(data[:10])))
github vaclavcadek / scikit2pmml / tests / models / rf.py View on Github external
def setUp(self):
        iris = load_iris()

        X = iris.data.astype(np.float64)
        y = iris.target.astype(np.int32)

        model = RandomForestClassifier(max_depth=4)
        model.fit(X, y)

        params = {'copyright': 'Václav Čadek', 'model_name': 'Iris Model'}
        self.model = model
        self.pmml = sklearn2pmml(self.model, **params)
        self.num_trees = len(self.model.estimators_)
        self.num_inputs = model.n_features_
        self.num_outputs = model.n_classes_
        self.features = ['x{}'.format(i) for i in range(self.num_inputs)]
        self.class_names = ['y{}'.format(i) for i in range(self.num_outputs)]
github iamDecode / sklearn-pmml-model / tests / ensemble / test_forest.py View on Github external
def test_sklearn2pmml(self):
    # Export to PMML
    pipeline = PMMLPipeline([
      ("classifier", self.ref)
    ])
    pipeline.fit(self.test[0], self.test[1])

    sklearn2pmml(pipeline, "forest_sklearn2pmml.pmml", with_repr = True)

    try:
      # Import PMML
      model = PMMLForestClassifier(pmml='forest_sklearn2pmml.pmml')

      # Verify classification
      Xte, _ = self.test
      assert np.array_equal(
        self.ref.predict_proba(Xte),
        model.predict_proba(Xte)
      )
github ankane / eps / test / support / python / lightgbm_regression.py View on Github external
from sklearn2pmml.feature_extraction.text import Splitter
from sklearn_pandas import DataFrameMapper

data = pd.read_csv("test/support/mpg.csv")

numeric_features = ["displ", "year", "cyl"]
categorical_features = ["drv", "class"]
text_features = ["model"]

mapper = DataFrameMapper(
  [(numeric_features, [ContinuousDomain()])] +
  [([f], [CategoricalDomain(), PMMLLabelEncoder()]) for f in categorical_features] +
  [(f, [CategoricalDomain(), CountVectorizer(tokenizer=Splitter(), max_features=5)]) for f in text_features]
)

pipeline = PMMLPipeline([
  ("mapper", mapper),
  ("model", LGBMRegressor(n_estimators=1000))
])
# use model__sample_weight for weight
pipeline.fit(data, data["hwy"], model__categorical_feature=[3, 4])

sklearn2pmml(pipeline, "test/support/python/lightgbm_regression.pmml")

print(pipeline.predict(data[:10]))
github ankane / eps / test / support / python / lightgbm_classification.py View on Github external
data = pd.read_csv("test/support/mpg.csv")
if binary:
  data["drv"] = data["drv"].replace("r", "4")

numeric_features = ["displ", "year", "cyl"]
categorical_features = ["class"]
text_features = []

mapper = DataFrameMapper(
  [(numeric_features, [ContinuousDomain()])] +
  [([f], [CategoricalDomain(), PMMLLabelEncoder()]) for f in categorical_features] +
  [(f, [CategoricalDomain(), CountVectorizer(tokenizer=Splitter())]) for f in text_features]
)

pipeline = PMMLPipeline([
  ("mapper", mapper),
  ("model", LGBMClassifier(n_estimators=1000))
])
pipeline.fit(data, data["drv"], model__categorical_feature=[3])

suffix = "binary" if binary else "multiclass"
sklearn2pmml(pipeline, "test/support/python/lightgbm_" + suffix + ".pmml")

print(list(pipeline.predict(data[:10])))
print(list(pipeline.predict_proba(data[0:1])[0]))
github ankane / eps / test / support / python / linear_regression.py View on Github external
from sklearn2pmml.feature_extraction.text import Splitter
from sklearn_pandas import DataFrameMapper

data = pd.read_csv("test/support/mpg.csv")

numeric_features = ["displ", "year", "cyl"]
categorical_features = ["drv", "class"]
text_features = ["model"]

mapper = DataFrameMapper(
  [(numeric_features, [ContinuousDomain()])] +
  [([f], [CategoricalDomain(), OneHotEncoder()]) for f in categorical_features] +
  [(f, [CategoricalDomain(), CountVectorizer(tokenizer=Splitter(), max_features=5)]) for f in text_features]
)

pipeline = PMMLPipeline([
  ("mapper", mapper),
  ("model", LinearRegression())
])
pipeline.fit(data, data["hwy"])

sklearn2pmml(pipeline, "test/support/python/linear_regression_text.pmml")

print(list(pipeline.predict(data[:10])))

sklearn2pmml

Python library for converting Scikit-Learn pipelines to PMML

AGPL-3.0
Latest version published 7 days ago

Package Health Score

76 / 100
Full package analysis

Similar packages