spark-instrumented-optimizer/python/pyspark/testing/mlutils.py
Weichen Xu 7e759b2d95 [SPARK-33520][ML][PYSPARK] make CrossValidator/TrainValidateSplit/OneVsRest Reader/Writer support Python backend estimator/evaluator
### What changes were proposed in this pull request?
make CrossValidator/TrainValidateSplit/OneVsRest Reader/Writer support Python backend estimator/model

### Why are the changes needed?
Currently, pyspark support third-party library to define python backend estimator/evaluator, i.e., estimator that inherit `Estimator` instead of `JavaEstimator`, and only can be used in pyspark.

CrossValidator and TrainValidateSplit support tuning these python backend estimator,
but cannot support saving/load, becase CrossValidator and TrainValidateSplit writer implementation is use JavaMLWriter, which require to convert nested estimator and evaluator into java instance.

OneVsRest saving/load now only support java backend classifier due to similar issue.

### Does this PR introduce _any_ user-facing change?
No

### How was this patch tested?
Unit test.

Closes #30471 from WeichenXu123/support_pyio_tuning.

Authored-by: Weichen Xu <weichen.xu@databricks.com>
Signed-off-by: Weichen Xu <weichen.xu@databricks.com>
2020-12-04 08:35:50 +08:00

251 lines
8.5 KiB
Python

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import numpy as np
from pyspark import keyword_only
from pyspark.ml import Estimator, Model, Transformer, UnaryTransformer
from pyspark.ml.evaluation import Evaluator
from pyspark.ml.param import Param, Params, TypeConverters
from pyspark.ml.param.shared import HasMaxIter, HasRegParam
from pyspark.ml.classification import Classifier, ClassificationModel
from pyspark.ml.util import DefaultParamsReadable, DefaultParamsWritable
from pyspark.ml.wrapper import _java2py # type: ignore
from pyspark.sql import DataFrame, SparkSession
from pyspark.sql.types import DoubleType
from pyspark.testing.utils import ReusedPySparkTestCase as PySparkTestCase
def check_params(test_self, py_stage, check_params_exist=True):
"""
Checks common requirements for :py:class:`PySpark.ml.Params.params`:
- set of params exist in Java and Python and are ordered by names
- param parent has the same UID as the object's UID
- default param value from Java matches value in Python
- optionally check if all params from Java also exist in Python
"""
py_stage_str = "%s %s" % (type(py_stage), py_stage)
if not hasattr(py_stage, "_to_java"):
return
java_stage = py_stage._to_java()
if java_stage is None:
return
test_self.assertEqual(py_stage.uid, java_stage.uid(), msg=py_stage_str)
if check_params_exist:
param_names = [p.name for p in py_stage.params]
java_params = list(java_stage.params())
java_param_names = [jp.name() for jp in java_params]
test_self.assertEqual(
param_names, sorted(java_param_names),
"Param list in Python does not match Java for %s:\nJava = %s\nPython = %s"
% (py_stage_str, java_param_names, param_names))
for p in py_stage.params:
test_self.assertEqual(p.parent, py_stage.uid)
java_param = java_stage.getParam(p.name)
py_has_default = py_stage.hasDefault(p)
java_has_default = java_stage.hasDefault(java_param)
test_self.assertEqual(py_has_default, java_has_default,
"Default value mismatch of param %s for Params %s"
% (p.name, str(py_stage)))
if py_has_default:
if p.name == "seed":
continue # Random seeds between Spark and PySpark are different
java_default = _java2py(test_self.sc,
java_stage.clear(java_param).getOrDefault(java_param))
py_stage.clear(p)
py_default = py_stage.getOrDefault(p)
# equality test for NaN is always False
if isinstance(java_default, float) and np.isnan(java_default):
java_default = "NaN"
py_default = "NaN" if np.isnan(py_default) else "not NaN"
test_self.assertEqual(
java_default, py_default,
"Java default %s != python default %s of param %s for Params %s"
% (str(java_default), str(py_default), p.name, str(py_stage)))
class SparkSessionTestCase(PySparkTestCase):
@classmethod
def setUpClass(cls):
PySparkTestCase.setUpClass()
cls.spark = SparkSession(cls.sc)
@classmethod
def tearDownClass(cls):
PySparkTestCase.tearDownClass()
cls.spark.stop()
class MockDataset(DataFrame):
def __init__(self):
self.index = 0
class HasFake(Params):
def __init__(self):
super(HasFake, self).__init__()
self.fake = Param(self, "fake", "fake param")
def getFake(self):
return self.getOrDefault(self.fake)
class MockTransformer(Transformer, HasFake):
def __init__(self):
super(MockTransformer, self).__init__()
self.dataset_index = None
def _transform(self, dataset):
self.dataset_index = dataset.index
dataset.index += 1
return dataset
class MockUnaryTransformer(UnaryTransformer, DefaultParamsReadable, DefaultParamsWritable):
shift = Param(Params._dummy(), # type: ignore
"shift", "The amount by which to shift " +
"data in a DataFrame",
typeConverter=TypeConverters.toFloat)
def __init__(self, shiftVal=1):
super(MockUnaryTransformer, self).__init__()
self._setDefault(shift=1)
self._set(shift=shiftVal)
def getShift(self):
return self.getOrDefault(self.shift)
def setShift(self, shift):
self._set(shift=shift)
def createTransformFunc(self):
shiftVal = self.getShift()
return lambda x: x + shiftVal
def outputDataType(self):
return DoubleType()
def validateInputType(self, inputType):
if inputType != DoubleType():
raise TypeError("Bad input type: {}. ".format(inputType) +
"Requires Double.")
class MockEstimator(Estimator, HasFake):
def __init__(self):
super(MockEstimator, self).__init__()
self.dataset_index = None
def _fit(self, dataset):
self.dataset_index = dataset.index
model = MockModel()
self._copyValues(model)
return model
class MockModel(MockTransformer, Model, HasFake):
pass
class _DummyLogisticRegressionParams(HasMaxIter, HasRegParam):
def setMaxIter(self, value):
return self._set(maxIter=value)
def setRegParam(self, value):
return self._set(regParam=value)
# This is a dummy LogisticRegression used in test for python backend estimator/model
class DummyLogisticRegression(Classifier, _DummyLogisticRegressionParams,
DefaultParamsReadable, DefaultParamsWritable):
@keyword_only
def __init__(self, *, featuresCol="features", labelCol="label", predictionCol="prediction",
maxIter=100, regParam=0.0, rawPredictionCol="rawPrediction"):
super(DummyLogisticRegression, self).__init__()
kwargs = self._input_kwargs
self.setParams(**kwargs)
@keyword_only
def setParams(self, *, featuresCol="features", labelCol="label", predictionCol="prediction",
maxIter=100, regParam=0.0, rawPredictionCol="rawPrediction"):
kwargs = self._input_kwargs
self._set(**kwargs)
return self
def _fit(self, dataset):
# Do nothing but create a dummy model
return self._copyValues(DummyLogisticRegressionModel())
class DummyLogisticRegressionModel(ClassificationModel, _DummyLogisticRegressionParams,
DefaultParamsReadable, DefaultParamsWritable):
def __init__(self):
super(DummyLogisticRegressionModel, self).__init__()
def _transform(self, dataset):
# A dummy transform impl which always predict label 1
from pyspark.sql.functions import array, lit
from pyspark.ml.functions import array_to_vector
rawPredCol = self.getRawPredictionCol()
if rawPredCol:
dataset = dataset.withColumn(
rawPredCol, array_to_vector(array(lit(-100.0), lit(100.0))))
predCol = self.getPredictionCol()
if predCol:
dataset = dataset.withColumn(predCol, lit(1.0))
return dataset
@property
def numClasses(self):
# a dummy implementation for test.
return 2
@property
def intercept(self):
# a dummy implementation for test.
return 0.0
# This class only used in test. The following methods/properties are not used in tests.
@property
def coefficients(self):
raise NotImplementedError()
def predictRaw(self, value):
raise NotImplementedError()
def numFeatures(self):
raise NotImplementedError()
def predict(self, value):
raise NotImplementedError()
class DummyEvaluator(Evaluator, DefaultParamsReadable, DefaultParamsWritable):
def _evaluate(self, dataset):
# a dummy implementation for test.
return 1.0