superset/tests/unit_tests/pandas_postprocessing/test_boxplot.py

152 lines
4.1 KiB
Python

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# to you under the Apache License, Version 2.0 (the
# "License"); you may not use this file except in compliance
# with the License. You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing,
# software distributed under the License is distributed on an
# "AS IS" BASIS, WITHOUT WARRANTIES OR CONDITIONS OF ANY
# KIND, either express or implied. See the License for the
# specific language governing permissions and limitations
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import pytest
from superset.exceptions import InvalidPostProcessingError
from superset.utils.core import PostProcessingBoxplotWhiskerType
from superset.utils.pandas_postprocessing import boxplot
from tests.unit_tests.fixtures.dataframes import names_df
def test_boxplot_tukey():
df = boxplot(
df=names_df,
groupby=["region"],
whisker_type=PostProcessingBoxplotWhiskerType.TUKEY,
metrics=["cars"],
)
columns = {column for column in df.columns}
assert columns == {
"cars__mean",
"cars__median",
"cars__q1",
"cars__q3",
"cars__max",
"cars__min",
"cars__count",
"cars__outliers",
"region",
}
assert len(df) == 4
def test_boxplot_min_max():
df = boxplot(
df=names_df,
groupby=["region"],
whisker_type=PostProcessingBoxplotWhiskerType.MINMAX,
metrics=["cars"],
)
columns = {column for column in df.columns}
assert columns == {
"cars__mean",
"cars__median",
"cars__q1",
"cars__q3",
"cars__max",
"cars__min",
"cars__count",
"cars__outliers",
"region",
}
assert len(df) == 4
def test_boxplot_percentile():
df = boxplot(
df=names_df,
groupby=["region"],
whisker_type=PostProcessingBoxplotWhiskerType.PERCENTILE,
metrics=["cars"],
percentiles=[1, 99],
)
columns = {column for column in df.columns}
assert columns == {
"cars__mean",
"cars__median",
"cars__q1",
"cars__q3",
"cars__max",
"cars__min",
"cars__count",
"cars__outliers",
"region",
}
assert len(df) == 4
def test_boxplot_percentile_incorrect_params():
with pytest.raises(InvalidPostProcessingError):
boxplot(
df=names_df,
groupby=["region"],
whisker_type=PostProcessingBoxplotWhiskerType.PERCENTILE,
metrics=["cars"],
)
with pytest.raises(InvalidPostProcessingError):
boxplot(
df=names_df,
groupby=["region"],
whisker_type=PostProcessingBoxplotWhiskerType.PERCENTILE,
metrics=["cars"],
percentiles=[10],
)
with pytest.raises(InvalidPostProcessingError):
boxplot(
df=names_df,
groupby=["region"],
whisker_type=PostProcessingBoxplotWhiskerType.PERCENTILE,
metrics=["cars"],
percentiles=[90, 10],
)
with pytest.raises(InvalidPostProcessingError):
boxplot(
df=names_df,
groupby=["region"],
whisker_type=PostProcessingBoxplotWhiskerType.PERCENTILE,
metrics=["cars"],
percentiles=[10, 90, 10],
)
def test_boxplot_type_coercion():
df = names_df
df["cars"] = df["cars"].astype(str)
df = boxplot(
df=df,
groupby=["region"],
whisker_type=PostProcessingBoxplotWhiskerType.TUKEY,
metrics=["cars"],
)
columns = {column for column in df.columns}
assert columns == {
"cars__mean",
"cars__median",
"cars__q1",
"cars__q3",
"cars__max",
"cars__min",
"cars__count",
"cars__outliers",
"region",
}
assert len(df) == 4