superset/tests/unit_tests/charts/test_post_processing.py

732 lines
28 KiB
Python

# Licensed to the Apache Software Foundation (ASF) under one
# or more contributor license agreements. See the NOTICE file
# distributed with this work for additional information
# regarding copyright ownership. The ASF licenses this file
# 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
# under the License.
import pandas as pd
from superset.charts.post_processing import pivot_df
def test_pivot_df_no_cols_no_rows_single_metric():
"""
Pivot table when no cols/rows and 1 metric are selected.
"""
# when no cols/rows are selected there are no groupbys in the query,
# and the data has only the metric(s)
df = pd.DataFrame.from_dict({"SUM(num)": {0: 80679663}})
assert (
df.to_markdown()
== """
| | SUM(num) |
|---:|------------:|
| 0 | 8.06797e+07 |
""".strip()
)
pivoted = pivot_df(
df,
rows=[],
columns=[],
metrics=["SUM(num)"],
aggfunc="Sum",
transpose_pivot=False,
combine_metrics=False,
show_rows_total=False,
show_columns_total=False,
apply_metrics_on_rows=False,
)
assert (
pivoted.to_markdown()
== """
| | ('SUM(num)',) |
|:-----------------|----------------:|
| ('Total (Sum)',) | 8.06797e+07 |
""".strip()
)
# tranpose_pivot and combine_metrics do nothing in this case
pivoted = pivot_df(
df,
rows=[],
columns=[],
metrics=["SUM(num)"],
aggfunc="Sum",
transpose_pivot=True,
combine_metrics=True,
show_rows_total=False,
show_columns_total=False,
apply_metrics_on_rows=False,
)
assert (
pivoted.to_markdown()
== """
| | ('SUM(num)',) |
|:-----------------|----------------:|
| ('Total (Sum)',) | 8.06797e+07 |
""".strip()
)
# apply_metrics_on_rows will pivot the table, moving the metrics
# to rows
pivoted = pivot_df(
df,
rows=[],
columns=[],
metrics=["SUM(num)"],
aggfunc="Sum",
transpose_pivot=True,
combine_metrics=True,
show_rows_total=False,
show_columns_total=False,
apply_metrics_on_rows=True,
)
assert (
pivoted.to_markdown()
== """
| | ('Total (Sum)',) |
|:--------------|-------------------:|
| ('SUM(num)',) | 8.06797e+07 |
""".strip()
)
# showing totals
pivoted = pivot_df(
df,
rows=[],
columns=[],
metrics=["SUM(num)"],
aggfunc="Sum",
transpose_pivot=True,
combine_metrics=True,
show_rows_total=True,
show_columns_total=True,
apply_metrics_on_rows=False,
)
assert (
pivoted.to_markdown()
== """
| | ('SUM(num)',) | ('Total (Sum)',) |
|:-----------------|----------------:|-------------------:|
| ('Total (Sum)',) | 8.06797e+07 | 8.06797e+07 |
""".strip()
)
def test_pivot_df_no_cols_no_rows_two_metrics():
"""
Pivot table when no cols/rows and 2 metrics are selected.
"""
# when no cols/rows are selected there are no groupbys in the query,
# and the data has only the metrics
df = pd.DataFrame.from_dict({"SUM(num)": {0: 80679663}, "MAX(num)": {0: 37296}})
assert (
df.to_markdown()
== """
| | SUM(num) | MAX(num) |
|---:|------------:|-----------:|
| 0 | 8.06797e+07 | 37296 |
""".strip()
)
pivoted = pivot_df(
df,
rows=[],
columns=[],
metrics=["SUM(num)", "MAX(num)"],
aggfunc="Sum",
transpose_pivot=False,
combine_metrics=False,
show_rows_total=False,
show_columns_total=False,
apply_metrics_on_rows=False,
)
assert (
pivoted.to_markdown()
== """
| | ('SUM(num)',) | ('MAX(num)',) |
|:-----------------|----------------:|----------------:|
| ('Total (Sum)',) | 8.06797e+07 | 37296 |
""".strip()
)
# tranpose_pivot and combine_metrics do nothing in this case
pivoted = pivot_df(
df,
rows=[],
columns=[],
metrics=["SUM(num)", "MAX(num)"],
aggfunc="Sum",
transpose_pivot=True,
combine_metrics=True,
show_rows_total=False,
show_columns_total=False,
apply_metrics_on_rows=False,
)
assert (
pivoted.to_markdown()
== """
| | ('SUM(num)',) | ('MAX(num)',) |
|:-----------------|----------------:|----------------:|
| ('Total (Sum)',) | 8.06797e+07 | 37296 |
""".strip()
)
# apply_metrics_on_rows will pivot the table, moving the metrics
# to rows
pivoted = pivot_df(
df,
rows=[],
columns=[],
metrics=["SUM(num)", "MAX(num)"],
aggfunc="Sum",
transpose_pivot=True,
combine_metrics=True,
show_rows_total=False,
show_columns_total=False,
apply_metrics_on_rows=True,
)
assert (
pivoted.to_markdown()
== """
| | ('Total (Sum)',) |
|:--------------|-------------------:|
| ('SUM(num)',) | 8.06797e+07 |
| ('MAX(num)',) | 37296 |
""".strip()
)
# when showing totals we only add a column, since adding a row
# would be redundant
pivoted = pivot_df(
df,
rows=[],
columns=[],
metrics=["SUM(num)", "MAX(num)"],
aggfunc="Sum",
transpose_pivot=True,
combine_metrics=True,
show_rows_total=True,
show_columns_total=True,
apply_metrics_on_rows=False,
)
assert (
pivoted.to_markdown()
== """
| | ('SUM(num)',) | ('MAX(num)',) | ('Total (Sum)',) |
|:-----------------|----------------:|----------------:|-------------------:|
| ('Total (Sum)',) | 8.06797e+07 | 37296 | 8.0717e+07 |
""".strip()
)
def test_pivot_df_single_row_two_metrics():
"""
Pivot table when a single column and 2 metrics are selected.
"""
df = pd.DataFrame.from_dict(
{
"gender": {0: "girl", 1: "boy"},
"SUM(num)": {0: 118065, 1: 47123},
"MAX(num)": {0: 2588, 1: 1280},
}
)
assert (
df.to_markdown()
== """
| | gender | SUM(num) | MAX(num) |
|---:|:---------|-----------:|-----------:|
| 0 | girl | 118065 | 2588 |
| 1 | boy | 47123 | 1280 |
""".strip()
)
pivoted = pivot_df(
df,
rows=["gender"],
columns=[],
metrics=["SUM(num)", "MAX(num)"],
aggfunc="Sum",
transpose_pivot=False,
combine_metrics=False,
show_rows_total=False,
show_columns_total=False,
apply_metrics_on_rows=False,
)
assert (
pivoted.to_markdown()
== """
| | ('SUM(num)',) | ('MAX(num)',) |
|:----------|----------------:|----------------:|
| ('boy',) | 47123 | 1280 |
| ('girl',) | 118065 | 2588 |
""".strip()
)
# transpose_pivot
pivoted = pivot_df(
df,
rows=["gender"],
columns=[],
metrics=["SUM(num)", "MAX(num)"],
aggfunc="Sum",
transpose_pivot=True,
combine_metrics=False,
show_rows_total=False,
show_columns_total=False,
apply_metrics_on_rows=False,
)
assert (
pivoted.to_markdown()
== """
| | ('SUM(num)', 'boy') | ('SUM(num)', 'girl') | ('MAX(num)', 'boy') | ('MAX(num)', 'girl') |
|:-----------------|----------------------:|-----------------------:|----------------------:|-----------------------:|
| ('Total (Sum)',) | 47123 | 118065 | 1280 | 2588 |
""".strip()
)
# combine_metrics does nothing in this case
pivoted = pivot_df(
df,
rows=["gender"],
columns=[],
metrics=["SUM(num)", "MAX(num)"],
aggfunc="Sum",
transpose_pivot=False,
combine_metrics=True,
show_rows_total=False,
show_columns_total=False,
apply_metrics_on_rows=False,
)
assert (
pivoted.to_markdown()
== """
| | ('SUM(num)',) | ('MAX(num)',) |
|:----------|----------------:|----------------:|
| ('boy',) | 47123 | 1280 |
| ('girl',) | 118065 | 2588 |
""".strip()
)
# show totals
pivoted = pivot_df(
df,
rows=["gender"],
columns=[],
metrics=["SUM(num)", "MAX(num)"],
aggfunc="Sum",
transpose_pivot=False,
combine_metrics=False,
show_rows_total=True,
show_columns_total=True,
apply_metrics_on_rows=False,
)
assert (
pivoted.to_markdown()
== """
| | ('SUM(num)',) | ('MAX(num)',) | ('Total (Sum)',) |
|:-----------------|----------------:|----------------:|-------------------:|
| ('boy',) | 47123 | 1280 | 48403 |
| ('girl',) | 118065 | 2588 | 120653 |
| ('Total (Sum)',) | 165188 | 3868 | 169056 |
""".strip()
)
# apply_metrics_on_rows
pivoted = pivot_df(
df,
rows=["gender"],
columns=[],
metrics=["SUM(num)", "MAX(num)"],
aggfunc="Sum",
transpose_pivot=False,
combine_metrics=False,
show_rows_total=True,
show_columns_total=True,
apply_metrics_on_rows=True,
)
assert (
pivoted.to_markdown()
== """
| | ('Total (Sum)',) |
|:-------------------------|-------------------:|
| ('SUM(num)', 'boy') | 47123 |
| ('SUM(num)', 'girl') | 118065 |
| ('SUM(num)', 'Subtotal') | 165188 |
| ('MAX(num)', 'boy') | 1280 |
| ('MAX(num)', 'girl') | 2588 |
| ('MAX(num)', 'Subtotal') | 3868 |
| ('Total (Sum)', '') | 169056 |
""".strip()
)
# apply_metrics_on_rows with combine_metrics
pivoted = pivot_df(
df,
rows=["gender"],
columns=[],
metrics=["SUM(num)", "MAX(num)"],
aggfunc="Sum",
transpose_pivot=False,
combine_metrics=True,
show_rows_total=True,
show_columns_total=True,
apply_metrics_on_rows=True,
)
assert (
pivoted.to_markdown()
== """
| | ('Total (Sum)',) |
|:---------------------|-------------------:|
| ('boy', 'SUM(num)') | 47123 |
| ('boy', 'MAX(num)') | 1280 |
| ('boy', 'Subtotal') | 48403 |
| ('girl', 'SUM(num)') | 118065 |
| ('girl', 'MAX(num)') | 2588 |
| ('girl', 'Subtotal') | 120653 |
| ('Total (Sum)', '') | 169056 |
""".strip()
)
def test_pivot_df_complex():
"""
Pivot table when a column, rows and 2 metrics are selected.
"""
df = pd.DataFrame.from_dict(
{
"state": {
0: "CA",
1: "CA",
2: "CA",
3: "FL",
4: "CA",
5: "CA",
6: "FL",
7: "FL",
8: "FL",
9: "CA",
10: "FL",
11: "FL",
},
"gender": {
0: "girl",
1: "boy",
2: "girl",
3: "girl",
4: "girl",
5: "girl",
6: "boy",
7: "girl",
8: "girl",
9: "boy",
10: "boy",
11: "girl",
},
"name": {
0: "Amy",
1: "Edward",
2: "Sophia",
3: "Amy",
4: "Cindy",
5: "Dawn",
6: "Edward",
7: "Sophia",
8: "Dawn",
9: "Tony",
10: "Tony",
11: "Cindy",
},
"SUM(num)": {
0: 45426,
1: 31290,
2: 18859,
3: 14740,
4: 14149,
5: 11403,
6: 9395,
7: 7181,
8: 5089,
9: 3765,
10: 2673,
11: 1218,
},
"MAX(num)": {
0: 2227,
1: 1280,
2: 2588,
3: 854,
4: 842,
5: 1157,
6: 389,
7: 1187,
8: 461,
9: 598,
10: 247,
11: 217,
},
}
)
assert (
df.to_markdown()
== """
| | state | gender | name | SUM(num) | MAX(num) |
|---:|:--------|:---------|:-------|-----------:|-----------:|
| 0 | CA | girl | Amy | 45426 | 2227 |
| 1 | CA | boy | Edward | 31290 | 1280 |
| 2 | CA | girl | Sophia | 18859 | 2588 |
| 3 | FL | girl | Amy | 14740 | 854 |
| 4 | CA | girl | Cindy | 14149 | 842 |
| 5 | CA | girl | Dawn | 11403 | 1157 |
| 6 | FL | boy | Edward | 9395 | 389 |
| 7 | FL | girl | Sophia | 7181 | 1187 |
| 8 | FL | girl | Dawn | 5089 | 461 |
| 9 | CA | boy | Tony | 3765 | 598 |
| 10 | FL | boy | Tony | 2673 | 247 |
| 11 | FL | girl | Cindy | 1218 | 217 |
""".strip()
)
pivoted = pivot_df(
df,
rows=["gender", "name"],
columns=["state"],
metrics=["SUM(num)", "MAX(num)"],
aggfunc="Sum",
transpose_pivot=False,
combine_metrics=False,
show_rows_total=False,
show_columns_total=False,
apply_metrics_on_rows=False,
)
assert (
pivoted.to_markdown()
== """
| | ('SUM(num)', 'CA') | ('SUM(num)', 'FL') | ('MAX(num)', 'CA') | ('MAX(num)', 'FL') |
|:-------------------|---------------------:|---------------------:|---------------------:|---------------------:|
| ('boy', 'Edward') | 31290 | 9395 | 1280 | 389 |
| ('boy', 'Tony') | 3765 | 2673 | 598 | 247 |
| ('girl', 'Amy') | 45426 | 14740 | 2227 | 854 |
| ('girl', 'Cindy') | 14149 | 1218 | 842 | 217 |
| ('girl', 'Dawn') | 11403 | 5089 | 1157 | 461 |
| ('girl', 'Sophia') | 18859 | 7181 | 2588 | 1187 |
""".strip()
)
# transpose_pivot
pivoted = pivot_df(
df,
rows=["gender", "name"],
columns=["state"],
metrics=["SUM(num)", "MAX(num)"],
aggfunc="Sum",
transpose_pivot=True,
combine_metrics=False,
show_rows_total=False,
show_columns_total=False,
apply_metrics_on_rows=False,
)
assert (
pivoted.to_markdown()
== """
| | ('SUM(num)', 'boy', 'Edward') | ('SUM(num)', 'boy', 'Tony') | ('SUM(num)', 'girl', 'Amy') | ('SUM(num)', 'girl', 'Cindy') | ('SUM(num)', 'girl', 'Dawn') | ('SUM(num)', 'girl', 'Sophia') | ('MAX(num)', 'boy', 'Edward') | ('MAX(num)', 'boy', 'Tony') | ('MAX(num)', 'girl', 'Amy') | ('MAX(num)', 'girl', 'Cindy') | ('MAX(num)', 'girl', 'Dawn') | ('MAX(num)', 'girl', 'Sophia') |
|:--------|--------------------------------:|------------------------------:|------------------------------:|--------------------------------:|-------------------------------:|---------------------------------:|--------------------------------:|------------------------------:|------------------------------:|--------------------------------:|-------------------------------:|---------------------------------:|
| ('CA',) | 31290 | 3765 | 45426 | 14149 | 11403 | 18859 | 1280 | 598 | 2227 | 842 | 1157 | 2588 |
| ('FL',) | 9395 | 2673 | 14740 | 1218 | 5089 | 7181 | 389 | 247 | 854 | 217 | 461 | 1187 |
""".strip()
)
# combine_metrics
pivoted = pivot_df(
df,
rows=["gender", "name"],
columns=["state"],
metrics=["SUM(num)", "MAX(num)"],
aggfunc="Sum",
transpose_pivot=False,
combine_metrics=True,
show_rows_total=False,
show_columns_total=False,
apply_metrics_on_rows=False,
)
assert (
pivoted.to_markdown()
== """
| | ('CA', 'SUM(num)') | ('CA', 'MAX(num)') | ('FL', 'SUM(num)') | ('FL', 'MAX(num)') |
|:-------------------|---------------------:|---------------------:|---------------------:|---------------------:|
| ('boy', 'Edward') | 31290 | 1280 | 9395 | 389 |
| ('boy', 'Tony') | 3765 | 598 | 2673 | 247 |
| ('girl', 'Amy') | 45426 | 2227 | 14740 | 854 |
| ('girl', 'Cindy') | 14149 | 842 | 1218 | 217 |
| ('girl', 'Dawn') | 11403 | 1157 | 5089 | 461 |
| ('girl', 'Sophia') | 18859 | 2588 | 7181 | 1187 |
""".strip()
)
# show totals
pivoted = pivot_df(
df,
rows=["gender", "name"],
columns=["state"],
metrics=["SUM(num)", "MAX(num)"],
aggfunc="Sum",
transpose_pivot=False,
combine_metrics=False,
show_rows_total=True,
show_columns_total=True,
apply_metrics_on_rows=False,
)
assert (
pivoted.to_markdown()
== """
| | ('SUM(num)', 'CA') | ('SUM(num)', 'FL') | ('SUM(num)', 'Subtotal') | ('MAX(num)', 'CA') | ('MAX(num)', 'FL') | ('MAX(num)', 'Subtotal') | ('Total (Sum)', '') |
|:---------------------|---------------------:|---------------------:|---------------------------:|---------------------:|---------------------:|---------------------------:|----------------------:|
| ('boy', 'Edward') | 31290 | 9395 | 40685 | 1280 | 389 | 1669 | 42354 |
| ('boy', 'Tony') | 3765 | 2673 | 6438 | 598 | 247 | 845 | 7283 |
| ('boy', 'Subtotal') | 35055 | 12068 | 47123 | 1878 | 636 | 2514 | 49637 |
| ('girl', 'Amy') | 45426 | 14740 | 60166 | 2227 | 854 | 3081 | 63247 |
| ('girl', 'Cindy') | 14149 | 1218 | 15367 | 842 | 217 | 1059 | 16426 |
| ('girl', 'Dawn') | 11403 | 5089 | 16492 | 1157 | 461 | 1618 | 18110 |
| ('girl', 'Sophia') | 18859 | 7181 | 26040 | 2588 | 1187 | 3775 | 29815 |
| ('girl', 'Subtotal') | 89837 | 28228 | 118065 | 6814 | 2719 | 9533 | 127598 |
| ('Total (Sum)', '') | 124892 | 40296 | 165188 | 8692 | 3355 | 12047 | 177235 |
""".strip()
)
# apply_metrics_on_rows
pivoted = pivot_df(
df,
rows=["gender", "name"],
columns=["state"],
metrics=["SUM(num)", "MAX(num)"],
aggfunc="Sum",
transpose_pivot=False,
combine_metrics=False,
show_rows_total=False,
show_columns_total=False,
apply_metrics_on_rows=True,
)
assert (
pivoted.to_markdown()
== """
| | ('CA',) | ('FL',) |
|:-------------------------------|----------:|----------:|
| ('SUM(num)', 'boy', 'Edward') | 31290 | 9395 |
| ('SUM(num)', 'boy', 'Tony') | 3765 | 2673 |
| ('SUM(num)', 'girl', 'Amy') | 45426 | 14740 |
| ('SUM(num)', 'girl', 'Cindy') | 14149 | 1218 |
| ('SUM(num)', 'girl', 'Dawn') | 11403 | 5089 |
| ('SUM(num)', 'girl', 'Sophia') | 18859 | 7181 |
| ('MAX(num)', 'boy', 'Edward') | 1280 | 389 |
| ('MAX(num)', 'boy', 'Tony') | 598 | 247 |
| ('MAX(num)', 'girl', 'Amy') | 2227 | 854 |
| ('MAX(num)', 'girl', 'Cindy') | 842 | 217 |
| ('MAX(num)', 'girl', 'Dawn') | 1157 | 461 |
| ('MAX(num)', 'girl', 'Sophia') | 2588 | 1187 |
""".strip()
)
# apply_metrics_on_rows with combine_metrics
pivoted = pivot_df(
df,
rows=["gender", "name"],
columns=["state"],
metrics=["SUM(num)", "MAX(num)"],
aggfunc="Sum",
transpose_pivot=False,
combine_metrics=True,
show_rows_total=False,
show_columns_total=False,
apply_metrics_on_rows=True,
)
assert (
pivoted.to_markdown()
== """
| | ('CA',) | ('FL',) |
|:-------------------------------|----------:|----------:|
| ('boy', 'Edward', 'SUM(num)') | 31290 | 9395 |
| ('boy', 'Edward', 'MAX(num)') | 1280 | 389 |
| ('boy', 'Tony', 'SUM(num)') | 3765 | 2673 |
| ('boy', 'Tony', 'MAX(num)') | 598 | 247 |
| ('girl', 'Amy', 'SUM(num)') | 45426 | 14740 |
| ('girl', 'Amy', 'MAX(num)') | 2227 | 854 |
| ('girl', 'Cindy', 'SUM(num)') | 14149 | 1218 |
| ('girl', 'Cindy', 'MAX(num)') | 842 | 217 |
| ('girl', 'Dawn', 'SUM(num)') | 11403 | 5089 |
| ('girl', 'Dawn', 'MAX(num)') | 1157 | 461 |
| ('girl', 'Sophia', 'SUM(num)') | 18859 | 7181 |
| ('girl', 'Sophia', 'MAX(num)') | 2588 | 1187 |
""".strip()
)
# everything
pivoted = pivot_df(
df,
rows=["gender", "name"],
columns=["state"],
metrics=["SUM(num)", "MAX(num)"],
aggfunc="Sum",
transpose_pivot=True,
combine_metrics=True,
show_rows_total=True,
show_columns_total=True,
apply_metrics_on_rows=True,
)
print(pivoted.to_markdown())
assert (
pivoted.to_markdown()
== """
| | ('boy', 'Edward') | ('boy', 'Tony') | ('boy', 'Subtotal') | ('girl', 'Amy') | ('girl', 'Cindy') | ('girl', 'Dawn') | ('girl', 'Sophia') | ('girl', 'Subtotal') | ('Total (Sum)', '') |
|:--------------------|--------------------:|------------------:|----------------------:|------------------:|--------------------:|-------------------:|---------------------:|-----------------------:|----------------------:|
| ('CA', 'SUM(num)') | 31290 | 3765 | 35055 | 45426 | 14149 | 11403 | 18859 | 89837 | 124892 |
| ('CA', 'MAX(num)') | 1280 | 598 | 1878 | 2227 | 842 | 1157 | 2588 | 6814 | 8692 |
| ('CA', 'Subtotal') | 32570 | 4363 | 36933 | 47653 | 14991 | 12560 | 21447 | 96651 | 133584 |
| ('FL', 'SUM(num)') | 9395 | 2673 | 12068 | 14740 | 1218 | 5089 | 7181 | 28228 | 40296 |
| ('FL', 'MAX(num)') | 389 | 247 | 636 | 854 | 217 | 461 | 1187 | 2719 | 3355 |
| ('FL', 'Subtotal') | 9784 | 2920 | 12704 | 15594 | 1435 | 5550 | 8368 | 30947 | 43651 |
| ('Total (Sum)', '') | 42354 | 7283 | 49637 | 63247 | 16426 | 18110 | 29815 | 127598 | 177235 |
""".strip()
)
# fraction
pivoted = pivot_df(
df,
rows=["gender", "name"],
columns=["state"],
metrics=["SUM(num)", "MAX(num)"],
aggfunc="Sum as Fraction of Columns",
transpose_pivot=False,
combine_metrics=False,
show_rows_total=False,
show_columns_total=True,
apply_metrics_on_rows=False,
)
assert (
pivoted.to_markdown()
== """
| | ('SUM(num)', 'CA') | ('SUM(num)', 'FL') | ('MAX(num)', 'CA') | ('MAX(num)', 'FL') |
|:-------------------------------------------|---------------------:|---------------------:|---------------------:|---------------------:|
| ('boy', 'Edward') | 0.250536 | 0.23315 | 0.147262 | 0.115946 |
| ('boy', 'Tony') | 0.030146 | 0.0663341 | 0.0687989 | 0.0736215 |
| ('boy', 'Subtotal') | 0.280683 | 0.299484 | 0.216061 | 0.189568 |
| ('girl', 'Amy') | 0.363722 | 0.365793 | 0.256213 | 0.254545 |
| ('girl', 'Cindy') | 0.11329 | 0.0302263 | 0.0968707 | 0.0646796 |
| ('girl', 'Dawn') | 0.0913029 | 0.12629 | 0.133111 | 0.137407 |
| ('girl', 'Sophia') | 0.151002 | 0.178206 | 0.297745 | 0.3538 |
| ('girl', 'Subtotal') | 0.719317 | 0.700516 | 0.783939 | 0.810432 |
| ('Total (Sum as Fraction of Columns)', '') | 1 | 1 | 1 | 1 |
""".strip()
)