TODO 11 Using the clean_df split our columns into features and labels. Index/slice our label 'area' and store the output into the variable y. Index/slice all other features EXCEPT 'area' into the variable X. To do so you can use the Pandas DataFrame drop() method or slicing with iloc, loc or [ ]. # TODO 11.1 y = display(y) todo_check([ (y.shape == (517,), 'y does not have the correct shape of (517,)'), (np.all(np.isclose(y.values[-5:], np.array([2.00687085, 4.01259206, 2.49815188, 0. , 0. ]),rtol=.01)),'y has the incorrect values'), ]) # TODO 11.2 X = display(X) todo_check([ (X.shape == (517, 29), 'X does not have the correct shape of (517, 29)! Make sure the `area` column is not included!'), (np.all(np.isclose(X.values[-5:, -4], np.array([27.8, 21.9, 21.2, 25.6, 11.8]),rtol=.01)),'X has the incorrect values'), ])
TODO 11
Using the clean_df split our columns into features and labels.
- Index/slice our label 'area' and store the output into the variable y.
- Index/slice all other features EXCEPT 'area' into the variable X. To do so you can use the Pandas DataFrame drop() method or slicing with iloc, loc or [ ].
# TODO 11.1
y =
display(y)
todo_check([
(y.shape == (517,), 'y does not have the correct shape of (517,)'),
(np.all(np.isclose(y.values[-5:], np.array([2.00687085, 4.01259206, 2.49815188, 0. , 0. ]),rtol=.01)),'y has the incorrect values'),
])
# TODO 11.2
X =
display(X)
todo_check([
(X.shape == (517, 29), 'X does not have the correct shape of (517, 29)! Make sure the `area` column is not included!'),
(np.all(np.isclose(X.values[-5:, -4], np.array([27.8, 21.9, 21.2, 25.6, 11.8]),rtol=.01)),'X has the incorrect values'),
])

In this task, the goal is to split the clean_df
DataFrame into two separate variables y
and X
:
y
is the label data, which is the "area" column of theclean_df
DataFrame.X
is the feature data, which is all the columns ofclean_df
except the "area" column.
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