6

I have a dataframe and an array like this:

df
x y z
1 10 1
10 20 2
20 30 3
30 40 4
40 50 5

my_array= 5 35 36 40 41 45 46 47 48

How could I iterate over the dataframe so that, rows will be kept if my_array exist between x and y . The final df would be:

x y z
1 10 1
30 40 4
40 50 5

I have tried df=df[(my_array <= df['x']) and (df['y'] <= my_array)]

But It gives value error; Lengths must match to compare.

The length my my_array is larger than number of rows. Any help?

5

Numpy broadcasting

df[((df['x'].values[:, None] <= my_array) &
    (df['y'].values[:, None] >= my_array)).any(1)]

    x   y  z
0   1  10  1
3  30  40  4
4  40  50  5
4
  • Nice answer. To note, We recommend using Series.array or Series.to_numpy(), depending on whether you need a reference to the underlying data or a NumPy array. instead of pandas.Series.values. In this case, .to_numpy() May 26 '21 at 4:26
  • 1
    @TrentonMcKinney Thanks! Old habits die hard. In future I'll try to use to_numpy as much as possible. Thanks for the suggestion! May 26 '21 at 6:27
  • It’s difficult to stay abreast of changing best practices. May 26 '21 at 6:31
  • 1
    @TrentonMcKinney Totally agree! May 26 '21 at 6:33
4

No need to iterate, we can use numpy broadcasting (which can be memory heavy for large datasets):

idx = np.where(
    (df["x"].to_numpy()[:, None] <= my_array) & 
    (df["y"].to_numpy()[:, None] >= my_array)
)[0]

df.iloc[np.unique(idx)]
    x   y  z
0   1  10  1
3  30  40  4
4  40  50  5
4

Given that my_array is sorted, you can use np.search_sorted

df[np.searchsorted(my_array, df['x']) < np.searchsorted(my_array, df['y'])]

Output:

    x   y  z
0   1  10  1
3  30  40  4
4  40  50  5

Note in the general case where my_array is not guaranteed to be sorted, you can replace it with np.uniques(my_array).

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