5

I am trying to merge two arrays with the same number of arguments.

Input:

first = [[650001.88, 300442.2,   18.73,  0.575,  650002.094, 300441.668, 18.775],
         [650001.96, 300443.4,   18.7,   0.65,   650002.571, 300443.182, 18.745],
         [650002.95, 300442.54,  18.82,  0.473,  650003.056, 300442.085, 18.745]]

second = [[1],
          [2],
          [3]]

My expected output:

final = [[650001.88, 300442.2,   18.73,  0.575,  650002.094, 300441.668, 18.775, 1],
             [650001.96, 300443.4,   18.7,   0.65,   650002.571, 300443.182, 18.745, 2],
             [650002.95, 300442.54,  18.82,  0.473,  650003.056, 300442.085, 18.745, 3]]

To do that i create simple loop:

for i in first:
        for j in second:
            final += np.append(j, i)

I got i filling that i missing something. First of all my loop i extremely slow. Secondly my data is quite have i got more than 2 mlns rows to loop. So I tried to find faster way for example with this code:

final = [np.append(i, second[0]) for i in first] 

It working far more faster than previous loop but its appending only first value of second array. Can you help me?

10

Use np.array and then np.concatenate,

import numpy as np

first = np.array([[650001.88, 300442.2,   18.73,  0.575,  
                   650002.094, 300441.668, 18.775],
                  [650001.96, 300443.4,   18.7,   0.65,   
                   650002.571, 300443.182, 18.745],
                  [650002.95, 300442.54,  18.82,  0.473,  
                   650003.056, 300442.085, 18.745]])

second = np.array([[1],
                   [2],
                   [3]])

np.concatenate((first, second), axis=1)

Where axis=1 means that we want to concatenate horizontally.

That works for me

6

Use np.column_stack:

import numpy as np

first = [[650001.88, 300442.2,   18.73,  0.575,  650002.094, 300441.668, 18.775],
         [650001.96, 300443.4,   18.7,   0.65,   650002.571, 300443.182, 18.745],
         [650002.95, 300442.54,  18.82,  0.473,  650003.056, 300442.085, 18.745]]

second = [[1],
          [2],
          [3]]

np.column_stack([first, second])

If you need it as a list, use the method tolist:

np.column_stack([first, second]).tolist()

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