# create intersection from two or more 2d numpy arrays based on common value in one column

I have 3 numpy recarrays with following structure. The first column is some position (Integer) and the second column is a score (Float).

Input:

``````a = [[1, 5.41],
[2, 5.42],
[3, 12.32],
dtype=[('position', '<i4'), ('score', '<f4')])
]

b = [[3, 8.41],
[6, 7.42],
[4, 6.32],
dtype=[('position', '<i4'), ('score', '<f4')])
]

c = [[3, 7.41],
[7, 6.42],
[1, 5.32],
dtype=[('position', '<i4'), ('score', '<f4')])
]
``````

All 3 arrays contain the same amount of elements.
I am looking for an efficient way to combine these three 2d arrays into one array based on the position column.

The output arary for the example above should look like this:

Output:

``````output = [[3, 12.32, 8.41, 7.41],
dtype=[('position', '<i4'), ('score1', '<f4'),('score2', '<f4'),('score3', '<f4')])]
``````

Only the row with position 3 is in the output array because this position appears in all 3 input arrays.

Update: My naive approach would be following steps:

1. create vector of the first columns of my 3 input arrays.
2. use intersect1D to get the intersection of these 3 vectors.
3. somehow retrieve indexes for the vector for all 3 input arrays.
4. create new array with filtered rows from the 3 input arrays.

Update2: Each position value can be in one, two or all three input arrays. In my output array I only want to include rows for position values which appear in all 3 input arrays.

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what if it results in positions having different numbers of values, so the array would be mis-shaped? –  jterrace Jan 23 '12 at 17:09
I am not sure If I understand. I can guarantee that the 3 input arrays always have the same shape/structure (N,1) and in my case I always have 3 input arrays. The output array should be of shape (X,4) –  Ümit Jan 23 '12 at 17:18
So the arrays either ALL contain a value, or NONE contain a value? i.e. you won't get 2/3 containing a value? Also, could you edit the question to create the arrays, rather than showing the repr? –  jterrace Jan 23 '12 at 17:22
no it can happen that only one or two contain the position value. However in the output array I only want to include rows where I have position values in all 3 input arrays. I updated the question to make it clearer –  Ümit Jan 23 '12 at 17:27

Here is one approach, I believe it should be reasonably fast. I think the first thing you want to do is count the number occurrences for each position. This function will handle that:

``````def count_positions(positions):
positions = np.sort(positions)
diff = np.ones(len(positions), 'bool')
diff[:-1] = positions[1:] != positions[:-1]
count = diff.nonzero()[0]
count[1:] = count[1:] - count[:-1]
count[0] += 1
uniqPositions = positions[diff]
return uniqPositions, count
``````

Now using the function form above you want to take only the positions that occur 3 times:

``````positions = np.concatenate((a['position'], b['position'], c['position']))
uinqPos, count = count_positions(positions)
uinqPos = uinqPos[count == 3]
``````

We will be using search sorted so we sort a b and c:

``````a.sort(order='position')
b.sort(order='position')
c.sort(order='position')
``````

Now we can user search sorted to find where in each array to find each of our uniqPos:

``````new_array = np.empty((len(uinqPos), 4))
new_array[:, 0] = uinqPos
index = a['position'].searchsorted(uinqPos)
new_array[:, 1] = a['score'][index]
index = b['position'].searchsorted(uinqPos)
new_array[:, 2] = b['score'][index]
index = c['position'].searchsorted(uinqPos)
new_array[:, 3] = c['score'][index]
``````

There might be a more elegant solution using dictionaries, but I thought of this one first so I'll leave that to someone else.

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thanks for the code it works. –  Ümit Jan 24 '12 at 17:29