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I would like to read a file into a numpy matrix. In this file each row has the structure "row;col;value", so a matrix like

m = numpy.matrix([[1,2,3],[4,5,6]])

would be in a file that starts with the following lines:


I have found no built in way of loading and saving such files in Numpy and doing that manually might be very slow. Which way would you suggest?

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Do it "manually" (it is really simple) and don't worry about it unless it ever becomes a bottleneck. I just tried that and it's not annoyingly slow for arrays below 1000x1000. If you're storing so much redundant information I guess your matrices are small. BTW, is it "row;col;val" or "col;row;val" as in the example? –  jorgeca Mar 30 '13 at 12:28
Yes, it is row;col;val. This format is just one of many I need to load. We used it at work sometimes and I thought being able to handle it as well for this hobby project might be good. Is it that uncommon to store matrices in such a fashion? –  AlexanderF Mar 30 '13 at 12:36
I hadn't seen it, at least not for dense matrices. You can get the same information storing the matrix shape in the first line and then all values in a convenient order, like 2 3\n1 2 3 4 5 6. –  jorgeca Mar 30 '13 at 13:00
I understand that it makes not much sense for dense matrices, but at least scipy supports sparse matrices and should support the format. Anyways, thanks for your suggestions! –  AlexanderF Mar 30 '13 at 13:07
scipy can read a couple of sparse matrix formats (see scipy.io) but not your format, which is essentially the one "being phased out" in the Matrix Market because it's not very space efficient. Feel free to answer your question when possible! –  jorgeca Mar 30 '13 at 13:29

2 Answers 2

up vote 1 down vote accepted

You can build some simple functions to do these conversions:

def to_ijv(a):
    rows, cols = a.shape
    ijv = np.empty((a.size,), dtype=[('i', np.intp),
                                     ('j', np.intp),
                                     ('v', a.dtype)])
    ijv['i'] = np.repeat(np.arange(rows), cols)
    ijv['j'] = np.tile(np.arange(cols), rows)
    ijv['v'] = a.ravel()
    return ijv

def from_ijv(ijv):
    rows, cols = np.max(ijv['i']) + 1, np.max(ijv['j']) + 1
    a = np.empty((rows, cols), dtype=ijv['v'].dtype)
    a[ijv['i'], ijv['j']] = ijv['v']
    return a

If your matrices are large, you can use the built-in loadtxt and savetxt to read and write to disk:

def save_ijv(file_, a):
    ijv = to_ijv(a)
    np.savetxt(file_, ijv, delimiter=';', fmt=('%d', '%d', '%f'))

def read_ijv(file_):
    ijv = np.loadtxt(file_, delimiter=';',
                     dtype=[('i', np.intp),('j', np.intp),
                            ('v', np.float)])
    return from_ijv(ijv)

These functions have a liking for floating point numbers, so you will have to explicitly edit the format if you want e.g. integers. Other than that it works nicely:

>>> a = np.arange(1, 7).reshape(3, 2)
>>> a
array([[1, 2],
       [3, 4],
       [5, 6]])
>>> to_ijv(a)
array([(0L, 0L, 1), (0L, 1L, 2), (1L, 0L, 3), (1L, 1L, 4), (2L, 0L, 5),
       (2L, 1L, 6)], 
      dtype=[('i', '<i8'), ('j', '<i8'), ('v', '<i4')])
>>> import StringIO as sio
>>> file_ = sio.StringIO()
>>> save_ijv(file_, a)
>>> print file_.getvalue()

>>> file_.pos = 0
>>> b = read_ijv(file_)
>>> b
array([[ 1.,  2.],
       [ 3.,  4.],
       [ 5.,  6.]])
share|improve this answer

There is no built-in way. As pointed out in the comments it's often much faster to save the shape and then a flat 1D version of the matrix. But doing it manually is not a tremendous bottleneck unless your matrix is huge. There are many ways to do it, here's an example with numpy.nditer:

m = np.matrix([[1,2,3],[4,5,6]])
f = open('output.txt', 'w')
it = np.nditer(m, flags=['multi_index'])
while not it.finished:
    f.write('%i;%i;%i\n' % (it.multi_index[0], it.multi_index[1], it[0]))

This would give:

share|improve this answer
Perfect, thank you. I will use this solution for saving the matrix. –  AlexanderF Mar 30 '13 at 16:19

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