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()
0;0;1.000000
0;1;2.000000
1;0;3.000000
1;1;4.000000
2;0;5.000000
2;1;6.000000
>>> file_.pos = 0
>>> b = read_ijv(file_)
>>> b
array([[ 1., 2.],
[ 3., 4.],
[ 5., 6.]])
```

`2 3\n1 2 3 4 5 6`

. – jorgeca Mar 30 '13 at 13:00`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