I do not understand the meaning of the second line of code.

Though, with this:

```
A=np.random.random_integers(15, size=(10,10))
b=np.zeros(shape=(10))
```

you are solving the system:

```
A * x = b
```

which means that you have:

```
A[1,1] * x_1 + A[1,2] * x_2 + ... + A[1,10] * x_10 = 0
A[2,1] * x_1 + A[2,2] * x_2 + ... + A[2,10] * x_10 = 0
...
```

So that the x = zero vector is always a perfect solution = you are looking for such x that A x = 0, so x is zero. Try

```
b = np.random.random_integers(15, size=(10,1))
```

and x resulting from linalg.solve(A,b) will specify a linear combination of columns from A to sum up to the random b vector.

In how to verify the results of a linear equation system you tried numpy.svd (which is singular value decmposition, which I think you do not want) and numpy.lstsq which tries to find inexact solution that minimizes the least square distance (e.g. for overdetermined matrices).

I might not have understood what you are looking for - please clarify the line specifying what exactly are you looking for.

`A`

. This question may help. – aganders3 Oct 9 '12 at 14:55`0-vector`

is a solution and the other solutions does not appear because of rounding problems. so i tried to use the function`null(A)`

but i got an empty array`[]`

even thought I've added a row of`0`

to the array`A`

as suggested in the answer .. so i don't know what to do now – ifreak Oct 9 '12 at 15:37`A`

simply has an empty null space since it is (normally at least) a full rank matrix. Try adding`A[9,:] = 0`

then you will reduce the rank by one and get a null space with one vector in it. If you do`A[8:,:] = 0`

you get two vectors, etc. – seberg Oct 9 '12 at 16:11allthe issues in the post whilst you're at it. – Flexo♦ May 13 '13 at 15:56