It is a matter of numpy vs lists and 1d vs 2d dimensions:

`np.array([1,2,3])`

is a 1-dimensional ndarray of 3 elements : `type(np.array([1,2,3]))`

returns `<class 'numpy.ndarray'>`

and `np.array([1,2,3]).shape`

returns `(3,)`

`np.array([[1,2,3]])`

is a 2-dimensional ndarray with 1 line and 3 columns : `type`

returns `<class 'numpy.ndarray'>`

and `shape`

returns `(1,3)`

`[1,2,3]`

is a 1-dimensional list with 3 elements : `type([1,2,3])`

returns `<class 'list'>`

and `len([1,2,3])`

returns `3`

`[[1,2,3]]`

is a 2-dimensional list with 1 line and 3 colums : `type`

returns `<class 'list'>`

, `len`

returns `1`

and `len([[1,2,3]][0])`

returns `3`

. Note that `[[1,2,3]][0] = [1,2,3]`

, so the first element of this 2d list is a 1d list.

You must have noted that there is no `shape`

attribute for lists. Lists are basic python objects, and though they have many purposes sometimes you will need to use `ndarray`

, especially is you need to use specific `numpy`

functions. Yet do not change all your lists for `ndarray`

as some operations are way more handy with lists. In all, use `ndarray`

when necessary, and `list`

otherwise.

As for the dimensions, it depends on what you need, but if you do not need a 2-dimensional stuff just go ahead with the 1-dimensional.

`[1,2,3]`

and`[[1,2,3]]`

are not arrays, they are lists – juanpa.arrivillaga Sep 17 at 20:08`np.array`

makes an array from a list.`.tolist()`

does the reverse.`reshape`

is one way of changing dimensions of an array. Also learn the respective methods. Lists have a limited, but very useful set of methods. Arrays never replace lists (and/or tuples). – hpaulj Sep 17 at 22:49