# NumPy thinks a 2-D array is 1-D

I have a NumPy array that is constructed from a text file. I've been doing things this way for weeks and never seen this problem before.

``````print data
print data[:, 1:]
``````

outputs

``````[['1', '200', '300', '400', '500\n']
['3', '500', '400', '200', '1000\n']
['14', '900', '200', '300', '100\n'] ...,
['999142', '24', '21', '20', '12\n']]
Traceback (most recent call last):
File ...., line ..., in ....
print data[:, 1:]
IndexError:  too many indices
``````

Why is this happening and how can I fix it?

Edit: Big clue. `data.shape` is `(3313869,)` with no second value.

`data.ndim` is `1`.

`len(data[1])`, however, is 5.

Edit, I am constructing it with

``````data = [re.split(' ', line) for line in f]
f.close()
data = np.array(data)
``````

When I interject

``````f.close()
print data[0:10]
``````

It gives i.e.

`[['1', '200', '300', '400', '500\n'], ['3', .... ]]`

-
Can you provide us with simple code that we could use to reproduce this? It would make your question much more clear... –  mgilson Jun 10 at 20:11
this error would occur if your array was a 1D array, you can check that doing `array.shape` –  Saullo Castro Jun 10 at 20:14
could you ask for `data.ndim`? –  Saullo Castro Jun 10 at 20:22
See edit, it's 1. I am so confused. –  Andrew Latham Jun 10 at 20:24
.. could you print the results of `set(map(len, data))`? I suspect that what's going on is that your input data is ragged (there's a line, maybe at the end, which doesn't have the same number of elements) and so `numpy` is doing the best it can, and giving you a one-dimensional array with object dtype. –  DSM Jun 10 at 20:37
show 1 more comment

The problem happened because your code is somehow creating a `numpy.array` of objects. See this question with a similar issue. When it happens you get something like:

``````a = numpyp.array([list1, list2, list3, ... , listn], dtype=object)
``````

It is a 1D array, but when you ask to print it will call the `__str__` of each list inside, giving:

``````[[ 1, 2, 3, 4],
[ 5, 6, 7, 8]]
``````

which seems like a 2D array.

You can simulate it doing:

``````a = ['aaa' for i in range(10)]
b = numpy.empty((5),dtype=object)
b.fill(a)
``````

lets check `b`:

``````b.shape # (5,)
b.ndim  # 1
``````

but `print b` gives:

``````[['aaa', 'aaa', 'aaa', 'aaa', 'aaa', 'aaa', 'aaa', 'aaa', 'aaa', 'aaa']
['aaa', 'aaa', 'aaa', 'aaa', 'aaa', 'aaa', 'aaa', 'aaa', 'aaa', 'aaa']
['aaa', 'aaa', 'aaa', 'aaa', 'aaa', 'aaa', 'aaa', 'aaa', 'aaa', 'aaa']
['aaa', 'aaa', 'aaa', 'aaa', 'aaa', 'aaa', 'aaa', 'aaa', 'aaa', 'aaa']
['aaa', 'aaa', 'aaa', 'aaa', 'aaa', 'aaa', 'aaa', 'aaa', 'aaa', 'aaa']]
``````

Quite tricky...

-

I solved this with

``````for line in data:
if (len(line) != 5):
print len(line)
print line
``````

A few of the lines in my data had spaces at the end, which was leading to `500` and `\n` being separated into separate tokens. This snuck in because on Friday, the last time I messed with this code, I had added in a default option to the Python script that builds the input files for this script for rows that were missing a particular value, and Vim put in a space token on the line-wrap, which just happened to be on the character right before `\n`.

`[re.split(' ', line.replace('\n', '').rstrip()) for line in f]` gives the desires result.

It is a little strange, I think, that NumPy treats the array as both 1-D and 2-D (allowing me to select `data[1]` as a row) but I guess if the rows aren't of consistent length it just sees it as an array of arrays rather than a 2-D array, making a distinction between the two.

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If you are using numpy to store strings you might want to rethink what you are using numpy for. numpy was only optimized for floats and integers; you probably won't see much advantage with numpy for string manipulations. –  SethMMorton Jun 10 at 21:13