99

I'm trying to graph G versus l1. The data is in the file that I loaded from an excel file. The excel file is 14x250 so there are 14 arguments, each with 250 data points.

So here is the code in question:

# format for CSV file:
header = ['l1', 'l2', 'l3', 'l4', 'l5', 'EI', 'S', 'P_right', 'P1_0', 
          'P3_0', 'w_left', 'w_right', 'G_left', 'G_right']

def loadfile(filename, skip=None):
    skip = set(skip or [])
    with open(filename) as f:
        cr = csv.reader(f, quoting=csv.QUOTE_NONNUMERIC)
        return np.array(row for i,row in enumerate(cr) if i not in skip)

outputs_l1 = [loadfile('{}.csv'.format(p)) for p in p3_arr]
col = {name: i for i, name in enumerate(header)}

for data in outputs_l1:
    xs  = data[:, col["l1"     ]]
    gl = data[:, col["G_left" ]] * 1000.0    # column 12
    gr = data[:, col["G_right"]] * 1000.0    # column 13

After running the entire program, I receive the error message:

Traceback (most recent call last):
  File "C:/Users/Chris/Desktop/Work/Python Stuff/New Stuff from Brenday 8 26 2014/CD_ssa_plot(2).py", line 115, in <module>
    xs  = data[:, col["l1"     ]]
IndexError: too many indices for array

and before I ran into that problem, I had another involving the line a few below the one the above error message refers to:

Traceback (most recent call last): File "FILE", line 119, in <module> 
gl = data[:, col["G_left" ]] * 1000.0 # column 12 
IndexError: index 12 is out of bounds for axis 1 with size 12
4
  • 2
    arrays are zero based, there is no index 12 in a 12 element array Jan 20, 2015 at 2:42
  • Have you tried putting print data after for data,color in zip(outputs_l1, colors): to see what each row of data looks like? It seems like it may not be formatted in the way you expect it to be (your belief is that it's going to be an array of 14 elements, right? looks like there are instances where there are only 12 elements)
    – zehnpaard
    Jan 20, 2015 at 2:45
  • when I type 'print data' or 'print outputs_l1' it says that those are invalid syntax. and there are 14 arguments so the last two are going to be #12 and #13, which is what I'm calling on for the graph. And where do you see any instances where there are only 12? That was my problem before and I thought I fixed that but I may have missed something
    – Chris
    Jan 20, 2015 at 3:03
  • are you using Python 3.x? in which case it should be print(data) instead. IndexError: index 12 is out of bounds for axis 1 with size 12 is explicit that there's a data row that contains only 12 elements somewhere.
    – zehnpaard
    Jan 20, 2015 at 4:06

4 Answers 4

83

I think the problem is given in the error message, although it is not very easy to spot:

IndexError: too many indices for array
xs  = data[:, col["l1"     ]]

'Too many indices' means you've given too many index values. You've given 2 values as you're expecting data to be a 2D array. Numpy is complaining because data is not 2D (it's either 1D or None).

This is a bit of a guess - I wonder if one of the filenames you pass to loadfile() points to an empty file, or a badly formatted one? If so, you might get an array returned that is either 1D, or even empty (np.array(None) does not throw an Error, so you would never know...). If you want to guard against this failure, you can insert some error checking into your loadfile function.

I highly recommend in your for loop inserting:

print(data)

This will work in Python 2.x or 3.x and might reveal the source of the issue. You might well find it is only one value of your outputs_l1 list (i.e. one file) that is giving the issue.

12

The message that you are getting is not for the default Exception of Python:

For a fresh python list, IndexError is thrown only on index not being in range (even docs say so).

>>> l = []
>>> l[1]
IndexError: list index out of range

If we try passing multiple items to list, or some other value, we get the TypeError:

>>> l[1, 2]
TypeError: list indices must be integers, not tuple

>>> l[float('NaN')]
TypeError: list indices must be integers, not float

However, here, you seem to be using matplotlib that internally uses numpy for handling arrays. On digging deeper through the codebase for numpy, we see:

static NPY_INLINE npy_intp
unpack_tuple(PyTupleObject *index, PyObject **result, npy_intp result_n)
{
    npy_intp n, i;
    n = PyTuple_GET_SIZE(index);
    if (n > result_n) {
        PyErr_SetString(PyExc_IndexError,
                        "too many indices for array");
        return -1;
    }
    for (i = 0; i < n; i++) {
        result[i] = PyTuple_GET_ITEM(index, i);
        Py_INCREF(result[i]);
    }
    return n;
}

where, the unpack method will throw an error if it the size of the index is greater than that of the results.

So, Unlike Python which raises a TypeError on incorrect Indexes, Numpy raises the IndexError because it supports multidimensional arrays.

0

This answer is 9 years too late but the error is caused by the fact that the OP creates the array using a generator expression in the loadfile definition, which returns a 0-dimension ndarray.

np.array(row for i,row in enumerate(cr) if i not in skip)    # <--- culprit

np.array([row for i,row in enumerate(cr) if i not in skip])  # <--- fix
#        ^                                               ^   # <--- create array from list

In general, IndexError: too many indices for array is saying that you tried to index a dimension that isn't there, e.g. try to index columns in a 1D ndarray, try to index 3rd dimension in a 2D ndarray etc.

# 1D ndarray: arr.ndim==1
arr = np.array([0, 1, 2])
arr[0]         # <--- OK
arr[:, 0]      # <--- IndexError: too many indices for array


# 2D ndarray: ary.ndim==2
ary = np.array([
    [1, 2],
    [3, 4]
])

ary[0]         # <--- OK
ary[:, 0]      # <--- OK
ary[:, :, 0]   # <--- IndexError: too many indices for array

On the other hand, IndexError: index 12 is out of bounds for axis 1 with size 12 is saying that while the dimensions are OK, you tried to index outside the bounds of the ndarray. Since ndarrays are 0-indexed, to index the last column, we should either use -1 or arr.shape[1]-1.

# 1D ndarray of length 3
arr = np.array([0, 1, 2])
arr[2]      # <--- OK
arr[3]      # <--- IndexError: index 3 is out of bounds for axis 0 with size 3


# 2x2 ndarray
ary = np.array([
    [1, 2],
    [3, 4]
])

ary[:, 1]   # <--- OK
ary[:, -1]  # <--- OK
ary[:, 2]   # <--- IndexError: index 2 is out of bounds for axis 1 with size 2
-2

Before transforming the data into a list, I transformed the data into a list

data = list(data) data = np.array(data)

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