I have a long list of xy coordinates, and would like to convert it into numpy array.

```
>>> import numpy as np
>>> xy = np.random.rand(1000000, 2).tolist()
```

The obvious way would be:

```
>>> a = np.array(xy) # Very slow...
```

However, the above code is unreasonably slow. Interestingly, to transpose the long list first, convert it into numpy array, and then transpose back would be much faster (20x on my laptop).

```
>>> def longlist2array(longlist):
... wide = [[row[c] for row in longlist] for c in range(len(longlist[0]))]
... return np.array(wide).T
>>> a = longlist2array(xy) # 20x faster!
```

Is this a bug of numpy?

EDIT:

This is a list of points (with xy coordinates) generated on-the-fly, so instead of preallocating an array and enlarging it when necessary, or maintaining two 1D lists for x and y, I think current representation is most natural.

Why is looping through 2nd index faster than 1st index, given that we are iterating through a python list in both directions?

EDIT 2:

Based on @tiago's answer and this question, I found the following code twice as fast as my original version:

```
>>> from itertools import chain
>>> def longlist2array(longlist):
... flat = np.fromiter(chain.from_iterable(longlist), np.array(longlist[0][0]).dtype, -1) # Without intermediate list:)
... return flat.reshape((len(longlist), -1))
```

`np.array`

is looping through the first index (the list index) and adding it to the array. This is why it takes longer when the first index is much larger than the second. – tiago Jul 31 '13 at 15:36