I am quite confused by `dtype`

when creating numpy array. I am creating them from a list of floats. First let me note that is not an issue of printing, becuase I already did: `np.set_printoptions(precision=18)`

.

This is a part of my list:

```
In [37]: boundary
Out[37]:
[['3366307.654296875', '5814192.595703125'],
['3366372.2244873046875', '5814350.752685546875'],
['3366593.37969970703125', '5814844.73492431640625'],
['3367585.4779052734375', '5814429.293701171875'],
['3367680.55389404296875', '5814346.618896484375'],
....
[ 3366307.654296875 , 5814192.595703125 ]]
```

Then I convert it to a numpy array:

```
In [43]: boundary2=np.asarray(boundary, dtype=float)
In [44]: boundary2
Out[44]:
array([[ 3366307.654296875 , 5814192.595703125 ],
[ 3366372.2244873046875 , 5814350.752685546875 ],
[ 3366593.37969970703125, 5814844.73492431640625],
....
[ 3366307.654296875 , 5814192.595703125 ]])
# the full number of significant digits is preserved.
# this also works with:
In [45]: boundary2=np.array(boundary, dtype=float)
In [46]: boundary2
Out[46]:
array([[ 3366307.654296875 , 5814192.595703125 ],
[ 3366372.2244873046875 , 5814350.752685546875 ],
[ 3366593.37969970703125, 5814844.73492431640625],
...
[ 3366307.654296875 , 5814192.595703125 ]])
# This also works with dtype=np.float
In [56]: boundary3=np.array(boundary, dtype=np.float)
In [57]: boundary3
Out[57]:
array([[ 3366307.654296875 , 5814192.595703125 ],
[ 3366372.2244873046875 , 5814350.752685546875 ],
[ 3366593.37969970703125, 5814844.73492431640625],
....
[ 3366307.654296875 , 5814192.595703125 ]])
```

Here is why I am confused, if I used `dtype=np.float32`

it **seems** like I loosing significant digits:

```
In [58]: boundary4=np.array(boundary, dtype=np.float32)
In [59]: boundary4
Out[59]:
array([[ 3366307.75, 5814192.5 ],
[ 3366372.25, 5814351. ],
[ 3366593.5 , 5814844.5 ],
[ 3367585.5 , 5814429.5 ],
...
[ 3366307.75, 5814192.5 ]], dtype=float32)
```

The reason I say **it seems** is because apparently the arrays are the same. I can't see the data directly, but checking with `np.allclose`

returns True:

```
In [65]: np.allclose(boundary2, boundary4)
Out[65]: True
```

So, if you read so far, I hope you see why I am confused, and maybe there someone who can answer the following 2 questions:

- Why is
`dtype=float32`

"hiding" my data ? - Should I be concerned about it or I can safely continue using
`dtype=float`

?

`float`

means 64-bit float, while`float32`

only has half of that precision? – Fred Foo Jun 8 '12 at 15:01