I am implementing a program that uses the Python Numpy package. I am trying to modify the elements of an array so that I simply take elem[i][j] and set it to elem[i][j]/10. However, I keep getting some sort of truncation where the elements are set to 0 after the operation. Here is my code:
for word in allwords: for x in xrange(wordarrays[word].shape): for y in xrange(wordarrays[word].shape): wordarrays[word][x][y]=wordarrays[word][x][y]/10
In my code wordarrays is a dictionary from strings to arrays. When I simply print wordarrays[word][x][y]/10 truncation is not a problem and the float division proceeds as expected. I have checked and the arrays all have dtype=float64 so that shouldn't be the problem. I also tried modifying the array through the method presented here using 'nditer': http://docs.scipy.org/doc/numpy/reference/arrays.nditer.html
What is causing this truncation? Thanks for the help!
To give some more detail regarding my unusual output. Before the division, the entries of wordarray['chen'] are as follows:
[[2. 3.] [4. 1.]]
After the division by 10 (or 10.0) I get this for the same array:
[[1.01000000e-04 1.20000000e-05] [1.11001000e-01 1.00000000e-06]]
Which doesn't seem to make any sense. I recognize that the double for-loops aren't that pythonic but this was what I thought to try when iterating with np.nditer didn't work. To address some of the comments, I did try dividing by both 10 and 10.0. The outcome was the same.
Also, when I perform the same operation without replacing the entries of the array and just print the division, i.e.:
for word in allwords: for x in xrange(wordarrays[word].shape): for y in xrange(wordarrays[word].shape): print wordarrays[word][x][y]/10
I get what is expected, namely:
[[0.2 0.3] [0.4 0.1]]