# numpy: help with data transfomation

• Input data are lists of 1-D numpy arrays e.g. `x[0] = [ array([1.0,1.0,1.0]), array([2.0,2.0,2.0]), ...]`
• `len(x)` is on the order of a few thousand (rows) while `len(x[n])` is a fixed number (columns), but may change from run to run (so I don't want to hard-code a number of columns).
• Function `f(x[n][col])` transforms each `array` into a single number
• Desired result is a list of transformed columns

The lists are for plotting, so they could be a numpy data structure. Here is some code to set up test data and notional transformation:

``````import numpy

# create test data set
def datagen(number):
return numpy.array([number,number,number])

x=[]
for rows in range(20):
dataline = [ datagen(n) for n in range(5)]
x.append(dataline)

#define transformation of array to single number
def f(in_array):
return in_array.sum()
``````

Desired result-- get in a numpy, pythonic sort of way:

``````[ array([0,0,0,...0]), array([3,3,3,....,3]), array([6,6,6,...,6]), ..etc]
``````

where in this case each array has 20 elements (one for each row of data) and there are 5 arrays in the list (one for each column).

Here is my current solution:

``````trans = []
for dataline in x:
trans.append([f(a) for a in dataline])

trans = numpy.array(trans)
answer = [ trans[:,col] for col in range(len(x[0])) ]
``````

Not too shabby but my head hurts and I have a feeling this can be done better. ???

In real life f(a) = `numpy.sqrt(numpy.vdot(a,a))`.

-
What does `f` look like? To vectorise a function, we need to know what the function does. –  Sven Marnach May 3 '11 at 10:43
Hi Sven, it's the magnitude of the vector (post edited). –  Pete May 3 '11 at 12:16
Do you really need to use lists of numpy arrays? If you were just using a 3D array to begin with this would be a one-liner. (`ndarray.sum` can easily operate along a single axis.) –  Joe Kington May 5 '11 at 1:40
I'll give it a try, Joe, thanks. My lists of numpy arrays originate from low-dimensional thinking. :o –  Pete May 5 '11 at 3:43
``````numpy.tile(numpy.arange(1,12).reshape(11,1),20)
Can you rephrase in terms of `x` and `f()`? –  Pete May 2 '11 at 18:42