# Numpy: is it possible to use numpy and ndarray to replace for a loop in this code snippet?

I am looking for a smarter and better solution.

I want to apply different scaling factors to a number field based on the label content. Hopefully the following code can illustrate what I am trying to achieve:

``````PS = [('A', 'LABEL1', 20),
('B', 'LABEL2', 15),
('C', 'LABEL3', 120),
('D', 'LABEL1', 3),]

FACTOR = [('LABEL1', 0.1), ('LABEL2', 0.5), ('LABEL3', 10)]

d_factor = dict(FACTOR)

for p in PS:
newp = (p[0], p[1], p[2]*d_factor[p[1]])
print newp
``````

It is a very trivial operation, but I need to perform it on a dataset of at least one million rows.

So, of course, the faster the better.

The factors will be known in advance and they will be no more than 20 to 30 in numbers.

1. Is there any matrix or linalg trick we can use?

2. Can ndarray accepts a text value in a cell?

-

If you want to mix data types you are going to want structured arrays.

If you are going to want the index of matching values in a lookup array you want `searchsorted`

``````>>> import numpy as np
>>> PS = np.array([
('A', 'LABEL1', 20),
('B', 'LABEL2', 15),
('C', 'LABEL3', 120),
('D', 'LABEL1', 3),], dtype=('a1,a6,i4'))
>>> FACTOR = np.array([
('LABEL1', 0.1),
('LABEL2', 0.5),
('LABEL3', 10)],dtype=('a6,f4'))
``````

``````>>> PS
array([('A', 'LABEL1', 20), ('B', 'LABEL2', 15), ('C', 'LABEL3', 120),
('D', 'LABEL1', 3)],
dtype=[('f0', '|S1'), ('f1', '|S6'), ('f2', '<i4')])
>>> FACTOR
array([('LABEL1', 0.10000000149011612), ('LABEL2', 0.5), ('LABEL3', 10.0)],
dtype=[('f0', '|S6'), ('f1', '<f4')])
``````

And you can access individual fields like this (or you can give them names; see the docs):

``````>>> FACTOR['f0']
array(['LABEL1', 'LABEL2', 'LABEL3'],
dtype='|S6')
``````

How to perform the lookup of FACTOR on PS (FACTOR must be sorted):

``````>>> idx = np.searchsorted(FACTOR['f0'], PS['f1'])
>>> idx
array([0, 1, 2, 0])
>>> FACTOR['f1'][idx]
array([  0.1,   0.5,  10. ,   0.1], dtype=float32)
``````

Now simply create a new array and multiply:

``````>>> newp = PS.copy()
>>> newp['f2'] *= FACTOR['f1'][idx]
>>> newp
array([('A', 'LABEL1', 2), ('B', 'LABEL2', 7), ('C', 'LABEL3', 1200),
('D', 'LABEL1', 0)],
dtype=[('f0', '|S1'), ('f1', '|S6'), ('f2', '<i4')])
``````
-

If you compare two numpy arrays, you get the corresponding indexes. You can use those indexes to do collective operations. This probably isn't the fastest modification, but it is simple and clear. If PS needs to have the structure you show, you can use custom dtype and have a Nx3 array.

``````import numpy as np

col1 = np.array(['a', 'b', 'c', 'd'])
col2 = np.array(['1', '2', '3', '1'])
col3 = np.array([20., 15., 120., 3.])

factors = {'1': 0.1, '2': 0.5, '3': 10, }

for label, fac in  factors.iteritems():
col3[col2==label] *= fac

print col3
``````
-

I don't think numpy can help you for that. BTW, it is `ndarray`, not `nparray`...

Maybe you could do it with a generator. See http://www.dabeaz.com/generators/index.html

-
Thanks for pointing out the wrong array name. Fixed the title and content – Anthony Kong Jul 20 '11 at 5:25