# Translate Matlab's vector assignment into Python form

I'm trying to translate some Matlab code into Python (using NumPy). I'm not very familiar with Matlab, and I've encountered a line that I'm having trouble parsing:

``````w(idx(1:p, 1), 1) = v(idx(1:p, 1), 1) - theta;
``````

I'd hazard a guess that a `p`-long head of `x` is being used as indices to select `p` entries of `w`, and that those entries in `w` are being replaced by corresponding entries in `v` (less a scalar `theta`).

Messing around in Octave, that seems like an accurate description of what it's doing, but I can't find any documentation to that effect.

In any case, what's the best way to re-write this code in Python? I've looked at the NumPy 'Tentative Tutorial' to try and find an elegant way to do it, and it looks like this might be what I'm looking for. However, I'm having trouble making it look nice, particularly with the assignment operator. Are there any more elegant or Python-idiomatic ways to do this assignment operation?

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What you're saying sounds correct. This might help you with the translation: scipy.org/NumPy_for_Matlab_Users, but I would think `w(idx(1:p, 1), 1)` becomes `w[idx[:p, 1], 1]` in python –  Dan May 6 '13 at 12:19
dont forget zero-based vs. one-based indexing –  Amro May 6 '13 at 12:53

This is basically what @Dan wrote in the comments, but accounts for zero-based indexing in python:

``````w[idx[:p, 0], 0] = v[idx[:p, 0], 0] - theta
``````

Not sure if you wanted something more elegant than that. Those zeros are required if only the first column should be modified.

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you've got to love python :p ! –  Shai May 6 '13 at 16:19

You're right about the basic behavior. A `p`-length sub-vector from the first column of an indexing matrix `idx` is being used to select elements from `v` and place them into the same locations in the matrix `w` after first adjusting their values by the scalar `theta`.

It is critical to use one-based indexing for MATLAB and zero-based indexing for `numpy`.

In MATLAB,

``````clear

% Data matrices
w = zeros(5,5)
v = diag([10,20,30,40,50]) * ones(5,5)

% Indexing matrix
idx = ceil(5*rand(5, 5))

p = 3
theta = 1

w(idx(1:p, 1), 1) = v(idx(1:p, 1), 1) - theta
``````

produces the output

``````w =

0     0     0     0     0
0     0     0     0     0
0     0     0     0     0
0     0     0     0     0
0     0     0     0     0

v =

10    10    10    10    10
20    20    20    20    20
30    30    30    30    30
40    40    40    40    40
50    50    50    50    50

idx =

3     1     2     3     4
1     1     2     1     3
4     1     2     2     2
1     1     5     1     1
1     2     4     5     4

theta =

1

p =

3

w =

9     0     0     0     0
0     0     0     0     0
29     0     0     0     0
39     0     0     0     0
0     0     0     0     0
``````

And, the equivalent Python code using `numpy`

``````import numpy as np

# Data arrays
w = np.zeros((5,5))
v = np.dot(np.diag([10, 20, 30, 40, 50]), np.ones((5,5)))
print "w = "
print w
print "v = "
print v

# Indexing array
idx = np.floor(5 * np.random.rand(5,5)).astype(int)
print "idx = "
print idx

theta = 1
p = 3

w[idx[:p, 0], 0] = v[idx[:p, 0], 0] - theta
print "w = "
print w
``````

which produces the output

``````w =
[[ 0.  0.  0.  0.  0.]
[ 0.  0.  0.  0.  0.]
[ 0.  0.  0.  0.  0.]
[ 0.  0.  0.  0.  0.]
[ 0.  0.  0.  0.  0.]]
v =
[[ 10.  10.  10.  10.  10.]
[ 20.  20.  20.  20.  20.]
[ 30.  30.  30.  30.  30.]
[ 40.  40.  40.  40.  40.]
[ 50.  50.  50.  50.  50.]]
idx =
[[0 2 2 0 3]
[1 2 1 2 4]
[2 2 4 3 4]
[0 1 1 4 4]
[0 1 0 4 3]]
w =
[[  9.   0.   0.   0.   0.]
[ 19.   0.   0.   0.   0.]
[ 29.   0.   0.   0.   0.]
[  0.   0.   0.   0.   0.]
[  0.   0.   0.   0.   0.]]
``````
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