# How does numpy's indexing work in this scenario

How does plot numpy's logical indexing get the datapoints from the "data" variable in the code snippet below? I understand that the first parameter is the x co-ordinate and the second parameter is the y co-ordinate. I am unsure of how it maps to the datapoints from the variable.

data = vstack((rand(150,2) + array([.5,.5]),rand(150,2)))
# assign each sample to a cluster
idx,_ = vq(data,centroids)

# some plotting using numpy's logical indexing
plot(data[idx==0,0],data[idx==0,1],'ob',
data[idx==1,0],data[idx==1,1],'or')
plot(centroids[:,0],centroids[:,1],'sg',markersize=8)
-

It's all in the shapes:

In [89]: data.shape
Out[89]: (300, 2)    # data has 300 rows and 2 columns
In [93]: idx.shape
Out[93]: (300,)      # idx is a 1D-array with 300 elements

idx == 0 is a boolean array with the same shape as idx. It is True wherever an element in idx equals 0:

In [97]: (idx==0).shape
Out[97]: (300,)

When you index data with idx==0, you get all rows of data where idx==0 is True:

In [98]: data[idx==0].shape
Out[98]: (178, 2)

When you index using a tuple, data[idx==0, 0], the first axis of data is indexed with the boolean array idx==0, and the second axis of data is indexed with 0:

In [99]: data[idx==0, 0].shape
Out[99]: (178,)

The first axis of data correspond to rows, the second axis corresponds to columns. So you get just the first column of data[idx==0]. Since the first column of data are x-values, this gives you those x-values in data where idx==0.

-