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Hi I need to graph the contents of a matrix where each row represents a different feature and each column is a different time point. In other words, I want to see the change in features over time and I have stacked each feature in the form of a matrix. C is the matrix

A=C.tolist() #convert matrix to list.
for i in xrange(len(A[0])):
for j in xrange(len(A[0])):

Is this right/is there a more efficient way of doing this? Thanks!

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up vote 2 down vote accepted

You can extract column i of a matrix M with M[:,i] and the number of columns in M is given by M.shape[1].

import matplotlib.pyplot as plt

T = range(M.shape[0])

for i in range(M.shape[1]):
    plt.plot(T, M[:,i])


This assumes that the rows represent equally spaced timeslices.

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Thank you so much! – newb Aug 24 '12 at 1:23
Actually, you can do it a lot easier with plt.plot(M.T) - as in the answer below. – aaren Aug 27 '12 at 10:12

From the docs:

matplotlib.pyplot.plot(*args, **kwargs):


plot(y)            # plot y using x as index array 0..N-1
plot(y, 'r+')      # ditto, but with red plusses

If x and/or y is 2-dimensional, then the corresponding columns will be plotted.

So if A has the values in columns, it is as simple as:

pylab.plot(A, 'r*')  # making all red might be confusing, '*-' might be better

If your data is in rows, then plot the transpose of it:

pylab.plot(A.T, 'r*')
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