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I have small problem but I can't just find an easy answer.I feel stupid for asking it.

How can i multiply a scalar with a numpy.ndarray?

import fileinput,sys,re,csv,scipy,os,numpy,pylab
from collections import defaultdict
from matplotlib.pyplot import *
from StringIO import StringIO
import numpy as num
a = open("testt.txt", "r")
b=[ raw.strip().split() for raw in a]
t1 = data[:,0]
s = data[:,9]
pylab.plot(t1, s)
pylab.xlabel('time (ms)')
pylab.ylabel('Zone height (mm)')

The error is in the line t=(1/1000)*t1 which gives me the error: TypeError: unsupported operand type(s) for *: 'int' and 'numpy.ndarray'. The text file uu.txt is an 60*60 matrix with an header as the first line.I can post it if its necessary.


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can you print t1 just before the multiplication pls? –  gokcehan Oct 2 '12 at 13:41
I put print t1 and this is the output : [ 1.09000000e+02 2.19000000e+02 3.28000000e+02 ..., 4.95031000e+05 4.95141000e+05 4.95250000e+05] –  Paulinchen2 Oct 2 '12 at 13:44

1 Answer 1

up vote 2 down vote accepted

It's a tad surprising. If data is a ndarray, then t1=data[:,0] is a ndarray too and you shouldn't have any problem multiplying it by an int.


  • You could check the type of t1 as well as its .shape.
  • You can force t1 to be a ndarray just in case: t1=np.asarray(data[:,0])
  • I'm pretty sure you don't want to calculate (1/1000) but (1./1000) instead: (1/1000) is 0 by virtue of integer division...
share|improve this answer
(1./1000) dividing through this worked.I still dont understand the inital error. Why is 1/1000 too small? I tried t1=np.asarray(data[:,0]) but it was the same error. –  Paulinchen2 Oct 2 '12 at 13:47
My theory: the ndarray wound up with the wrong dtype (e.g. str). For example, 2*array([2],dtype=str) gives TypeError: unsupported operand type(s) for *: 'int' and 'numpy.ndarray', an error which would be a lot more informative if it included the dtype.. –  DSM Oct 2 '12 at 14:31
As an aside, from __future__ import division fixes the integer division problem too (1/2 == 0.5). This is the default behaviour in Python 3. –  Benjamin Hodgson Oct 2 '12 at 14:47

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