# negative function in python

I have a function defined that calculates the minimum of a function like x^2. I want to define a function that would calculate the maximum of a function by calculating the minimum of a similar function by multiplying through by negative one.

``````def myf(g):
return -(g+1.3)**2+5
def maximize(f,low,high,tol):
return minimize(-1*f,low,high,tol)
``````

Is there a way to do this? When I try what I have I get the following error:

``````TypeError: unsupported operand type(s) for *: 'int' and 'function'
``````

minimize is defined as such:

``````def minimize(f,low,high, tol):
if low>high:
c=low; a=high
a=float(a); c=float(c);
else:
a=float(low); c=float(high);
b=a+(c-a)*.618033
fa=f(a); fc=f(c)
fb=f(b);
if fb>fa or fb>fc: return maximize(f,low,high,tol)
while abs(a-c)>tol:
d=a+(c-b);
fd=f(d);
if d<b:
if fb<fd:
a=d; fa=fd;
else:
c=b; b=d
fc=fb; fb=fd
else:
if fd<fb:
a=b; fa=fb;
b=d; fb=fd
else:
c=d; fc=fd
return (a+c)/2.
``````

Looking for a python code only solution.

-

You can't multiply a function with a number. Instead, construct a new function that uses the old one and multiplies the result (and not the function itself) with a number:

``````def maximize(f,low,high,tol):
return minimize(lambda x: -f(x),low,high,tol)
``````
-
Thank you, this was what I was looking for. –  user1320904 Apr 9 '12 at 3:39
@user1320904 probably best to accept this answer then –  Riaz Rizvi Apr 9 '12 at 7:49

There are several ways to do this. The most straightforward is to "wrap" your function into another function. You can use lambda: `new_f = lambda x: -f(x)`. In case you are not familiar with lambda's, this is a shortcut for

``````def new_f(x):
return -f(x)
``````
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Thanks, I like the explanation of lambda's. –  user1320904 Apr 9 '12 at 3:39

Maybe you should be using `scipy.optimize`?

http://docs.scipy.org/doc/scipy/reference/tutorial/optimize.html

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I would use that however it is in a coding class and we have to build it on our own using methods described in class. –  user1320904 Apr 9 '12 at 3:34