# how to call python scipy quad with array inputs

I am using nested scipy.integrate.quad calls to integrate a 2 dimensional integrand. The integrand is made of numpy functions - so it is much more efficient to pass it an array of inputs - than to loop through the inputs and call it once for each one - it is ~2 orders of magnitude faster because of numpy's arrays.

However.... if I want to integrate my integrand over only one dimension - but with an array of inputs over the other dimension things fall down - it seems like the 'scipy' quadpack package isn't able to do whatever it is that numpy does to handle arrayed inputs. Has anyone else seen this - and or found a way of fixing it - or am i misunderstanding it. The error i get from quad is :

``````Traceback (most recent call last):
fnIntegrate_x(0, 1, NCALLS_SET, True)
I = Integrate_x(yarray)
quadpack.error: Supplied function does not return a valid float.
``````

I have put a cartoon version of what i'm trying to do below - what i'm actually doing has a more complicated integrand but this is the gyst.

The meat is at the top - the bottom is doing benchmarking to show my point.

``````import numpy as np
import time

def Integrand(x, y):
'''
Integrand
'''
return np.sin(x)*np.sin( y )

def Integrate_x(y):
'''
Integrate over x given (y)
'''

def fnIntegrate_x(ystart, yend, nsteps, ArrayInput = False):
'''

'''

yarray = np.arange(ystart,yend, (yend - ystart)/float(nsteps))
I = np.zeros(nsteps)
if ArrayInput :
I = Integrate_x(yarray)
else :
for i,y in enumerate(yarray) :

I[i] = Integrate_x(y)

return y, I

NCALLS_SET = 1000
NSETS = 10

SETS_t = np.zeros(NSETS)

for i in np.arange(NSETS) :

XInputs = np.random.rand(NCALLS_SET, 2)

t0 = time.time()
for x in XInputs :
Integrand(x[0], x[1])
t1 = time.time()
SETS_t[i] = (t1 - t0)/NCALLS_SET

print "Benchmarking Integrand - Single Values:"
print "NCALLS_SET: ", NCALLS_SET
print "NSETS: ", NSETS
print "TimePerCall(s): ", np.mean(SETS_t) , np.std(SETS_t)/ np.sqrt(SETS_t.size)
print "TotalTime: ",np.sum(SETS_t) * NCALLS_SET
'''
Benchmarking Integrand - Single Values:
NCALLS_SET:  1000
NSETS:  10
TimePerCall(s):  1.23999834061e-05 4.06987868647e-06
'''

NCALLS_SET = 1000
NSETS = 10

SETS_t = np.zeros(NSETS)

for i in np.arange(NSETS) :

XInputs = np.random.rand(NCALLS_SET, 2)

t0 = time.time()
Integrand(XInputs[:,0], XInputs[:,1])
t1 = time.time()
SETS_t[i] = (t1 - t0)/NCALLS_SET

print "Benchmarking Integrand - Array Values:"
print "NCALLS_SET: ", NCALLS_SET
print "NSETS: ", NSETS
print "TimePerCall(s): ", np.mean(SETS_t) , np.std(SETS_t)/ np.sqrt(SETS_t.size)
print "TotalTime: ",np.sum(SETS_t) * NCALLS_SET
'''
Benchmarking Integrand - Array Values:
NCALLS_SET:  1000
NSETS:  10
TimePerCall(s):  2.00009346008e-07 1.26497018465e-07
'''

NCALLS_SET = 1000
NSETS = 100

SETS_t = np.zeros(NSETS)

for i in np.arange(NSETS) :

t0 = time.time()
fnIntegrate_x(0, 1, NCALLS_SET, False)
t1 = time.time()
SETS_t[i] = (t1 - t0)/NCALLS_SET

print "Benchmarking fnIntegrate_x - Single Values:"
print "NCALLS_SET: ", NCALLS_SET
print "NSETS: ", NSETS
print "TimePerCall(s): ", np.mean(SETS_t) , np.std(SETS_t)/ np.sqrt(SETS_t.size)
print "TotalTime: ",np.sum(SETS_t) * NCALLS_SET
'''
NCALLS_SET:  1000
NSETS:  100
TimePerCall(s):  0.000165750000477 8.61204306241e-07
TotalTime:  16.5750000477
'''

NCALLS_SET = 1000
NSETS = 100

SETS_t = np.zeros(NSETS)

for i in np.arange(NSETS) :

t0 = time.time()
fnIntegrate_x(0, 1, NCALLS_SET, True)
t1 = time.time()
SETS_t[i] = (t1 - t0)/NCALLS_SET

print "Benchmarking fnIntegrate_x - Array Values:"
print "NCALLS_SET: ", NCALLS_SET
print "NSETS: ", NSETS
print "TimePerCall(s): ", np.mean(SETS_t) , np.std(SETS_t)/ np.sqrt(SETS_t.size)

'''
****  Doesn't  work!!!! *****
Traceback (most recent call last):
fnIntegrate_x(0, 1, NCALLS_SET, True)
I = Integrate_x(yarray)
quadpack.error: Supplied function does not return a valid float.

'''
``````
-

It is possible through numpy.vectorize function. I had this problem for a long time and then came up to this vectorize function.

you can use it like this:

vectorized_function = numpy.vectorize(your_function)

output = vectorized_function(your_array_input)

-
Cool, Will try this at some point - its been a while since I looked at this code - but probably will be useful in the future. – JPH Jul 8 at 19:09

Afraid I'm answering my own question with a negative here. I don't think it is possible. Seems like quad is some sort of port of a library written in something else - as such it is the library on the inside that defines how things are done - so it is probably not possible to do what i wanted without redesigning the library itself.

for other people with timing issues on multiple D integration, I found the best way was using a dedicated integration library. I found that 'cuba' seemed to have some pretty efficient multi D integration routines.

http://www.feynarts.de/cuba/

These routines are written in c so i ended up using SWIG to talk to them - and eventually also for efficiency re-wrote my integrand in c - which sped things up loads....

-