# Numpy dot() and array casting performace optimization

I wonder if it is possible somehow optimize dotproduts and array casting in this part of code in numpy, which according to profiler takes 95% of runtime of my code. (I don't want to use f2py, cython or pyOpenCl, I'm just learning how to use numpy effectively )

``````def evalSeriesInBasi(a,B):
Y   = dot(a,B[0])
dY  = dot(a,B[1])
ddY = dot(a,B[2])
return array([Y,dY,ddY])

def evalPolarForces( R, O ):
# numexpr doest seem to help it takes 3,644 vs. 1.910 with pure numpy
G    = 1.0 / (R[0]**2)                     # Gravitational force
F_O  = R[0] * O[2]     + 2 * R[1] * O[1]   # Angular Kinematic Force = Angular engine thrust
F_R  = R[0] * O[1]**2  +     R[2]
FTR  = F_R - G
FT2  = F_O**2 + FTR**2                     # Square of Total engine Trust Force ( corespons to propelant consuption for power limited variable specific impulse engine)
return array([F_O,F_R,G,FTR, FT2])

def evalTrajectoryPolar( Rt0, Ot0, Bs, Rc, Oc ):
Rt = Rt0 +  evalSeriesInBasi(Rc,Bs)
Ot = Ot0 +  evalSeriesInBasi(Oc,Bs)
Ft = evalPolarForces( Rt, Ot )
return Ot, Rt, Ft
``````

where "B" is array of shape (3,32,128) where basis functions are stored, "a" are coefficients of these basis functions and all other arrays like Y,dY,ddY, F_O,F_R,G,FTR, FT2 are values of some function at 128 sampling points

according to profiler the most time takes numpy.core.multiarray.array and numpy.core._dotblas.dot

`````` ncalls  tottime  percall  cumtime  percall filename:lineno(function)
22970    2.969    0.000    2.969    0.000 {numpy.core.multiarray.array}
46573    0.926    0.000    0.926    0.000 {numpy.core._dotblas.dot}
7656    0.714    0.000    2.027    0.000 basiset.py:61(evalPolarForces)
7656    0.224    0.000    0.273    0.000 OrbitalOptCos_numpyOpt.py:43(fitnesFunc)
7656    0.192    0.000    4.868    0.001 basiset.py:54(evalTrajectoryPolar)
116    0.141    0.001    5.352    0.046 optimize.py:536(approx_fprime)
7656    0.132    0.000    5.273    0.001 OrbitalOptCos_numpyOpt.py:63(evalFitness)
15312    0.101    0.000    2.649    0.000 basiset.py:28(evalSeriesInBasi)
``````
-

You can speedup the calculation by removing `array()` calls, here is an example:

``````import numpy as np

B = np.random.rand(3, 32, 128)
a = np.random.rand(32, 32)

def f1(a, B):
Y   = dot(a,B[0])
dY  = dot(a,B[1])
ddY = dot(a,B[2])
return array([Y,dY,ddY])

def f2(a, B):
result = np.empty((B.shape[0], a.shape[0], B.shape[-1]))
for i in xrange(B.shape[0]):
np.dot(a, B[i], result[i])
return result

r1 = f1(a, B)
r2 = f2(a, B)
print np.allclose(r1, r2)
``````

The result of `f1()` and `f2()` is the same, but the speed if different:

``````%timeit f1(a, B)
%timeit f2(a, B)
``````

Result is:

``````1000 loops, best of 3: 1.34 ms per loop
10000 loops, best of 3: 135 µs per loop
``````
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thank you it is 3x faster now when I removed array() calls, I tought that array([whatever]) creates just a view, not alocationg or copying array, while empty() alocates an array. –  Prokop Hapala May 12 '13 at 8:28
``````def f3(a, B):