I wanted to check the difference in speed between `cumath`

and `ElementwiseKernel`

, since this example shows that `Elementwise`

can perform faster than `cumath`

. I am testing a different operation, where I would guess that `Elementwise`

would be the faster method.

```
import pycuda.autoinit
import pycuda.driver as drv
from pycuda import gpuarray
from pycuda import cumath
from pycuda.elementwise import ElementwiseKernel
import numpy as np
start = drv.Event()
end = drv.Event()
N = 10**6
a = 2*np.ones(N,dtype=np.float64)
start.record()
np.exp(a)
end.record()
end.synchronize()
secs = start.time_till(end)*1e-3
print "Numpy",secs
a_gpu = gpuarray.to_gpu(a)
b_gpu = gpuarray.zeros_like(a_gpu)
kernel = ElementwiseKernel(
"double *a,double *b",
"b[i] = exp(a[i]);",
"kernel")
start.record() # start timing
kernel(a_gpu,b_gpu)
end.record() # end timing
end.synchronize()
secs = start.time_till(end)*1e-3
print "Kernel",secs
start.record()
cumath.exp(a_gpu)
end.record()
end.synchronize()
secs = start.time_till(end)*1e-3
print "Cumath", secs
```

The first time I run it I get:

```
Numpy 0.022
Kernel 0.143
Cumath 0.147
```

The second run in the same Python interpreter:

```
Numpy 0.021
Kernel 0.138
Cumath 0.002
```

I understand that `ElementwiseKernel`

and `cumath`

are both slow on the first run, but I don't understand why `ElementwiseKernel`

doesn't get any faster on the second run.

`Numpy 0.017, Kernel 0.091, Cumath 0.093`

. Bumping`N=10**8`

this becomes`Numpy 1.50, Kernel 0.148, Cumath 0.163`

. I don't think this is an issue any more.