The sigmoid function is defined as
I found that using the C builtin function exp()
to calculate the value of f(x)
is slow. Is there any faster algorithm to calculate the value of f(x)
?
The sigmoid function is defined as I found that using the C builtin function 


you don't have to use the actual, exact sigmoid function in a neural network algorithm but can replace it with an approximated version that has similar properties but is faster the compute. For example, you can use the "fast sigmoid" function
Using first terms of the series expansion for exp(x) won't help too much if the arguments to f(x) are not near zero, and you have the same problem with a series expansion of the sigmoid function if the arguments are "large". An alternative is to use table lookup. That is, you precalculate the values of the sigmoid function for a given number of data points, and then do fast (linear) interpolation between them if you want. 


It's best to measure on your hardware first. Just a quick benchmark script shows, that on my machine
I expect that the results may vary depending on architecture and the compiler used, but 


To do the NN more flexible usually used some alpha rate to change the angle of graph around 0. The sigmoid function looks like:
The nearly equivalent, (but more faster function) is:
You can check the graphs here When I using abs function the network become faster 100+ times. 


This answer probably isn't relevant for most cases, but just wanted to throw out there that for CUDA computing I've found For example, done with single precision float intrinsics:



I don't think you can do better than the builtin exp() but if you want another approach, you can use series expansion. WolframAlpha can compute it for you. 


Using Eureqa to search for approximations to sigmoid I found Some of the other functions shown here are interesting, but is the power operation really that slow? I tested it and it actually did faster than addition, but that could just be a fluke. If so it should be just as fast or faster as all the others. EDIT: 


People here are mostly concerned about how fast one function is relative to another and create micro benchmark to see whether As of current theory, rectifier function and softplus
So I suggest to throw away microoptimization, and take a look at which function allows faster learning (also taking looking at various other cost function). 


Also you might use rough version of sigmoid (it differences not greater than 0.2% from original):
Optimization of RoughSigmoid function with using SSE:
Optimization of RoughSigmoid function with using AVX:


