I'm using the standard `glm`

function with step function on 100k rows and 107 variables. When I did a regular glm I got the calculation done with in a minute or two but when I added `step(glm(...))`

it runs for hours.

I tried to run it as a matrix but it is still running for about 0.5 hour and I'm not sure it will be ever done. When I ran it on 9 variables it gave me the answers in a few seconds but with 9 warnings all of them were :"Warning messages:1: glm.fit: fitted probabilities numerically 0 or 1 occurred "

I use this line of code (below), is it wrong? What should I do in order to gain better running time?

```
logit1back<-step(glm(IsChurn ~ var1 + var2+ var3+ var4+ var5+ var6+ var7+ var8+ var9, data=tdata , family='binomial'))
```

`glm`

before using`step`

might speed it up, meaning`x <- glm(...)`

, then`step(x)`

. As it is now, you're calling`glm`

for every step, which requires R to make more calculations than necessary. Notice in`example(step)`

the linear model is assigned prior to calling`step`

– Richard Scriven Mar 25 '14 at 18:08`scope`

argument in`step`

. Do you really want to consider all 107 variables? Are there not some that you can rule out as in not particularly meaningful to the problem or collinearity issues? Even though you have 100k observations, that is still fewer than 10 data points per covariate if you are using all 107 variables. Was this the first step to your approach? – rawr Mar 25 '14 at 18:38