I am new to R and am trying to calculate the bootstrapped standard deviation (sd) and associated standard error within a 30 observation rolling window. The function below performs the rolling window appropriately if I just want sd. But when I add the bootstrap function using the boot package I get the error specified below. I gather that I am trying to store bootstrap results in a vector that isn't the correct size. Does anyone have any advice on how to store just the bootstrapped sd and associated stderror for each window in rows of a new matrix? The goal is to then plot the sd and associated 95% confidence intervals for each window along the timeseries. Thanks in advance for any help.

```
> head(data.srs)
LOGFISH
1 0.8274083
2 1.0853433
3 0.8049845
4 0.8912097
5 1.3514569
6 0.8694499
###Function to apply rolling window
rollWin <- function(timeSeries, windowLength)
{
data<-timeSeries
nOut <- length(data[, 1]) - windowLength + 1
out <- numeric(nOut)
if (length(data[,1]) >= windowLength)
{
for (i in 1:nOut)
{
sd.fun <- function(data,d)sd(data[d], na.rm = TRUE)
out[i] <- boot(data[i:(i + windowLength - 1), ], sd.fun, R=1000)
}
}
return (list(result=out))
}
###run rolling window function. ex. rollWin(data, windowlength)
a.temp<-rollWin(data.srs,30)
> warnings()
Warning messages:
1: In out[i] <- boot(data[i:(i + windowLength - 1), ], sd.fun, ... :
number of items to replace is not a multiple of replacement length
```