# a faster way of running sapply in a for loop

I'm trying to find a faster way to run a function, which is looking for the median value for every given day in a time period. Is there a faster way than running Sapply in a for loop?

``````for(z in unique(as.factor(df\$group))){
all[[z]]<- sapply(period, function(x) median(df[x == df\$date & df\$group==z, 'y']))
}
``````

Sample data:

``````date<-as.Date("2011-11-01") +
runif( 1000,
max=as.integer(
as.Date( "2012-12-31") -
as.Date( "2011-11-01")))
period<-as.Date(min(df\$date):max(df\$date), origin = "1970-01-01")
df <- data.frame(date=date, y = rnorm(1000), group=factor(rep(letters[1:4], each=250)))
``````
-

Here is a solution using base R function `tapply`

``````tapply(df\$y, df\$date, median)
``````

Update. Judging by your comment above, you need one column for each group? That's also a one-liner:

``````tapply(df\$y, list(df\$date, df\$group), median)
``````
-
Here is the potential source of your confusion. First, let's make my example reproducible - insert `set.seed(1)` at the beginning of OP's code. Then, please compare `length(unique(df\$date))` (gives 1000) with `length(unique(format(df\$date, "%Y/%m/%d")))` (gives 391). Do you see why? For some reason, unique doesn't work well with Date types. – Victor K. Jan 29 '13 at 1:45
Yes. It's actually quite confusing that Date object may store two different dates that have identical print representation, but are not identical: after `x <- as.Date(c(1.1, 1.0), origin = "1970-01-01")`, `x[1] == x[2]` returns `FALSE`. – Victor K. Jan 29 '13 at 1:55
BTW, the reason why `tapply` worked correctly is because it converts its second argument to factor, which truncates decimal parts of dates. – Victor K. Jan 29 '13 at 1:59

If I understand right, you want to `split by group` and then calculate the `median` within each `date`. Here's a `data.table` solution.

Edit: The problem was with the `date` format of your dataset. It seems to report the number of unique elements wrong. So, I had to recast it to `POSIXct` format.

``````df\$date <- as.POSIXct(as.character(df\$date), format="%Y-%m-%d")
require(data.table)
dt <- data.table(df)

setkey(dt, "date")
dt.out <- dt[, lapply(letters[1:4],
function(x) median(y[group == x])), by = date]
``````

This is identical to Victor's output.

-
I need columns for every factor in the group (four columns + a date column), not one column for all the groups. – cconnell Jan 29 '13 at 1:07
this also gives me multiple values for some days – cconnell Jan 29 '13 at 1:15