I have a large dataframe(3M+ rows). I am trying to count the number of times a certain ActivityType appears in a 21 day window. I have modelled my solution from Rolling Sum by Another Variable in R. But it takes a long time just for one ActivityType. I did not think 3M+ rows is something that will take an inordinate amount of time. Below is what I tried:

```
dt <- read.table(text='
Name ActivityType ActivityDate
John Email 1/1/2014
John Email 1/3/2014
John Webinar 1/5/2014
John Webinar 1/20/2014
John Webinar 3/25/2014
John Email 4/1/2014
John Email 4/20/2014
Tom Email 1/1/2014
Tom Webinar 1/5/2014
Tom Webinar 1/20/2014
Tom Webinar 3/25/2014
Tom Email 4/1/2014
Tom Email 4/20/2014
', header=T, row.names = NULL)
library(data.table)
library(reshape2)
dt$ActivityType <- factor(dt$ActivityType)
dt$ActivityDate <- as.Date(dt$ActivityDate, "%m/%d/%Y")
dt <- dt[order(dt$Name, dt$ActivityDate),]
dt <- dcast(dt, Name + ActivityDate ~ ActivityType, fun.aggregate=length)
setDT(dt)
#Build reference table
Ref <- dt[,list(Compare_Value=list(I(Email)),Compare_Date=list(I(ActivityDate))), by=c("Name")]
#Use mapply to get last 21 days of value by Name
dt[,Email_RollingSum := mapply(ActivityDate=ActivityDate,Name=Name, function(ActivityDate, Name) {
d <- as.numeric(Ref$Compare_Date[[Name]] - ActivityDate)
sum((d <= 0 & d >= -21)*Ref$Compare_Value[[Name]])})]
```

And this is just for ActivityType=Email, then I have to do the same for other ActivityType levels. The link that I got the solution from talked about using "mcapply" rather than "mapply". Kindly let me know how I can use mcapply or any other solution that will make it faster.

Below is the expected output. For each row, I take the ActivityDate and 21 days before that and that 21 day period is my time window. I count all the time ActivityType="Email" appears in that time window.

```
Name ActivityType ActivityDate Email_RollingSum
John Email 1/1/2014 1
John Email 1/3/2014 2
John Webinar 1/5/2014 2
John Webinar 1/20/2014 2
John Webinar 3/25/2014 0
John Email 4/1/2014 1
John Email 4/20/2014 2
Tom Email 1/1/2014 1
Tom Webinar 1/5/2014 1
Tom Webinar 1/20/2014 1
Tom Webinar 3/25/2014 0
Tom Email 4/1/2014 1
Tom Email 4/20/2014 2
```