I have two data frame. `data1`

consist of three columns, one is stock code like 600287, another is its earning announcement day like 2015-09-07, the third is its announcement earning (earning per share) like 0.8. This data frame is in random order, it consists of different stock and different announcement days because it covers a time from 2014 to 2016. Every stock could announce 4 times a year and I have 2400 stocks in this data frame.

```
code1 day1 announcement
600181 2015-09-08 0.9
```

`data2`

are stock daily performance data. It has daily return rates of 2500 stocks from 2014-2015. So it has over 2 million rows which is the reason I'm looking for an efficient solution. `data2`

also has code numbers and dates.

```
code2 day2 return
600298 2016-08-09 0.03
```

I'm researching company post-announcement stock price reaction. Basically, for example, if company "A" announces its earning on 2016-09-08, I have to know every return rate of stock "A" in the next 5 dealing days (including 2015-9-8 if it is a dealing day). Dealing days for every stock are different but if and only if this day appears in `data2`

it is a dealing day of stock "A".

The difficulty here is that stock "A" announces on 2015-06-09 but this day does not appear in `data2`

of stock "A" (this can be due to the fact that 2015-06-09 is a Sunday which is not a dealing day in China). What I did is using the `difftime()`

function and then order it but this is slow!

The final data frame I want to get is like this (7 columns)

```
code announce-day d1 d2 d3 d4 d5
600287 2015-08-07 0.08 0.06 0.02 0.01 -0.02
```

(again I want to say day1 could be 2015-08-07 if this day is a dealing day. It could also be 2015-08-09. The only judge is it appears first in `data2`

after 2015-08-07)

I have been working on this problem for so long and I can't fix it. I give a brief example.

```
code1<-"600187"
day1<-as.Date("2016-10-09") ##stock 600187 announce on 2016-10-09
announcement<-0.8
data1<-data.frame(code1, day1,announcement)
code2<-c(rep("600187",10),"600234")
x<-as.Date("2016-07-08")
x<-seq(x,x+4,by=1)
y<-as.Date("2016-10-11")
y<-seq(y,y+4,by=1)
day2<-c(x,y,as.Date("2016-12-30"))
return<-"whatever"
data2<-data.frame(code2,day2,return)
```

In this case `data1`

only consist of one announcement of one stock. The announce day is 2016-10-09 but the next day to appear in `data2`

is 2016-10-11.

Here is my for-loop code, I still use test data because I don't know how to uplode the whole data.

```
require(snow)
code1<-c("600187","600111","600111")
day1<-as.Date(c("2016-10-09","2011-02-02","2011-09-09"))
announcement<-c(0.8,0.2,0.2)
data1<-data.frame(code1,day1,announcement,stringsAsFactors=FALSE)
code2<-c(rep("600187",10),"600234")
x<-as.Date("2016-07-08")
x<-seq(x,x+4,by=1)
y<-as.Date("2016-10-11")
y<-seq(y,y+4,by=1)
day2<-c(x,y,as.Date("2016-12-30"))
return<-seq(from = 0.01, by = 0.005, length.out = length(day2))
data2<-data.frame(code2,day2,return,stringsAsFactors=FALSE)
mtl<-function(ichunk,data2,data1){
stime<-data1$day1
cd<-data1$code1
k<-1
houxu<-data.frame(cd=NA,date=NA,l1=NA,l2=NA,l3=NA,l4=NA,l5=NA)
for(i in ichunk){
a<-subset(data2,code2==cd[i])
a<-transform(a,time=difftime(day2,stime[i],units="days"))
a<-subset(a,time>=0)
a<-subset(a,rank(time)%in%1:5)
a<-a[order(a$time),]
q<-c(cd[i],1,a$return) ##the 1 is used for date,
if(length(q)<7)
{ houxu[k,]<-NA} else {houxu[k,]<-q}
k<-k+1}
houxu[,2]<-stime[ichunk] ##the column of day
return(houxu)}
mutlinks<-function(cls,data2,data1){
n<-nrow(data1)
options(warn=-1)
k<-ceiling(n/2)
ichunks<-list(1:k,(k+1):n)
options(warn=0)
df<-clusterApply(cl=cls,fun=mtl,ichunks,data2,data1)
do.call(rbind,df) }
cl<-makeCluster(type="SOCK",c("localhost","localhost"))
bxdf<-mutlinks(cl,data2,data1)
bxdf<-na.omit(bxdf)
```

This code will take 16minutes, not so long

`data.table`

's rolling join the task can be achieved without any`for`

loops. – Uwe Jun 12 '17 at 12:58`for`

loops which returns correct results. Please, can you edit your question and add the complete code you are using? Thank you. – Uwe Jun 13 '17 at 5:14