I am new to R and was wondering what is the best way to do the following -

My actual problem is a multivariate regression model but its a fairly large dataset(>5000 rows and 12 columns) and hence I've designed an analogous shorter problem. The solution to the below problem can be replicated to solve my actual problem. Any help(including speed issues) on the below will be greatly appreciated- I have the following two data frames-d1 and d2

```
d1 -
sno letter age
1 a 29
2 b 30
3 a 33
4 b 22
5 c 25
d2-
letter marks
a 40
b 90
c 60
```

Now , I want to calculate whether a,b,c have passed or failed from d2 using marks_code and then include the corresponding grades in d1. So my final output should look like this-

```
d1 -
sno letter age grade
1 a 29 0
2 b 30 1
3 a 33 0
4 b 22 1
5 c 25 1
```

Below is the code I wrote-(I'm not getting the result I want!)

```
d1 <- data.frame(cbind(1:5,c("a","b","a","b","c"),c(29,30,33,22,25)),stringsAsFactors=FALSE )
colnames(d1) <- c("sno","letter","age")
d2 <- data.frame(cbind(c("a","b","c"),c(40,90,60)),stringsAsFactors=FALSE)
colnames(d2) <- c("letter","marks")
d2$grade <- rep(NA,3) #initialising the vector
d2$grade <- sapply(d2$marks,marks_code)
d1$grade <- rep(NA,5)
d1_coding(d1$letter)
d1_coding <- function(y1)
{
letter_names <- unique(y1)
m <- length(letter_names)
for(i in 1:m)
{
sub <- subset(d1,d1$letter==letter_name[i])
num_obs <- length(sub$sno)
sub$grade <- rep(d2$grade[i],num_obs)
merge(d1,sub,by="sno")
}
return(d1)
}
marks_code <- function(y)
{
a <-NA
if(y<=40)
a <- 0#fail
else
a<- 1#pass
return(a)
}
```

Thanks a lot in advance! :)