I am facing a problem with the large amount of time my code takes to run. I have a data frame of approximately 23000 columns and 600 rows that folllows the following principle:

date <- c(30032015,30042015,31052015,30062015,31072015,31082015,30092015)
AAPL <- c(10,NA,NA,10,NA,NA,20)
MSFT <- c(10,NA,NA,30,NA,NA,25)
sales <- data.frame (date,AAPL,MSFT)
sales$date <- strptime (sales$date, format="%d%m%Y")

And I want the values of april and may to be equal to the values of march and the same relative to july and august relative to june.

What I am doing is this

sales [is.na(sales)] <- 0

for (i in 1:6){
for (j in 2:3){
sales[i,j] <- ifelse(sales[i,j]>0,sales[i,j],ifelse(sales[i-1,j]>0,sales[i-

However for a big data frame is taking a lot of hours. Isn't it possible to somehow say that the values in month 4 and 5 are equal to the values in month 3 and so on?

Thank you in advance


You probably want the na.locf() function from the zoo package. It carries the last observation forward to replace na values.

sales[,2:3] <- apply(sales[,2:3],2,na.locf)

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.