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I'd like to learn how to apply functions on specific columns of my dataframe without "excluding" the other columns from my df. For example i'd like to multiply some specific columns by 1000 and leave the other ones as they are.

Using the sapply function for example like this:

    a<-as.data.frame(sapply(table.xy[,1], function(x){x*1000}))

I get new dataframes with the first column multiplied by 1000 but without the other columns that I didn't use in the operation. So my attempt was to do it like this:

    a<-as.data.frame(sapply(table.xy, function(x) if (colnames=="columnA") {x/1000} else {x}))

but this one didn't work.

My workaround was to give both dataframes another row with IDs and later on merge the old dataframe with the newly created to get a complete one. But I think there must be a better solution. Isn't it?

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up vote 6 down vote accepted

If you only want to do a computation on one or a few columns you can use transform or simply do index it manually:

# with transfrom:
df <- data.frame(A = 1:10, B = 1:10)
df <- transform(df, A = A*1000)

# Manually:
df <- data.frame(A = 1:10, B = 1:10)
df$A <- df$A * 1000
share|improve this answer
yes. this was what I was searching for. Thx!! – Joschi Nov 15 '12 at 13:22
how do I do this if I have a lot of columns (n=30)? typing all the names would be too much work... – Joschi Nov 20 '12 at 9:49
You have the numbers? df[,c(1,2,....)] <- 1000 * df[,c(1,2,....)] – Sacha Epskamp Nov 20 '12 at 9:53
yes, actually I was always did my calculations on data frames like this: a<-as.data.frame(sapply(df[,2:42], function(x){x*1000})) but then the first column from my dataframe df is not within the newly created dataframe (a)... so I have to make a Workaround and merge the first column of the old dataframe to the new one. So this is okay but I thought there might be a easier way... – Joschi Nov 20 '12 at 10:17

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