21

If my data frame (df) looks like this:

Name        State
John Smith  MI
John Smith  WI
Jeff Smith  WI

I want to rename the John Smith from WI "John Smith1". What is the cleanest R equivalent of the SQL statement?

update df 
set Name = "John Smith1"
where Name = "John Smith"
and State = "WI"
  • 4
    Maybe like this? df[df$Name == "John_Smith" & df$State == "WI",1] <- "John_Smith1" – DatamineR Feb 21 '15 at 20:37
  • RStudent is right on, in case your first column isn't of class factor – David Arenburg Feb 21 '15 at 20:54
  • That almost works, but I have a very big data frame so I was trying to simplify the question. Your solution adds "John_Smith1" to the first column of my data frame, not the df$Name column. – Frank B. Feb 21 '15 at 20:55
  • 1
    @FrankB. You can change the 1 to Name as I did in the answer – DatamineR Feb 21 '15 at 20:59
24
df <- data.frame(Name=c('John Smith', 'John Smith', 'Jeff Smith'),
                 State=c('MI','WI','WI'), stringsAsFactors=F)

df <- within(df, Name[Name == 'John Smith' & State == 'WI'] <- 'John Smith1')

> df
         Name State
1  John Smith    MI
2 John Smith1    WI
3  Jeff Smith    WI

** Edit **

Edited to add that you can put whatever you like in the within expression:

df <- within(df, {
    f <- Name == 'John Smith' & State == 'WI'
    Name[f] <- 'John Smith1'
    State[f] <- 'CA'
}) 
  • I wish I knew how to do that economically for updating multiple columns. This syntax appears to require duplicating the subsetting condition for each column being updated. – Jai Jeffryes Aug 9 at 21:53
  • 1
    within takes an expression as the second argument. You can shove whatever you want in there. See my updated answer for an example. – Zelazny7 Aug 10 at 2:52
10

One way:

df[df$Name == "John_Smith" & df$State == "WI", "Name"] <- "John_Smith1"

Another way using the dplyr:

df %>% mutate(Name = ifelse(State == "WI" & Name == "John_Smith", "John_Smith1", Name))

Note: As David Arenburg says, the first column should not be a factor. For this, reading the data set stringsAsFactors = FALSE.

2

You can also use package data.table:

library(data.table)
setDT(df)[State=="WI", Name:=paste0(Name,"1")]
  • 1
    This code will also rename Jeff Smith to Jeff Smith1. Use setDT(df)[State == "WI" & Name == "John Smith", Name := paste0(Name, "1")] to rename only John Smith from WI. – Uwe Jan 22 '18 at 0:59
0

As the OP has mentioned that he has "a very big data frame", it might be advantageous to use a binary search

library(data.table)
setDT(DF)[.("John Smith",  "WI"), on = .(Name=V1, State=V2), 
          Name := paste0(Name, 1)][]
          Name State
1:  John Smith    MI
2: John Smith1    WI
3:  Jeff Smith    WI

instead of a vector scan

setDT(df)[State == "WI" & Name == "John Smith", Name := paste0(Name, "1")]

In both variations the data object is updated by reference, i.e., without copying the whole object which save time and memory.

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