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I've looked around and I can't find a simple answer to this. How do I do what in SQL would be an update table? For example:

> df1 = data.frame(id=seq(1:3), v1=c("a", "b", NA))
> df1
  id   v1
1  1    a
2  2    b
3  3 <NA>
> df2 = data.frame(id=seq(1:3), v2=c("z", "y", "c"))
> df2
  id v2
1  1  z
2  2  y
3  3  c

How do I update df1 with values from v2 in v1, but only when id matches and when id > 2? I've looked at data.table, but can't figure out the := syntax, and hoping there is something simple in base R? Desired output would be:

> df1
  id   v1
1  1    a
2  2    b
3  3    c
share|improve this question

Updated to work when there are ids present in df1 not in df2, and also if orders are different. This works so long as there is only one id column:

df1 <- data.frame(id=seq(1:5), v1=c("a", "b", NA, NA, NA), stringsAsFactors=F)
df2 <- data.frame(id=seq(1:3), v2=c("z", "y", "c"), stringsAsFactors=F)

df1[df1$id > 2, -1] <- df2[df1$id[df1$id > 2], -1]
df1

Produces:

  id   v1
1  1    a
2  2    b
3  3    c
4  4 <NA>
5  5 <NA>

Here is a simple solution that works so long as both data frames have the same id set:

df1[df1$id > 2, ] <- df2[df1$id > 2, ]

Produces:

  id v1
1  1  a
2  2  b
3  3  c

Big note though, v1 and v2 need to be character, so run this before as they are factor by default:

df1$v1 <- as.character(df1$v1)    
df2$v2 <- as.character(df2$v2)

If you need to join on multiple columns or if the ids in one table don't all exist in the other you can use merge or data.table to get both variables on one table, and then construct the new column by combining the columns with ifelse.

share|improve this answer
    
ah, ok there are extra columns in both dfs, and there are extra ids in each id column. how would the ifelse syntax work for each row? There isn't a more direct approach? It is so easy in sql.. – Paul Mar 18 '14 at 22:25
    
something like this? df1$v1[is.na(df1$v1)] = df1$v2[is.na(df1$v1)] – Paul Mar 18 '14 at 22:27
    
@Paul, see update. Note that multiple data columns isn't a problem. This stops working if you have multiple id columns. – BrodieG Mar 18 '14 at 22:40

SQLite In this case using an update in sqlite is a bit complex but for completeness here it is:

library(sqldf)

sqldf(c("update df1 
      set v1 = (select v2 from df2 where df2.id = df1.id and df1.id > 2)
      where exists (select * from df2 where df1.id = df2.id and df2.id > 2)",
    "select * from df1")
)

which gives:

  id v1
1  1  a
2  2  b
3  3  c

MySQL Its even easier with MySQL:

library(RMySQL)
library(sqldf)

sqldf(c("update df1 
  left join df2 on (df1.id = df2.id and df1.id > 2)
  set df1.v1 = coalesce(df2.v2, df1.v1)",
  "select * from df1")
)

giving:

  id v1
1  1  a
2  2  b
3  3  c
share|improve this answer
    
Maybe this is bordering on an opinion / theoretical question.. but why isn't there a nice function in R to do what I thought would be a common & necessary database (or even dataframe) operation? There are so many great functions in R to do almost everything else, I guess I'm just a bit surprised that this is complex. – Paul Mar 19 '14 at 19:29
    
Thanks for this - I think I might go this route.. seems much simpler to keep track of what I'm trying to match without brackets everywhere – Paul Mar 19 '14 at 19:30
    
Its even simpler in MySQL. See added code. – G. Grothendieck Mar 19 '14 at 19:49

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