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I am quite new to the data.table package and have a simple problem. I have two data.tables that are compared with the use of keys. In data.table 1 the value of column C is changed from "NO" to "OK" if the key columns A and B are equally found in data.table B. This step is inevitably and has to be done.

library(data.table)
df_1 <- data.frame(A=c(1,1,3,5,6,7), B = c("x","y","z","q","w","e"), C = rep("NO",6))
df_2 <- data.frame(A=c(3,5,1), B = c("z","q","x"), D=c(3,5,99))
keys <- c("A","B")
dt_1 <- data.table(df_1, key = keys)
dt_2 <- data.table(df_2, key = keys)
dt_1[dt_2, C := "OK"]

Now I get the data.table:

   A     B     C
1: 1     x     OK
2: 1     y     NO
3: 3     z     OK
4: 5     q     OK
5: 6     w     NO
6: 7     e     NO

I would like to include a second operation. If in data.table 2 the value of column A is not equal to column D the value of column D should be used after the first operation. Meaning column D is superior to A. This should work no matter how many values in D are different. The desired data.table looks the following:

   A     B     C
1: 99    x     OK
2: 1     y     NO
3: 3     z     OK
4: 5     q     OK
5: 6     w     NO
6: 7     e     NO

I tired something without success.

dt_1[dt_2, A != D, A := D]

Thank you for your help!

5
0

Try:

dt_1[C == "OK", A:= dt_2[,D]]

#   A B  C
# 1: 99 x OK
# 2:  1 y NO
# 3:  3 z OK
# 4:  5 q OK
# 5:  6 w NO
# 6:  7 e NO

And here's how you should have done the whole process in the first place.

Create both data sets as data.tables in the first place (or convert in place using setDT)

dt_1 <- data.table(A=c(1,1,3,5,6,7), B = c("x","y","z","q","w","e"), C = rep("NO",6))
dt_2 <- data.table(A=c(3,5,1), B = c("z","q","x"), D=c(3,5,99))

Then key them using setkeyv instead of using the <- operator

keys <- c("A","B")
setkeyv(dt_1, keys)
setkeyv(dt_2, keys)

Then just update both column within a single join

dt_1[dt_2, `:=`(C = "OK", A = i.D)]
#     A B  C
# 1: 99 x OK
# 2:  1 y NO
# 3:  3 z OK
# 4:  5 q OK
# 5:  6 w NO
# 6:  7 e NO

In this case the condition df_1$A != df_2$D is redundant

| improve this answer | |
  • As I understand if you change some velue in dt_2$D so the corresponding value in dt_1$A should be changed... anyway you are right, it's just a quick solution to his question. I am looking for some more general avoiding a step of the column C in dt_1 – Andriy T. Sep 3 '15 at 9:36
  • Thank you for the quick reply. The step to set column C to OK is inevitable. I edited the question. – VDK Sep 3 '15 at 9:47
  • @DavidArenburg, after dt_2[2L, D := 1e3] value A is different D in row 2, so in dt_1[3,A] is changed to 1000 – Andriy T. Sep 3 '15 at 9:48
  • @Andriy T. so far it seems to work for me the way it is supposed to work. I will take a closer look in my actual code. – VDK Sep 3 '15 at 9:53
  • 2
    I guess this should be just a one liner for both operation at once dt_1[dt_2, `:=`(C = "OK", A = D)] – David Arenburg Sep 3 '15 at 10:27

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