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I have a data frame like

  ID       DATE         TS_EVENT              X   Y  Z
ID0026A  2013-01-03 2013-01-03 8:31:09 PM     25   0  0
ID0026A  2013-01-03 2013-01-03 8:31:09 PM      0   0  0
ID0026A  2013-01-03 2013-01-03 11:22:55 PM     0   0  0
ID0026A  2013-01-03 2013-01-03 11:36:05 PM     0   0  0
ID0026A  2013-01-03 2013-01-03 11:36:05 PM     0   0  0
ID0026A  2013-03-27 2013-01-03 11:36:05 PM   100 354 25

Now I want to return a dataframe which will have the four columns ID,DATE,X,Y and Z. But the col "ID" will contain the unique ID, DATE will contain the latest date for that ID and the rest of the cols will have the values corresponding to the latest time stamp (TS_EVENT) for that particular ID.

E.g., in this case for ID0026A the dataframe should look like

   ID       DATE       X   Y  Z
ID0026A  2013-01-03    0   0  0
ID0026A  2013-03-27  100 354 25

My dataframe contains 1.2million records and 6000 unique IDs

Note: str of ID is character, str of DATE is date, str of TS_EVENT is character and the rest numeric

So, first I want to convert TS_EVENT into a date-time object and then create the required dataframe.

How can I do this in R?

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@darkage the presented solution didn't help? –  Paulo Cardoso Apr 28 at 21:17

3 Answers 3

up vote 1 down vote accepted

with ddply

d$DATE <- ymd(d$DATE)
d$TS_EVENT <- ymd_hms(d$TS_EVENT)

plyr::ddply(d, .(ID, DATE), summarise, ts = max(TS_EVENT), date = max(DATE),
            x = tail(X,1), y = tail(Y, 1), z = tail(Z, 1))

       ID       DATE                  ts       date   x   y  z
1 ID0026A 2013-01-03 2013-01-03 11:36:05 2013-01-03   0   0  0
2 ID0026A 2013-03-27 2013-01-03 11:36:05 2013-03-27 100 354 25

this work with dplyr as well

d %.%
  dplyr:::group_by(DATE, ID) %.% 
  dplyr:::summarise(ts = max(TS_EVENT), date = max(DATE),
            x = tail(X,1), y= tail(Y, 1), z=tail(Z, 1))


        DATE      ID                  ts       date   x   y  z
1 2013-01-03 ID0026A 2013-01-03 11:36:05 2013-01-03   0   0  0
2 2013-03-27 ID0026A 2013-01-03 11:36:05 2013-03-27 100 354 25

Thanks @Arun!!

EDIT I'd like to see this with a data.tableapproach. I'm not being able to do it.

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@Arun it does but do not work anyway. Would you recommend something? –  Paulo Cardoso Apr 28 at 17:03
    
What do you mean, it's not passing the two variables to group_by? –  Arun Apr 28 at 17:05
    
@Arun, dplyr::group_by is not summarizing considering the levels of ID and DATE as ddply do. Am I missing something? –  Paulo Cardoso Apr 28 at 17:11
    
@Arun I did it above, in the question. –  Paulo Cardoso Apr 28 at 17:13
1  
I suspect it's because you've loaded plyr before dplyr. Try it with dplyr:::summarise(.)..? –  Arun Apr 28 at 17:16

Per @PauloCardoso request, here's the data.table solution

library(data.table)
idx <- setDT(df)[, .I[TS_EVENT == max(TS_EVENT)], by = c("ID", "DATE")]$V1
unique(df[idx, -3, with = F], by = c("ID", "DATE"))
## ID       DATE   X   Y  Z
## 1: ID0026A 2013-01-03   0   0  0
## 2: ID0026A 2013-03-27 100 354 25
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Arenberg Two questions for you 1. How can I convert a date variable from "1/3/2013" to "2013-01-03" ? 2. If the original time stamp is "1/3/2013 8:13:48 PM" how will I convert it to "2013-01-03 20:13:48" Note: the original date format is %m/%d/%Y. I actually want it in POSIXct format –  darkage May 1 at 11:38
    
@darkage, for your first question: as.Date("1/3/2013", format = "%d/%m/%Y"). For your second question, I'm not sure how to deal with the "PM" part. but a 24h system this should work as.POSIXct("1/3/2013 20:13:48", format="%d/%m/%Y %H:%M:%S") –  David Arenburg May 1 at 11:46
    
it works fine with %d/%m/%Y date format, but my format is %m/%d/%Y. It doesn't work with my format. –  darkage May 1 at 12:01
1  
So change it in the format, i.e, as.Date("3/1/2013", format = "%m/%d/%Y") and as.POSIXct("3/1/2013 20:13:48", format="%m/%d/%Y %H:%M:%S") –  David Arenburg May 1 at 12:04

Try something like this (t is your data frame):

 t <- t[ !duplicated(t[c("ID","DATE")], fromLast=TRUE), ][c("ID","DATE","X","Y","Z")]

Function duplicated will combine ID and DATE into a unique key, and get the last entry (i.e. latest DATE for that ID). Then add the fields you want to your data frame. Hope this helps.

Outputs:

ID       DATE   X   Y  Z
ID0026A 2013-01-03   0   0  0
ID0026A 2013-03-27 100 354 25
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