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I have n input dataframes, each of which has one TimeStamp column + k numeric value columns.

I want to convert them into k output dataframes each of them will have one TimeStamp column + n numeric value columns, so that the numeric column i of output dataframe j will have values from the numeric column j of input dataframe i (column indices exclude the TimeStamp column, which is the first column) and the missing TimeStamps should be filled with NAs.

The first column in these dataframes is always the TimeStamp column (where the TimeStamps are overlapped),

Number of rows in the input dataframes are different (may have different TimeStamp).

For example, each of the dataframes d1, d2 for n=2 have the following structure (one sample dataframe d1 is shown below for k=4, k can be arbitrary but will be same for each dataframe) and each of them is stored in separate csv files:

d1 <- structure(list(TimeStamp = structure(1:6, .Label = c("2016-12-20 10:17:20", "2016-12-20 10:19:20", "2016-12-20 10:19:40", "2016-12-20 10:20:00", "2016-12-20 10:20:20", "2016-12-20 10:20:40", "2016-12-20 10:21:00", 
"2016-12-20 10:21:20", "2016-12-20 10:21:40", "2016-12-20 10:22:00", 
"2016-12-20 10:22:20", "2016-12-20 10:22:40", "2016-12-20 10:23:00", 
"2016-12-20 10:23:20", "2016-12-20 10:23:40", "2016-12-20 10:24:00", 
"2016-12-20 10:24:20", "2016-12-20 10:24:40", "2016-12-20 10:25:00", 
"2016-12-20 10:25:20", "2016-12-20 10:25:40", "2016-12-20 10:26:00", 
"2016-12-20 10:26:20", "2016-12-20 10:26:40", "2016-12-20 10:27:00", 
"2016-12-20 10:27:20", "2016-12-20 10:27:40", "2016-12-20 10:28:00", 
"2016-12-20 10:28:20", "2016-12-20 10:28:40", "2016-12-20 10:29:00", 
"2016-12-20 10:29:20", "2016-12-20 10:29:40", "2016-12-20 10:30:00", 
"2016-12-20 10:30:20", "2016-12-20 10:30:40", "2016-12-20 10:31:00", 
"2016-12-20 10:31:20", "2016-12-20 10:31:40", "2016-12-20 10:32:00", 
"2016-12-20 10:32:20", "2016-12-20 10:32:40", "2016-12-20 10:33:00", 
"2016-12-20 10:33:20", "2016-12-20 10:33:40", "2016-12-20 10:34:00", 
"2016-12-20 10:34:20", "2016-12-20 10:34:40", "2016-12-20 10:35:00", 
"2016-12-20 10:35:20", "2016-12-20 10:35:40", "2016-12-20 10:36:00", 
"2016-12-20 10:37:00", "2016-12-20 10:37:20", "2016-12-20 10:37:40", 
"2016-12-20 10:38:00", "2016-12-20 10:38:20", "2016-12-20 10:40:40", 
"2016-12-20 10:41:20", "2016-12-20 10:41:40", "2016-12-20 10:44:20", 
"2016-12-20 10:44:40", "2016-12-20 10:46:00", "2016-12-20 10:49:40", 
"2016-12-20 10:50:00", "2016-12-20 10:50:20", "2016-12-20 10:55:00", 
"2016-12-20 10:56:00", "2016-12-20 10:57:20", "2016-12-20 10:59:20", 
"2016-12-20 10:59:40", "2016-12-20 11:00:20", "2016-12-20 11:01:20", 
"2016-12-20 11:05:40", "2016-12-20 11:06:00", "2016-12-20 11:07:20", 
"2016-12-20 11:08:20", "2016-12-20 11:08:40", "2016-12-20 11:11:40", 
"2016-12-20 11:12:00", "2016-12-20 11:14:20", "2016-12-20 11:14:40", 
"2016-12-20 11:15:00", "2016-12-20 11:15:20", "2016-12-20 11:15:40", 
"2016-12-20 11:16:00", "2016-12-20 11:16:20", "2016-12-20 11:18:20", 
"2016-12-20 11:18:40", "2016-12-20 11:19:00", "2016-12-20 11:19:20", 
"2016-12-20 11:19:40", "2016-12-20 11:21:20", "2016-12-20 11:21:40", 
"2016-12-20 11:22:20", "2016-12-20 11:22:40", "2016-12-20 11:23:00", 
"2016-12-20 11:23:20", "2016-12-20 11:25:00", "2016-12-20 11:25:20", 
"2016-12-20 11:26:00", "2016-12-20 11:26:40", "2016-12-20 11:27:00", 
"2016-12-20 11:27:20", "2016-12-20 11:27:40", "2016-12-20 11:28:00", 
"2016-12-20 11:28:20", "2016-12-20 11:28:40", "2016-12-20 11:34:40", 
"2016-12-20 11:36:20", "2016-12-20 11:36:40", "2016-12-20 11:41:00", 
"2016-12-20 11:41:20", "2016-12-20 11:42:20", "2016-12-20 11:42:40", 
"2016-12-20 11:46:40", "2016-12-20 11:47:00", "2016-12-20 11:47:20", 
"2016-12-20 11:47:40", "2016-12-20 11:48:00", "2016-12-20 11:48:20", 
"2016-12-20 11:48:40", "2016-12-20 11:54:00", "2016-12-20 11:54:20", 
"2016-12-20 11:57:40", "2016-12-20 12:00:00", "2016-12-20 12:00:40", 
"2016-12-20 12:01:00", "2016-12-20 12:01:20", "2016-12-20 12:01:40", 
"2016-12-20 12:02:20", "2016-12-20 12:02:40", "2016-12-20 12:03:00", 
"2016-12-20 12:03:20", "2016-12-20 12:03:40", "2016-12-20 12:07:00", 
"2016-12-20 12:07:20", "2016-12-20 12:07:40", "2016-12-20 12:08:00", 
"2016-12-20 12:08:20", "2016-12-20 12:10:20", "2016-12-20 12:10:40"
), class = "factor"), b1 = c(-76L, 0L, 0L, -76L, -80L, -81L), 
    b2 = c(0L, -74L, -79L, -73L, -79L, -77L), b3 = c(0L, 0L, 
    -88L, -88L, -91L, 0L), b4 = c(0L, 0L, 0L, -78L, -80L, -78L
    )), .Names = c("TimeStamp", "b1", "b2", "b3", "b4"), row.names = c(NA, 
6L), class = "data.frame") 

head(d1)
#            TimeStamp  b1  b2  b3  b4
#1 2016-12-20 10:17:20 -76   0   0   0
#2 2016-12-20 10:19:20   0 -74   0   0
#3 2016-12-20 10:19:40   0 -79 -88   0
#4 2016-12-20 10:20:00 -76 -73 -88 -78
#5 2016-12-20 10:20:20 -80 -79 -91 -80
#6 2016-12-20 10:20:40 -81 -77   0 -78

d2 <- structure(list(TimeStamp = structure(137:142, .Label = c("2016-12-20 10:17:20", 
"2016-12-20 10:19:20", "2016-12-20 10:19:40", "2016-12-20 10:20:00", 
"2016-12-20 10:20:20", "2016-12-20 10:20:40", "2016-12-20 10:21:00", 
"2016-12-20 10:21:20", "2016-12-20 10:21:40", "2016-12-20 10:22:00", 
"2016-12-20 10:22:20", "2016-12-20 10:22:40", "2016-12-20 10:23:00", 
"2016-12-20 10:23:20", "2016-12-20 10:23:40", "2016-12-20 10:24:00", 
"2016-12-20 10:24:20", "2016-12-20 10:24:40", "2016-12-20 10:25:00", 
"2016-12-20 10:25:20", "2016-12-20 10:25:40", "2016-12-20 10:26:00", 
"2016-12-20 10:26:20", "2016-12-20 10:26:40", "2016-12-20 10:27:00", 
"2016-12-20 10:27:20", "2016-12-20 10:27:40", "2016-12-20 10:28:00", 
"2016-12-20 10:28:20", "2016-12-20 10:28:40", "2016-12-20 10:29:00", 
"2016-12-20 10:29:20", "2016-12-20 10:29:40", "2016-12-20 10:30:00", 
"2016-12-20 10:30:20", "2016-12-20 10:30:40", "2016-12-20 10:31:00", 
"2016-12-20 10:31:20", "2016-12-20 10:31:40", "2016-12-20 10:32:00", 
"2016-12-20 10:32:20", "2016-12-20 10:32:40", "2016-12-20 10:33:00", 
"2016-12-20 10:33:20", "2016-12-20 10:33:40", "2016-12-20 10:34:00", 
"2016-12-20 10:34:20", "2016-12-20 10:34:40", "2016-12-20 10:35:00", 
"2016-12-20 10:35:20", "2016-12-20 10:35:40", "2016-12-20 10:36:00", 
"2016-12-20 10:37:00", "2016-12-20 10:37:20", "2016-12-20 10:37:40", 
"2016-12-20 10:38:00", "2016-12-20 10:38:20", "2016-12-20 10:40:40", 
"2016-12-20 10:41:20", "2016-12-20 10:41:40", "2016-12-20 10:44:20", 
"2016-12-20 10:44:40", "2016-12-20 10:46:00", "2016-12-20 10:49:40", 
"2016-12-20 10:50:00", "2016-12-20 10:50:20", "2016-12-20 10:55:00", 
"2016-12-20 10:56:00", "2016-12-20 10:57:20", "2016-12-20 10:59:20", 
"2016-12-20 10:59:40", "2016-12-20 11:00:20", "2016-12-20 11:01:20", 
"2016-12-20 11:05:40", "2016-12-20 11:06:00", "2016-12-20 11:07:20", 
"2016-12-20 11:08:20", "2016-12-20 11:08:40", "2016-12-20 11:11:40", 
"2016-12-20 11:12:00", "2016-12-20 11:14:20", "2016-12-20 11:14:40", 
"2016-12-20 11:15:00", "2016-12-20 11:15:20", "2016-12-20 11:15:40", 
"2016-12-20 11:16:00", "2016-12-20 11:16:20", "2016-12-20 11:18:20", 
"2016-12-20 11:18:40", "2016-12-20 11:19:00", "2016-12-20 11:19:20", 
"2016-12-20 11:19:40", "2016-12-20 11:21:20", "2016-12-20 11:21:40", 
"2016-12-20 11:22:20", "2016-12-20 11:22:40", "2016-12-20 11:23:00", 
"2016-12-20 11:23:20", "2016-12-20 11:25:00", "2016-12-20 11:25:20", 
"2016-12-20 11:26:00", "2016-12-20 11:26:40", "2016-12-20 11:27:00", 
"2016-12-20 11:27:20", "2016-12-20 11:27:40", "2016-12-20 11:28:00", 
"2016-12-20 11:28:20", "2016-12-20 11:28:40", "2016-12-20 11:34:40", 
"2016-12-20 11:36:20", "2016-12-20 11:36:40", "2016-12-20 11:41:00", 
"2016-12-20 11:41:20", "2016-12-20 11:42:20", "2016-12-20 11:42:40", 
"2016-12-20 11:46:40", "2016-12-20 11:47:00", "2016-12-20 11:47:20", 
"2016-12-20 11:47:40", "2016-12-20 11:48:00", "2016-12-20 11:48:20", 
"2016-12-20 11:48:40", "2016-12-20 11:54:00", "2016-12-20 11:54:20", 
"2016-12-20 11:57:40", "2016-12-20 12:00:00", "2016-12-20 12:00:40", 
"2016-12-20 12:01:00", "2016-12-20 12:01:20", "2016-12-20 12:01:40", 
"2016-12-20 12:02:20", "2016-12-20 12:02:40", "2016-12-20 12:03:00", 
"2016-12-20 12:03:20", "2016-12-20 12:03:40", "2016-12-20 12:07:00", 
"2016-12-20 12:07:20", "2016-12-20 12:07:40", "2016-12-20 12:08:00", 
"2016-12-20 12:08:20", "2016-12-20 12:10:20", "2016-12-20 12:10:40"
), class = "factor"), b1 = c(-76L, 0L, 0L, 0L, -82L, -74L), b2 = c(-87L, 
-76L, 0L, 0L, 0L, -69L), b3 = c(0L, 0L, -84L, -84L, 0L, -85L), 
    b4 = c(-75L, 0L, 0L, 0L, 0L, 0L)), .Names = c("TimeStamp", 
"b1", "b2", "b3", "b4"), row.names = c(NA, 6L), class = "data.frame")

head(d2)      
#             TimeStamp  b1  b2  b3  b4
# 1 2016-12-20 12:07:20 -76 -87   0 -75
# 2 2016-12-20 12:07:40   0 -76   0   0
# 3 2016-12-20 12:08:00   0   0 -84   0
# 4 2016-12-20 12:08:20   0   0 -84   0
# 5 2016-12-20 12:10:20 -82   0   0   0
# 6 2016-12-20 12:10:40 -74 -69 -85   0

Now I want to have k dataframes each one with n columns (to be saved as separate csv files). For example, I want to have the below output dataframes b1, b2, b3, b4 (two of them are shown) from the above input dataframes d1, d2 as follows:

  b1    
  #          TimeStamp  d1  d2
  #2016-12-20 10:17:20 -76  NA
  #2016-12-20 10:19:20   0  NA
  #2016-12-20 10:19:40   0  NA
  #2016-12-20 10:20:00 -76  NA 
  #2016-12-20 10:20:20 -80  NA
  #2016-12-20 10:20:40 -81  NA
  #2016-12-20 12:07:20  NA -76
  #2016-12-20 12:07:40  NA   0
  #2016-12-20 12:08:00  NA   0
  #2016-12-20 12:08:20  NA   0
  #2016-12-20 12:10:20  NA -82
  #2016-12-20 12:10:40  NA -74

  b2    
  #          TimeStamp  d1  d2
  #2016-12-20 10:17:20   0  NA
  #2016-12-20 10:19:20 -74  NA
  #2016-12-20 10:19:40 -79  NA
  #2016-12-20 10:20:00 -73  NA 
  #2016-12-20 10:20:20 -79  NA
  #2016-12-20 10:20:40 -77  NA
  #2016-12-20 12:07:20  NA -87
  #2016-12-20 12:07:40  NA -76
  #2016-12-20 12:08:00  NA   0
  #2016-12-20 12:08:20  NA   0
  #2016-12-20 12:10:20  NA   0
  #2016-12-20 12:10:40  NA -69

The timestamps from different dataframes in the given example are disjoint, but the timestamps from different dataframes in general will overlap, in the latter case we don't need to fill by NAs (since numeric values will be present).

What is (are) the simplest, the most efficient and the most generalizeble way(s) ways to do this (with base R / dplyr / tidyr / data.table, preferably without loops)? I can have the constants n and k and the dataframes arbitrarily large.

closed as unclear what you're asking by docendo discimus, etienne, Sotos, DVarga, MLavoie Dec 22 '16 at 14:39

Please clarify your specific problem or add additional details to highlight exactly what you need. As it's currently written, it’s hard to tell exactly what you're asking. See the How to Ask page for help clarifying this question. If this question can be reworded to fit the rules in the help center, please edit the question.

  • 1
    Maybe something like Map(data.frame, d1 = d1, d2 = d2) ? – Sotos Dec 22 '16 at 7:43
  • 1
    Yes, you should update your examples then – Sotos Dec 22 '16 at 7:53
  • 2
    @sandipan Please take your time to construct an example with sufficient complexity before posting. Otherwise you waste not only your own time, but more importantly also the time of people trying to help you. – Henrik Dec 22 '16 at 8:27
  • 2
    hmm...Are you sure? Still looks wrong to me. I think you need to re-organise it and include overlapping dates as well as correct expected output. I don't have any more time to spend on this though for the time being. – Sotos Dec 22 '16 at 8:35
  • 1
    Not for the overlapping dates but in general yes. But you need to include all such cases in your examples if you want a comprehensive & fairly generic answer – Sotos Dec 22 '16 at 8:57
1

Maybe you can try this:

#read d1 data from PATH1
d1_df <- read.table("PATH1", header = T, sep = "\t", stringsAsFactors = F)
#store d1 colnames
d1_colname <- colnames(d1_df)[-1]
#read d2 data from PATH2
d2_df <- read.table("PATH2", header = T, sep = "\t", stringsAsFactors = F)
#store d2 colnames
d2_colname <- colnames(d2_df)[-1]
#merge two df timestamp
TimeStamp <-c(unlist(d1[,1]), unlist(d2[,1]))
#merge two df colname
merge_colname <- rbind(d1_colname, d2_colname)
#to match the format want
merge_df <- function(vec_colname){
  d1 <- c(unlist(d1_df[, vec_colname[1]]), rep("NA", nrow(d2_df)))
  d2 <- c(rep("NA", nrow(d1_df)), unlist(d2_df[, vec_colname[2]]))
  return( data.frame(TimeStamp, d1, d2))
}
#get result,but is a list
res_list <- apply(merge_colname, 2, merge_df)
#create data frames from the result
for(i in 1:length(res_list)){
  #bi <- res_list[[i]]
  eval(parse(text=paste0("b",i,"<-res_list[[",i,"]]")))
}

And the result:

> b1
             TimeStamp  d1  d2
1  2016-12-20 10:17:20 -76  NA
2  2016-12-20 10:19:20   0  NA
3  2016-12-20 10:19:40   0  NA
4  2016-12-20 10:20:00 -76  NA
5  2016-12-20 10:20:20 -80  NA
6  2016-12-20 10:20:40 -81  NA
7  2016-12-20 12:07:20  NA -76
8  2016-12-20 12:07:40  NA   0
9  2016-12-20 12:08:00  NA   0
10 2016-12-20 12:08:20  NA   0
11 2016-12-20 12:10:20  NA -82
12 2016-12-20 12:10:40  NA -74
  • please see the updated post to consider the timestamps too. – Sandipan Dey Dec 22 '16 at 8:21
  • @sandipan I have updated my answer,you can check it. – Vida Wang Dec 22 '16 at 10:41
  • @docendodiscimus Sorry,I will edit my code. – Vida Wang Dec 22 '16 at 10:47

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