1

I have two datasets in R (these tables below are just smaller versions) that I would like to combine into a new data frame.

> meetingtime2     
#two columns of datetime that class=factor

               ST                  ET
1 2014-12-22 07:00:00 2014-12-22 07:30:00
2 2014-12-22 07:30:00 2014-12-22 08:00:00
3 2014-12-22 08:00:00 2014-12-22 08:30:00
4 2014-12-22 08:30:00 2014-12-22 09:00:00
5 2014-12-22 09:00:00 2014-12-22 09:30:00

> roomdata2 
#three columns; Room=factor, Capacity=integer, Video Conference=numeric

   Room Capacity Video.Conference
1 0M02A       16                1
2 0M03A        8                0
3 0M03B       12                1

The desired output would be a 15 row by 5 column matrix. In easy speak the output is every time slot for every room.

#the following is a MANUALLY created output of what the first few rows should look like

    Room Capacity Video.Conference        ST                ET
 1 0M02A   16           1       2014-12-22 07:00:00 2014-12-22 07:30:00
 2 0M02A   16           1       2014-12-22 07:30:00 2014-12-22 08:00:00
 3 0M02A   16           1       2014-12-22 08:00:00 2014-12-22 08:30:00
 4 0M02A   16           1       2014-12-22 08:30:00 2014-12-22 09:00:00
 5 0M02A   16           1       2014-12-22 09:00:00 2014-12-22 09:30:00
 6 0M03A   16           1       2014-12-22 07:00:00 2014-12-22 07:30:00
 7 0M03A   16           1       2014-12-22 07:30:00 2014-12-22 08:00:00
#and so forth to 15 rows. 

I've tried using a nested loop

#note, the code is written so I can apply to a bigger (1000's of rows) dataset

 >mylist<-list() 
 >for(i in 1:(nrow(roomdata2)))   
   +{   for(j in 1:(nrow(meetingtime2)))   
 +mylist[[j]]<-      data.frame(roomdata2[i,1],roomdata2[i,2],roomdata2[i,3],
 +meetingtime2[j,1],meetingtime2[j,2])  
  } 
   >df<-do.call("rbind",mylist)  
>df 

The output I get. I'm getting all the timeslots for the last room, just not the preceding rooms

roomdata2.i..1. roomdata2.i..2. roomdata2.i..3.  meetingtime2.j..1.  meetingtime2.j..2.
1    0M03B          12             1         2014-12-22 07:00:00    2014-12-22 07:30:00
2    0M03B          12             1         2014-12-22 07:30:00    2014-12-22 08:00:00
3    0M03B          12             1         2014-12-22 08:00:00    2014-12-22 08:30:00
4    0M03B          12             1         2014-12-22 08:30:00    2014-12-22 09:00:00
5    0M03B          12             1         2014-12-22 09:00:00    2014-12-22 09:30:00

I know my code is far from correct and is giving me the final iteration of the loop.

The other way I looked at this was a continuous print function for each iteration

 >for(i in 1:(nrow(roomdata2))) 
 >for(j in 1:(nrow(meetingtime2))) 
 >print(paste(roomdata2[i,1],roomdata2[i,2],roomdata2[i,3],
 +meetingtime2[j,1],meetingtime2[j,2]))

the output

 [1] "0M02A 16 1 2014-12-22 07:00:00 2014-12-22 07:30:00"
 [1] "0M02A 16 1 2014-12-22 07:30:00 2014-12-22 08:00:00"
 [1] "0M02A 16 1 2014-12-22 08:00:00 2014-12-22 08:30:00"
 [1] "0M02A 16 1 2014-12-22 08:30:00 2014-12-22 09:00:00"
 [1] "0M02A 16 1 2014-12-22 09:00:00 2014-12-22 09:30:00"
 [1] "0M03A 8 0 2014-12-22 07:00:00 2014-12-22 07:30:00"
 [1] "0M03A 8 0 2014-12-22 07:30:00 2014-12-22 08:00:00"
 [1] "0M03A 8 0 2014-12-22 08:00:00 2014-12-22 08:30:00"
 [1] "0M03A 8 0 2014-12-22 08:30:00 2014-12-22 09:00:00"
 [1] "0M03A 8 0 2014-12-22 09:00:00 2014-12-22 09:30:00"
 [1] "0M03B 12 1 2014-12-22 07:00:00 2014-12-22 07:30:00"
 [1] "0M03B 12 1 2014-12-22 07:30:00 2014-12-22 08:00:00"
 [1] "0M03B 12 1 2014-12-22 08:00:00 2014-12-22 08:30:00"
 [1] "0M03B 12 1 2014-12-22 08:30:00 2014-12-22 09:00:00"
 [1] "0M03B 12 1 2014-12-22 09:00:00 2014-12-22 09:30:00"

#however the values are not separated, they are just in one set of string for each row.

The desired result is a table like directly above, but instead a dataframe with each value in a seperate column (each date & time set together in one column).

I've looked into lists,lapply,foreach but I just can't wrap my head around the solution. Any help would be appreciated, I'm a beginner so I'm keen to learn.

Cheers * the dputs

>dput(meetingtime2)

structure(list(ST = structure(1:5, .Label = c("22/12/2014 7:00", "22/12/2014 7:30", "22/12/2014 8:00", "22/12/2014 8:30", "22/12/2014 9:00" ), class = "factor"), ET = structure(1:5, .Label = c("22/12/2014 7:30", "22/12/2014 8:00", "22/12/2014 8:30", "22/12/2014 9:00", "22/12/2014 9:30" ), class = "factor")), .Names = c("ST", "ET"), row.names = c(NA, -5L), class = "data.frame")

>dput(roomdata2)

structure(list(Room = structure(1:3, .Label = c("0M02A", "0M03A", "0M03B"), class = "factor"), Capacity = c(16L, 8L, 12L), Video.Conference = c(1L, 0L, 1L)), .Names = c("Room", "Capacity", "Video.Conference"), row.names = c(NA, -3L), class = "data.frame")

  • Could you put the outputs of dput(meetingtime2) and dput(roomdata2) in your question? – Marat Talipov Jan 13 '15 at 3:51
3

Using your data:

meetingtime2 <- read.csv(text = "ST,ET
2014-12-22 07:00:00,2014-12-22 07:30:00
2014-12-22 07:30:00,2014-12-22 08:00:00
2014-12-22 08:00:00,2014-12-22 08:30:00
2014-12-22 08:30:00,2014-12-22 09:00:00
2014-12-22 09:00:00,2014-12-22 09:30:00")

roomdata2 <- read.csv(text = "Room,Capacity,Video_Conference
0M02A,16,1
0M03A,8,0
0M03B,12,1")

Then merge handily returns the Cartesian product, because none of the columns match.

merge(meetingtime2, roomdata2)[, c(3:5, 1:2)]

##     Room Capacity Video_Conference                  ST                  ET
## 1  0M02A       16                1 2014-12-22 07:00:00 2014-12-22 07:30:00
## 2  0M02A       16                1 2014-12-22 07:30:00 2014-12-22 08:00:00
## 3  0M02A       16                1 2014-12-22 08:00:00 2014-12-22 08:30:00
## 4  0M02A       16                1 2014-12-22 08:30:00 2014-12-22 09:00:00
## 5  0M02A       16                1 2014-12-22 09:00:00 2014-12-22 09:30:00
  • The results may not be ordered in the way the OP intended, however. – Avraham Jan 13 '15 at 4:30
  • This is fantastically simple, I would never have guessed this. Works perfectly – Nic Jan 13 '15 at 5:21
0

This is ugly, but should get the job done. Given the following data:

ST <- c('2014-12-22 07:00:00', '2014-12-22 07:30:00', '2014-12-22 08:00:00', '2014-12-22 08:30:00', '2014-12-22 09:00:00')
ET <- c('2014-12-22 07:30:00', '2014-12-22 08:00:00', '2014-12-22 08:30:00', '2014-12-22 09:00:00', '2014-12-22 09:30:00')

RoomName <- c('0M02A', '0M03A', '0M03B')
Capacity <- c(16, 8, 12)
VideoCap <- c(1, 0, 1)

Times <- data.frame(ST, ET, stringsAsFactors = FALSE)
Rooms <- data.frame(RoomName, Capacity, VideoCap,stringsAsFactors = FALSE)

the function below should do what you want:

Smash <- function(DF1, DF2){
  nm <- dim(DF1)
  pq <- dim(DF2)    
  maxrow <- nm[[1]] * pq[[1]]
  maxcol <- nm[[2]] + pq[[2]]
  MAT <- matrix('A', nrow = maxrow, ncol = maxcol)
  currow <- 1
    for (i1 in seq_len(nm[[1]])) {
      for (i2 in seq_len(pq[[1]])) {
        curcol <- 1
        for (j in seq_len(nm[[2]])) {
          MAT[currow, curcol] <- DF1[i1, j]
          curcol <- curcol + 1
        }
        for (j in seq_len(pq[[2]])) {
          MAT[currow, curcol] <- DF2[i2, j]
          curcol <- curcol + 1
        }
        currow <- currow + 1
      }
    }
  DF <- data.frame(MAT)
  names(DF) <- c(names(DF1), names(DF2))
  return(DF)
}

Smash(Rooms, Times) returns:

> Smash(Rooms, Times)
   RoomName Capacity VideoCap                  ST                  ET
1     0M02A       16        1 2014-12-22 07:00:00 2014-12-22 07:30:00
2     0M02A       16        1 2014-12-22 07:30:00 2014-12-22 08:00:00
3     0M02A       16        1 2014-12-22 08:00:00 2014-12-22 08:30:00
4     0M02A       16        1 2014-12-22 08:30:00 2014-12-22 09:00:00
5     0M02A       16        1 2014-12-22 09:00:00 2014-12-22 09:30:00
6     0M03A        8        0 2014-12-22 07:00:00 2014-12-22 07:30:00
7     0M03A        8        0 2014-12-22 07:30:00 2014-12-22 08:00:00
8     0M03A        8        0 2014-12-22 08:00:00 2014-12-22 08:30:00
9     0M03A        8        0 2014-12-22 08:30:00 2014-12-22 09:00:00
10    0M03A        8        0 2014-12-22 09:00:00 2014-12-22 09:30:00
11    0M03B       12        1 2014-12-22 07:00:00 2014-12-22 07:30:00
12    0M03B       12        1 2014-12-22 07:30:00 2014-12-22 08:00:00
13    0M03B       12        1 2014-12-22 08:00:00 2014-12-22 08:30:00
14    0M03B       12        1 2014-12-22 08:30:00 2014-12-22 09:00:00
15    0M03B       12        1 2014-12-22 09:00:00 2014-12-22 09:30:00
  • I'll trial this out, might be more robust than cartesian product – Nic Jan 13 '15 at 5:22

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.