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I have a data.frame like below.

toolid          startdate       enddate         stage
abc                 1-Jan-13    5-Jan-13    production
abc                 6-Jan-13    10-Jan-13   down
xyz                 3-Jan-13    8-Jan-13    production
xyz                 9-Jan-13    15-Jan-13   down

I want to transform the data.frame into the format below. I am trying to combine columns 'startdate' and 'enddate' from above data.frame into a single column called 'date' below. Original data that I have has over a few thousand rows across many toolids and many stages. I already found a way to do this using SQL, but would prefer a R solution. I have started by melting the data as shown in the code below.

toolid  date            stage
abc     1-Jan-13    production
abc     2-Jan-13    production
abc     3-Jan-13    production
abc     4-Jan-13    production
abc     5-Jan-13    production
abc     6-Jan-13    down
abc     7-Jan-13    down
abc     8-Jan-13    down
abc     9-Jan-13    down
abc     10-Jan-13   down
xyz     3-Jan-13    production
xyz     4-Jan-13    production
xyz     5-Jan-13    production
xyz     6-Jan-13    production
xyz     7-Jan-13    production
xyz     8-Jan-13    production
xyz     9-Jan-13    down
xyz     10-Jan-13   down
xyz     11-Jan-13   down
xyz     12-Jan-13   down
xyz     13-Jan-13   down
xyz     14-Jan-13   down
xyz     15-Jan-13   down

R code

startdate=c('1-Jan-13','6-Jan-13','3-Jan-13','9-Jan-13')
enddate=c('5-Jan-13',    '10-Jan-13',   '8-Jan-13', '15-Jan-13')
toolid=c('abc',     'abc',  'xyz',  'xyz')
stage=c('production',    'down',    'production',   'down')
data=data.frame(toolid,startdate,enddate,stage)
require(reshape2)
newdata=melt(data,id.vars=c('toolid','stage'))

update: coping code from @Ananda Mahto answer below and adding few lines of code to give a pivot table kind of output

## Convert "startdate" and "enddate" to date objects
data$startdate <- as.Date(data$startdate, format="%d-%b-%y")
data$enddate <- as.Date(data$enddate, format="%d-%b-%y")


## Use `seq` to create the date sequence, and manually recreate
##   your dataframe. `do.call(rbind, ...) to put it back together
ddd=do.call(rbind, lapply(sequence(nrow(data)), function(x) {
  data.frame(toolid = data$toolid[x], 
             date = seq(data$startdate[x], data$enddate[x], by = 1),
             stage = data$stage[x])
}))

ddd


   toolid       date      stage
1     abc 2013-01-01 production
2     abc 2013-01-02 production
3     abc 2013-01-03 production
4     abc 2013-01-04 production
5     abc 2013-01-05 production
6     abc 2013-01-06       down
7     abc 2013-01-07       down
8     abc 2013-01-08       down
9     abc 2013-01-09       down
10    abc 2013-01-10       down
11    xyz 2013-01-03 production
12    xyz 2013-01-04 production
13    xyz 2013-01-05 production
14    xyz 2013-01-06 production
15    xyz 2013-01-07 production
16    xyz 2013-01-08 production
17    xyz 2013-01-09       down
18    xyz 2013-01-10       down
19    xyz 2013-01-11       down
20    xyz 2013-01-12       down
21    xyz 2013-01-13       down
22    xyz 2013-01-14       down
23    xyz 2013-01-15       down

ddd1=dcast(ddd,date~stage)


ddd1
         date down production
1  2013-01-01    0          1
2  2013-01-02    0          1
3  2013-01-03    0          2
4  2013-01-04    0          2
5  2013-01-05    0          2
6  2013-01-06    1          1
7  2013-01-07    1          1
8  2013-01-08    1          1
9  2013-01-09    2          0
10 2013-01-10    2          0
11 2013-01-11    1          0
12 2013-01-12    1          0
13 2013-01-13    1          0
14 2013-01-14    1          0
15 2013-01-15    1          0
share|improve this question

1 Answer 1

up vote 3 down vote accepted

I'm sure there are more "correct" ways to do this, but this is what came to my mind quickly.

First, convert "startdate" and "enddate" to date objects

data$startdate <- as.Date(data$startdate, format="%d-%b-%y")
data$enddate <- as.Date(data$enddate, format="%d-%b-%y")

Then, use seq to create the date sequence, and manually recreate your data.frame. Use `do.call(rbind, ...) to put it back together.

ddd <- do.call(rbind, lapply(sequence(nrow(data)), function(x) {
  data.frame(toolid = data$toolid[x], 
             date = seq(data$startdate[x], data$enddate[x], by = 1),
             stage = data$stage[x])
}))
ddd
#    toolid       date      stage
# 1     abc 2013-01-01 production
# 2     abc 2013-01-02 production
# 3     abc 2013-01-03 production
# 4     abc 2013-01-04 production
# 5     abc 2013-01-05 production
# 6     abc 2013-01-06       down
# 7     abc 2013-01-07       down
# 8     abc 2013-01-08       down
# 9     abc 2013-01-09       down
# 10    abc 2013-01-10       down
# 11    xyz 2013-01-03 production
# 12    xyz 2013-01-04 production
# 13    xyz 2013-01-05 production
# 14    xyz 2013-01-06 production
# 15    xyz 2013-01-07 production
# 16    xyz 2013-01-08 production
# 17    xyz 2013-01-09       down
# 18    xyz 2013-01-10       down
# 19    xyz 2013-01-11       down
# 20    xyz 2013-01-12       down
# 21    xyz 2013-01-13       down
# 22    xyz 2013-01-14       down
# 23    xyz 2013-01-15       down

Finally, looking at where you say you want to end up, you can stick to base R all the way and use table. I've put it in as.data.frame.matrix() because I've assumed you want a data.frame as the result:

as.data.frame.matrix(table(ddd[-1]))
#            down production
# 2013-01-01    0          1
# 2013-01-02    0          1
# 2013-01-03    0          2
# 2013-01-04    0          2
# 2013-01-05    0          2
# 2013-01-06    1          1
# 2013-01-07    1          1
# 2013-01-08    1          1
# 2013-01-09    2          0
# 2013-01-10    2          0
# 2013-01-11    1          0
# 2013-01-12    1          0
# 2013-01-13    1          0
# 2013-01-14    1          0
# 2013-01-15    1          0
share|improve this answer
    
+1 - for making me laugh: this is what came to my mind quickly. Yeah, I was just thinking that too. Awesome stuff. –  Simon O'Hanlon Sep 6 '13 at 16:30
    
@SimonO101, I'm sure some zoo/xts solution exists, but I might have to Google to find that.... –  Ananda Mahto Sep 6 '13 at 16:33
    
i used @AnandaMahto code and pasted it in my original question. I have added a few more lines of code to get the final output that i was looking for. Let me know if there is any better way to get that similar output....when i type dcast command i get below message "Using stage as value column: use value.var to override. Aggregation function missing: defaulting to length" but still i get the output that i am looking for –  user2543622 Sep 6 '13 at 21:10
    
@user2543622, those are just messages, not warnings or errors. Basically, dcast is telling you which data it used and how it used it. If the output is incorrect, then it tells you that you should specify value.var = <somevariable> and specify what aggregation function (eg, sum, mean) you want to use (where length is default). –  Ananda Mahto Sep 7 '13 at 3:41
    
@user2543622, But to answer your question if there are other ways to do this, of course there are. This is R ;) You can use table, for example, table(ddd[-1]), which will return a matrix of class "table". If you want the output as a data.frame, you can do as.data.frame.matrix(table(ddd[-1])). –  Ananda Mahto Sep 7 '13 at 3:54

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