Stack Overflow is a community of 4.7 million programmers, just like you, helping each other.

Join them; it only takes a minute:

Sign up
Join the Stack Overflow community to:
  1. Ask programming questions
  2. Answer and help your peers
  3. Get recognized for your expertise

I have a lengthy data set of operations (op#) and times {tm#) associated with various widgets. Unfortunately the operations are in no specific order so a paint operation might occur in the first operation or the 80th. Each operation has the associated time it takes to complete that operation in the column to the right. I would like to organize the data so that each column is a unique operation name, and the values in the column are the associated time it takes to complete that operation.

# sample data frame
df = data.frame(widget = c("widget 1", "widget 2", "widget 3", "widget 4"),
            op1 = c("paint", "weld", "frame", "weld"),
            tm1 = c(20, 24, 14, 40),
            op2 = c("weld", "coat", "weld", "paint"),
            tm2 = c(10, 20, 50, 30))

>      part   op1 tm1   op2 tm2  
> 1 widget1 paint  20  weld  10
> 2 widget2  weld  24  coat  20
> 3 widget3 frame  14  weld  50
> 4 widget4  weld  40 paint  30  

I am trying to reorganize the data frame as...

>      part  paint  weld  coat  frame 
> 1 widget1     20    10  NULL   NULL
> 2 widget2   NULL    24    20   NULL
> 3 widget3   NULL    50  NULL     14
> 4 widget4     30    40  NULL   NULL

Any suggestions?

share|improve this question
up vote 1 down vote accepted


If `df1` is the dataset

names(df1)[grep("^op|^tm",names(df1))] <- gsub("([[:alpha:]]+)(\\d+)", "\\1_\\2",   names(df1)[grep("^op|^tm", names(df1))])
 df2 <- reshape(df1, idvar="widget", varying= grep("^op|^tm",names(df1)), sep="_", direction="long")
 dcast(df2, widget~op, value.var="tm")[,c(1,3:5,2)]
 #      widget paint weld coat frame
 #1 widget 1    20   10   NA    NA
 #2 widget 2    NA   24   20    NA
 #3 widget 3    NA   50   NA    14  ##looks like you have 50 instead of 60 as shown in the expected
 #4 widget 4    30   40   NA    NA
  • I used a combination of grep and gsub to modify the names of those columns (tm, op) so that there is separation _ between common characters and the corresponding numbers, makes it easy to work with reshape
  • After reshaping to longer format, reformat it back to a different wide format with dcast
share|improve this answer

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

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