Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I'm kinda new to R and just started using it to plot some graphs.

I have this code:

for(i in 1:nrow(df)) {

There must be a more clever way to do this, without first initializing times, isn't it? I'm not sure, but what I'm searching for is something like:

times <- for(i in 1:nrow(df)) yield df[i+1,4]-df[i,4]

(I know this is not valid code :)) I hope this question isn't asked already. I searched and didn't find anything concrete on "yield" and initializing of arrays.

As requested....

Sample data in df:

7926 08:00:27:ed:f3:e5 MESSAGEHANDLER START 1.319242e+12
7927 08:00:27:ed:f3:e5 MESSAGEHANDLER   END 1.319242e+12
7928 08:00:27:ed:f3:e5 MESSAGEHANDLER START 1.319242e+12
7929 08:00:27:ed:f3:e5 MESSAGEHANDLER   END 1.319242e+12
7930 08:00:27:ed:f3:e5 MESSAGEHANDLER START 1.319242e+12
7931 08:00:27:ed:f3:e5 MESSAGEHANDLER   END 1.319242e+12
7932 08:00:27:ed:f3:e5 MESSAGEHANDLER START 1.319242e+12
7933 08:00:27:ed:f3:e5 MESSAGEHANDLER   END 1.319242e+12
7934 08:00:27:ed:f3:e5 MESSAGEHANDLER START 1.319242e+12
7935 08:00:27:ed:f3:e5 MESSAGEHANDLER   END 1.319242e+12
7936 08:00:27:ed:f3:e5 MESSAGEHANDLER START 1.319242e+12
7937 08:00:27:ed:f3:e5 MESSAGEHANDLER   END 1.319242e+12
7938 08:00:27:ed:f3:e5 MESSAGEHANDLER START 1.319242e+12
7939 08:00:27:ed:f3:e5 MESSAGEHANDLER   END 1.319242e+12

After my loop is times is:

[7921] 508 500 497 501 466 502 505 500 488 501 500 501 490 501 478 501 501 501
[7939]  NA

Ok, to get more concrete, what I really want to do is this:

times1=integer(nrow(df));for(i in 1:nrow(df)) { if (df[i,3] == "START") times1[i]<-df[i+1,4]-df[i,4]}
times2=integer(nrow(df));for(i in 1:nrow(df)) { if (df[i,3] == "END") times2[i]<-df[i+1,4]-df[i,4]}

Then the output is something like for times1:

[7921]   0 500   0 501   0 502   0 500   0 501   0 501   0 501   0 501   0 501
[7939]   0

But I need:

[3960]   500   501   502   500   501   501   501   501   501

In words:

I'm parsing measured data from a csv file, which lands in df as seeing above. This is for "START" followed by "END"

The data in df describes that a packet was received when there is a "START" in df[,3] at a specific unixtime in miliseconds in df[,4]. Now I need to calculate the time that passed from receiving to sending (this is the time, my machine needs to analyze the RECEIVED PACKET and calculate a result to SEND it.) So END in df[,3] means packet was sent successfully at unixtime df[,4].

The other case is "END" followed by "START"

This is the time that passed in between "my packet was sent" and a new one "was received".

I add now a sample of a csv and my full code for reproduction:

#load csv in df!
df = read.csv("/tmp/measure.csv",FALSE)
absolute=integer(nrow(df));for(i in 1:nrow(df)) {time=df[i,4]-df[1,4];absolute[i]<-(time/1000)}
times=integer(nrow(df));for(i in 1:nrow(df)) {time=df[i+1,4]-df[i,4];times[i]<-time}

Here my measure.csv:


I hope this makes it more clear.

share|improve this question
You will make it much easier to understand what you want if you post sample data and expected results. –  Andrie Oct 23 '11 at 11:48
it is not about the result, they are just fine. Its all about what can the language. But I post some of my data. So my code works, but it looks awkward. –  evildead Oct 23 '11 at 12:01
@Andrie: I cannot use diff, because I need to do further checks kind of if (df[i,3] == START && df[i+1,3] == END) do this else do that –  evildead Oct 23 '11 at 12:11
I'm sorry, but I have no idea at all what you are trying to do. You seem to be doing some operation on a vector. Maybe it will help if you 1) describe in words what this operation is supposed to be doing, and 2) make your example minimally reproducible. –  Andrie Oct 23 '11 at 12:34
One caution: do messages arrive in sequential order? If packets overlap, you'll need to split by the packet ID. –  Iterator Oct 23 '11 at 13:28
show 2 more comments

4 Answers

up vote 3 down vote accepted

Hope I'm not too far off- why not avoid the loop altogether?:

    # generate some data sort of similar to yours:
    DF <- data.frame(pos4 = rep(c("START","END"),10),times=rep(0,20))
    DF$times[DF$pos4=="START"] <- 1:10
    DF$times[DF$pos4=="END"] <- DF$times[DF$pos4=="START"]+runif(10)
        pos4 times
    1  START  1.000000
    2    END  1.750459
    3  START  2.000000
    4    END  2.212599
    5  START  3.000000
    6    END  3.974809

I'm assuming the the START and END times in your dataset are in order..

    (times <- DF$times[DF$pos4=="END"] - DF$times[DF$pos4=="START"]) 
    [1] 0.7504590 0.2125986 0.9748094 0.3313644 0.3448410 0.8677022 0.9534317
    [8] 0.1279304 0.6500212 0.1798664

not sure about what kind of checks you need to do, since they weren't in the for loop you posted in the question.


to include from the comment below that appears to have gotten it right, this really was a question about indexing: where:

    DIFFS <- diff(DF$times)

gives you all the differences, you just wanted to split this into two objects, one for even indices, another for odd indices:

    times1 <- DIFFS[seq(from=1,to=length(DIFFS),by=2)]
    times2 <- DIFFS[seq(from=2,to=length(DIFFS),by=2)]

and unrelated, but also useful: you used 'absolute' and 'df' for the names of objects in your code, but these are also functions in R, so although it works, it's better form to give them names that aren't already taken. Glad you got what you were after!

share|improve this answer
this is nearly that what I#m looking for. Im testing currently. –  evildead Oct 23 '11 at 13:21
ok, this works fine for calculating difference from 1,2 3,4 5,6 but how do i calculate 2,3 and 4,5? i only get him to calculate 2,1 4,3 6,5 (I need the next START not the previous). Sorry is it understandable what I mean? :) –  evildead Oct 23 '11 at 13:33
To add to this evildead, R is very different than other languages you may be used to. The use of loops is rare. Loops are much slower in R than other methods you may have available to you. –  Tyler Rinker Oct 23 '11 at 13:34
I'm confident with not using loops at all. I read R is a kinda like scheme dialect, so this makes sense. Normally in "functional capable languages " you have something like a so called "for expression" with a yield (at least in scala and python). Why I used a real loop in the first place was because I need to address a "next" element from a relative position. Which is currently the problem with the posted expression, it takes the first one one it finds and then iterates over the collection. –  evildead Oct 23 '11 at 13:42
then do diff(), like Andrie says, for your first differences (END1-START1): diff(DF$times)[seq(from=1,to=length(DF$times),by=2)], and for your second kind of differences (START2-END1): diff(DF$times)[seq(from=2,to=length(DF$times),by=2)] –  tim riffe Oct 23 '11 at 13:59
show 6 more comments

I think you want to calculate the difference between successive elements in a vector. In that case you are looking for diff:

x <- sample(1:10, 5)

[1] 1 2 9 5 3

[1]  1  7 -4 -2
share|improve this answer
add comment

You can also do something like

lapply(seqence(nrow(df)-1),function(i,df) df[i+1,4]-df[i,4],df)

or also try sapply in place of lapply (otherwise, same syntax).


More specifically, I think

times <- sapply(seqence(nrow(df)-1),function(i,df) df[i+1,4]-df[i,4],df)


times <- unlist(lapply(seqence(nrow(df)-1),function(i,df) df[i+1,4]-df[i,4],df))

would do the trick. Regarding the reshaping, there is no identifying variable in df that would pair the start and end times together, so would have to do it manually assuming that the two to be paired occur in successive rows:

times <- apply(matrix(df[,4],ncol=2,byrow=TRUE),1,diff)
share|improve this answer
add comment

I'm on my way out the door but 2 comments: 1) add column headers to the data frame 2) I think the OP needs the reshape package to split his start end times into 2 different columns called start and then end. then use End-Start operation on a vector .

share|improve this answer
I like tim riffe's response better than my own. It's faster. –  Tyler Rinker Oct 23 '11 at 13:31
I agree- reshaping the dataframe would make it easier –  tim riffe Oct 23 '11 at 13:33
ha! we defer to one another –  tim riffe Oct 23 '11 at 13:33
add comment

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.