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So basically, I have this code that let me seperates my Time column into 50 hour intervals This is the code....I need help in writing the difference (diff- I put a blank space below) function...I explained this further below

Time<- seq(1, ncol(analyse), by=2)
o <- lapply(Time, function(i){  
xf1 <- IRanges(start=seq(0, max(analyse[[i]]), by=50), width=50)
xf2 <- IRanges(start=data[[i]], width=1)
t <- findOverlaps(xf1, xf2)
diff <-_____________________________________
d <- data.frame(Diff=tapply(data[[i+1]], queryHits(t), diff))
cbind(as.data.frame(xf1), d)})

This is my sample data

Time(hr)  Kilometres reached
1.7        2.0   
2.4       15.6
6.8       23.1
9.3       11.5
11.6      12.3
23.4      1.3
28.4      9.7
30.1      15.2
35.7      16.3
42.3      15.8
48.2      14.6
50.0      14.2  

So when my code has seperated my time into 50 hour intervals....I want it to grab the last value of the interval with the first value during that interval....e.g I want this sort of similar output

Time(hr)   Kilometres reached
50         12.2 (based from the sample data mentioned= 14.2-2.0)        
100   

Thanks guys

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2 Answers

How about this? (using 10 hr intervals like @Tyler, for example)

# assuming your data.frame is sorted by Time.hr.
require(IRanges)
ir1 <- IRanges(df$Time.hr., width=1)
sq  <- seq(10, max(df$Time.hr., by=10)+10, by=10)
ir2 <- IRanges(start = c(0, head(sq, -1)) + 1, end = sq)

olaps <- findOverlaps(ir2, ir1)
tapply(subjectHits(olaps), sq[queryHits(olaps)], 
        function(x) df$Kilometres[max(x)] - df$Kilometres[min(x)])
#  10   20   30   40   50 
#  9.5  0.0 13.9  0.0 -1.6 
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Here's a solution where I used 10 hour intervals instead (as you only have one interval to test on):

dat <- read.table(text="Time  Kilometres
1.7        2.0   
2.4       15.6
6.8       23.1
9.3       11.5
11.6      12.3
23.4      1.3
28.4      9.7
30.1      15.2
35.7      16.3
42.3      15.8
48.2      14.6
50.0      14.2", header=TRUE)


ints <- seq(0, 50, by=10)
dat$new <- cut(dat$Time, ints)
out <- sapply(split(dat$Kilometres, dat$new), function(x) diff(c(x[1], tail(x, 1))))
data.frame(Time = ints[-1], Kilometres =out, row.names=NULL)

Yields:

  Time Kilometres
1   10        9.5
2   20        0.0
3   30        8.4
4   40        1.1
5   50       -1.6
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