# finding max number of consecutive 1 in a string? [duplicate]

Is there any easy way to get maximum number of consecutive 1's in a string like: `"000010011100011111001111111100"` ?

I, definitely, can do it with loops but I'd like to avoid that since my actual dataset has about 500,000 records.

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## marked as duplicate by Brad M, Thomas, eddi, GSee, mnelAug 1 '13 at 23:46

What have you tried (and other questions from the Stack Overflow question checklist)? –  Joshua Ulrich Aug 1 '13 at 21:01
I only tried using loops. I have two loops one as a counter on row number that starts from the first row of the dataset and goes all the way to the end. Another loop as a counter of number of consecutive 1's. But it's very inefficient and takes a long time to run. –  Sam Aug 1 '13 at 21:04
@Thomas, you are right. I searched but I didn't find anything. I should've used better keywords to search. –  Sam Aug 1 '13 at 21:13

Use `rle`:

``````x <- "000010011100011111001111111100"
rr <- rle(strsplit(x,"")[[1]])

Run Length Encoding
lengths: int [1:9] 4 1 2 3 3 5 2 8 2
values : chr [1:9] "0" "1" "0" "1" "0" "1" "0" "1" "0"
``````

Note: I removed the `as.numeric` part as it's not necessary. From here, you can get the maximum count of consecutive 1's with:

``````max(rr\$lengths[which(rr\$values == "1")])
# [1] 8
``````
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Thanks @Thomas. This solved my issue. –  Sam Aug 1 '13 at 21:12
@Arun - I think that should be a separate answer rather than an edit. If you do so, I can probably delete mine then. –  thelatemail Aug 1 '13 at 23:00
@thelatemail, Yes, I realise that now. posted separately. Thanks. (Thomas, sorry for the mess). –  Arun Aug 1 '13 at 23:02

Using `rle` is slower and a bit more clumsy than using regular expressions. In Thomas' answer, you're still left to extract the max length when the values equal 1.

``````# make some data
set.seed(21)
N <- 1e5
s <- sample(c("0","1"), N*30, TRUE)
s <- split(s, rep(1:N, each=30))
s <- sapply(s, paste, collapse="")
r <- function(S) {
sapply(S, function(x) {
rl <- rle(as.numeric(strsplit(x,"")[[1]]))
max(rl\$lengths[rl\$values==1])
})
}
# using regular expressions
g <- function(S) sapply(gregexpr("1*",S),
function(x) max(attr(x,'match.length')))
# timing
system.time(R <- r(s))
#    user  system elapsed
#    6.41    0.00    6.41
system.time(G <- g(s))
#    user  system elapsed
#    1.47    0.00    1.46
all.equal(R,G)
# [1] "names for target but not for current"
``````
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Thanks @Joshua for your useful answer. –  Sam Aug 2 '13 at 5:52

An alternative much faster way without using `rle` would be to split with consecutive 0's as follows:

``````# following thelatemail's comment, changed '0+' to '[^1]+'
strsplit(x, "[^1]+", perl=TRUE)
``````

Then you can loop over and get maximum characters for each element of your list. This'll be faster than `rle` solution as well. and is also faster than the `gregexpr` solution from @Joshua. Some benchmarking...

``````zz <- function(x) {
vapply(strsplit(x, "[^1]+", perl=TRUE), function(x) max(nchar(x)), 0L)
}
``````

I just realised that @Joshua's function could also be tweaked by adding `perl=TRUE` and using `vapply`. So, I'll compare that as well.

``````g2 <- function(S) vapply(gregexpr("1*",S, perl=TRUE),
function(x) max(attr(x,'match.length')), 0L)

require(microbenchmark)
microbenchmark(t1 <- zz(unname(s)), t2 <- g(unname(s)), t3 <- g2(unname(s)), times=50)
Unit: seconds
expr      min       lq   median       uq      max neval
t1 <- zz(unname(s)) 1.187197 1.285065 1.344371 1.497564 1.565481    50
t2 <- g(unname(s)) 2.154038 2.307953 2.357789 2.417259 2.596787    50
t3 <- g2(unname(s)) 1.562661 1.854143 1.914597 1.954795 2.203543    50

identical(t1, t2) # [1] TRUE
identical(t1, t3) # [1] TRUE
``````
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Nice. To generalise in the case where there are characters other than `0` or `1` would be to replace `"0+"` with `"[^1]"` in the `strsplit` call. Marginally slower, but probably safer. –  thelatemail Aug 1 '13 at 23:06
Yes indeed, you're right. But I don't think it'll affect the performance. –  Arun Aug 1 '13 at 23:08
about 50% slower in my testing. From 0.5s to 0.75s. –  thelatemail Aug 1 '13 at 23:10
Just did the benchmark again. It takes 1.1 seconds with "0+" and 1.22 with "[^1]+". –  Arun Aug 1 '13 at 23:34
Thank so much @Arun for answering the question. –  Sam Aug 2 '13 at 5:53