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I have a weblog about 1 million rows ,and I want extract some Date,Time and Status to form a new data.frame.

       V1
       2013-08-27 16:00:01 117.79.149.2 GET 200 0 0
       2013-08-27 16:00:02 117.79.149.2 GET 404 0 0
       2013-08-27 16:00:03 117.79.149.2 GET 200 0 0
       2013-08-27 16:00:04 117.79.149.2 GET 404 0 0

to become

       Date_Time              Status
       2013-08-27 16:00:01    200
       2013-08-27 16:00:02    404
       2013-08-27 16:00:03    200
       2013-08-27 16:00:04    404

I know how to extract the elements I need by following code

       temp<-unlist(strsplit(x," "))
       Date_Time<-paste(temp[1],temp[2])
       Status<-temp[5]

But I didn't know how to execute it row by row to get a new data.frame without "for" loop, How can I use to sapply or lapply to fix it?

share|improve this question
up vote 3 down vote accepted

A solution based on regular expressions:

with(dat, data.frame(Date_Time = gsub("(.*\\:[0-9]+) .*", "\\1", V1),
                     Status = gsub(".*T ([0-9]+) .*", "\\1", V1)))

#             Date_Time Status
# 1 2013-08-27 16:00:01    200
# 2 2013-08-27 16:00:02    404
# 3 2013-08-27 16:00:03    200
# 4 2013-08-27 16:00:04    404

where dat is your data frame:

dat <- data.frame(V1 = readLines(
  textConnection("2013-08-27 16:00:01 117.79.149.2 GET 200 0 0
2013-08-27 16:00:02 117.79.149.2 GET 404 0 0
2013-08-27 16:00:03 117.79.149.2 GET 200 0 0
2013-08-27 16:00:04 117.79.149.2 GET 404 0 0")))
share|improve this answer
    
(+1) Nice. I really need to work on my regular expressions. – dayne Nov 18 '13 at 15:09
    
So poweful RegEx! – David Wang Nov 18 '13 at 23:07
    
@SvenHohenstein Many thanks! – David Wang Nov 19 '13 at 22:54

You can use sapply:

example <- c("asdf asdwer dsf cswe asd","asfdw ewr cswe sdf wers")  
split.example <- strsplit(example," ")
example.2 <- sapply(split.example,"[[",2)

This gives:

> example.2
[1] "asdwer" "ewr" 

Just to make this a complete answer, using dat provided by @Sven:

temp <- strsplit(as.character(dat$V1)," ")
new.df <- data.frame(Date_Time = paste(sapply(temp,"[[",1),
                                       sapply(temp,"[[",2)),
                     Status = sapply(temp,"[[",5))

> new.df
            Date_Time Status
1 2013-08-27 16:00:01    200
2 2013-08-27 16:00:02    404
3 2013-08-27 16:00:03    200
4 2013-08-27 16:00:04    404
share|improve this answer
    
,thanks ,I will try it out! – David Wang Nov 19 '13 at 23:17
    
,would you help me to solve this problem stackoverflow.com/questions/20093294/… THX in advance! – David Wang Nov 21 '13 at 2:44
mydf <- data.frame(V1=c("2013-08-27 16:00:01 117.79.149.2 GET 200 0 0",
   "2013-08-27 16:00:02 117.79.149.2 GET 404 0 0",
   "2013-08-27 16:00:03 117.79.149.2 GET 200 0 0",
   "2013-08-27 16:00:04 117.79.149.2 GET 404 0 0"))

# With fixed width fields
mydf[, c("Date_Time", "Status")] <- list(substring(mydf$V1, 1, 19),
                                         substring(mydf$V1, 38, 40))


# or based on the delimiter " " which is closer from your trial ...
strings <- unlist(strsplit(as.character(mydf$V1), " "))
mydf[, c("Date_Time", "Status")] <- list(paste(strings[seq(1, length.out=nrow(mydf), by=7)], strings[seq(2, length.out=nrow(mydf), by=7)]), 
                                         strings[seq(5, length.out=nrow(mydf), by=7)])
share|improve this answer
    
Your answer might be more helpful to others if you make your code a little more readable. – dayne Nov 18 '13 at 15:28
    
@SESman,Thanks a lot! I think this method works on simple structure like the example I illustrate.Actually , every weblog record is more much complex and more fileds ,"substring" is not appropriate for that – David Wang Nov 19 '13 at 23:16
    
Is there any more flexiable and efficient way instead of "substring"? – David Wang Nov 19 '13 at 23:23
    
You're welcome. I'm not familiar with your kind of data. substring and strsplit generally fit my needs. I would say that regular expressions are the most flexible tools but, beyond the basics, the syntax overheats my brain. – SESman Nov 19 '13 at 23:58
    
In the example you posted there is only one column delimiter (" ") so a read.table of the log file should be enough. Otherwise you can look to scanf and fscannf utilities that let you explain how to interpret each line, character after character . Unfortunately I don't know such a function in R (I use bash or matlab). – SESman Nov 20 '13 at 0:00

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