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I have a large data (.tr file). I have read the file and renamed the columns in a data frame (df). I managed to go over all of the existing records and check certain conditions. I need to calculate how many unique value(from src.port column) existed within the whole file? The following MWE will illustrate my question.

# The df looks like:
     st time      from to protocol size flags    flowID src.port dst.port  seq   pktID
      + 0.100000    1   2      tcp   40 -------      1      5.0       2.1     0     0
      - 0.100000    5   0      ack   40 -------      1      5.1       2.3     0     0
      r 0.102032    1   2      tcp   40 -------      1      5.20      2.5     0     0
      r 0.102032    1   2      tcp   40 -------      1      5.11      2.6     0     0
      r 0.102032    1   2      tcp   40 -------      1      3.0       2.0     0     0
      + 0.121247   11   0      ack   40 -------      1      11.1      2.10    0     1
      r 0.132032    1   2      tcp   40 -------      1      3.0       2.0     0     0
      r 0.142065    1   2      tcp   40 -------      1      3.0       4.0     0     0

 # I have tried the following:
   unique<-0
  for (i in 1:nrow(df)){
    # feel free to suggest different way from the below line. 
    # I think using the name of column would be better 
    if(df[i,1]=="r" && df[i,3]== 1 && df[i,4]== 2 && df[i,5]== "tcp" ){
     # now this condition is my question
     # check if df[i,9] is new not presented before...Note 5.0 is different from 5.1 
     # check if df[i,10] is 2 and ignore any value after the dot (i.e 2.x ..X means any value)
     # so the condition would be:
      if ( df[i,9] is new not repeated && df[i,10] is 2.x)
          unique<-unique+1
     }

   } 

from the sample data the expected output:is unique=3

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1 Answer 1

up vote 0 down vote accepted

You can simply subset the relevant data and use unique. Here, I've chained together all of your conditions and extracted just the "scr.port" column and used unique on the result.

unique(mydf[mydf[, "st"] == "r" & 
              mydf[, "from"] == 1 & 
              mydf[, "protocol"] == "tcp" & 
              grepl("^2.*", mydf[, "dst.port"]), 
            "src.port"])
# [1] 5.20 5.11 3.00

Wrap that in length to get the count that you're looking for.

Alternatively, create a subset of your data and count the number of rows.

out <- mydf[mydf[, "st"] == "r" & 
              mydf[, "from"] == 1 & 
              mydf[, "protocol"] == "tcp" & 
              grepl("^2.*", mydf[, "dst.port"]), ]
nrow(out[!duplicated(out$src.port), ])
# [1] 3
share|improve this answer
    
Thank you, both are working,I like the second one. If I want to make the above code run for a given range of time like between 0.100000 and 0.132032. Other than subset(df, time<0.132032) any suggestions ! –  SimpleNEasy Oct 26 '13 at 3:47
    
@SimpleNEasy, you can add other conditions in the same form, for example, & mydf[, "time"] > 0.1 & mydf[, "time"] < 1.32032. –  Ananda Mahto Oct 26 '13 at 3:52
    
@SimpleNEasy, the grepl line can also be replaced by something like floor(mydf[, "dst.port"]) == 2. I offered the grepl solution in case that was a character column, and not a numeric column. –  Ananda Mahto Oct 26 '13 at 3:55
    
Thank you. Perfect –  SimpleNEasy Oct 26 '13 at 4:01
    
If I want to add more o/p information such printing how many times a certain src.port appears in the data. After calculating out, I've used out[duplicated(out$src.port), ],it prints the repeated row.However I want the o/p like: source 3.0 2. which means source 3 repeated 2 times. Any suggestion ! –  SimpleNEasy Oct 28 '13 at 6:44

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