# Calculating occurrences of unique numbers inside a data frame

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

-

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
``````
-
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