# how to realize countifs function (excel) in R

I have a dataset containing 100000 rows of data. I tried to do some `countif` operations in Excel, but it was prohibitively slow. So I am wondering if this kind of operation can be done in R? Basically, I want to do a count based on multiple conditions. For example, I can count on both occupation and sex

``````row sex occupation
1   M    Student
2   F    Analyst
2   M    Analyst
``````
• What would be your required output? `table` or `aggregate` or a similar function is probably what you want. – thelatemail Apr 10 '14 at 23:58
• you could use a pivot in Excel. – flodel Apr 11 '14 at 3:12

Easy peasy. Your data frame will look like this:

``````df <- data.frame(sex=c('M','F','M'),
occupation=c('Student','Analyst','Analyst'))
``````

You can then do the equivalent of a `COUNTIF` by first specifying the `IF` part, like so:

``````df\$sex == 'M'
``````

This will give you a boolean vector, i.e. a vector of `TRUE` and `FALSE`. What you want is to count the observations for which the condition is `TRUE`. Since in R `TRUE` and `FALSE` double as 1 and 0 you can simply `sum()` over the boolean vector. The equivalent of `COUNTIF(sex='M')` is therefore

``````sum(df\$sex == 'M')
``````

Should there be rows in which the `sex` is not specified the above will give back `NA`. In that case, if you just want to ignore the missing observations use

``````sum(df\$sex == 'M', na.rm=TRUE)
``````

Here an example with 100000 rows (occupations are set here from A to Z):

``````> a = data.frame(sex=sample(c("M", "F"), 100000, replace=T), occupation=sample(LETTERS, 100000, replace=T))
> sum(a\$sex == "M" & a\$occupation=="A")
[1] 1882
``````

returns the number of males with occupation "A".

EDIT

As I understand from your comment, you want the counts of all possible combinations of sex and occupation. So first create a dataframe with all combinations:

``````combns = expand.grid(c("M", "F"), LETTERS)
``````

and loop with `apply` to sum for your criteria and append the results to `combns`:

``````combns = cbind (combns, apply(combns, 1, function(x)sum(a\$sex==x[1] & a\$occupation==x[2])))
colnames(combns) = c("sex", "occupation", "count")
``````

The first rows of your result look as follows:

``````  sex occupation count
1   M          A  1882
2   F          A  1869
3   M          B  1866
4   F          B  1904
5   M          C  1979
6   F          C  1910
``````

Does this solve your problem?

OR:

Much easier solution suggested by thelatemai:

``````table(a\$sex, a\$occupation)

A    B    C    D    E    F    G    H    I    J    K    L    M    N    O
F 1869 1904 1910 1907 1894 1940 1964 1907 1918 1892 1962 1933 1886 1960 1972
M 1882 1866 1979 1904 1895 1845 1946 1905 1999 1994 1933 1950 1876 1856 1911

P    Q    R    S    T    U    V    W    X    Y    Z
F 1908 1907 1883 1888 1943 1922 2016 1962 1885 1898 1889
M 1928 1938 1916 1927 1972 1965 1946 1903 1965 1974 1906
``````

Given a dataset

``````df <- data.frame( sex = c('M', 'M', 'F', 'F', 'M'),
occupation = c('analyst', 'dentist', 'dentist', 'analyst', 'cook') )
``````

you can subset rows

``````df[df\$sex == 'M',] # To get all males
df[df\$occupation == 'analyst',] # All analysts
``````

etc.

If you want to get number of rows, just call the function `nrow` such as

``````nrow(df[df\$sex == 'M',])
``````