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# How to run tapply() on multiple columns of data frame using R?

I have a data frame like the following:

``````a   b1  b2  b3  b4  b5  b6  b7  b8  b9
D   4   6   9   5   3   9   7   9   8
F   7   3   8   1   3   1   4   4   3
R   2   5   5   1   4   2   3   1   6
D   9   2   1   4   3   3   8   2   5
D   5   4   3   1   6   4   1   8   3
R   3   7   9   1   8   5   3   4   2
D   4   1   8   2   6   3   2   7   5
F   7   1   7   2   7   1   6   2   4
D   6   3   9   3   9   9   7   1   2
``````

The function `tapply(df[,2], INDEX = df\$a, sum)` works fine to produce a table that sums everything in df[,2] by df\$a, but when I try `tapply(df[,2:10], INDEX = df\$a, sum)` to get a similar table, except with a sum for each column (2, 3, 4,..., 10), I get an error message reading:

Error in tapply(df[, 2:10], INDEX = df\$a, sum) : arguments must have same length

Additionally, I would like the row names of the table to be the column names of `df[,2:10]`, such that row 1 is b1, row 2 is b2, and row 9 is b9.

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That's because tapply works on vectors, and transforms df[,2:10] to a vector. Next to that, sum will give you the total sum, not the sum per column. Use `aggregate()`, eg :

``````aggregate(df[,2:10],by=list(df\$a), sum)
``````

If you want a list returned, you could use by() for that. Make sure to specify colSums instead of sum, as by works on a splitted dataframe :

``````by(df[,2:10],df\$a,FUN=colSums)
``````
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Here is a way to apply `data.table` to this problem.

``````library(data.table)
DT <- data.table(df)
DT[, lapply(.SD, sum), by=a]
``````

And here is a `dplyr` approach

``````library(dplyr)
df %>% group_by(a) %>% summarise_each(funs(sum))
``````
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Another possibility is to combine `apply` and `tapply`.

``````apply(df[,-1], 2, function(x) tapply(x, df\$a, sum))
``````

Will produce the output (which is a matrix)

``````    b1  ...   b9
D   sD1 ...  sD9
F   sF1 ...  sF9
R   sR1 ...  sR9
``````

You can then use `as.data.frame()` to get a data frame as output.

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