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I have a data frame DF.

Say DF is:

  A B
1 1 2
2 1 3
3 2 3
4 3 5
5 3 6 

Now I want to combine together the rows by the column A and to have the sum of the column B.

For example:

  A B
1 1 5
2 2 3
3 3 11

I am doing this currently using an SQL query with the sqldf function. But for some reason it is very slow. Is there any more convenient way to do that? I could do it manually too using a for loop but it is again slow. My SQL query is " Select A,Count(B) from DF group by A".

In general whenever I don't use vectorized operations and I use for loops the performance is extremely slow even for single procedures.

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4 Answers 4

up vote 28 down vote accepted

This is a very basic and very commonly asked question. In base, the option you're looking for is aggregate. Assuming your data.frame is called "mydf", you can use the following.

> aggregate(B ~ A, mydf, sum)
  A  B
1 1  5
2 2  3
3 3 11

I would also recommend looking into the "data.table" package.

> library(data.table)
> DT <- data.table(mydf)
> DT[, sum(B), by = A]
   A V1
1: 1  5
2: 2  3
3: 3 11
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1  
+1 but that "if data is large" qualifier is entirely unnecessary imo –  eddi Sep 14 '13 at 10:46
1  
@eddi, I would agree if we could use "data.table" syntax as is on data.frames, but if I have a small dataset already loaded and I just want a quick answer for a problem like this one, I am very happy to just use aggregate. Let's just say that I haven't fully converted to automatically having all my data read in as data.tables yet. :) –  Ananda Mahto Sep 14 '13 at 10:49

I would recommend having a look at the plyr package. It might not be as fast as data.table or other packages, but it is quite instructive, especially when starting with R and having to do some data manipulation.

> DF <- data.frame(A = c("1", "1", "2", "3", "3"), B = c(2, 3, 3, 5, 6))
> library(plyr)
> DF.sum <- ddply(DF, c("A"), summarize, B = sum(B))
> DF.sum
  A  B
1 1  5
2 2  3
3 3 11
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Using dplyr:

require(dplyr)    
df <- data.frame(A = c(1, 1, 2, 3, 3), B = c(2, 3, 3, 5, 6))
df %>% group_by(A) %>% summarise(B = sum(B))

## Source: local data frame [3 x 2]
## 
##   A  B
## 1 1  5
## 2 2  3
## 3 3 11

With sqldf:

library(sqldf)
sqldf('SELECT A, SUM(B) AS B FROM df GROUP BY A')
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require(reshape2)

T <- melt(df, id = c("A"))

T <- dcast(T, A ~ variable, sum)

I am not certain the exact advantages over aggregate.

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