Aggregate data in one column based on values in another column

Here is a solution using the plyr package

plyr::ddply(df, .(A), summarize, num = length(A), totalB = sum(B))

I'd use aggregate to get the two aggregates and then merge them into a single data frame:

> df
    A B C
1 1.2 4 8
2 2.3 4 9
3 2.3 6 0
4 1.2 3 3
5 3.4 2 1
6 1.2 5 1

> num <- aggregate(B~A,df,length)
> names(num)[2] <- 'num'

> totalB <- aggregate(B~A,df,sum)
> names(totalB)[2] <- 'totalB'

> merge(num,totalB)
    A num totalB
1 1.2   3     12
2 2.3   2     10
3 3.4   1      2

In dplyr:

library(tidyverse)
A <- c(1.2, 2.3, 2.3, 1.2, 3.4, 1.2)
B <- c(4, 4, 6, 3, 2, 5)
C <- c(8, 9, 0, 3, 1, 1)

df <- data_frame(A, B, C)

df %>%
    group_by(A) %>% 
    summarise(num = n(),
              totalB = sum(B))

Here is a solution using data.table for memory and time efficiency

library(data.table)
DT <- as.data.table(df)
DT[, list(totalB = sum(B), num = .N), by = A]

To subset only rows where C==1 (as per the comment to @aix answer)

DT[C==1, list(totalB = sum(B), num = .N), by = A]