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I made a small example for my data:

mth <- c(rep(1,10))  
day <- c(rep(10,5),rep(11,5))  
hr <- c(3,4,5,6,7,3,4,5,6,7)  
v <- c(3,4,5,4,3,3,4,5,4,3)  
A <- data.frame(cbind(mth,day,hr,v)) 

What I need to do is to get how many value < 4 on a daily basis, I tried to use the function rle, but was not able to get what I need. The output should look like:

mth <- c(rep(1,2))  
day <- c(10,11)  
v <- c(2,2)  #each 2 here is the sum of 1(3)+1(3) for Oct. and Nov.  
A <- data.frame(cbind(mth,day,v))  

Thank you for your help!

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4 Answers

up vote 2 down vote accepted

With ddply it's easy

library(plyr)
ddply(A, .(mth, day), function(x)  sum(x$v<4))
#    mth day V1
# 1   1  10  2
# 2   1  11  2

or you could use summarize

ddply(A, .(mth, day), summarize, less4 = sum(v <4))
#   mth day less4
# 1   1  10  2
# 2   1  11  2
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I like yours for the class of the result is data.frame, thanks –  Rosa Aug 17 '12 at 17:31
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A data.table solution

library(data.table)
A <- data.table(A)
A[, sum(v < 4), by = list(mth,day)]

##    mth day V1
## 1:   1  10 2
## 2:   1  11 2

# or 

A[v<4, .N, by = list(mth,day)]

##    mth day N
## 1:   1  10 2
## 2:   1  11 2

Benchmarking

# I create a mock dataset of a `year` 

library(rbenchmark)
daily <- seq(as.Date("2000/1/1"), by="day", length.out=365)

A <- data.table(mth = month(daily),day = mday(daily))
A <-  A[, list(hr = 1:24), by = list(mth,day)]
A[['v']] <- sample(1:10, nrow(A), T)

# set up the various options
ddply1 <- function() ddply(A, .(mth, day), function(x)  sum(x$v<4))
ddply2 <- function() ddply(A, .(mth, day), summarize, less4 = sum(v <4))
base_tapply <- function() with(A, tapply(v, paste(mth,day, sep="_"), function(x) sum(x<4) ) )
dt1 <- function() A[, sum(v < 4), by = list(mth,day)]
dt2 <- function() A[v < 4, .N, by = list(mth,day)]  
sqldf_ <- function() sqldf("SELECT A.mth,A.day,sum(A.v<4) as sum FROM A GROUP BY day")

benchmark(ddply1(), ddply2(),base_tapply(),dt1(),dt2(), sqldf_(),
          replications = 5, 
          columns = c("test", "replications", "elapsed", "relative","user.self"))

##            test replications elapsed relative user.self
## 3 base_tapply()            5    0.08        8      0.08
## 1      ddply1()            5    0.72       72      0.72
## 2      ddply2()            5    1.04      104      1.03
## 4         dt1()            5    0.01        1      0.02
## 5         dt2()            5    0.00        0      0.00
## 6      sqldf_()            5    0.21       21      0.20
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Thank you for displaying all the options, you guys are the best! –  Rosa Aug 17 '12 at 17:33
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Here's a base solution with tapply:

> with(A, tapply(v, paste(mth,day, sep="_"), function(x) sum(x<4) ) )
1_10 1_11 
   2    2 

(And it's going to be a lot faster than the plyr solution but most likely come in second to the data.table approach.)

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Thank you, too bad I could only choose one –  Rosa Aug 17 '12 at 17:34
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With sqldf

library(sqldf)

sqldf("SELECT A.mth,A.day,sum(A.v<4) as sum FROM A GROUP BY day")
#  mth day sum
#1   1  10   2
#2   1  11   2
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Thank you, too! –  Rosa Aug 17 '12 at 17:38
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