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I am dealing with a dataframe in R that has only 2 columns but a very large number of rows. I want to divide my dataframe into subsets of say 'm' rows each and find the mean of the values in a column for each of these m rows for each division of the dataframe and then return these mean values for all the divisions containing 'm' rows each.

Say my data frame is y with columns 'a' and 'b' and i want 'm' as 1000 in this case.

I want to find mean(y[i:i+999,2])

I would want to take the value of i over all the rows and return the mean values for, in this case each block of 1000 values in column 'b'


I think I am doing it wrong. Any insights ?

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marked as duplicate by sgibb, Roland, mnel, Rachel Gallen, Jayendra May 13 '13 at 5:14

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3 Answers 3

up vote 2 down vote accepted

The zoo package has rollapply which is really useful for applying a rolling function like this. You can use sapply to loop over the columns of a data.frame and apply the rollapply function (sapply loops over the elements of a list and a dataframe is actually a collection of lists).

Hopefully this example makes sense...

## Sample data, two columns one million rows
df <- data.frame( A = runif(1e6) , B = runif(1e6) )

## Set desried 'chunk' size, i.e. the
## number of rows to find the mean of
## at once. Let's do 1e4, so we will 
## get 100 values back (1e6/1e4=1e2)
m = 1e4

## use sapply to loop across the columns, and
## apply rollapply to each column, which takes
## the mean of each set of 10,000 values
dfMean <- sapply( df , function(x) rollapply( x , width = m , by = m , align = "left" , FUN = mean ) )

#[1] 100

#            A         B
#[1,] 0.4966775 0.4992207
#[2,] 0.5013934 0.4986489
#[3,] 0.4994544 0.5009876
#[4,] 0.5020374 0.4979467
#[5,] 0.5049408 0.4999280
#[6,] 0.4969987 0.5018564
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I am actually getting an error in uploading the zoo package. dont know why. –  Anurag Mishra May 11 '13 at 16:23
What is the error? have you got it installed? Try install.packages( "zoo" ) ; require(zoo) –  Simon O'Hanlon May 11 '13 at 16:31
I was using a older version of R. zoo requires 3.0.0 . sorted out :) –  Anurag Mishra May 11 '13 at 21:31

Using data.table will be your fastest option, and I think the by= syntax for "grouping by" is very intuitive.


# Sample data:
dt<-data.table(A=runif(1e6L), B=runif(1e6L), key="B")

# Note that keying by column B will order the rows by B;
# You can leave out the key if you don't care about the order
# or have already set it

# Average every 1000 records in column B:

This took about a tenth of a second compared to over 48 seconds for the rollaply solution.

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If I understand correctly what you're asking, you need a Moving Average on your column b


for(i in 1:(nrow(y)-m)){


Moving Average

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If they want the moving average, they should use filter. If you want to use a loop for this, at least pre-allocate p. –  Roland May 11 '13 at 10:28
p<-NULL works fine and I'm not sure whether OP wants a MA or just a mean on 1k-size blocks. Moreover filter() is in the stats package so loading a package just for that... –  Romain May 11 '13 at 11:55
You're in the Second Circle of Hell. Package stats is loaded by default. –  Roland May 11 '13 at 12:52
for(i in 1:(nrow(y)-m)){p=c(p,mean(y[i:(i+999),2]))} @Romain This code gives error : In mean.default(y[i:(i + 999), 2]) : argument is not numeric or logical: returning NA –  Anurag Mishra May 11 '13 at 13:51
sorry, i got it. there was some other mistake in my code :) thanks a lot –  Anurag Mishra May 11 '13 at 14:03

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