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I have a large data frame of 5 million rows, with three columns. I would like to transform it to a matrix which has as its rows USER_ID, ID as columns, and value as CNT. This could be done with melt and cast or

xtabs(CNT ~ USER_ID + ID, data = foo)

however the object created is to large and I get a following error 'dim' specifies too large an array

USER_ID ID CNT
1      1.813e+14 21   1
2      1.559e+14 28   1
6      1.592e+14 71   2

I'm trying to use data.table as is seams to handle large data much better then data.frame, but I can't figure out how to use data.table to create a contingency table I want.
Does any one have any idea how to get this working? I'm also thinking of creating and empty matrix with appropriate dimensions and fill it with appropriate indexes.

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1  
Hello, welcome to SO. It is not clear what's your starting point and what is your ending point. The small table you posted is which? Also, please try pasting the output of dput(head(<yourdata>)) –  Ricardo Saporta May 13 '13 at 17:03

2 Answers 2

Try this using the built in data.frame CO2 :

> xtabs(uptake ~ Treatment + Type, CO2)
            Type
Treatment    Quebec Mississippi
  nonchilled  742.0       545.0
  chilled     666.8       332.1

or similarly using tapply:

> with(CO2, tapply(uptake, list(Treatment, Type), sum))
           Quebec Mississippi
nonchilled  742.0       545.0
chilled     666.8       332.1

and now compare to data.table:

> library(data.table)
>
> DT <- data.table(CO2)
> DT[, as.list(tapply(uptake, Type, sum)), by = Treatment]
    Treatment Quebec Mississippi
1: nonchilled  742.0       545.0
2:    chilled  666.8       332.1

Cautionary Note: If the same levels of Type do not appear in every Treatment group then this would not be sufficient. In that case it would be necessary to convert Type to be a factor in the data table (as it already is in CO2).

ADDED:

Its actually possible to get rid of tapply and have a pure data table approach like this:

> DT[, setNames(as.list(.SD[,list(uptake = sum(uptake)), by = Type][, uptake]), 
+   levels(Type)), by = Treatment]
    Treatment Quebec Mississippi
1: nonchilled  742.0       545.0
2:    chilled  666.8       332.1

The cautionary note above applies here too.

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Here's another approach (also using CO2 dataset):

dt = data.table(CO2)
dt[, sum(uptake), by = list(Treatment, Type)][,
     setNames(as.list(V1), paste(Type)), by = Treatment]
#    Treatment Quebec Mississippi
#1: nonchilled  742.0       545.0
#2:    chilled  666.8       332.1
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