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I'd like to use the much-praised idata.frame() function to speed up some large plyr functions, but it's not returning an immutable data frame in the form that I'm expecting.

All the examples I've seen suggest that I can just assign idata.frame(baseball) to a new variable and start working with it, but I'm getting unexpected results from the function:

> ibb <- idata.frame(baseball)
> str(ibb)
Classes 'idf', 'environment' <environment: 0x0d0f15d8> 
> ibb
<environment: 0x0d0f15d8>
attr(,"class")
[1] "idf"         "environment"

Thanks for any tips. I'm using R version 2.14.1 with plyr 1.7.1.

EDIT: in the example above, it's possible to run ddply(idata.frame(ibb), .(year), "nrow") successfully, so the immutable object is working as expected in that regard. I'm wondering why certain data.frame behavior isn't available, and if there's any documentation as to the difference.

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Can you be more specific about what you've tried to do with ibb that hasn't worked? The plyr functions (ddply, dlply, etc) should all work just fine I think. –  joran Mar 2 '12 at 15:44
1  
I don't know but have you tried data.table package? I'd be interested in any comparisons between idate.frame and data.table. –  Matt Dowle Mar 2 '12 at 16:23
    
@joran, I thought I could do anything that works on a data frame, like head(), which returns <environment: 0x158b42d8> attr(,"class") [1] "idf" "environment" –  MW Frost Mar 2 '12 at 19:47
    
@joran Cool, thanks. –  MW Frost Mar 2 '12 at 20:14
    
@joran If you add that comment as the answer, I'll accept it and keep this from becoming bounty-eligible if it doesn't need to be. –  MW Frost Mar 2 '12 at 20:16

1 Answer 1

up vote 3 down vote accepted

I wouldn't expect much beyond the plyr functions that Hadley wrote to handle idata.frame to work. I don't think Hadley wrote methods for anything beyond his own plyr functions, and even then his own documentation states that it is experimental.

If you want a more complete integration with data.frame, Matthew Dowle is right, use data.table.

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