So I'm a huge data.table fan in R. I use it almost all the time but have come across a situation in which it won't work for me at all. I have a package (internal to my company) that uses R's double to store the value of an unsigned 64 bit integer whose bit sequence corresponds to some fancy encoding. This package works very nicely everywhere except data.table. I found that if I aggregate on a column of this data that I lose a large number of my unique values. My only guess here is that data.table is truncating bits in some kind of weird double optimization.

Can anyone confirm that this is the case? Is this simply a bug?

Below see a reproduction of the issue and comparison to the package I currently must use but want to avoid with a passion (dplyr).

temp <- structure(list(obscure_math = c(6.95476896592629e-309, 6.95476863436446e-309, 
6.95476743245288e-309, 6.95476942182375e-309, 6.95477149408563e-309, 
6.95477132830476e-309, 6.95477132830476e-309, 6.95477149408562e-309, 
6.95477174275702e-309, 6.95476880014538e-309, 6.95476896592647e-309, 
6.95476896592647e-309, 6.95476900737172e-309, 6.95476900737172e-309, 
6.95476946326899e-309, 6.95476958760468e-309, 6.95476958760468e-309, 
6.95477020928318e-309, 6.95477124541406e-309, 6.95476859291965e-309, 
6.95476875870014e-309, 6.95476904881676e-309, 6.95476904881676e-309, 
6.95476904881676e-309, 6.95476909026199e-309, 6.95476909026199e-309, 
6.95476909026199e-309, 6.95476909026199e-309, 6.9547691317072e-309, 
6.9547691317072e-309, 6.9547691317072e-309, 6.9547691317072e-309, 
6.9547691317072e-309, 6.9547691317072e-309, 6.9547691317072e-309, 
6.9547691317072e-309, 6.9547691317072e-309, 6.9547691317072e-309, 
6.9547691317072e-309, 6.9547691317072e-309, 6.95477211576406e-309, 
6.95476880014538e-309, 6.95476880014538e-309, 6.95476880014538e-309, 
6.95476892448104e-309, 6.95476880014538e-309, 6.95476892448105e-309, 
6.9547689659263e-309, 6.95476913170719e-309, 6.95476933893334e-309
)), .Names = "obscure_math", class = c("data.table", "data.frame"), row.names = c(NA, 

dt_collapsed <- temp[, .(count=.N), by=obscure_math]
nrow(dt_collapsed) == length(unique(temp$obscure_math))

dplyr_collapsed <- temp %>% group_by(obscure_math) %>% summarise(count=n())
nrow(dplyr_collapsed) == length(unique(temp$obscure_math))
  • 1
    I can replicate this on data.table 1.9.6. aggregate gives 26 rows as well, but data.table gives 21. Using by=as.character(obscure_math) also gives the correct 26 rows – thelatemail Jun 4 '16 at 0:34
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    I can replicate too using v1.9.7 – Steven Beaupré Jun 4 '16 at 0:36
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    @thelatemail I'm not sure that should matter though. The package shouldn't be changing the value of the user's data in such an operation. It's very opaque that the value of the by variable should be changed at all. My guess is this has something to do with optimizing for a radix sort but no one should expect a loss of precision (and in this case total unusability) from such an operation. – stanekam Jun 4 '16 at 0:41
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    We recommend using bit64::integer64 for 64-bit integers (instead of double). See ?setNumericRounding (and example) for why we round off last 2 bytes. There's an issue filed in relation to this (but w.r.t. ordering a data.table, not grouping), but we've not had time to get to how best to handle it yet, #1642. – Arun Jun 4 '16 at 1:01
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    @Arun Wow. That blows my mind that you are rounding off the last 16 bits of all doubles by default on these operations. That is a terrible design decision as far as I can tell. You're making awfully big assumptions about what constitutes "plenty of digits". Disappointing. Please add as an answer so I can accept and close this question out. – stanekam Jun 4 '16 at 2:14

Update: the default rounding feature has been removed in the current development version of data.table (v1.9.7). See installation instructions for devel version here.

This also means that you're responsible for understanding the limitations in representing floating point numbers and dealing with it.

data.table has been around for a long time. We used to deal with limitations in floating point representations by using a threshold (like base R does, e.g., all.equal). However it simply does not work, since it needs to be adaptive depending on how big the numbers compared are. This series of articles is an excellent read on this topic and other potential issues.

This being a recurring issue because a) people don't realise the limitations, or b) thresholding did not really help their issue, meant that people kept asking here or posting on the project page.

While we reimplemented data.table's order to fast radix ordering, we took the opportunity to provide an alternative way of fixing the issue, and providing a way out if it proves undesirable (exporting setNumericRounding). With #1642 issue, ordering probably doesn't need to have rounding of doubles (but it's not that simple, since order directly affects binary search based subsets).

The actual problem here is grouping on floating point numbers, even worse is such numbers as in your case. That is just a bad choice IMHO.

I can think of two ways forward:

  1. When grouping on columns that are really doubles (in R, 1 is double as opposed to 1L, and those cases don't have issues) we provide a warning that the last 2 bytes are rounded off, and that people should read ?setNumericRounding. And also suggest using bit64::integer64.

  2. Remove the functionality of allowing grouping operations on really double values or force them to fix the precision to certain digits before continuing. I can't think of a valid reason why one would want to group by floating point numbers really (would love to hear from people who do).

What is very unlikely to happen is going back to thresholding based checks for identifying which doubles should belong to the same group.

Just so that the Q remains answered, use setNumericRounding(0L).

  • 7
    Thumbs-up on explicit errors when grouping is done on doubles. – Dirk Eddelbuettel Jun 4 '16 at 10:39
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    @DirkEddelbuettel, thank you. I've filed #1728. I agree that's the best way forward. – Arun Jun 4 '16 at 10:57
  • Cheers, thanks! I would suggest warnings with suggestions for grouping by doubles. I can think of a reason a user would group on a double. It's in my question :) – stanekam Jun 5 '16 at 15:47
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    @iShouldUseAName, sorry that's not a valid reason. Your company's package should start using 64-bit integers (using bit64, or your own internal implementation) for that. Not misuse / play around with doubles. – Arun Jun 6 '16 at 11:02
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    @Arun it also appears from data.table source code that I may be able to just add integer64 as a class to my column and get around this while still using data.table. Thanks again for all the great work on data.table and my question! – stanekam Jun 6 '16 at 21:57

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