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Co-developer of R's package.
Project homepage | Twitter: @arun_sriniv
Datacamp data.table online course


14h
comment Using setDT inside a function
@iShouldUseAName, it over-allocates, yes. Check this post (and the link there) for a slightly more detailed exposition.
2d
comment why is data.table so slow in this example in R
+1. Filed #838. I think we can avoid the deep copy here when there's no by.
Sep
28
comment get from data.table only numeric columns in R
Use .SDcols. There are quite a few Q on SO. You should be able to get there by searching a bit.
Sep
28
comment Read multiple gzip files into a single data.table using fread (and data connections)
This is #717. You can use system commands inside fread(), but have to unzip. But what you've asked would be very useful and should be implemented at some point.
Sep
27
comment Why does data.table recycle matrices into a single vector when data.frame does not?
Hm, it shouldn't. It should behave like as.data.frame(.) for consistency (unless there are strong arguments against). I guess this use case never really occurred before, so we dint have a test to catch it. Could you please file an issue [here](github.com/Rdatatable/data.table)? Thanks.
Sep
27
comment Finding an efficient way to count the number of overlaps between interval sets in two tables?
You shouldn't have to convert to numeric and back. If it doesn't work, then it should be a bug that has skipped the tests, and therefore it'd really help to fix it. And I don't follow your second part.
Sep
26
comment Finding an efficient way to count the number of overlaps between interval sets in two tables?
Sure, could you post a link to a gist or edit your question with some sample data?
Sep
26
comment Extracting data based on observation values
I think the data.table solution is: unique(setDT(dat)[stone_ny == "stone"], by="deltnr"). No idea why you subset in j, and use it again in i... and why .SD..
Sep
25
comment cut scoping link between key and data.frame for data.table
@eddi, we've already noted this down #710.
Sep
25
comment cut scoping link between key and data.frame for data.table
This is due to the way R3.1+ handles column subsets. It shallow copies wherever possible. I'd suggest that you first do setDT(key) followed by subkey <- key[, c("x", "y"), with=FALSE] - column subset in data.table deep copies exactly to avoid this issue. There's currently no way to tell how many references are there to a column that's been shallow copied...
Sep
25
comment values exist in data.table in multiple columns R
I've edited the use of nomatch argument in data.table. Is that what you're looking for?
Sep
24
comment how to spread or cast multiple values in r
@RichardScriven, in genomics, for example, some downstream analyses requires data in wide format.
Sep
24
comment Maintain NA's after aggregation R
I see. Then it can be simplified to !all(is.na(x)).
Sep
23
comment R: Compare and filtering of two data.frames based on conditions
Are you interested in the intermediate step as well or directly the final step?
Sep
23
comment How do I select all data.table columns that are in a second data.table
Great! You might need to use 1.9.3 version to make use of use.names=TRUE argument to bind by names. rbindlist doesn't match names by default.
Sep
23
comment How do I select all data.table columns that are in a second data.table
@user1617979, The above solution is inefficient because column subsets makes deep copies in data.table, and this is making copies even when not necessary - i.e., when the columns are already as you required. Question: What's your R and data.table version?
Sep
23
comment How to lag values by number of days in a data table
If you would provide a minimal reproducible code (one we can copy and paste and work with) and the corresponding output, I'd be willing to give this a try.. I think this is a case of rolling joins in data.table.
Sep
22
comment Why does inner_join behave differently for data.table?
Just to be clear, while @DavidArenburg's comment is (partly) true in that when x's key column is a factor and corresponding i's column is character, x[i] returns incorrect result (which is a bug in data.table), it's a red herring and has nothing to do with your example. Rather it's due to a bug in dplyr, that has since then been fixed.
Sep
22
comment Why does inner_join behave differently for data.table?
David's comment is not relevant to your problem. Please read the answer again.
Sep
20
comment Splitting Column of a data.table
Try string = dt[[1]]