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45m
comment R: Add new columns to a data.table containing many variables
Have filed #782.
47m
comment R: Add new columns to a data.table containing many variables
@DavidArenburg, thanks for the comment. It's due to (I believe) an inconsistent behaviour in data.table. See #783.
4h
comment R: Add new columns to a data.table containing many variables
BrodieG, what's there to think about? Do you've a github account? Then just file an issue here: github.com/Rdatatable/data.table/issues on whatever you think could improve the functionality. We're pretty open to suggestions.
4h
comment R: Add new columns to a data.table containing many variables
I've already provided a solution under Akrun's answer. But thanks, we'll see if this can be improved.
4h
comment R: Add new columns to a data.table containing many variables
data.table already generates name automatically for aggregations. It expects names for :=. Is this what you mean as "weak area"? If so, why not file an issue for a FR? But that's not the problem here. The problem is using many aggregation functions within lapply(.).
4h
comment R: Add new columns to a data.table containing many variables
What variable specifications are you talking about? It's obviously easy to have 4 functions do 4 common tasks, and move everything else to do.
4h
comment R: Add new columns to a data.table containing many variables
Or d[, (cols) := unlist(lapply(.SD, function(x) list(scale(x)[,1L], sum(x))), rec=FALSE), by=Stock, .SDcols=vars] - we just have to get a list in j, where each element of the list will become a column.
17h
comment How to count unique values for each row in a table in R?
I've asked Hadley/Romain. 1000 groups doesn't seem a lot.
17h
comment How to count unique values for each row in a table in R?
Interesting (and confusing). I just did a benchmark on relatively bigger data out of curiosity.. and n_distinct() seems slower than length(unique())... Here's the gist.
18h
comment How to count unique values for each row in a table in R?
@DavidArenburg, I've simplified it a bit. But I'm not sure I follow the difficulty. Aggregate after unique, instead of aggregate with unique..
18h
comment How to count unique values for each row in a table in R?
Small improvement: I'd suggest unique(dt)[, .N, keyby=ID]. It avoids memory allocation for each group - doing unique(GROUP).
23h
comment Mutate/replace in one go
R's core "functional" programming style is very much debatable.
23h
revised Mutate/replace in one go
Minor changes. Changed to `dt`, removed `>` for easy copy/paste, but more importantly, removed the `df$` - not necessary within data.tables.
23h
comment Create nested data.tables by collapsing rows into new data.tables
Right, it'll be faster (and is shorter). data.table(.) is slower and as.data.table(.) is slightly faster, but makes a copy first. .SD on the other hand is available ready.
1d
comment Create nested data.tables by collapsing rows into new data.tables
You can use .SD instead. dt[, list(dt.yz=list(.SD)), by=x]
1d
comment Bug in data.table setnames()?
I think it's a duplicate of the question linked in your post. Please write back if it isn't (and why). And I'd be glad to reopen.
1d
comment How does one return a 'const' data.table from an R function?
NP. Just to clarify, locked binding just sets bit 14 of the gp field.
1d
comment How does one return a 'const' data.table from an R function?
I've added issue #778.
1d
comment How does one return a 'const' data.table from an R function?
On another note, I remember discussing with Matt several months ago about working with shallow copies (and have an attribute similar to reference counting in future R-versions) so that we can still use the sub-assign by reference feature wherever possible. That'd be a great way to go about. It definitely would make things much more easier with R's reference counting, I believe. But there's no time frame on that yet.
1d
comment How does one return a 'const' data.table from an R function?
I understand your problem (now). I'm just wondering if it's worth it (for your case). Because, you'd want to block the usage of := and set* functions basically. Meaning joins and update by reference is out of the picture. That'd reduce the capabilities to reshaping and aggregations...