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By laziness, I often use the abbreviation T for TRUE. Here I am observing a weird behaviour with dplyr, where it is not always accepted.

This example crashes (incompatible value for ``na.rm`` argument):

df = head(iris)
mutate(df, n = n_distinct(Species, na.rm=T))

But these examples work:

mutate(df, n = n_distinct(Species, na.rm=TRUE))
df$n = n_distinct(df$Species, na.rm=T)
mutate(df, m = mean(Sepal.Length, na.rm=T))

Of course, the easy fix here is to avoid abbreviation and type TRUE. But this doesn't work either:

b = TRUE
mutate(df, n = n_distinct(Species, na.rm=b))

Is there any understandable explanation for this behaviour? Non-standard evaluation somehow? Knowing what to avoid would help me spend less time debugging my code.

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    It is always good to say TRUE instead of T. – akrun Jun 18 '18 at 16:05
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    OK, but what about the last example? – Pierre Gramme Jun 18 '18 at 16:10
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    Probably you need mutate(df, n = n_distinct(Species, na.rm=!!b)) as it may look for objects inside the environment. the !! evaluation looks for objects outside the environment or similarly mutate(df, n = n_distinct(Species, na.rm=!!T)) because it is looking for an object named T – akrun Jun 18 '18 at 16:11
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It is always recommended to use the full name instead of abbreviation as T or F as this can lead to problems when an object exists of name T or F. However, we can't assign a reserve word like TRUE as name

TRUE <- 1:5

Error in TRUE <- 1:5 : invalid (do_set) left-hand side to assignment

Although a character string or backquotes can do this

`TRUE` <- 1:5 # but it is not recommended

One option to check for objects would be to use the bang-bang operator

out1 <- mutate(df, n = n_distinct(Species, na.rm=!!T))
out2 <- mutate(df, n = n_distinct(Species, na.rm=!!b))
out3 <- mutate(df, n = n_distinct(Species, na.rm=TRUE))
identical(out1, out3)
#[1] TRUE
identical(out1, out2)
#[1] TRUE
  • Thanks for the clarifications and for mentioning the bang-bang. What I still don't understand is why n_distincthas no access to T which is in the base environment. And in between, I noticed that f=n_distinct ; mutate(df, n = f(Species, na.rm=T)) does work... This is even more puzzling. – Pierre Gramme Jun 18 '18 at 17:48
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This was due to a bug, now fixed. Thanks to the Tidyverse team!

https://github.com/tidyverse/dplyr/issues/3686

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