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R
has a very powerful array slicing ability that allows for some very slick data processing.
Suppose we have a data.frame
“d
“, and for every row where d$n_observations < 5
we wish to “NA
-out” some other columns (mark them as not yet reliably available). Using slicing techniques this can be done quite quickly as follows.
library("wrapr") d[d$n_observations < 5, qc(mean_cost, mean_revenue, mean_duration)] <- NA
(For “qc()
” please see R Tip: Use qc() For Fast Legible Quoting.)
The above notation is very convenient, compact, and powerful. We are adding this as operator to our rquery
query generator as assign_slice()
(and a related method for directly dealing with NA
/NULL
).
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