| fndistinct | R Documentation | 
fndistinct is a generic function that (column-wise) computes the number of distinct values in x, (optionally) grouped by g. It is significantly faster than length(unique(x)). The TRA argument can further be used to transform x using its (grouped) distinct value count.
fndistinct(x, ...)
## Default S3 method:
fndistinct(x, g = NULL, TRA = NULL, na.rm = .op[["na.rm"]],
           use.g.names = TRUE, nthreads = .op[["nthreads"]], ...)
## S3 method for class 'matrix'
fndistinct(x, g = NULL, TRA = NULL, na.rm = .op[["na.rm"]],
           use.g.names = TRUE, drop = TRUE, nthreads = .op[["nthreads"]], ...)
## S3 method for class 'data.frame'
fndistinct(x, g = NULL, TRA = NULL, na.rm = .op[["na.rm"]],
           use.g.names = TRUE, drop = TRUE, nthreads = .op[["nthreads"]], ...)
## S3 method for class 'grouped_df'
fndistinct(x, TRA = NULL, na.rm = .op[["na.rm"]],
           use.g.names = FALSE, keep.group_vars = TRUE, nthreads = .op[["nthreads"]], ...)
| x | a vector, matrix, data frame or grouped data frame (class 'grouped_df'). | 
| g | a factor,  | 
| TRA | an integer or quoted operator indicating the transformation to perform:
0 - "na"     |     1 - "fill"     |     2 - "replace"     |     3 - "-"     |     4 - "-+"     |     5 - "/"     |     6 - "%"     |     7 - "+"     |     8 - "*"     |     9 - "%%"     |     10 - "-%%". See  | 
| na.rm | logical.  | 
| use.g.names | logical. Make group-names and add to the result as names (default method) or row-names (matrix and data frame methods). No row-names are generated for data.table's. | 
| nthreads | integer. The number of threads to utilize. Parallelism is across groups for grouped computations and at the column-level otherwise. | 
| drop | matrix and data.frame method: Logical.  | 
| keep.group_vars | grouped_df method: Logical.  | 
| ... | arguments to be passed to or from other methods. If  | 
fndistinct implements a pretty fast C-level hashing algorithm inspired by the kit package to find the number of distinct values.
If na.rm = TRUE (the default), missing values will be skipped yielding substantial performance gains in data with many missing values. If na.rm = FALSE, missing values will simply be treated as any other value and read into the hash-map. Thus with the former, a numeric vector c(1.25,NaN,3.56,NA) will have a distinct value count of 2, whereas the latter will return a distinct value count of 4.
fndistinct preserves all attributes of non-classed vectors / columns, and only the 'label' attribute (if available) of classed vectors / columns (i.e. dates or factors). When applied to data frames and matrices, the row-names are adjusted as necessary.
Integer. The number of distinct values in x, grouped by g, or (if TRA is used) x transformed by its distinct value count, grouped by g.
fnunique, fnobs, Fast Statistical Functions, Collapse Overview
## default vector method
fndistinct(airquality$Solar.R)                   # Simple distinct value count
fndistinct(airquality$Solar.R, airquality$Month) # Grouped distinct value count
## data.frame method
fndistinct(airquality)
fndistinct(airquality, airquality$Month)
fndistinct(wlddev)                               # Works with data of all types!
head(fndistinct(wlddev, wlddev$iso3c))
## matrix method
aqm <- qM(airquality)
fndistinct(aqm)                                  # Also works for character or logical matrices
fndistinct(aqm, airquality$Month)
## method for grouped data frames - created with dplyr::group_by or fgroup_by
airquality |> fgroup_by(Month) |> fndistinct()
wlddev |> fgroup_by(country) |>
             fselect(PCGDP,LIFEEX,GINI,ODA) |> fndistinct()
Add the following code to your website.
For more information on customizing the embed code, read Embedding Snippets.