% Generated by roxygen2: do not edit by hand % Please edit documentation in R/complete.R \name{vec_detect_complete} \alias{vec_detect_complete} \title{Complete} \usage{ vec_detect_complete(x) } \arguments{ \item{x}{A vector} } \value{ A logical vector with the same size as \code{x}. } \description{ \code{vec_detect_complete()} detects "complete" observations. An observation is considered complete if it is non-missing. For most vectors, this implies that \code{vec_detect_complete(x) == !vec_detect_missing(x)}. For data frames and matrices, a row is only considered complete if all elements of that row are non-missing. To compare, \code{!vec_detect_missing(x)} detects rows that are partially complete (they have at least one non-missing value). } \details{ A \link[=new_rcrd]{record} type vector is similar to a data frame, and is only considered complete if all fields are non-missing. } \examples{ x <- c(1, 2, NA, 4, NA) # For most vectors, this is identical to `!vec_detect_missing(x)` vec_detect_complete(x) !vec_detect_missing(x) df <- data_frame( x = x, y = c("a", "b", NA, "d", "e") ) # This returns `TRUE` where all elements of the row are non-missing. # Compare that with `!vec_detect_missing()`, which detects rows that have at # least one non-missing value. df2 <- df df2$all_non_missing <- vec_detect_complete(df) df2$any_non_missing <- !vec_detect_missing(df) df2 } \seealso{ \code{\link[stats:complete.cases]{stats::complete.cases()}} }