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bit64 (version 4.6.0-1)

ramsort.integer64: Low-level intger64 methods for in-RAM sorting and ordering

Description

Fast low-level methods for sorting and ordering. The ..sortorder methods do sorting and ordering at once, which requires more RAM than ordering but is (almost) as fast as as sorting.

Usage

# S3 method for integer64
shellsort(x, has.na = TRUE, na.last = FALSE, decreasing = FALSE, ...)

# S3 method for integer64 shellsortorder(x, i, has.na = TRUE, na.last = FALSE, decreasing = FALSE, ...)

# S3 method for integer64 shellorder(x, i, has.na = TRUE, na.last = FALSE, decreasing = FALSE, ...)

# S3 method for integer64 mergesort(x, has.na = TRUE, na.last = FALSE, decreasing = FALSE, ...)

# S3 method for integer64 mergeorder(x, i, has.na = TRUE, na.last = FALSE, decreasing = FALSE, ...)

# S3 method for integer64 mergesortorder(x, i, has.na = TRUE, na.last = FALSE, decreasing = FALSE, ...)

# S3 method for integer64 quicksort( x, has.na = TRUE, na.last = FALSE, decreasing = FALSE, restlevel = floor(1.5 * log2(length(x))), ... )

# S3 method for integer64 quicksortorder( x, i, has.na = TRUE, na.last = FALSE, decreasing = FALSE, restlevel = floor(1.5 * log2(length(x))), ... )

# S3 method for integer64 quickorder( x, i, has.na = TRUE, na.last = FALSE, decreasing = FALSE, restlevel = floor(1.5 * log2(length(x))), ... )

# S3 method for integer64 radixsort( x, has.na = TRUE, na.last = FALSE, decreasing = FALSE, radixbits = 8L, ... )

# S3 method for integer64 radixsortorder( x, i, has.na = TRUE, na.last = FALSE, decreasing = FALSE, radixbits = 8L, ... )

# S3 method for integer64 radixorder( x, i, has.na = TRUE, na.last = FALSE, decreasing = FALSE, radixbits = 8L, ... )

# S3 method for integer64 ramsort( x, has.na = TRUE, na.last = FALSE, decreasing = FALSE, stable = TRUE, optimize = c("time", "memory"), VERBOSE = FALSE, ... )

# S3 method for integer64 ramsortorder( x, i, has.na = TRUE, na.last = FALSE, decreasing = FALSE, stable = TRUE, optimize = c("time", "memory"), VERBOSE = FALSE, ... )

# S3 method for integer64 ramorder( x, i, has.na = TRUE, na.last = FALSE, decreasing = FALSE, stable = TRUE, optimize = c("time", "memory"), VERBOSE = FALSE, ... )

Value

These functions return the number of NAs found or assumed during sorting

Arguments

x

a vector to be sorted by ramsort.integer64() and ramsortorder.integer64(), i.e. the output of sort.integer64()

has.na

boolean scalar defining whether the input vector might contain NAs. If we know we don't have NAs, this may speed-up. Note that you risk a crash if there are unexpected NAs with has.na=FALSE

na.last

boolean scalar telling ramsort whether to sort NAs last or first. Note that 'boolean' means that there is no third option NA as in sort()

decreasing

boolean scalar telling ramsort whether to sort increasing or decreasing

...

further arguments, passed from generics, ignored in methods

i

integer positions to be modified by ramorder.integer64() and ramsortorder.integer64(), default is 1:n, in this case the output is similar to order.integer64()

restlevel

number of remaining recursionlevels before quicksort switches from recursing to shellsort

radixbits

size of radix in bits

stable

boolean scalar defining whether stable sorting is needed. Allowing non-stable may speed-up.

optimize

by default ramsort optimizes for 'time' which requires more RAM, set to 'memory' to minimize RAM requirements and sacrifice speed

VERBOSE

cat some info about chosen method

Details

See bit::ramsort()

See Also

bit::ramsort() for the generic, ramsort.default for the methods provided by package ff, sort.integer64() for the sort interface and sortcache() for caching the work of sorting

Examples

Run this code
  x <- as.integer64(sample(c(rep(NA, 9), 1:9), 32, TRUE))
  x
  message("ramsort example")
  s <- clone(x)
  ramsort(s)
  message("s has been changed in-place - whether or not ramsort uses an in-place algorithm")
  s
  message("ramorder example")
  s <- clone(x)
  o <- seq_along(s)
  ramorder(s, o)
  message("o has been changed in-place - s remains unchanged")
  s
  o
  s[o]
  message("ramsortorder example")
  o <- seq_along(s)
  ramsortorder(s, o)
  message("s and o have both been changed in-place - this is much faster")
  s
  o

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