Provided by: pdl_2.080-3_amd64 bug

NAME

       PDL::Ufunc - primitive ufunc operations for pdl

DESCRIPTION

       This module provides some primitive and useful functions defined using PDL::PP based on
       functionality of what are sometimes called ufuncs (for example NumPY and Mathematica talk
       about these).  It collects all the functions generally used to "reduce" or "accumulate"
       along a dimension. These all do their job across the first dimension but by using the
       slicing functions you can do it on any dimension.

       The PDL::Reduce module provides an alternative interface to many of the functions in this
       module.

SYNOPSIS

        use PDL::Ufunc;

FUNCTIONS

   prodover
         Signature: (a(n); int+ [o]b())

       Project via product to N-1 dimensions

       This function reduces the dimensionality of an ndarray by one by taking the product along
       the 1st dimension.

       By using xchg etc. it is possible to use any dimension.

        $y = prodover($x);

        $spectrum = prodover $image->transpose

       prodover processes bad values.  It will set the bad-value flag of all output ndarrays if
       the flag is set for any of the input ndarrays.

   cprodover
         Signature: (a(n); cdouble [o]b())

       Project via product to N-1 dimensions

       This function reduces the dimensionality of an ndarray by one by taking the product along
       the 1st dimension.

       By using xchg etc. it is possible to use any dimension.

        $y = cprodover($x);

        $spectrum = cprodover $image->transpose

       Unlike "prodover", the calculations are performed in complex double precision.

       cprodover processes bad values.  It will set the bad-value flag of all output ndarrays if
       the flag is set for any of the input ndarrays.

   dprodover
         Signature: (a(n); double [o]b())

       Project via product to N-1 dimensions

       This function reduces the dimensionality of an ndarray by one by taking the product along
       the 1st dimension.

       By using xchg etc. it is possible to use any dimension.

        $y = dprodover($x);

        $spectrum = dprodover $image->transpose

       Unlike "prodover", the calculations are performed in double precision.

       dprodover processes bad values.  It will set the bad-value flag of all output ndarrays if
       the flag is set for any of the input ndarrays.

   cumuprodover
         Signature: (a(n); int+ [o]b(n))

       Cumulative product

       This function calculates the cumulative product along the 1st dimension.

       By using xchg etc. it is possible to use any dimension.

       The sum is started so that the first element in the cumulative product is the first
       element of the parameter.

        $y = cumuprodover($x);

        $spectrum = cumuprodover $image->transpose

       cumuprodover processes bad values.  It will set the bad-value flag of all output ndarrays
       if the flag is set for any of the input ndarrays.

   dcumuprodover
         Signature: (a(n); double [o]b(n))

       Cumulative product

       This function calculates the cumulative product along the 1st dimension.

       By using xchg etc. it is possible to use any dimension.

       The sum is started so that the first element in the cumulative product is the first
       element of the parameter.

        $y = dcumuprodover($x);

        $spectrum = dcumuprodover $image->transpose

       Unlike "cumuprodover", the calculations are performed in double precision.

       dcumuprodover processes bad values.  It will set the bad-value flag of all output ndarrays
       if the flag is set for any of the input ndarrays.

   sumover
         Signature: (a(n); int+ [o]b())

       Project via sum to N-1 dimensions

       This function reduces the dimensionality of an ndarray by one by taking the sum along the
       1st dimension.

       By using xchg etc. it is possible to use any dimension.

        $y = sumover($x);

        $spectrum = sumover $image->transpose

       sumover processes bad values.  It will set the bad-value flag of all output ndarrays if
       the flag is set for any of the input ndarrays.

   csumover
         Signature: (a(n); cdouble [o]b())

       Project via sum to N-1 dimensions

       This function reduces the dimensionality of an ndarray by one by taking the sum along the
       1st dimension.

       By using xchg etc. it is possible to use any dimension.

        $y = csumover($x);

        $spectrum = csumover $image->transpose

       Unlike "sumover", the calculations are performed in complex double precision.

       csumover processes bad values.  It will set the bad-value flag of all output ndarrays if
       the flag is set for any of the input ndarrays.

   dsumover
         Signature: (a(n); double [o]b())

       Project via sum to N-1 dimensions

       This function reduces the dimensionality of an ndarray by one by taking the sum along the
       1st dimension.

       By using xchg etc. it is possible to use any dimension.

        $y = dsumover($x);

        $spectrum = dsumover $image->transpose

       Unlike "sumover", the calculations are performed in double precision.

       dsumover processes bad values.  It will set the bad-value flag of all output ndarrays if
       the flag is set for any of the input ndarrays.

   cumusumover
         Signature: (a(n); int+ [o]b(n))

       Cumulative sum

       This function calculates the cumulative sum along the 1st dimension.

       By using xchg etc. it is possible to use any dimension.

       The sum is started so that the first element in the cumulative sum is the first element of
       the parameter.

        $y = cumusumover($x);

        $spectrum = cumusumover $image->transpose

       cumusumover processes bad values.  It will set the bad-value flag of all output ndarrays
       if the flag is set for any of the input ndarrays.

   dcumusumover
         Signature: (a(n); double [o]b(n))

       Cumulative sum

       This function calculates the cumulative sum along the 1st dimension.

       By using xchg etc. it is possible to use any dimension.

       The sum is started so that the first element in the cumulative sum is the first element of
       the parameter.

        $y = dcumusumover($x);

        $spectrum = dcumusumover $image->transpose

       Unlike "cumusumover", the calculations are performed in double precision.

       dcumusumover processes bad values.  It will set the bad-value flag of all output ndarrays
       if the flag is set for any of the input ndarrays.

   andover
         Signature: (a(n); int+ [o]b())

       Project via and to N-1 dimensions

       This function reduces the dimensionality of an ndarray by one by taking the and along the
       1st dimension.

       By using xchg etc. it is possible to use any dimension.

        $y = andover($x);

        $spectrum = andover $image->transpose

       If "a()" contains only bad data (and its bad flag is set), "b()" is set bad. Otherwise
       "b()" will have its bad flag cleared, as it will not contain any bad values.

   bandover
         Signature: (a(n);  [o]b())

       Project via bitwise and to N-1 dimensions

       This function reduces the dimensionality of an ndarray by one by taking the bitwise and
       along the 1st dimension.

       By using xchg etc. it is possible to use any dimension.

        $y = bandover($x);

        $spectrum = bandover $image->transpose

       If "a()" contains only bad data (and its bad flag is set), "b()" is set bad. Otherwise
       "b()" will have its bad flag cleared, as it will not contain any bad values.

   borover
         Signature: (a(n);  [o]b())

       Project via bitwise or to N-1 dimensions

       This function reduces the dimensionality of an ndarray by one by taking the bitwise or
       along the 1st dimension.

       By using xchg etc. it is possible to use any dimension.

        $y = borover($x);

        $spectrum = borover $image->transpose

       If "a()" contains only bad data (and its bad flag is set), "b()" is set bad. Otherwise
       "b()" will have its bad flag cleared, as it will not contain any bad values.

   orover
         Signature: (a(n); int+ [o]b())

       Project via or to N-1 dimensions

       This function reduces the dimensionality of an ndarray by one by taking the or along the
       1st dimension.

       By using xchg etc. it is possible to use any dimension.

        $y = orover($x);

        $spectrum = orover $image->transpose

       If "a()" contains only bad data (and its bad flag is set), "b()" is set bad. Otherwise
       "b()" will have its bad flag cleared, as it will not contain any bad values.

   zcover
         Signature: (a(n); int+ [o]b())

       Project via == 0 to N-1 dimensions

       This function reduces the dimensionality of an ndarray by one by taking the == 0 along the
       1st dimension.

       By using xchg etc. it is possible to use any dimension.

        $y = zcover($x);

        $spectrum = zcover $image->transpose

       If "a()" contains only bad data (and its bad flag is set), "b()" is set bad. Otherwise
       "b()" will have its bad flag cleared, as it will not contain any bad values.

   intover
         Signature: (a(n); float+ [o]b())

       Project via integral to N-1 dimensions

       This function reduces the dimensionality of an ndarray by one by taking the integral along
       the 1st dimension.

       By using xchg etc. it is possible to use any dimension.

        $y = intover($x);

        $spectrum = intover $image->transpose

       Notes:

       "intover" uses a point spacing of one (i.e., delta-h==1).  You will need to scale the
       result to correct for the true point delta).

       For "n > 3", these are all "O(h^4)" (like Simpson's rule), but are integrals between the
       end points assuming the pdl gives values just at these centres: for such `functions',
       sumover is correct to O(h), but is the natural (and correct) choice for binned data, of
       course.

       intover ignores the bad-value flag of the input ndarrays.  It will set the bad-value flag
       of all output ndarrays if the flag is set for any of the input ndarrays.

   average
         Signature: (a(n); int+ [o]b())

       Project via average to N-1 dimensions

       This function reduces the dimensionality of an ndarray by one by taking the average along
       the 1st dimension.

       By using xchg etc. it is possible to use any dimension.

        $y = average($x);

        $spectrum = average $image->transpose

       average processes bad values.  It will set the bad-value flag of all output ndarrays if
       the flag is set for any of the input ndarrays.

   avgover
         Synonym for average.

   caverage
         Signature: (a(n); cdouble [o]b())

       Project via average to N-1 dimensions

       This function reduces the dimensionality of an ndarray by one by taking the average along
       the 1st dimension.

       By using xchg etc. it is possible to use any dimension.

        $y = caverage($x);

        $spectrum = caverage $image->transpose

       Unlike average, the calculation is performed in complex double precision.

       caverage processes bad values.  It will set the bad-value flag of all output ndarrays if
       the flag is set for any of the input ndarrays.

   cavgover
         Synonym for caverage.

   daverage
         Signature: (a(n); double [o]b())

       Project via average to N-1 dimensions

       This function reduces the dimensionality of an ndarray by one by taking the average along
       the 1st dimension.

       By using xchg etc. it is possible to use any dimension.

        $y = daverage($x);

        $spectrum = daverage $image->transpose

       Unlike average, the calculation is performed in double precision.

       daverage processes bad values.  It will set the bad-value flag of all output ndarrays if
       the flag is set for any of the input ndarrays.

   davgover
         Synonym for daverage.

   minimum
         Signature: (a(n); [o]c())

       Project via minimum to N-1 dimensions

       This function reduces the dimensionality of an ndarray by one by taking the minimum along
       the 1st dimension.

       By using xchg etc. it is possible to use any dimension.

        $y = minimum($x);

        $spectrum = minimum $image->transpose

       Output is set bad if no elements of the input are non-bad, otherwise the bad flag is
       cleared for the output ndarray.

       Note that "NaNs" are considered to be valid values and will "win" over non-"NaN"; see
       isfinite and badmask for ways of masking NaNs.

   minover
         Synonym for minimum.

   minimum_ind
         Signature: (a(n); indx [o] c())

       Like minimum but returns the index rather than the value

       Output is set bad if no elements of the input are non-bad, otherwise the bad flag is
       cleared for the output ndarray.

       Note that "NaNs" are considered to be valid values and will "win" over non-"NaN"; see
       isfinite and badmask for ways of masking NaNs.

   minover_ind
         Synonym for minimum_ind.

   minimum_n_ind
         Signature: (a(n); indx [o]c(m); PDL_Indx m_size => m)

       Returns the index of "m_size" minimum elements. As of 2.077, you can specify how many by
       either passing in an ndarray of the given size (DEPRECATED - will be converted to indx if
       needed and the input arg will be set to that), or just the size, or a null and the size.

         minimum_n_ind($pdl, $out = zeroes(5)); # DEPRECATED
         $out = minimum_n_ind($pdl, 5);
         minimum_n_ind($pdl, $out = null, 5);

       Output bad flag is cleared for the output ndarray if sufficient non-bad elements found,
       else remaining slots in "$c()" are set bad.

       Note that "NaNs" are considered to be valid values and will "win" over non-"NaN"; see
       isfinite and badmask for ways of masking NaNs.

   minover_n_ind
         Synonym for minimum_n_ind.

   maximum
         Signature: (a(n); [o]c())

       Project via maximum to N-1 dimensions

       This function reduces the dimensionality of an ndarray by one by taking the maximum along
       the 1st dimension.

       By using xchg etc. it is possible to use any dimension.

        $y = maximum($x);

        $spectrum = maximum $image->transpose

       Output is set bad if no elements of the input are non-bad, otherwise the bad flag is
       cleared for the output ndarray.

       Note that "NaNs" are considered to be valid values and will "win" over non-"NaN"; see
       isfinite and badmask for ways of masking NaNs.

   maxover
         Synonym for maximum.

   maximum_ind
         Signature: (a(n); indx [o] c())

       Like maximum but returns the index rather than the value

       Output is set bad if no elements of the input are non-bad, otherwise the bad flag is
       cleared for the output ndarray.

       Note that "NaNs" are considered to be valid values and will "win" over non-"NaN"; see
       isfinite and badmask for ways of masking NaNs.

   maxover_ind
         Synonym for maximum_ind.

   maximum_n_ind
         Signature: (a(n); indx [o]c(m); PDL_Indx m_size => m)

       Returns the index of "m_size" maximum elements. As of 2.077, you can specify how many by
       either passing in an ndarray of the given size (DEPRECATED - will be converted to indx if
       needed and the input arg will be set to that), or just the size, or a null and the size.

         maximum_n_ind($pdl, $out = zeroes(5)); # DEPRECATED
         $out = maximum_n_ind($pdl, 5);
         maximum_n_ind($pdl, $out = null, 5);

       Output bad flag is cleared for the output ndarray if sufficient non-bad elements found,
       else remaining slots in "$c()" are set bad.

       Note that "NaNs" are considered to be valid values and will "win" over non-"NaN"; see
       isfinite and badmask for ways of masking NaNs.

   maxover_n_ind
         Synonym for maximum_n_ind.

   minmaximum
         Signature: (a(n); [o]cmin(); [o] cmax(); indx [o]cmin_ind(); indx [o]cmax_ind())

       Find minimum and maximum and their indices for a given ndarray;

        pdl> $x=pdl [[-2,3,4],[1,0,3]]
        pdl> ($min, $max, $min_ind, $max_ind)=minmaximum($x)
        pdl> p $min, $max, $min_ind, $max_ind
        [-2 0] [4 3] [0 1] [2 2]

       See also "minmax", which clumps the ndarray together.

       If "a()" contains only bad data, then the output ndarrays will be set bad, along with
       their bad flag.  Otherwise they will have their bad flags cleared, since they will not
       contain any bad values.

   minmaxover
         Synonym for minmaximum.

   avg
       Return the average of all elements in an ndarray.

       See the documentation for "average" for more information.

        $x = avg($data);

       This routine handles bad values.

   sum
       Return the sum of all elements in an ndarray.

       See the documentation for "sumover" for more information.

        $x = sum($data);

       This routine handles bad values.

   prod
       Return the product of all elements in an ndarray.

       See the documentation for "prodover" for more information.

        $x = prod($data);

       This routine handles bad values.

   davg
       Return the average (in double precision) of all elements in an ndarray.

       See the documentation for "daverage" for more information.

        $x = davg($data);

       This routine handles bad values.

   dsum
       Return the sum (in double precision) of all elements in an ndarray.

       See the documentation for "dsumover" for more information.

        $x = dsum($data);

       This routine handles bad values.

   dprod
       Return the product (in double precision) of all elements in an ndarray.

       See the documentation for "dprodover" for more information.

        $x = dprod($data);

       This routine handles bad values.

   zcheck
       Return the check for zero of all elements in an ndarray.

       See the documentation for "zcover" for more information.

        $x = zcheck($data);

       This routine handles bad values.

   and
       Return the logical and of all elements in an ndarray.

       See the documentation for "andover" for more information.

        $x = and($data);

       This routine handles bad values.

   band
       Return the bitwise and of all elements in an ndarray.

       See the documentation for "bandover" for more information.

        $x = band($data);

       This routine handles bad values.

   or
       Return the logical or of all elements in an ndarray.

       See the documentation for "orover" for more information.

        $x = or($data);

       This routine handles bad values.

   bor
       Return the bitwise or of all elements in an ndarray.

       See the documentation for "borover" for more information.

        $x = bor($data);

       This routine handles bad values.

   min
       Return the minimum of all elements in an ndarray.

       See the documentation for "minimum" for more information.

        $x = min($data);

       This routine handles bad values.

   max
       Return the maximum of all elements in an ndarray.

       See the documentation for "maximum" for more information.

        $x = max($data);

       This routine handles bad values.

   median
       Return the median of all elements in an ndarray.

       See the documentation for "medover" for more information.

        $x = median($data);

       This routine handles bad values.

   mode
       Return the mode of all elements in an ndarray.

       See the documentation for "modeover" for more information.

        $x = mode($data);

       This routine handles bad values.

   oddmedian
       Return the oddmedian of all elements in an ndarray.

       See the documentation for "oddmedover" for more information.

        $x = oddmedian($data);

       This routine handles bad values.

   any
       Return true if any element in ndarray set

       Useful in conditional expressions:

        if (any $x>15) { print "some values are greater than 15\n" }

       See "or" for comments on what happens when all elements in the check are bad.

   all
       Return true if all elements in ndarray set

       Useful in conditional expressions:

        if (all $x>15) { print "all values are greater than 15\n" }

       See "and" for comments on what happens when all elements in the check are bad.

   minmax
       Returns a list with minimum and maximum values of an ndarray.

        ($mn, $mx) = minmax($pdl);

       This routine does not broadcast over the dimensions of $pdl; it returns the minimum and
       maximum values of the whole ndarray.  See "minmaximum" if this is not what is required.
       The two values are returned as Perl scalars, and therefore ignore whether the values are
       bad.

        pdl> $x = pdl [1,-2,3,5,0]
        pdl> ($min, $max) = minmax($x);
        pdl> p "$min $max\n";
        -2 5

   medover
         Signature: (a(n); [o]b(); [t]tmp(n))

       Project via median to N-1 dimensions

       This function reduces the dimensionality of an ndarray by one by taking the median along
       the 1st dimension.

       By using xchg etc. it is possible to use any dimension.

        $y = medover($x);

        $spectrum = medover $image->transpose

       medover processes bad values.  It will set the bad-value flag of all output ndarrays if
       the flag is set for any of the input ndarrays.

   oddmedover
         Signature: (a(n); [o]b(); [t]tmp(n))

       Project via oddmedian to N-1 dimensions

       This function reduces the dimensionality of an ndarray by one by taking the oddmedian
       along the 1st dimension.

       By using xchg etc. it is possible to use any dimension.

        $y = oddmedover($x);

        $spectrum = oddmedover $image->transpose

       The median is sometimes not a good choice as if the array has an even number of elements
       it lies half-way between the two middle values - thus it does not always correspond to a
       data value. The lower-odd median is just the lower of these two values and so it ALWAYS
       sits on an actual data value which is useful in some circumstances.

       oddmedover processes bad values.  It will set the bad-value flag of all output ndarrays if
       the flag is set for any of the input ndarrays.

   modeover
         Signature: (data(n); [o]out(); [t]sorted(n))

       Project via mode to N-1 dimensions

       This function reduces the dimensionality of an ndarray by one by taking the mode along the
       1st dimension.

       By using xchg etc. it is possible to use any dimension.

        $y = modeover($x);

        $spectrum = modeover $image->transpose

       The mode is the single element most frequently found in a discrete data set.

       It only makes sense for integer data types, since floating-point types are demoted to
       integer before the mode is calculated.

       "modeover" treats BAD the same as any other value:  if BAD is the most common element, the
       returned value is also BAD.

       modeover does not process bad values.  It will set the bad-value flag of all output
       ndarrays if the flag is set for any of the input ndarrays.

   pctover
         Signature: (a(n); p(); [o]b(); [t]tmp(n))

       Project via specified percentile to N-1 dimensions

       This function reduces the dimensionality of an ndarray by one by taking the specified
       percentile along the 1st dimension.

       By using xchg etc. it is possible to use any dimension.

        $y = pctover($x);

        $spectrum = pctover $image->transpose

       The specified percentile must be between 0.0 and 1.0.  When the specified percentile falls
       between data points, the result is interpolated.  Values outside the allowed range are
       clipped to 0.0 or 1.0 respectively.  The algorithm implemented here is based on the
       interpolation variant described at <http://en.wikipedia.org/wiki/Percentile> as used by
       Microsoft Excel and recommended by NIST.

       pctover processes bad values.  It will set the bad-value flag of all output ndarrays if
       the flag is set for any of the input ndarrays.

   oddpctover
         Signature: (a(n); p(); [o]b(); [t]tmp(n))

       Project via specified percentile to N-1 dimensions

       This function reduces the dimensionality of an ndarray by one by taking the specified
       percentile along the 1st dimension.

       By using xchg etc. it is possible to use any dimension.

        $y = oddpctover($x);

        $spectrum = oddpctover $image->transpose

       The specified percentile must be between 0.0 and 1.0.  When the specified percentile falls
       between two values, the nearest data value is the result.  The algorithm implemented is
       from the textbook version described first at <http://en.wikipedia.org/wiki/Percentile>.

       oddpctover processes bad values.  It will set the bad-value flag of all output ndarrays if
       the flag is set for any of the input ndarrays.

   pct
       Return the specified percentile of all elements in an ndarray. The specified percentile
       (p) must be between 0.0 and 1.0.  When the specified percentile falls between data points,
       the result is interpolated.

        $x = pct($data, $pct);

   oddpct
       Return the specified percentile of all elements in an ndarray. The specified percentile
       (p) must be between 0.0 and 1.0.  When the specified percentile falls between data points,
       the nearest data value is the result.

        $x = oddpct($data, $pct);

   qsort
         Signature: (a(n); [o]b(n))

       Quicksort a vector into ascending order.

        print qsort random(10);

       Bad values are moved to the end of the array:

        pdl> p $y
        [42 47 98 BAD 22 96 74 41 79 76 96 BAD 32 76 25 59 BAD 96 32 BAD]
        pdl> p qsort($y)
        [22 25 32 32 41 42 47 59 74 76 76 79 96 96 96 98 BAD BAD BAD BAD]

   qsorti
         Signature: (a(n); indx [o]indx(n))

       Quicksort a vector and return index of elements in ascending order.

        $ix = qsorti $x;
        print $x->index($ix); # Sorted list

       Bad elements are moved to the end of the array:

        pdl> p $y
        [42 47 98 BAD 22 96 74 41 79 76 96 BAD 32 76 25 59 BAD 96 32 BAD]
        pdl> p $y->index( qsorti($y) )
        [22 25 32 32 41 42 47 59 74 76 76 79 96 96 96 98 BAD BAD BAD BAD]

   qsortvec
         Signature: (a(n,m); [o]b(n,m))

       Sort a list of vectors lexicographically.

       The 0th dimension of the source ndarray is dimension in the vector; the 1st dimension is
       list order.  Higher dimensions are broadcasted over.

        print qsortvec pdl([[1,2],[0,500],[2,3],[4,2],[3,4],[3,5]]);
        [
         [  0 500]
         [  1   2]
         [  2   3]
         [  3   4]
         [  3   5]
         [  4   2]
        ]

       Vectors with bad components are moved to the end of the array:

         pdl> p $p = pdl("[0 0] [-100 0] [BAD 0] [100 0]")->qsortvec

         [
          [-100    0]
          [   0    0]
          [ 100    0]
          [ BAD    0]
         ]

   qsortveci
         Signature: (a(n,m); indx [o]indx(m))

       Sort a list of vectors lexicographically, returning the indices of the sorted vectors
       rather than the sorted list itself.

       As with "qsortvec", the input PDL should be an NxM array containing M separate
       N-dimensional vectors.  The return value is an integer M-PDL containing the M-indices of
       original array rows, in sorted order.

       As with "qsortvec", the zeroth element of the vectors runs slowest in the sorted list.

       Additional dimensions are broadcasted over: each plane is sorted separately, so qsortveci
       may be thought of as a collapse operator of sorts (groan).

       Vectors with bad components are moved to the end of the array as for "qsortvec".

AUTHOR

       Copyright (C) Tuomas J. Lukka 1997 (lukka@husc.harvard.edu).  Contributions by Christian
       Soeller (c.soeller@auckland.ac.nz) and Karl Glazebrook (kgb@aaoepp.aao.gov.au).  All
       rights reserved. There is no warranty. You are allowed to redistribute this software /
       documentation under certain conditions. For details, see the file COPYING in the PDL
       distribution. If this file is separated from the PDL distribution, the copyright notice
       should be included in the file.