Hpw make lists that are easy to sort.

Collapse
This topic is closed.
X
X
 
  • Time
  • Show
Clear All
new posts
  • Anton Vredegoor

    Hpw make lists that are easy to sort.

    Python's sorting algorithm takes advantage of preexisting order in a
    sequence:

    #sort_test.py
    import random
    import time

    def test():
    n = 1000
    k = 2**28

    L = random.sample(x range(-k,k),n)
    R = random.sample(x range(-k,k),n)

    t = time.time()
    LR = [(i+j) for i in L for j in R]
    print time.time()-t
    LR.sort()
    print time.time()-t

    print

    t = time.time()
    #L.sort()
    R.sort()
    presorted_LR = [(i+j) for i in L for j in R]
    print time.time()-t
    presorted_LR.so rt()
    print time.time()-t

    if __name__=='__ma in__':
    test()

    On this -very slow- computer this prints:
    >d:\python25\py thonw -u "sort_test. py"
    1.10000014305
    8.96000003815

    1.10000014305
    5.49000000954
    >Exit code: 0
    Presorting the second sequence gains us more than three seconds. I
    wonder if there is a way to generate the combined items in such a way
    that sorting them is even faster? Is there some other sorting algorithm
    that can specifically take advantage of this way -or another way- of
    generating this list?

    The final sequence is len(L)*len(R) long but it is produced from only
    len(L)+len(R) different items, is it possible to exploit this fact? I'd
    also be interested in a more general solution that would work for
    summing the items of more than two lists in this way.

    A.
  • kyosohma@gmail.com

    #2
    Re: Hpw make lists that are easy to sort.

    On Mar 28, 12:12 pm, Anton Vredegoor <anton.vredeg.. .@gmail.com>
    wrote:
    Python's sorting algorithm takes advantage of preexisting order in a
    sequence:
    >
    #sort_test.py
    import random
    import time
    >
    def test():
    n = 1000
    k = 2**28
    >
    L = random.sample(x range(-k,k),n)
    R = random.sample(x range(-k,k),n)
    >
    t = time.time()
    LR = [(i+j) for i in L for j in R]
    print time.time()-t
    LR.sort()
    print time.time()-t
    >
    print
    >
    t = time.time()
    #L.sort()
    R.sort()
    presorted_LR = [(i+j) for i in L for j in R]
    print time.time()-t
    presorted_LR.so rt()
    print time.time()-t
    >
    if __name__=='__ma in__':
    test()
    >
    On this -very slow- computer this prints:
    >
    >d:\python25\py thonw -u "sort_test. py"
    1.10000014305
    8.96000003815
    >
    1.10000014305
    5.49000000954
    >Exit code: 0
    >
    Presorting the second sequence gains us more than three seconds. I
    wonder if there is a way to generate the combined items in such a way
    that sorting them is even faster? Is there some other sorting algorithm
    that can specifically take advantage of this way -or another way- of
    generating this list?
    >
    The final sequence is len(L)*len(R) long but it is produced from only
    len(L)+len(R) different items, is it possible to exploit this fact? I'd
    also be interested in a more general solution that would work for
    summing the items of more than two lists in this way.
    >
    A.
    I found a website that hopefully will point you in the right
    direction:



    And this one has an interesting profile of various sort methods with
    Python:



    Enjoy,

    Mike

    Comment

    • Paul Rubin

      #3
      Re: Hpw make lists that are easy to sort.

      Anton Vredegoor <anton.vredegoo r@gmail.comwrit es:
      Presorting the second sequence gains us more than three seconds. I
      wonder if there is a way to generate the combined items in such a way
      that sorting them is even faster? Is there some other sorting
      algorithm that can specifically take advantage of this way -or another
      way- of generating this list?
      Well there are various hacks one can think of, but is there an actual
      application you have in mind?
      The final sequence is len(L)*len(R) long but it is produced from only
      len(L)+len(R) different items, is it possible to exploit this fact?
      I'd also be interested in a more general solution that would work for
      summing the items of more than two lists in this way.
      If you really want the sum of several probability distriutions (in
      this case it's the sum of several copies of the uniform distribution),
      it's the convolution of the distributions being summed. You can do
      that with the fast fourier transform much more efficiently than
      grinding out that cartesian product. But I don't know if that's
      anything like what you're trying to do.

      Comment

      • Anton Vredegoor

        #4
        Re: Hpw make lists that are easy to sort.

        Paul Rubin wrote:
        Well there are various hacks one can think of, but is there an actual
        application you have in mind?
        Suppose both input lists are sorted. Then the product list is still not
        sorted but it's also not completely unsorted. How can I sort the
        product? I want to know if it is necessary to compute the complete
        product list first in order to sort it. Is it possible to generate the
        items in sorted order using only a small stack?

        Also, I have a sumfour script that is slow because of sorting. It would
        become competitive to the hashing solution if the sorting would be about
        ten times faster. If the items could be generated directly in order the
        script would also have only a very small memory footprint.
        If you really want the sum of several probability distriutions (in
        this case it's the sum of several copies of the uniform distribution),
        it's the convolution of the distributions being summed. You can do
        that with the fast fourier transform much more efficiently than
        grinding out that cartesian product. But I don't know if that's
        anything like what you're trying to do.
        I want the product, but sorted in less time. If Fourier transforms can
        help, I want them :-)

        A.

        Comment

        • Terry Reedy

          #5
          Re: Hpw make lists that are easy to sort.


          "Anton Vredegoor" <anton.vredegoo r@gmail.comwrot e in message
          news:euenlj$oll $1@news4.zwoll1 .ov.home.nl...
          | Paul Rubin wrote:
          |
          | Well there are various hacks one can think of, but is there an actual
          | application you have in mind?
          |
          | Suppose both input lists are sorted. Then the product list is still not
          | sorted but it's also not completely unsorted. How can I sort the
          | product? I want to know if it is necessary to compute the complete
          | product list first in order to sort it. Is it possible to generate the
          | items in sorted order using only a small stack?

          If you have lists A and B of lengths m and n, m < n, and catenate the m
          product lists A[0]*B, A[1]*B, ..., A[m-1]*B, then list.sort will definitely
          take advantage of the initial order in each of the m sublists and will be
          faster than sorting m*n scrambled items (which latter is O(m*n*log(m*n)) ).

          One could generate the items in order in less space by doing, for instance,
          an m-way merge, in which only the lowest member of each of the m sublists
          is present at any one time. But I don't know if this (which is
          O(m*n*log(m))) would be any faster (in some Python implementation) for any
          particular values of m and m.

          Terry Jan Reedy



          Comment

          • Anton Vredegoor

            #6
            Re: Hpw make lists that are easy to sort.

            Terry Reedy wrote:
            One could generate the items in order in less space by doing, for instance,
            an m-way merge, in which only the lowest member of each of the m sublists
            is present at any one time. But I don't know if this (which is
            O(m*n*log(m))) would be any faster (in some Python implementation) for any
            particular values of m and m.
            If hashing is O(n+m), it would mean that it would be faster.

            I'm not sure if I can agree with your analysis. All information to
            generate the product is already inside the two lists we begin with.
            Doesn't that make the product less complex than a random n*m matrix? Or
            is that what you are saying with O(m*n*log(m)) ?

            A.

            Comment

            • Terry Reedy

              #7
              Re: Hpw make lists that are easy to sort.


              "Anton Vredegoor" <anton.vredegoo r@gmail.comwrot e in message
              news:eueu79$mkd $1@news5.zwoll1 .ov.home.nl...
              | Terry Reedy wrote:
              |
              | One could generate the items in order in less space by doing, for
              instance,
              | an m-way merge, in which only the lowest member of each of the m
              sublists
              | is present at any one time. But I don't know if this (which is
              | O(m*n*log(m))) would be any faster (in some Python implementation) for
              any
              | particular values of m and m.
              |
              | If hashing is O(n+m), it would mean that it would be faster.
              |
              | I'm not sure if I can agree with your analysis. All information to
              | generate the product is already inside the two lists we begin with.
              | Doesn't that make the product less complex than a random n*m matrix? Or
              | is that what you are saying with O(m*n*log(m)) ?

              If I understand correctly, you want to multiiply each of m numbers by each
              of n numbers, giving m*n products. That is O(m*n) work. Inserting (and
              extracting) each of these is a constant size m priority cue takes, I
              believe, O(log(m)) work, for a total of m*n*log(m). That is faster than
              O(m*n*log(m*n)) for sorting m*n random numbers.

              I don't know how you would sort by hashing.

              Terry Jan Reedy



              Comment

              • Anton Vredegoor

                #8
                Re: Hpw make lists that are easy to sort.

                Terry Reedy wrote:
                If I understand correctly, you want to multiiply each of m numbers by each
                of n numbers, giving m*n products. That is O(m*n) work. Inserting (and
                extracting) each of these is a constant size m priority cue takes, I
                believe, O(log(m)) work, for a total of m*n*log(m). That is faster than
                O(m*n*log(m*n)) for sorting m*n random numbers.
                Probably, I'm not very good with big O computations. Please forget my
                earlier post and please also ignore the unfortunate subject line. I want
                the cartesian product of the lists but I want the sums of the items.
                Suppose the function to combine the items is

                def f(i,j):
                return i+j

                And the list we want to sort would be made like this:

                LR = [f(i,j) for i in L for j in R]

                That would be like in my original post. However if the function would
                have been:

                def g(i,j):
                return n*i+j

                The resulting cartesian product of the list would be sorted a lot
                quicker, especially if the two lists -L and R- we start with are sorted.
                (n is the length of both lists here)

                So if changing the way the items are combined influences sorting time,
                is there also a way to optimize the order of generating the items for
                later sorting.

                I mean optimized for a specific combining function, in this case
                function f.
                I don't know how you would sort by hashing.
                Me too. I also learned that hashing is O(1) for non-mathematicians.

                Probably I'm suffering from a mild outbreak of spring. I'm currently
                trying to stop myself from starting to smoke again or writing critical
                posts about PyPy, if it explains anything.

                A.

                Comment

                • Anton Vredegoor

                  #9
                  Re: Hpw make lists that are easy to sort.

                  Terry Reedy wrote:
                  If I understand correctly, you want to multiiply each of m numbers by each
                  of n numbers, giving m*n products. That is O(m*n) work. Inserting (and
                  extracting) each of these is a constant size m priority cue takes, I
                  believe, O(log(m)) work, for a total of m*n*log(m). That is faster than
                  O(m*n*log(m*n)) for sorting m*n random numbers.
                  According to this page:



                  You are very close. The only thing is whether the logarithmic factor can
                  be removed.

                  But there's more:

                  </quote>
                  If the input consists of n integers between - M and M, an algorithm of
                  Seidel based on fast Fourier transforms runs in O(n + M log M) time
                  [Eri99a]. The $ \Omega$(n2) lower bounds require exponentially large
                  integers.
                  <quote>

                  So maybe there is something at least for this specific case. I hope I'm
                  not irritating someone by posting my thought processes here, since
                  posting things sometimes seems to be the only way to find the links. I
                  wonder if it's the selective attention that makes them turn up after
                  posting or whether your talk about big O's has put me on the right track.

                  Thanks anyway. The problem is still open in general, but some hacks are
                  possible, as Paul Rubin said.

                  A.

                  Comment

                  • Paul Rubin

                    #10
                    Re: Hpw make lists that are easy to sort.

                    Anton Vredegoor <anton.vredegoo r@gmail.comwrit es:
                    I want the product, but sorted in less time. If Fourier transforms can
                    help, I want them :-)
                    Oh, I see what you mean. I don't see an obvious faster way to do it
                    and I don't have the feeling that one necessarily exists. As someone
                    mentioned, you could do an n-way merge, which at least avoids using
                    quadratic memory. Here's a version using Frederik Lundh's trick of
                    representing a lazy list as its head plus the generator for the tail:

                    from heapq import heapify, heappop, heappush
                    import random

                    def sortedsums(L,R) :
                    # yield elements of [(i+j) for i in L for j in R] in sorted order
                    # assumes L and R are themselves sorted
                    def lundh(x):
                    g = ((a+x) for a in L)
                    return (g.next(), g)
                    heap = [lundh(x) for x in R]

                    heapify (heap) # not sure this is needed

                    while heap:
                    z,zn = heappop(heap)
                    try: heappush(heap, (zn.next(), zn))
                    except StopIteration: pass
                    yield z

                    def test():
                    L = sorted(random.s ample(xrange(20 00),150))
                    R = sorted(random.s ample(xrange(20 00),150))

                    t = sortedsums(L,R)
                    t2 = sorted([(i+j) for i in L for j in R])
                    assert list(t) == t2

                    test()

                    Comment

                    • Anton Vredegoor

                      #11
                      Re: Hpw make lists that are easy to sort.

                      Paul Rubin wrote:
                      Oh, I see what you mean. I don't see an obvious faster way to do it
                      and I don't have the feeling that one necessarily exists. As someone
                      mentioned, you could do an n-way merge, which at least avoids using
                      quadratic memory. Here's a version using Frederik Lundh's trick of
                      representing a lazy list as its head plus the generator for the tail:
                      That's a beautiful trick! I was just exploring some idea about
                      traversing the matrix starting from the upper left and ending at the
                      lower right by forming some kind of wave like front line. It's currently
                      very slow but I hope it can be polished a bit.

                      Also I was trying to figure out if it could have any advantage over the
                      straight row by row merge, but now that these lazy rows have appeared
                      the field has changed a lot :-)

                      def typewriter(L,R) :
                      Z = [0] * len(R)
                      M = [(L[0]+R[0],0)]
                      while M:
                      val,k = min(M)
                      yield val
                      Z[k] += 1
                      M = []
                      for k,x in enumerate(Z):
                      if x < len(R):
                      M.append((L[k]+R[x],k))
                      if not x:
                      break

                      A.

                      Comment

                      Working...