I have two lists of objects. Each list is already sorted by a property of the object that is of the datetime type. I would like to combine the two lists into one sorted list. Is the best way just to do a sort or is there a smarter way to do this in Python?
People seem to be over complicating this.. Just combine the two lists, then sort them:
>>> l1 = [1, 3, 4, 7] >>> l2 = [0, 2, 5, 6, 8, 9] >>> l1.extend(l2) >>> sorted(l1) [0, 1, 2, 3, 4, 5, 6, 7, 8, 9]
..or shorter (and without modifying
>>> sorted(l1 + l2) [0, 1, 2, 3, 4, 5, 6, 7, 8, 9]
..easy! Plus, it's using only two built-in functions, so assuming the lists are of a reasonable size, it should be quicker than implementing the sorting/merging in a loop. More importantly, the above is much less code, and very readable.
If your lists are large (over a few hundred thousand, I would guess), it may be quicker to use an alternative/custom sorting method, but there are likely other optimisations to be made first (e.g not storing millions of
timeit.Timer().repeat() (which repeats the functions 1000000 times), I loosely benchmarked it against ghoseb's solution, and
sorted(l1+l2) is substantially quicker:
[9.7439379692077637, 9.8844599723815918, 9.552299976348877]
[2.860386848449707, 2.7589840888977051, 2.7682540416717529]
is there a smarter way to do this in Python
This hasn't been mentioned, so I'll go ahead - there is a merge stdlib function in the heapq module of python 2.6+. If all you're looking to do is getting things done, this might be a better idea. Of course, if you want to implement your own, the merge of merge-sort is the way to go.
>>> list1 = [1, 5, 8, 10, 50] >>> list2 = [3, 4, 29, 41, 45, 49] >>> from heapq import merge >>> list(merge(list1, list2)) [1, 3, 4, 5, 8, 10, 29, 41, 45, 49, 50]
Here's the documentation.
Long story short, unless
len(l1 + l2) ~ 1000000 use:
L = l1 + l2 L.sort()
Description of the figure and source code can be found here.
The figure was generated by the following command:
$ python make-figures.py --nsublists 2 --maxn=0x100000 -s merge_funcs.merge_26 -s merge_funcs.sort_builtin
There is a slight flaw in ghoseb's solution, making it O(n**2), rather than O(n).
The problem is that this is performing:
item = l1.pop(0)
With linked lists or deques this would be an O(1) operation, so wouldn't affect complexity, but since python lists are implemented as vectors, this copies the rest of the elements of l1 one space left, an O(n) operation. Since this is done each pass through the list, it turns an O(n) algorithm into an O(n**2) one. This can be corrected by using a method that doesn't alter the source lists, but just keeps track of the current position.
I've tried out benchmarking a corrected algorithm vs a simple sorted(l1+l2) as suggested by dbr
def merge(l1,l2): if not l1: return list(l2) if not l2: return list(l1) # l2 will contain last element. if l1[-1] > l2[-1]: l1,l2 = l2,l1 it = iter(l2) y = it.next() result =  for x in l1: while y < x: result.append(y) y = it.next() result.append(x) result.append(y) result.extend(it) return result
I've tested these with lists generated with
l1 = sorted([random.random() for i in range(NITEMS)]) l2 = sorted([random.random() for i in range(NITEMS)])
For various sizes of list, I get the following timings (repeating 100 times):
# items: 1000 10000 100000 1000000 merge : 0.079 0.798 9.763 109.044 sort : 0.020 0.217 5.948 106.882
So in fact, it looks like dbr is right, just using sorted() is preferable unless you're expecting very large lists, though it does have worse algorithmic complexity. The break even point being at around a million items in each source list (2 million total).
One advantage of the merge approach though is that it is trivial to rewrite as a generator, which will use substantially less memory (no need for an intermediate list).
I've retried this with a situation closer to the question - using a list of objects containing a field "
date" which is a datetime object.
The above algorithm was changed to compare against
.date instead, and the sort method was changed to:
return sorted(l1 + l2, key=operator.attrgetter('date'))
This does change things a bit. The comparison being more expensive means that the number we perform becomes more important, relative to the constant-time speed of the implementation. This means merge makes up lost ground, surpassing the sort() method at 100,000 items instead. Comparing based on an even more complex object (large strings or lists for instance) would likely shift this balance even more.
# items: 1000 10000 100000 1000000 merge : 0.161 2.034 23.370 253.68 sort : 0.111 1.523 25.223 313.20
: Note: I actually only did 10 repeats for 1,000,000 items and scaled up accordingly as it was pretty slow.
This is simple merging of two sorted lists. Take a look at the sample code below which merges two sorted lists of integers.
#!/usr/bin/env python ## merge.py -- Merge two sorted lists -*- Python -*- ## Time-stamp: "2009-01-21 14:02:57 ghoseb" l1 = [1, 3, 4, 7] l2 = [0, 2, 5, 6, 8, 9] def merge_sorted_lists(l1, l2): """Merge sort two sorted lists Arguments: - `l1`: First sorted list - `l2`: Second sorted list """ sorted_list =  # Copy both the args to make sure the original lists are not # modified l1 = l1[:] l2 = l2[:] while (l1 and l2): if (l1 <= l2): # Compare both heads item = l1.pop(0) # Pop from the head sorted_list.append(item) else: item = l2.pop(0) sorted_list.append(item) # Add the remaining of the lists sorted_list.extend(l1 if l1 else l2) return sorted_list if __name__ == '__main__': print merge_sorted_lists(l1, l2)
This should work fine with datetime objects. Hope this helps.
from datetime import datetime from itertools import chain from operator import attrgetter class DT: def __init__(self, dt): self.dt = dt list1 = [DT(datetime(2008, 12, 5, 2)), DT(datetime(2009, 1, 1, 13)), DT(datetime(2009, 1, 3, 5))] list2 = [DT(datetime(2008, 12, 31, 23)), DT(datetime(2009, 1, 2, 12)), DT(datetime(2009, 1, 4, 15))] list3 = sorted(chain(list1, list2), key=attrgetter('dt')) for item in list3: print item.dt
2008-12-05 02:00:00 2008-12-31 23:00:00 2009-01-01 13:00:00 2009-01-02 12:00:00 2009-01-03 05:00:00 2009-01-04 15:00:00
I bet this is faster than any of the fancy pure-Python merge algorithms, even for large data. Python 2.6's
heapq.merge is a whole another story.
Python's sort implementation "timsort" is specifically optimized for lists that contain ordered sections. Plus, it's written in C.
As people have mentioned, it may call the comparison function more times by some constant factor (but maybe call it more times in a shorter period in many cases!).
I would never rely on this, however. – Daniel Nadasi
I believe the Python developers are committed to keeping timsort, or at least keeping a sort that's O(n) in this case.
Generalized sorting (i.e. leaving apart radix sorts from limited value domains)
cannot be done in less than O(n log n) on a serial machine. – Barry Kelly
Right, sorting in the general case can't be faster than that. But since O() is an upper bound, timsort being O(n log n) on arbitrary input doesn't contradict its being O(n) given sorted(L1) + sorted(L2).
Recursive implementation is below. Average performance is O(n).
def merge_sorted_lists(A, B, sorted_list = None): if sorted_list == None: sorted_list =  slice_index = 0 for element in A: if element <= B: sorted_list.append(element) slice_index += 1 else: return merge_sorted_lists(B, A[slice_index:], sorted_list) return sorted_list + B
or generator with improved space complexity:
def merge_sorted_lists_as_generator(A, B): slice_index = 0 for element in A: if element <= B: slice_index += 1 yield element else: for sorted_element in merge_sorted_lists_as_generator(B, A[slice_index:]): yield sorted_element return for element in B: yield element
Well, the naive approach (combine 2 lists into large one and sort) will be O(N*log(N)) complexity. On the other hand, if you implement the merge manually (i do not know about any ready code in python libs for this, but i'm no expert) the complexity will be O(N), which is clearly faster. The idea is described wery well in post by Barry Kelly.
Use the 'merge' step of merge sort, it runs in O(n) time.
From wikipedia (pseudo-code):
function merge(left,right) var list result while length(left) > 0 and length(right) > 0 if first(left) ≤ first(right) append first(left) to result left = rest(left) else append first(right) to result right = rest(right) end while while length(left) > 0 append left to result while length(right) > 0 append right to result return result
import random n=int(input("Enter size of table 1")); #size of list 1 m=int(input("Enter size of table 2")); # size of list 2 tb1=[random.randrange(1,101,1) for _ in range(n)] # filling the list with random tb2=[random.randrange(1,101,1) for _ in range(m)] # numbers between 1 and 100 tb1.sort(); #sort the list 1 tb2.sort(); # sort the list 2 fus=; # creat an empty list print(tb1); # print the list 1 print('------------------------------------'); print(tb2); # print the list 2 print('------------------------------------'); i=0;j=0; # varialbles to cross the list while(i<n and j<m): if(tb1[i]<tb2[j]): fus.append(tb1[i]); i+=1; else: fus.append(tb2[j]); j+=1; if(i<n): fus+=tb1[i:n]; if(j<m): fus+=tb2[j:m]; print(fus); # this code is used to merge two sorted lists in one sorted list (FUS) without #sorting the (FUS)
Have used merge step of the merge sort. But I have used generators. Time complexity O(n)
def merge(lst1,lst2): len1=len(lst1) len2=len(lst2) i,j=0,0 while(i<len1 and j<len2): if(lst1[i]<lst2[j]): yield lst1[i] i+=1 else: yield lst2[j] j+=1 if(i==len1): while(j<len2): yield lst2[j] j+=1 elif(j==len2): while(i<len1): yield lst1[i] i+=1 l1=[1,3,5,7] l2=[2,4,6,8,9] mergelst=(val for val in merge(l1,l2)) print(*mergelst)
An implementation of the merging step in Merge Sort that iterates through both lists:
def merge_lists(L1, L2): """ L1, L2: sorted lists of numbers, one of them could be empty. returns a merged and sorted list of L1 and L2. """ # When one of them is an empty list, returns the other list if not L1: return L2 elif not L2: return L1 result =  i = 0 j = 0 for k in range(len(L1) + len(L2)): if L1[i] <= L2[j]: result.append(L1[i]) if i < len(L1) - 1: i += 1 else: result += L2[j:] # When the last element in L1 is reached, break # append the rest of L2 to result. else: result.append(L2[j]) if j < len(L2) - 1: j += 1 else: result += L1[i:] # When the last element in L2 is reached, break # append the rest of L1 to result. return result L1 = [1, 3, 5] L2 = [2, 4, 6, 8] merge_lists(L1, L2) # Should return [1, 2, 3, 4, 5, 6, 8] merge_lists(, L1) # Should return [1, 3, 5]
I'm still learning about algorithms, please let me know if the code could be improved in any aspect, your feedback is appreciated, thanks!
def compareDate(obj1, obj2): if obj1.getDate() < obj2.getDate(): return -1 elif obj1.getDate() > obj2.getDate(): return 1 else: return 0 list = list1 + list2 list.sort(compareDate)
Will sort the list in place. Define your own function for comparing two objects, and pass that function into the built in sort function.
Do NOT use bubble sort, it has horrible performance.
This code has time complexity O(n) and can merge lists of any data type, given a quantifying function as the parameter
func. It produces a new merged list and does not modify either of the lists passed as arguments.
def merge_sorted_lists(listA,listB,func): merged = list() iA = 0 iB = 0 while True: hasA = iA < len(listA) hasB = iB < len(listB) if not hasA and not hasB: break valA = None if not hasA else listA[iA] valB = None if not hasB else listB[iB] a = None if not hasA else func(valA) b = None if not hasB else func(valB) if (not hasB or a<b) and hasA: merged.append(valA) iA += 1 elif hasB: merged.append(valB) iB += 1 return merged