This is just something I whipped up in a couple minutes. The function modifies a list in place, and removes consecutive repeats:

```
def make_unique(lst):
if len(lst) <= 1:
return lst
last = lst[-1]
for i in range(len(lst) - 2, -1, -1):
item = lst[i]
if item == last:
del lst[i]
else:
last = item
```

Some representative input data:

```
inp = [
(u"Tomato", "de"), (u"Cherry", "en"), (u"Watermelon", None), (u"Apple", None),
(u"Cucumber", "de"), (u"Lettuce", "de"), (u"Tomato", None), (u"Banana", None),
(u"Squash", "en"), (u"Rubarb", "de"), (u"Lemon", None),
]
```

Make sure both variants work as wanted:

```
print inp
print sorted(set(inp))
# copy because we want to modify it in place
inp1 = inp[:]
inp1.sort()
make_unique(inp1)
print inp1
```

Now to the testing. I'm not using timeit, since I don't want to time the copying of the list, only the sorting. `time1`

is `sorted(set(...)`

, `time2`

is `list.sort()`

followed by `make_unique`

, and `time3`

is the solution with `itertools.groupby`

by Avinash Y.

```
import time
def time1(number):
total = 0
for i in range(number):
start = time.clock()
sorted(set(inp))
total += time.clock() - start
return total
def time2(number):
total = 0
for i in range(number):
inp1 = inp[:]
start = time.clock()
inp1.sort()
make_unique(inp1)
total += time.clock() - start
return total
import itertools
def time3(number):
total = 0
for i in range(number):
start = time.clock()
list(k for k,_ in itertools.groupby(sorted(inp)))
total += time.clock() - start
return total
```

`sort + make_unique`

is approximately as fast as `sorted(set(...))`

. I'd have to do a couple more iterations to see which one is potentially faster, but within the variations they are very similar. The `itertools`

version is a bit slower.

```
# done each 3 times
print time1(100000)
# 2.38, 3.01, 2.59
print time2(100000)
# 2.88, 2.37, 2.6
print time3(100000)
# 4.18, 4.44, 4.67
```

Now with a larger list (the `+ str(i)`

is to prevent duplicates):

```
old_inp = inp[:]
inp = []
for i in range(100):
for j in old_inp:
inp.append((j[0] + str(i), j[1]))
print time1(10000)
# 40.37
print time2(10000)
# 35.09
print time3(10000)
# 40.0
```

Note that if there are a lot of duplicates in the list, the first version is much faster (since it does less sorting).

```
inp = []
for i in range(100):
for j in old_inp:
#inp.append((j[0] + str(i), j[1]))
inp.append((j[0], j[1]))
print time1(10000)
# 3.52
print time2(10000)
# 26.33
print time3(10000)
# 20.5
```

`sorted(set(input))`

not meet your speed requirements in some way? – Aesthete Nov 28 '12 at 10:38`timeit`

tell you is fastest? – Martijn Pieters♦ Nov 28 '12 at 10:40fastestis really not very meaningful, unless you tell us about your data (how many elements in the list, what fraction are duplicates, how much does it cost to compare two elements, how good and expensive is the hash function, etc) – NPE Nov 28 '12 at 10:42`sorted(set(input))`

is pretty damn aesthetically pleasing IMHO, but I appreciate your quest, and wish you well with it. I'm interested to see the results. – Aesthete Nov 28 '12 at 10:47