You need to keep some state somehow. If you can use a new list, you could do something like this:
g = l[:]
filter(lambda x: g.remove(x) is None and g.count(x) == 0, l)
The above removes duplicates differently. If you had
l = [1, 2, 2, 3, 2], you'd end up with
[1, 3, 2] as the resultant list.
Or create an empty list and use it to keep track of what you've seen:
seen = 
return filter(lambda x: seen.append(x) is None if x not in seen else False, l)
Both the above is pretty akin to using sets, though far less efficient. :-) And both are using a goofy mechanism to allow mutate a list in place but return a True/False result (the
is None portion in both of them is allowing us to chain expressions together).
If you can use
enumerate, you could do something like:
map(lambda t: t,
filter(lambda t: l[:t].count(t) == 0, enumerate(l)))
(it uses the current index to look into the previous part of the list to find duplicates)
If you can use list comprehensions, you could remove the use of
[x for i, x in filter(lambda t: l[:t].count(t) == 0,
If you could use
reduce, then you could do something like:
reduce(lambda r, x: r + [x] if x not in r else r, l, )
as you can keep state by passing the result from one iteration to the next.
But somehow you're going to need to have a record of what has been seen. None of this is what I'd call elegant Python code though, except maybe the
reduce version--though it's not performant.