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Something I miss about C++ std::map (which is a sorted dictionary) is that looking up a key returns an iterator pointing to the correct location in the map. This means you can lookup a key and then start iterating from there, e.g. if the key is actually the beginning of a range you are interested in, or if you wanted "the item in my dictionary just after key".

Is there some other python dict that supports this kind of functionality?

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stackoverflow.com/questions/1491037/mapping-stdmap-to-python, is this what you were looking for? –  John Nov 1 '11 at 17:51
    
You could dig into the OrderedDict implementation to implement a solution, but the implementation itself is version dependent and there might not always be a way to do this in the future. FWIW, Python 2.7 foo._OrderedDict__map[somekey][1][2] and 3.2 foo._OrderedDict__map[somekey].next.key will each give you the key following somekey, but don't do this. –  Duncan Nov 1 '11 at 18:33
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4 Answers

Python's native OrderedDict class in the collections module doesn't support an operation to advance forward from a key chosen at random. There are other implementations of ordered dictionaries that do support that operation. One of these may meet your needs:

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Python's native OrderedDict class also doesn't keep it contents in key sort order. I think the OP needs to look at implementations of what would be called a SortedDict. –  martineau Nov 1 '11 at 20:20
    
It is trivial to sort data for a given key-function and the insert it into an OrderedDict for lookup and traversal: docs.python.org/library/… That works fine unless new keys are added, then a resort is required (though SortedDict implementations also have to do an insort() on every insertion or do a lazily do a full sort before a lookup). –  Raymond Hettinger Nov 1 '11 at 21:11
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In Python2.7+, you could use an OrderedDict:

import collections
import itertools

foo=collections.OrderedDict((('a',1),('b',2),('c',3)))
for key,value in itertools.dropwhile(lambda x: x[0]!='b',foo.iteritems()):
    print(key,value)

yields

('b', 2)
('c', 3)

For Python2.6 or less, you could use the OrderedDict recipe.

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2  
This way, you end up with O(n) look-up time. –  Sven Marnach Nov 1 '11 at 17:54
    
Iterating over the items in foo is O(n) anyway, so I don't think looking up the beginning of the iterator in O(1) time would improve the overall time complexity. (O(1) lookup can be done with foo._OrderedDict__map, but that would depend on implementation details.) –  unutbu Nov 1 '11 at 18:41
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my_dict = {'a': 1, 'b': 2, 'c': 3, 'd': 4}

print my_dict

keys = my_dict.keys()
keys.sort()
start_index = keys.index('b')

for key in keys[start_index:]:
    print key, my_dict[key]

=================================

{'a': 1, 'c': 3, 'b': 2, 'd': 4}

b 2

c 3

d 4

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If you don't need O(log n) inserts and deletes at arbitrary positions, you can use a list of key-value pairs, and use bisect.bisect() to look up items:

d = [("a", 3), ("b", 4), ("c", 5)]
i = bisect.bisect(d, ("b",))
print d[i + 1]

prints

('c', 5)
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