Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free.

By refering code at


>>> rec['data']
>>> rec[2]

I was wondering how they manage to make a data structure having both tuple and dictionary characteristic?

share|improve this question
what do you expect when calling rec[2]? Getting the 3rd inserted item? –  luc Nov 10 '10 at 8:38
This looks like OrderedDict to me. –  Attila O. Nov 10 '10 at 9:09
@Attila, It's not an OrderedDict as it can be indexed like a tuple. OrderedDict can't do that. –  aaronasterling Nov 10 '10 at 9:40
"Use the Source Luke" –  martineau Nov 10 '10 at 14:44

6 Answers 6

up vote 5 down vote accepted

In Python the [] lookups are handled by the __getitem__ magic method; in other words, when you index a custom class Python will call instance.__getitem__(...) and return you the value. This lets you do e.g.

>>> class Foo:
...     def __getitem__(self, value):
...             return value
>>> foo = Foo()
>>> foo["1"]
>>> foo[0]

There are several natural ways of maintaining the actual data structure; probably the easiest is to maintain both a dict and a list and index into one of them depending on the type of the key.

Notice that this is unnatural; you would expect a dict-like object to treat 0 as a key. it might be worth writing a different method e.g. index to handle the indexing.

You may also wish to implement the __setitem__ and __contains__ methods.

share|improve this answer

Here's a modified version of demas's answer that (I think) will preserve ordering (but will not be efficient):

class TupleDict(collections.OrderedDict):

    def __getitem__(self, key):
       if isinstance(key, int):
           return list(self.values())[key]
       return super(TupleDict, self).__getitem__(key)
share|improve this answer
This doesn't work in 3.1: TypeError: 'ValuesView' object does not support indexing. It's also impossible for this to be efficient with OrderedDict, since it uses a linked list internally to record the order. Random access in a linked list isn't possible, so indexing will be O(n). –  Glenn Maynard Nov 12 '10 at 2:10
@Glenn Maynard aw, I've forgot about the ValuesView thing. While it is sure faster than a list of keys, random access can only be done using list(self.values())[key], which is definitely not optimal. I wasn't really thinking about performance in the first place though. For a more efficient implementation, check @aaronasterling's answer. –  Attila O. Nov 15 '10 at 9:21

Read the code. Thats my best suggestion.

For example:

class cursor(_2cursor):
    """psycopg 1.1.x cursor.

    Note that this cursor implements the exact procedure used by psycopg 1 to
    build dictionaries out of result rows. The DictCursor in the
    psycopg.extras modules implements a much better and faster algorithm.

    def __build_dict(self, row):
        res = {}
        for i in range(len(self.description)):
            res[self.description[i][0]] = row[i]
        return res

And where it is coming from ..

class connection(_2connection):
    """psycopg 1.1.x connection."""

    def cursor(self):
        """cursor() -> new psycopg 1.1.x compatible cursor object"""
        return _2connection.cursor(self, cursor_factory=cursor)
share|improve this answer

After reading Glenn Maynard's comment on the answer that caused me to delete this one, I've decided to resurrect it. This uses a normal list to store the indices and so will have the same O(1) access.

Here's my take on it. Error handling could probably be improved but I didn't want to clutter up the code too much. I don't know how the original code handled it but why not go ahead and handle slices as well. We can only handle slice assignment for slices that don't create new keys (that is, that don't change the count of items) but we can handle arbitrary slice lookups. Note that it also effectively disallows integer keys. Here's a small demo of it in action.

class IndexedDict(object):
    def __init__(self, *args, **kwargs):
        d = dict(*args, **kwargs)
        self._keys = d.keys() # list(d.keys()) in python 3.1
        self._d = d

    def __getitem__(self, item):
        if isinstance(item, int):
            key = self._keys[item]
            return self._d[key]
        elif isinstance(item, slice):
            keys = self._keys[item]
            return tuple(self._d[key] for key in keys)
            return self._d[key]

    def __setitem__(self, item, value):
        if isinstance(item, int):
            key = self._keys[item]
            self._d[key] = value
        elif isinstance(item, slice):
            # we only handle slices that don't require the creation of
            # new keys.
            keys = self._keys[item]
            if not len(keys) == len(value):
                raise ValueError("Complain here")
            for key, v in zip(keys, value):
                self._d[key] = v
            self._d[item] = value
            if item not in self._keys:
                # This is the only form that can create a new element

    def __delitem__(self, item):
        if isinstance(item, int):
            key = self._keys[item]
            del self._keys[item]
            del self._d[key]
        elif isinstance(item, slice):
            keys = self._keys[item]
            del self._keys[item]
            for key in keys:
                del self._d[key]
            del self._d[item]

    def __contains__(self, item):
        if isinstance(item, int):
            return i < len(self._keys)
            return i in self._d

    # Just for debugging. Not intended as part of API.
    def assertions(self):
        assert len(self._d) == len(self._keys)
        assert set(self._d.keys()) == set(self._keys)

There's still some stuff to implement. keys, items, iteritems, update, etc. but they shouldn't be too hard. Just work with self._keys and use list comps and generator expressions. for example, iteritems is just (self._d[key] for key in self._keys) For update, I would just make sure you're dealing with a dictlike object and then update self._keys as self._keys += [key for key in other.keys() if key not in self._keys]. I might go so far as to define __add__ in essentially the same way.

share|improve this answer

A dictionary can map any python type against any other python type, so it's simple to retrieve a value where the key is an integer.

v = {}
v[0] = 'a'
v[1] = 'b'
v['abc'] = 'def'

>>> v[0]
share|improve this answer

Something like that:

class d(dict):
    def __getitem__(self, key):
       if str(key).isdigit():
           return self.values()[key]
           return super(d, self).get(key)

cls = d()
cls["one"] = 1
print cls["one"]
print cls[0]
share|improve this answer
this is not a good solution for the simple reason that the order of the elements can change with an update and so will not be consistent. –  aaronasterling Nov 10 '10 at 8:31
"str(key).isdigit()" - really? How about "isinstance(key,int)"? No conversion to strings, and you use the actual language constructs as they were intended. Will also not break if you have keys that are actually strings of digits: cls["0"] vs. cls[0] –  Paul McGuire Nov 10 '10 at 8:32
@aaronasterling is right - this should not inherit from dict, but should contain a dict and a list, so that the values can be maintained in a predictable order. Then __getitem__ could use the input key as a key on the dict or as an index into the list, depending on whether the key is an int or not. –  Paul McGuire Nov 10 '10 at 8:36

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.