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I am new to Python and trying to learn and advance. I am interested in TRIEs and DAWGs and I have been reading a lot about it but I don't understand what should the output TRIE or DAWG file look like.

  • Should a TRIE be an object of nested dictionaries? Where each letter is divided in to letters and so on?
  • Would a look up performed on such a dictionary be fast if there are 100k or 500k entries?
  • How to implement word-blocks consisting of more than one word separated with - or space?
  • How to link prefix or suffix of a word to another part in the structure? [for DAWG]

I want to understand the best output structure in order to figure out how to create and use one.

I would also appreciate what should be the output of a DAWG along with TRIE.

I do not want to see graphical representations with bubbles linked to each other, I saw them plenty whilst reading.

I would like to know the output object once a set of words are turned into TRIEs or DAWGs.

Thank you.

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5 Answers 5

up vote 29 down vote accepted

Unwind is essentially correct that there are many different ways to implement a trie; and for a large, scalable trie, nested dictionaries might become cumbersome -- or at least space inefficient. But since you're just getting started, I think that's the easiest approach; you could code up a simple trie in just a few lines. First, a function to construct the trie:

>>> _end = '_end_'
>>> def make_trie(*words):
...     root = dict()
...     for word in words:
...         current_dict = root
...         for letter in word:
...             current_dict = current_dict.setdefault(letter, {})
...         current_dict = current_dict.setdefault(_end, _end)
...     return root
>>> make_trie('foo', 'bar', 'baz', 'barz')
{'b': {'a': {'r': {'_end_': '_end_', 'z': {'_end_': '_end_'}}, 
             'z': {'_end_': '_end_'}}}, 
 'f': {'o': {'o': {'_end_': '_end_'}}}}

If you're not familiar with setdefault, it simply looks up a key in the dictionary (here, letter or _end). If the key is present, it returns the associated value; if not, it assigns a default value to that key and returns the value ({} or _end). (It's like a version of get that also updates the dictionary.)

Next, a function to test whether the word is in the trie. This could be more terse, but I'm leaving it verbose so that the logic is clear:

>>> def in_trie(trie, word):
...     current_dict = trie
...     for letter in word:
...         if letter in current_dict:
...             current_dict = current_dict[letter]
...         else:
...             return False
...     else:
...         if _end in current_dict:
...             return True
...         else:
...             return False
>>> in_trie(make_trie('foo', 'bar', 'baz', 'barz'), 'baz')
>>> in_trie(make_trie('foo', 'bar', 'baz', 'barz'), 'barz')
>>> in_trie(make_trie('foo', 'bar', 'baz', 'barz'), 'barzz')
>>> in_trie(make_trie('foo', 'bar', 'baz', 'barz'), 'bart')
>>> in_trie(make_trie('foo', 'bar', 'baz', 'barz'), 'ba')

I'll leave insertion and removal to you as an exercise.

Of course, Unwind's suggestion wouldn't be much harder. There might be a slight speed disadvantage in that finding the correct sub-node would require a linear search. But the search would be limited to the number of possible characters -- 27 if we include _end. Also, there's nothing to be gained by creating a massive list of nodes and accessing them by index as he suggests; you might as well just nest the lists.

Finally, I'll add that creating a DAWG would be a bit more complex, because you have to detect situations in which your current word shares a suffix with another word in the structure. In fact, this can get rather complex, depending on how you want to structure the DAWG! You may have to learn some stuff about Levenshtein distance to get it right.

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Hello senderle! You sound just like the fantastic Professor Dr. Evans of Udacity! An excellent explanation. My code had a a few more lines but output was more or less the same with the different approach to ENDings. Thank you for this eye opening example. I had looked at Levenshtein as well, which is amazing and sounds great however I still don't have a clue how to implement a DAWG to a dictionary structure like this. I though about running a look-up for i in range(len(s)) checking s[i:] to see if there's any other entry already with same ending but if there is, how to link the two? Any ideas? –  Phil Jun 13 '12 at 15:06
Senderle, What about implementing a class trie, with a node and a list of child nodes. The trie defines the nodes as values, and a path from a node to the leaf represents a word. That would have O(m) m length of the word for a lookup, but its save more space than the dicts, right? –  Luchux Mar 4 '13 at 13:50
@Luchux, well the thing is, an object keeps track of its attributes... with a dictionary. So for every node in the tree, a dictionary is created, just as in the above code! Still, I do think your suggestion might generate more readable code. See here for more information on the way python (or really, cpython) implements namespaces. –  senderle Mar 4 '13 at 14:12
@Senderle, yes you are right. I was thinking in some pointers oriented implementation, but guess that in Python we just rely on the objects with its attributes dict. In your implementation are the keys stored order alphabetically? the "letter in current_dict" exploits the lexical order to optimize execution time? thanks for the tips! –  Luchux Mar 4 '13 at 22:57
@GamesBrainiac, it's python's way of implementing variable length argument lists; it means that words is a list of all of the parameters passed to make_trie. –  senderle Apr 13 '13 at 11:03

Have a look at this:


Static memory-efficient Trie structures for Python (2.x and 3.x).

String data in a MARISA-trie may take up to 50x-100x less memory than in a standard Python dict; the raw lookup speed is comparable; trie also provides fast advanced methods like prefix search.

Based on marisa-trie C++ library.

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Excellent! Thanks A LOT! –  Phil Oct 16 '12 at 18:13
An endorsement from company using it in production: blog.repustate.com/… –  Anentropic Feb 3 at 13:55

Here is a list of python packages that implement Trie:

  • marisa-trie - a C++ based implementation.
  • python-trie - a simple pure python implementation.
  • PyTrie - a more advanced pure python implementation.
share|improve this answer

There's no "should"; it's up to you. Various implementations will have different performance characteristics, take various amounts of time to implement, understand, and get right. This is typical for software development as a whole, in my opinion.

I would probably first try having a global list of all trie nodes so far created, and representing the child-pointers in each node as a list of indices into the global list. Having a dictionary just to represent the child linking feels too heavy-weight, to me.

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once again, thank you however I still think that your answer needs a bit more deeper explanation and clarification since my question is aimed at figuring out the logic and structure of the functionality of DAWGs and TRIEs. Your further input will be very useful and appreciated. –  Phil Jun 13 '12 at 15:07

If you want a TRIE implemented as a Python class, here is something I wrote after reading about them:

class Trie:

    def __init__(self):
        self.__final = False
        self.__nodes = {}

    def __repr__(self):
        return 'Trie<len={}, final={}>'.format(len(self), self.__final)

    def __getstate__(self):
        return self.__final, self.__nodes

    def __setstate__(self, state):
        self.__final, self.__nodes = state

    def __len__(self):
        return len(self.__nodes)

    def __bool__(self):
        return self.__final

    def __contains__(self, array):
            return self[array]
        except KeyError:
            return False

    def __iter__(self):
        yield self
        for node in self.__nodes.values():
            yield from node

    def __getitem__(self, array):
        return self.__get(array, False)

    def create(self, array):
        self.__get(array, True).__final = True

    def read(self):
        yield from self.__read([])

    def update(self, array):
        self[array].__final = True

    def delete(self, array):
        self[array].__final = False

    def prune(self):
        for key, value in tuple(self.__nodes.items()):
            if not value.prune():
                del self.__nodes[key]
        if not len(self):
        return self

    def __get(self, array, create):
        if array:
            head, *tail = array
            if create and head not in self.__nodes:
                self.__nodes[head] = Trie()
            return self.__nodes[head].__get(tail, create)
        return self

    def __read(self, name):
        if self.__final:
            yield name
        for key, value in self.__nodes.items():
            yield from value.__read(name + [key])
share|improve this answer
Thank you @NoctisSkytower. This is great to begin with but I kind of gave up on Python and TRIES or DAWGs due to extremely high memory consumption of Python in these case scenarios. –  Phil Jul 20 '13 at 8:46
That's what ____slots____ is for. It reduces the amount of memory used by a class, when you have many instances of it. –  dstromberg Sep 28 at 0:09

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