# partial match dictionary key(of tuples) in python

I have a dictionary that maps 3tuple to 3tuple where key-tuples have some element in common

``````dict= { (a,b,c):(1,2,3),
(a,b,d):tuple1,
(a,e,b):tuple,
.
(f,g,h):tuple3,
.
.
.
tuple:tuple
}
``````

now how can I find the values that match to (a,b,anyX) in a dictionary `ie (1:2:3) and tuple1`

this is computer generated and very large thus, it takes effort to determine anyX.

so, any good ways I can do this?

edit:partial matching of (f,g,*),(f, *,g) to tuple3 will also be helpful but not necessary.

-
do you also need to support get(f,*,h) returning tuple3? –  Foon Sep 19 at 11:46
not in the current version, but that would also be great –  TheAvs Sep 19 at 11:48
Notes: `(1:2:3)` causes a `SyntaxError`, and it's generally not a good idea to name variables after builtins, such as `tuple` and `dict`. –  Evert Sep 19 at 12:03
sorry I meant (1,2,3) and dict and tuple was to show the idea –  TheAvs Sep 19 at 12:24

Lets say if you're passing `None` for the missing keys then you can use `all` and `zip`:

``````>>> from itertools import permutations
>>> import random
#create a sample dict
>>> dic = {k:random.randint(1, 1000) for k in permutations('abcde', 3)}
def partial_match(key, d):
for k, v in d.iteritems():
if all(k1 == k2 or k2 is None  for k1, k2 in zip(k, key)):
yield v
...
>>> list(partial_match(('a', 'b', None), dic))
[541, 470, 734]
>>> list(partial_match(('a', None, 'b'), dic))
[460, 966, 45]
>>> [dic[('a', 'b', x)] for x in 'cde']
[541, 734, 470]
>>> [dic[('a', x, 'b')] for x in 'cde']
[966, 460, 45]
``````
-
if all(k1 == k2 or k2 is None for k1, k2 in zip(k, key)): yield v "wow this is some mind bending line" –  TheAvs Sep 19 at 12:14
@TheAvs `all()` will return True if all items satisfied the condition `k1 == k2 or k2 is None`, and `zip()` returns items on the same index from both iterables. `yield` is used to make a generator function. –  Ashwini Chaudhary Sep 19 at 12:32
so this is more simple then, thank you! –  TheAvs Sep 19 at 12:52

You could reconstruct your dictionary into a triply nested dict.

``````dict= { ("foo", 4 , "q"): 9,
("foo", 4 , "r"): 8,
("foo", 8 , "s"): 7,
("bar", 15, "t"): 6,
("bar", 16, "u"): 5,
("baz", 23, "v"): 4
}

d = {}
for (a,b,c), value in dict.iteritems():
if a not in d:
d[a] = {}
if b not in d[a]:
d[a][b] = {}
d[a][b][c] = value
``````

Here, `d` is equivalent to:

``````d = {
"foo": {
4:{
"q": 9,
"r": 8
},
8:{
"s": 7
}
},
"bar":{
15:{
"t": 6
}
16:{
"u": 5
}
},
"baz":{
23{
"v": 4
}
}
}
``````

Now you can easily iterate through the possible third keys, given the first and second.

``````#find all keys whose first two elements are "foo" and 4
a = "foo"
b = 4
for c in d[a][b].iterkeys():
print c
``````

Result:

``````q
r
``````

This only works for matching the third key. For instance, you wouldn't be able to find all second keys, given the third and the first.

-
This is the only one so far with sublinear lookup times. +1 and this data structure can be used to look in any position, with an accessor function. –  Jacob Sep 19 at 12:37

There might be other ways, but assuming you just need to do a single search (in other words there might be ways to build better data structures for repeated searching): (Note that this handles arbitrary lengthed tuple's with the '*' in multiple possible locations)

``````def match(tup,target):
if len(tup) != len(target):
return False
for i in xrange(len(tup)):
if target[i] != "*" and tup[i] != target[i]:
return False
return True

def get_tuples(mydict,target):
keys = filter(lambda x: match(x,target),mydict.keys())
return [mydict[key] for key in keys]

#example:
dict= { (1,3,5):(1,2,3),
(1,3,6):(1,5,7),
(1,2,5):(1,4,5),
}
print get_tuples(dict,(1,3,'*'))
``````

.

-
This correctly answers the question, but with O(n). The point of a dict is to get O(1) lookup. Just a heads up the wildcard search will be slow compared to a lookup. If convenient for the rest of your code use a better data structure for wildcard search. –  Jacob Sep 19 at 12:51
I have timed your function and it performs constantly slower than the implementation by @hcwhsa by about 0.012 seconds for a dictionary of about 10,000 elements. And thank you very much for quick answer. –  TheAvs Sep 19 at 12:56