# Fetching and evaluating data from several dictionaries using filter,reduce,add,map

Fetching and evaluating data from several dictionaries using filter,reduce,add,map
I would like to calculate the following:

1. Filter each category, take the values of the keys (t1,t2,t3..)
2. take out the values of 'a','b'.
4. multiply each one

result = ((80+5)*2.5 + (95+5)*4 + (75+3)*3.5 + (58+10)*5)

The Data to work with:

``````Values = {'b': 95, 'c': 75, 'a': 80, 'd': 58}
Multipliers = {'b': 4, 'c': 3.5, 'a': 2.5, 'd': 5}
Category = {'t1':('a', 'b'), 't2':('c',), 't3':('d',)}
``````

what I did so far is to filter each category that correspond to Addons,now I`m just able to print it:

``````reduce(add,map(lambda x,y: x[1],filter(lambda t: t[0] in Addons, Category.items())))
``````

Any suggestions? Thanks.

• Just as a quick comment... Just because you can do everything on one line, it doesn't mean you should. – Dale Myers Dec 2 '13 at 9:45
• My answer shows how to do it your way, but it's much more complicated than the other method proposed. – Steve P. Dec 2 '13 at 10:29

``````sum((Values[v] + Addons[c]) * Multipliers[v]
for c, vs in Category.items()
for v in vs if c in Addons)
# 1225.5
``````
• there is option to use filter in this situation? – Ofir Attia Dec 2 '13 at 10:18
• +1 for a simple and fast solution. – Kobi K Dec 2 '13 at 10:18
• @OfirAttia I don't completely get how do you want to filter, neither from text, nor from test case, can you clarify what should be filtered off – alko Dec 2 '13 at 10:20
• Good answer, which is why I +1, but what `filter` does in this case is return the tuples such that the keys in `Category` are also in `Addons`. So, this would crash if that is not true. I would go with your answer as it's simple, but check out mine if you want to see a working implementation with his logic. – Steve P. Dec 2 '13 at 10:37
• @SteveP. It's easy to add an `if` statement in this sum, but I am not sure which one. – alko Dec 2 '13 at 10:38

You have:

``````reduce(add,map(lambda x,y: x[1],filter(lambda t: t[0] in Addons, Category.items())))
``````

`Category.items()` returns `(key, value)` pairs as tuples.

`filter(lambda t: t[0] in Addons, Category.items())` will return all tuples whose keys are also keys in `Addons`

Yet in `map()` your `lamda` function takes two arguments, but your are only giving tuples, so that should be `map(lambda x: x[1]...)`, which will return all of the `values` from `Category` whose keys are also in `Addons`

Next, `reduce` will add all of the keys together. Here's a correct implementation for doing it your way, but I would go with the accepted answer, as it's intuitive and simple:

``````reduce(add,
map(lambda x: [Multipliers[val]*(Values[val] + Addons[x[0]]) for val in x[1]],
filter(lambda x: x[0] in Addons, Category.items()))))
``````

The only exception is if all of the keys in `Categories` are not in `Addons`, then the accepted answer will not work (I edited his answer with the fix), but this will.

• Nice!, thanks.. – Ofir Attia Dec 2 '13 at 11:11
• @OfirAttia No problem. – Steve P. Dec 2 '13 at 11:12
1. it's not a good practice to capitalize vars, it's recommended to use PEP-8

2. I think you should solve it simple, and not in 1 line.

Here is my simple solution:

``````values = {'b': 95, 'c': 75, 'a': 80, 'd': 58}
multipliers = {'b': 4, 'c': 3.5, 'a': 2.5, 'd': 5}
category = {'t1':('a', 'b'), 't2':('c',), 't3':('d',)}

outputString = ""

for value in category:
for item in list(category[value]):
if value in addons and item in values and item in multipliers:
``````((75 + 3)*3.5(58 + 10)*5(80 + 5)*2.5(95 + 5)*4)
You can add and `else` statement so if you'll have error's in one of your dictionaries you'll be able to track it.