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'.
  3. add from Addons to each value in the same category
  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}
Addons = {'t1':5, 't2':3, 't3':10} 
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.

  • 2
    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
    +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:

       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}
addons = {'t1':5, 't2':3, 't3':10}
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:
            addonStr = "({} + {})*{}".format(values[item], addons[value], multipliers[item])
            outputString += addonStr

outputString = "(" + outputString + ")"

print outputString


((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.

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