I have two lists of dictionaries and would like to find which state has the maximum difference for every element of the two lists. The length of the two lists is the same.

list1 = [{'NY':40, 'NJ':30, 'FL':30}, {'NY':40, 'NJ':50, 'FL':10}]

list2 = [{'NY':50, 'NJ':45, 'CT':20}, {'NY':40, 'FL':30}]

For list1[0] and list2[0], FL has the maximum difference between the two since FL = 30, NY = 10, NJ = 15, and CT = 20. For list1[1] and list2[1], NJ has the maximum difference.

How to get the desired output below? Thanks.

 State  Diff 
 FL     30
 NJ     50     
  • Hi, ALollz, yes. The value is zero if the state is not in the dictionary. – Steve P Mar 6 at 21:45

Simple iteration over two lists together using zip and keep track of maximum value in each iteration

for l1,l2 in zip(list1,list2):
    max_diff = tuple((0,0))
    for key in set(list(l1.keys()) + list(l2.keys())):
        diff = abs(l1.get(key,0) - l2.get(key,0)) 

        if diff > max_diff[1]:
            max_diff = tuple((key,diff))


[('FL', 30), ('NJ', 50)]
  • 1
    @pault I know OP may have to convert it into a list in Python3. Updated the answer. Thanks for pointing out – mad_ Mar 6 at 22:05

We want to compare the corresponding rows of the two DataFrames. First, let's align them:

df1 = pd.DataFrame(list1)    
df2 = pd.DataFrame(list2)   

df1, df2 = df1.fillna(0).align(df2.fillna(0), fill_value=0)

   CT  FL  NJ  NY
0   0  30  30  40
1   0  10  50  40

     CT    FL    NJ  NY
0  20.0   0.0  45.0  50
1   0.0  30.0   0.0  40

Now, you can use idmax to find the values with the largest difference, call lookup to get the diff value and create a new DataFrame.

u = (df1 - df2).abs()
idx = u.idxmax(1)
pd.DataFrame({'State': idx, 'Diff': u.lookup(u.index, u.idxmax(1))})

  State  Diff
0    FL  30.0
1    NJ  50.0
  • I was in the process of referring to your pandas merging 101 Q/A to sort out the syntax here. – pault Mar 6 at 21:45
  • @pault I'm happy to hear you're finding my QnA helpful :) Although in this particular case I'm not quite sure it'd help. . . :P – cs95 Mar 6 at 21:46
  • I was thinking make the columns the index and merge do and outer join, then calc the difference...I'm just really deep in spark right now so I think of everything as table joins. – pault Mar 6 at 21:47
  • @pault Ah, yes. I shorted that particular step using align. – cs95 Mar 6 at 21:48

I'd probably go with the pandas approach, but you can also use a list comprehension here:

import numpy as np
from operator import itemgetter

max_diffs = [
            (k, np.abs(a.get(k, 0) - b.get(k, 0))) 
            for k in set(list(a.keys()) + list(b.keys()))
    for a, b in zip(list1, list2)

#[('FL', 30), ('NJ', 50)]

And if you wanted the output in a DataFrame, you can do:

import pandas as pd
df = pd.DataFrame(max_diffs, columns=["State", "Diff"])
#  State  Diff
#0    FL    30
#1    NJ    50

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

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