The following link has a very similar problem solved using python dictionaries Python: merging dictionaries with lists in lists as values and counting them

I would like to know if the following problem can be solved using python pandas library. I tried using merge and join but I am not sure how to go about getting the desired result.

The problem is as follows:

From 2 csv files, I read in a dictionary

```
dict1 = {'M1': {'H': '1', 'J' : '2'}, 'M2': {'H': '1', 'J' : '2'}, 'M3': {'H': '1', 'J' : '2'}}
dict2 = {'M1': {'H': '4', 'J' : '6'}, 'M2': {'H': '2', 'J' : '5'}, 'M4': {'H': '9', 'J' : '8'}}
```

Required Output Table:

List of all Keys in both the dictionaries with their sum of sub-dictionary [{H,J}] values for the matching keys between two dictionaries

Example: M1 is present both in dict1 and dict2, so final output for M1 should be

final_M1['H'] = 1 (from dict1['M1']) + 4 (from dict2['M1']) = 5

Similarly for M3, M3 is present only in dict1, so nothing has to be done and that values have to be retained.

Sample Output:

```
---------------------
M | H | J
---------------------
M1 | 5 | 8
---------------------
M2 | 3 | 7
---------------------
M3 | 1 | 2
---------------------
M4 | 9 | 8
```

To get the unique set of two dictionaries,

```
keys = set(dict1.keys()).union(dict2.keys())
```

Similar to the logic used in the link above, The solution using python dictionary looks like this:

```
for k in keys:
print "Key:", k
d1val = dict1.get(k, {})
d2val = dict2.get(k, {})
if (len(d1val) == 0):
print "d2val H:", d2val['H']
if (len(d2val) == 0):
print "d1val H:", d1val['H']
if (len(d1val) != 0 and len(d2val) != 0):
print "Test"
print "d1val H:", d1val['H']
print "d2val H:", d2val['H']
print "d1val H + d2val H = ", int(d1val['H']) + int(d2val['H'])
print "***********"
```

How to implement the same logic in python pandas? I also would like to if using pandas library for such operation will be efficient considering if the input data set is of the range of 10,000 rows per file