# How to merge two lists into dictionary without using nested for loop

I have two lists:

``````a = [0, 0, 0, 1, 1, 1, 1, 1, .... 99999]
b = [24, 53, 88, 32, 45, 24, 88, 53, ...... 1]
``````

I want to merge those two lists into a dictionary like:

``````{
0: [24, 53, 88],
1: [32, 45, 24, 88, 53],
......
99999: [1]
}
``````

A solution might be using `for` loop, which does not look good and elegant, like:

``````d = {}
unique_a = list(set(list_a))
for i in range(len(list_a)):
if list_a[i] in d.keys:
d[list_a[i]].append(list_b[i])
else:
d[list_a] = [list_b[i]]
``````

Though this does work, it’s an inefficient and would take too much time when the list is extremely large. I want to know more elegant ways to construct such a dictionary?

• How is that a nested for loop? – Clashsoft Nov 1 '17 at 7:42
• DYM `if list_a[i] in d.keys` and `d[list_a[i]] = [list_b[i]]`? Please post exactly the code you've tried, preferably using copy+paste (if available on your platform). – Toby Speight Nov 1 '17 at 9:31
• If one of the provided answers worked for you, please mark it as accepted. It makes it easier for people coming across your question in the future to know what worked. – Engineero Nov 1 '17 at 15:16
• @TobySpeight `if` means if `list_a[i]` is already a key in the dictionary, then add `list_b[i]` into the dictionary under key `list_a[i]`, whereas `else` means that if not, add `list_b[i] to the new key `list_a[i]` as list. Hope it helps. – BigD Nov 1 '17 at 19:15
• @BigD, I thought that's what you meant to write (as I suggested). `list_[a] in d.keys` just doesn't make sense, and neither does `d[list_a] =`. I suggest you edit to fix those errors. – Toby Speight Nov 2 '17 at 8:34

You can use a defaultdict:

``````from collections import defaultdict
d = defaultdict(list)
list_a = [0, 0, 0, 1, 1, 1, 1, 1, 9999]
list_b = [24, 53, 88, 32, 45, 24, 88, 53, 1]
for a, b in zip(list_a, list_b):
d[a].append(b)

print(dict(d))
``````

Output:

``````{0: [24, 53, 88], 1: [32, 45, 24, 88, 53], 9999: [1]}
``````
• Really, using a `defaultdict` is overkill here. See this answer where `dict.setdefault` can handle the same thing with minimal overhead. – cs95 Nov 1 '17 at 13:54
• @cᴏʟᴅsᴘᴇᴇᴅ `d[a].append(b)` is much cleaner than `d.setdefault(x, []).append(y)` – Ajax1234 Nov 1 '17 at 14:01
• At the cost of an extra import and a heavier structure ;-) – cs95 Nov 1 '17 at 14:02

Alternative `itertools.groupby()` solution:

``````import itertools

a = [0, 0, 0, 1, 1, 1, 1, 1, 2, 2, 2, 2, 2, 2, 3]
b = [24, 53, 88, 32, 45, 24, 88, 53, 11, 22, 33, 44, 55, 66, 77]

result = { k: [i[1] for i in g]
for k,g in itertools.groupby(sorted(zip(a, b)), key=lambda x:x[0]) }
print(result)
``````

The output:

``````{0: [24, 53, 88], 1: [24, 32, 45, 53, 88], 2: [11, 22, 33, 44, 55, 66], 3: [77]}
``````
• Sure, I’ve figured out what your code does, but written in that style, it’s not very obvious. For the person new to Python, I think they may find your code hard to understand and then disregard (or not bother to regard) your solution because of it. Just a suggestion, up to you – ratskin Nov 1 '17 at 0:10
• Might I suggest not writing `result` in one line? Maybe pull out the result of `groupby` as a separate variable? That line is way too long... – Brian McCutchon Nov 1 '17 at 5:12
• This seems worse than the other answer because you need to sort, whereas the other answer does not sort, so yours is doing extra work. – Daenyth Nov 1 '17 at 12:36
• @Daenyth, your information is not new at all. The solution was marked as "alternative" way at the very begining. – RomanPerekhrest Nov 1 '17 at 12:42
• If `list_a` is already ordered, you can remove the `n log n` sort, also the lambda adds unnecessary overhead, itemgetter is always a better option. `{k: [i for _, i in g] for k, g in groupby(zip(a, b), key=itemgetter(0))}` – Padraic Cunningham Nov 1 '17 at 18:38

No fancy structures, just a plain ol' dictionary.

``````d = {}
for x, y in zip(a, b):
d.setdefault(x, []).append(y)
``````
• This one is to get rid of default_dict right? – Bharath M Nov 1 '17 at 14:27

You can do this with a dict comprehension:

``````list_a = [0, 0, 0, 1, 1, 1, 1, 1]
list_b = [24, 53, 88, 32, 45, 24, 88, 53]
my_dict = {key: [] for key in set(a)}  # my_dict = {0: [], 1: []}
for a, b in zip(list_a, list_b):
my_dict[a].append(b)
# {0: [24, 53, 88], 1: [32, 45, 24, 88, 53]}
``````

Oddly enough, you cannot seem to make this work using `dict.fromkeys(set(list_a), [])` as this will set the value of all keys equal to the same empty array:

``````my_dict = dict.fromkeys(set(list_a), [])  # my_dict = {0: [], 1: []}
my_dict[0].append(1)  # my_dict = {0: [1], 1: [1]}
``````
• lists are mutable, you pass one object/list to fromkeys so you share a reference to the single list/object, it would be the same as `a = []` then `d = {1: a, 2: a, 3: a}`. `my_dict = dict.fromkeys(set(list_a), tuple());my_dict[0] += (1,) ` would show `{0: (1,), 1: (), 9999: ()}` but add the overhead of creating a new object/tuple with each `+=`. – Padraic Cunningham Nov 1 '17 at 18:47

A `pandas` solution:

### Setup:

``````import pandas as pd

a = [0, 0, 0, 1, 1, 1, 1, 1, 2, 2, 2, 3, 4, 4, 4]

b = pd.np.random.randint(0, 100, len(a)).tolist()

>>> b
Out[]: [28, 68, 71, 25, 25, 79, 30, 50, 17, 1, 35, 23, 52, 87, 21]

df = pd.DataFrame(columns=['Group', 'Value'], data=list(zip(a, b)))  # Create a dataframe

>>> df
Out[]:
Group  Value
0       0     28
1       0     68
2       0     71
3       1     25
4       1     25
5       1     79
6       1     30
7       1     50
8       2     17
9       2      1
10      2     35
11      3     23
12      4     52
13      4     87
14      4     21
``````

### Solution:

``````>>> df.groupby('Group').Value.apply(list).to_dict()
Out[]:
{0: [28, 68, 71],
1: [25, 25, 79, 30, 50],
2: [17, 1, 35],
3: [23],
4: [52, 87, 21]}
``````

### Walkthrough:

1. create a `pd.DataFrame` from the input lists, `a` is called `Group` and `b` called `Value`
2. `df.groupby('Group')` creates groups based on `a`
3. `.Value.apply(list)` gets the values for each group and cast it to `list`
4. `.to_dict()` converts the resulting `DataFrame` to `dict`

### Timing:

To get an idea of timings for a test set of 1,000,000 values in 100,000 groups:

``````a = sorted(np.random.randint(0, 100000, 1000000).tolist())
b = pd.np.random.randint(0, 100, len(a)).tolist()
df = pd.DataFrame(columns=['Group', 'Value'], data=list(zip(a, b)))

>>> df.shape
Out[]: (1000000, 2)

%timeit df.groupby('Group').Value.apply(list).to_dict()
4.13 s ± 9.29 ms per loop (mean ± std. dev. of 7 runs, 1 loop each)
``````

But to be honest it is likely less efficient than `itertools.groupby` suggested by @RomanPerekhrest, or `defaultdict` suggested by @Ajax1234.

Maybe I miss the point, but at least I will try to help. If you have to lists and want to put them in the dict do the following

``````a = [1, 2, 3, 4]
b = [5, 6, 7, 8]
lists = [a, b] # or directly -> lists = [ [1, 2, 3, 4], [5, 6, 7, 8] ]
new_dict = {}
for idx, sublist in enumerate([a, b]): # or enumerate(lists)
new_dict[idx] = sublist
``````

hope it helps

• This isn't even close to what OP wants. `a` contains the keys for the values in `b` (with some keys being duplicates), and index isn't used at all. Yours just creates `{ 0: a, 1: b }`, using the index in `lists`. – Izkata Nov 1 '17 at 13:10

Or do dictionary comprehension beforehand, then since all keys are there with values of empty lists, iterate trough the `zip` of the two lists, then add the second list's value to the dictionary's key naming first list's value, no need for try-except clause (or if statements), to see if the key exists or not, because of the beforehand dictionary comprehension:

``````d={k:[] for k in l}
for x,y in zip(l,l2):
d[x].append(y)
``````

Now:

``````print(d)
``````

Is:

``````{0: [24, 53, 88], 1: [32, 45, 24, 88, 53], 9999: [1]}
``````