I have lists of dictionary. Let's say it

total = [{"date": "2014-03-01", "value": 200}, {"date": "2014-03-02", "value": 100}{"date": "2014-03-03", "value": 400}]

I need get maximum, minimum, average value from it. I can get max and min values with below code:

print min(d['value'] for d in total)
print max(d['value'] for d in total)

But now I need get average value from it. How to do it?


Just divide the sum of values by the length of the list:

print sum(d['value'] for d in total) / len(total)

Note that division of integers returns the integer value. This means that average of the [5, 5, 0, 0] will be 2 instead of 2.5. If you need more precise result then you can use the float() value:

print float(sum(d['value'] for d in total)) / len(total)
  • I added the note about float results. – catavaran Mar 13 '15 at 8:49

I needed a more general implementation of the same thing to work on the whole dictionary. So here is one simple option:

def dict_mean(dict_list):
    mean_dict = {}
    for key in dict_list[0].keys():
        mean_dict[key] = sum(d[key] for d in dict_list) / len(dict_list)
    return mean_dict


dicts = [{"X": 5, "value": 200}, {"X": -2, "value": 100}, {"X": 3, "value": 400}]
{'X': 2.0, 'value': 233.33333333333334}
reduce(lambda x, y: x + y, [d['value'] for d in total]) / len(total)

catavaran's anwser is more easy, you don't need a lambda


An improvement on dsalaj's answer if the values are numeric lists instead:

def dict_mean(dict_list):
    mean_dict = {}
    for key in dict_list[0].keys():
        mean_dict[key] = np.mean([d[key] for d in dict_list], axis=0)
    return mean_dict

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.