"key1" : <list of strings>,
    "key2" : <list of integeres> }

I want to change type of 'key2' list to int. I have already tried looping over and using

v = int(v)

I have also tried mapping int to whole list.

map(int, list)

Any other way I can accomplish this task?

Current Code:

integer_columns = ["col1","col2","col3","col4"]
for col in integer_columns:
    col_list = config_data[col]
    col_list = list(map(int, col_list))
  • are you suggesting the value that's keyed with 'key2' is a list of numpy.int64 at the moment? – stucash Dec 7 '17 at 12:20
  • Right. Elements in d['key2'] are of type numpy.int64 – Avik Aggarwal Dec 7 '17 at 12:51
  • to be fair, I think you should change your question to something similar to why my map function didn't work, at the moment your question suggests you are asking for alternatives. – stucash Dec 7 '17 at 13:57

What's wrong with map?

d['key2'] = map(int, d['key2']) or d['key2'] = list(map(int, d['key2'])) on Python 3:

d = {'key2': ['1', '2', '3']}
d['key2'] = list(map(int, d['key2']))


{'key2': ['1', '2', '3']}
{'key2': [1, 2, 3]}

Edit after OP updated the question

for col in integer_columns:
    col_list = config_data[col]          # col_list references to config_data[col]

    col_list = list(map(int, col_list))  # now col_list references to an entire
                                         # new list of ints, that has nothing to do
                                         # with config_data[col]

col_list is being modified, but this change is not reflected back to config_data[col]. Instead, do something similar to what I showed in my original answer above:

for col in integer_columns:
    config_data[col] = list(map(int, config_data[col]))
  • I have already tried doing the same, but somehow it refuses to work. type of all elements remains numpy.int64 – Avik Aggarwal Dec 7 '17 at 12:50
  • 1
    @AvikAggarwal Either you are doing something wrong or you think that it "refuses" to work (since it's obvious that it's working as my answer shows). Either way you will need to update your question with your exact code. Keep in mind that map returns a new list (map object in Python 3) and does not modify the provided iterable in-place. – DeepSpace Dec 7 '17 at 12:52
  • Have updated the code. – Avik Aggarwal Dec 7 '17 at 12:58
  • @AvikAggarwal See my updated answer – DeepSpace Dec 7 '17 at 13:03
  • Yes this did the trick. Didnt notice that map is returning new list everytime. Thanks – Avik Aggarwal Dec 7 '17 at 13:14

bug fixed.

assuming you have a dict with each key mapping to a list of numpy.int64.


d = {'key2':[np.int64(v) for v in xrange(10)]}


%timeit -n 1000 d['key2'] = map(int, d['key2'])
1000 loops, best of 3: 1.5 µs per loop

%timeit -n 1000 d['key2'] = [int(v) for v in d['key2']]
1000 loops, best of 3: 2.0 µs per loop

%timeit -n 1000 d['key2'] = [np.asscalar(v) for v in np.array(d['key2'])]
1000 loops, best of 3: 11.6 µs per loop

updated with your current codes:

integer_columns = ["col1","col2","col3","col4"]  # assuming you have a list of list here

for col in integer_columns:
    x = np.array(col)
    config_data[col] = [np.asscalar(v) for v in x]

# >>> type(integer_columns[0][1])
# >>> int

numpy.asscalar is a function in numpy for converting numpy types to native python types. here's good answer explaining it.

So there's definitely other ways of doing it, it depends on your particular scenario for a certain solution.

  • there was an error in my codes, now updated. – stucash Dec 7 '17 at 13:41

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.