9

I want to identify if a column in pandas is a list (in each row).

df=pd.DataFrame({'X': [1, 2, 3], 'Y': [[34],[37,45],[48,50,57]],'Z':['A','B','C']})

df
Out[160]: 
   X             Y  Z
0  1          [34]  A
1  2      [37, 45]  B
2  3  [48, 50, 57]  C

df.dtypes
Out[161]: 
X     int64
Y    object
Z    object
dtype: object

Since the dtype of strings is "object", I'm unable to distinguish between columns that are strings and lists (of integer or strings).

How do I identify that column "Y" is a list of int?

2 Answers 2

12

You can use applymap, compare and then add all for check if all values are Trues:

print (df.applymap(type))
               X               Y              Z
0  <class 'int'>  <class 'list'>  <class 'str'>
1  <class 'int'>  <class 'list'>  <class 'str'>
2  <class 'int'>  <class 'list'>  <class 'str'>

a = (df.applymap(type) == list).all()
print (a)
X    False
Y     True
Z    False
dtype: bool

Or:

a = df.applymap(lambda x: isinstance(x, list)).all()
print (a)
X    False
Y     True
Z    False
dtype: bool

And if need list of columns:

L = a.index[a].tolist()
print (L)
['Y']

If want check dtypes (but strings, list, dict are objects):

print (df.dtypes)
X     int64
Y    object
Z    object
dtype: object

a = df.dtypes == 'int64'
print (a)
X     True
Y    False
Z    False
dtype: bool
2
  • 1
    This is perfect, thanks! A quick follow up - does it compute the type for every element or does it fetch something that is pre-computed? Asking this because I may have a huge dataframe. Aug 14, 2017 at 10:17
  • If need check strings, lists what are objects need applymap. But if need check int64 or float is possible use df.select_dtypes(include=['int64']).columns, check select_dtypes.
    – jezrael
    Aug 14, 2017 at 10:19
3

If your dataset is big, you should take a sample before apply the type function, then you can check:

If the the most common type is list:

df\
.sample(100)\
.applymap(type)\
.mode(0)\
.astype(str) == "<class 'list'>"

If all values are list:

(df\
.sample(100)\
.applymap(type)\
.astype(str) == "<class 'list'>")\
.all(0)

If any values are list:

(df\
.sample(100)\
.applymap(type)\
.astype(str) == "<class 'list'>")\
.any(0)

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