# Easy way to distinguish between 0 and False in a dataframe with mixed values

I have a column in my dataframe where the values take on either `1, 0, False` but the rows with `False` or `O` are functionally different.

I would therefore like to convert either the `False` or `0` values to something else

What would be an good way to do this?

Using replace has not worked well

`df["col_name"] = df["col_name"].replace(0,2)` converts the `False` values too

and

`df["col_name"] = df["col_name"].replace(False,2)` converts the `0` values too

You can use `mask` to replace values with a `boolean mask` - the advantage of this solution is no original `types` are changed:

``````df = pd.DataFrame({'Col':[1, False, 0]})

df['Col'] = df['Col'].mask(df['Col'].astype(str) == '0', 2).replace(False, 3)
print (df)
Col
0    1
1    3
2    2
``````

Solution with `Series.replace` by `dict`, but first converting to `str` by `astype` works too, but generally it convert all values to `str` what with real data can be problem.

``````d = {'0':'Zero', 'False':False}
df = df['Col'].astype(str).replace(d)
print (df)
0        1
1    False
2     Zero
Name: Col, dtype: object
``````

I try create more general solution with `map` and checking `bools` by `isinstance`:

``````df = pd.DataFrame({'Col':[1, False, 0, True,5]})
print (df)
Col
0      1
1  False
2      0
3   True
4      5

m = df['Col'].apply(lambda x: isinstance(x, bool))

print (df)
Col
0   1
1   2
2   0
3   3
4   5
``````

You can convert to str type and then use `df.str.replace`:

``````In : df = pd.DataFrame({'Col':[1, False, 0]})

In : df.Col.astype(str).replace('0', 'Zero').replace('False', np.nan)
Out:
0       1
1     NaN
2    Zero
``````

Let's use `astype`:

``````df = pd.DataFrame({'Datavalue':[1,False,0]})

df.Datavalue.astype(str) == "0"
``````

Output:

``````0    False
1    False
2     True
Name: Datavalue, dtype: bool

df.loc[df.Datavalue.astype(str) == "0",'Datavalue'] = "Zero"
``````

Output:

``````  Datavalue
0         1
1     False
2      Zero
``````

Use jezrael's dataframe `df`

``````df = pd.DataFrame({'Col':[1, False, 0]})
``````

Option 1
If there are only three values, 1, 0, or False, then being of type `bool` is as good as being `False`

``````df.Col.mask(df.Col.apply(type) == bool, 2)

0    1
1    2
2    0
Name: Col, dtype: object
``````

Option 2
You can use the `python` `is` operator

``````False is 0

False
``````

And use `mask` as we had before

``````df.mask(df.Col.apply(lambda x: x is False), 2)

0    1
1    2
2    0
Name: Col, dtype: object
``````
• Then that throws it off. However, if OP is correct and only 3 values, then this works. – piRSquared Jul 21 '17 at 6:05