How To Conditionally Remove Duplicates From A Pandas Dataframe
Solution 1:
If the goal is to only drop the NaN
duplicates, a slightly more involved solution is needed.
First, sort on A
, B
, and Col_1
, so NaN
s are moved to the bottom for each group. Then call df.drop_duplicates
with keep=first
:
out = df.sort_values(['A', 'B', 'Col_1']).drop_duplicates(['A', 'B'], keep='first')
print(out)
A B Col_1 Col_2
01 a NaN 212 b A 223 c A 344 d B 365 e B 476 f NaN 487 g NaN 5
Solution 2:
Here's an alternative:
df[~((df[['A', 'B']].duplicated(keep=False)) & (df.isnull().any(axis=1)))]
# A B Col_1 Col_2# 0 1 a NaN 2# 1 2 b A 2# 2 3 c A 3# 4 4 d B 3# 6 5 e B 4# 7 6 f NaN 4# 8 7 g NaN 5
This uses the bitwise "not" operator ~
to negate rows that meet the joint condition of being a duplicate row (the argument keep=False
causes the method to evaluate to True for all non-unique rows) and containing at least one null value. So where the expression df[['A', 'B']].duplicated(keep=False)
returns this Series:
# 0 False# 1 False# 2 True# 3 True# 4 True# 5 True# 6 False# 7 False# 8 False
...and the expression df.isnull().any(axis=1)
returns this Series:
# 0 True# 1 False# 2 False# 3 True# 4 False# 5 True# 6 False# 7 True# 8 True
... we wrap both in parentheses (required by Pandas syntax whenever using multiple expressions in indexing operations), and then wrap them in parentheses again so that we can negate the entire expression (i.e. ~( ... )
), like so:
~((df[['A','B']].duplicated(keep=False)) & (df.isnull().any(axis=1))) & (df['Col_2'] != 5)
# 0 True# 1 True# 2 True# 3 False# 4 True# 5 False# 6 True# 7 True# 8 False
You can build more complex conditions with further use of the logical operators &
and |
(the "or" operator). As with SQL, group your conditions as necessary with additional parentheses; for instance, filter based on the logic "both condition X AND condition Y are true, or condition Z is true" with df[ ( (X) & (Y) ) | (Z) ]
.
Solution 3:
Or you can just using first()
, by using the first , will give back the first notnull
value, so the order of original input does not really matter.
df.groupby(['A','B']).first()
Out[180]:
Col_1Col_2AB1aNaN22bA23cA34dB35eB46fNaN47gNaN5
Post a Comment for "How To Conditionally Remove Duplicates From A Pandas Dataframe"