pandas filling nans by mean of before and after non-nan values
I would like to fill df
's nan
with an average of adjacent elements.
Consider a dataframe:
df = pd.DataFrame({'val': [1,np.nan, 4, 5, np.nan, 10, 1,2,5, np.nan, np.nan, 9]})
val
0 1.0
1 NaN
2 4.0
3 5.0
4 NaN
5 10.0
6 1.0
7 2.0
8 5.0
9 NaN
10 NaN
11 9.0
My desired output is:
val
0 1.0
1 2.5
2 4.0
3 5.0
4 7.5
5 10.0
6 1.0
7 2.0
8 5.0
9 7.0 <<< deadend
10 7.0 <<< deadend
11 9.0
I've looked into other solutions such as Fill cell containing NaN with average of value before and after, but this won't work in case of two or more consecutive np.nan
s.
Any help is greatly appreciated!
python pandas
add a comment |
I would like to fill df
's nan
with an average of adjacent elements.
Consider a dataframe:
df = pd.DataFrame({'val': [1,np.nan, 4, 5, np.nan, 10, 1,2,5, np.nan, np.nan, 9]})
val
0 1.0
1 NaN
2 4.0
3 5.0
4 NaN
5 10.0
6 1.0
7 2.0
8 5.0
9 NaN
10 NaN
11 9.0
My desired output is:
val
0 1.0
1 2.5
2 4.0
3 5.0
4 7.5
5 10.0
6 1.0
7 2.0
8 5.0
9 7.0 <<< deadend
10 7.0 <<< deadend
11 9.0
I've looked into other solutions such as Fill cell containing NaN with average of value before and after, but this won't work in case of two or more consecutive np.nan
s.
Any help is greatly appreciated!
python pandas
add a comment |
I would like to fill df
's nan
with an average of adjacent elements.
Consider a dataframe:
df = pd.DataFrame({'val': [1,np.nan, 4, 5, np.nan, 10, 1,2,5, np.nan, np.nan, 9]})
val
0 1.0
1 NaN
2 4.0
3 5.0
4 NaN
5 10.0
6 1.0
7 2.0
8 5.0
9 NaN
10 NaN
11 9.0
My desired output is:
val
0 1.0
1 2.5
2 4.0
3 5.0
4 7.5
5 10.0
6 1.0
7 2.0
8 5.0
9 7.0 <<< deadend
10 7.0 <<< deadend
11 9.0
I've looked into other solutions such as Fill cell containing NaN with average of value before and after, but this won't work in case of two or more consecutive np.nan
s.
Any help is greatly appreciated!
python pandas
I would like to fill df
's nan
with an average of adjacent elements.
Consider a dataframe:
df = pd.DataFrame({'val': [1,np.nan, 4, 5, np.nan, 10, 1,2,5, np.nan, np.nan, 9]})
val
0 1.0
1 NaN
2 4.0
3 5.0
4 NaN
5 10.0
6 1.0
7 2.0
8 5.0
9 NaN
10 NaN
11 9.0
My desired output is:
val
0 1.0
1 2.5
2 4.0
3 5.0
4 7.5
5 10.0
6 1.0
7 2.0
8 5.0
9 7.0 <<< deadend
10 7.0 <<< deadend
11 9.0
I've looked into other solutions such as Fill cell containing NaN with average of value before and after, but this won't work in case of two or more consecutive np.nan
s.
Any help is greatly appreciated!
python pandas
python pandas
asked 55 mins ago
ChrisChris
1,206214
1,206214
add a comment |
add a comment |
1 Answer
1
active
oldest
votes
Use ffill
+ bfill
and divide by 2:
df = (df.ffill()+df.bfill())/2
print(df)
val
0 1.0
1 2.5
2 4.0
3 5.0
4 7.5
5 10.0
6 1.0
7 2.0
8 5.0
9 7.0
10 7.0
11 9.0
EDIT : If 1st and last element contains NaN
then use (Dark
suggestion):
df = pd.DataFrame({'val':[np.nan,1,np.nan, 4, 5, np.nan,
10, 1,2,5, np.nan, np.nan, 9,np.nan,]})
df = (df.ffill()+df.bfill())/2
df = df.bfill().ffill()
print(df)
val
0 1.0
1 1.0
2 2.5
3 4.0
4 5.0
5 7.5
6 10.0
7 1.0
8 2.0
9 5.0
10 7.0
11 7.0
12 9.0
13 9.0
3
That is just brilliant. Thanks a ton :)
– Chris
48 mins ago
@Chris Glad to help.
– Sandeep Kadapa
42 mins ago
3
If first and last elements arenan
. Then usedf.bfill().ffill()
after using the above solution.
– Dark
27 mins ago
@anon01 Good point
– Chris
25 mins ago
@Dark Great suggestion :) Thanks for the insight
– Chris
24 mins ago
add a comment |
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1 Answer
1
active
oldest
votes
1 Answer
1
active
oldest
votes
active
oldest
votes
active
oldest
votes
Use ffill
+ bfill
and divide by 2:
df = (df.ffill()+df.bfill())/2
print(df)
val
0 1.0
1 2.5
2 4.0
3 5.0
4 7.5
5 10.0
6 1.0
7 2.0
8 5.0
9 7.0
10 7.0
11 9.0
EDIT : If 1st and last element contains NaN
then use (Dark
suggestion):
df = pd.DataFrame({'val':[np.nan,1,np.nan, 4, 5, np.nan,
10, 1,2,5, np.nan, np.nan, 9,np.nan,]})
df = (df.ffill()+df.bfill())/2
df = df.bfill().ffill()
print(df)
val
0 1.0
1 1.0
2 2.5
3 4.0
4 5.0
5 7.5
6 10.0
7 1.0
8 2.0
9 5.0
10 7.0
11 7.0
12 9.0
13 9.0
3
That is just brilliant. Thanks a ton :)
– Chris
48 mins ago
@Chris Glad to help.
– Sandeep Kadapa
42 mins ago
3
If first and last elements arenan
. Then usedf.bfill().ffill()
after using the above solution.
– Dark
27 mins ago
@anon01 Good point
– Chris
25 mins ago
@Dark Great suggestion :) Thanks for the insight
– Chris
24 mins ago
add a comment |
Use ffill
+ bfill
and divide by 2:
df = (df.ffill()+df.bfill())/2
print(df)
val
0 1.0
1 2.5
2 4.0
3 5.0
4 7.5
5 10.0
6 1.0
7 2.0
8 5.0
9 7.0
10 7.0
11 9.0
EDIT : If 1st and last element contains NaN
then use (Dark
suggestion):
df = pd.DataFrame({'val':[np.nan,1,np.nan, 4, 5, np.nan,
10, 1,2,5, np.nan, np.nan, 9,np.nan,]})
df = (df.ffill()+df.bfill())/2
df = df.bfill().ffill()
print(df)
val
0 1.0
1 1.0
2 2.5
3 4.0
4 5.0
5 7.5
6 10.0
7 1.0
8 2.0
9 5.0
10 7.0
11 7.0
12 9.0
13 9.0
3
That is just brilliant. Thanks a ton :)
– Chris
48 mins ago
@Chris Glad to help.
– Sandeep Kadapa
42 mins ago
3
If first and last elements arenan
. Then usedf.bfill().ffill()
after using the above solution.
– Dark
27 mins ago
@anon01 Good point
– Chris
25 mins ago
@Dark Great suggestion :) Thanks for the insight
– Chris
24 mins ago
add a comment |
Use ffill
+ bfill
and divide by 2:
df = (df.ffill()+df.bfill())/2
print(df)
val
0 1.0
1 2.5
2 4.0
3 5.0
4 7.5
5 10.0
6 1.0
7 2.0
8 5.0
9 7.0
10 7.0
11 9.0
EDIT : If 1st and last element contains NaN
then use (Dark
suggestion):
df = pd.DataFrame({'val':[np.nan,1,np.nan, 4, 5, np.nan,
10, 1,2,5, np.nan, np.nan, 9,np.nan,]})
df = (df.ffill()+df.bfill())/2
df = df.bfill().ffill()
print(df)
val
0 1.0
1 1.0
2 2.5
3 4.0
4 5.0
5 7.5
6 10.0
7 1.0
8 2.0
9 5.0
10 7.0
11 7.0
12 9.0
13 9.0
Use ffill
+ bfill
and divide by 2:
df = (df.ffill()+df.bfill())/2
print(df)
val
0 1.0
1 2.5
2 4.0
3 5.0
4 7.5
5 10.0
6 1.0
7 2.0
8 5.0
9 7.0
10 7.0
11 9.0
EDIT : If 1st and last element contains NaN
then use (Dark
suggestion):
df = pd.DataFrame({'val':[np.nan,1,np.nan, 4, 5, np.nan,
10, 1,2,5, np.nan, np.nan, 9,np.nan,]})
df = (df.ffill()+df.bfill())/2
df = df.bfill().ffill()
print(df)
val
0 1.0
1 1.0
2 2.5
3 4.0
4 5.0
5 7.5
6 10.0
7 1.0
8 2.0
9 5.0
10 7.0
11 7.0
12 9.0
13 9.0
edited 23 mins ago
answered 49 mins ago
Sandeep KadapaSandeep Kadapa
6,873630
6,873630
3
That is just brilliant. Thanks a ton :)
– Chris
48 mins ago
@Chris Glad to help.
– Sandeep Kadapa
42 mins ago
3
If first and last elements arenan
. Then usedf.bfill().ffill()
after using the above solution.
– Dark
27 mins ago
@anon01 Good point
– Chris
25 mins ago
@Dark Great suggestion :) Thanks for the insight
– Chris
24 mins ago
add a comment |
3
That is just brilliant. Thanks a ton :)
– Chris
48 mins ago
@Chris Glad to help.
– Sandeep Kadapa
42 mins ago
3
If first and last elements arenan
. Then usedf.bfill().ffill()
after using the above solution.
– Dark
27 mins ago
@anon01 Good point
– Chris
25 mins ago
@Dark Great suggestion :) Thanks for the insight
– Chris
24 mins ago
3
3
That is just brilliant. Thanks a ton :)
– Chris
48 mins ago
That is just brilliant. Thanks a ton :)
– Chris
48 mins ago
@Chris Glad to help.
– Sandeep Kadapa
42 mins ago
@Chris Glad to help.
– Sandeep Kadapa
42 mins ago
3
3
If first and last elements are
nan
. Then use df.bfill().ffill()
after using the above solution.– Dark
27 mins ago
If first and last elements are
nan
. Then use df.bfill().ffill()
after using the above solution.– Dark
27 mins ago
@anon01 Good point
– Chris
25 mins ago
@anon01 Good point
– Chris
25 mins ago
@Dark Great suggestion :) Thanks for the insight
– Chris
24 mins ago
@Dark Great suggestion :) Thanks for the insight
– Chris
24 mins ago
add a comment |
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