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I am trying to create a fixture difficulty grid using a DataFrame. I want the mean for the next 5 fixtures for each team.

I’m currently using df.rolling(5, min_periods=1).mean().shift(-4). This is working for the start but is pulling NANs at the end. I understand why NANs are returned – there is no DF to shift up. Ideally I’d like the NANs to become mean across the remaining values, value against 38 just being its current value?

Fixture difficulties

ARS AVL BHA BOU                  
3   4   3   2    
2   2   2   2    
5   2   2   4
4   2   5   3
3   2   2   2

Mean of next 5 fixtures

ARS AVL BHA BOU        
3.4 2.4 2.8 2.6    
3.2 2.4 2.8 2.6    
3.6 2.4 3.2 2.6    
3   2.4 3.6 2.6    
2.6 2.4 3   2.4

NAN on last records as nothing to shift up.

3.2 3.6 2.8 3.6    
nan nan nan nan    
nan nan nan nan    
nan nan nan nan    
nan nan nan nan

Can I adapt this approach or need a different one altogether to populate the NANs?

  • So you want fillna, not reverse rolling mean as in the title? – Quang Hoang Jul 5 '19 at 10:06
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IIUC you need inverse values by indexing, use rolling and inverse back:

df1 = df.iloc[::-1].rolling(5, min_periods=1).mean().iloc[::-1]
print (df1)
   ARS  AVL   BHA   BOU
0  3.4  2.4  2.80  2.60
1  3.5  2.0  2.75  2.75
2  4.0  2.0  3.00  3.00
3  3.5  2.0  3.50  2.50
4  3.0  2.0  2.00  2.00
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