2

I have a dataframe as follows:

              A       B 
  zDate
01-JAN-17    100     200
02-JAN-17    111     203
03-JAN-17    NaN     202
04-JAN-17    109     205
05-JAN-17    101     211
06-JAN-17    105     NaN
07-JAN-17    104     NaN

What is the best way, to fill the missing values, using last available ones?

Following is the intended result:

              A       B 
  zDate
01-JAN-17    100     200
02-JAN-17    111     203
03-JAN-17    111     202
04-JAN-17    109     205
05-JAN-17    101     211
06-JAN-17    105     211
07-JAN-17    104     211
4

Use ffill function, what is same as fillna with method ffill:

df = df.ffill()
print (df)
               A      B
zDate                  
01-JAN-17  100.0  200.0
02-JAN-17  111.0  203.0
03-JAN-17  111.0  202.0
04-JAN-17  109.0  205.0
05-JAN-17  101.0  211.0
06-JAN-17  105.0  211.0
07-JAN-17  104.0  211.0
  • Perfect answer. I'm just wondering can you achieve the same using apply function? For example this snippet will replace NaN with 'Is Null value'. I'm unable to come up with a logic to use the previous value instead. pastebin.com/raw/n384ba1q – Chankey Pathak Jul 26 '17 at 8:23
  • @ChankeyPathak - I think apply is not necesary, simple use df = df.fillna('Is Null value') – jezrael Jul 26 '17 at 8:25
  • No, I mean your answer fills the value using ffill method. Can apply do the same with additional logic? This is just for learning purpose. I'm just looking for an alternative to fillna for the OP's question. – Chankey Pathak Jul 26 '17 at 8:26
  • @ChankeyPathak - Why dont post question? Sample data, your code, desired output? Because not sure how do you think use apply. – jezrael Jul 26 '17 at 8:27

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