I am having an hard time to create a DataFrame with None values. To do so I execute several steps, but I believe that I can get the same results using a pandas' function...

mydata = []
mydata.append([None, None, None, None])
mydata = np.array(mydata)
mydata = pd.DataFrame(mydata, columns='Start','End','Duration'])   

Is there a command to get the same results?

up vote 1 down vote accepted

I think you need reshape numpy array created from list:

mydata = pd.DataFrame(np.array([None, None, None]).reshape(-1,3), 
                      columns=['Start','End','Duration'])   
print (mydata)
  Start   End Duration
0  None  None     None

Another slowier solution with [[]]:

mydata = pd.DataFrame([[None, None, None]], columns=['Start','End','Duration'])   
print (mydata)
  Start   End Duration
0  None  None     None

If use columns and index values, all data are NaN and is possible replace them to None:

print (pd.DataFrame(columns=['Start','End','Duration'], index=[0]))
  Start  End Duration
0   NaN  NaN      NaN

mydata = pd.DataFrame(columns=['Start','End','Duration'], index=[0]).replace({np.nan:None})  
print (mydata)
  Start   End Duration
0  None  None     None

Another method would be:

pd.DataFrame({'Start':[None],'End':[None],'Duration':[None]})

Here is a fast one-liner:

>>> pd.DataFrame(np.empty((4,3),dtype=pd.Timestamp),columns=['Start','End','Duration'])
  Start   End Duration
0  None  None     None
1  None  None     None
2  None  None     None
3  None  None     None

In general, an one-liner would go as:

>>> pd.DataFrame(np.empty((5,3),dtype=object),columns=['Start','End','Duration'])
  Start   End Duration
0  None  None     None
1  None  None     None
2  None  None     None
3  None  None     None
4  None  None     None

Here is a NaN one-liner:

>>> pd.DataFrame(np.empty((2,3))*np.nan,columns=['Start','End','Duration'])   
   Start  End  Duration
0    NaN  NaN       NaN
1    NaN  NaN       NaN

Your Answer

By clicking "Post Your Answer", you acknowledge that you have read our updated terms of service, privacy policy and cookie policy, and that your continued use of the website is subject to these policies.

Not the answer you're looking for? Browse other questions tagged or ask your own question.