I know there are other questions with the same error name, yet none of them match the np.where statement, and also I couldn't find the answer to my problem in them

So I made a pandas DataFrame called data and created a Series out of it called dates, which is:

dates= pd.to_datetime(pd.to_timedelta(data.a_date, unit= 'D') + pd.datetime(1960,1,1), 
                      errors= 'coerse')

I need to clear some of the dates because they do not match with an indicator of them in data, so I tried to adjust that while keeping the indexes correct using numpy.where,
Yet I had gotten this error:

TypeError                                 Traceback (most recent call last)
<ipython-input-18-2b83ed2b2468> in <module>()
----> 1 np.where(((dates.notnull()) & (data.a_IND == 0)), np.nan, dates)

TypeError: invalid type promotion
| |
  • 1
    Can you please show your data? – cs95 Aug 21 '17 at 9:00

If you want to keep the date type, substitute np.nan with np.datetime64('NaT'):

np.where(((dates.notnull()) & (data.a_IND == 0)), np.datetime64('NaT'), dates)
| |

The documentation of np.where(cond, x, y) says that the second and third arguments - x and y - need to be array or array_like. Also, I believe x and y must be of the same shape.

Your x is a scalar (np.nan) and y is an array_like object (dates). Maybe that's the problem.

| |
  • Maybe but this is a pandas problem. The np.where issue is a byproduct of a misuse of the pandas API, so this answer doesn't help OP. – cs95 Aug 21 '17 at 9:16

I got a similar problem and managed to fix it by getting the date property from the index, i.e. this works:

np.where(condition, df.x, df.index.date)

And this doesn't work:

np.where(condition, df.x, df.index)

when the index has dtype='datetime64[ns]'

Hope that helps!

| |

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

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