I have a similar problem as this when concatenating two timestamp-indexed dask Dataframe vertically.
I have two dask dataframes df1,df2:
df1.index:
Dask Index Structure:
npartitions=1
2018-03-03 13:04:44.497929 datetime64[ns]
2018-03-03 13:23:04.759840 ...
Name: time, dtype: datetime64[ns]
Dask Name: getitem, 8 tasks
df2.index:
Dask Index Structure:
npartitions=1
2018-03-03 07:09:04.184453 datetime64[ns]
2018-03-03 07:32:46.815356 ...
Name: time, dtype: datetime64[ns]
Dask Name: getitem, 8 tasks
They have exactly same column names and types. Now I want to concat them using dask.dataframe.concat :
#df1 & df2 are dask dataframes
print(df1.divisions)
print(df2.divisions)
dfs=dd.concat([df1,df2],axis=0,interleave_partitions=False)
The output:
(Timestamp('2018-03-03 13:04:44.497929'), Timestamp('2018-03-03 13:23:04.759840')) (Timestamp('2018-03-03 07:09:04.184453'), Timestamp('2018-03-03 07:32:46.815356')) ValueError: All inputs have known divisions which cannot be concatenated in order. Specify interleave_partitions=True to ignore order
The two ddf cannnot be concatenating unless specified interleave_partitions=True. But the are no interleaving between the index of two dataframes. Was it caused by the limitation of datetimeindex supporting in dask? Or I need to specified other parameters or convert the index to int or double?