Create sql table from dask dataframe using map_partitions and pd.df.to_sql

UPDATE : Dask to_sql() is now available https://docs.dask.org/en/latest/dataframe-api.html#dask.dataframe.DataFrame.to_sql


Simply, you have created a dataframe which is a prescription of the work to be done, but you have not executed it. To execute, you need to call .compute() on the result.

Note that the output here is not really a dataframe, each partition evaluates to None (because to_sql has no output), so it might be cleaner to express this with df.to_delayed, something like

dto_sql = dask.delayed(pd.DataFrame.to_sql)
out = [dto_sql(d, 'table_name', db_url, if_exists='append', index=True)
       for d in ddf.to_delayed()]
dask.compute(*out)

Also note, that whether you get good parallelism will depend on the database driver and the data system itself.