from datetime import timedelta from itertools import product as iter_product import dask.dataframe as dd import pandas as pd import pytest from test_utils.incite.collections.conftest import ( wall_collection, task_adj_collection, session_collection, ) from test_utils.incite.mergers.conftest import enriched_wall_merge @pytest.mark.parametrize( argnames="offset, duration,", argvalues=list( iter_product( ["12h", "3D"], [timedelta(days=5)], ) ), ) class TestEnrichedTaskAdjust: @pytest.mark.skip def test_base( self, client_no_amm, user_factory, product, task_adj_collection, wall_collection, session_collection, enriched_wall_merge, enriched_task_adjust_merge, incite_item_factory, delete_df_collection, thl_web_rr, ): from generalresearch.models.thl.user import User # -- Build & Setup delete_df_collection(coll=session_collection) u1: User = user_factory(product=product) for item in session_collection.items: incite_item_factory(user=u1, item=item) item.initial_load() for item in wall_collection.items: item.initial_load() enriched_wall_merge.build( client=client_no_amm, session_coll=session_collection, wall_coll=wall_collection, pg_config=thl_web_rr, ) enriched_task_adjust_merge.build( client=client_no_amm, task_adjust_coll=task_adj_collection, enriched_wall=enriched_wall_merge, pg_config=thl_web_rr, ) # -- ddf = enriched_task_adjust_merge.ddf() assert isinstance(ddf, dd.DataFrame) df = client_no_amm.compute(collections=ddf, sync=True) assert isinstance(df, pd.DataFrame) assert not df.empty