atoti.hierarchy module#
- class atoti.Hierarchy#
Hierarchy of a
Cube
.A hierarchy is a sub category of a
dimension
and represents a precise type of data.For example, Quarter or Week could be hierarchies in the Time dimension.
See also
Hierarchies
to define one.- property dimension: str#
Name of the dimension of the hierarchy.
Note
If all the hierarchies in a dimension have their deepest level of type
TIME
, the dimension’s type will be set toTIME
too. This can be useful for some clients such as Excel which rely on the dimension’s type to beTIME
to decide whether to display date filters.
- isin(*member_paths)#
Return a condition to check that the hierarchy is on one of the given members.
Considering
hierarchy_1
containinglevel_1
andlevel_2
,hierarchy_1.isin((a,), (b, c))
is equivalent to(level_1 == a) | ((level_1 == b) & (level_2 == c))
.- Parameters:
member_paths (tuple[ConstantValue, ...]) – One or more member paths expressed as tuples on which the hierarchy should be. Each element in a tuple corresponds to a level of the hierarchy, from the shallowest to the deepest.
- Return type:
Condition[HierarchyIdentifier, Literal[‘isin’], Constant, None]
Example
>>> df = pd.DataFrame( ... columns=["Country", "City", "Price"], ... data=[ ... ("Germany", "Berlin", 150.0), ... ("Germany", "Hamburg", 120.0), ... ("United Kingdom", "London", 240.0), ... ("United States", "New York", 270.0), ... ("France", "Paris", 200.0), ... ], ... ) >>> table = session.read_pandas( ... df, keys=["Country", "City"], table_name="isin example" ... ) >>> cube = session.create_cube(table) >>> h, l, m = cube.hierarchies, cube.levels, cube.measures >>> h["Geography"] = [l["Country"], l["City"]] >>> m["Price.SUM in Germany and Paris"] = tt.filter( ... m["Price.SUM"], ... h["Geography"].isin(("Germany",), ("France", "Paris")), ... ) >>> cube.query( ... m["Price.SUM"], ... m["Price.SUM in Germany and Paris"], ... levels=[l["Geography", "City"]], ... ) Price.SUM Price.SUM in Germany and Paris Country City France Paris 200.00 200.00 Germany Berlin 150.00 150.00 Hamburg 120.00 120.00 United Kingdom London 240.00 United States New York 270.00
- property slicing: bool#
Whether the hierarchy is slicing or not.
A regular (i.e. non-slicing) hierarchy is considered aggregable, meaning that it makes sense to aggregate data across all members of the hierarchy.
For instance, for a Geography hierarchy, it is useful to see the worldwide aggregated Turnover across all countries.
A slicing hierarchy is not aggregable at the top level, meaning that it does not make sense to aggregate data across all members of the hierarchy.
For instance, for an As of date hierarchy giving the current bank account Balance for a given date, it does not provide any meaningful information to aggregate the Balance across all the dates.