0

I'm trying to convert some statements from Qlikview into a Databricks notebook. I used the Hierarchy Load a lot in Qlikview and it really helped me to build a parent/child relationship in one table and building also a path. Now I want to use this functionality in a notebook, but I can't find this 'Hierarchy'-function in SQL, pandas or pyspark.

Hierarchy load documentation of QlikView: https://help.qlik.com/en-US/qlikview/April2020/Subsystems/Client/Content/QV_QlikView/Scripting/ScriptPrefixes/Hierarchy.htm

My table is (e.g.):

    NodeID  ParentID    NodeName
0   1       4           London
1   2       3           Munich
2   3       5           Germany
3   4       5           UK
4   5                   Europe

My output should be:

+----+---------+-----------+-----------+-------------+------------+------------+------------+------------------------+-------+
|    | NodeID  | NodeName  | ParentID  | ParentName  | NodeName1  | NodeName2  | NodeName3  |       PathName         | Depth |
+----+---------+-----------+-----------+-------------+------------+------------+------------+------------------------+-------+
| 0  |      5  | Europe    |           | -           | -          | -          | Europe     | Europe                 |     1 |
| 1  |      3  | Germany   |        5  | Europe      | Europe     | Germany    | -          | Europe\Germany         |     2 |
| 2  |      2  | Munich    |        3  | Germany     | Europe     | Germany    | Munich     | Europe\Germany\Munich  |     3 |
| 3  |      4  | UK        |        5  | Europe      | Europe     | UK         | -          | Europe\UK              |     2 |
| 4  |      1  | London    |        4  | UK          | Europe     | UK         | London     | Europe\UK\London       |     3 |
+----+---------+-----------+-----------+-------------+------------+------------+------------+------------------------+-------+

Can you please help me to build this function in Pandas/Python? Thank you very much!

1
  • How can I buit the hierarchy function in SQL? Is that possible? – Greenhorn Sep 14 '20 at 7:47

Your Answer

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

Browse other questions tagged or ask your own question.