The ultimate Fabric, Power BI, SQL, and AI community-led learning event. Save €200 with code FABCOMM.
Get registeredCompete to become Power BI Data Viz World Champion! First round ends August 18th. Get started.
I have a SQL query that does aggregations between tables that join on multiple columns.
When I try to import this query the server times out, so I imported the tables hoping I could use an equivalent DAX query.
Thanks in advance.
SELECT d.description AS 'description', d.id_number AS 'ID Number', d.accnt_type AS 'Account Type', d.dbtpaytype AS 'Paycode', d.first_name AS 'First', d.last_name AS 'Last', s.payment, s.Charges, t.payment, t.Payments, ( COALESCE ( t.Payments, 0 ) - COALESCE ( s.Charges, 0 ) ) AS Balance FROM StAccount d LEFT JOIN ( SELECT school, id_number, payment, SUM( amount ) AS Charges FROM Transact GROUP BY id_number, payment, school ) s ON ( s.id_number = d.id_number AND s.school = d.school AND s.payment = d.dbtpaytype ) LEFT JOIN ( SELECT school, id_number, payment, SUM( amount ) AS Payments FROM Transfer WHERE type = 'Dep' GROUP BY id_number, payment, school ) t ON ( t.id_number = d.id_number AND t.school = d.school AND t.payment = d.dbtpaytype ) WHERE d.debit = 1 GROUP BY d.id_number
Hi @jeronimo2334 ,
For joining tables, there is a blog you can reference to change SQL to DAX.
Best Regards,
Xue
If this post helps, then please consider Accept it as the solution to help the other members find it more quickly.
@Anonymous
As far as I know Power Query can not handle multiple joins.
I am not aware of your data size however you can try this.
https://www.dropbox.com/s/3bbqthegu6f6uzv/Complex%20SQL%20to%20DAX.pbix?dl=0
On heavy data this solution might not work but you give a try
If this post helps, then please consider Accept it as the solution to help the other members find it more quickly.
Proud to be Datanaut!
You can do the same steps in Power Query instead.
If this post helps, then please consider Accept it as the solution to help the other members find it more quickly.
User | Count |
---|---|
81 | |
78 | |
37 | |
34 | |
31 |
User | Count |
---|---|
93 | |
81 | |
60 | |
49 | |
49 |