Don't miss your chance to take the Fabric Data Engineer (DP-700) exam on us!
Learn moreWe've captured the moments from FabCon & SQLCon that everyone is talking about, and we are bringing them to the community, live and on-demand. Starts on April 14th. Register now
Hi @OscarSuarez10 ,
#"Filtered Rows" = Table.SelectRows(#"Tipo cambiado3", each Text.Contains([Well], "CH")),
#"Grouped Rows" = Table.Group(#"Filtered Rows", {"Year"}, {{"Ch Oil Production", each List.Sum([WOPT]), type number}}),
#"Grouped Rows2" = Table.Group(#"Filtered Rows", {"Year"}, {{"Ch Water Production", each List.Sum([WWPT]), type number}}),
#"Grouped Rows3" = Table.Group(#"Filtered Rows", {"Year"}, {{"Ch Injectes Production", each List.Sum([WWIT]), type number}}),
#"Join1" = Table.NestedJoin(#"Grouped Rows", {"Year"}, #"Grouped Rows2", {"Year"}, "Ch Water Production", JoinKind.LeftOuter),
#"Expand1" = Table.ExpandTableColumn(#"Join1", "Ch Water Production", {"Ch Water Production"}, {"Ch Water Production"}),
#"Join2" = Table.NestedJoin(#"Expand1", {"Year"}, #"Grouped Rows3", {"Year"}, "Ch Injectes Production", JoinKind.LeftOuter),
#"Expand2" = Table.ExpandTableColumn(#"Join2", "Ch Injectes Production", {"Ch Injectes Production"}, {"Ch Injectes Production"})
in
#"Expand2"Could you try this ?
I didn't try it on power bi but I hope I didn't make any mistakes.. If it does not works tell me i'll react as soon as possible 😉
Regards,
Etienne
Could you click on the icon to show me the detailed step?
Would you want to output the table with "year","cheme***" into another table as a single table?
If possible, could you show me the table before "Group Rows" step and final result after the following steps?
Best Regards
Maggie
Hello I Want to make a table like this:
| Year | Ch Oil production | Ch Water Production | Ch Injected Production |
| 2019 | 25280000 | 88880000 | 0 |
| 2020 | 363400000 | 150000000 | 0 |
| 2021 | 66050000 | 32210000 | 0 |
I used this steps:
#"Filtered Rows" = Table.SelectRows(#"Tipo cambiado3", each Text.Contains([Well], "CH")),
#"Grouped Rows" = Table.Group(#"Filtered Rows", {"Year"}, {{"Ch Oil Production", each List.Sum([WOPT]), type number}}),
#"Grouped Rows2" = Table.Group(#"Filtered Rows", {"Year"}, {{"Ch Water Production", each List.Sum([WWPT]), type number}}),
#"Grouped Rows3" = Table.Group(#"Filtered Rows", {"Year"}, {{"Ch Injectes Production", each List.Sum([WWIT]), type number}})
in
#"Grouped Rows3"
Hi @OscarSuarez10 ,
#"Filtered Rows" = Table.SelectRows(#"Tipo cambiado3", each Text.Contains([Well], "CH")),
#"Grouped Rows" = Table.Group(#"Filtered Rows", {"Year"}, {{"Ch Oil Production", each List.Sum([WOPT]), type number}}),
#"Grouped Rows2" = Table.Group(#"Filtered Rows", {"Year"}, {{"Ch Water Production", each List.Sum([WWPT]), type number}}),
#"Grouped Rows3" = Table.Group(#"Filtered Rows", {"Year"}, {{"Ch Injectes Production", each List.Sum([WWIT]), type number}}),
#"Join1" = Table.NestedJoin(#"Grouped Rows", {"Year"}, #"Grouped Rows2", {"Year"}, "Ch Water Production", JoinKind.LeftOuter),
#"Expand1" = Table.ExpandTableColumn(#"Join1", "Ch Water Production", {"Ch Water Production"}, {"Ch Water Production"}),
#"Join2" = Table.NestedJoin(#"Expand1", {"Year"}, #"Grouped Rows3", {"Year"}, "Ch Injectes Production", JoinKind.LeftOuter),
#"Expand2" = Table.ExpandTableColumn(#"Join2", "Ch Injectes Production", {"Ch Injectes Production"}, {"Ch Injectes Production"})
in
#"Expand2"Could you try this ?
I didn't try it on power bi but I hope I didn't make any mistakes.. If it does not works tell me i'll react as soon as possible 😉
Regards,
Etienne
Hi @Anonymous Thank You it worked!
If you have recently started exploring Fabric, we'd love to hear how it's going. Your feedback can help with product improvements.
A new Power BI DataViz World Championship is coming this June! Don't miss out on submitting your entry.
Share feedback directly with Fabric product managers, participate in targeted research studies and influence the Fabric roadmap.
| User | Count |
|---|---|
| 5 | |
| 3 | |
| 3 | |
| 2 | |
| 2 |
| User | Count |
|---|---|
| 9 | |
| 8 | |
| 7 | |
| 5 | |
| 5 |