Join us at FabCon Atlanta from March 16 - 20, 2026, for the ultimate Fabric, Power BI, AI and SQL community-led event. Save $200 with code FABCOMM.
Register now!The Power BI Data Visualization World Championships is back! Get ahead of the game and start preparing now! Learn more
Hi Guys,
I'm trying to create a visualization that lists the latest weekly meetings that I need to attend to.
It would automatically update the current date and time and meeting title for next week.
For example:
Date:
Date / Time: Meeting Title
| September 22, 2019 at 9:00 AM | Sample Meeting Title |
| September 23, 2019 at 9:00 AM | Sample Meeting Title |
| September 24, 2019 at 9:00 AM | Sample Meeting Title |
| September 25, 2019 at 9:00 AM | Sample Meeting Title |
| September 26, 2019 at 9:00 AM | Sample Meeting Title |
| September 27, 2019 at 9:00 AM | Sample Meeting Title |
| September 28, 2019 at 9:00 AM | Sample Meeting Title |
I hope you guys can help me out.
Solved! Go to Solution.
Hi @Anonymous
Yes, it is possible.
As amitchandak suggested, "relative filter" should work.
If the "date/time" column is a text column instead of a date-time column, please make some transformation in Edit queries.
let
Source = Table.FromRows(Json.Document(Binary.Decompress(Binary.FromText("jdI5DoMwEAXQq4xcu5ix2ZwuB0ApSIcoCBohJEhQ5PsrS+ep/gFe98bRDXpmPR76phA8BZZEc6Z0YaZr77wb5uPclXrVvD1Xum95V3GTL2REZbCyQmW0skZlZWWDytrKFpWNlR0qWysTKjsjI6My/eVtya+fE7gBFw7vI4WD80goHFxHvnemDw==", BinaryEncoding.Base64), Compression.Deflate)), let _t = ((type text) meta [Serialized.Text = true]) in type table [#"date/time" = _t, meeting = _t]),
#"Changed Type" = Table.TransformColumnTypes(Source,{{"date/time", type text}, {"meeting", type text}}),
#"Duplicated Column" = Table.DuplicateColumn(#"Changed Type", "date/time", "date/time - Copy"),
#"Replaced Value" = Table.ReplaceValue(#"Duplicated Column","at","-",Replacer.ReplaceText,{"date/time - Copy"}),
#"Split Column by Delimiter" = Table.SplitColumn(#"Replaced Value", "date/time - Copy", Splitter.SplitTextByDelimiter("-", QuoteStyle.Csv), {"date/time - Copy.1", "date/time - Copy.2"}),
#"Changed Type1" = Table.TransformColumnTypes(#"Split Column by Delimiter",{{"date/time - Copy.1", type date}, {"date/time - Copy.2", type time}})
in
#"Changed Type1"
Hi @Anonymous
Today is 2019/9/26, you want the visual to show meeting of the current week (2019/9/22~2019/9/9/28),
or meeting from today to next 7 days (2019/9/26~2019/10/2)?
Best Regards
Maggie
Hello!
I would like it to show the weekly meetings.
So it should be (2019/9/22~2019/9/28).
Thank you!
Thanks! But would it be possible to show the current meetings for the week?
Sunday to Saturday.
Thank you!
Hi @Anonymous
Yes, it is possible.
As amitchandak suggested, "relative filter" should work.
If the "date/time" column is a text column instead of a date-time column, please make some transformation in Edit queries.
let
Source = Table.FromRows(Json.Document(Binary.Decompress(Binary.FromText("jdI5DoMwEAXQq4xcu5ix2ZwuB0ApSIcoCBohJEhQ5PsrS+ep/gFe98bRDXpmPR76phA8BZZEc6Z0YaZr77wb5uPclXrVvD1Xum95V3GTL2REZbCyQmW0skZlZWWDytrKFpWNlR0qWysTKjsjI6My/eVtya+fE7gBFw7vI4WD80goHFxHvnemDw==", BinaryEncoding.Base64), Compression.Deflate)), let _t = ((type text) meta [Serialized.Text = true]) in type table [#"date/time" = _t, meeting = _t]),
#"Changed Type" = Table.TransformColumnTypes(Source,{{"date/time", type text}, {"meeting", type text}}),
#"Duplicated Column" = Table.DuplicateColumn(#"Changed Type", "date/time", "date/time - Copy"),
#"Replaced Value" = Table.ReplaceValue(#"Duplicated Column","at","-",Replacer.ReplaceText,{"date/time - Copy"}),
#"Split Column by Delimiter" = Table.SplitColumn(#"Replaced Value", "date/time - Copy", Splitter.SplitTextByDelimiter("-", QuoteStyle.Csv), {"date/time - Copy.1", "date/time - Copy.2"}),
#"Changed Type1" = Table.TransformColumnTypes(#"Split Column by Delimiter",{{"date/time - Copy.1", type date}, {"date/time - Copy.2", type time}})
in
#"Changed Type1"
The Power BI Data Visualization World Championships is back! Get ahead of the game and start preparing now!
| User | Count |
|---|---|
| 159 | |
| 132 | |
| 118 | |
| 79 | |
| 53 |