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I have a table in PowerBI which I want to transform using PowerQuery. I am trying to do the PowerQuery equivalent of applying the python function value_counts() to every column in the dataframe. However, I cannot find a way to do it.
df.apply(pd.Series.value_counts)
As an example, I have this dataframe:
When I apply the python code to it, it results in this dataframe:
I would be grateful for any ideas, thank you
Solved! Go to Solution.
Hi @Anonymous
You can use this code in Power Query, just update the Source:
let
Source = Table.FromRows(Json.Document(Binary.Decompress(Binary.FromText("i45WKkvMKU2NN1TSgbKM4CwTOMsUiRWrg08PdnOw6UGwjLGy8NtjjNWV+O3BZiPQbbEA", BinaryEncoding.Base64), Compression.Deflate)), let _t = ((type nullable text) meta [Serialized.Text = true]) in type table [#"Day 1" = _t, #"Day 2" = _t, #"Day 3" = _t, #"Day 4" = _t, #"Day 5" = _t]),
UnpivotedColumns = Table.UnpivotOtherColumns(Source, {}, "Attribute", "Value"),
GroupedRows = Table.Group(UnpivotedColumns, {"Attribute", "Value"}, {{"Count", each Table.RowCount(_), type number}}),
#"Pivoted Column" = Table.Pivot(GroupedRows, List.Distinct(GroupedRows[Attribute]), "Attribute", "Count", List.Sum)
in
#"Pivoted Column"
The sample file is attached.
If this post helps, please consider accepting it as the solution to help the other members find it more quickly.
Appreciate your Kudos!!
Hi @Anonymous one options to get results like in jupyter cells view outuput for single column
Powerquery, Tab Transform and picture below
Proud to be a Super User!
Hi @Anonymous
You can use this code in Power Query, just update the Source:
let
Source = Table.FromRows(Json.Document(Binary.Decompress(Binary.FromText("i45WKkvMKU2NN1TSgbKM4CwTOMsUiRWrg08PdnOw6UGwjLGy8NtjjNWV+O3BZiPQbbEA", BinaryEncoding.Base64), Compression.Deflate)), let _t = ((type nullable text) meta [Serialized.Text = true]) in type table [#"Day 1" = _t, #"Day 2" = _t, #"Day 3" = _t, #"Day 4" = _t, #"Day 5" = _t]),
UnpivotedColumns = Table.UnpivotOtherColumns(Source, {}, "Attribute", "Value"),
GroupedRows = Table.Group(UnpivotedColumns, {"Attribute", "Value"}, {{"Count", each Table.RowCount(_), type number}}),
#"Pivoted Column" = Table.Pivot(GroupedRows, List.Distinct(GroupedRows[Attribute]), "Attribute", "Count", List.Sum)
in
#"Pivoted Column"
The sample file is attached.
If this post helps, please consider accepting it as the solution to help the other members find it more quickly.
Appreciate your Kudos!!
Perfect this worked, thank you!
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