You're right that the sort command doesn't currently support DataFrames (but it should!). I've gotten around this by converting the DataFrame column (a DataSeries) to a Vector, sorting the Vector using output = permutation
option and then indexing the DataFrame by the result. Using your example:
Mydata := DataFrame(<<2,1,3,0>|<"Red","Blue","Green","Orange">>, columns = [Value,Color] );
sort( convert( Mydata[Value], Vector ), output = permutation );
Which returns:
[4, 2, 1, 3]
Indexing the original DataFrame by this result then returns the sorted DataFrame in ascending order of the Value column:
Mydata[ sort( convert( Mydata[Value], Vector ), output = permutation ), .. ];
Mydata[ [4, 2, 1, 3], .. ];
returns:
[ Value Color ]
[ ]
[4 0 "Orange"]
[ ]
[2 1 "Blue" ]
[ ]
[1 2 "Red" ]
[ ]
[3 3 "Green" ]
That said, I have needed to sort DataFrames a number of times, so I have also created a procedure that seems to work for most my data sets. This procedure uses a similar approach of using the sort command, however it doesn't require any data conversions since it works on the Maple DataFrame object itself. To do so, I need to set kernelopts(opaquemodules = false)
in order to work directly with the internal DataFrame data object (you could also make a bunch of conversions to intermediate Matrices and Vectors, but this approach limits the amount of duplicate internal data being created):
DSort := proc( self::{DataFrame,DataSeries}, {ByColumn := NULL} )
local i, opacity, orderindex;
opacity := kernelopts('opaquemodules' = false):
if type( self, ':-DataFrame' ) and ByColumn <> NULL then
orderindex := sort( self[ByColumn]:-data, ':-output' = ':-permutation', _rest );
elif type( self, ':-DataSeries' ) and ByColumn = NULL then
orderindex := sort( self:-data, ':-output' = ':-permutation', _rest );
else
return self;
end if;
kernelopts(opaquemodules = opacity): #Set opaquemodules back to original setting
if type( self, ':-DataFrame' ) then
return DataFrame( self[ orderindex, .. ] );
else
return DataSeries( self[ orderindex ] );
end if;
end proc:
For example:
DSort( Mydata, ByColumn=Value );
returns:
[ Value Color ]
[ ]
[4 0 "Orange"]
[ ]
[2 1 "Blue" ]
[ ]
[1 2 "Red" ]
[ ]
[3 3 "Green" ]
This also works on strings, so DSort( Mydata, ByColumn=Color );
should work.
[ Value Color ]
[ ]
[2 1 "Blue" ]
[ ]
[3 3 "Green" ]
[ ]
[4 0 "Orange"]
[ ]
[1 2 "Red" ]
In this procedure, I pass additional arguments to the sort
command, which means that you can also add in the ascending or descending options, so you could do DSort( Mydata, ByColumn=Value, `>` );
to return the DataFrame in descending 'Value' order (this doesn't seem to play well with strings though).