Without a "worker" take that lists each Picker/Packer individually, I think you'd need something like this...
CASE WHEN action.name = 'Picker' THEN scans.Picker ELSE scans.Packer END AS worker,
SUM(CASE WHEN action.name = 'Picker' THEN notes.Units ELSE 0 END) AS PickedUnits,
SUM(CASE WHEN action.name = 'Packer' THEN notes.Units ELSE 0 END) AS PackedUnits
ON scans.PickNote = notes.Number
SELECT 'Picker' AS name
UNION ALL SELECT 'Packer' AS name
CASE WHEN action.name = 'Picker' THEN scans.Picker ELSE scans.Packer END
(This is actually just an algebraic re-arrangement of the answer that @RaphaëlAlthaus posted at the same time as me. Both use
UNION to work out the Picker values and the Packer values separately. If you have separate indexes on
scans.Packer then I would expect mine MAY be slowest. If you don't have those two indexes then I would expect mine to be fastest. I recommend creating the indexes and testing on a realtisic data set.)
Actually, what I would recommend is a change to scans table completely; normalise it.
- Your de-normalised set has one row per PickNote, with fields
- A normalised set would have two rows per PickNote with fields
id | PickNote | Role | Worker
01 | PK162675 | Pick | MASI
02 | PK162675 | Pack | MASI
03 | PK162676 | Pick | FRED
04 | PK162676 | Pack | JOHN
This allows you to create simple indexes and simple queries.
You may initially baulk at the extra unecessary rows, but it will yield simpler queries, faster queries, better maintainability, increased flexibility, etc, etc.
In short, this normalisation may cost a little extra space, but it pays back dividends forever.